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25 Commits

Author SHA1 Message Date
github-actions[bot] 78fbec17a6 Release 0.11.5 (#1986)
Co-authored-by: github-actions[bot] <41898282+github-actions[bot]@users.noreply.github.com>
Co-authored-by: marcusschiesser <17126+marcusschiesser@users.noreply.github.com>
2025-05-30 22:37:26 +07:00
Marcus Schiesser 8b10a2e880 docs: add chat-ui docs (#1992) 2025-05-30 16:56:47 +07:00
ANKIT VARSHNEY 534662368f fix(google): use api key provided by the user in the session store (#1989) 2025-05-30 11:53:54 +07:00
Marcus Schiesser b370bd59f1 docs: fix agent docs (#1988) 2025-05-29 11:38:11 +07:00
Huu Le 766054ba67 chore: remove log input to avoid confusing (#1987) 2025-05-28 17:40:03 +07:00
ANKIT VARSHNEY 71598f86d7 feat: add support for interrupted and other server content event in live api (#1980)
Co-authored-by: Marcus Schiesser <mail@marcusschiesser.de>
2025-05-28 15:18:56 +07:00
github-actions[bot] 677abe46d2 Release 0.11.4 (#1983)
Co-authored-by: github-actions[bot] <41898282+github-actions[bot]@users.noreply.github.com>
Co-authored-by: logan-markewich <22285038+logan-markewich@users.noreply.github.com>
2025-05-28 09:46:52 +07:00
Logan 1cc271ccae improve funcion call check in anthropic llm (#1985) 2025-05-27 13:36:42 -06:00
Marcus Schiesser c927457e2e chore: Use base64 for encoding files (#1965) 2025-05-27 17:20:07 +07:00
github-actions[bot] 17ae23560e Release @llamaindex/azure@0.1.18 (#1982)
Co-authored-by: github-actions[bot] <41898282+github-actions[bot]@users.noreply.github.com>
2025-05-27 13:56:38 +07:00
yangqiao 0d9169e42d feat: Add vector index compression for AzureCosmosDBMongoDBVectorStore (#1981)
Co-authored-by: yangqiao <yangqiao@microsoft.com>
2025-05-27 13:49:46 +07:00
ANKIT VARSHNEY 3864c77ac3 Update supabase.mdx (#1979) 2025-05-27 13:46:18 +07:00
Marcus Schiesser a86f66cd2d feat: add claude.md files (#1977) 2025-05-26 16:49:45 +07:00
github-actions[bot] e5b25acc3d Release @llamaindex/qdrant@0.1.17 (#1976)
Co-authored-by: github-actions[bot] <41898282+github-actions[bot]@users.noreply.github.com>
2025-05-26 11:27:15 +07:00
Marcus Schiesser ba35240b4c fix: missing payload (#1975) 2025-05-26 11:11:47 +07:00
github-actions[bot] 7384e4d273 Release @llamaindex/anthropic@0.3.9 (#1972)
Co-authored-by: github-actions[bot] <41898282+github-actions[bot]@users.noreply.github.com>
2025-05-23 13:04:47 +07:00
Peter Goldstein ae75966721 Update Gemini model keys to reflect Google changes (#1968) 2025-05-23 11:22:55 +07:00
Peter Goldstein 5cdab12791 Add Claude Sonnet 4 and Claude Opus 4 models (#1969) 2025-05-23 11:10:50 +07:00
github-actions[bot] eaf2cb11a5 Release 0.11.3 (#1966)
Co-authored-by: github-actions[bot] <41898282+github-actions[bot]@users.noreply.github.com>
2025-05-22 16:58:59 +07:00
Marcus Schiesser 3ae01a227e chore: remove repin (#1967) 2025-05-22 16:53:44 +07:00
Marcus Schiesser 76ff23dc48 fix: pRetry not working with CommonJS 2025-05-22 15:14:00 +07:00
github-actions[bot] ed497727b1 Release 0.11.2 (#1964)
Co-authored-by: marcusschiesser <17126+marcusschiesser@users.noreply.github.com>
2025-05-22 14:34:37 +07:00
Marcus Schiesser 59601dd3ab feat: Add support for builtin image generation tool 2025-05-22 13:12:23 +07:00
github-actions[bot] 8474ca970e Release 0.11.1 (#1961)
Co-authored-by: github-actions[bot] <41898282+github-actions[bot]@users.noreply.github.com>
2025-05-20 22:18:57 -07:00
Alex Yang 3703f907d9 fix(parse): upload API (#1960) 2025-05-20 17:39:39 -07:00
210 changed files with 10793 additions and 2876 deletions
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# CLAUDE.md
This file provides guidance to Claude Code (claude.ai/code) when working with code in this repository.
## Development Commands
This project uses pnpm as the package manager and Turbo for build orchestration:
- `pnpm install` - Install all dependencies
- `pnpm build` - Build all packages using Turbo
- `pnpm dev` - Start development mode for all packages
- `pnpm test` - Run all unit tests
- `pnpm e2e` - Run end-to-end tests
- `pnpm lint` - Run ESLint across all packages
- `pnpm type-check` - Run TypeScript type checking across workspace
- `pnpm format` - Check code formatting with Prettier
- `pnpm format:write` - Auto-fix formatting issues
- `pnpm circular-check` - Check for circular dependencies using madge
For individual package development:
- `turbo run build --filter="@llamaindex/core"` - Build specific package
- `turbo run test --filter="@llamaindex/core"` - Test specific package
- Navigate to specific package directory and run `pnpm test` for focused testing
- `pnpm clean` - Remove all build artifacts and node_modules across workspace
## Architecture Overview
LlamaIndex.TS is a TypeScript data framework for LLM applications organized as a pnpm monorepo with multiple runtime environment support (Node.js, Deno, Bun, Vercel Edge, Cloudflare Workers).
### Package Structure
**Core Packages:**
- `packages/core/` - Abstract base classes and interfaces for all runtime environments
- `packages/llamaindex/` - Main package that aggregates core functionality
- `packages/env/` - Environment-specific compatibility layers for different JS runtimes
**Provider Packages (`packages/providers/`):**
- LLM providers: `openai/`, `anthropic/`, `ollama/`, `google/`, `groq/`, etc.
- Vector stores: `storage/pinecone/`, `storage/chroma/`, `storage/qdrant/`, etc.
- Embeddings: Various embedding providers integrated within LLM packages
- Readers: `assemblyai/`, `discord/`, `notion/` for data ingestion
**Specialized Packages:**
- `packages/cloud/` - LlamaCloud integration for managed services
- `packages/tools/` - Function calling tools and utilities
- `packages/workflow/` - Agent workflow orchestration
- `packages/readers/` - File format readers (PDF, DOCX, etc.)
### Key Architectural Patterns
**Runtime Abstraction:** Core functionality is runtime-agnostic, with environment-specific implementations in separate entry points (`index.ts`, `index.edge.ts`, `index.workerd.ts`).
**Provider Pattern:** LLMs, embeddings, and vector stores implement common interfaces from `@llamaindex/core`, allowing easy swapping between providers.
**Modular Design:** Each provider is a separate package to minimize bundle size - users install only what they need.
**Data Flow:** Document → NodeParser → Embedding → VectorStore → Retriever → QueryEngine → Response
### Core Components
- **Agents and Workflows:** Abstractions for building agentic workflows and agents in `packages/workflow`
- **Chat Engines:** Conversational interfaces in `core/chat-engine/`
- **Query Engines:** Document querying with retrieval in `core/query-engine/`
- **Indices:** VectorStoreIndex, SummaryIndex, KeywordTable in `llamaindex/indices/`
- **Node Parsers:** Text splitting and chunking in `core/node-parser/`
- **Ingestion Pipeline:** Document processing workflows in `llamaindex/ingestion/`
- **Storage:** Chat stores, document stores, index stores, and KV stores in `core/storage/`
### Deprecated Components
- **Agents:** ReAct and function calling agents in `core/agent/` and `llamaindex/agent/`
### Testing Structure
- Unit tests in each package's `tests/` directory
- E2E tests in `e2e/` directory with runtime-specific examples
- Tests depend on build artifacts, so always run `pnpm build` before testing
### Multi-Runtime Support
The codebase supports multiple JavaScript runtimes through conditional exports and separate entry points. When making changes, consider compatibility across Node.js, Deno, Bun, and edge runtimes.
### Development Notes
- The project uses Husky for git hooks with lint-staged for pre-commit formatting and linting
- All packages use bunchee for building with dual CJS/ESM support
- Core package exports are organized as sub-modules (e.g., `@llamaindex/core/llms`, `@llamaindex/core/embeddings`)
- Always run `pnpm build` before running tests, as tests depend on build artifacts
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# @llamaindex/doc
## 0.2.24
### Patch Changes
- Updated dependencies [766054b]
- Updated dependencies [71598f8]
- @llamaindex/workflow@1.1.6
- @llamaindex/core@0.6.9
- llamaindex@0.11.5
- @llamaindex/cloud@4.0.13
- @llamaindex/node-parser@2.0.9
- @llamaindex/openai@0.4.3
- @llamaindex/readers@3.1.7
## 0.2.23
### Patch Changes
- Updated dependencies [c927457]
- @llamaindex/openai@0.4.2
- @llamaindex/core@0.6.8
- @llamaindex/cloud@4.0.12
- llamaindex@0.11.4
- @llamaindex/node-parser@2.0.8
- @llamaindex/readers@3.1.6
- @llamaindex/workflow@1.1.5
## 0.2.22
### Patch Changes
- Updated dependencies [76ff23d]
- @llamaindex/cloud@4.0.11
- llamaindex@0.11.3
## 0.2.21
### Patch Changes
- Updated dependencies [59601dd]
- @llamaindex/openai@0.4.1
- @llamaindex/core@0.6.7
- @llamaindex/cloud@4.0.10
- llamaindex@0.11.2
- @llamaindex/node-parser@2.0.7
- @llamaindex/readers@3.1.5
- @llamaindex/workflow@1.1.4
## 0.2.20
### Patch Changes
- Updated dependencies [3703f90]
- @llamaindex/cloud@4.0.9
- llamaindex@0.11.1
## 0.2.19
### Patch Changes
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# CLAUDE.md
This file provides guidance to Claude Code (claude.ai/code) when working with the LlamaIndex.TS documentation site.
## Application Overview
This is a Next.js documentation site (`@llamaindex/doc`) that serves as the official documentation for LlamaIndex.TS. It's built using Fumadocs, a modern documentation framework, and includes interactive features, API documentation generation, and AI-powered chat functionality.
## Development Commands
From this directory (`apps/next/`):
- `pnpm dev` - Start development server with Turbo
- `pnpm build` - Build the documentation site (includes `prebuild` step)
- `pnpm start` - Start production server
- `pnpm build:docs` - Generate API documentation from TypeScript source
- `pnpm validate-links` - Validate all internal and external links
Key build process:
1. `prebuild` runs `build:docs` to generate API documentation using TypeDoc
2. `build` runs Next.js build process
3. `postbuild` runs post-processing scripts and link validation
## Architecture
### Framework Stack
- **Next.js 15.3** - React framework with App Router
- **Fumadocs** - Documentation framework with MDX support
- **React Server Components** - AI chat functionality with server actions
- **Tailwind CSS** - Styling with custom design system
- **TypeScript** - Full type safety
### Key Dependencies
- **Fumadocs ecosystem**: `fumadocs-ui`, `fumadocs-mdx`, `fumadocs-core`, `fumadocs-openapi`
- **AI features**: `ai` package for React Server Components chat
- **Code features**: Monaco Editor, Shiki syntax highlighting, Twoslash TypeScript integration
- **UI components**: Radix UI primitives, Framer Motion animations
- **Content processing**: MDX, remark/rehype plugins, TypeDoc for API generation
### Directory Structure
**Content Management:**
- `src/content/docs/` - MDX documentation files organized by topic
- `src/content/docs/api/` - Auto-generated API documentation from TypeScript
- `scripts/` - Build-time documentation generation and validation
**Application Code:**
- `src/app/` - Next.js App Router pages and API routes
- `src/components/` - Reusable React components including UI library
- `src/lib/` - Utilities, constants, and configuration
**Configuration:**
- `source.config.ts` - Fumadocs MDX configuration with plugins
- `next.config.mjs` - Next.js configuration with MDX integration
- `tailwind.config.mjs` - Tailwind CSS customization
### Key Features
**Documentation Features:**
- MDX-based content with TypeScript code highlighting
- Auto-generated API documentation from TypeScript source
- Interactive code examples with Monaco Editor
- Math equation support with KaTeX
- Link validation and build-time checks
**Interactive Features:**
- AI-powered chat interface using React Server Components
- Code demos with live TypeScript execution
- Interactive UI components and animations
- Search functionality across all documentation
**Build Process:**
- TypeDoc generates API documentation from workspace packages
- Custom scripts transform and validate generated content
- Link checking ensures all internal/external links work
- Static site generation with 10-minute timeout for large documentation set
### Configuration Files
**source.config.ts**: Defines MDX processing pipeline with:
- Code highlighting themes (Catppuccin)
- Twoslash TypeScript integration
- Remark/rehype plugins for enhanced Markdown
- Content directories including external docs
**next.config.mjs**: Next.js configuration with:
- Extended static generation timeout (10 minutes)
- Monaco Editor transpilation
- Server external packages for build optimization
- Webpack/Turbopack aliases for browser compatibility
### Content Organization
**Documentation Structure:**
- `/docs/llamaindex/` - Core LlamaIndex.TS documentation
- `/docs/cloud/` - LlamaCloud integration guides
- `/docs/api/` - Auto-generated TypeScript API reference
**Content Sources:**
- Local MDX files in `src/content/docs/`
- External docs from `@llama-flow/docs` package
- Generated API docs from TypeScript source
### Development Notes
- Documentation content is sourced from multiple locations including external packages
- API documentation is regenerated on each build from TypeScript source
- The site uses advanced MDX features including custom transformers and plugins
- Build process includes comprehensive link validation
- Large memory allocation needed for TypeDoc generation (`--max-old-space-size=8192`)
- Chat functionality uses React Server Components with streaming responses
### AI Chat Integration
The documentation includes an AI chat feature that:
- Uses React Server Components for server-side AI processing
- Integrates with LlamaIndex.TS packages for demonstrations
- Provides interactive examples and code generation
- Streams responses for better user experience
### Content Authoring
When adding new documentation:
- Create MDX files in appropriate `src/content/docs/` subdirectories
- Follow existing content structure and frontmatter conventions
- Use Fumadocs MDX features like code blocks, callouts, and tabs
- API documentation is auto-generated - edit TypeScript source comments instead
- Run `pnpm validate-links` to check all links before publishing
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{
"name": "@llamaindex/doc",
"version": "0.2.19",
"version": "0.2.24",
"private": true,
"scripts": {
"postinstall": "fumadocs-mdx",
@@ -16,7 +16,7 @@
"@huggingface/transformers": "^3.5.0",
"@icons-pack/react-simple-icons": "^10.1.0",
"@llama-flow/docs": "0.0.8",
"@llamaindex/chat-ui": "0.2.0",
"@llamaindex/chat-ui-docs": "0.0.3",
"@llamaindex/cloud": "workspace:*",
"@llamaindex/core": "workspace:*",
"@llamaindex/node-parser": "workspace:*",
+1 -1
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@@ -13,7 +13,7 @@ const INTERNAL_LINK_REGEX = /(?:(?:\]\(|\bhref=["'])\/docs\/([^")]+))/g;
// This captures relative links like [text](./path) or ![alt](../images/image.png)
const RELATIVE_LINK_REGEX = /(?:\]\()(?:\s*)(?:\.\.?)\//g;
const ALLOWED_LINKS = ["/docs/llamaflow"];
const ALLOWED_LINKS = ["/docs/llamaflow", "/docs/chat-ui"];
interface LinkValidationResult {
file: string;
+5 -1
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@@ -9,7 +9,11 @@ import rehypeKatex from "rehype-katex";
import remarkMath from "remark-math";
export const docs = defineDocs({
dir: ["./src/content/docs", "./node_modules/@llama-flow/docs"],
dir: [
"./src/content/docs",
"./node_modules/@llama-flow/docs",
"./node_modules/@llamaindex/chat-ui-docs",
],
docs: {
async: true,
},
@@ -1,4 +1,3 @@
import { ChatDemoRSC } from "@/components/demo/chat/rsc/demo";
import * as demos from "@/components/demo/lazy";
import { createMetadata, metadataImage } from "@/lib/metadata";
import { openapi, source } from "@/lib/source";
@@ -51,7 +50,6 @@ export default async function Page(props: {
...Icons,
...defaultMdxComponents,
...demos,
ChatDemoRSC,
Accordion,
Accordions,
APIPage: (props) => <APIPage {...openapi.getAPIPageProps(props)} />,
@@ -1,21 +0,0 @@
"use client";
import {
ChatHandler,
ChatInput,
ChatMessages,
ChatSection,
} from "@llamaindex/chat-ui";
import { useChat } from "ai/react";
export const ChatDemo = () => {
const handler = useChat();
return (
<ChatSection handler={handler as ChatHandler}>
<ChatMessages>
<ChatMessages.List className="h-auto max-h-[400px]" />
<ChatMessages.Actions />
</ChatMessages>
<ChatInput />
</ChatSection>
);
};
@@ -1,57 +0,0 @@
import { Markdown } from "@llamaindex/chat-ui/widgets";
import { MockLLM } from "@llamaindex/core/utils";
import { generateId, Message } from "ai";
import { createAI, createStreamableUI, getMutableAIState } from "ai/rsc";
import { type ChatMessage, Settings, SimpleChatEngine } from "llamaindex";
import { ReactNode } from "react";
type ServerState = Message[];
type FrontendState = Array<Message & { display: ReactNode }>;
type Actions = {
chat: (message: Message) => Promise<Message & { display: ReactNode }>;
};
Settings.llm = new MockLLM(); // config your LLM here
export const AI = createAI<ServerState, FrontendState, Actions>({
initialAIState: [],
initialUIState: [],
actions: {
chat: async (message: Message) => {
"use server";
const aiState = getMutableAIState<typeof AI>();
aiState.update((prev) => [...prev, message]);
const uiStream = createStreamableUI();
const chatEngine = new SimpleChatEngine();
const assistantMessage: Message = {
id: generateId(),
role: "assistant",
content: "",
};
// run the async function without blocking
(async () => {
const chatResponse = await chatEngine.chat({
stream: true,
message: message.content,
chatHistory: aiState.get() as ChatMessage[],
});
for await (const chunk of chatResponse) {
assistantMessage.content += chunk.delta;
uiStream.update(<Markdown content={assistantMessage.content} />);
}
aiState.done([...aiState.get(), assistantMessage]);
uiStream.done();
})();
return {
...assistantMessage,
display: uiStream.value,
};
},
},
});
@@ -1,35 +0,0 @@
"use client";
import {
ChatHandler,
ChatInput,
ChatMessage,
ChatMessages,
ChatSection as ChatSectionUI,
Message,
} from "@llamaindex/chat-ui";
import { useChatRSC } from "./use-chat-rsc";
export const ChatSectionRSC = () => {
const handler = useChatRSC();
return (
<ChatSectionUI handler={handler as ChatHandler}>
<ChatMessages>
<ChatMessages.List className="h-auto max-h-[400px]">
{handler.messages.map((message, index) => (
<ChatMessage
key={index}
message={message as Message}
isLast={index === handler.messages.length - 1}
>
<ChatMessage.Avatar />
<ChatMessage.Content>{message.display}</ChatMessage.Content>
</ChatMessage>
))}
<ChatMessages.Loading />
</ChatMessages.List>
</ChatMessages>
<ChatInput />
</ChatSectionUI>
);
};
@@ -1,8 +0,0 @@
import { AI } from "./ai-action";
import { ChatSectionRSC } from "./chat-section";
export const ChatDemoRSC = () => (
<AI>
<ChatSectionRSC />
</AI>
);
@@ -1,41 +0,0 @@
"use client";
import { useActions } from "ai/rsc";
import { generateId, Message } from "ai";
import { useUIState } from "ai/rsc";
import { useState } from "react";
import { AI } from "./ai-action";
export function useChatRSC() {
const [input, setInput] = useState<string>("");
const [isLoading, setIsLoading] = useState<boolean>(false);
const [messages, setMessages] = useUIState<typeof AI>();
const { chat } = useActions<typeof AI>();
const append = async (message: Omit<Message, "id">) => {
const newMsg: Message = { ...message, id: generateId() };
setIsLoading(true);
try {
setMessages((prev) => [...prev, { ...newMsg, display: message.content }]);
const assistantMsg = await chat(newMsg);
setMessages((prev) => [...prev, assistantMsg]);
} catch (error) {
console.error(error);
}
setIsLoading(false);
setInput("");
return message.content;
};
return {
input,
setInput,
isLoading,
messages,
setMessages,
append,
};
}
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@@ -1,11 +1,6 @@
"use client";
import dynamic from "next/dynamic";
// lazy load client components
export const ChatDemo = dynamic(() =>
import("@/components/demo/chat/api/demo").then((mod) => mod.ChatDemo),
);
export const CodeNodeParserDemo = dynamic(() =>
import("@/components/demo/code-node-parser").then(
(mod) => mod.CodeNodeParserDemo,
@@ -33,7 +33,7 @@ const jokeAgent = agent({
// Run the workflow
const result = await jokeAgent.run("Tell me something funny");
console.log(result); // Baby Llama is called cria
console.log(result.data.result); // Baby Llama is called cria
```
### Event Streaming
@@ -44,7 +44,7 @@ Agent Workflows provide a unified interface for event streaming, making it easy
import { agentToolCallEvent, agentStreamEvent } from "@llamaindex/workflow";
// Get the workflow execution context
const events = workflow.runStream("Tell me something funny");
const events = jokeAgent.runStream("Tell me something funny");
// Stream and handle events
for await (const event of events) {
@@ -112,6 +112,7 @@ const agents = multiAgent({
const result = await agents.run(
"Give me a morning greeting with a joke and the weather in San Francisco"
);
console.log(result.data.result);
```
The workflow will coordinate between agents, allowing them to handle different aspects of the request and hand off tasks when appropriate.
@@ -42,6 +42,7 @@ similarity float
)
language plpgsql
as $$
#variable_conflict use_column
begin
return query
select
@@ -1,44 +0,0 @@
---
title: Using API Route
description: Chat interface for your LlamaIndexTS application using API Route
---
Using [chat-ui](https://github.com/run-llama/chat-ui), it's easy to add a chat interface to your LlamaIndexTS application.
You just need to create an API route that provides an `api/chat` endpoint and a chat component to consume the API.
## API route
As an example, this is an API route for the Next.js App Router. Copy the following code into your `app/api/chat/route.ts` file to get started:
```json doc-gen:file
{
"file": "./src/app/api/chat/route.ts",
"codeblock": true
}
```
## Chat UI
This is the simplest way to add a chat interface to your application. Copy the following code into your application to consume the API:
```json doc-gen:file
{
"file": "./src/components/demo/chat/api/demo.tsx",
"codeblock": true
}
```
## Try it out ⬇️
Combining both, you're getting a fully functional chat interface:
<ChatDemo />
## Next Steps
The steps above are the bare minimum to get a chat interface working. From here, you can go two ways:
1. Use [create-llama](https://github.com/run-llama/create-llama) to scaffold a new LlamaIndexTS project including complex API routes and chat interfaces or
2. Learn more about [chat-ui](https://github.com/run-llama/chat-ui) and [LlamaIndexTS](https://github.com/run-llama/llamaindex-ts) to customize the chat interface and API routes to your needs.
@@ -0,0 +1,8 @@
---
title: Using @llamaindex/chat-ui
description: Chat UI components for your LlamaIndexTS application
---
@llamaindex/chat-ui is a library that provides a set of components for building chat user interfaces. It is built on top of [Shadcn UI](https://ui.shadcn.com).
Check out our [chat-ui](/docs/chat-ui) documentation or try running examples on the [ui.llamaindex.ai](https://ui.llamaindex.ai) website.
@@ -1,22 +0,0 @@
---
title: Install @llamaindex/chat
description: Chat interface for your LlamaIndexTS application
---
## Quick Start
You can quickly add a chatbot to your project by using Shadcn CLI command:
```sh
npx shadcn@latest add https://ui.llamaindex.ai/r/chat.json
```
## Manual Installation
To install the package, run the following command in your project directory:
```sh
npm i @llamaindex/chat-ui
```
For more information, check out the [github.comrun-llama/chat-ui](https://github.com/run-llama/chat-ui)
@@ -9,161 +9,11 @@ LlamaIndexServer is a Next.js-based application that allows you to quickly launc
## Features
- Serving a workflow as a chatbot
- Add a sophisticated chatbot UI to your LlamaIndex workflow
- Edit code and document artifacts in an OpenAI Canvas-style UI
- Extendable UI components for events and headers
- Built on Next.js for high performance and easy API development
- Optional built-in chat UI with extendable UI components
- Prebuilt development code
## Installation
```package-install
npm i @llamaindex/server
```
## Quick Start
Create an `index.ts` file and add the following code:
```ts
import { LlamaIndexServer } from "@llamaindex/server";
import { wiki } from "@llamaindex/tools"; // or any other tool
const createWorkflow = () => agent({ tools: [wiki()] })
new LlamaIndexServer({
workflow: createWorkflow,
uiConfig: {
appTitle: "LlamaIndex App",
starterQuestions: ["Who is the first president of the United States?"],
},
}).start();
```
## Running the Server
In the same directory as `index.ts`, run the following command to start the server:
```bash
tsx index.ts
```
The server will start at `http://localhost:3000`
You can also make a request to the server:
```bash
curl -X POST "http://localhost:3000/api/chat" -H "Content-Type: application/json" -d '{"message": "Who is the first president of the United States?"}'
```
## Configuration Options
The `LlamaIndexServer` accepts the following configuration options:
- `workflow`: A callable function that creates a workflow instance for each request
- `uiConfig`: An object to configure the chat UI containing the following properties:
- `appTitle`: The title of the application (default: `"LlamaIndex App"`)
- `starterQuestions`: List of starter questions for the chat UI (default: `[]`)
- `componentsDir`: The directory for custom UI components rendering events emitted by the workflow. The default is undefined, which does not render custom UI components.
- `llamaCloudIndexSelector`: Whether to show the LlamaCloud index selector in the chat UI (requires `LLAMA_CLOUD_API_KEY` to be set in the environment variables) (default: `false`)
LlamaIndexServer accepts all the configuration options from Nextjs Custom Server such as `port`, `hostname`, `dev`, etc.
See all Nextjs Custom Server options [here](https://nextjs.org/docs/app/building-your-application/configuring/custom-server).
## AI-generated UI Components
The LlamaIndex server provides support for rendering workflow events using custom UI components, allowing you to extend and customize the chat interface.
These components can be auto-generated using an LLM by providing a JSON schema of the workflow event.
### UI Event Schema
To display custom UI components, your workflow needs to emit UI events that have an event type for identification and a data object:
```typescript
class UIEvent extends WorkflowEvent<{
type: "ui_event";
data: UIEventData;
}> {}
```
The `data` object can be any JSON object. To enable AI generation of the UI component, you need to provide a schema for that data (here we're using Zod):
```typescript
const MyEventDataSchema = z.object({
stage: z.enum(["retrieve", "analyze", "answer"]).describe("The current stage the workflow process is in."),
progress: z.number().min(0).max(1).describe("The progress in percent of the current stage"),
}).describe("WorkflowStageProgress");
type UIEventData = z.infer<typeof MyEventDataSchema>;
```
### Generate UI Components
The `generateEventComponent` function uses an LLM to generate a custom UI component based on the JSON schema of a workflow event. The schema should contain accurate descriptions of each field so that the LLM can generate matching components for your use case. We've done this for you in the example above using the `describe` function from Zod:
```typescript
import { OpenAI } from "llamaindex";
import { generateEventComponent } from "@llamaindex/server";
import { MyEventDataSchema } from "./your-workflow";
// Also works well with Claude 3.5 Sonnet and Google Gemini 2.5 Pro
const llm = new OpenAI({ model: "gpt-4.1" });
const code = generateEventComponent(MyEventDataSchema, llm);
```
After generating the code, we need to save it to a file. The file name must match the event type from your workflow (e.g., `ui_event.jsx` for handling events with `ui_event` type):
```ts
fs.writeFileSync("components/ui_event.jsx", code);
```
Feel free to modify the generated code to match your needs. If you're not satisfied with the generated code, we suggest improving the provided JSON schema first or trying another LLM.
> Note that `generateEventComponent` is generating JSX code, but you can also provide a TSX file.
### Server Setup
To use the generated UI components, you need to initialize the LlamaIndex server with the `componentsDir` that contains your custom UI components:
```ts
new LlamaIndexServer({
workflow: createWorkflow,
uiConfig: {
appTitle: "LlamaIndex App",
componentsDir: "components",
},
}).start();
```
## Default Endpoints and Features
### Chat Endpoint
The server includes a default chat endpoint at `/api/chat` for handling chat interactions.
### Chat UI
The server always provides a chat interface at the root path (`/`) with:
- Configurable starter questions
- Real-time chat interface
- API endpoint integration
### Static File Serving
- The server automatically mounts the `data` and `output` folders at `{server_url}{api_prefix}/files/data` (default: `/api/files/data`) and `{server_url}{api_prefix}/files/output` (default: `/api/files/output`) respectively.
- Your workflows can use both folders to store and access files. By convention, the `data` folder is used for documents that are ingested, and the `output` folder is used for documents generated by the workflow.
## Best Practices
1. Always provide a workflow factory that creates a fresh workflow instance for each request.
2. Use environment variables for sensitive configuration (e.g., API keys).
3. Use starter questions to guide users in the chat UI.
## Getting Started with a New Project
Want to start a new project with LlamaIndexServer? Check out our [create-llama](https://github.com/run-llama/create-llama) tool to quickly generate a new project with LlamaIndexServer.
## API Reference
- [LlamaIndexServer](https://github.com/run-llama/create-llama/blob/main/packages/server)
Check the latest information on the NPM package page: https://www.npmjs.com/package/@llamaindex/server
@@ -2,5 +2,5 @@
"title": "Chat UI",
"description": "Use chat-ui to add a chat interface to your LlamaIndexTS application.",
"defaultOpen": false,
"pages": ["install", "chat", "rsc", "llamaindex-server"]
"pages": ["index", "llamaindex-server"]
}
@@ -1,65 +0,0 @@
---
title: Using Next.js RSC
description: Chat interface for your LlamaIndexTS application using Next.js RSC
---
Using [chat-ui](https://github.com/run-llama/chat-ui), it's easy to add a chat interface to your LlamaIndexTS application using [Next.js RSC](https://nextjs.org/docs/app/building-your-application/rendering/server-components) and [Vercel AI RSC](https://sdk.vercel.ai/docs/ai-sdk-rsc/overview).
With RSC, the chat messages are not returned as JSON from the server (like when using an [API route](/docs/llamaindex/modules/ui/chat)), instead the chat message components are rendered on the server side.
This is for example useful for rendering a whole chat history on the server before sending it to the client. [Check here](https://sdk.vercel.ai/docs/getting-started/navigating-the-library#when-to-use-ai-sdk-rsc), for a discussion of when to use use RSC.
For implementing a chat interface with RSC, you need to create an AI action and then connect the chat interface to use it.
## Create an AI action
First, define an [AI context provider](https://sdk.vercel.ai/examples/rsc/state-management/ai-ui-states) with a chat server action:
```json doc-gen:file
{
"file": "./src/components/demo/chat/rsc/ai-action.tsx",
"codeblock": true
}
```
The chat server action is using LlamaIndexTS to generate a response based on the chat history and the user input.
## Create the chat UI
The entrypoint of our application initializes the AI provider for the application and adds a `ChatSection` component:
```json doc-gen:file
{
"file": "./src/components/demo/chat/rsc/demo.tsx",
"codeblock": true
}
```
The `ChatSection` component is created by using chat components from @llamaindex/chat-ui:
```json doc-gen:file
{
"file": "./src/components/demo/chat/rsc/chat-section.tsx",
"codeblock": true
}
```
It is using a `useChatRSC` hook to conntect the chat interface to the `chat` AI action that we defined earlier:
```json doc-gen:file
{
"file": "./src/components/demo/chat/rsc/use-chat-rsc.tsx",
"codeblock": true
}
```
## Try RSC Chat ⬇️
<ChatDemoRSC />
## Next Steps
The steps above are the bare minimum to get a chat interface working with RSC. From here, you can go two ways:
1. Use our [full-stack RSC example](https://github.com/run-llama/nextjs-rsc) based on [create-llama](https://github.com/run-llama/create-llama) to get started quickly with a fully working chat interface or
2. Learn more about [AI RSC](https://sdk.vercel.ai/examples/rsc), [chat-ui](https://github.com/run-llama/chat-ui) and [LlamaIndexTS](https://github.com/run-llama/llamaindex-ts) to customize the chat interface and AI actions to your needs.
+1 -1
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@@ -1,3 +1,3 @@
{
"pages": ["llamaindex", "api", "llamaflow"]
"pages": ["llamaindex", "api", "llamaflow", "chat-ui"]
}
+1
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@@ -5,6 +5,7 @@
"build": {
"inputs": [
"node_modules/@llama-flow/docs/**",
"node_modules/@llamaindex/chat-ui-docs/**",
"src/**/*.ts",
"src/**/*.tsx",
"src/**/*.mdx",
+135
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@@ -0,0 +1,135 @@
# CLAUDE.md
This file provides guidance to Claude Code (claude.ai/code) when working with the LlamaIndexTS e2e testing package.
## Package Overview
The `@llamaindex/e2e` package contains end-to-end tests and examples for LlamaIndexTS, ensuring the library works correctly across different runtime environments and use cases. It validates integration between core packages, providers, and real-world usage scenarios.
## Development Commands
Run e2e tests from the root directory using:
- `pnpm e2e` - Run all e2e tests with mocked LLM responses
- `pnpm e2e:nomock` - Run e2e tests with real API calls (requires API keys)
Local e2e package commands:
- `npm run e2e` - Run all e2e tests with mock register
- `npm run e2e:nomock` - Run tests without mocking (real API calls)
- `npm run e2e:updatesnap` - Update test snapshots
## Testing Structure
### Core Test Files (`node/`)
**Main Test Suites:**
- `smoke.e2e.ts` - CJS/ESM dual module compatibility tests and basic import validation
- `openai.e2e.ts` - OpenAI provider integration tests (LLM, agents, tools)
- `claude.e2e.ts` - Anthropic Claude provider tests
- `ollama.e2e.ts` - Ollama local LLM provider tests
- `react.e2e.ts` - ReAct agent framework tests
- `issue.e2e.ts` - Regression tests for specific GitHub issues
**Specialized Tests:**
- `embedding/clip.e2e.ts` - CLIP embedding model tests
- `vector-store/` - Vector database integration tests (Pinecone, PostgreSQL with pgvector)
### Test Utilities
- `utils.ts` - Common test utilities and helper functions
- `fixtures/` - Test data and mock tool definitions
- `snapshot/` - Stored test snapshots for regression testing
- `mock-register.js` & `mock-module.js` - LLM response mocking system
### Examples Directory (`examples/`)
Runtime-specific example applications that serve as integration tests:
**Edge/Serverless Runtimes:**
- `cloudflare-worker-agent/` - Cloudflare Workers agent example with Vitest
- `cloudflare-hono/` - Cloudflare Workers with Hono framework
- `nextjs-edge-runtime/` - Next.js Edge Runtime compatibility
- `nextjs-node-runtime/` - Next.js Node.js runtime example
- `nextjs-agent/` - Next.js with agent integration
**Client-Side:**
- `llama-parse-browser/` - Browser-based LlamaParse integration
- `vite-import-llamaindex/` - Vite bundler compatibility test
**Alternative Frameworks:**
- `waku-query-engine/` - Waku framework with query engine integration
## Testing Patterns
### Mock System
The e2e tests use a sophisticated mocking system for consistent testing:
- **Mock Register**: `mock-register.js` enables LLM response mocking
- **Snapshot Testing**: Pre-recorded responses stored in `snapshot/` directory
- **Real API Mode**: Tests can run against real APIs when `OPENAI_API_KEY`, `ANTHROPIC_API_KEY`, etc. are provided
### Test Categories
1. **Smoke Tests**: Basic import/export validation and dual module (CJS/ESM) compatibility
2. **Provider Integration**: LLM provider functionality (chat, streaming, function calling)
3. **Agent Tests**: Agent framework validation with tool calling and reasoning
4. **Runtime Compatibility**: Cross-platform runtime environment testing
5. **Regression Tests**: Issue-specific tests preventing regressions
### Environment Conditions
Tests validate multiple JavaScript runtime conditions:
- `edge-light` - Vercel Edge Runtime
- `workerd` - Cloudflare Workers runtime
- `react-server` - React Server Components environment
## Dependencies
The package includes comprehensive workspace dependencies for testing all major LlamaIndexTS features:
**Core Dependencies:**
- `@llamaindex/core` - Base abstractions
- `@llamaindex/env` - Runtime environment compatibility
- `llamaindex` - Main package
**Provider Dependencies:**
- `@llamaindex/openai` - OpenAI integration
- `@llamaindex/anthropic` - Anthropic Claude integration
- `@llamaindex/ollama` - Ollama local LLM support
- `@llamaindex/clip` - CLIP embedding models
- `@llamaindex/pinecone` - Pinecone vector store
- `@llamaindex/postgres` - PostgreSQL with pgvector
**Testing Utilities:**
- `@faker-js/faker` - Test data generation
- `@huggingface/transformers` - Local model support
- `consola` - Logging in tests
- `dotenv` - Environment variable management
- `tsx` - TypeScript execution for Node.js
## Development Notes
- **Build Dependency**: E2E tests depend on build artifacts, so always run `pnpm build` before testing
- **API Keys**: Real API testing requires environment variables (`OPENAI_API_KEY`, `ANTHROPIC_API_KEY`, etc.)
- **Snapshot Updates**: Use `npm run e2e:updatesnap` to update test snapshots after intentional changes
- **Mock vs Real**: Use mock mode for CI/fast development, real mode for integration validation
- **Runtime Testing**: Examples serve dual purpose as integration tests and usage documentation
- **Node.js Test Runner**: Uses built-in Node.js test runner with tsx for TypeScript support
## Common Workflows
1. **Adding New Provider**: Create test file in `node/`, add mock snapshots, validate across runtimes
2. **Runtime Compatibility**: Add example in `examples/` with framework-specific testing setup
3. **Regression Testing**: Add specific test case in `issue.e2e.ts` with GitHub issue reference
4. **Mock Updates**: Update snapshots when LLM provider responses change intentionally
+156
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@@ -0,0 +1,156 @@
# CLAUDE.md
This file provides guidance to Claude Code (claude.ai/code) when working with the LlamaIndexTS Cloudflare Workers + Hono example.
## Package Overview
The `@llamaindex/cloudflare-hono` package is an end-to-end example demonstrating how to use LlamaIndexTS in a Cloudflare Workers environment with the Hono web framework. This example showcases building an AI agent with vector search capabilities that runs on Cloudflare's edge runtime.
## Development Commands
- `npm run dev` or `npm start` - Start local development server with Wrangler
- `npm run build` - Build for deployment (dry run to dist directory)
- `npm run deploy` - Deploy to Cloudflare Workers
- `npm run cf-typegen` - Generate TypeScript types for Cloudflare Workers
## Architecture
This example demonstrates a complete RAG (Retrieval-Augmented Generation) system running on Cloudflare Workers:
### Key Components
1. **Hono Framework**: Lightweight web framework optimized for edge runtimes
2. **OpenAI Integration**: GPT-4o-mini for language model and text-embedding-3-small for embeddings
3. **Pinecone Vector Store**: Cloud vector database for document storage and retrieval
4. **OpenAI Agent**: Function-calling agent with tool integration
5. **Query Engine Tool**: Business information retrieval tool
### Request Flow
1. POST request to `/llm` endpoint with `{ message: "user question" }`
2. Environment setup using `@llamaindex/env` for Cloudflare Workers compatibility
3. Dynamic imports for tree-shaking and edge runtime optimization
4. LLM and embedding model configuration with API keys from environment
5. Vector store connection to Pinecone with predefined namespace
6. Vector index creation and retriever setup (top-k=3 similarity search)
7. Query engine tool creation for business information retrieval
8. OpenAI agent initialization with tools
9. Agent chat execution and response extraction
### Runtime Optimizations
- **Dynamic Imports**: All LlamaIndex packages imported asynchronously for optimal cold start performance
- **Environment Setup**: Uses `@llamaindex/env` package for Cloudflare Workers compatibility
- **Tree Shaking**: Selective imports reduce bundle size for edge deployment
- **Async Operations**: Fully async pipeline optimized for serverless execution
## Configuration
### Wrangler Configuration (`wrangler.toml`)
- **Runtime**: Cloudflare Workers with Node.js AsyncLocalStorage compatibility
- **Compatibility Date**: 2024-11-12 with `nodejs_als` flag
- **Observability**: Enabled for monitoring and debugging
- **Entry Point**: `src/index.ts`
### TypeScript Configuration
- **Target**: ES2021 for modern JavaScript features
- **Module**: ES2022 with bundler module resolution
- **Types**: Cloudflare Workers types for runtime compatibility
- **Strict Mode**: Enabled for type safety
### Environment Variables
Required Cloudflare Workers environment variables:
- `OPENAI_API_KEY` - OpenAI API access for LLM and embeddings
- `PINECONE_API_KEY` - Pinecone vector database access
## Dependencies
### Runtime Dependencies
- `hono` - Lightweight web framework for edge runtimes
### Development Dependencies
- `@cloudflare/workers-types` - TypeScript definitions for Cloudflare Workers
- `wrangler` - Cloudflare Workers CLI and development server
- `typescript` - TypeScript compiler
### LlamaIndexTS Integration
This example relies on workspace dependencies:
- `llamaindex` - Core LlamaIndexTS functionality
- `@llamaindex/openai` - OpenAI provider (LLM, embeddings, agents)
- `@llamaindex/pinecone` - Pinecone vector store integration
- `@llamaindex/env` - Runtime environment compatibility layer
## Code Patterns
### Environment Setup Pattern
```typescript
const { setEnvs } = await import("@llamaindex/env");
setEnvs(c.env);
```
Required first step for Cloudflare Workers compatibility.
### Dynamic Import Pattern
```typescript
const { VectorStoreIndex, Settings } = await import("llamaindex");
const { OpenAI, OpenAIAgent } = await import("@llamaindex/openai");
```
Optimizes bundle size and cold start performance.
### Settings Configuration
```typescript
Settings.llm = new OpenAI({ model: "gpt-4o-mini" });
Settings.embedModel = new OpenAIEmbedding({ model: "text-embedding-3-small" });
Settings.nodeParser = new SentenceSplitter({ chunkSize: 8191 });
```
Global configuration for consistent LLM behavior.
### Agent Tool Integration
```typescript
const tools = [
new QueryEngineTool({ queryEngine, metadata: { name, description } }),
];
const agent = new OpenAIAgent({ tools });
```
Function-calling agent with domain-specific tools.
## Usage
1. **Local Development**: Run `npm run dev` to start Wrangler development server
2. **Environment Setup**: Configure `OPENAI_API_KEY` and `PINECONE_API_KEY` in Wrangler
3. **API Testing**: POST to `/llm` with JSON payload `{ message: "your question" }`
4. **Deployment**: Run `npm run deploy` to publish to Cloudflare Workers
## Integration Testing
This example serves as an integration test for:
- Cloudflare Workers runtime compatibility
- Hono framework integration
- OpenAI provider functionality
- Pinecone vector store operations
- Agent workflow execution
- Dynamic import optimization
- Environment variable handling
## Performance Considerations
- **Cold Start**: Dynamic imports minimize initial bundle size
- **Memory Usage**: Efficient vector operations with Pinecone cloud storage
- **Latency**: Edge deployment reduces geographic latency
- **Concurrency**: Serverless architecture handles concurrent requests efficiently
@@ -1,5 +1,35 @@
# @llamaindex/cloudflare-worker-agent-test
## 0.0.166
### Patch Changes
- llamaindex@0.11.5
## 0.0.165
### Patch Changes
- llamaindex@0.11.4
## 0.0.164
### Patch Changes
- llamaindex@0.11.3
## 0.0.163
### Patch Changes
- llamaindex@0.11.2
## 0.0.162
### Patch Changes
- llamaindex@0.11.1
## 0.0.161
### Patch Changes
@@ -0,0 +1,127 @@
# CLAUDE.md
This file provides guidance to Claude Code (claude.ai/code) when working with the Cloudflare Worker Agent example in the LlamaIndexTS e2e testing suite.
## Package Overview
The `@llamaindex/cloudflare-worker-agent-test` package demonstrates how to use LlamaIndex.TS within a Cloudflare Worker environment. This example serves as both a functional integration test and a reference implementation for deploying AI agents on Cloudflare's edge platform.
## Development Commands
Local development and testing:
- `npm run dev` or `npm start` - Start Wrangler development server
- `npm run build` - Build worker for deployment (dry-run with output to dist/)
- `npm run deploy` - Deploy worker to Cloudflare
- `npm run test` - Run Vitest tests using Cloudflare Workers test environment
- `npm run cf-typegen` - Generate TypeScript types from wrangler.toml bindings
## Architecture
### Worker Implementation (`src/index.ts`)
The worker implements a basic HTTP handler that:
1. **Environment Setup**: Uses `@llamaindex/env` to configure runtime environment variables
2. **Agent Initialization**: Creates an OpenAI agent with streaming support
3. **Request Processing**: Accepts text input via HTTP request body
4. **Streaming Response**: Returns streaming AI responses (though currently returns static "Hello, world!")
**Key Components:**
- Environment interface with `OPENAI_API_KEY` requirement
- Dynamic imports for optimal bundle size (`@llamaindex/env`, `@llamaindex/openai`)
- OpenAI agent with streaming chat capability
- Transform stream for encoding chat response deltas
### Configuration Files
**Wrangler Configuration (`wrangler.toml`):**
- Worker name: "agent"
- Entry point: `src/index.ts`
- Compatibility date: 2024-04-23
- Node.js compatibility enabled via `nodejs_compat` flag
- Commented examples for all major Cloudflare Worker bindings (D1, KV, R2, etc.)
**TypeScript Configuration (`tsconfig.json`):**
- Target: ES2021 with ES2022 modules
- Bundler module resolution for Cloudflare Workers
- Cloudflare Workers types included (`@cloudflare/workers-types/2023-07-01`)
- Isolated modules enabled for edge runtime compatibility
### Testing Setup
**Vitest Configuration (`vitest.config.ts`):**
- Uses `@cloudflare/vitest-pool-workers` for Cloudflare Workers testing environment
- Integrates with wrangler.toml configuration
- Enables testing in actual Workers runtime conditions
**Test Implementation (`test/index.spec.ts`):**
- Unit-style testing with Cloudflare Workers test utilities
- Mock environment variables (OPENAI_API_KEY)
- Uses `createExecutionContext()` and `waitOnExecutionContext()` for proper async testing
- Currently marked as failing due to implementation bug (returns "Hello World!" instead of actual agent response)
## Runtime Environment
### Cloudflare Workers Compatibility
This example demonstrates LlamaIndex.TS compatibility with the Cloudflare Workers runtime (`workerd`):
- **Edge Runtime**: Runs on Cloudflare's global edge network
- **Node.js Compatibility**: Uses `nodejs_compat` flag for Node.js APIs
- **Module System**: ESM-only with dynamic imports for code splitting
- **Environment Variables**: Secure handling via Cloudflare Workers environment bindings
### Key Dependencies
- `llamaindex` (workspace) - Main LlamaIndex.TS package
- `@cloudflare/workers-types` - TypeScript definitions for Workers APIs
- `@cloudflare/vitest-pool-workers` - Testing framework for Workers environment
- `wrangler` - Cloudflare Workers CLI and build tool
## Development Notes
### Environment Variables
- Create `.dev.vars` file with `OPENAI_API_KEY=your_key_here` for local development
- Production secrets managed via `wrangler secret put OPENAI_API_KEY`
### Known Issues
- **Response Bug**: Worker currently returns static "Hello, world!" instead of streaming agent response (line 34 in `src/index.ts`)
- **Test Status**: Main test marked as `.fails()` due to above implementation issue
### Bundle Optimization
- Uses dynamic imports to enable code splitting and reduce initial bundle size
- Critical for Cloudflare Workers size limits and cold start performance
- Environment setup (`@llamaindex/env`) imported dynamically to defer execution
### Security Considerations
- API keys handled through Cloudflare Workers environment bindings
- No sensitive data stored in source code
- Secure environment variable access pattern using `env` parameter
## Common Workflows
1. **Local Development**: Use `npm run dev` with `.dev.vars` file for API keys
2. **Testing**: Run `npm test` to validate Workers runtime compatibility
3. **Deployment**: Use `npm run deploy` after configuring production secrets
4. **Debugging**: Use `wrangler tail` to view production logs and errors
5. **Type Generation**: Run `npm run cf-typegen` after modifying wrangler.toml bindings
## Integration Testing Purpose
This example serves multiple purposes in the e2e test suite:
- **Runtime Validation**: Ensures LlamaIndex.TS works in Cloudflare Workers environment
- **Bundle Testing**: Validates that dynamic imports and code splitting work correctly
- **API Integration**: Tests OpenAI provider integration in edge runtime
- **Streaming Support**: Demonstrates streaming response handling in Workers
- **Reference Implementation**: Provides template for real-world Cloudflare Workers deployments
@@ -1,6 +1,6 @@
{
"name": "@llamaindex/cloudflare-worker-agent-test",
"version": "0.0.161",
"version": "0.0.166",
"type": "module",
"private": true,
"scripts": {
@@ -1,5 +1,37 @@
# @llamaindex/llama-parse-browser-test
## 0.0.68
### Patch Changes
- @llamaindex/cloud@4.0.13
## 0.0.67
### Patch Changes
- @llamaindex/cloud@4.0.12
## 0.0.66
### Patch Changes
- Updated dependencies [76ff23d]
- @llamaindex/cloud@4.0.11
## 0.0.65
### Patch Changes
- @llamaindex/cloud@4.0.10
## 0.0.64
### Patch Changes
- Updated dependencies [3703f90]
- @llamaindex/cloud@4.0.9
## 0.0.63
### Patch Changes
+111
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@@ -0,0 +1,111 @@
# CLAUDE.md
This file provides guidance to Claude Code (claude.ai/code) when working with the LlamaParse Browser Test example.
## Package Overview
The `@llamaindex/llama-parse-browser-test` package is a minimal browser-based example that demonstrates how to use LlamaParse (from `@llamaindex/cloud`) in a web browser environment. This serves as both an integration test and a reference implementation for browser compatibility with LlamaIndexTS cloud services.
## Purpose
This example validates that:
- `@llamaindex/cloud` package works correctly in browser environments
- LlamaParse functionality can be bundled and run in web applications
- The build process properly handles WASM dependencies and browser-specific requirements
- TypeScript compilation works with DOM APIs and modern bundler tooling
## Development Commands
- `npm run dev` - Start Vite development server with hot reload
- `npm run build` - Build for production (TypeScript compilation + Vite build)
- `npm run preview` - Preview the production build locally
## Architecture
### Build Setup
**Bundler**: Vite 6.x with TypeScript support
**WASM Support**: Uses `vite-plugin-wasm` for WebAssembly module handling
**Module System**: ESM-only (`"type": "module"`)
**Target Environment**: Modern browsers (ES2020+)
### Key Configuration
**Vite Config (`vite.config.ts`):**
- `vite-plugin-wasm` - Enables WASM module imports
- `ssr.external: ["tiktoken"]` - Excludes tiktoken from SSR bundling (browser-only)
**TypeScript Config (`tsconfig.json`):**
- Extends root monorepo TypeScript configuration
- DOM and DOM.Iterable libraries enabled for browser APIs
- Bundler module resolution for optimal Vite integration
- References `@llamaindex/cloud` package for type checking
### Application Structure
**Entry Point (`src/main.ts`):**
- Imports `LlamaParseReader` from `@llamaindex/cloud`
- Instantiates the reader to test browser compatibility
- Minimal DOM manipulation for visual feedback
**Styling (`src/style.css`):**
- Modern CSS with light/dark theme support
- Responsive design with flexbox layout
- Clean, minimal UI suitable for testing environment
**HTML (`index.html`):**
- Standard Vite HTML template
- Single-page application structure
- Module script loading for ES6 imports
## Dependencies
**Core Dependency:**
- `@llamaindex/cloud` (workspace) - LlamaCloud integration including LlamaParse
**Development Dependencies:**
- `vite` - Modern build tool and development server
- `vite-plugin-wasm` - WebAssembly support for Vite
- `typescript` - TypeScript compiler and language support
## Testing Integration
This example functions as an end-to-end test by:
1. **Import Validation**: Verifies `@llamaindex/cloud` can be imported in browser context
2. **Instantiation Testing**: Tests that `LlamaParseReader` can be created without errors
3. **Bundle Compatibility**: Ensures the build process handles all dependencies correctly
4. **Runtime Verification**: Validates the application loads and runs in actual browsers
## Browser Compatibility
The application targets modern browsers with:
- ES2020 language features
- ES Modules support
- WebAssembly support (for potential WASM dependencies)
- Modern DOM APIs
## Development Notes
- **Minimal Implementation**: Keeps the example simple to focus on integration testing
- **Cloud Service Focus**: Specifically tests browser compatibility with LlamaCloud services
- **Build Validation**: Ensures the build process works end-to-end without browser-specific issues
- **WASM Preparation**: Configured for WASM dependencies even if not currently used
- **Type Safety**: Full TypeScript integration with proper DOM type definitions
## Common Issues
- **WASM Loading**: The `vite-plugin-wasm` handles WebAssembly module loading complexities
- **SSR Exclusions**: Tiktoken is excluded from SSR to prevent Node.js-specific dependencies in browser builds
- **Module Resolution**: Uses bundler module resolution for optimal compatibility with modern web tooling
This example serves as a foundation for integrating LlamaIndexTS cloud services into web applications and validates that the core cloud functionality works correctly in browser environments.
@@ -1,7 +1,7 @@
{
"name": "@llamaindex/llama-parse-browser-test",
"private": true,
"version": "0.0.63",
"version": "0.0.68",
"type": "module",
"scripts": {
"dev": "vite",
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# @llamaindex/next-agent-test
## 0.1.166
### Patch Changes
- llamaindex@0.11.5
## 0.1.165
### Patch Changes
- llamaindex@0.11.4
## 0.1.164
### Patch Changes
- llamaindex@0.11.3
## 0.1.163
### Patch Changes
- llamaindex@0.11.2
## 0.1.162
### Patch Changes
- llamaindex@0.11.1
## 0.1.161
### Patch Changes
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# CLAUDE.md
This file provides guidance to Claude Code (claude.ai/code) when working with the Next.js Agent example in the LlamaIndexTS e2e testing suite.
## Package Overview
The `@llamaindex/next-agent-test` package is a Next.js application example that demonstrates integration between LlamaIndexTS and Next.js, specifically showcasing agent functionality with React Server Components and streaming UI using the Vercel AI SDK.
This example serves as both an integration test for Next.js compatibility and a reference implementation for building LlamaIndex-powered chat applications with Next.js.
## Development Commands
Local development commands:
- `npm run dev` - Start the Next.js development server on http://localhost:3000
- `npm run build` - Build the application for production
- `npm run start` - Start the production server
From the workspace root:
- `pnpm build` - Build all packages (required before running this example)
- `pnpm e2e` - Run e2e tests including this Next.js integration
## Architecture
### Next.js Configuration
The application uses a custom Next.js configuration with the LlamaIndex Next.js plugin:
- `next.config.mjs` imports and applies `withLlamaIndex` from `llamaindex/next`
- Enables Edge Runtime compatibility for LlamaIndex components
- Uses Next.js 15 with React 19
### Runtime Environment
- **Edge Runtime**: The main page (`src/app/page.tsx`) exports `runtime = "edge"` for Vercel Edge Runtime compatibility
- **React Server Components**: Uses Next.js App Router with RSC architecture
- **Streaming UI**: Integrates Vercel AI SDK's `createStreamableUI` for real-time agent responses
### Key Components
**Main Application (`src/app/page.tsx`):**
- Client component using React's `useFormState` hook
- Triggers server action `chatWithAgent` with a simple form interface
- Displays streaming agent responses in real-time
**Server Actions (`src/actions/index.tsx`):**
- `chatWithAgent` function creates an OpenAI agent and handles streaming chat
- Uses `OpenAIAgent` from `@llamaindex/openai` package
- Implements streaming response with `createStreamableUI` from AI SDK
- Accepts question string and previous chat messages as parameters
**Test Page (`src/app/test/page.tsx`):**
- Simple import test that ensures `llamaindex` package loads correctly
- Serves as a basic smoke test for package compatibility
### Dependencies
**Core Dependencies:**
- `llamaindex` - Main LlamaIndex package (workspace dependency)
- `next` - Next.js framework (v15.3.0+)
- `react` & `react-dom` - React 19 for latest features
- `ai` - Vercel AI SDK for streaming UI components
**Development Dependencies:**
- TypeScript configuration for Next.js development
- ESLint with Next.js specific rules
## Integration Patterns
### Agent Integration
The example demonstrates how to:
1. Create an OpenAI agent with configurable tools
2. Handle streaming chat responses in a server action
3. Integrate with React's form state management
4. Display real-time streaming responses in the UI
### Next.js Best Practices
- Uses App Router with proper server/client component separation
- Implements React Server Actions for agent communication
- Leverages Edge Runtime for optimal performance
- Follows Next.js 15 conventions with React 19 features
## Testing Role
This example serves multiple testing purposes in the e2e suite:
1. **Next.js Compatibility**: Validates LlamaIndex works with latest Next.js versions
2. **Edge Runtime Testing**: Ensures agent functionality works in edge environments
3. **Streaming Integration**: Tests real-time agent responses with AI SDK
4. **React Server Components**: Validates RSC compatibility with LlamaIndex agents
5. **Build Integration**: Confirms Next.js build process works with LlamaIndex
## Development Notes
- **Build Dependency**: This example requires the LlamaIndex packages to be built first (`pnpm build` from workspace root)
- **API Keys**: Real agent functionality requires OpenAI API key in environment variables
- **Edge Runtime**: The application is configured for edge runtime compatibility, making it suitable for Vercel deployment
- **Streaming UI**: Demonstrates modern streaming patterns for AI applications
- **Framework Integration**: Shows best practices for integrating LlamaIndex with React-based frameworks
## Environment Requirements
- Node.js environment with Next.js support
- OpenAI API key for real agent functionality (optional for basic testing)
- Compatible with Vercel Edge Runtime and standard Node.js runtime
## Common Workflows
1. **Local Development**: Run `npm run dev` after building workspace packages
2. **Testing Agent Flow**: Use the simple form interface to test streaming agent responses
3. **Build Validation**: Run `npm run build` to ensure production build compatibility
4. **Integration Testing**: Part of e2e test suite validating Next.js + LlamaIndex integration
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{
"name": "@llamaindex/next-agent-test",
"version": "0.1.161",
"version": "0.1.166",
"private": true,
"scripts": {
"dev": "next dev",
@@ -1,5 +1,35 @@
# test-edge-runtime
## 0.1.165
### Patch Changes
- llamaindex@0.11.5
## 0.1.164
### Patch Changes
- llamaindex@0.11.4
## 0.1.163
### Patch Changes
- llamaindex@0.11.3
## 0.1.162
### Patch Changes
- llamaindex@0.11.2
## 0.1.161
### Patch Changes
- llamaindex@0.11.1
## 0.1.160
### Patch Changes
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# CLAUDE.md
This file provides guidance to Claude Code (claude.ai/code) when working with the LlamaIndexTS Next.js Edge Runtime example.
## Package Overview
The `@llamaindex/nextjs-edge-runtime-test` package is an end-to-end test example that validates LlamaIndexTS compatibility with Next.js Edge Runtime. This example serves as both a test case and a reference implementation for using LlamaIndex in Vercel Edge Runtime environments.
## Purpose
This example specifically tests:
- LlamaIndex package import compatibility in Edge Runtime
- Next.js Edge Runtime environment detection
- Proper runtime configuration for LlamaIndex in serverless edge environments
- Integration with Next.js 15.x App Router using edge runtime
## Development Commands
Standard Next.js commands:
- `npm run dev` - Start development server
- `npm run build` - Build for production
- `npm start` - Start production server
From the workspace root:
- `pnpm build` - Build all packages (required before testing)
- `pnpm e2e` - Run all e2e tests including this example
## Architecture
### Next.js Configuration
**next.config.mjs:**
- Uses `withLlamaIndex` wrapper from `llamaindex/next` for proper Edge Runtime configuration
- Applies necessary bundling and polyfill configurations for LlamaIndex compatibility
### Runtime Configuration
**Edge Runtime Setup:**
- Both `src/app/layout.tsx` and `src/app/page.tsx` export `runtime = "edge"`
- Forces Next.js to use Edge Runtime instead of Node.js runtime
- Validates LlamaIndex works in constrained serverless environments
### Runtime Validation
**src/utils/llm.ts:**
- Imports the main `llamaindex` package to test compatibility
- Performs runtime environment validation by checking for `EdgeRuntime` global
- Throws error if not running in expected Edge Runtime environment
- Acts as a smoke test for package loading in edge environments
### Application Structure
**App Router Setup:**
- Uses Next.js 13+ App Router with TypeScript
- Minimal React components for testing runtime compatibility
- CSS imports to validate bundling works correctly
- Path aliases configured for `@/*` imports
## Key Features
### Edge Runtime Compatibility
- Tests LlamaIndex package loading in Vercel Edge Runtime
- Validates proper tree-shaking and bundling for edge environments
- Ensures no Node.js-specific APIs are accidentally imported
### LlamaIndex Integration
- Uses workspace dependency `llamaindex: "workspace:*"`
- Leverages `withLlamaIndex` Next.js plugin for proper configuration
- Tests base package import without specific providers
### Environment Detection
- Runtime environment validation ensures code runs in expected context
- Prevents deployment issues by catching runtime mismatches early
- Provides clear error messages for debugging
## Dependencies
**Core Dependencies:**
- `llamaindex` - Main LlamaIndexTS package (workspace dependency)
- `next` - Next.js framework (v15.3.0)
- `react` & `react-dom` - React framework (v19.x)
**Development Dependencies:**
- TypeScript types for Node.js, React, and React DOM
- TypeScript compiler for type checking
## Development Notes
- **Build Dependency**: Ensure `pnpm build` is run from workspace root before testing
- **Edge Runtime Only**: This example is specifically designed for Edge Runtime, not Node.js runtime
- **Minimal Implementation**: Intentionally minimal to isolate Edge Runtime compatibility testing
- **Import Testing**: The `src/utils/llm.ts` file serves as an import compatibility test
- **Bundle Size**: Edge Runtime has size constraints, so this tests LlamaIndex bundle compatibility
## Testing Purpose
This example validates that:
1. LlamaIndex packages can be imported in Edge Runtime environments
2. Next.js configuration works correctly with LlamaIndex
3. Runtime environment detection functions properly
4. Bundle size and tree-shaking work for edge deployments
5. No Node.js-specific APIs are inadvertently used
## Common Issues
- **Runtime Detection Failures**: If `EdgeRuntime` is not detected, check Next.js configuration
- **Import Errors**: Ensure workspace packages are built before running
- **Bundle Size**: Edge Runtime has memory/size limits that may affect large imports
- **API Compatibility**: Some LlamaIndex features may not work in Edge Runtime due to API limitations
## Related Examples
- `../nextjs-node-runtime/` - Node.js runtime equivalent
- `../cloudflare-worker-agent/` - Cloudflare Workers edge runtime
- `../nextjs-agent/` - Full Next.js agent implementation
@@ -1,6 +1,6 @@
{
"name": "@llamaindex/nextjs-edge-runtime-test",
"version": "0.1.160",
"version": "0.1.165",
"private": true,
"scripts": {
"dev": "next dev",
@@ -1,5 +1,41 @@
# @llamaindex/next-node-runtime
## 0.1.33
### Patch Changes
- llamaindex@0.11.5
- @llamaindex/huggingface@0.1.13
- @llamaindex/readers@3.1.7
## 0.1.32
### Patch Changes
- @llamaindex/huggingface@0.1.12
- llamaindex@0.11.4
- @llamaindex/readers@3.1.6
## 0.1.31
### Patch Changes
- llamaindex@0.11.3
## 0.1.30
### Patch Changes
- @llamaindex/huggingface@0.1.11
- llamaindex@0.11.2
- @llamaindex/readers@3.1.5
## 0.1.29
### Patch Changes
- llamaindex@0.11.1
## 0.1.28
### Patch Changes
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# CLAUDE.md
This file provides guidance to Claude Code (claude.ai/code) when working with the Next.js Node Runtime example package.
## Package Overview
The `@llamaindex/next-node-runtime-test` package is an end-to-end test example that demonstrates LlamaIndexTS integration with Next.js running on the Node.js runtime. This example validates that LlamaIndex packages work correctly in a Next.js App Router environment with server-side rendering and server actions.
## Development Commands
From this directory:
- `npm run dev` - Start development server on http://localhost:3000
- `npm run build` - Build the Next.js application
- `npm run start` - Start production server
From the e2e root directory:
- `pnpm e2e` - Run all e2e tests including this example
## Application Structure
### Configuration Files
- `next.config.mjs` - Next.js configuration with LlamaIndex integration using `withLlamaIndex()`
- `tsconfig.json` - TypeScript configuration for Next.js with App Router
- `package.json` - Dependencies including `llamaindex`, `@llamaindex/huggingface`, and `@llamaindex/readers`
### Source Structure
**App Router Pages:**
- `src/app/page.tsx` - Home page that demonstrates tokenizer usage with `runtime = "nodejs"`
- `src/app/layout.tsx` - Root layout component with Inter font
**API Routes:**
- `src/app/api/openai/route.ts` - POST endpoint that calls OpenAI server action
**Server Actions:**
- `src/actions/openai.ts` - Server action demonstrating full LlamaIndex workflow with OpenAI agent
**Utilities:**
- `src/utils/tokenizer.ts` - Runtime validation and tokenization example
## Key Features Demonstrated
### 1. Runtime Validation (`src/utils/tokenizer.ts`)
Tests that the application runs in Node.js runtime (not Edge):
```typescript
// @ts-expect-error EdgeRuntime is not defined in type
if (typeof EdgeRuntime === "string") {
throw new Error("Expected to not run in EdgeRuntime");
}
```
Uses LlamaIndex tokenizers:
```typescript
import { Tokenizers, tokenizers } from "@llamaindex/env/tokenizers";
```
### 2. OpenAI Agent Integration (`src/actions/openai.ts`)
Demonstrates a complete LlamaIndex workflow:
- **LLM Configuration**: OpenAI GPT-4o with API key management
- **Embedding Model**: HuggingFace BAAI/bge-small-en-v1.5 embeddings
- **Document Loading**: SimpleDirectoryReader for local file processing
- **Vector Index**: VectorStoreIndex creation from documents
- **Tool Integration**: Query engine as a tool for the agent
- **Agent Creation**: OpenAIAgent with tools for conversational AI
- **Callback Handling**: Event listeners for tool calls and results
### 3. Next.js Integration
- **Server Actions**: "use server" directive for server-side LlamaIndex operations
- **API Routes**: RESTful endpoint for external integration
- **App Router**: Modern Next.js routing with TypeScript support
- **LlamaIndex Plugin**: `withLlamaIndex()` wrapper for proper bundling
## Dependencies
**Core LlamaIndex:**
- `llamaindex` - Main LlamaIndex package
- `@llamaindex/huggingface` - HuggingFace embedding models
- `@llamaindex/readers` - Document readers including SimpleDirectoryReader
**Next.js Stack:**
- `next@^15.3.0` - Next.js framework
- `react@19.0.0` & `react-dom@19.0.0` - React runtime
- `typescript@^5.7.3` - TypeScript support
## Testing Purpose
This example serves as an integration test for:
1. **Node.js Runtime Compatibility**: Ensures LlamaIndex works in Next.js Node.js runtime
2. **Server Actions**: Validates server-side LlamaIndex operations
3. **Document Processing**: Tests file reading and vector indexing
4. **Agent Workflows**: Validates OpenAI agent with tool integration
5. **Bundling**: Ensures proper webpack bundling with `withLlamaIndex()`
6. **API Integration**: Tests REST API endpoints with LlamaIndex backend
## Environment Variables
- `NEXT_PUBLIC_OPENAI_KEY` - OpenAI API key (falls back to "FAKE_KEY_TO_PASS_TESTS" for testing)
## Development Notes
- **Runtime Enforcement**: Explicitly sets `runtime = "nodejs"` in page components
- **Error Handling**: Comprehensive try-catch in server actions
- **Callback Management**: Event listeners for debugging tool interactions
- **Testing Compatibility**: Fake API key fallback for automated testing
- **Bundle Optimization**: Uses `withLlamaIndex()` for proper webpack configuration
- **Type Safety**: Full TypeScript support with Next.js type definitions
## Common Workflows
1. **Local Development**: `npm run dev` to start development server with hot reload
2. **Production Testing**: `npm run build && npm run start` to test production build
3. **Integration Testing**: Run from e2e root with `pnpm e2e` for automated validation
4. **Agent Testing**: POST to `/api/openai` endpoint with query payload for agent responses
@@ -1,6 +1,6 @@
{
"name": "@llamaindex/next-node-runtime-test",
"version": "0.1.28",
"version": "0.1.33",
"private": true,
"scripts": {
"dev": "next dev",
@@ -1,5 +1,35 @@
# vite-import-llamaindex
## 0.0.32
### Patch Changes
- llamaindex@0.11.5
## 0.0.31
### Patch Changes
- llamaindex@0.11.4
## 0.0.30
### Patch Changes
- llamaindex@0.11.3
## 0.0.29
### Patch Changes
- llamaindex@0.11.2
## 0.0.28
### Patch Changes
- llamaindex@0.11.1
## 0.0.27
### Patch Changes
@@ -0,0 +1,108 @@
# CLAUDE.md
This file provides guidance to Claude Code (claude.ai/code) when working with the vite-import-llamaindex example package.
## Package Overview
The `vite-import-llamaindex` package is a minimal Vite-based compatibility test that validates LlamaIndexTS can be properly imported and bundled in browser environments using Vite. This example serves as both an integration test and a demonstration of bundle size validation.
## Purpose
This example specifically tests:
- **Vite Bundler Compatibility**: Ensures LlamaIndexTS works correctly with Vite's bundling system
- **Browser Import Validation**: Validates that the `llamaindex` package can be imported in browser-compatible builds
- **Bundle Size Monitoring**: Uses size-limit to track and validate bundle output size
- **Dual Module Support**: Tests both ESM and CJS output formats through Vite's library mode
## Development Commands
Local package commands:
- `npm run build` - Build the example using Vite library mode
- `npm run size-limit` - Check bundle size against configured limits
From the root directory:
- `pnpm build` - Build all packages (required before testing)
- `pnpm e2e` - Run all e2e tests including this example
## Project Structure
```
vite-import-llamaindex/
├── src/
│ └── main.ts # Main entry point that imports llamaindex
├── public/
│ └── vite.svg # Vite logo asset
├── package.json # Package configuration with size-limit setup
├── vite.config.ts # Vite library build configuration
├── tsconfig.json # TypeScript configuration
└── CHANGELOG.md # Version history
```
## Configuration Details
### Vite Configuration (`vite.config.ts`)
- **Library Mode**: Configured to build as a library with dual format output (ESM + CJS)
- **Entry Point**: `src/main.ts` as the main entry
- **Output Name**: `LlamaIndexImportTest`
- **Formats**: Both ES modules and CommonJS for compatibility testing
### TypeScript Configuration (`tsconfig.json`)
- **Target**: ES2020 for modern browser compatibility
- **Module System**: ESNext with bundler resolution for Vite
- **Strict Mode**: Enabled with comprehensive linting rules
- **DOM Types**: Includes DOM and DOM.Iterable for browser environment
### Bundle Size Monitoring
The package uses `size-limit` to monitor bundle size:
```json
"size-limit": [
{
"path": "dist/LlamaIndexImportTest.js"
}
]
```
This ensures the bundled output remains within reasonable size constraints for browser applications.
## Test Approach
The test validates:
1. **Import Success**: The `llamaindex` package can be imported without errors
2. **Bundle Generation**: Vite can successfully bundle the code into browser-compatible output
3. **Size Validation**: The resulting bundle meets size requirements
4. **Module Compatibility**: Both ESM and CJS outputs are generated correctly
## Dependencies
- **`llamaindex`**: Workspace dependency for testing the main package
- **`vite`**: Build tool and bundler
- **`typescript`**: TypeScript compiler
- **`@size-limit/preset-big-lib`**: Bundle size analysis for libraries
- **`size-limit`**: Bundle size monitoring tool
## Development Notes
- **Build Dependency**: This example depends on the main `llamaindex` package being built first
- **Browser Focus**: Specifically tests browser compatibility, not Node.js environments
- **Size Monitoring**: Bundle size is actively monitored to prevent bloat
- **Minimal Example**: Kept intentionally simple to isolate bundling issues
- **Integration Test**: Serves as both an example and an automated test in the e2e suite
## Common Issues
1. **Build Failures**: Ensure `pnpm build` is run from the root before testing this example
2. **Size Limit Violations**: If bundle size exceeds limits, investigate dependency bloat
3. **Import Errors**: Check that the `llamaindex` package exports are browser-compatible
4. **TypeScript Errors**: Verify TypeScript configuration matches Vite requirements
## Relationship to E2E Testing
This example is part of the broader e2e testing suite and validates that LlamaIndexTS maintains browser compatibility. It ensures that when users integrate LlamaIndexTS with Vite in their own projects, they won't encounter bundling or import issues.
@@ -1,7 +1,7 @@
{
"name": "vite-import-llamaindex",
"private": true,
"version": "0.0.27",
"version": "0.0.32",
"type": "module",
"scripts": {
"build": "vite build",
@@ -1,5 +1,35 @@
# @llamaindex/waku-query-engine-test
## 0.0.166
### Patch Changes
- llamaindex@0.11.5
## 0.0.165
### Patch Changes
- llamaindex@0.11.4
## 0.0.164
### Patch Changes
- llamaindex@0.11.3
## 0.0.163
### Patch Changes
- llamaindex@0.11.2
## 0.0.162
### Patch Changes
- llamaindex@0.11.1
## 0.0.161
### Patch Changes
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# CLAUDE.md
This file provides guidance to Claude Code (claude.ai/code) when working with the LlamaIndexTS Waku Query Engine example.
## Package Overview
The `@llamaindex/waku-query-engine-test` package demonstrates LlamaIndexTS integration with the Waku React framework. This example showcases how to build a document query interface using LlamaIndex's VectorStoreIndex and QueryEngine capabilities within a Waku application that supports both static rendering and server actions.
## Development Commands
- `npm run dev` - Start Waku development server
- `npm run build` - Build the application for production
- `npm run start` - Start the production server
## Architecture
### Framework Integration
This example uses **Waku 0.22.2**, a lightweight React framework that supports:
- React Server Components (RSC)
- Server actions with "use server" directive
- Static site generation with `render: "static"` config
- Client-side hydration with "use client" components
### LlamaIndex Integration
The core LlamaIndex functionality is implemented in `src/actions.ts`:
**Key Components:**
- **Document Loading**: Reads text from `node_modules/llamaindex/examples/abramov.txt`
- **Vector Index**: Creates embeddings using `VectorStoreIndex.fromDocuments()`
- **Query Engine**: Provides semantic search capabilities via `index.asQueryEngine()`
- **Lazy Loading**: QueryEngine is initialized once and cached for subsequent requests
**Data Flow:**
1. User inputs question in chat interface (`src/components/chat.tsx`)
2. Form submission triggers server action (`chatWithAI`)
3. Server action queries the VectorStoreIndex
4. Response is returned and displayed in the UI
### Component Structure
**Server Components:**
- `src/pages/_layout.tsx` - Root layout with static metadata
- `src/pages/index.tsx` - Home page with static rendering config
- `src/components/header.tsx` - Navigation header
- `src/components/footer.tsx` - Site footer
**Client Components:**
- `src/components/chat.tsx` - Interactive chat interface with form state management
### Styling
- **TailwindCSS 4.1.4** for utility-first styling
- **PostCSS** for CSS processing
- **Nunito font** via Google Fonts
- Responsive design with mobile-first approach
## Dependencies
**Core Dependencies:**
- `@llamaindex/env` - Runtime environment compatibility
- `llamaindex` - Main LlamaIndexTS package for document indexing and querying
- `waku` - React framework for SSR/SSG
- `react` & `react-dom` - React 19.0.0 with experimental features
- `react-server-dom-webpack` - React Server Components support
**Development Dependencies:**
- `typescript` - TypeScript 5.7.3 with strict mode
- `tailwindcss` & `@tailwindcss/postcss` - Styling framework
- `rollup` - Build tool used by Waku
## TypeScript Configuration
- **Target**: ESNext with modern features
- **Module**: ESNext with bundler resolution
- **React**: Experimental types for React 19 features
- **Strict**: Full TypeScript strict mode enabled
## Key Features Demonstrated
1. **Server Actions Integration**: Seamless LlamaIndex queries via Waku server actions
2. **Document RAG**: Retrieval-Augmented Generation using vector embeddings
3. **Static Generation**: Pages are statically rendered while maintaining interactive features
4. **React 19 Features**: Uses latest React with experimental types
5. **Modern Styling**: TailwindCSS 4.x with PostCSS integration
## Testing Context
This example serves as an end-to-end test for:
- LlamaIndexTS compatibility with Waku framework
- React Server Components integration
- Vector store and query engine functionality
- Server action patterns with LlamaIndex
- Build and deployment workflows
## Development Notes
- **File Loading**: Uses `@llamaindex/env` fs abstraction for cross-platform file access
- **Query Caching**: QueryEngine is lazily loaded and cached for performance
- **Error Handling**: Basic error handling in server actions and form submissions
- **Bundle Size**: Waku's optimized bundling ensures minimal client-side JavaScript
- **Runtime Support**: Compatible with Node.js runtime environments
## Common Patterns
**Adding New Documents:**
1. Place document files in accessible location
2. Update `lazyLoadQueryEngine()` to load additional documents
3. Rebuild vector index with new document set
**Extending Chat Interface:**
1. Modify `Chat` component for enhanced UI features
2. Update `chatWithAI` server action for additional processing
3. Add error states and loading indicators as needed
**Styling Updates:**
1. Modify TailwindCSS classes in components
2. Update `tailwind.config.js` for custom configurations
3. Use `src/styles.css` for global styles
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{
"name": "@llamaindex/waku-query-engine-test",
"version": "0.0.161",
"version": "0.0.166",
"type": "module",
"private": true,
"scripts": {
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# examples
## 0.3.19
### Patch Changes
- Updated dependencies [766054b]
- Updated dependencies [5346623]
- Updated dependencies [71598f8]
- @llamaindex/workflow@1.1.6
- @llamaindex/google@0.3.6
- @llamaindex/core@0.6.9
- llamaindex@0.11.5
- @llamaindex/cloud@4.0.13
- @llamaindex/node-parser@2.0.9
- @llamaindex/anthropic@0.3.11
- @llamaindex/assemblyai@0.1.8
- @llamaindex/clip@0.0.59
- @llamaindex/cohere@0.0.23
- @llamaindex/deepinfra@0.0.59
- @llamaindex/discord@0.1.8
- @llamaindex/huggingface@0.1.13
- @llamaindex/jinaai@0.0.19
- @llamaindex/mistral@0.1.9
- @llamaindex/mixedbread@0.0.23
- @llamaindex/notion@0.1.8
- @llamaindex/ollama@0.1.9
- @llamaindex/openai@0.4.3
- @llamaindex/perplexity@0.0.16
- @llamaindex/portkey-ai@0.0.51
- @llamaindex/replicate@0.0.51
- @llamaindex/astra@0.0.23
- @llamaindex/azure@0.1.20
- @llamaindex/chroma@0.0.23
- @llamaindex/elastic-search@0.1.9
- @llamaindex/firestore@1.0.16
- @llamaindex/milvus@0.1.18
- @llamaindex/mongodb@0.0.24
- @llamaindex/pinecone@0.1.9
- @llamaindex/postgres@0.0.52
- @llamaindex/qdrant@0.1.19
- @llamaindex/supabase@0.1.8
- @llamaindex/upstash@0.0.23
- @llamaindex/weaviate@0.0.23
- @llamaindex/vercel@0.1.9
- @llamaindex/voyage-ai@1.0.15
- @llamaindex/readers@3.1.7
- @llamaindex/tools@0.0.14
- @llamaindex/deepseek@0.0.19
- @llamaindex/fireworks@0.0.19
- @llamaindex/groq@0.0.74
- @llamaindex/together@0.0.19
- @llamaindex/vllm@0.0.45
- @llamaindex/xai@0.0.6
## 0.3.18
### Patch Changes
- Updated dependencies [c927457]
- @llamaindex/anthropic@0.3.10
- @llamaindex/openai@0.4.2
- @llamaindex/core@0.6.8
- @llamaindex/clip@0.0.58
- @llamaindex/deepinfra@0.0.58
- @llamaindex/deepseek@0.0.18
- @llamaindex/fireworks@0.0.18
- @llamaindex/groq@0.0.73
- @llamaindex/huggingface@0.1.12
- @llamaindex/jinaai@0.0.18
- @llamaindex/perplexity@0.0.15
- @llamaindex/azure@0.1.19
- @llamaindex/elastic-search@0.1.8
- @llamaindex/milvus@0.1.17
- @llamaindex/qdrant@0.1.18
- @llamaindex/supabase@0.1.7
- @llamaindex/together@0.0.18
- @llamaindex/vllm@0.0.44
- @llamaindex/xai@0.0.5
- @llamaindex/cloud@4.0.12
- llamaindex@0.11.4
- @llamaindex/node-parser@2.0.8
- @llamaindex/assemblyai@0.1.7
- @llamaindex/cohere@0.0.22
- @llamaindex/discord@0.1.7
- @llamaindex/google@0.3.5
- @llamaindex/mistral@0.1.8
- @llamaindex/mixedbread@0.0.22
- @llamaindex/notion@0.1.7
- @llamaindex/ollama@0.1.8
- @llamaindex/portkey-ai@0.0.50
- @llamaindex/replicate@0.0.50
- @llamaindex/astra@0.0.22
- @llamaindex/chroma@0.0.22
- @llamaindex/firestore@1.0.15
- @llamaindex/mongodb@0.0.23
- @llamaindex/pinecone@0.1.8
- @llamaindex/postgres@0.0.51
- @llamaindex/upstash@0.0.22
- @llamaindex/weaviate@0.0.22
- @llamaindex/vercel@0.1.8
- @llamaindex/voyage-ai@1.0.14
- @llamaindex/readers@3.1.6
- @llamaindex/tools@0.0.13
- @llamaindex/workflow@1.1.5
## 0.3.17
### Patch Changes
- Updated dependencies [59601dd]
- @llamaindex/openai@0.4.1
- @llamaindex/core@0.6.7
- @llamaindex/clip@0.0.57
- @llamaindex/deepinfra@0.0.57
- @llamaindex/deepseek@0.0.17
- @llamaindex/fireworks@0.0.17
- @llamaindex/groq@0.0.72
- @llamaindex/huggingface@0.1.11
- @llamaindex/jinaai@0.0.17
- @llamaindex/perplexity@0.0.14
- @llamaindex/azure@0.1.17
- @llamaindex/elastic-search@0.1.7
- @llamaindex/milvus@0.1.16
- @llamaindex/qdrant@0.1.16
- @llamaindex/supabase@0.1.6
- @llamaindex/together@0.0.17
- @llamaindex/vllm@0.0.43
- @llamaindex/xai@0.0.4
- @llamaindex/cloud@4.0.10
- llamaindex@0.11.2
- @llamaindex/node-parser@2.0.7
- @llamaindex/anthropic@0.3.8
- @llamaindex/assemblyai@0.1.6
- @llamaindex/cohere@0.0.21
- @llamaindex/discord@0.1.6
- @llamaindex/google@0.3.3
- @llamaindex/mistral@0.1.7
- @llamaindex/mixedbread@0.0.21
- @llamaindex/notion@0.1.6
- @llamaindex/ollama@0.1.7
- @llamaindex/portkey-ai@0.0.49
- @llamaindex/replicate@0.0.49
- @llamaindex/astra@0.0.21
- @llamaindex/chroma@0.0.21
- @llamaindex/firestore@1.0.14
- @llamaindex/mongodb@0.0.22
- @llamaindex/pinecone@0.1.7
- @llamaindex/postgres@0.0.50
- @llamaindex/upstash@0.0.21
- @llamaindex/weaviate@0.0.21
- @llamaindex/vercel@0.1.7
- @llamaindex/voyage-ai@1.0.13
- @llamaindex/readers@3.1.5
- @llamaindex/tools@0.0.12
- @llamaindex/workflow@1.1.4
## 0.3.16
### Patch Changes
+172
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@@ -0,0 +1,172 @@
# CLAUDE.md - Examples Package
This directory contains comprehensive examples demonstrating LlamaIndex.TS functionality across different use cases and integrations.
## Running Examples
All examples are executable TypeScript files that can be run directly:
```bash
# Run a specific example
npx tsx ./rag/starter.ts
npx tsx ./agents/agent/single-agent.ts
npx tsx ./models/openai/openai.ts
# Or use the package script
npm start # runs ./starter.ts (if it exists)
```
## Environment Setup
Most examples require API keys. Set environment variables before running:
```bash
export OPENAI_API_KEY="sk-..."
export ANTHROPIC_API_KEY="sk-..."
export PINECONE_API_KEY="..."
# Add other provider keys as needed
```
## Example Categories
### Agents (`agents/`)
Demonstrates agent functionality and workflows:
- **`agent/`** - Modern agent implementations using `@llamaindex/workflow`
- `single-agent.ts` - Basic agent with tool usage
- `multiple-agents.ts` - Multi-agent coordination
- `blog-writer.ts` - Content generation agent
- `with-anthropic.ts`, `with-ollama.ts` - Provider-specific agents
- **`workflow/`** - Workflow orchestration examples
- **`toolsStream.ts`** - Streaming tool interactions
### RAG (Retrieval-Augmented Generation) (`rag/`)
Core RAG functionality examples:
- `starter.ts` - Basic RAG setup with VectorStoreIndex
- `chatEngine.ts` - Conversational RAG interface
- `chat-engine/` - Different chat engine implementations
- `extractors/` - Metadata extraction examples
- `nodeParser/` - Custom text chunking strategies
- `split.ts`, `sentenceWindow.ts` - Text processing techniques
### Models (`models/`)
Provider-specific LLM and embedding examples:
- **`openai/`** - OpenAI integration (chat, completions, embeddings, multimodal)
- **`anthropic/`** - Claude models with streaming and caching
- **`gemini/`** - Google Gemini including live API examples
- **`ollama/`**, **`groq/`**, **`mistral/`** - Alternative LLM providers
- **`rerankers/`** - Result reranking implementations
### Storage (`storage/`)
Vector store and database integrations:
- **`pinecone-vector-store/`** - Pinecone setup and querying
- **`chromadb/`**, **`qdrantdb/`**, **`weaviate/`** - Alternative vector stores
- **`mongodb/`**, **`pg/`**, **`firestore/`** - Database integrations
- **`metadata-filter/`** - Filtering and search parameters
### Multimodal (`multimodal/`)
Vision and multimodal capabilities:
- `chat.ts` - Image analysis with chat
- `load.ts`, `retrieve.ts` - Multimodal document processing
- `clip.ts` - CLIP embeddings for images
### Readers (`readers/`)
Document ingestion from various sources:
- `src/` - File format readers (PDF, DOCX, CSV, JSON, HTML)
- `llamaparse.ts` - LlamaParse document processing
- `discord/`, `notion/`, `assemblyai/` - Platform-specific readers
### Cloud (`cloud/`)
LlamaCloud integration examples:
- `chat.ts`, `query.ts` - Cloud-based RAG
- `from-documents.ts` - Document upload to cloud
### Deprecated (`deprecated/`)
Legacy agent implementations for reference (prefer `agents/agent/` for new code).
## Key Development Patterns
### Example Structure
Most examples follow this pattern:
```typescript
import { ... } from "llamaindex";
import { ... } from "@llamaindex/provider";
async function main() {
// Setup (API keys, configuration)
// Create components (LLM, embeddings, vector store)
// Build index or engine
// Execute query/chat
// Output results
}
main().catch(console.error);
```
### Provider Imports
Examples use modular provider imports:
```typescript
// Specific provider packages
import { OpenAI } from "@llamaindex/openai";
import { claude } from "@llamaindex/anthropic";
// Core functionality
import { VectorStoreIndex, Document } from "llamaindex";
```
### Error Handling
Include proper error handling and API key validation:
```typescript
if (!process.env.OPENAI_API_KEY) {
console.log("API key required");
process.exit(1);
}
```
## Dependencies
The examples package includes all major LlamaIndex.TS providers and integrations. Key dependencies:
- **Core**: `llamaindex`, `@llamaindex/core`
- **Providers**: All LLM, embedding, and vector store providers
- **Tools**: `@llamaindex/workflow`, `@llamaindex/tools`
- **Utilities**: `tsx` for TypeScript execution, `dotenv` for environment variables
## Usage Notes
1. **Build First**: Some examples may require building the packages first: `pnpm build`
2. **Data Files**: Many examples reference files in `./data/` directory
3. **API Costs**: Be aware that running examples will consume API credits
4. **Environment**: Examples are designed to run in Node.js environment
5. **Interactive Examples**: Some examples include readline interfaces for interactive testing
## Creating New Examples
When adding new examples:
1. Follow the established directory structure by category
2. Use descriptive filenames that indicate functionality
3. Include proper imports from modular packages
4. Add error handling and environment validation
5. Include comments explaining key concepts
6. Test with minimal required dependencies
+1 -1
View File
@@ -25,7 +25,7 @@ async function main() {
},
{
type: "file",
data: Uint8Array.from(fs.readFileSync("./data/manga.pdf")),
data: fs.readFileSync("./data/manga.pdf").toString("base64"),
mimeType: "application/pdf",
},
],
+1 -1
View File
@@ -32,7 +32,7 @@ import fs from "fs";
},
{
type: "file",
data: Uint8Array.from(fs.readFileSync("./data/manga.pdf")),
data: fs.readFileSync("./data/manga.pdf").toString("base64"),
mimeType: "application/pdf",
},
],
+1 -1
View File
@@ -26,7 +26,7 @@ import fs from "fs";
},
{
type: "file",
data: new Uint8Array(fs.readFileSync("./data/manga.pdf")),
data: fs.readFileSync("./data/manga.pdf").toString("base64"),
mimeType: "application/pdf",
},
],
@@ -21,7 +21,7 @@ async function main() {
},
{
type: "file",
data: Uint8Array.from(fs.readFileSync("./data/manga.pdf")),
data: fs.readFileSync("./data/manga.pdf").toString("base64"),
mimeType: "application/pdf",
},
],
@@ -0,0 +1,35 @@
import { openaiResponses } from "@llamaindex/openai";
import fs from "fs";
import { MessageContentDetail } from "llamaindex";
async function main() {
const llm = openaiResponses({
model: "gpt-4.1-mini",
builtInTools: [{ type: "image_generation" }],
});
const response = await llm.chat({
messages: [
{
role: "user",
content:
"Generate an image of a cute tiny llama wearing a hat playing with a cat on a meadow",
},
],
});
const content = response.message.content as MessageContentDetail[];
// This call returns a message with two parts, an image and a text part, get both parts
const imagePart = content.find((part) => part.type === "image");
const textPart = content.find((part) => part.type === "text");
// write the image to a file
fs.writeFileSync(
"llama.png",
Buffer.from(imagePart?.data as string, "base64"),
);
// and print out the text part
console.log(textPart?.text);
}
main().catch(console.error);
@@ -0,0 +1,31 @@
import { openaiResponses } from "@llamaindex/openai";
async function main() {
const llm = openaiResponses({
model: "gpt-4.1",
builtInTools: [
{
type: "code_interpreter",
container: { type: "auto" },
},
],
});
const response = await llm.chat({
messages: [
{
role: "system",
content:
"You are a personal math tutor. When asked a math question, write and run code to answer the question.",
},
{
role: "user",
content: "I need to solve the equation 3x + 11 = 14. Can you help me?",
},
],
});
console.log(response.message.content);
}
main().catch(console.error);
@@ -7,7 +7,6 @@ async function main() {
builtInTools: [{ type: "web_search_preview" }],
});
// Streaming chat example
const response = await llm.chat({
messages: [
{
+46 -46
View File
@@ -1,6 +1,6 @@
{
"name": "@llamaindex/examples",
"version": "0.3.16",
"version": "0.3.19",
"private": true,
"scripts": {
"lint": "eslint .",
@@ -11,51 +11,51 @@
"@azure/cosmos": "^4.1.1",
"@azure/identity": "^4.4.1",
"@azure/search-documents": "^12.1.0",
"@llamaindex/anthropic": "^0.3.7",
"@llamaindex/assemblyai": "^0.1.5",
"@llamaindex/astra": "^0.0.20",
"@llamaindex/azure": "^0.1.16",
"@llamaindex/chroma": "^0.0.20",
"@llamaindex/clip": "^0.0.56",
"@llamaindex/cloud": "^4.0.8",
"@llamaindex/cohere": "^0.0.20",
"@llamaindex/core": "^0.6.6",
"@llamaindex/deepinfra": "^0.0.56",
"@llamaindex/deepseek": "^0.0.16",
"@llamaindex/discord": "^0.1.5",
"@llamaindex/elastic-search": "^0.1.6",
"@llamaindex/anthropic": "^0.3.11",
"@llamaindex/assemblyai": "^0.1.8",
"@llamaindex/astra": "^0.0.23",
"@llamaindex/azure": "^0.1.20",
"@llamaindex/chroma": "^0.0.23",
"@llamaindex/clip": "^0.0.59",
"@llamaindex/cloud": "^4.0.13",
"@llamaindex/cohere": "^0.0.23",
"@llamaindex/core": "^0.6.9",
"@llamaindex/deepinfra": "^0.0.59",
"@llamaindex/deepseek": "^0.0.19",
"@llamaindex/discord": "^0.1.8",
"@llamaindex/elastic-search": "^0.1.9",
"@llamaindex/env": "^0.1.30",
"@llamaindex/firestore": "^1.0.13",
"@llamaindex/fireworks": "^0.0.16",
"@llamaindex/google": "^0.3.2",
"@llamaindex/groq": "^0.0.71",
"@llamaindex/huggingface": "^0.1.10",
"@llamaindex/jinaai": "^0.0.16",
"@llamaindex/milvus": "^0.1.15",
"@llamaindex/mistral": "^0.1.6",
"@llamaindex/mixedbread": "^0.0.20",
"@llamaindex/mongodb": "^0.0.21",
"@llamaindex/node-parser": "^2.0.6",
"@llamaindex/notion": "^0.1.5",
"@llamaindex/ollama": "^0.1.6",
"@llamaindex/openai": "^0.4.0",
"@llamaindex/perplexity": "^0.0.13",
"@llamaindex/pinecone": "^0.1.6",
"@llamaindex/portkey-ai": "^0.0.48",
"@llamaindex/postgres": "^0.0.49",
"@llamaindex/qdrant": "^0.1.15",
"@llamaindex/readers": "^3.1.4",
"@llamaindex/replicate": "^0.0.48",
"@llamaindex/supabase": "^0.1.5",
"@llamaindex/together": "^0.0.16",
"@llamaindex/tools": "^0.0.11",
"@llamaindex/upstash": "^0.0.20",
"@llamaindex/vercel": "^0.1.6",
"@llamaindex/vllm": "^0.0.42",
"@llamaindex/voyage-ai": "^1.0.12",
"@llamaindex/weaviate": "^0.0.20",
"@llamaindex/workflow": "^1.1.3",
"@llamaindex/xai": "workspace:^0.0.3",
"@llamaindex/firestore": "^1.0.16",
"@llamaindex/fireworks": "^0.0.19",
"@llamaindex/google": "^0.3.6",
"@llamaindex/groq": "^0.0.74",
"@llamaindex/huggingface": "^0.1.13",
"@llamaindex/jinaai": "^0.0.19",
"@llamaindex/milvus": "^0.1.18",
"@llamaindex/mistral": "^0.1.9",
"@llamaindex/mixedbread": "^0.0.23",
"@llamaindex/mongodb": "^0.0.24",
"@llamaindex/node-parser": "^2.0.9",
"@llamaindex/notion": "^0.1.8",
"@llamaindex/ollama": "^0.1.9",
"@llamaindex/openai": "^0.4.3",
"@llamaindex/perplexity": "^0.0.16",
"@llamaindex/pinecone": "^0.1.9",
"@llamaindex/portkey-ai": "^0.0.51",
"@llamaindex/postgres": "^0.0.52",
"@llamaindex/qdrant": "^0.1.19",
"@llamaindex/readers": "^3.1.7",
"@llamaindex/replicate": "^0.0.51",
"@llamaindex/supabase": "^0.1.8",
"@llamaindex/together": "^0.0.19",
"@llamaindex/tools": "^0.0.14",
"@llamaindex/upstash": "^0.0.23",
"@llamaindex/vercel": "^0.1.9",
"@llamaindex/vllm": "^0.0.45",
"@llamaindex/voyage-ai": "^1.0.15",
"@llamaindex/weaviate": "^0.0.23",
"@llamaindex/workflow": "^1.1.6",
"@llamaindex/xai": "workspace:^0.0.6",
"@notionhq/client": "^2.2.15",
"@pinecone-database/pinecone": "^4.0.0",
"@vercel/postgres": "^0.10.0",
@@ -64,7 +64,7 @@
"commander": "^12.1.0",
"dotenv": "^16.4.5",
"js-tiktoken": "^1.0.14",
"llamaindex": "^0.11.0",
"llamaindex": "^0.11.5",
"mongodb": "6.7.0",
"postgres": "^3.4.4",
"wikipedia": "^2.1.2",
+9 -1
View File
@@ -1,5 +1,13 @@
import { LlamaParseReader } from "@llamaindex/cloud";
import { VectorStoreIndex } from "llamaindex";
import { openai, OpenAIEmbedding } from "@llamaindex/openai";
import { Settings, VectorStoreIndex } from "llamaindex";
Settings.llm = openai({
model: "gpt-4.1",
});
Settings.embedModel = new OpenAIEmbedding({
model: "text-embedding-3-small",
});
async function main() {
// Load PDF using LlamaParse
+192
View File
@@ -0,0 +1,192 @@
# CLAUDE.md - Azure AI Search Vector Store Example
This example demonstrates how to use Azure AI Search as a vector store backend with LlamaIndex.TS, including Azure OpenAI integration for LLM and embedding models.
## Overview
This example showcases:
- **Azure OpenAI integration** for both LLM and embedding models
- **Azure AI Search vector store** configuration and management
- **Document ingestion** from local files
- **Multiple search modes** (vector, hybrid, semantic hybrid)
- **Metadata filtering** (with known limitations)
- **Index management** strategies
- **Authentication** using Azure AD credentials
## Environment Setup
Create a `.env` file with the following variables:
```bash
# Azure AI Search
AZURE_AI_SEARCH_ENDPOINT=https://your-search-service.search.windows.net
AZURE_AI_SEARCH_KEY=your-search-key
# Azure OpenAI
AZURE_OPENAI_ENDPOINT=https://your-openai-resource.openai.azure.com/
AZURE_DEPLOYMENT_NAME=gpt-4
EMBEDDING_MODEL=text-embedding-ada-002
AZURE_API_VERSION=2024-09-01-preview
```
## Authentication
The example uses `DefaultAzureCredential` for authentication, which requires proper Azure RBAC setup:
```typescript
const credential = new DefaultAzureCredential();
const azureADTokenProvider = getBearerTokenProvider(
credential,
"https://cognitiveservices.azure.com/.default",
);
```
Alternative: Use API keys by uncommenting the `key` parameter in vector store configuration.
## Key Components
### Azure OpenAI Setup
```typescript
Settings.llm = new AzureOpenAI({
azureADTokenProvider,
deployment: process.env.AZURE_DEPLOYMENT_NAME,
});
Settings.embedModel = new AzureOpenAIEmbedding({
azureADTokenProvider,
deployment: process.env.EMBEDDING_MODEL,
});
```
### Vector Store Configuration
```typescript
const vectorStore = new AzureAISearchVectorStore({
credential: new DefaultAzureCredential(),
indexName: "llamaindex-vector-store-example",
indexManagement: IndexManagement.CREATE_IF_NOT_EXISTS,
embeddingDimensionality: 3072,
vectorAlgorithmType: KnownVectorSearchAlgorithmKind.ExhaustiveKnn,
languageAnalyzer: KnownAnalyzerNames.EnLucene,
filterableMetadataFieldKeys: metadataFields,
});
```
### Index Management Options
- `IndexManagement.VALIDATE_INDEX` - Validates existing index, throws error if missing
- `IndexManagement.NO_VALIDATION` - Attempts to access index, throws error if missing
- `IndexManagement.CREATE_IF_NOT_EXISTS` - Creates index if it doesn't exist (recommended)
## Search Modes
The example demonstrates three search modes:
1. **Vector Search (DEFAULT)** - Pure semantic vector similarity
2. **Hybrid Search** - Combines vector and keyword search
3. **Semantic Hybrid Search** - Hybrid search with semantic reranking
```typescript
const response = await queryEngine.retrieve({
query: "What is the meaning of life?",
mode: VectorStoreQueryMode.HYBRID,
});
```
## Document Operations
### Loading Documents
```typescript
const documents = await new SimpleDirectoryReader().loadData(
"data/paul_graham/",
);
const index = await VectorStoreIndex.fromDocuments(documents, {
storageContext,
docStoreStrategy: DocStoreStrategy.UPSERTS,
});
```
### Inserting New Documents
```typescript
await index.insert(
new Document({
text: "The sky is indigo today.",
}),
);
```
### Basic Vector Store Operations
```typescript
// Add documents directly to vector store
const ids = await vectorStore.add([document]);
// Retrieve nodes by IDs
const nodes = await vectorStore.getNodes(ids);
// Delete documents
await vectorStore.delete(ids[0]);
```
## Metadata Filtering
The example includes metadata field definitions for filtering:
```typescript
const metadataFields = {
author: "author",
theme: ["theme", MetadataIndexFieldType.STRING],
director: "director",
};
```
**Known Issue**: Metadata filtering currently has limitations and may throw errors like:
```
RestError: Invalid expression: Could not find a property named 'theme' on type 'search.document'.
```
## Running the Example
```bash
# Install dependencies
npm install
# Set up environment variables in .env file
# Run the example
npm start
```
## Sample Data
The example uses Paul Graham's essay "What I Worked On" located in `data/paul_graham/paul_graham_essay.txt` for demonstration purposes.
## Prerequisites
- Azure AI Search service with proper permissions
- Azure OpenAI resource with deployed models:
- GPT-4 (or similar) for chat completion
- text-embedding-ada-002 (or similar) for embeddings
- Azure AD authentication configured or API keys available
## Key Learnings
1. **Authentication**: Azure AD credentials provide more secure access than API keys
2. **Index Management**: `CREATE_IF_NOT_EXISTS` is the safest option for development
3. **Search Modes**: Hybrid search often provides better results than pure vector search
4. **Embedding Dimensionality**: Must match your embedding model (3072 for ada-002)
5. **Metadata Filtering**: Currently has limitations that may require workarounds
## Architecture
This example follows the standard LlamaIndex.TS pattern:
1. **Data Ingestion**: SimpleDirectoryReader → Documents
2. **Processing**: Documents → TextNodes → Embeddings
3. **Storage**: Vector Store (Azure AI Search)
4. **Querying**: QueryEngine → Retrieval → Response
The Azure integration provides enterprise-grade scalability and security through Azure's managed services.
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# CLAUDE.md - Elasticsearch Vector Store Example
This example demonstrates how to use Elasticsearch as a vector store with LlamaIndex.TS for semantic search and retrieval-augmented generation (RAG).
## Overview
This example shows how to:
- Configure Elasticsearch as a vector store using `@llamaindex/elastic-search`
- Use Google Gemini models for embeddings and text generation
- Store document embeddings in Elasticsearch
- Perform semantic queries against the vector store
## Prerequisites
### Elasticsearch Setup
You need access to an Elasticsearch cluster with vector search capabilities:
1. **Elasticsearch Cloud**: Create an account at [elastic.co](https://cloud.elastic.co)
2. **Self-hosted**: Run Elasticsearch 8.0+ with vector search features enabled
### Environment Variables
Set the required environment variables:
```bash
export ES_CLOUD_ID="your-elasticsearch-cloud-id" # For Elasticsearch Cloud
export ES_API_KEY="your-elasticsearch-api-key" # API key for authentication
export GOOGLE_API_KEY="your-google-api-key" # For Gemini models
```
For self-hosted Elasticsearch, you can also use:
```bash
export ES_URL="https://localhost:9200" # Elasticsearch URL
export ES_USERNAME="elastic" # Username
export ES_PASSWORD="your-password" # Password
```
## Running the Example
```bash
# Install dependencies (from project root)
pnpm install
# Run the example
npm start
# or
npx tsx index.ts
```
## Code Breakdown
### 1. Model Configuration
The example uses Google Gemini models:
- **Embedding Model**: `TEXT_EMBEDDING_004` for converting text to vector embeddings
- **LLM**: `GEMINI_PRO_1_5_FLASH` for text generation and query responses
### 2. Vector Store Initialization
```typescript
const vectorStore = new ElasticSearchVectorStore({
indexName: "llamaindex-demo",
esCloudId: process.env.ES_CLOUD_ID,
esApiKey: process.env.ES_API_KEY,
});
```
### 3. Document Indexing
Sample documents are created with metadata and indexed into Elasticsearch:
- Text content is automatically converted to embeddings
- Metadata (source, author) is stored for filtering and retrieval
### 4. Semantic Querying
The example performs a semantic search query: "What is vector search?" which will find relevant documents based on semantic similarity rather than keyword matching.
## Key Features Demonstrated
- **Vector Storage**: Documents are converted to embeddings and stored in Elasticsearch
- **Metadata Support**: Documents include metadata for enhanced retrieval
- **Semantic Search**: Queries use vector similarity rather than keyword matching
- **RAG Pipeline**: Retrieved documents are used to generate contextual responses
## Elasticsearch Configuration Options
The `ElasticSearchVectorStore` supports various configuration options:
```typescript
const vectorStore = new ElasticSearchVectorStore({
indexName: "my-index", // Elasticsearch index name
esCloudId: "cloud-id", // For Elasticsearch Cloud
esApiKey: "api-key", // API key authentication
// Alternative for self-hosted:
// esUrl: "https://localhost:9200",
// esUsername: "elastic",
// esPassword: "password",
// Optional settings:
similarity: "cosine", // Vector similarity metric
vectorField: "embedding", // Field name for vectors
textField: "text", // Field name for text content
});
```
## Index Management
The vector store will automatically:
- Create the Elasticsearch index if it doesn't exist
- Configure appropriate mappings for vector and text fields
- Handle document insertion and retrieval
## Advanced Usage
For production usage, consider:
1. **Index Templates**: Define custom Elasticsearch index templates for specific mapping requirements
2. **Filtering**: Use metadata filters to restrict search scope
3. **Hybrid Search**: Combine vector search with traditional keyword search
4. **Batch Operations**: Use bulk indexing for large document collections
5. **Index Lifecycle**: Implement proper index rotation and cleanup strategies
## Troubleshooting
Common issues and solutions:
1. **Connection Errors**: Verify Elasticsearch credentials and network connectivity
2. **Index Creation**: Ensure proper permissions for index creation and management
3. **Vector Dimensions**: Verify embedding model output dimensions match Elasticsearch mapping
4. **Memory Usage**: Monitor Elasticsearch cluster resources for large vector datasets
## Related Examples
See other storage examples in the parent directory:
- `../pinecone-vector-store/` - Pinecone vector store integration
- `../chromadb/` - ChromaDB vector store example
- `../qdrantdb/` - Qdrant vector store example
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# CLAUDE.md - PostgreSQL Vector Store Examples
This directory demonstrates PostgreSQL vector storage integration with LlamaIndex.TS using the `@llamaindex/postgres` package and pgvector extension for similarity search and RAG applications.
## Overview
These examples showcase how to use PostgreSQL as a vector database for storing document embeddings and performing semantic search. The package includes examples for self-hosted PostgreSQL, cloud providers (Supabase, Vercel, Neon), and both document loading and querying workflows.
## File Structure
### Core Examples
- **`load-docs.ts`** - Document ingestion pipeline that reads files, generates embeddings, and stores them in PostgreSQL
- **`query.ts`** - Interactive RAG query interface with readline input for asking questions against stored embeddings
- **`pg-reader.ts`** - Demonstrates reading documents back from PostgreSQL using SimplePostgresReader
### Provider-Specific Examples
- **`supabase.ts`** - Supabase PostgreSQL integration with `POSTGRES_URL` connection string
- **`vercel.ts`** - Vercel Postgres integration using `@vercel/postgres` SDK
- **`neon.ts`** - Neon PostgreSQL integration with SSL configuration and endpoint options
## Prerequisites
### Database Setup
All examples require a PostgreSQL instance with the pgvector extension:
**Local Docker Instance:**
```bash
docker run -d --rm --name vector-db -p 5432:5432 -e "POSTGRES_HOST_AUTH_METHOD=trust" ankane/pgvector
```
**Cloud Alternatives:**
- Supabase: Managed PostgreSQL with built-in pgvector support
- Vercel Postgres: Serverless PostgreSQL for Vercel deployments
- Neon: Serverless PostgreSQL with branching capabilities
- Timescale: Time-series focused PostgreSQL service
### Environment Variables
```bash
# Standard PostgreSQL connection (used by load-docs.ts, query.ts, pg-reader.ts)
export PGHOST=localhost
export PGUSER=postgres
export PGPASSWORD=postgres
export PGDATABASE=test
export PGPORT=5432
export PG_CONNECTION_STRING="postgresql://user:password@host:port/database"
# Provider-specific connections
export POSTGRES_URL="postgresql://..." # Supabase
export POSTGRES_URL="postgres://..." # Vercel
export ENDPOINT_ID="your-neon-endpoint" # Neon
# Required for embeddings
export OPENAI_API_KEY="sk-..."
```
## Running Examples
### Document Loading and RAG Workflow
```bash
# Load documents from a directory
npx tsx load-docs.ts ../data
# Query the loaded documents interactively
npx tsx query.ts
```
### Provider-Specific Examples
```bash
# Supabase example
npx tsx supabase.ts
# Vercel Postgres example
npx tsx vercel.ts
# Neon example
npx tsx neon.ts
# PostgreSQL reader example
npx tsx pg-reader.ts
```
## Key Components
### PGVectorStore Configuration
The examples demonstrate various `PGVectorStore` initialization patterns:
**Connection String (load-docs.ts, query.ts):**
```typescript
const pgvs = new PGVectorStore({
clientConfig: {
connectionString: process.env.PG_CONNECTION_STRING,
},
});
```
**Direct Client (neon.ts, vercel.ts):**
```typescript
const vectorStore = new PGVectorStore({
dimensions: 3,
client: sql, // postgres client instance
});
```
**Standard Config (pg-reader.ts):**
```typescript
const vectorStore = new PGVectorStore({
clientConfig: {
host: "localhost",
port: 5432,
database: "test",
user: "postgres",
password: "postgres",
},
dimensions: 3,
tableName: "llamaindex_vector",
});
```
### Document Processing Pipeline
1. **Document Reading**: Uses `SimpleDirectoryReader` to load files from directory
2. **Embedding Generation**: Automatic embedding creation via OpenAI (configurable)
3. **Vector Storage**: Embeddings stored in PostgreSQL with metadata
4. **Index Creation**: `VectorStoreIndex.fromDocuments()` creates searchable index
5. **Query Engine**: `index.asQueryEngine()` enables RAG queries
### Collections and Data Management
```typescript
// Set collection name for data organization
pgvs.setCollection(sourceDir);
// Clear existing data before loading
await pgvs.clearCollection();
```
## Usage Patterns
### Full RAG Pipeline (load-docs.ts)
```typescript
// Load documents
const docs = await rdr.loadData({ directoryPath: sourceDir });
// Create vector store with collection
const pgvs = new PGVectorStore({ clientConfig });
pgvs.setCollection(sourceDir);
await pgvs.clearCollection();
// Build index and store embeddings
const ctx = await storageContextFromDefaults({ vectorStore: pgvs });
const index = await VectorStoreIndex.fromDocuments(docs, {
storageContext: ctx,
});
```
### Interactive Querying (query.ts)
```typescript
// Load existing vector store
const index = await VectorStoreIndex.fromVectorStore(pgvs);
const queryEngine = await index.asQueryEngine();
// Interactive Q&A loop
const answer = await queryEngine.query({ query: question });
console.log(answer.response);
```
### Direct Vector Operations (neon.ts, vercel.ts)
```typescript
// Add documents with pre-computed embeddings
await vectorStore.add([
new Document({
text: "hello, world",
embedding: [1, 2, 3],
}),
]);
// Direct similarity search
const results = await vectorStore.query({
mode: VectorStoreQueryMode.DEFAULT,
similarityTopK: 1,
queryEmbedding: [1, 2, 3],
});
```
## Error Handling
All examples include error handling for common issues:
- Missing environment variables
- Database connection failures
- Invalid embeddings or documents
- Provider-specific authentication errors
## Dependencies
Key packages used across examples:
- `@llamaindex/postgres` - PostgreSQL vector store implementation
- `@llamaindex/readers/directory` - File system document reader
- `@llamaindex/openai` - OpenAI embeddings (implicit via Settings)
- `llamaindex` - Core LlamaIndex functionality
- Provider-specific SDKs: `@vercel/postgres`, `postgres` (for Neon)
## Integration Notes
- **pgvector Extension**: Required for vector similarity operations
- **SSL Configuration**: Properly configured for cloud providers (Neon, Supabase)
- **Connection Pooling**: Handled automatically by underlying client libraries
- **Schema Management**: Vector store creates tables automatically
- **Metadata Support**: Full metadata storage and retrieval capabilities
- **Multi-tenancy**: Collection-based data organization support
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# CLAUDE.md - Supabase Vector Store Example
This example demonstrates how to use Supabase as a vector store with LlamaIndex.TS for semantic search and retrieval-augmented generation (RAG).
## Overview
This example shows:
- Setting up SupabaseVectorStore with environment configuration
- Using Google Gemini models for embeddings and LLM operations
- Creating documents with metadata for storage and retrieval
- Building a VectorStoreIndex backed by Supabase
- Performing semantic queries against the stored documents
## Prerequisites
### Environment Variables
Set the following environment variables before running:
```bash
export SUPABASE_URL="your-supabase-project-url"
export SUPABASE_KEY="your-supabase-anon-key"
export GOOGLE_API_KEY="your-google-api-key" # For Gemini models
```
### Supabase Setup
1. Create a Supabase project at https://supabase.com
2. Enable the vector extension in your database
3. Create a table for document storage (the example uses table name "document")
4. Obtain your project URL and anon key from the project settings
## Running the Example
```bash
# Install dependencies (from project root)
pnpm install
# Run the example
npm start
# or
npx tsx index.ts
```
## Code Structure
### Key Components
**Vector Store Configuration:**
- Uses `SupabaseVectorStore` from `@llamaindex/supabase`
- Configured with project URL, API key, and table name
- Supports document deletion and management
**Model Setup:**
- **Embeddings**: Google Gemini TEXT_EMBEDDING_004 model
- **LLM**: Google Gemini Pro 1.5 Flash model
- Configured through `Settings.embedModel` and `Settings.llm`
**Document Processing:**
- Creates sample documents with text content and metadata
- Metadata includes source and author information for filtering
- Documents are processed into embeddings and stored in Supabase
**Query Engine:**
- Builds VectorStoreIndex from documents using Supabase storage
- Creates query engine for semantic search
- Supports natural language queries with vector similarity search
## Features Demonstrated
### Vector Storage
- Document ingestion with automatic embedding generation
- Metadata preservation for filtering and context
- Persistent storage in Supabase PostgreSQL with vector extension
### Semantic Search
- Natural language query processing
- Vector similarity search for relevant document retrieval
- Context-aware response generation using retrieved documents
### Storage Management
- Document deletion capabilities (shown in commented code)
- Configurable table names for organization
- Integration with Supabase's scalable infrastructure
## Dependencies
- `@llamaindex/supabase` - Supabase vector store integration
- `@llamaindex/google` - Google Gemini models for embeddings and LLM
- `llamaindex` - Core LlamaIndex functionality
- Supabase project with vector extension enabled
## Usage Notes
1. **Database Setup**: Ensure your Supabase database has the vector extension enabled
2. **Table Configuration**: The example uses table name "document" - modify as needed
3. **API Costs**: Running this example will consume Google API credits for embeddings and LLM calls
4. **Storage Persistence**: Documents remain in Supabase between runs unless explicitly deleted
5. **Scaling**: Supabase vector store scales automatically with your database plan
## Common Patterns
### Custom Table Configuration
```typescript
const vectorStore = new SupabaseVectorStore({
supabaseUrl: process.env.SUPABASE_URL,
supabaseKey: process.env.SUPABASE_KEY,
table: "custom_table_name",
});
```
### Document Management
```typescript
// Delete specific document by ID
await vectorStore.delete("document-uuid");
// Query with metadata filtering
const response = await queryEngine.query({
query: "search query",
// Additional filtering can be implemented
});
```
### Error Handling
Always include proper validation for required environment variables and handle Supabase connection errors appropriately.
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"circular-check": "madge --circular ./packages/**/**/dist/index.js",
"release": "pnpm run build && changeset publish",
"release-snapshot": "pnpm run build && changeset publish --tag snapshot",
"new-version": "changeset version && pnpm postversion && pnpm format:write && pnpm run build",
"new-version": "changeset version && pnpm format:write && pnpm run build",
"new-snapshot": "pnpm run build && changeset version --snapshot",
"lint-staged": "lint-staged",
"postversion": "node scripts/repin-workflow.mjs"
"lint-staged": "lint-staged"
},
"devDependencies": {
"@changesets/cli": "^2.27.5",
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@@ -1,5 +1,35 @@
# @llamaindex/autotool
## 8.0.5
### Patch Changes
- llamaindex@0.11.5
## 8.0.4
### Patch Changes
- llamaindex@0.11.4
## 8.0.3
### Patch Changes
- llamaindex@0.11.3
## 8.0.2
### Patch Changes
- llamaindex@0.11.2
## 8.0.1
### Patch Changes
- llamaindex@0.11.1
## 8.0.0
### Patch Changes
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@@ -0,0 +1,95 @@
# @llamaindex/autotool
Auto-transpilation system that converts regular JavaScript/TypeScript functions into LLM-compatible tools for use with LlamaIndex agents.
## Architecture
The autotool package provides a build-time transformation system that automatically generates tool metadata from TypeScript function signatures and JSDoc comments. It works by:
1. **Detection**: Identifies tool files through `.tool.ts/.js` extensions or `"use tool"` directive
2. **Analysis**: Uses TypeDoc to parse TypeScript declarations and extract function signatures, parameters, and documentation
3. **Transformation**: Injects metadata and runtime registration code into the source
4. **Runtime**: Provides conversion utilities to generate OpenAI or LlamaIndex compatible tool definitions
## Core Components
### Compiler (`src/compiler.ts`)
- `transformAutoTool()`: Main transformation function that parses TypeScript with TypeDoc
- `isToolFile()`: Detects `.tool.[jt]sx?` file extensions
- `isJSorTS()`: Matches JavaScript/TypeScript file patterns
- Generates JSON Schema from TypeScript parameter types
- Extracts function descriptions from JSDoc comments
### Runtime System (`src/index.ts`)
- `injectMetadata()`: Injected by compiler to register tool metadata at runtime
- `convertTools()`: Converts stored metadata to OpenAI (`ChatCompletionTool[]`) or LlamaIndex (`BaseToolWithCall[]`) formats
- `callTool()`: Direct tool invocation by name with parameter mapping
- Uses Jotai atoms for state management of tool registry
### Build Integration
- **Next.js**: `src/next.ts` - Webpack plugin integration via `withNext()`
- **Vite**: `src/vite.ts` - Vite plugin wrapper
- **Webpack**: `src/webpack.ts` - Direct webpack plugin
- **Node.js**: `src/node.ts` + `src/loader.ts` - Module loader hooks for runtime transformation
- **Universal**: `src/plugin.ts` - Unplugin factory for cross-bundler support
## Usage Patterns
### File-based Detection
```typescript
// weather.tool.ts
export function getWeather(city: string) {
// Implementation
}
```
### Directive-based Detection
```typescript
"use tool";
export function getWeather(city: string) {
// Implementation
}
```
### Runtime Integration
```typescript
import { convertTools } from "@llamaindex/autotool";
// For OpenAI format
const openaiTools = convertTools("openai");
// For LlamaIndex format
const llamaindexTools = convertTools("llamaindex");
```
## Key Features
- **Zero-config**: Automatic tool detection and metadata generation
- **Type-safe**: Leverages TypeScript for parameter validation and schema generation
- **Multi-format**: Supports both OpenAI and LlamaIndex tool formats
- **Build-time**: No runtime overhead for metadata generation
- **Cross-platform**: Works with Node.js, Next.js, Vite, and Webpack
- **JSDoc integration**: Extracts descriptions from TypeScript comments
## Dependencies
- `@swc/core`: Fast TypeScript/JavaScript parsing
- `typedoc`: TypeScript documentation generation for metadata extraction
- `unplugin`: Universal plugin system for build tool integration
- `jotai`: Atomic state management for tool registry
## Development Commands
- `pnpm build` - Build using bunchee
- `pnpm dev` - Watch mode development
## Examples
See `examples/01_node/` for a complete Node.js usage example with tool files and integration.
@@ -1,5 +1,40 @@
# @llamaindex/autotool-01-node-example
## 0.0.113
### Patch Changes
- llamaindex@0.11.5
- @llamaindex/autotool@8.0.5
## 0.0.112
### Patch Changes
- llamaindex@0.11.4
- @llamaindex/autotool@8.0.4
## 0.0.111
### Patch Changes
- llamaindex@0.11.3
- @llamaindex/autotool@8.0.3
## 0.0.110
### Patch Changes
- llamaindex@0.11.2
- @llamaindex/autotool@8.0.2
## 0.0.109
### Patch Changes
- llamaindex@0.11.1
- @llamaindex/autotool@8.0.1
## 0.0.108
### Patch Changes
@@ -0,0 +1,80 @@
# @llamaindex/autotool Node.js Example
This example demonstrates how to use the `@llamaindex/autotool` package in a Node.js environment to automatically convert TypeScript functions into LLM-compatible tools.
## What This Example Shows
This example showcases the core autotool functionality:
1. **Automatic Tool Detection**: Functions in `.tool.ts` files are automatically detected and converted to LLM tools
2. **TypeScript Integration**: Function signatures and JSDoc comments are used to generate tool metadata
3. **OpenAI Compatibility**: Tools are converted to OpenAI's function calling format
4. **Runtime Registration**: Tools are automatically registered and made available at runtime
## Architecture
### Key Files
- `src/index.ts` - Main application that uses the auto-generated tools with OpenAI
- `src/index.tool.ts` - Tool definitions that get auto-transpiled (exports `getCurrentLocation` and `getWeather`)
- `src/utils.ts` - Utility functions with JSDoc documentation
- `package.json` - Configuration with Node.js loader setup
### How It Works
1. **Tool Detection**: The `.tool.ts` file extension triggers autotool processing
2. **Metadata Generation**: TypeScript signatures and JSDoc comments are analyzed to create tool schemas
3. **Runtime Loading**: The Node.js loader (`@llamaindex/autotool/node`) processes files at import time
4. **Tool Conversion**: `convertTools("openai")` generates OpenAI-compatible tool definitions
5. **LLM Integration**: Tools are passed to OpenAI's chat completion API
## Usage
### Running the Example
```bash
pnpm start
```
This runs: `node --import tsx --import @llamaindex/autotool/node ./src/index.ts`
### Key Components
**Node.js Loader Setup** (package.json):
```json
{
"scripts": {
"start": "node --import tsx --import @llamaindex/autotool/node ./src/index.ts"
}
}
```
**Tool File** (src/index.tool.ts):
- Functions exported from `.tool.ts` files are automatically converted to tools
- JSDoc comments become tool descriptions
- TypeScript types generate JSON schemas for parameters
**Main Application** (src/index.ts):
- Imports the tool file to trigger registration
- Uses `convertTools("openai")` to get OpenAI-compatible tool definitions
- Passes tools to OpenAI chat completion
## Dependencies
- `@llamaindex/autotool` - Core autotool functionality
- `llamaindex` - LlamaIndex TypeScript framework
- `openai` - OpenAI API client
- `tsx` - TypeScript execution for Node.js
## Development Notes
- The `--import` flags in the start script enable both TypeScript execution (tsx) and autotool processing
- Tool files must use `.tool.ts` extension or contain `"use tool"` directive
- JSDoc comments on exported functions become tool descriptions
- TypeScript parameter types are automatically converted to JSON Schema
- The example demonstrates OpenAI format, but `convertTools("llamaindex")` is also available
This example serves as a minimal working demonstration of autotool's core functionality in a Node.js environment.
@@ -13,5 +13,5 @@
"scripts": {
"start": "node --import tsx --import @llamaindex/autotool/node ./src/index.ts"
},
"version": "0.0.108"
"version": "0.0.113"
}
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@@ -6,7 +6,7 @@
"url": "git+https://github.com/run-llama/LlamaIndexTS.git",
"directory": "packages/autotool"
},
"version": "8.0.0",
"version": "8.0.5",
"description": "auto transpile your JS function to LLM Agent compatible",
"files": [
"dist",
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@@ -1,5 +1,38 @@
# @llamaindex/cloud
## 4.0.13
### Patch Changes
- Updated dependencies [71598f8]
- @llamaindex/core@0.6.9
## 4.0.12
### Patch Changes
- Updated dependencies [c927457]
- @llamaindex/core@0.6.8
## 4.0.11
### Patch Changes
- 76ff23d: Fix pRetry not working with CommonJS
## 4.0.10
### Patch Changes
- Updated dependencies [59601dd]
- @llamaindex/core@0.6.7
## 4.0.9
### Patch Changes
- 3703f90: feat(parse): add upload API
## 4.0.8
### Patch Changes
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@@ -12,8 +12,13 @@ export default defineConfig({
plugins: [
...defaultPlugins,
"@hey-api/client-fetch",
"zod",
"@hey-api/schemas",
"@hey-api/sdk",
{
name: "@hey-api/sdk",
enums: "javascript",
identifierCase: "PascalCase",
name: "@hey-api/typescript",
},
],
});
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@@ -1,6 +1,6 @@
{
"name": "@llamaindex/cloud",
"version": "4.0.8",
"version": "4.0.13",
"type": "module",
"license": "MIT",
"scripts": {
@@ -37,6 +37,17 @@
},
"default": "./reader/dist/index.js"
},
"./parse": {
"require": {
"types": "./parse/dist/index.d.cts",
"default": "./parse/dist/index.cjs"
},
"import": {
"types": "./parse/dist/index.d.ts",
"default": "./parse/dist/index.js"
},
"default": "./parse/dist/index.js"
},
".": {
"require": {
"types": "./reader/dist/index.d.cts",
@@ -55,16 +66,19 @@
"directory": "packages/cloud"
},
"devDependencies": {
"@hey-api/client-fetch": "^0.10.0",
"@hey-api/openapi-ts": "^0.66.7",
"@hey-api/client-fetch": "^0.10.1",
"@hey-api/openapi-ts": "^0.67.5",
"@llama-flow/core": "^0.4.1",
"@llamaindex/core": "workspace:*",
"@llamaindex/env": "workspace:*"
},
"peerDependencies": {
"@llama-flow/core": "^0.4.1",
"@llamaindex/core": "workspace:*",
"@llamaindex/env": "workspace:*"
},
"dependencies": {
"p-retry": "^6.2.1"
"p-retry": "^6.2.1",
"zod": "^3.25.7"
}
}
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@@ -0,0 +1,8 @@
{
"type": "module",
"main": "./dist/index.cjs",
"module": "./dist/index.js",
"types": "./dist/index.d.ts",
"exports": "./dist/index.js",
"private": true
}
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@@ -0,0 +1,55 @@
import { workflowEvent } from "@llama-flow/core";
import { zodEvent } from "@llama-flow/core/util/zod";
import { z } from "zod";
import { parseFormSchema } from "./schema";
export const uploadEvent = zodEvent(
parseFormSchema.merge(
z.object({
file: z
.string()
.or(z.instanceof(File))
.or(z.instanceof(Blob))
.or(z.instanceof(Uint8Array))
.optional()
.describe("input"),
}),
),
{
debugLabel: "upload",
uniqueId: "52099967-34a8-419b-8950-c859eab60145",
},
);
export const checkStatusEvent = workflowEvent<string>({
debugLabel: "check-status",
uniqueId: "462157fc-1ded-4ba7-9bc4-3e870395bd20",
});
export const checkStatusSuccessEvent = workflowEvent<string>({
debugLabel: "check-status-success",
uniqueId: "360b7641-30f7-456e-851d-104bb5e3f8d2",
});
export const requestMarkdownEvent = workflowEvent<string>({
debugLabel: "markdown-request",
uniqueId: "aa4c2e3c-0f09-4035-aab6-c72719c877cc",
});
export const requestTextEvent = workflowEvent<string>({
debugLabel: "text-request",
uniqueId: "6976536e-5399-4285-9455-0b70f1dfc92b",
});
export const requestJsonEvent = workflowEvent<string>({
debugLabel: "json-request",
uniqueId: "9fc4a330-52ad-4aac-8092-a650998b7f6f",
});
export const markdownResultEvent = workflowEvent<string>({
debugLabel: "markdown-result",
uniqueId: "2dfb57c8-73d1-4394-bea8-f05246d934d4",
});
export const textResultEvent = workflowEvent<string>({
debugLabel: "text-result",
uniqueId: "a27deec6-b24f-4eda-a5ac-ba2fb2bf37c8",
});
export const jsonResultEvent = workflowEvent<unknown>({
debugLabel: "json-result",
uniqueId: "e086e6bd-a612-4f25-ab41-9b31dcb8af86",
});
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@@ -0,0 +1,225 @@
import { createClient, createConfig } from "@hey-api/client-fetch";
import { createWorkflow, type InferWorkflowEventData } from "@llama-flow/core";
import { createStatefulMiddleware } from "@llama-flow/core/middleware/state";
import { withTraceEvents } from "@llama-flow/core/middleware/trace-events";
import { pRetryHandler } from "@llama-flow/core/util/p-retry";
import { fs, getEnv, path } from "@llamaindex/env";
import {
type BodyUploadFileApiV1ParsingUploadPost,
getJobApiV1ParsingJobJobIdGet,
getJobJsonResultApiV1ParsingJobJobIdResultJsonGet,
getJobResultApiV1ParsingJobJobIdResultMarkdownGet,
getJobTextResultApiV1ParsingJobJobIdResultTextGet,
type StatusEnum,
uploadFileApiV1ParsingUploadPost,
} from "./client";
import {
checkStatusEvent,
checkStatusSuccessEvent,
jsonResultEvent,
markdownResultEvent,
requestJsonEvent,
requestMarkdownEvent,
requestTextEvent,
textResultEvent,
uploadEvent,
} from "./events";
export type LlamaParseWorkflowParams = {
region?: "us" | "eu" | "us-staging";
apiKey?: string;
};
const URLS = {
us: "https://api.cloud.llamaindex.ai",
eu: "https://api.cloud.eu.llamaindex.ai",
"us-staging": "https://api.staging.llamaindex.ai",
} as const;
const { withState, getContext } = createStatefulMiddleware(
(params: LlamaParseWorkflowParams) => {
const apiKey = params.apiKey ?? getEnv("LLAMA_CLOUD_API_KEY");
const region = params.region ?? "us";
if (!apiKey) {
throw new Error("LLAMA_CLOUD_API_KEY is not set");
}
return {
cache: {} as Record<string, StatusEnum>,
client: createClient(
createConfig({
baseUrl: URLS[region],
headers: {
Authorization: `Bearer ${apiKey}`,
},
}),
),
};
},
);
const llamaParseWorkflow = withState(withTraceEvents(createWorkflow()));
llamaParseWorkflow.handle([uploadEvent], async ({ data: form }) => {
const { state } = getContext();
const finalForm = { ...form };
if ("file" in form) {
// support loads from the file system
const file = form?.file;
const isFilePath = typeof file === "string";
const data = isFilePath ? await fs.readFile(file) : file;
const filename: string | undefined = isFilePath
? path.basename(file)
: undefined;
finalForm.file = data
? globalThis.File && filename
? new File([data], filename)
: new Blob([data])
: undefined;
}
const {
data: { id, status },
} = await uploadFileApiV1ParsingUploadPost({
throwOnError: true,
body: {
...finalForm,
} as BodyUploadFileApiV1ParsingUploadPost,
client: state.client,
});
state.cache[id] = status;
return checkStatusEvent.with(id);
});
llamaParseWorkflow.handle(
[checkStatusEvent],
pRetryHandler(
async ({ data: uuid }) => {
const { state } = getContext();
if (state.cache[uuid] === "SUCCESS") {
return checkStatusSuccessEvent.with(uuid);
}
const {
data: { status },
} = await getJobApiV1ParsingJobJobIdGet({
throwOnError: true,
path: {
job_id: uuid,
},
client: state.client,
});
state.cache[uuid] = status;
if (status === "SUCCESS") {
return checkStatusSuccessEvent.with(uuid);
}
throw new Error(`LLamaParse status: ${status}`);
},
{
retries: 100,
},
),
);
//#region sub workflow
llamaParseWorkflow.handle([requestMarkdownEvent], async ({ data: job_id }) => {
const { state } = getContext();
const { data } = await getJobResultApiV1ParsingJobJobIdResultMarkdownGet({
throwOnError: true,
path: {
job_id,
},
client: state.client,
});
return markdownResultEvent.with(data.markdown);
});
llamaParseWorkflow.handle([requestTextEvent], async ({ data: job_id }) => {
const { state } = getContext();
const { data } = await getJobTextResultApiV1ParsingJobJobIdResultTextGet({
throwOnError: true,
path: {
job_id,
},
client: state.client,
});
return textResultEvent.with(data.text);
});
llamaParseWorkflow.handle([requestJsonEvent], async ({ data: job_id }) => {
const { state } = getContext();
const { data } = await getJobJsonResultApiV1ParsingJobJobIdResultJsonGet({
throwOnError: true,
path: {
job_id,
},
client: state.client,
});
return jsonResultEvent.with(data.pages);
});
//#endregion
export type ParseJob = {
get jobId(): string;
get signal(): AbortSignal;
get context(): ReturnType<typeof llamaParseWorkflow.createContext>;
get form(): InferWorkflowEventData<typeof uploadEvent>;
markdown(): Promise<string>;
text(): Promise<string>;
//eslint-disable-next-line @typescript-eslint/no-explicit-any
json(): Promise<any[]>;
};
export const upload = async (
params: InferWorkflowEventData<typeof uploadEvent> & LlamaParseWorkflowParams,
): Promise<ParseJob> => {
//#region upload event
const context = llamaParseWorkflow.createContext(params);
const { stream, sendEvent } = context;
const ev = uploadEvent.with(params);
sendEvent(ev);
const uploadThread = await llamaParseWorkflow
.substream(ev, stream)
.until((ev) => checkStatusSuccessEvent.include(ev))
.toArray();
//#region
const jobId: string = uploadThread.at(-1)!.data;
return {
get signal() {
// lazy load
return context.signal;
},
get jobId() {
return jobId;
},
get form() {
return ev.data;
},
get context() {
return context;
},
async markdown(): Promise<string> {
const requestEv = requestMarkdownEvent.with(jobId);
const { sendEvent, stream } = llamaParseWorkflow.createContext(params);
sendEvent(requestEv);
const markdownThread = await stream.until(markdownResultEvent).toArray();
return markdownThread.at(-1)!.data;
},
async text(): Promise<string> {
const requestEv = requestTextEvent.with(jobId);
const { sendEvent, stream } = llamaParseWorkflow.createContext(params);
sendEvent(requestEv);
const textThread = await stream.until(textResultEvent).toArray();
return textThread.at(-1)!.data;
},
//eslint-disable-next-line @typescript-eslint/no-explicit-any
async json(): Promise<any[]> {
const requestEv = requestJsonEvent.with(jobId);
const { sendEvent, stream } = llamaParseWorkflow.createContext(params);
sendEvent(requestEv);
const jsonThread = await stream
.until((ev) => jsonResultEvent.include(ev))
.toArray();
return jsonThread.at(-1)!.data;
},
};
};
+1 -1
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@@ -2,7 +2,6 @@
import { type Client, createClient, createConfig } from "@hey-api/client-fetch";
import { Document, FileReader } from "@llamaindex/core/schema";
import { fs, getEnv, path } from "@llamaindex/env";
import pRetry from "p-retry";
import {
type BodyUploadFileApiParsingUploadPost,
type FailPageMode,
@@ -391,6 +390,7 @@ export class LlamaParseReader extends FileReader {
): Promise<any> {
let tries = 0;
let currentInterval = this.checkInterval;
const { default: pRetry } = await import("p-retry");
while (true) {
await sleep(currentInterval * 1000);
+131
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@@ -0,0 +1,131 @@
import { FailPageMode, ParserLanguages, ParsingMode } from "./client";
import { z } from "zod";
type Language = ParserLanguages;
const VALUES: [Language, ...Language[]] = [
ParserLanguages.EN,
...Object.values(ParserLanguages),
];
const languageSchema = z.enum(VALUES);
const PARSE_PRESETS = [
"fast",
"balanced",
"premium",
"structured",
"auto",
"scientific",
"invoice",
"slides",
"_carlyle",
] as const;
export const parsePresetSchema = z.enum(PARSE_PRESETS);
export const parseFormSchema = z.object({
adaptive_long_table: z.boolean().optional(),
annotate_links: z.boolean().optional(),
auto_mode: z.boolean().optional(),
auto_mode_trigger_on_image_in_page: z.boolean().optional(),
auto_mode_trigger_on_table_in_page: z.boolean().optional(),
auto_mode_trigger_on_text_in_page: z.string().optional(),
auto_mode_trigger_on_regexp_in_page: z.string().optional(),
auto_mode_configuration_json: z.string().optional(),
azure_openai_api_version: z.string().optional(),
azure_openai_deployment_name: z.string().optional(),
azure_openai_endpoint: z.string().optional(),
azure_openai_key: z.string().optional(),
bbox_bottom: z.number().min(0).max(1).optional(),
bbox_left: z.number().min(0).max(1).optional(),
bbox_right: z.number().min(0).max(1).optional(),
bbox_top: z.number().min(0).max(1).optional(),
disable_ocr: z.boolean().optional(),
disable_reconstruction: z.boolean().optional(),
disable_image_extraction: z.boolean().optional(),
do_not_cache: z.coerce.boolean().optional(),
do_not_unroll_columns: z.coerce.boolean().optional(),
extract_charts: z.boolean().optional(),
guess_xlsx_sheet_name: z.boolean().optional(),
html_make_all_elements_visible: z.boolean().optional(),
html_remove_fixed_elements: z.boolean().optional(),
html_remove_navigation_elements: z.boolean().optional(),
http_proxy: z
.string()
.url(
'Set a valid URL for the HTTP proxy, e.g., "http://proxy.example.com:8080"',
)
.refine(
(url) => {
try {
const parsedUrl = new URL(url);
return (
parsedUrl.protocol === "http:" || parsedUrl.protocol === "https:"
);
} catch {
return false;
}
},
{
message: "Invalid HTTP proxy URL",
},
)
.optional(),
input_s3_path: z.string().optional(),
input_s3_region: z.string().optional(),
input_url: z.string().optional(),
invalidate_cache: z.boolean().optional(),
language: z.array(languageSchema).optional(),
extract_layout: z.boolean().optional(),
max_pages: z.number().nullable().optional(),
output_pdf_of_document: z.boolean().optional(),
output_s3_path_prefix: z.string().optional(),
output_s3_region: z.string().optional(),
page_prefix: z.string().optional(),
page_separator: z.string().optional(),
page_suffix: z.string().optional(),
preserve_layout_alignment_across_pages: z.boolean().optional(),
skip_diagonal_text: z.boolean().optional(),
spreadsheet_extract_sub_tables: z.boolean().optional(),
structured_output: z.boolean().optional(),
structured_output_json_schema: z.string().optional(),
structured_output_json_schema_name: z.string().optional(),
take_screenshot: z.boolean().optional(),
target_pages: z.string().optional(),
vendor_multimodal_api_key: z.string().optional(),
vendor_multimodal_model_name: z.string().optional(),
model: z.string().optional(),
webhook_url: z.string().url().optional(),
parse_mode: z.nativeEnum(ParsingMode).nullable().optional(),
system_prompt: z.string().optional(),
system_prompt_append: z.string().optional(),
user_prompt: z.string().optional(),
job_timeout_in_seconds: z.number().optional(),
job_timeout_extra_time_per_page_in_seconds: z.number().optional(),
strict_mode_image_extraction: z.boolean().optional(),
strict_mode_image_ocr: z.boolean().optional(),
strict_mode_reconstruction: z.boolean().optional(),
strict_mode_buggy_font: z.boolean().optional(),
save_images: z.boolean().optional(),
ignore_document_elements_for_layout_detection: z.boolean().optional(),
output_tables_as_HTML: z.boolean().optional(),
use_vendor_multimodal_model: z.boolean().optional(),
bounding_box: z.string().optional(),
gpt4o_mode: z.boolean().optional(),
gpt4o_api_key: z.string().optional(),
complemental_formatting_instruction: z.string().optional(),
content_guideline_instruction: z.string().optional(),
premium_mode: z.boolean().optional(),
is_formatting_instruction: z.boolean().optional(),
continuous_mode: z.boolean().optional(),
parsing_instruction: z.string().optional(),
fast_mode: z.boolean().optional(),
formatting_instruction: z.string().optional(),
preset: parsePresetSchema.optional(),
compact_markdown_table: z.boolean().optional(),
markdown_table_multiline_header_separator: z.string().optional(),
page_error_tolerance: z.number().min(0).max(1).optional(),
replace_failed_page_mode: z.nativeEnum(FailPageMode).nullable().optional(),
replace_failed_page_with_error_message_prefix: z.string().optional(),
replace_failed_page_with_error_message_suffix: z.string().optional(),
});
+18
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@@ -1,5 +1,23 @@
# @llamaindex/core
## 0.6.9
### Patch Changes
- 71598f8: Added interrupted, generationComplete and turnComplete event support in the live api
## 0.6.8
### Patch Changes
- c927457: Use base64 for encoding files
## 0.6.7
### Patch Changes
- 59601dd: Add support for builtin image generation tool
## 0.6.6
### Patch Changes
+121
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@@ -0,0 +1,121 @@
# CLAUDE.md - @llamaindex/core
This file provides guidance to Claude Code when working with the `@llamaindex/core` package.
## Package Overview
The `@llamaindex/core` package contains the foundational abstract base classes and interfaces for the LlamaIndex.TS framework. This package provides runtime-agnostic core functionality that is implemented by provider-specific packages.
## Development Commands
From this package directory:
- `pnpm dev` - Start development mode with file watching using bunchee
- `pnpm build` - Build the package using bunchee
- `pnpm test` - Run unit tests (after building)
From the workspace root:
- `turbo run build --filter="@llamaindex/core"` - Build only this package
- `turbo run test --filter="@llamaindex/core"` - Test only this package
## Architecture
### Modular Export System
This package uses a sophisticated modular export system where functionality is organized into sub-modules that can be imported independently:
```typescript
import { BaseLLM } from "@llamaindex/core/llms";
import { BaseEmbedding } from "@llamaindex/core/embeddings";
import { BaseNode } from "@llamaindex/core/schema";
import { Settings } from "@llamaindex/core/global";
```
### Package Structure
**Core Modules:**
- `src/llms/` - Abstract LLM base classes and interfaces (`BaseLLM`, `LLM` interface)
- `src/embeddings/` - Abstract embedding base classes (`BaseEmbedding`)
- `src/schema/` - Core data structures (`BaseNode`, `Document`, output parsers)
- `src/global/` - Global settings and configuration management
- `src/node-parser/` - Text chunking and parsing abstractions
- `src/query-engine/` - Query processing abstractions
- `src/chat-engine/` - Conversational interface abstractions
- `src/memory/` - Chat memory management
- `src/prompts/` - Prompt template system
- `src/response-synthesizers/` - Response generation abstractions
- `src/retriever/` - Document retrieval abstractions
- `src/vector-store/` - Vector store abstractions
- `src/storage/` - Data persistence abstractions (chat, doc, index, kv stores)
- `src/tools/` - Turning functions into tools that can be used by LLMs
- `src/utils/` - Shared utilities
- `src/decorator/` - Event handling and lazy initialization
- `src/postprocessor/` - Result post-processing
- `src/data-structs/` - Data structure utilities
- `src/indices/` - Index abstractions
**Deprecated Modules:**
- `src/agent/` - Legacy agent implementations (use `@llamaindex/workflow` instead)
### Key Design Patterns
**Abstract Base Classes:** All core functionality is defined as abstract classes that provider packages extend. For example:
- `BaseLLM` - Extended by OpenAI, Anthropic, etc.
- `BaseEmbedding` - Extended by embedding providers
- `BaseVectorStore` - Extended by Pinecone, Chroma, etc.
**Runtime Agnostic:** Core functionality works across Node.js, Deno, Bun, and edge runtimes through the `@llamaindex/env` compatibility layer.
**Settings Management:** Global configuration through the `Settings` object allows dynamic swapping of LLMs, embeddings, and other components.
**Transform Components:** Many components extend `TransformComponent` for composable data processing pipelines.
## Build System
- Uses **bunchee** for building with dual CJS/ESM support
- Each subdirectory becomes a separate entry point in package.json exports
- Build outputs go to `{module}/dist/` directories
- TypeScript types are generated alongside JavaScript
## Testing
- Tests are located in `tests/` directory
- Tests depend on build artifacts - always run `pnpm build` before testing
- Use `vitest` as the test runner
## Key Dependencies
- `@llamaindex/env` - Runtime environment abstractions
- `zod` - Schema validation and type safety
- `magic-bytes.js` - File type detection
- `@types/node` - Node.js type definitions
## Development Guidelines
**When extending core classes:**
1. Import from the appropriate sub-module (e.g., `@llamaindex/core/llms`)
2. Implement all abstract methods
3. Follow the existing patterns for error handling and async operations
4. Consider runtime compatibility when using Node.js-specific APIs
**When modifying core interfaces:**
1. Ensure backward compatibility
2. Update both the interface and abstract base class
3. Consider impact on all provider packages
4. Test across multiple runtimes
**File Organization:**
- Each module should have an `index.ts` that exports public APIs
- Keep internal implementation details private
- Use consistent naming conventions (e.g., `BaseFoo` for abstract classes)
## Module Dependencies
This package has minimal external dependencies to ensure broad compatibility. The main dependency is `@llamaindex/env` which provides runtime-specific implementations for file system, fetch, and other platform-specific APIs.
+1 -1
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@@ -1,7 +1,7 @@
{
"name": "@llamaindex/core",
"type": "module",
"version": "0.6.6",
"version": "0.6.9",
"description": "LlamaIndex Core Module",
"exports": {
"./agent": {
+1
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@@ -36,3 +36,4 @@ export type {
ToolResult,
ToolResultOptions,
} from "./type";
export { addContentPart } from "./utils";
+22 -2
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@@ -17,13 +17,23 @@ export type CloseEvent = { type: "close" };
export type SetupCompleteEvent = { type: "setupComplete" };
// a client message has interrupted current model generation
export type InterruptedEvent = { type: "interrupted" };
export type GenerationCompleteEvent = { type: "generationComplete" };
export type TurnCompleteEvent = { type: "turnComplete" };
export type LiveEvent =
| OpenEvent
| AudioEvent
| TextEvent
| ErrorEvent
| CloseEvent
| SetupCompleteEvent;
| SetupCompleteEvent
| InterruptedEvent
| GenerationCompleteEvent
| TurnCompleteEvent;
export const liveEvents = {
open: { include: (e: LiveEvent): e is OpenEvent => e.type === "open" },
@@ -41,8 +51,18 @@ export const liveEvents = {
include: (e: LiveEvent): e is SetupCompleteEvent =>
e.type === "setupComplete",
},
interrupted: {
include: (e: LiveEvent): e is InterruptedEvent => e.type === "interrupted",
},
generationComplete: {
include: (e: LiveEvent): e is GenerationCompleteEvent =>
e.type === "generationComplete",
},
turnComplete: {
include: (e: LiveEvent): e is TurnCompleteEvent =>
e.type === "turnComplete",
},
};
export abstract class LiveLLMSession {
protected eventQueue: LiveEvent[] = [];
protected eventResolvers: ((value: LiveEvent) => void)[] = [];
+8 -7
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@@ -166,28 +166,29 @@ export type MessageContentImageDetail = {
export type MessageContentAudioDetail = {
type: "audio";
//audio could be a base64 string as well
data: string | Uint8Array;
// this is a base64 encoded string
data: string;
mimeType: string;
};
export type MessageContentVideoDetail = {
type: "video";
//video could be a base64 string as well
data: string | Uint8Array;
// this is a base64 encoded string
data: string;
mimeType: string;
};
export type MessageContentImageDataDetail = {
type: "image";
//image could be a base64 string as well
data: string | Uint8Array;
// this is a base64 encoded string
data: string;
mimeType: string;
};
export type MessageContentFileDetail = {
type: "file";
data: Uint8Array;
// this is a base64 encoded string
data: string;
mimeType: string;
};
+28
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@@ -0,0 +1,28 @@
import type {
ChatMessage,
MessageContentImageDataDetail,
MessageContentTextDetail,
} from "./type";
export function addContentPart<AdditionalMessageOptions extends object>(
message: ChatMessage<AdditionalMessageOptions>,
part: MessageContentTextDetail | MessageContentImageDataDetail,
): void {
if (part.type === "text") {
if (typeof message.content === "string") {
message.content += part.text;
} else {
message.content.push(part);
}
} else {
if (typeof message.content === "string") {
if (message.content === "") {
message.content = [part];
} else {
message.content = [{ type: "text", text: message.content }, part];
}
} else {
message.content.push(part);
}
}
}
+129
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@@ -0,0 +1,129 @@
# @llamaindex/env Package
This package provides environment-specific compatibility layers for different JavaScript runtimes. It's a critical component that enables LlamaIndex.TS to work across Node.js, Deno, Bun, browser, Vercel Edge Runtime, and Cloudflare Workers.
## Package Overview
**Purpose**: Environment wrapper that provides unified APIs across all supported JavaScript runtimes
**Main exports**:
- `.` - Main environment APIs
- `./tokenizers` - Tokenization utilities
- `./multi-model` - Multi-modal model support
## Development Commands
**Build and test this package:**
- `pnpm build` - Build the package using bunchee
- `pnpm dev` - Build in watch mode
- `pnpm test` - Run tests with vitest
**From workspace root:**
- `turbo run build --filter="@llamaindex/env"` - Build this specific package
- `turbo run test --filter="@llamaindex/env"` - Test this specific package
## Runtime Support
The package uses conditional exports to provide runtime-specific implementations:
### Node.js Environment (`index.ts`)
- Full Node.js built-in modules (fs, crypto, streams, etc.)
- AsyncLocalStorage for context management
- Native filesystem operations
- Crypto utilities (createHash, randomUUID)
### Browser Environment (`index.browser.ts`)
- Web polyfills for browser compatibility
- Limited to browser-safe APIs
- Web-compatible base64 utilities
### Cloudflare Workers (`index.workerd.ts`)
- Minimal polyfills for Workers environment
- Environment variable access via `INTERNAL_ENV`
- No filesystem access
### Vercel Edge Runtime (`index.edge-light.ts`)
- Edge-compatible polyfills
- Non-Node.js AsyncLocalStorage implementation
## Key Components
### Async Local Storage (`src/als/`)
- `index.node.ts` - Native Node.js AsyncLocalStorage
- `index.non-node.ts` - Polyfill for non-Node environments
- `index.web.ts` - Web-compatible implementation
- `index.workerd.ts` - Cloudflare Workers implementation
### File System (`src/fs/`)
- `node.ts` - Node.js fs module wrapper
- `memory.ts` - In-memory filesystem for testing
- `memfs/` - Memory filesystem implementation
### Tokenizers (`src/internal/tokenizers/`)
- Runtime-specific tokenizer implementations
- Supports both `gpt-tokenizer` (fast) and `js-tiktoken` (fallback)
- Encoding/decoding for token counting
### Multi-Model Support (`src/internal/multi-model/`)
- Hugging Face Transformers integration
- Runtime-specific loading strategies
- Browser, Node.js, and non-Node implementations
### Utilities (`src/utils/`)
- `base64.ts` - Base64 encoding/decoding utilities
- `shared.ts` - Shared utility classes
- `index.ts` - Environment detection and configuration
## Architecture Patterns
### Conditional Exports
The package.json uses conditional exports to map different entry points based on runtime:
```json
"exports": {
".": {
"node": "./dist/index.js",
"workerd": "./dist/index.workerd.js",
"edge-light": "./dist/index.edge-light.js",
"browser": "./dist/index.browser.js"
}
}
```
### Polyfill Strategy
- Each runtime gets only the APIs it can support
- Graceful degradation for missing functionality
- Common interface across all environments
### Dependency Management
- Core dependencies: `pathe`, `@aws-crypto/sha256-js`, `js-tiktoken`
- Optional peer dependencies: `@huggingface/transformers`, `gpt-tokenizer`
- Runtime detection determines which implementations to use
## Testing
- Tests in `tests/` directory use Vitest
- `memfs.test.ts` - Memory filesystem tests
- `tokenizer.test.ts` - Tokenizer functionality tests
- Always run `pnpm build` before testing as tests depend on build artifacts
## Usage Notes
- This package is typically imported by other LlamaIndex packages, not directly by users
- Provides the runtime abstraction layer that makes LlamaIndex framework runtime-agnostic
- When adding new environment-specific functionality, ensure all supported runtimes have appropriate implementations or polyfills
- Use environment detection utilities to handle runtime differences gracefully
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# @llamaindex/experimental
## 0.0.182
### Patch Changes
- llamaindex@0.11.5
## 0.0.181
### Patch Changes
- llamaindex@0.11.4
## 0.0.180
### Patch Changes
- llamaindex@0.11.3
## 0.0.179
### Patch Changes
- llamaindex@0.11.2
## 0.0.178
### Patch Changes
- llamaindex@0.11.1
## 0.0.177
### Patch Changes
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@@ -1,7 +1,7 @@
{
"name": "@llamaindex/experimental",
"description": "Experimental package for LlamaIndexTS",
"version": "0.0.177",
"version": "0.0.182",
"type": "module",
"types": "dist/type/index.d.ts",
"main": "dist/cjs/index.js",
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@@ -1,5 +1,50 @@
# llamaindex
## 0.11.5
### Patch Changes
- Updated dependencies [766054b]
- Updated dependencies [71598f8]
- @llamaindex/workflow@1.1.6
- @llamaindex/core@0.6.9
- @llamaindex/cloud@4.0.13
- @llamaindex/node-parser@2.0.9
## 0.11.4
### Patch Changes
- Updated dependencies [c927457]
- @llamaindex/core@0.6.8
- @llamaindex/cloud@4.0.12
- @llamaindex/node-parser@2.0.8
- @llamaindex/workflow@1.1.5
## 0.11.3
### Patch Changes
- Updated dependencies [76ff23d]
- @llamaindex/cloud@4.0.11
## 0.11.2
### Patch Changes
- Updated dependencies [59601dd]
- @llamaindex/core@0.6.7
- @llamaindex/cloud@4.0.10
- @llamaindex/node-parser@2.0.7
- @llamaindex/workflow@1.1.4
## 0.11.1
### Patch Changes
- Updated dependencies [3703f90]
- @llamaindex/cloud@4.0.9
## 0.11.0
### Minor Changes
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# CLAUDE.md
This file provides guidance to Claude Code (claude.ai/code) when working with code in this repository.
## Package Overview
This is the main `llamaindex` package - the primary entry point for LlamaIndex.TS that aggregates core functionality from `@llamaindex/core` and other workspace packages. It provides multiple runtime-specific entry points and sub-module exports.
## Development Commands
**Build and Test:**
- `pnpm build` - Build the package using bunchee (creates CJS/ESM dual exports)
- `pnpm dev` - Build in watch mode for development
- `pnpm lint` - Run ESLint on source files
- `cd tests && pnpm test` - Run unit tests (requires build first)
**Testing from workspace root:**
- `turbo run build --filter="llamaindex"` - Build this specific package
- `turbo run test --filter="llamaindex"` - Test this specific package
## Architecture
### Multi-Runtime Entry Points
The package supports multiple JavaScript runtimes through conditional exports:
- `src/index.ts` - Default Node.js entry point with file system support
- `src/index.edge.ts` - Edge runtime entry (Vercel Edge, Cloudflare Workers)
- `src/index.react-server.ts` - React Server Components
- `src/index.workerd.ts` - Cloudflare Workers specific
### Sub-module Structure
The package exports functionality as sub-modules for tree-shaking:
- `/agent` - Deprecated ReAct agents (use `@llamaindex/workflow` instead)
- `/cloud` - LlamaCloud integration
- `/engines` - Chat and query engines
- `/evaluation` - RAG evaluation metrics
- `/extractors` - Metadata extraction
- `/indices` - Vector, summary, and keyword indices
- `/ingestion` - Document processing pipelines
- `/objects` - Object index for structured data
- `/postprocessors` - Result reranking and filtering
- `/selectors` - LLM-based routing and selection
- `/storage` - Local storage implementations
- `/tools` - Function calling tools
- `/vector-store` - Simple vector store implementation
- `/next` - Next.js specific utilities
### Core Integration
This package primarily aggregates and re-exports from:
- `@llamaindex/core` - Abstract base classes and interfaces
- `@llamaindex/cloud` - LlamaCloud services
- `@llamaindex/env` - Runtime compatibility layers
- `@llamaindex/node-parser` - Text chunking
### Testing Structure
Tests are in a separate `tests/` subdirectory with its own package.json:
- Tests depend on build artifacts - always build before testing
- Uses Vitest with setup in `vitest.setup.ts`
- Test files follow `*.test.ts` pattern
- Tests import from the built package, not source files
### Development Notes
- Uses bunchee for building with dual CJS/ESM output
- Build process automatically copies README and LICENSE from workspace root
- Package supports Node.js >=18.0.0
- Entry points are configured for tree-shaking and runtime optimization
- When adding new functionality, consider if it should be a sub-module export
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{
"name": "llamaindex",
"version": "0.11.0",
"version": "0.11.5",
"license": "MIT",
"type": "module",
"keywords": [
@@ -24,7 +24,7 @@
"@llamaindex/core": "workspace:*",
"@llamaindex/env": "workspace:*",
"@llamaindex/node-parser": "workspace:*",
"@llamaindex/workflow": "1.0.3",
"@llamaindex/workflow": "1.1.6",
"@types/lodash": "^4.17.7",
"@types/node": "^22.9.0",
"ajv": "^8.17.1",
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# @llamaindex/core-test
## 0.1.4
### Patch Changes
- @llamaindex/openai@0.4.3
## 0.1.3
### Patch Changes
- Updated dependencies [c927457]
- @llamaindex/openai@0.4.2
## 0.1.2
### Patch Changes
- Updated dependencies [59601dd]
- @llamaindex/openai@0.4.1
## 0.1.1
### Patch Changes
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{
"name": "@llamaindex/llamaindex-test",
"private": true,
"version": "0.1.1",
"version": "0.1.4",
"type": "module",
"scripts": {
"test": "vitest run"
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# @llamaindex/node-parser
## 2.0.9
### Patch Changes
- Updated dependencies [71598f8]
- @llamaindex/core@0.6.9
## 2.0.8
### Patch Changes
- Updated dependencies [c927457]
- @llamaindex/core@0.6.8
## 2.0.7
### Patch Changes
- Updated dependencies [59601dd]
- @llamaindex/core@0.6.7
## 2.0.6
### Patch Changes
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{
"name": "@llamaindex/node-parser",
"version": "2.0.6",
"version": "2.0.9",
"description": "Node parser for LlamaIndex",
"type": "module",
"exports": {
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# @llamaindex/anthropic
## 0.3.11
### Patch Changes
- Updated dependencies [71598f8]
- @llamaindex/core@0.6.9
## 0.3.10
### Patch Changes
- c927457: Use base64 for encoding files
- Updated dependencies [c927457]
- @llamaindex/core@0.6.8
## 0.3.9
### Patch Changes
- 5cdab12: Add Claude Sonnet 4 and Clause Opus 4 models
## 0.3.8
### Patch Changes
- Updated dependencies [59601dd]
- @llamaindex/core@0.6.7
## 0.3.7
### Patch Changes
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# CLAUDE.md - Anthropic Provider Package
This file provides guidance for working with the `@llamaindex/anthropic` provider package in the LlamaIndex.TS monorepo.
## Package Overview
The `@llamaindex/anthropic` package provides integration with Anthropic's Claude models for LlamaIndex.TS applications. It implements the LlamaIndex provider pattern for seamless integration with the framework's LLM and agent abstractions.
### Key Components
- **`Anthropic` class** (`src/llm.ts`): Main LLM provider implementing `ToolCallLLM` from `@llamaindex/core`
- **`AnthropicAgent` class** (`src/agent.ts`): Agent implementation extending `LLMAgent` - deprecated
- **Session management**: Automatic session pooling and reuse for efficient API connections
## Development Commands
Package-specific commands (run from this directory):
- `pnpm test` - Run unit tests using Vitest
- `pnpm build` - Build the package using bunchee
- `pnpm dev` - Start development mode with watch
For workspace-wide commands, see the root CLAUDE.md.
## Supported Features
### Models
- **Claude 2.x**: Legacy models (claude-2.0, claude-2.1, claude-instant-1.2)
- **Claude 3.x**: claude-3-opus, claude-3-sonnet, claude-3-haiku
- **Claude 3.5.x**: claude-3-5-sonnet, claude-3-5-haiku
- **Claude 3.7.x**: claude-3-7-sonnet
- **Claude 4.x**: claude-4-0-sonnet, claude-4-0-opus
For each model, there is a different context window that specifies the maximum number of tokens that can be processed.
### Core Capabilities
- **Tool calling**: Full function calling support (Claude 3+ models only)
- **Streaming**: Async streaming responses
- **Multi-modal input**: Text, images (JPEG, PNG, GIF, WebP), and PDF documents
- **Extended thinking**: Support for Claude's thinking blocks with signature validation
- **Prompt caching**: Beta support for Anthropic's prompt caching
- **Message formatting**: Automatic handling of system messages, tool calls, and consecutive message merging
### Configuration Options
- `model`: Model name (defaults to "claude-3-opus")
- `temperature`: Sampling temperature (defaults to 1)
- `topP`: Top-p sampling
- `maxTokens`: Maximum response tokens
- `apiKey`: API key (auto-detected from `ANTHROPIC_API_KEY` env var)
- `maxRetries`: Request retry limit (defaults to 10)
- `timeout`: Request timeout in ms (defaults to 60 seconds)
## Usage Examples
### Basic LLM Usage
```typescript
import { Anthropic } from "@llamaindex/anthropic";
const llm = new Anthropic({
model: "claude-3-5-sonnet",
temperature: 0.7,
maxTokens: 1024,
});
const response = await llm.chat({
messages: [{ role: "user", content: "Hello, how are you?" }],
});
```
## Architecture Notes
### Session Management
The package implements session pooling to reuse connections efficiently. Sessions are automatically created and reused based on matching client options.
### Message Formatting
- System messages are extracted and handled separately
- Consecutive messages from the same role are automatically merged
- Tool calls and results are properly formatted for Anthropic's API
- Multi-modal content (images, PDFs) is converted to base64 format
### Tool Integration
- Implements `BaseTool` interface from `@llamaindex/core`
- Tool parameters must be object schemas
- Automatic JSON parsing and validation of tool inputs
- Streaming support for tool call responses
## Testing
The package includes comprehensive test coverage for:
- Basic message formatting
- Multi-modal content handling
- Tool call and result formatting
- Extended thinking block formatting
- Consecutive message merging
- Error handling for invalid inputs
Tests use Vitest and mock the Anthropic API key for testing.
## Dependencies
- `@anthropic-ai/sdk`: Official Anthropic SDK
- `remeda`: Utility library for deep equality checks
- `@llamaindex/core`: Core LlamaIndex interfaces (peer dependency)
- `@llamaindex/env`: Environment utilities (peer dependency)
## Environment Variables
- `ANTHROPIC_API_KEY`: Required API key for Anthropic services
## Important Notes
- Tool calling is only supported on Claude 3+ models
- Agent streaming is not currently supported (throws error)
- PDF files are the only supported document type for file uploads
- Always ensure `thinking_signature` is provided when using thinking blocks
- The package follows LlamaIndex provider patterns for consistent integration
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{
"name": "@llamaindex/anthropic",
"description": "Anthropic Adapter for LlamaIndex",
"version": "0.3.7",
"version": "0.3.11",
"type": "module",
"main": "./dist/index.cjs",
"module": "./dist/index.js",
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@@ -28,7 +28,7 @@ import type {
} from "@llamaindex/core/llms";
import { ToolCallLLM } from "@llamaindex/core/llms";
import { extractText } from "@llamaindex/core/utils";
import { getEnv, uint8ArrayToBase64 } from "@llamaindex/env";
import { getEnv } from "@llamaindex/env";
import { isDeepEqual } from "remeda";
export class AnthropicSession {
@@ -112,11 +112,19 @@ export const ALL_AVAILABLE_V3_7_MODELS = {
"claude-3-7-sonnet-latest": { contextWindow: 200000 },
};
export const ALL_AVAILABLE_V4_MODELS = {
"claude-4-0-sonnet": { contextWindow: 200000 },
"claude-4-sonnet-20240514": { contextWindow: 200000 },
"claude-4-0-opus": { contextWindow: 200000 },
"claude-4-opus-20240514": { contextWindow: 200000 },
};
export const ALL_AVAILABLE_ANTHROPIC_MODELS = {
...ALL_AVAILABLE_ANTHROPIC_LEGACY_MODELS,
...ALL_AVAILABLE_V3_MODELS,
...ALL_AVAILABLE_V3_5_MODELS,
...ALL_AVAILABLE_V3_7_MODELS,
...ALL_AVAILABLE_V4_MODELS,
} satisfies {
[key in Model]: { contextWindow: number };
};
@@ -127,6 +135,8 @@ const AVAILABLE_ANTHROPIC_MODELS_WITHOUT_DATE: { [key: string]: string } = {
"claude-3-haiku": "claude-3-haiku-20240307",
"claude-3-5-sonnet": "claude-3-5-sonnet-20240620",
"claude-3-7-sonnet": "claude-3-7-sonnet-20250219",
"claude-4-0-sonnet": "claude-sonnet-4-20250514",
"claude-4-0-opus": "claude-opus-4-20250514",
} as { [key in keyof typeof ALL_AVAILABLE_ANTHROPIC_MODELS]: string };
export type AnthropicAdditionalChatOptions = Pick<
@@ -177,7 +187,7 @@ export class Anthropic extends ToolCallLLM<
}
get supportToolCall() {
return this.model.startsWith("claude-3");
return this.model.includes("-3") || this.model.includes("-4");
}
get metadata() {
@@ -332,7 +342,7 @@ export class Anthropic extends ToolCallLLM<
source: {
type: "base64" as const,
media_type: content.mimeType,
data: uint8ArrayToBase64(content.data),
data: content.data,
},
};
}
@@ -178,7 +178,7 @@ describe("Message Formatting", () => {
{
type: "file",
mimeType: "application/pdf",
data: pdfBuffer,
data: pdfBuffer.toString("base64"),
},
],
role: "user",
@@ -1,5 +1,26 @@
# @llamaindex/assemblyai
## 0.1.8
### Patch Changes
- Updated dependencies [71598f8]
- @llamaindex/core@0.6.9
## 0.1.7
### Patch Changes
- Updated dependencies [c927457]
- @llamaindex/core@0.6.8
## 0.1.6
### Patch Changes
- Updated dependencies [59601dd]
- @llamaindex/core@0.6.7
## 0.1.5
### Patch Changes

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