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Author SHA1 Message Date
github-actions[bot] 09beb72f5b Release 0.5.3 (#1038)
Co-authored-by: github-actions[bot] <github-actions[bot]@users.noreply.github.com>
2024-07-16 10:25:27 -07:00
Fabian Wimmer 9bbbc67c8e feat: add a reader for Discord messages (#1040) 2024-07-16 10:19:48 -07:00
Brian Peiris b3681bf681 fix: DataCloneError when using FunctionTool (#1037) 2024-07-14 15:24:49 -07:00
Alex Yang b548b1443b chore: bump version (#1032) 2024-07-12 15:14:27 -07:00
github-actions[bot] 0e980d962d Release 0.5.2 (#1035)
Co-authored-by: github-actions[bot] <github-actions[bot]@users.noreply.github.com>
2024-07-12 11:44:32 -07:00
Alex Yang 3ed6acc6a6 chore: bump cloud api (#1036) 2024-07-12 11:21:37 -07:00
Parham Saidi 56746c240f fix: bedrock handle empty content and added max tokens export (#1034) 2024-07-12 09:47:49 -07:00
Alex Yang 5c1c2c7f5b ci: only commit lock file (#1031) 2024-07-10 10:17:35 -07:00
github-actions[bot] a699086f46 Release 0.5.1 (#1028)
Co-authored-by: github-actions[bot] <github-actions[bot]@users.noreply.github.com>
2024-07-09 15:36:20 -07:00
Alex Yang 454c204112 chore: bump version (#1029) 2024-07-09 13:42:09 -07:00
Julius Lipp 277468160d feat: add mixedbread ai integration (#953) 2024-07-09 09:36:43 -07:00
Ranjan Mangla a0f424e592 fix: corrected the regex in the ReactAgent (#1022)
Signed-off-by: ranjanmangla1 <ranjanmangla1@gmail.com>
2024-07-09 08:55:38 -07:00
github-actions[bot] 3ae832ca28 Release 0.5.0 (#1024)
Co-authored-by: github-actions[bot] <github-actions[bot]@users.noreply.github.com>
Co-authored-by: himself65 <himself65@users.noreply.github.com>
2024-07-08 17:16:46 -07:00
Alex Yang 16ef5dd631 feat: simplify callback manager (#1027) 2024-07-08 16:44:54 -07:00
Alex Yang c4bd0a5215 refactor: move llm & callback manager to core module (#1026) 2024-07-08 15:48:59 -07:00
Alex Yang f5c8ca7dfb chore: use bunchee bundler for all (#1025) 2024-07-08 09:45:55 -07:00
Sacha Bron 36ddec44af fix: typo in custom page separator parameter for LlamaParse (#1023) 2024-07-08 09:27:51 -07:00
github-actions[bot] c147d8a271 Release 0.4.14 (#1021)
Co-authored-by: github-actions[bot] <github-actions[bot]@users.noreply.github.com>
2024-07-05 15:26:31 -07:00
Alex Yang 1c444d58b6 feat(cloud): update openapi.json (#1020) 2024-07-05 15:01:22 -07:00
github-actions[bot] 1f910f7566 Release 0.4.13 (#1016)
Co-authored-by: github-actions[bot] <github-actions[bot]@users.noreply.github.com>
2024-07-05 11:44:37 -07:00
Thuc Pham 99826cff43 fix: missing dispatch retrieve event on llamacloud retriever (#1018) 2024-07-05 20:43:26 +07:00
Fabian Wimmer e8f8bea969 feat: add boundingBox and targetPages to LlamaParseReader (#1017) 2024-07-05 14:32:26 +07:00
Fabian Wimmer 304484b77a feat: add ignoreErrors flag to LlamaParse (#959)
Co-authored-by: Marcus Schiesser <marcus.schiesser@googlemail.com>
2024-07-04 20:51:05 +07:00
abgita 29fed77d58 Fixed a typo in the retriever description (#1009) 2024-07-04 20:15:20 +07:00
Alex Yang db070588c8 ci: fix setup pnpm (#1014) 2024-07-03 12:11:48 -07:00
github-actions[bot] 76deca7fea Release 0.4.12 (#1013)
Co-authored-by: github-actions[bot] <github-actions[bot]@users.noreply.github.com>
2024-07-03 10:24:22 -07:00
Alex Yang f326ab86d2 chore: bump version 2024-07-03 10:20:46 -07:00
Cássio de Freitas e Silva ca8d9709e0 feat: add support for Meta LLMs in AWS Bedrock (#960) 2024-07-03 01:27:58 -07:00
github-actions[bot] e0af059221 Release 0.4.11 (#1008)
Co-authored-by: github-actions[bot] <github-actions[bot]@users.noreply.github.com>
2024-07-02 15:07:03 -07:00
Alex Yang 8bf5b4acfd fix: llama parse input spreadsheet (#1007) 2024-07-02 14:48:51 -07:00
Alex Yang 93a003baa0 ci: pre release (#1005) 2024-07-02 00:40:45 -07:00
github-actions[bot] 5d9b0bd3f0 Release 0.4.10 (#1003)
Co-authored-by: github-actions[bot] <github-actions[bot]@users.noreply.github.com>
2024-07-01 23:59:52 -07:00
Alex Yang 9a5525e1b3 refactor(core): migrate llms type (#1002) 2024-07-01 20:13:35 -07:00
Peron 7dce3d28d3 fix: disable External Filters for Gemini (#994)
Co-authored-by: Alex Yang <himself65@outlook.com>
2024-07-01 18:28:22 -07:00
github-actions[bot] d4c1482c1c Release 0.4.9 (#1001)
Co-authored-by: github-actions[bot] <github-actions[bot]@users.noreply.github.com>
2024-07-01 17:20:47 -07:00
Alex Yang 3a96a483a6 fix: anthropic image input (#999) 2024-07-01 16:03:30 -07:00
Alex Yang 7467fce2d4 docs: remove cloudflare worker section (#1000) 2024-07-01 16:01:55 -07:00
github-actions[bot] 06af08cac4 Release 0.4.8 (#998)
Co-authored-by: github-actions[bot] <github-actions[bot]@users.noreply.github.com>
2024-07-01 15:07:50 -07:00
Alex Yang 83ebdfb1c5 fix: next.js binding (#997) 2024-07-01 14:52:57 -07:00
github-actions[bot] 835b1ac000 Release 0.4.7 (#986)
Co-authored-by: github-actions[bot] <github-actions[bot]@users.noreply.github.com>
2024-06-28 22:58:14 -07:00
Alex Yang f10b41dbc1 chore: fix release files (#991) 2024-06-28 13:36:55 -07:00
Wassim Chegham 41fe871e2f feat: add support for azure dynamic session tool (#942)
Co-authored-by: Marcus Schiesser <marcus.schiesser@googlemail.com>
2024-06-27 13:18:05 -07:00
Alex Yang 321c39ddc7 fix: generate api as class (#988) 2024-06-27 09:58:00 -07:00
Alex Yang f7f1af0139 fix: llamacloud sdk edge case (#985) 2024-06-26 23:10:04 -07:00
196 changed files with 13098 additions and 7815 deletions
+1 -1
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@@ -13,7 +13,7 @@ jobs:
runs-on: ubuntu-latest
steps:
- uses: actions/checkout@v4
- uses: pnpm/action-setup@v3
- uses: pnpm/action-setup@v4
- name: Setup Node.js
uses: actions/setup-node@v4
with:
+28
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@@ -0,0 +1,28 @@
name: Publish Preview
on: [pull_request]
jobs:
pre_release:
name: Pre Release
runs-on: ubuntu-latest
steps:
- name: Checkout Repo
uses: actions/checkout@v4
- uses: pnpm/action-setup@v4
- name: Setup Node.js
uses: actions/setup-node@v4
with:
node-version-file: ".nvmrc"
cache: "pnpm"
- name: Install dependencies
run: pnpm install
- name: Build
run: pnpm run build
- name: Pre Release
run: pnpx pkg-pr-new publish ./packages/*
+1 -1
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@@ -12,7 +12,7 @@ jobs:
- name: Checkout Repo
uses: actions/checkout@v4
- uses: pnpm/action-setup@v3
- uses: pnpm/action-setup@v4
- name: Setup Node.js
uses: actions/setup-node@v4
+2 -1
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@@ -15,7 +15,7 @@ jobs:
- name: Checkout Repo
uses: actions/checkout@v4
- uses: pnpm/action-setup@v3
- uses: pnpm/action-setup@v4
- name: Setup Node.js
uses: actions/setup-node@v4
@@ -67,3 +67,4 @@ jobs:
with:
commit_message: "chore: update lock file"
branch: changeset-release/main
file_pattern: "pnpm-lock.yaml"
+5 -5
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@@ -23,7 +23,7 @@ jobs:
steps:
- uses: actions/checkout@v4
- uses: pnpm/action-setup@v3
- uses: pnpm/action-setup@v4
- name: Setup Node.js
uses: actions/setup-node@v4
@@ -45,7 +45,7 @@ jobs:
steps:
- uses: actions/checkout@v4
- uses: pnpm/action-setup@v3
- uses: pnpm/action-setup@v4
- name: Setup Node.js
uses: actions/setup-node@v4
with:
@@ -60,7 +60,7 @@ jobs:
steps:
- uses: actions/checkout@v4
- uses: pnpm/action-setup@v3
- uses: pnpm/action-setup@v4
- name: Setup Node.js
uses: actions/setup-node@v4
with:
@@ -97,7 +97,7 @@ jobs:
name: Build LlamaIndex Example (${{ matrix.packages }})
steps:
- uses: actions/checkout@v4
- uses: pnpm/action-setup@v3
- uses: pnpm/action-setup@v4
- name: Setup Node.js
uses: actions/setup-node@v4
with:
@@ -116,7 +116,7 @@ jobs:
steps:
- uses: actions/checkout@v4
- uses: pnpm/action-setup@v3
- uses: pnpm/action-setup@v4
- name: Setup Node.js
uses: actions/setup-node@v4
with:
+1 -35
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@@ -76,7 +76,7 @@ main();
node --import tsx ./main.ts
```
### Next.js
### React Server Component (Next.js, Waku, Redwood.JS...)
First, you will need to add a llamaindex plugin to your Next.js project.
@@ -154,40 +154,6 @@ export async function chatWithAgent(
}
```
### Cloudflare Workers
```ts
// src/index.ts
export default {
async fetch(
request: Request,
env: Env,
ctx: ExecutionContext,
): Promise<Response> {
const { setEnvs } = await import("@llamaindex/env");
// set environment variables so that the OpenAIAgent can use them
setEnvs(env);
const { OpenAIAgent } = await import("llamaindex");
const agent = new OpenAIAgent({
tools: [],
});
const responseStream = await agent.chat({
stream: true,
message: "Hello? What is the weather today?",
});
const textEncoder = new TextEncoder();
const response = responseStream.pipeThrough(
new TransformStream({
transform: (chunk, controller) => {
controller.enqueue(textEncoder.encode(chunk.response.delta));
},
}),
);
return new Response(response);
},
};
```
## Playground
Check out our NextJS playground at https://llama-playground.vercel.app/. The source is available at https://github.com/run-llama/ts-playground
+92
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@@ -1,5 +1,97 @@
# docs
## 0.0.44
### Patch Changes
- Updated dependencies [9bbbc67]
- Updated dependencies [b3681bf]
- llamaindex@0.5.3
## 0.0.43
### Patch Changes
- llamaindex@0.5.2
## 0.0.42
### Patch Changes
- 2774681: Add mixedbread's embeddings and reranking API
- Updated dependencies [2774681]
- Updated dependencies [a0f424e]
- llamaindex@0.5.1
## 0.0.41
### Patch Changes
- 36ddec4: fix: typo in custom page separator parameter for LlamaParse
- Updated dependencies [16ef5dd]
- Updated dependencies [16ef5dd]
- Updated dependencies [36ddec4]
- llamaindex@0.5.0
- @llamaindex/examples@0.0.7
## 0.0.40
### Patch Changes
- llamaindex@0.4.14
## 0.0.39
### Patch Changes
- Updated dependencies [e8f8bea]
- Updated dependencies [304484b]
- llamaindex@0.4.13
## 0.0.38
### Patch Changes
- Updated dependencies [f326ab8]
- llamaindex@0.4.12
## 0.0.37
### Patch Changes
- Updated dependencies [8bf5b4a]
- llamaindex@0.4.11
## 0.0.36
### Patch Changes
- Updated dependencies [7dce3d2]
- llamaindex@0.4.10
## 0.0.35
### Patch Changes
- Updated dependencies [3a96a48]
- llamaindex@0.4.9
## 0.0.34
### Patch Changes
- Updated dependencies [83ebdfb]
- llamaindex@0.4.8
## 0.0.33
### Patch Changes
- Updated dependencies [41fe871]
- Updated dependencies [321c39d]
- Updated dependencies [f7f1af0]
- llamaindex@0.4.7
## 0.0.32
### Patch Changes
+1 -1
View File
@@ -62,7 +62,7 @@ These building blocks can be customized to reflect ranking preferences, as well
[**Retrievers**](../modules/retriever.md):
A retriever defines how to efficiently retrieve relevant context from a knowledge base (i.e. index) when given a query.
The specific retrieval logic differs for difference indices, the most popular being dense retrieval against a vector index.
The specific retrieval logic differs for different indices, the most popular being dense retrieval against a vector index.
[**Response Synthesizers**](../modules/response_synthesizer.md):
A response synthesizer generates a response from an LLM, using a user query and a given set of retrieved text chunks.
@@ -0,0 +1,34 @@
import CodeBlock from "@theme/CodeBlock";
import CodeSource from "!raw-loader!../../../../../examples/readers/src/discord";
# DiscordReader
DiscordReader is a simple data loader that reads all messages in a given Discord channel and returns them as Document objects.
It uses the [@discordjs/rest](https://github.com/discordjs/discord.js/tree/main/packages/rest) library to fetch the messages.
## Usage
First step is to create a Discord Application and generating a bot token [here](https://discord.com/developers/applications).
In your Discord Application, go to the `OAuth2` tab and generate an invite URL by selecting `bot` and click `Read Messages/View Channels` as wells as `Read Message History`.
This will invite the bot with the necessary permissions to read messages.
Copy the URL in your browser and select the server you want your bot to join.
<CodeBlock language="ts">{CodeSource}</CodeBlock>
### Params
#### DiscordReader()
- `discordToken?`: The Discord bot token.
- `makeRequest?`: Optionally provide a custom request function for edge environments, e.g. `fetch`. See discord.js for more info.
#### DiscordReader.loadData
- `channelIDs`: The ID(s) of discord channels as an array of strings.
- `limit?`: Optionally limit the number of messages to read
- `additionalInfo?`: An optional flag to include embedded messages and attachment urls in the document.
- `oldestFirst?`: An optional flag to return the oldest messages first.
## API Reference
- [DiscordReader](../../api/classes/DiscordReader.md)
@@ -27,23 +27,25 @@ They can be divided into two groups.
- `apiKey` is required. Can be set as an environment variable `LLAMA_CLOUD_API_KEY`
- `checkInterval` is the interval in seconds to check if the parsing is done. Default is `1`.
- `maxTimeout` is the maximum timout to wait for parsing to finish. Default is `2000`
- `maxTimeout` is the maximum timeout to wait for parsing to finish. Default is `2000`
- `verbose` shows progress of the parsing. Default is `true`
- `ignoreErrors` set to false to get errors while parsing. Default is `true` and returns an empty array on error.
#### Advanced params:
- `resultType` can be set to `markdown`, `text` or `json`. Defaults to `text`. More information about `json` mode on the next pages.
- `language` primarly helps with OCR recognition. Defaults to `en`. Click [here](../../../api/type-aliases/Language.md) for a list of supported languages.
- `language` primarily helps with OCR recognition. Defaults to `en`. Click [here](../../../api/type-aliases/Language.md) for a list of supported languages.
- `parsingInstructions?` Optional. Can help with complicated document structures. See this [LlamaIndex Blog Post](https://www.llamaindex.ai/blog/launching-the-first-genai-native-document-parsing-platform) for an example.
- `skipDiagonalText?` Optional. Set to true to ignore diagonal text. (Text that is not rotated 0, 90, 180 or 270 degrees)
- `invalidateCache?` Optional. Set to true to ignore the LlamaCloud cache. All document are kept in cache for 48hours after the job was completed to avoid processing the same document twice. Can be useful for testing when trying to re-parse the same document with, e.g. different `parsingInstructions`.
- `doNotCache?` Optional. Set to true to not cache the document.
- `fastMode?` Optional. Set to true to use the fast mode. This mode will skip OCR of images, and table/heading reconstruction. Note: Non-compatible with `gpt4oMode`.
- `doNotUnrollColumns?` Optional. Set to true to keep the text according to document layout. Reduce reconstruction accuracy, and LLM's/embedings performances in most cases.
- `pageSeperator?` Optional. The page seperator to use. Defaults is `\\n---\\n`.
- `doNotUnrollColumns?` Optional. Set to true to keep the text according to document layout. Reduce reconstruction accuracy, and LLMs/embeddings performances in most cases.
- `pageSeparator?` Optional. The page separator to use. Defaults is `\\n---\\n`.
- `gpt4oMode` set to true to use GPT-4o to extract content. Default is `false`.
- `gpt4oApiKey?` Optional. Set the GPT-4o API key. Lowers the cost of parsing by using your own API key. Your OpenAI account will be charged. Can also be set in the environment variable `LLAMA_CLOUD_GPT4O_API_KEY`.
- `boundingBox?` Optional. Specify an area of the document to parse. Expects the bounding box margins as a string in clockwise order, e.g. `boundingBox = "0.1,0,0,0"` to not parse the top 10% of the document.
- `targetPages?` Optional. Specify which pages to parse by specifying them as a comma-separated list. First page is `0`.
- `numWorkers` as in the python version, is set in `SimpleDirectoryReader`. Default is 1.
### LlamaParse with SimpleDirectoryReader
@@ -8,7 +8,7 @@ In JSON mode, LlamaParse will return a data structure representing the parsed ob
## Usage
For Json mode, you need to use `loadJson`. The `resultType` is automatically set with this method. Currently it can't be used with `SimpleDirectoryReader`.
For Json mode, you need to use `loadJson`. The `resultType` is automatically set with this method.
More information about indexing the results on the next page.
```ts
@@ -0,0 +1,100 @@
# MixedbreadAI
Welcome to the mixedbread embeddings guide! This guide will help you use the mixedbread ai's API to generate embeddings for your text documents, ensuring you get the most relevant information, just like picking the freshest bread from the bakery.
To find out more about the latest features, updates, and available models, visit [mixedbread.ai](https://mixedbread-ai.com/).
## Table of Contents
1. [Setup](#setup)
2. [Usage with LlamaIndex](#integration-with-llamaindex)
3. [Embeddings with Custom Parameters](#embeddings-with-custom-parameters)
## Setup
First, you will need to install the `llamaindex` package.
```bash
pnpm install llamaindex
```
Next, sign up for an API key at [mixedbread.ai](https://mixedbread.ai/). Once you have your API key, you can import the necessary modules and create a new instance of the `MixedbreadAIEmbeddings` class.
```ts
import { MixedbreadAIEmbeddings, Document, Settings } from "llamaindex";
```
## Usage with LlamaIndex
This section will guide you through integrating mixedbread embeddings with LlamaIndex for more advanced usage.
### Step 1: Load and Index Documents
For this example, we will use a single document. In a real-world scenario, you would have multiple documents to index, like a variety of breads in a bakery.
```ts
Settings.embedModel = new MixedbreadAIEmbeddings({
apiKey: "<MIXEDBREAD_API_KEY>",
model: "mixedbread-ai/mxbai-embed-large-v1",
});
const document = new Document({
text: "The true source of happiness.",
id_: "bread",
});
const index = await VectorStoreIndex.fromDocuments([document]);
```
### Step 2: Create a Query Engine
Combine the retriever and the embed model to create a query engine. This setup ensures that your queries are processed to provide the best results, like arranging the bread in the order of freshness and quality.
Models can require prompts to generate embeddings for queries, in the 'mixedbread-ai/mxbai-embed-large-v1' model's case, the prompt is `Represent this sentence for searching relevant passages:`.
```ts
const queryEngine = index.asQueryEngine();
const query =
"Represent this sentence for searching relevant passages: What is bread?";
// Log the response
const results = await queryEngine.query(query);
console.log(results); // Serving up the freshest, most relevant results.
```
## Embeddings with Custom Parameters
This section will guide you through generating embeddings with custom parameters and usage with f.e. matryoshka and binary embeddings.
### Step 1: Create an Instance of MixedbreadAIEmbeddings
Create a new instance of the `MixedbreadAIEmbeddings` class with custom parameters. For example, to use the `mixedbread-ai/mxbai-embed-large-v1` model with a batch size of 64, normalized embeddings, and binary encoding format:
```ts
const embeddings = new MixedbreadAIEmbeddings({
apiKey: "<MIXEDBREAD_API_KEY>",
model: "mixedbread-ai/mxbai-embed-large-v1",
batchSize: 64,
normalized: true,
dimensions: 512,
encodingFormat: MixedbreadAI.EncodingFormat.Binary,
});
```
### Step 2: Define Texts
Define the texts you want to generate embeddings for.
```ts
const texts = ["Bread is life", "Bread is love"];
```
### Step 3: Generate Embeddings
Use the `embedDocuments` method to generate embeddings for the texts.
```ts
const result = await embeddings.embedDocuments(texts);
console.log(result); // Perfectly customized embeddings, ready to serve.
```
@@ -15,7 +15,7 @@ Settings.llm = new Bedrock({
});
```
Currently only supports Anthropic models:
Currently only supports Anthropic and Meta models:
```ts
ANTHROPIC_CLAUDE_INSTANT_1 = "anthropic.claude-instant-v1";
@@ -25,6 +25,10 @@ ANTHROPIC_CLAUDE_3_SONNET = "anthropic.claude-3-sonnet-20240229-v1:0";
ANTHROPIC_CLAUDE_3_HAIKU = "anthropic.claude-3-haiku-20240307-v1:0";
ANTHROPIC_CLAUDE_3_OPUS = "anthropic.claude-3-opus-20240229-v1:0"; // available on us-west-2
ANTHROPIC_CLAUDE_3_5_SONNET = "anthropic.claude-3-5-sonnet-20240620-v1:0";
META_LLAMA2_13B_CHAT = "meta.llama2-13b-chat-v1";
META_LLAMA2_70B_CHAT = "meta.llama2-70b-chat-v1";
META_LLAMA3_8B_INSTRUCT = "meta.llama3-8b-instruct-v1:0";
META_LLAMA3_70B_INSTRUCT = "meta.llama3-70b-instruct-v1:0";
```
Sonnet, Haiku and Opus are multimodal, image_url only supports base64 data url format, e.g. `data:image/jpeg;base64,SGVsbG8sIFdvcmxkIQ==`
@@ -0,0 +1,164 @@
# MixedbreadAI
Welcome to the mixedbread ai reranker guide! This guide will help you use mixedbread ai's API to rerank search query results, ensuring you get the most relevant information, just like picking the freshest bread from the bakery.
To find out more about the latest features and updates, visit the [mixedbread.ai](https://mixedbread.ai/).
## Table of Contents
1. [Setup](#setup)
2. [Usage with LlamaIndex](#integration-with-llamaindex)
3. [Simple Reranking Guide](#simple-reranking-guide)
4. [Reranking with Objects](#reranking-with-objects)
## Setup
First, you will need to install the `llamaindex` package.
```bash
pnpm install llamaindex
```
Next, sign up for an API key at [mixedbread.ai](https://mixedbread.ai/). Once you have your API key, you can import the necessary modules and create a new instance of the `MixedbreadAIReranker` class.
```ts
import {
MixedbreadAIReranker,
Document,
OpenAI,
VectorStoreIndex,
Settings,
} from "llamaindex";
```
## Usage with LlamaIndex
This section will guide you through integrating mixedbread's reranker with LlamaIndex.
### Step 1: Load and Index Documents
For this example, we will use a single document. In a real-world scenario, you would have multiple documents to index, like a variety of breads in a bakery.
```ts
const document = new Document({
text: "This is a sample document.",
id_: "sampleDoc",
});
Settings.llm = new OpenAI({ model: "gpt-3.5-turbo", temperature: 0.1 });
const index = await VectorStoreIndex.fromDocuments([document]);
```
### Step 2: Increase Similarity TopK
The default value for `similarityTopK` is 2, which means only the most similar document will be returned. To get more results, like picking a variety of fresh breads, you can increase the value of `similarityTopK`.
```ts
const retriever = index.asRetriever();
retriever.similarityTopK = 5;
```
### Step 3: Create a MixedbreadAIReranker Instance
Create a new instance of the `MixedbreadAIReranker` class.
```ts
const nodePostprocessor = new MixedbreadAIReranker({
apiKey: "<MIXEDBREAD_API_KEY>",
topN: 4,
});
```
### Step 4: Create a Query Engine
Combine the retriever and node postprocessor to create a query engine. This setup ensures that your queries are processed and reranked to provide the best results, like arranging the bread in the order of freshness and quality.
```ts
const queryEngine = index.asQueryEngine({
retriever,
nodePostprocessors: [nodePostprocessor],
});
// Log the response
const response = await queryEngine.query("Where did the author grow up?");
console.log(response);
```
With mixedbread's Reranker, you're all set to serve up the most relevant and well-ordered results, just like a skilled baker arranging their best breads for eager customers. Enjoy the perfect blend of technology and culinary delight!
## Simple Reranking Guide
This section will guide you through a simple reranking process using mixedbread ai.
### Step 1: Create an Instance of MixedbreadAIReranker
Create a new instance of the `MixedbreadAIReranker` class, passing in your API key and the number of results you want to return. It's like setting up your bakery to offer a specific number of freshly baked items.
```ts
const reranker = new MixedbreadAIReranker({
apiKey: "<MIXEDBREAD_API_KEY>",
topN: 4,
});
```
### Step 2: Define Nodes and Query
Define the nodes (documents) you want to rerank and the query.
```ts
const nodes = [
{ node: new BaseNode("To bake bread you need flour") },
{ node: new BaseNode("To bake bread you need yeast") },
];
const query = "What do you need to bake bread?";
```
### Step 3: Perform Reranking
Use the `postprocessNodes` method to rerank the nodes based on the query.
```ts
const result = await reranker.postprocessNodes(nodes, query);
console.log(result); // Like pulling freshly baked nodes out of the oven.
```
## Reranking with Objects
This section will guide you through reranking when working with objects.
### Step 1: Create an Instance of MixedbreadAIReranker
Create a new instance of the `MixedbreadAIReranker` class, just like before.
```ts
const reranker = new MixedbreadAIReranker({
apiKey: "<MIXEDBREAD_API_KEY>",
model: "mixedbread-ai/mxbai-rerank-large-v1",
topK: 5,
rankFields: ["title", "content"],
returnInput: true,
maxRetries: 5,
});
```
### Step 2: Define Documents and Query
Define the documents (objects) you want to rerank and the query.
```ts
const documents = [
{ title: "Bread Recipe", content: "To bake bread you need flour" },
{ title: "Bread Recipe", content: "To bake bread you need yeast" },
];
const query = "What do you need to bake bread?";
```
### Step 3: Perform Reranking
Use the `rerank` method to reorder the documents based on the query.
```ts
const result = await reranker.rerank(documents, query);
console.log(result); // Perfectly customized results, ready to serve.
```
+19 -19
View File
@@ -1,6 +1,6 @@
{
"name": "docs",
"version": "0.0.32",
"version": "0.0.44",
"private": true,
"scripts": {
"docusaurus": "docusaurus",
@@ -15,29 +15,29 @@
"typecheck": "tsc"
},
"dependencies": {
"@docusaurus/core": "^3.3.2",
"@docusaurus/remark-plugin-npm2yarn": "^3.3.2",
"@docusaurus/core": "3.4.0",
"@docusaurus/remark-plugin-npm2yarn": "3.4.0",
"@llamaindex/examples": "workspace:*",
"@mdx-js/react": "^3.0.1",
"clsx": "^2.1.1",
"@mdx-js/react": "3.0.1",
"clsx": "2.1.1",
"llamaindex": "workspace:*",
"postcss": "^8.4.38",
"prism-react-renderer": "^2.3.1",
"raw-loader": "^4.0.2",
"react": "^18.3.1",
"react-dom": "^18.3.1"
"postcss": "8.4.39",
"prism-react-renderer": "2.3.1",
"raw-loader": "4.0.2",
"react": "18.3.1",
"react-dom": "18.3.1"
},
"devDependencies": {
"@docusaurus/module-type-aliases": "3.3.2",
"@docusaurus/preset-classic": "^3.3.2",
"@docusaurus/theme-classic": "^3.3.2",
"@docusaurus/types": "^3.3.2",
"@tsconfig/docusaurus": "^2.0.3",
"@docusaurus/module-type-aliases": "3.4.0",
"@docusaurus/preset-classic": "3.4.0",
"@docusaurus/theme-classic": "3.4.0",
"@docusaurus/types": "3.4.0",
"@tsconfig/docusaurus": "2.0.3",
"@types/node": "^20.12.11",
"docusaurus-plugin-typedoc": "^1.0.1",
"typedoc": "^0.25.13",
"typedoc-plugin-markdown": "^4.0.1",
"typescript": "^5.5.2"
"docusaurus-plugin-typedoc": "1.0.3",
"typedoc": "0.26.4",
"typedoc-plugin-markdown": "4.1.2",
"typescript": "^5.5.3"
},
"browserslist": {
"production": [
+10
View File
@@ -1,5 +1,15 @@
# examples
## 0.0.7
### Patch Changes
- Updated dependencies [16ef5dd]
- Updated dependencies [16ef5dd]
- Updated dependencies [36ddec4]
- llamaindex@0.5.0
- @llamaindex/core@0.1.0
## 0.0.6
### Patch Changes
+1 -1
View File
@@ -9,7 +9,7 @@ make sure you have basic knowledge of the [LlamaIndexTS](https://ts.llamaindex.a
# export your API key
export OPENAI_API_KEY="sk-..."
npx ts-node ./chatEngine.ts
npx tsx ./chatEngine.ts
```
## Build your own RAG app
+54
View File
@@ -0,0 +1,54 @@
import "dotenv/config";
import {
DefaultAzureCredential,
getBearerTokenProvider,
} from "@azure/identity";
import { AzureDynamicSessionTool, OpenAI, ReActAgent } from "llamaindex";
async function main() {
const credential = new DefaultAzureCredential();
const azureADTokenProvider = getBearerTokenProvider(
credential,
"https://cognitiveservices.azure.com/.default",
);
const azure = {
azureADTokenProvider,
deployment: process.env.AZURE_OPENAI_DEPLOYMENT ?? "gpt-35-turbo",
};
// configure LLM model
const llm = new OpenAI({
azure,
});
const azureDynamicSession = new AzureDynamicSessionTool();
// Create an ReActAgent with the azure dynamic session tool
const agent = new ReActAgent({
llm,
tools: [azureDynamicSession],
// verbose: true,
systemPrompt: `You are a Python interpreter.
- You are given tasks to complete and you run python code to solve them.
- The python code runs by the python runtime. Every time you call $(interpreter) tool, the python code is executed in a separate cell. It's okay to make multiple calls to $(interpreter).
- You can run any python code you want in a secure environment.
- For images, return the full URL, not the base64 data.
- Return any image content as an HTML tag with the src attribute set to the URL of the image.`,
});
// Chat with the agent
const response = await agent.chat({
message:
"plot a chart of 5 random numbers and save it to /mnt/data/chart.png",
stream: false,
});
// Print the response
console.log({ response });
}
void main().then(() => {
console.log("Done");
});
+1 -1
View File
@@ -2,7 +2,7 @@ import { Anthropic, FunctionTool, Settings, WikipediaTool } from "llamaindex";
import { AnthropicAgent } from "llamaindex/agent/anthropic";
Settings.callbackManager.on("llm-tool-call", (event) => {
console.log("llm-tool-call", event.detail.payload.toolCall);
console.log("llm-tool-call", event.detail.toolCall);
});
const anthropic = new Anthropic({
+3 -3
View File
@@ -24,7 +24,7 @@ Here are two sample scripts which work well with the sample data in the Astra Po
Loads and queries a simple vectorstore with some documents about Astra DB
run `ts-node astradb/example`
run `tsx astradb/example`
## Movie Reviews Example
@@ -32,10 +32,10 @@ run `ts-node astradb/example`
This sample loads the same dataset of movie reviews as the Astra Portal sample dataset. (Feel free to load the data in your the Astra Data Explorer to compare)
run `npx ts-node astradb/load`
run `npx tsx astradb/load`
### Use RAG to Query the data
Check out your data in the Astra Data Explorer and change the sample query as you see fit.
run `npx ts-node astradb/query`
run `npx tsx astradb/query`
+1 -1
View File
@@ -6,7 +6,7 @@ Export your OpenAI API Key using `export OPEN_API_KEY=insert your api key here`
If you haven't installed chromadb, run `pip install chromadb`. Start the server using `chroma run`.
Now, open a new terminal window and inside `examples`, run `pnpm dlx ts-node chromadb/test.ts`.
Now, open a new terminal window and inside `examples`, run `pnpm dlx tsx chromadb/test.ts`.
Here's the output for the input query `Tell me about Godfrey Cheshire's rating of La Sapienza.`:
+3 -3
View File
@@ -21,7 +21,7 @@ export LLAMA_CLOUD_BASE_URL="https://api.staging.llamaindex.ai"
This example is using the managed index named `test` from the project `default` to create a chat engine.
```shell
pnpx ts-node cloud/chat.ts
pnpx tsx cloud/chat.ts
```
## Query Engine
@@ -29,7 +29,7 @@ pnpx ts-node cloud/chat.ts
This example shows how to use the managed index with a query engine.
```shell
pnpx ts-node cloud/query.ts
pnpx tsx cloud/query.ts
```
## Pipeline
@@ -37,5 +37,5 @@ pnpx ts-node cloud/query.ts
This example shows how to create a managed index with a pipeline.
```shell
pnpx ts-node cloud/pipeline.ts
pnpx tsx cloud/pipeline.ts
```
+2 -2
View File
@@ -6,7 +6,7 @@ import { ContextChatEngine, LlamaCloudIndex } from "llamaindex";
async function main() {
const index = new LlamaCloudIndex({
name: "test",
projectName: "default",
projectName: "Default",
baseUrl: process.env.LLAMA_CLOUD_BASE_URL,
apiKey: process.env.LLAMA_CLOUD_API_KEY,
});
@@ -19,10 +19,10 @@ async function main() {
while (true) {
const query = await rl.question("User: ");
const stream = await chatEngine.chat({ message: query, stream: true });
console.log();
for await (const chunk of stream) {
process.stdout.write(chunk.response);
}
process.stdout.write("\n");
}
}
+2 -2
View File
@@ -25,10 +25,10 @@ Here are two sample scripts which work with loading and querying data from a Mil
This sample loads the same dataset of movie reviews as sample dataset. You can install https://github.com/zilliztech/attu to inspect the loaded data.
run `npx ts-node milvus/load`
run `npx tsx milvus/load`
## Use RAG to Query the data
Check out your data in Attu and change the sample query as you see fit.
run `npx ts-node milvus/query`
run `npx tsx milvus/query`
+3 -3
View File
@@ -34,7 +34,7 @@ MONGODB_COLLECTION=tiny_tweets_collection
You are now ready to import our ready-made data set into Mongo. This is the file `tinytweets.json`, a selection of approximately 1000 tweets from @seldo on Twitter in mid-2019. With your environment set up you can do this by running
```
npx ts-node mongodb/1_import.ts
npx tsx mongodb/1_import.ts
```
If you don't want to use tweets, you can replace `json_file` with any other array of JSON objects, but you will need to modify some code later to make sure the correct field gets indexed. There is no LlamaIndex-specific code here; you can load your data into Mongo any way you want to.
@@ -59,7 +59,7 @@ MONGODB_VECTOR_INDEX=tiny_tweets_vector_index
If the data you're indexing is the tweets we gave you, you're ready to go:
```bash
npx ts-node mongodb/2_load_and_index.ts
npx tsx mongodb/2_load_and_index.ts
```
> Note: this script is running a couple of minutes and currently doesn't show any progress.
@@ -112,7 +112,7 @@ Now you're ready to query your data!
You can do this by running
```bash
npx ts-node mongodb/3_query.ts
npx tsx mongodb/3_query.ts
```
This sets up a connection to Atlas just like `2_load_and_index.ts` did, then it creates a [query engine](https://docs.llamaindex.ai/en/stable/understanding/querying/querying.html#getting-started) and runs a query against it.
+2 -3
View File
@@ -4,7 +4,6 @@ import {
NodeWithScore,
ObjectType,
OpenAI,
RetrievalEndEvent,
Settings,
VectorStoreIndex,
} from "llamaindex";
@@ -18,8 +17,8 @@ Settings.chunkOverlap = 20;
Settings.llm = new OpenAI({ model: "gpt-4-turbo", maxTokens: 512 });
// Update callbackManager
Settings.callbackManager.on("retrieve-end", (event: RetrievalEndEvent) => {
const { nodes, query } = event.detail.payload;
Settings.callbackManager.on("retrieve-end", (event) => {
const { nodes, query } = event.detail;
const imageNodes = nodes.filter(
(node: NodeWithScore) => node.node.type === ObjectType.IMAGE_DOCUMENT,
);
+2 -3
View File
@@ -1,7 +1,6 @@
import {
MultiModalResponseSynthesizer,
OpenAI,
RetrievalEndEvent,
Settings,
VectorStoreIndex,
} from "llamaindex";
@@ -15,8 +14,8 @@ Settings.chunkOverlap = 20;
Settings.llm = new OpenAI({ model: "gpt-4-turbo", maxTokens: 512 });
// Update callbackManager
Settings.callbackManager.on("retrieve-end", (event: RetrievalEndEvent) => {
const { nodes, query } = event.detail.payload;
Settings.callbackManager.on("retrieve-end", (event) => {
const { nodes, query } = event.detail;
console.log(`Retrieved ${nodes.length} nodes for query: ${query}`);
});
+6 -5
View File
@@ -1,26 +1,27 @@
{
"name": "@llamaindex/examples",
"private": true,
"version": "0.0.6",
"version": "0.0.7",
"dependencies": {
"@aws-crypto/sha256-js": "^5.2.0",
"@azure/identity": "^4.2.1",
"@datastax/astra-db-ts": "^1.2.1",
"@llamaindex/core": "^0.1.0",
"@notionhq/client": "^2.2.15",
"@pinecone-database/pinecone": "^2.2.2",
"@zilliz/milvus2-sdk-node": "^2.4.2",
"@zilliz/milvus2-sdk-node": "^2.4.4",
"chromadb": "^1.8.1",
"commander": "^12.1.0",
"dotenv": "^16.4.5",
"js-tiktoken": "^1.0.12",
"llamaindex": "^0.4.3",
"llamaindex": "^0.5.0",
"mongodb": "^6.7.0",
"pathe": "^1.1.2"
},
"devDependencies": {
"@types/node": "^20.14.1",
"ts-node": "^10.9.2",
"tsx": "^4.15.6",
"typescript": "^5.5.2"
"typescript": "^5.5.3"
},
"scripts": {
"lint": "eslint ."
+2 -2
View File
@@ -37,7 +37,7 @@ Read and follow the instructions in the README.md file located one directory up
To import documents and save the embedding vectors to your database:
> `npx ts-node pg-vector-store/load-docs.ts data`
> `npx tsx pg-vector-store/load-docs.ts data`
where data is the directory containing your input files. Using the `data` directory in the example above will read all of the files in that directory using the LlamaIndexTS default readers for each file type.
@@ -45,6 +45,6 @@ where data is the directory containing your input files. Using the `data` direct
To query using the resulting vector store:
> `npx ts-node pg-vector-store/query.ts`
> `npx tsx pg-vector-store/query.ts`
The script will prompt for a question, then process and present the answer using the PGVectorStore data and your OpenAI API key. It will continue to prompt until you enter `q`, `quit` or `exit` as the next query.
+2 -2
View File
@@ -19,7 +19,7 @@ Read and follow the instructions in the README.md file located one directory up
To import documents and save the embedding vectors to your database:
> `npx ts-node pinecone-vector-store/load-docs.ts data`
> `npx tsx pinecone-vector-store/load-docs.ts data`
where data is the directory containing your input files. Using the _data_ directory in the example above will read all of the files in that directory using the llamaindexTS default readers for each file type.
@@ -29,6 +29,6 @@ where data is the directory containing your input files. Using the _data_ direct
To query using the resulting vector store:
> `npx ts-node pinecone-vector-store/query.ts`
> `npx tsx pinecone-vector-store/query.ts`
The script will prompt for a question, then process and present the answer using the PineconeVectorStore data and your OpenAI API key. It will continue to prompt until you enter `q`, `quit` or `exit` as the next query.
+1 -1
View File
@@ -8,4 +8,4 @@ Add your OpenAI API Key into a file called `.env` in the parent folder of this d
OPEN_API_KEY=sk-you-key
```
Now, open a new terminal window and inside `examples`, run `npx ts-node qdrantdb/preFilters.ts`.
Now, open a new terminal window and inside `examples`, run `npx tsx qdrantdb/preFilters.ts`.
+7 -8
View File
@@ -1,8 +1,8 @@
import * as dotenv from "dotenv";
import {
CallbackManager,
Document,
MetadataMode,
NodeWithScore,
QdrantVectorStore,
Settings,
VectorStoreIndex,
@@ -10,13 +10,12 @@ import {
} from "llamaindex";
// Update callback manager
Settings.callbackManager = new CallbackManager({
onRetrieve: (data) => {
console.log(
"The retrieved nodes are:",
data.nodes.map((node) => node.node.getContent(MetadataMode.NONE)),
);
},
Settings.callbackManager.on("retrieve-end", (event) => {
const { nodes } = event.detail;
console.log(
"The retrieved nodes are:",
nodes.map((node: NodeWithScore) => node.node.getContent(MetadataMode.NONE)),
);
});
// Load environment variables from local .env file
+3 -2
View File
@@ -12,7 +12,8 @@
"start:llamaparse": "node --import tsx ./src/llamaparse.ts",
"start:notion": "node --import tsx ./src/notion.ts",
"start:llamaparse-dir": "node --import tsx ./src/simple-directory-reader-with-llamaparse.ts",
"start:llamaparse-json": "node --import tsx ./src/llamaparse-json.ts"
"start:llamaparse-json": "node --import tsx ./src/llamaparse-json.ts",
"start:discord": "node --import tsx ./src/discord.ts"
},
"dependencies": {
"llamaindex": "*"
@@ -20,6 +21,6 @@
"devDependencies": {
"@types/node": "^20.12.11",
"tsx": "^4.15.6",
"typescript": "^5.5.2"
"typescript": "^5.5.3"
}
}
+20
View File
@@ -0,0 +1,20 @@
import { DiscordReader } from "llamaindex";
async function main() {
// Create an instance of the DiscordReader. Set token here or DISCORD_TOKEN environment variable
const discordReader = new DiscordReader();
// Specify the channel IDs you want to read messages from as an arry of strings
const channelIds = ["721374320794009630", "719596376261918720"];
// Specify the number of messages to fetch per channel
const limit = 10;
// Load messages from the specified channel
const messages = await discordReader.loadData(channelIds, limit, true);
// Print out the messages
console.log(messages);
}
main().catch(console.error);
+5 -5
View File
@@ -1,7 +1,7 @@
import { extractText } from "@llamaindex/core/utils";
import { encodingForModel } from "js-tiktoken";
import { ChatMessage, OpenAI, type LLMStartEvent } from "llamaindex";
import { ChatMessage, OpenAI } from "llamaindex";
import { Settings } from "llamaindex/Settings";
import { extractText } from "llamaindex/llm/utils";
const encoding = encodingForModel("gpt-4-0125-preview");
@@ -12,8 +12,8 @@ const llm = new OpenAI({
let tokenCount = 0;
Settings.callbackManager.on("llm-start", (event: LLMStartEvent) => {
const { messages } = event.detail.payload;
Settings.callbackManager.on("llm-start", (event) => {
const { messages } = event.detail;
messages.reduce((count: number, message: ChatMessage) => {
return count + encoding.encode(extractText(message.content)).length;
}, 0);
@@ -24,7 +24,7 @@ Settings.callbackManager.on("llm-start", (event: LLMStartEvent) => {
});
Settings.callbackManager.on("llm-stream", (event) => {
const { chunk } = event.detail.payload;
const { chunk } = event.detail;
const { delta } = chunk;
tokenCount += encoding.encode(extractText(delta)).length;
if (tokenCount > 20) {
+5 -8
View File
@@ -21,27 +21,24 @@
"@changesets/cli": "^2.27.5",
"@typescript-eslint/eslint-plugin": "^7.13.1",
"eslint": "^8.57.0",
"eslint-config-next": "^14.2.4",
"eslint-config-next": "^14.2.5",
"eslint-config-prettier": "^9.1.0",
"eslint-config-turbo": "^2.0.5",
"eslint-plugin-react": "7.34.1",
"eslint-plugin-react": "7.34.3",
"husky": "^9.0.11",
"lint-staged": "^15.2.7",
"madge": "^7.0.0",
"prettier": "^3.3.2",
"prettier-plugin-organize-imports": "^3.2.4",
"prettier-plugin-organize-imports": "^4.0.0",
"turbo": "^2.0.5",
"typescript": "^5.5.2"
"typescript": "^5.5.3"
},
"packageManager": "pnpm@9.4.0",
"packageManager": "pnpm@9.5.0",
"pnpm": {
"overrides": {
"trim": "1.0.1",
"@babel/traverse": "7.23.2",
"protobufjs": "7.2.6"
},
"patchedDependencies": {
"bunchee@5.2.1": "patches/bunchee@5.2.1.patch"
}
},
"lint-staged": {
+9
View File
@@ -1,5 +1,14 @@
# @llamaindex/autotool
## 2.0.0
### Patch Changes
- Updated dependencies [16ef5dd]
- Updated dependencies [16ef5dd]
- Updated dependencies [36ddec4]
- llamaindex@0.5.0
## 1.0.0
### Patch Changes
@@ -5,7 +5,7 @@
"dependencies": {
"@llamaindex/autotool": "workspace:*",
"llamaindex": "workspace:*",
"openai": "^4.52.0"
"openai": "^4.52.5"
},
"devDependencies": {
"tsx": "^4.15.6"
@@ -1,5 +1,106 @@
# @llamaindex/autotool-02-next-example
## 0.1.28
### Patch Changes
- Updated dependencies [9bbbc67]
- Updated dependencies [b3681bf]
- llamaindex@0.5.3
- @llamaindex/autotool@2.0.0
## 0.1.27
### Patch Changes
- llamaindex@0.5.2
- @llamaindex/autotool@2.0.0
## 0.1.26
### Patch Changes
- Updated dependencies [2774681]
- Updated dependencies [a0f424e]
- llamaindex@0.5.1
- @llamaindex/autotool@2.0.0
## 0.1.25
### Patch Changes
- Updated dependencies [16ef5dd]
- Updated dependencies [16ef5dd]
- Updated dependencies [36ddec4]
- llamaindex@0.5.0
- @llamaindex/autotool@2.0.0
## 0.1.24
### Patch Changes
- llamaindex@0.4.14
- @llamaindex/autotool@1.0.0
## 0.1.23
### Patch Changes
- Updated dependencies [e8f8bea]
- Updated dependencies [304484b]
- llamaindex@0.4.13
- @llamaindex/autotool@1.0.0
## 0.1.22
### Patch Changes
- Updated dependencies [f326ab8]
- llamaindex@0.4.12
- @llamaindex/autotool@1.0.0
## 0.1.21
### Patch Changes
- Updated dependencies [8bf5b4a]
- llamaindex@0.4.11
- @llamaindex/autotool@1.0.0
## 0.1.20
### Patch Changes
- Updated dependencies [7dce3d2]
- llamaindex@0.4.10
- @llamaindex/autotool@1.0.0
## 0.1.19
### Patch Changes
- Updated dependencies [3a96a48]
- llamaindex@0.4.9
- @llamaindex/autotool@1.0.0
## 0.1.18
### Patch Changes
- Updated dependencies [83ebdfb]
- llamaindex@0.4.8
- @llamaindex/autotool@1.0.0
## 0.1.17
### Patch Changes
- Updated dependencies [41fe871]
- Updated dependencies [321c39d]
- Updated dependencies [f7f1af0]
- llamaindex@0.4.7
- @llamaindex/autotool@1.0.0
## 0.1.16
### Patch Changes
@@ -1,7 +1,7 @@
{
"name": "@llamaindex/autotool-02-next-example",
"private": true,
"version": "0.1.16",
"version": "0.1.28",
"scripts": {
"dev": "next dev",
"build": "next build",
@@ -14,7 +14,7 @@
"class-variance-authority": "^0.7.0",
"dotenv": "^16.3.1",
"llamaindex": "workspace:*",
"lucide-react": "^0.378.0",
"lucide-react": "^0.407.0",
"next": "14.3.0-canary.51",
"react": "^18.3.1",
"react-dom": "^18.3.1",
@@ -32,6 +32,6 @@
"cross-env": "^7.0.3",
"postcss": "^8.4.32",
"tailwindcss": "^3.4.4",
"typescript": "^5.5.2"
"typescript": "^5.5.3"
}
}
+7 -7
View File
@@ -1,7 +1,7 @@
{
"name": "@llamaindex/autotool",
"type": "module",
"version": "1.0.0",
"version": "2.0.0",
"description": "auto transpile your JS function to LLM Agent compatible",
"files": [
"dist",
@@ -47,11 +47,11 @@
"dependencies": {
"@swc/core": "^1.6.3",
"jotai": "^2.8.3",
"typedoc": "^0.25.13",
"typedoc": "^0.26.4",
"unplugin": "^1.10.1"
},
"peerDependencies": {
"llamaindex": "^0.4.6",
"llamaindex": "^0.5.3",
"openai": "^4",
"typescript": "^4"
},
@@ -70,13 +70,13 @@
"@swc/types": "^0.1.8",
"@types/json-schema": "^7.0.15",
"@types/node": "^20.12.11",
"bunchee": "^5.2.1",
"bunchee": "5.3.0-beta.0",
"llamaindex": "workspace:*",
"next": "14.2.3",
"next": "14.2.5",
"rollup": "^4.18.0",
"tsx": "^4.15.6",
"typescript": "^5.5.2",
"vitest": "^1.6.0",
"typescript": "^5.5.3",
"vitest": "^2.0.2",
"webpack": "^5.92.1"
}
}
+31
View File
@@ -0,0 +1,31 @@
# @llamaindex/cloud
## 0.2.0
### Minor Changes
- 3ed6acc: feat: cloud api change
## 0.1.4
### Patch Changes
- 36ddec4: fix: typo in custom page separator parameter for LlamaParse
## 0.1.3
### Patch Changes
- 1c444d5: feat(cloud): update openapi.json
## 0.1.2
### Patch Changes
- f326ab8: chore: bump version
## 0.1.1
### Patch Changes
- 321c39d: fix: generate api as class
+1 -1
View File
@@ -5,7 +5,7 @@
## Usage
```ts
import { OpenAPI, Service } from "@llamaindex/cloud/api";
import { OpenAPI } from "@llamaindex/cloud/api";
OpenAPI.TOKEN = "YOUR_API_KEY";
OpenAPI.BASE = "https://api.cloud.llamaindex.ai/";
// ...
+3
View File
@@ -9,6 +9,9 @@ export default defineConfig({
format: "prettier",
lint: "eslint",
},
services: {
asClass: true,
},
types: {
enums: "javascript",
},
File diff suppressed because it is too large Load Diff
+2 -2
View File
@@ -1,6 +1,6 @@
{
"name": "@llamaindex/cloud",
"version": "0.1.0",
"version": "0.2.0",
"type": "module",
"license": "MIT",
"scripts": {
@@ -35,6 +35,6 @@
},
"devDependencies": {
"@hey-api/openapi-ts": "^0.48.0",
"bunchee": "^5.2.1"
"bunchee": "5.3.0-beta.0"
}
}
-3
View File
@@ -1,4 +1 @@
import * as Service from "./client/services.gen";
export * from "./client";
export { Service };
+81
View File
@@ -1,5 +1,86 @@
# @llamaindex/community
## 0.0.21
### Patch Changes
- Updated dependencies [b3681bf]
- @llamaindex/core@0.1.1
## 0.0.20
### Patch Changes
- 56746c2: fix: llama3 patched to handle empty content (can happen with system) and added max tokens export
## 0.0.19
### Patch Changes
- 16ef5dd: refactor: depends on core pacakge instead of llamaindex
- Updated dependencies [16ef5dd]
- Updated dependencies [16ef5dd]
- @llamaindex/core@0.1.0
## 0.0.18
### Patch Changes
- llamaindex@0.4.14
## 0.0.17
### Patch Changes
- Updated dependencies [e8f8bea]
- Updated dependencies [304484b]
- llamaindex@0.4.13
## 0.0.16
### Patch Changes
- f326ab8: chore: bump version
- Updated dependencies [f326ab8]
- llamaindex@0.4.12
## 0.0.15
### Patch Changes
- Updated dependencies [8bf5b4a]
- llamaindex@0.4.11
## 0.0.14
### Patch Changes
- Updated dependencies [7dce3d2]
- llamaindex@0.4.10
## 0.0.13
### Patch Changes
- Updated dependencies [3a96a48]
- llamaindex@0.4.9
## 0.0.12
### Patch Changes
- Updated dependencies [83ebdfb]
- llamaindex@0.4.8
## 0.0.11
### Patch Changes
- Updated dependencies [41fe871]
- Updated dependencies [321c39d]
- Updated dependencies [f7f1af0]
- llamaindex@0.4.7
## 0.0.10
### Patch Changes
+1
View File
@@ -5,6 +5,7 @@
## Current Features:
- Bedrock support for the Anthropic Claude Models [usage](https://ts.llamaindex.ai/modules/llms/available_llms/bedrock)
- Bedrock support for the Meta LLama 2 and 3 Models [usage](https://ts.llamaindex.ai/modules/llms/available_llms/bedrock)
## LICENSE
+7 -12
View File
@@ -1,7 +1,7 @@
{
"name": "@llamaindex/community",
"description": "Community package for LlamaIndexTS",
"version": "0.0.10",
"version": "0.0.21",
"type": "module",
"types": "dist/type/index.d.ts",
"main": "dist/cjs/index.js",
@@ -38,20 +38,15 @@
"directory": "packages/community"
},
"scripts": {
"build": "rm -rf ./dist && pnpm run build:code && pnpm run build:type",
"build:code": "tsup",
"build:type": "tsc -p tsconfig.json",
"dev": "concurrently \"pnpm run build:esm --watch\" \"pnpm run build:cjs --watch\" \"pnpm run build:type --watch\""
"build": "bunchee",
"dev": "bunchee --watch"
},
"devDependencies": {
"@swc/cli": "^0.3.12",
"@swc/core": "^1.6.3",
"concurrently": "^8.2.2",
"tsup": "^8.1.0"
"@types/node": "^20.14.2",
"bunchee": "5.3.0-beta.0"
},
"dependencies": {
"@aws-sdk/client-bedrock-runtime": "^3.600.0",
"@types/node": "^20.14.2",
"llamaindex": "workspace:*"
"@aws-sdk/client-bedrock-runtime": "^3.613.0",
"@llamaindex/core": "workspace:*"
}
}
+5 -1
View File
@@ -1 +1,5 @@
export { BEDROCK_MODELS, Bedrock } from "./llm/bedrock/base.js";
export {
BEDROCK_MODELS,
BEDROCK_MODEL_MAX_TOKENS,
Bedrock,
} from "./llm/bedrock/base.js";
+43 -210
View File
@@ -1,53 +1,35 @@
import {
BedrockRuntimeClient,
type BedrockRuntimeClientConfig,
InvokeModelCommand,
InvokeModelWithResponseStreamCommand,
ResponseStream,
type BedrockRuntimeClientConfig,
type InvokeModelCommandInput,
type InvokeModelWithResponseStreamCommandInput,
} from "@aws-sdk/client-bedrock-runtime";
import type {
BaseTool,
ChatMessage,
ChatResponse,
ChatResponseChunk,
CompletionResponse,
LLMChatParamsNonStreaming,
LLMChatParamsStreaming,
LLMCompletionParamsNonStreaming,
LLMCompletionParamsStreaming,
LLMMetadata,
PartialToolCall,
ToolCall,
ToolCallLLMMessageOptions,
} from "llamaindex";
import { ToolCallLLM, streamConverter, wrapLLMEvent } from "llamaindex";
import type {
AnthropicNoneStreamingResponse,
AnthropicTextContent,
StreamEvent,
ToolBlock,
ToolChoice,
} from "./types.js";
import {
mapBaseToolsToAnthropicTools,
mapChatMessagesToAnthropicMessages,
mapMessageContentToMessageContentDetails,
toUtf8,
} from "./utils.js";
export type BedrockAdditionalChatOptions = { toolChoice: ToolChoice };
type ChatMessage,
type ChatResponse,
type CompletionResponse,
type LLMChatParamsNonStreaming,
type LLMChatParamsStreaming,
type LLMCompletionParamsNonStreaming,
type LLMCompletionParamsStreaming,
type LLMMetadata,
ToolCallLLM,
type ToolCallLLMMessageOptions,
} from "@llamaindex/core/llms";
import { streamConverter, wrapLLMEvent } from "@llamaindex/core/utils";
import {
type BedrockAdditionalChatOptions,
type BedrockChatStreamResponse,
Provider,
} from "./provider";
import { PROVIDERS } from "./providers";
import { mapMessageContentToMessageContentDetails } from "./utils.js";
export type BedrockChatParamsStreaming = LLMChatParamsStreaming<
BedrockAdditionalChatOptions,
ToolCallLLMMessageOptions
>;
export type BedrockChatStreamResponse = AsyncIterable<
ChatResponseChunk<ToolCallLLMMessageOptions>
>;
export type BedrockChatParamsNonStreaming = LLMChatParamsNonStreaming<
BedrockAdditionalChatOptions,
ToolCallLLMMessageOptions
@@ -151,174 +133,6 @@ export const TOOL_CALL_MODELS = [
BEDROCK_MODELS.ANTHROPIC_CLAUDE_3_5_SONNET,
];
abstract class Provider<ProviderStreamEvent extends {} = {}> {
abstract getTextFromResponse(response: Record<string, any>): string;
abstract getToolsFromResponse<T extends {} = {}>(
response: Record<string, any>,
): T[];
getStreamingEventResponse(
response: Record<string, any>,
): ProviderStreamEvent | undefined {
return response.chunk?.bytes
? (JSON.parse(toUtf8(response.chunk?.bytes)) as ProviderStreamEvent)
: undefined;
}
async *reduceStream(
stream: AsyncIterable<ResponseStream>,
): BedrockChatStreamResponse {
yield* streamConverter(stream, (response) => {
return {
delta: this.getTextFromStreamResponse(response),
raw: response,
};
});
}
getTextFromStreamResponse(response: Record<string, any>): string {
return this.getTextFromResponse(response);
}
abstract getRequestBody<T extends ChatMessage>(
metadata: LLMMetadata,
messages: T[],
tools?: BaseTool[],
options?: BedrockAdditionalChatOptions,
): InvokeModelCommandInput | InvokeModelWithResponseStreamCommandInput;
}
class AnthropicProvider extends Provider<StreamEvent> {
getResultFromResponse(
response: Record<string, any>,
): AnthropicNoneStreamingResponse {
return JSON.parse(toUtf8(response.body));
}
getToolsFromResponse<AnthropicToolContent>(
response: Record<string, any>,
): AnthropicToolContent[] {
const result = this.getResultFromResponse(response);
return result.content
.filter((item) => item.type === "tool_use")
.map((item) => item as AnthropicToolContent);
}
getTextFromResponse(response: Record<string, any>): string {
const result = this.getResultFromResponse(response);
return result.content
.filter((item) => item.type === "text")
.map((item) => (item as AnthropicTextContent).text)
.join(" ");
}
getTextFromStreamResponse(response: Record<string, any>): string {
const event = this.getStreamingEventResponse(response);
if (event?.type === "content_block_delta") {
if (event.delta.type === "text_delta") return event.delta.text;
if (event.delta.type === "input_json_delta")
return event.delta.partial_json;
}
return "";
}
async *reduceStream(
stream: AsyncIterable<ResponseStream>,
): BedrockChatStreamResponse {
let collecting = [];
let tool: ToolBlock | undefined = undefined;
// #TODO this should be broken down into a separate consumer
for await (const response of stream) {
const event = this.getStreamingEventResponse(response);
if (
event?.type === "content_block_start" &&
event.content_block.type === "tool_use"
) {
tool = event.content_block;
continue;
}
if (
event?.type === "content_block_delta" &&
event.delta.type === "input_json_delta"
) {
collecting.push(event.delta.partial_json);
}
let options: undefined | ToolCallLLMMessageOptions = undefined;
if (tool && collecting.length) {
const input = collecting.filter((item) => item).join("");
// We have all we need to parse the tool_use json
if (event?.type === "content_block_stop") {
options = {
toolCall: [
{
id: tool.id,
name: tool.name,
input: JSON.parse(input),
} as ToolCall,
],
};
// reset the collection/tool
collecting = [];
tool = undefined;
} else {
options = {
toolCall: [
{
id: tool.id,
name: tool.name,
input,
} as PartialToolCall,
],
};
}
}
const delta = this.getTextFromStreamResponse(response);
if (!delta && !options) continue;
yield {
delta,
options,
raw: response,
};
}
}
getRequestBody<T extends ChatMessage<ToolCallLLMMessageOptions>>(
metadata: LLMMetadata,
messages: T[],
tools?: BaseTool[],
options?: BedrockAdditionalChatOptions,
): InvokeModelCommandInput | InvokeModelWithResponseStreamCommandInput {
const extra: Record<string, unknown> = {};
if (options?.toolChoice) {
extra["tool_choice"] = options?.toolChoice;
}
const mapped = mapChatMessagesToAnthropicMessages(messages);
return {
modelId: metadata.model,
contentType: "application/json",
accept: "application/json",
body: JSON.stringify({
anthropic_version: "bedrock-2023-05-31",
messages: mapped,
tools: mapBaseToolsToAnthropicTools(tools),
max_tokens: metadata.maxTokens,
temperature: metadata.temperature,
top_p: metadata.topP,
...extra,
}),
};
}
}
// Other providers could go here
const PROVIDERS: { [key: string]: Provider } = {
anthropic: new AnthropicProvider(),
};
const getProvider = (model: string): Provider => {
const providerName = model.split(".")[0];
if (!(providerName in PROVIDERS)) {
@@ -336,6 +150,18 @@ export type BedrockModelParams = {
maxTokens?: number;
};
export const BEDROCK_MODEL_MAX_TOKENS: Partial<Record<BEDROCK_MODELS, number>> =
{
[BEDROCK_MODELS.ANTHROPIC_CLAUDE_3_SONNET]: 4096,
[BEDROCK_MODELS.ANTHROPIC_CLAUDE_3_HAIKU]: 4096,
[BEDROCK_MODELS.ANTHROPIC_CLAUDE_3_OPUS]: 4096,
[BEDROCK_MODELS.ANTHROPIC_CLAUDE_3_5_SONNET]: 4096,
[BEDROCK_MODELS.META_LLAMA2_13B_CHAT]: 2048,
[BEDROCK_MODELS.META_LLAMA2_70B_CHAT]: 2048,
[BEDROCK_MODELS.META_LLAMA3_8B_INSTRUCT]: 2048,
[BEDROCK_MODELS.META_LLAMA3_70B_INSTRUCT]: 2048,
};
const DEFAULT_BEDROCK_PARAMS = {
temperature: 0.1,
topP: 1,
@@ -373,6 +199,10 @@ export class Bedrock extends ToolCallLLM<BedrockAdditionalChatOptions> {
this.temperature = temperature ?? DEFAULT_BEDROCK_PARAMS.temperature;
this.topP = topP ?? DEFAULT_BEDROCK_PARAMS.topP;
this.client = new BedrockRuntimeClient(params);
if (!this.supportToolCall) {
console.warn(`The model "${this.model}" doesn't support ToolCall`);
}
}
get supportToolCall(): boolean {
@@ -402,10 +232,13 @@ export class Bedrock extends ToolCallLLM<BedrockAdditionalChatOptions> {
);
const command = new InvokeModelCommand(input);
const response = await this.client.send(command);
const tools = this.provider.getToolsFromResponse(response);
const options: ToolCallLLMMessageOptions = tools.length
? { toolCall: tools }
: {};
let options: ToolCallLLMMessageOptions = {};
if (this.supportToolCall) {
const tools = this.provider.getToolsFromResponse(response);
if (tools.length) {
options = { toolCall: tools };
}
}
return {
raw: response,
message: {
@@ -0,0 +1,59 @@
import {
type InvokeModelCommandInput,
type InvokeModelWithResponseStreamCommandInput,
ResponseStream,
} from "@aws-sdk/client-bedrock-runtime";
import {
type BaseTool,
type ChatMessage,
type ChatResponseChunk,
type LLMMetadata,
type ToolCallLLMMessageOptions,
} from "@llamaindex/core/llms";
import { streamConverter } from "@llamaindex/core/utils";
import type { ToolChoice } from "./types";
import { toUtf8 } from "./utils";
export type BedrockAdditionalChatOptions = { toolChoice: ToolChoice };
export type BedrockChatStreamResponse = AsyncIterable<
ChatResponseChunk<ToolCallLLMMessageOptions>
>;
export abstract class Provider<ProviderStreamEvent extends {} = {}> {
abstract getTextFromResponse(response: Record<string, any>): string;
abstract getToolsFromResponse<T extends {} = {}>(
response: Record<string, any>,
): T[];
getStreamingEventResponse(
response: Record<string, any>,
): ProviderStreamEvent | undefined {
return response.chunk?.bytes
? (JSON.parse(toUtf8(response.chunk?.bytes)) as ProviderStreamEvent)
: undefined;
}
async *reduceStream(
stream: AsyncIterable<ResponseStream>,
): BedrockChatStreamResponse {
yield* streamConverter(stream, (response) => {
return {
delta: this.getTextFromStreamResponse(response),
raw: response,
};
});
}
getTextFromStreamResponse(response: Record<string, any>): string {
return this.getTextFromResponse(response);
}
abstract getRequestBody<T extends ChatMessage>(
metadata: LLMMetadata,
messages: T[],
tools?: BaseTool[],
options?: BedrockAdditionalChatOptions,
): InvokeModelCommandInput | InvokeModelWithResponseStreamCommandInput;
}
@@ -0,0 +1,154 @@
import {
type InvokeModelCommandInput,
type InvokeModelWithResponseStreamCommandInput,
ResponseStream,
} from "@aws-sdk/client-bedrock-runtime";
import type {
BaseTool,
ChatMessage,
LLMMetadata,
PartialToolCall,
ToolCall,
ToolCallLLMMessageOptions,
} from "@llamaindex/core/llms";
import {
type BedrockAdditionalChatOptions,
type BedrockChatStreamResponse,
Provider,
} from "../provider";
import type {
AnthropicNoneStreamingResponse,
AnthropicStreamEvent,
AnthropicTextContent,
ToolBlock,
} from "../types";
import {
mapBaseToolsToAnthropicTools,
mapChatMessagesToAnthropicMessages,
toUtf8,
} from "../utils";
export class AnthropicProvider extends Provider<AnthropicStreamEvent> {
getResultFromResponse(
response: Record<string, any>,
): AnthropicNoneStreamingResponse {
return JSON.parse(toUtf8(response.body));
}
getToolsFromResponse<AnthropicToolContent>(
response: Record<string, any>,
): AnthropicToolContent[] {
const result = this.getResultFromResponse(response);
return result.content
.filter((item) => item.type === "tool_use")
.map((item) => item as AnthropicToolContent);
}
getTextFromResponse(response: Record<string, any>): string {
const result = this.getResultFromResponse(response);
return result.content
.filter((item) => item.type === "text")
.map((item) => (item as AnthropicTextContent).text)
.join(" ");
}
getTextFromStreamResponse(response: Record<string, any>): string {
const event = this.getStreamingEventResponse(response);
if (event?.type === "content_block_delta") {
if (event.delta.type === "text_delta") return event.delta.text;
if (event.delta.type === "input_json_delta")
return event.delta.partial_json;
}
return "";
}
async *reduceStream(
stream: AsyncIterable<ResponseStream>,
): BedrockChatStreamResponse {
let collecting = [];
let tool: ToolBlock | undefined = undefined;
// #TODO this should be broken down into a separate consumer
for await (const response of stream) {
const event = this.getStreamingEventResponse(response);
if (
event?.type === "content_block_start" &&
event.content_block.type === "tool_use"
) {
tool = event.content_block;
continue;
}
if (
event?.type === "content_block_delta" &&
event.delta.type === "input_json_delta"
) {
collecting.push(event.delta.partial_json);
}
let options: undefined | ToolCallLLMMessageOptions = undefined;
if (tool && collecting.length) {
const input = collecting.filter((item) => item).join("");
// We have all we need to parse the tool_use json
if (event?.type === "content_block_stop") {
options = {
toolCall: [
{
id: tool.id,
name: tool.name,
input: JSON.parse(input),
} as ToolCall,
],
};
// reset the collection/tool
collecting = [];
tool = undefined;
} else {
options = {
toolCall: [
{
id: tool.id,
name: tool.name,
input,
} as PartialToolCall,
],
};
}
}
const delta = this.getTextFromStreamResponse(response);
if (!delta && !options) continue;
yield {
delta,
options,
raw: response,
};
}
}
getRequestBody<T extends ChatMessage<ToolCallLLMMessageOptions>>(
metadata: LLMMetadata,
messages: T[],
tools?: BaseTool[],
options?: BedrockAdditionalChatOptions,
): InvokeModelCommandInput | InvokeModelWithResponseStreamCommandInput {
const extra: Record<string, unknown> = {};
if (options?.toolChoice) {
extra["tool_choice"] = options?.toolChoice;
}
const mapped = mapChatMessagesToAnthropicMessages(messages);
return {
modelId: metadata.model,
contentType: "application/json",
accept: "application/json",
body: JSON.stringify({
anthropic_version: "bedrock-2023-05-31",
messages: mapped,
tools: mapBaseToolsToAnthropicTools(tools),
max_tokens: metadata.maxTokens,
temperature: metadata.temperature,
top_p: metadata.topP,
...extra,
}),
};
}
}
@@ -0,0 +1,9 @@
import { Provider } from "../provider";
import { AnthropicProvider } from "./anthropic";
import { MetaProvider } from "./meta";
// Other providers should go here
export const PROVIDERS: { [key: string]: Provider } = {
anthropic: new AnthropicProvider(),
meta: new MetaProvider(),
};
@@ -0,0 +1,69 @@
import type {
InvokeModelCommandInput,
InvokeModelWithResponseStreamCommandInput,
} from "@aws-sdk/client-bedrock-runtime";
import type { ChatMessage, LLMMetadata } from "@llamaindex/core/llms";
import type { MetaNoneStreamingResponse, MetaStreamEvent } from "../types";
import {
mapChatMessagesToMetaLlama2Messages,
mapChatMessagesToMetaLlama3Messages,
toUtf8,
} from "../utils";
import { Provider } from "../provider";
export class MetaProvider extends Provider<MetaStreamEvent> {
constructor() {
super();
}
getResultFromResponse(
response: Record<string, any>,
): MetaNoneStreamingResponse {
return JSON.parse(toUtf8(response.body));
}
getToolsFromResponse(_response: Record<string, any>): never {
throw new Error("Not supported by this provider.");
}
getTextFromResponse(response: Record<string, any>): string {
const result = this.getResultFromResponse(response);
return result.generation;
}
getTextFromStreamResponse(response: Record<string, any>): string {
const event = this.getStreamingEventResponse(response);
if (event?.generation) {
return event.generation;
}
return "";
}
getRequestBody<T extends ChatMessage>(
metadata: LLMMetadata,
messages: T[],
): InvokeModelCommandInput | InvokeModelWithResponseStreamCommandInput {
let promptFunction: (messages: ChatMessage[]) => string;
if (metadata.model.startsWith("meta.llama3")) {
promptFunction = mapChatMessagesToMetaLlama3Messages;
} else if (metadata.model.startsWith("meta.llama2")) {
promptFunction = mapChatMessagesToMetaLlama2Messages;
} else {
throw new Error(`Meta model ${metadata.model} is not supported`);
}
return {
modelId: metadata.model,
contentType: "application/json",
accept: "application/json",
body: JSON.stringify({
prompt: promptFunction(messages),
max_gen_len: metadata.maxTokens,
temperature: metadata.temperature,
top_p: metadata.topP,
}),
};
}
}
+21 -1
View File
@@ -79,7 +79,7 @@ export type ToolChoice =
| { type: "auto" }
| { type: "tool"; name: string };
export type StreamEvent =
export type AnthropicStreamEvent =
| { type: "message_start"; message: Message }
| ContentBlockStart
| ContentBlockDelta
@@ -93,6 +93,8 @@ export type AnthropicContent =
| AnthropicToolContent
| AnthropicToolResultContent;
export type MetaTextContent = string;
export type AnthropicTextContent = {
type: "text";
text: string;
@@ -133,6 +135,11 @@ export type AnthropicMessage = {
content: AnthropicContent[];
};
export type MetaMessage = {
role: "user" | "assistant" | "system";
content: MetaTextContent;
};
export type AnthropicNoneStreamingResponse = {
id: string;
type: "message";
@@ -143,3 +150,16 @@ export type AnthropicNoneStreamingResponse = {
stop_sequence?: string;
usage: { input_tokens: number; output_tokens: number };
};
type MetaResponse = {
generation: string;
prompt_token_count: number;
generation_token_count: number;
stop_reason: "stop" | "length";
};
export type MetaStreamEvent = MetaResponse & {
"amazon-bedrock-invocationMetrics": InvocationMetrics;
};
export type MetaNoneStreamingResponse = MetaResponse;
+83 -2
View File
@@ -1,18 +1,20 @@
import type { JSONObject } from "@llamaindex/core/global";
import type {
BaseTool,
ChatMessage,
JSONObject,
MessageContent,
MessageContentDetail,
MessageContentTextDetail,
ToolCallLLMMessageOptions,
ToolMetadata,
} from "llamaindex";
} from "@llamaindex/core/llms";
import type {
AnthropicContent,
AnthropicImageContent,
AnthropicMediaTypes,
AnthropicMessage,
AnthropicTextContent,
MetaMessage,
} from "./types.js";
const ACCEPTED_IMAGE_MIME_TYPES = [
@@ -148,6 +150,85 @@ export const mapChatMessagesToAnthropicMessages = <
return mergeNeighboringSameRoleMessages(mapped);
};
export const mapChatMessagesToMetaMessages = <T extends ChatMessage>(
messages: T[],
): MetaMessage[] => {
return messages.map((msg) => {
let content: string = "";
if (typeof msg.content === "string") {
content = msg.content;
} else if (msg.content.length) {
content = (msg.content[0] as MessageContentTextDetail).text;
}
return {
role:
msg.role === "assistant"
? "assistant"
: msg.role === "user"
? "user"
: "system",
content,
};
});
};
/**
* Documentation at https://llama.meta.com/docs/model-cards-and-prompt-formats/meta-llama-3
*/
export const mapChatMessagesToMetaLlama3Messages = <T extends ChatMessage>(
messages: T[],
): string => {
const mapped = mapChatMessagesToMetaMessages(messages).map((message) => {
const text = message.content;
return `<|start_header_id|>${message.role}<|end_header_id|>\n${text}\n<|eot_id|>\n`;
});
return (
"<|begin_of_text|>" +
mapped.join("\n") +
"\n<|start_header_id|>assistant<|end_header_id|>\n"
);
};
/**
* Documentation at https://llama.meta.com/docs/model-cards-and-prompt-formats/meta-llama-2
*/
export const mapChatMessagesToMetaLlama2Messages = <T extends ChatMessage>(
messages: T[],
): string => {
const mapped = mapChatMessagesToMetaMessages(messages);
let output = "<s>";
let insideInst = false;
let needsStartAgain = false;
for (const message of mapped) {
if (needsStartAgain) {
output += "<s>";
needsStartAgain = false;
}
const text = message.content;
if (message.role === "system") {
if (!insideInst) {
output += "[INST] ";
insideInst = true;
}
output += `<<SYS>>\n${text}\n<</SYS>>\n`;
} else if (message.role === "user") {
output += text;
if (insideInst) {
output += " [/INST]";
insideInst = false;
}
} else if (message.role === "assistant") {
if (insideInst) {
output += " [/INST]";
insideInst = false;
}
output += ` ${text} </s>\n`;
needsStartAgain = true;
}
}
return output;
};
export const mapTextContent = (text: string): AnthropicTextContent => {
return { type: "text", text };
};
-9
View File
@@ -1,9 +0,0 @@
{
"extends": "../../tsconfig.json",
"compilerOptions": {
"outDir": "./dist/script/type",
"tsBuildInfoFile": "./dist/script/.tsbuildinfo",
"emitDeclarationOnly": true
},
"include": ["./tsup.config.ts"]
}
-9
View File
@@ -1,9 +0,0 @@
import { defineConfig } from "tsup";
export default defineConfig([
{
entry: ["src/index.ts", "src/llm/bedrock/base.ts"],
format: ["cjs", "esm"],
sourcemap: true,
},
]);
+38
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@@ -0,0 +1,38 @@
# @llamaindex/core
## 0.1.1
### Patch Changes
- b3681bf: fix: DataCloneError when using FunctionTool
## 0.1.0
### Minor Changes
- 16ef5dd: refactor: simplify callback manager
Change `event.detail.payload` to `event.detail`
### Patch Changes
- 16ef5dd: refactor: move callback manager & llm to core module
For people who import `llamaindex/llms/base` or `llamaindex/llms/utils`,
use `@llamaindex/core/llms` and `@llamaindex/core/utils` instead.
## 0.0.3
### Patch Changes
- f326ab8: chore: bump version
- Updated dependencies [f326ab8]
- @llamaindex/env@0.1.8
## 0.0.2
### Patch Changes
- f10b41d: fix: release files
- Updated dependencies [41fe871]
- @llamaindex/env@0.1.7
+34 -2
View File
@@ -1,9 +1,23 @@
{
"name": "@llamaindex/core",
"type": "module",
"version": "0.0.1",
"version": "0.1.1",
"description": "LlamaIndex Core Module",
"exports": {
"./llms": {
"require": {
"types": "./dist/llms/index.d.cts",
"default": "./dist/llms/index.cjs"
},
"import": {
"types": "./dist/llms/index.d.ts",
"default": "./dist/llms/index.js"
},
"default": {
"types": "./dist/llms/index.d.ts",
"default": "./dist/llms/index.js"
}
},
"./decorator": {
"require": {
"types": "./dist/decorator/index.d.cts",
@@ -45,8 +59,25 @@
"types": "./dist/schema/index.d.ts",
"default": "./dist/schema/index.js"
}
},
"./utils": {
"require": {
"types": "./dist/utils/index.d.cts",
"default": "./dist/utils/index.cjs"
},
"import": {
"types": "./dist/utils/index.d.ts",
"default": "./dist/utils/index.js"
},
"default": {
"types": "./dist/utils/index.d.ts",
"default": "./dist/utils/index.js"
}
}
},
"files": [
"dist"
],
"scripts": {
"dev": "bunchee --watch",
"build": "bunchee"
@@ -57,7 +88,8 @@
"url": "https://github.com/himself65/LlamaIndexTS.git"
},
"devDependencies": {
"bunchee": "^5.2.1"
"ajv": "^8.16.0",
"bunchee": "5.3.0-beta.0"
},
"dependencies": {
"@llamaindex/env": "workspace:*",
+10
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@@ -1 +1,11 @@
export { Settings } from "./settings";
export { CallbackManager } from "./settings/callback-manager";
export type {
LLMEndEvent,
LLMStartEvent,
LLMStreamEvent,
LLMToolCallEvent,
LLMToolResultEvent,
LlamaIndexEventMaps,
} from "./settings/callback-manager";
export type { JSONArray, JSONObject, JSONValue } from "./type";
+21
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@@ -1,3 +1,9 @@
import {
type CallbackManager,
getCallbackManager,
setCallbackManager,
withCallbackManager,
} from "./settings/callback-manager";
import {
getChunkSize,
setChunkSize,
@@ -14,4 +20,19 @@ export const Settings = {
withChunkSize<Result>(chunkSize: number, fn: () => Result): Result {
return withChunkSize(chunkSize, fn);
},
get callbackManager(): CallbackManager {
return getCallbackManager();
},
set callbackManager(callbackManager: CallbackManager) {
setCallbackManager(callbackManager);
},
withCallbackManager<Result>(
callbackManager: CallbackManager,
fn: () => Result,
): Result {
return withCallbackManager(callbackManager, fn);
},
};
@@ -0,0 +1,138 @@
import { AsyncLocalStorage, CustomEvent } from "@llamaindex/env";
import type {
ChatMessage,
ChatResponse,
ChatResponseChunk,
ToolCall,
ToolOutput,
} from "../../llms";
import { EventCaller, getEventCaller } from "../../utils/event-caller";
import type { UUID } from "../type";
export type LLMStartEvent = {
id: UUID;
messages: ChatMessage[];
};
export type LLMToolCallEvent = {
toolCall: ToolCall;
};
export type LLMToolResultEvent = {
toolCall: ToolCall;
toolResult: ToolOutput;
};
export type LLMEndEvent = {
id: UUID;
response: ChatResponse;
};
export type LLMStreamEvent = {
id: UUID;
chunk: ChatResponseChunk;
};
export interface LlamaIndexEventMaps {
"llm-start": LLMStartEvent;
"llm-end": LLMEndEvent;
"llm-tool-call": LLMToolCallEvent;
"llm-tool-result": LLMToolResultEvent;
"llm-stream": LLMStreamEvent;
}
export class LlamaIndexCustomEvent<T = any> extends CustomEvent<T> {
reason: EventCaller | null = null;
private constructor(
event: string,
options?: CustomEventInit & {
reason?: EventCaller | null;
},
) {
super(event, options);
this.reason = options?.reason ?? null;
}
static fromEvent<Type extends keyof LlamaIndexEventMaps>(
type: Type,
detail: LlamaIndexEventMaps[Type],
) {
return new LlamaIndexCustomEvent(type, {
detail: detail,
reason: getEventCaller(),
});
}
}
type EventHandler<Event> = (event: LlamaIndexCustomEvent<Event>) => void;
export class CallbackManager {
#handlers = new Map<keyof LlamaIndexEventMaps, EventHandler<any>[]>();
on<K extends keyof LlamaIndexEventMaps>(
event: K,
handler: EventHandler<LlamaIndexEventMaps[K]>,
) {
if (!this.#handlers.has(event)) {
this.#handlers.set(event, []);
}
this.#handlers.get(event)!.push(handler);
return this;
}
off<K extends keyof LlamaIndexEventMaps>(
event: K,
handler: EventHandler<LlamaIndexEventMaps[K]>,
) {
if (!this.#handlers.has(event)) {
return this;
}
const cbs = this.#handlers.get(event)!;
const index = cbs.indexOf(handler);
if (index > -1) {
cbs.splice(index, 1);
}
return this;
}
dispatchEvent<K extends keyof LlamaIndexEventMaps>(
event: K,
detail: LlamaIndexEventMaps[K],
) {
const cbs = this.#handlers.get(event);
if (!cbs) {
return;
}
queueMicrotask(() => {
cbs.forEach((handler) =>
handler(LlamaIndexCustomEvent.fromEvent(event, { ...detail })),
);
});
}
}
export const globalCallbackManager = new CallbackManager();
const callbackManagerAsyncLocalStorage =
new AsyncLocalStorage<CallbackManager>();
let currentCallbackManager: CallbackManager | null = null;
export function getCallbackManager(): CallbackManager {
return (
callbackManagerAsyncLocalStorage.getStore() ??
currentCallbackManager ??
globalCallbackManager
);
}
export function setCallbackManager(callbackManager: CallbackManager) {
currentCallbackManager = callbackManager;
}
export function withCallbackManager<Result>(
callbackManager: CallbackManager,
fn: () => Result,
): Result {
return callbackManagerAsyncLocalStorage.run(callbackManager, fn);
}
+9
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@@ -0,0 +1,9 @@
export type UUID = `${string}-${string}-${string}-${string}-${string}`;
export type JSONValue = string | number | boolean | JSONObject | JSONArray;
export type JSONObject = {
[key: string]: JSONValue;
};
export type JSONArray = Array<JSONValue>;
-1
View File
@@ -1 +0,0 @@
export * from "./schema";
@@ -1,3 +1,5 @@
import { streamConverter } from "../utils";
import { extractText } from "../utils/llms";
import type {
ChatResponse,
ChatResponseChunk,
@@ -9,8 +11,7 @@ import type {
LLMCompletionParamsStreaming,
LLMMetadata,
ToolCallLLMMessageOptions,
} from "./types.js";
import { extractText, streamConverter } from "./utils.js";
} from "./type";
export abstract class BaseLLM<
AdditionalChatOptions extends object = object,
+32
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@@ -0,0 +1,32 @@
export { BaseLLM, ToolCallLLM } from "./base";
export type {
BaseTool,
BaseToolWithCall,
ChatMessage,
ChatResponse,
ChatResponseChunk,
CompletionResponse,
LLM,
LLMChat,
LLMChatParamsBase,
LLMChatParamsNonStreaming,
LLMChatParamsStreaming,
LLMCompletionParamsBase,
LLMCompletionParamsNonStreaming,
LLMCompletionParamsStreaming,
LLMMetadata,
MessageContent,
MessageContentDetail,
MessageContentImageDetail,
MessageContentTextDetail,
MessageType,
PartialToolCall,
TextChatMessage,
ToolCall,
ToolCallLLMMessageOptions,
ToolCallOptions,
ToolMetadata,
ToolOutput,
ToolResult,
ToolResultOptions,
} from "./type";
+245
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@@ -0,0 +1,245 @@
import type { Tokenizers } from "@llamaindex/env";
import type { JSONSchemaType } from "ajv";
import type { JSONObject, JSONValue } from "../global/type";
/**
* @internal
*/
export interface LLMChat<
AdditionalChatOptions extends object = object,
AdditionalMessageOptions extends object = object,
> {
chat(
params:
| LLMChatParamsStreaming<AdditionalChatOptions>
| LLMChatParamsNonStreaming<AdditionalChatOptions>,
): Promise<
| ChatResponse<AdditionalMessageOptions>
| AsyncIterable<ChatResponseChunk<AdditionalMessageOptions>>
>;
}
/**
* Unified language model interface
*/
export interface LLM<
AdditionalChatOptions extends object = object,
AdditionalMessageOptions extends object = object,
> extends LLMChat<AdditionalChatOptions> {
metadata: LLMMetadata;
/**
* Get a chat response from the LLM
*/
chat(
params: LLMChatParamsStreaming<
AdditionalChatOptions,
AdditionalMessageOptions
>,
): Promise<AsyncIterable<ChatResponseChunk>>;
chat(
params: LLMChatParamsNonStreaming<
AdditionalChatOptions,
AdditionalMessageOptions
>,
): Promise<ChatResponse<AdditionalMessageOptions>>;
/**
* Get a prompt completion from the LLM
*/
complete(
params: LLMCompletionParamsStreaming,
): Promise<AsyncIterable<CompletionResponse>>;
complete(
params: LLMCompletionParamsNonStreaming,
): Promise<CompletionResponse>;
}
export type MessageType = "user" | "assistant" | "system" | "memory";
export type TextChatMessage<AdditionalMessageOptions extends object = object> =
{
content: string;
role: MessageType;
options?: undefined | AdditionalMessageOptions;
};
export type ChatMessage<AdditionalMessageOptions extends object = object> = {
content: MessageContent;
role: MessageType;
options?: undefined | AdditionalMessageOptions;
};
export interface ChatResponse<
AdditionalMessageOptions extends object = object,
> {
message: ChatMessage<AdditionalMessageOptions>;
/**
* Raw response from the LLM
*
* If LLM response an iterable of chunks, this will be an array of those chunks
*/
raw: object | null;
}
export type ChatResponseChunk<
AdditionalMessageOptions extends object = object,
> = {
raw: object | null;
delta: string;
options?: undefined | AdditionalMessageOptions;
};
export interface CompletionResponse {
text: string;
/**
* Raw response from the LLM
*
* It's possible that this is `null` if the LLM response an iterable of chunks
*/
raw: object | null;
}
export type LLMMetadata = {
model: string;
temperature: number;
topP: number;
maxTokens?: number;
contextWindow: number;
tokenizer: Tokenizers | undefined;
};
export interface LLMChatParamsBase<
AdditionalChatOptions extends object = object,
AdditionalMessageOptions extends object = object,
> {
messages: ChatMessage<AdditionalMessageOptions>[];
additionalChatOptions?: AdditionalChatOptions;
tools?: BaseTool[];
}
export interface LLMChatParamsStreaming<
AdditionalChatOptions extends object = object,
AdditionalMessageOptions extends object = object,
> extends LLMChatParamsBase<AdditionalChatOptions, AdditionalMessageOptions> {
stream: true;
}
export interface LLMChatParamsNonStreaming<
AdditionalChatOptions extends object = object,
AdditionalMessageOptions extends object = object,
> extends LLMChatParamsBase<AdditionalChatOptions, AdditionalMessageOptions> {
stream?: false;
}
export interface LLMCompletionParamsBase {
prompt: MessageContent;
}
export interface LLMCompletionParamsStreaming extends LLMCompletionParamsBase {
stream: true;
}
export interface LLMCompletionParamsNonStreaming
extends LLMCompletionParamsBase {
stream?: false | null;
}
export type MessageContentTextDetail = {
type: "text";
text: string;
};
export type MessageContentImageDetail = {
type: "image_url";
image_url: { url: string };
};
export type MessageContentDetail =
| MessageContentTextDetail
| MessageContentImageDetail;
/**
* Extended type for the content of a message that allows for multi-modal messages.
*/
export type MessageContent = string | MessageContentDetail[];
export type ToolCall = {
name: string;
input: JSONObject;
id: string;
};
// happened in streaming response, the tool call is not ready yet
export type PartialToolCall = {
name: string;
id: string;
// input is not ready yet, JSON.parse(input) will throw an error
input: string;
};
export type ToolResult = {
id: string;
result: string;
isError: boolean;
};
export type ToolCallOptions = {
toolCall: (ToolCall | PartialToolCall)[];
};
export type ToolResultOptions = {
toolResult: ToolResult;
};
export type ToolCallLLMMessageOptions =
| ToolResultOptions
| ToolCallOptions
| {};
type Known =
| { [key: string]: Known }
| [Known, ...Known[]]
| Known[]
| number
| string
| boolean
| null;
export type ToolMetadata<
Parameters extends Record<string, unknown> = Record<string, unknown>,
> = {
description: string;
name: string;
/**
* OpenAI uses JSON Schema to describe the parameters that a tool can take.
* @link https://json-schema.org/understanding-json-schema
*/
parameters?: Parameters;
};
/**
* Simple Tool interface. Likely to change.
*/
export interface BaseTool<Input = any> {
/**
* This could be undefined if the implementation is not provided,
* which might be the case when communicating with a llm.
*
* @return {JSONValue | Promise<JSONValue>} The output of the tool.
*/
call?: (input: Input) => JSONValue | Promise<JSONValue>;
metadata: // if user input any, we cannot check the schema
Input extends Known ? ToolMetadata<JSONSchemaType<Input>> : ToolMetadata;
}
export type BaseToolWithCall<Input = any> = Omit<BaseTool<Input>, "call"> & {
call: NonNullable<Pick<BaseTool<Input>, "call">["call"]>;
};
export type ToolOutput = {
tool: BaseTool | undefined;
// all of existing function calling LLMs only support object input
input: JSONObject;
output: JSONValue;
isError: boolean;
};
+3 -1
View File
@@ -1,5 +1,7 @@
import { z } from "zod";
export const anyFunctionSchema = z.function(z.tuple([]).rest(z.any()), z.any());
export const toolMetadataSchema = z.object({
description: z.string(),
name: z.string(),
@@ -7,7 +9,7 @@ export const toolMetadataSchema = z.object({
});
export const baseToolSchema = z.object({
call: z.optional(z.function()),
call: anyFunctionSchema.optional(),
metadata: toolMetadataSchema,
});
@@ -1,5 +1,14 @@
import { AsyncLocalStorage, randomUUID } from "@llamaindex/env";
import { isAsyncIterable, isIterable } from "../utils.js";
export const isAsyncIterable = (
obj: unknown,
): obj is AsyncIterable<unknown> => {
return obj != null && typeof obj === "object" && Symbol.asyncIterator in obj;
};
export const isIterable = (obj: unknown): obj is Iterable<unknown> => {
return obj != null && typeof obj === "object" && Symbol.iterator in obj;
};
const eventReasonAsyncLocalStorage = new AsyncLocalStorage<EventCaller>();
+54
View File
@@ -0,0 +1,54 @@
export { wrapEventCaller } from "./event-caller";
export async function* streamConverter<S, D>(
stream: AsyncIterable<S>,
converter: (s: S) => D | null,
): AsyncIterable<D> {
for await (const data of stream) {
const newData = converter(data);
if (newData === null) {
return;
}
yield newData;
}
}
export async function* streamCallbacks<S>(
stream: AsyncIterable<S>,
callbacks: {
finished?: (value?: S) => void;
},
): AsyncIterable<S> {
let value: S | undefined;
for await (value of stream) {
yield value;
}
if (callbacks.finished) {
callbacks.finished(value);
}
}
export async function* streamReducer<S, D>(params: {
stream: AsyncIterable<S>;
reducer: (previousValue: D, currentValue: S) => D;
initialValue: D;
finished?: (value: D) => void;
}): AsyncIterable<S> {
let value = params.initialValue;
for await (const data of params.stream) {
value = params.reducer(value, data);
yield data;
}
if (params.finished) {
params.finished(value);
}
}
export { wrapLLMEvent } from "./wrap-llm-event";
export {
extractDataUrlComponents,
extractImage,
extractSingleText,
extractText,
} from "./llms";
+79
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@@ -0,0 +1,79 @@
import type {
MessageContent,
MessageContentDetail,
MessageContentTextDetail,
} from "../llms";
import type { ImageType } from "../schema";
/**
* Extracts just the text from a multi-modal message or the message itself if it's just text.
*
* @param message The message to extract text from.
* @returns The extracted text
*/
export function extractText(message: MessageContent): string {
if (typeof message !== "string" && !Array.isArray(message)) {
console.warn(
"extractText called with non-MessageContent message, this is likely a bug.",
);
return `${message}`;
} else if (typeof message !== "string" && Array.isArray(message)) {
// message is of type MessageContentDetail[] - retrieve just the text parts and concatenate them
// so we can pass them to the context generator
return message
.filter((c): c is MessageContentTextDetail => c.type === "text")
.map((c) => c.text)
.join("\n\n");
} else {
return message;
}
}
/**
* Extracts a single text from a multi-modal message content
*
* @param message The message to extract images from.
* @returns The extracted images
*/
export function extractSingleText(
message: MessageContentDetail,
): string | null {
if (message.type === "text") {
return message.text;
}
return null;
}
/**
* Extracts an image from a multi-modal message content
*
* @param message The message to extract images from.
* @returns The extracted images
*/
export function extractImage(message: MessageContentDetail): ImageType | null {
if (message.type === "image_url") {
return new URL(message.image_url.url);
}
return null;
}
export const extractDataUrlComponents = (
dataUrl: string,
): {
mimeType: string;
base64: string;
} => {
const parts = dataUrl.split(";base64,");
if (parts.length !== 2 || !parts[0].startsWith("data:")) {
throw new Error("Invalid data URL");
}
const mimeType = parts[0].slice(5);
const base64 = parts[1];
return {
mimeType,
base64,
};
};
+80
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@@ -0,0 +1,80 @@
import { AsyncLocalStorage, randomUUID } from "@llamaindex/env";
import { getCallbackManager } from "../global/settings/callback-manager";
import type { ChatResponse, ChatResponseChunk, LLM, LLMChat } from "../llms";
export function wrapLLMEvent<
AdditionalChatOptions extends object = object,
AdditionalMessageOptions extends object = object,
>(
originalMethod: LLMChat<
AdditionalChatOptions,
AdditionalMessageOptions
>["chat"],
_context: ClassMethodDecoratorContext,
) {
return async function withLLMEvent(
this: LLM<AdditionalChatOptions, AdditionalMessageOptions>,
...params: Parameters<
LLMChat<AdditionalChatOptions, AdditionalMessageOptions>["chat"]
>
): ReturnType<
LLMChat<AdditionalChatOptions, AdditionalMessageOptions>["chat"]
> {
const id = randomUUID();
getCallbackManager().dispatchEvent("llm-start", {
id,
messages: params[0].messages,
});
const response = await originalMethod.call(this, ...params);
if (Symbol.asyncIterator in response) {
// save snapshot to restore it after the response is done
const snapshot = AsyncLocalStorage.snapshot();
const originalAsyncIterator = {
[Symbol.asyncIterator]: response[Symbol.asyncIterator].bind(response),
};
response[Symbol.asyncIterator] = async function* () {
const finalResponse = {
raw: [] as ChatResponseChunk[],
message: {
content: "",
role: "assistant",
options: {},
},
} satisfies ChatResponse;
let firstOne = false;
for await (const chunk of originalAsyncIterator) {
if (!firstOne) {
firstOne = true;
finalResponse.message.content = chunk.delta;
} else {
finalResponse.message.content += chunk.delta;
}
if (chunk.options) {
finalResponse.message.options = {
...finalResponse.message.options,
...chunk.options,
};
}
getCallbackManager().dispatchEvent("llm-stream", {
id,
chunk,
});
finalResponse.raw.push(chunk);
yield chunk;
}
snapshot(() => {
getCallbackManager().dispatchEvent("llm-end", {
id,
response: finalResponse,
});
});
};
} else {
getCallbackManager().dispatchEvent("llm-end", {
id,
response,
});
}
return response;
};
}
+89
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@@ -0,0 +1,89 @@
import { CallbackManager, Settings } from "@llamaindex/core/global";
import { beforeEach, describe, expect, expectTypeOf, test, vi } from "vitest";
declare module "@llamaindex/core/global" {
interface LlamaIndexEventMaps {
test: {
value: number;
};
functionTest: {
fn: ({ x }: { x: number }) => string;
};
}
}
describe("event system", () => {
beforeEach(() => {
Settings.callbackManager = new CallbackManager();
});
test("type system", () => {
Settings.callbackManager.on("test", (event) => {
const data = event.detail;
expectTypeOf(data).not.toBeAny();
expectTypeOf(data).toEqualTypeOf<{
value: number;
}>();
});
});
test("dispatch event", async () => {
let callback;
Settings.callbackManager.on(
"test",
(callback = vi.fn((event) => {
const data = event.detail;
expect(data.value).toBe(42);
})),
);
Settings.callbackManager.dispatchEvent("test", {
value: 42,
});
expect(callback).toHaveBeenCalledTimes(0);
await new Promise((resolve) => process.nextTick(resolve));
expect(callback).toHaveBeenCalledTimes(1);
});
test("dispatch function tool event", async () => {
const testFunction = ({ x }: { x: number }) => `${x * 2}`;
let callback;
Settings.callbackManager.on(
"functionTest",
(callback = vi.fn((event) => {
const data = event.detail;
expect(data.fn).toBe(testFunction);
})),
);
Settings.callbackManager.dispatchEvent("functionTest", {
fn: testFunction,
});
expect(callback).toHaveBeenCalledTimes(0);
await new Promise((resolve) => process.nextTick(resolve));
expect(callback).toHaveBeenCalledTimes(1);
});
// rollup doesn't support decorators for now
// test('wrap event caller', async () => {
// class A {
// @wrapEventCaller
// fn() {
// Settings.callbackManager.dispatchEvent('test', {
// value: 42
// });
// }
// }
// const a = new A();
// let callback;
// Settings.callbackManager.on('test', callback = vi.fn((event) => {
// const data = event.detail;
// expect(event.reason!.caller).toBe(a);
// expect(data.value).toBe(42);
// }));
// a.fn();
// expect(callback).toHaveBeenCalledTimes(0);
// await new Promise((resolve) => process.nextTick(resolve));
// expect(callback).toHaveBeenCalledTimes(1);
// })
});
+1 -1
View File
@@ -7,6 +7,6 @@
},
"devDependencies": {
"@llamaindex/core": "workspace:*",
"vitest": "^1.6.0"
"vitest": "^2.0.2"
}
}
+1
View File
@@ -8,6 +8,7 @@
"moduleResolution": "Bundler",
"skipLibCheck": true,
"strict": true,
"lib": ["ESNext", "DOM"],
"types": ["node"]
},
"include": ["./src"],
+12
View File
@@ -1,5 +1,17 @@
# @llamaindex/env
## 0.1.8
### Patch Changes
- f326ab8: chore: bump version
## 0.1.7
### Patch Changes
- 41fe871: Add support for azure dynamic session tool
## 0.1.6
### Patch Changes
+3 -3
View File
@@ -1,7 +1,7 @@
{
"name": "@llamaindex/env",
"description": "environment wrapper, supports all JS environment including node, deno, bun, edge runtime, and cloudflare worker",
"version": "0.1.6",
"version": "0.1.8",
"type": "module",
"types": "dist/type/index.d.ts",
"main": "dist/cjs/index.js",
@@ -68,11 +68,11 @@
},
"devDependencies": {
"@aws-crypto/sha256-js": "^5.2.0",
"@swc/cli": "^0.3.12",
"@swc/cli": "^0.4.0",
"@swc/core": "^1.6.3",
"concurrently": "^8.2.2",
"pathe": "^1.1.2",
"vitest": "^1.6.0"
"vitest": "^2.0.2"
},
"dependencies": {
"@types/lodash": "^4.17.5",
+2 -1
View File
@@ -5,6 +5,7 @@
*
* @module
*/
import { createWriteStream } from "node:fs";
import fs from "node:fs/promises";
export { fs };
export { createWriteStream, fs };
+6 -1
View File
@@ -15,12 +15,14 @@ import { ok } from "node:assert";
import { createHash, randomUUID } from "node:crypto";
import { EOL } from "node:os";
import path from "node:path";
import { Readable } from "node:stream";
import {
ReadableStream,
TransformStream,
WritableStream,
} from "node:stream/web";
import { fs } from "./fs/node.js";
import { fileURLToPath } from "node:url";
import { createWriteStream, fs } from "./fs/node.js";
import type { SHA256 } from "./polyfill.js";
export function createSHA256(): SHA256 {
@@ -38,11 +40,14 @@ export function createSHA256(): SHA256 {
export { Tokenizers, tokenizers, type Tokenizer } from "./tokenizers/node.js";
export { AsyncLocalStorage, CustomEvent, getEnv, setEnvs } from "./utils.js";
export {
createWriteStream,
EOL,
fileURLToPath,
fs,
ok,
path,
randomUUID,
Readable,
ReadableStream,
TransformStream,
WritableStream,
+89
View File
@@ -1,5 +1,94 @@
# @llamaindex/experimental
## 0.0.53
### Patch Changes
- Updated dependencies [9bbbc67]
- Updated dependencies [b3681bf]
- llamaindex@0.5.3
## 0.0.52
### Patch Changes
- llamaindex@0.5.2
## 0.0.51
### Patch Changes
- Updated dependencies [2774681]
- Updated dependencies [a0f424e]
- llamaindex@0.5.1
## 0.0.50
### Patch Changes
- Updated dependencies [16ef5dd]
- Updated dependencies [16ef5dd]
- Updated dependencies [36ddec4]
- llamaindex@0.5.0
## 0.0.49
### Patch Changes
- llamaindex@0.4.14
## 0.0.48
### Patch Changes
- Updated dependencies [e8f8bea]
- Updated dependencies [304484b]
- llamaindex@0.4.13
## 0.0.47
### Patch Changes
- Updated dependencies [f326ab8]
- llamaindex@0.4.12
## 0.0.46
### Patch Changes
- Updated dependencies [8bf5b4a]
- llamaindex@0.4.11
## 0.0.45
### Patch Changes
- Updated dependencies [7dce3d2]
- llamaindex@0.4.10
## 0.0.44
### Patch Changes
- Updated dependencies [3a96a48]
- llamaindex@0.4.9
## 0.0.43
### Patch Changes
- Updated dependencies [83ebdfb]
- llamaindex@0.4.8
## 0.0.42
### Patch Changes
- Updated dependencies [41fe871]
- Updated dependencies [321c39d]
- Updated dependencies [f7f1af0]
- llamaindex@0.4.7
## 0.0.41
### Patch Changes
+2 -2
View File
@@ -1,7 +1,7 @@
{
"name": "@llamaindex/experimental",
"description": "Experimental package for LlamaIndexTS",
"version": "0.0.41",
"version": "0.0.53",
"type": "module",
"types": "dist/type/index.d.ts",
"main": "dist/cjs/index.js",
@@ -56,7 +56,7 @@
},
"devDependencies": {
"@aws-crypto/sha256-js": "^5.2.0",
"@swc/cli": "^0.3.12",
"@swc/cli": "^0.4.0",
"@swc/core": "^1.6.3",
"@types/jsonpath": "^0.2.4",
"concurrently": "^8.2.2",
+108 -1
View File
@@ -1,5 +1,112 @@
# llamaindex
## 0.5.3
### Patch Changes
- 9bbbc67: feat: add a reader for Discord messages
- b3681bf: fix: DataCloneError when using FunctionTool
- Updated dependencies [b3681bf]
- @llamaindex/core@0.1.1
## 0.5.2
### Patch Changes
- Updated dependencies [3ed6acc]
- @llamaindex/cloud@0.2.0
## 0.5.1
### Patch Changes
- 2774681: Add mixedbread's embeddings and reranking API
- a0f424e: corrected the regex in the react.ts file in extractToolUse & extractJsonStr functions, as mentioned in https://github.com/run-llama/LlamaIndexTS/issues/1019
## 0.5.0
### Minor Changes
- 16ef5dd: refactor: simplify callback manager
Change `event.detail.payload` to `event.detail`
### Patch Changes
- 16ef5dd: refactor: move callback manager & llm to core module
For people who import `llamaindex/llms/base` or `llamaindex/llms/utils`,
use `@llamaindex/core/llms` and `@llamaindex/core/utils` instead.
- 36ddec4: fix: typo in custom page separator parameter for LlamaParse
- Updated dependencies [16ef5dd]
- Updated dependencies [16ef5dd]
- Updated dependencies [36ddec4]
- @llamaindex/core@0.1.0
- @llamaindex/cloud@0.1.4
## 0.4.14
### Patch Changes
- Updated dependencies [1c444d5]
- @llamaindex/cloud@0.1.3
## 0.4.13
### Patch Changes
- e8f8bea: feat: add boundingBox and targetPages to LlamaParseReader
- 304484b: feat: add ignoreErrors flag to LlamaParseReader
## 0.4.12
### Patch Changes
- f326ab8: chore: bump version
- Updated dependencies [f326ab8]
- @llamaindex/cloud@0.1.2
- @llamaindex/core@0.0.3
- @llamaindex/env@0.1.8
## 0.4.11
### Patch Changes
- 8bf5b4a: fix: llama parse input spreadsheet
## 0.4.10
### Patch Changes
- 7dce3d2: fix: disable External Filters for Gemini
## 0.4.9
### Patch Changes
- 3a96a48: fix: anthroipic image input
## 0.4.8
### Patch Changes
- 83ebdfb: fix: next.js build error
## 0.4.7
### Patch Changes
- 41fe871: Add support for azure dynamic session tool
- 321c39d: fix: generate api as class
- f7f1af0: fix: throw error when no pipeline found
- Updated dependencies [41fe871]
- Updated dependencies [f10b41d]
- Updated dependencies [321c39d]
- @llamaindex/env@0.1.7
- @llamaindex/core@0.0.2
- @llamaindex/cloud@0.1.1
## 0.4.6
### Patch Changes
@@ -63,7 +170,7 @@
### Patch Changes
- 6bc5bdd: feat: add cache disabling, fast mode, do not unroll columns mode and custom page seperator to LlamaParseReader
- 6bc5bdd: feat: add cache disabling, fast mode, do not unroll columns mode and custom page separator to LlamaParseReader
- bf25ff6: fix: polyfill for cloudflare worker
- e6d6576: chore: use `unpdf`
@@ -1,5 +1,94 @@
# @llamaindex/cloudflare-worker-agent-test
## 0.0.37
### Patch Changes
- Updated dependencies [9bbbc67]
- Updated dependencies [b3681bf]
- llamaindex@0.5.3
## 0.0.36
### Patch Changes
- llamaindex@0.5.2
## 0.0.35
### Patch Changes
- Updated dependencies [2774681]
- Updated dependencies [a0f424e]
- llamaindex@0.5.1
## 0.0.34
### Patch Changes
- Updated dependencies [16ef5dd]
- Updated dependencies [16ef5dd]
- Updated dependencies [36ddec4]
- llamaindex@0.5.0
## 0.0.33
### Patch Changes
- llamaindex@0.4.14
## 0.0.32
### Patch Changes
- Updated dependencies [e8f8bea]
- Updated dependencies [304484b]
- llamaindex@0.4.13
## 0.0.31
### Patch Changes
- Updated dependencies [f326ab8]
- llamaindex@0.4.12
## 0.0.30
### Patch Changes
- Updated dependencies [8bf5b4a]
- llamaindex@0.4.11
## 0.0.29
### Patch Changes
- Updated dependencies [7dce3d2]
- llamaindex@0.4.10
## 0.0.28
### Patch Changes
- Updated dependencies [3a96a48]
- llamaindex@0.4.9
## 0.0.27
### Patch Changes
- Updated dependencies [83ebdfb]
- llamaindex@0.4.8
## 0.0.26
### Patch Changes
- Updated dependencies [41fe871]
- Updated dependencies [321c39d]
- Updated dependencies [f7f1af0]
- llamaindex@0.4.7
## 0.0.25
### Patch Changes
@@ -1,6 +1,6 @@
{
"name": "@llamaindex/cloudflare-worker-agent-test",
"version": "0.0.25",
"version": "0.0.37",
"type": "module",
"private": true,
"scripts": {
@@ -12,13 +12,13 @@
"cf-typegen": "wrangler types"
},
"devDependencies": {
"@cloudflare/vitest-pool-workers": "^0.4.3",
"@cloudflare/workers-types": "^4.20240605.0",
"@vitest/runner": "1.3.0",
"@vitest/snapshot": "1.3.0",
"typescript": "^5.5.2",
"vitest": "1.3.0",
"wrangler": "^3.60.1"
"@cloudflare/vitest-pool-workers": "^0.4.10",
"@cloudflare/workers-types": "^4.20240620.0",
"@vitest/runner": "1.5.3",
"@vitest/snapshot": "1.5.3",
"typescript": "^5.5.3",
"vitest": "1.5.3",
"wrangler": "^3.63.2"
},
"dependencies": {
"llamaindex": "workspace:*"
@@ -1,5 +1,94 @@
# @llamaindex/next-agent-test
## 0.1.37
### Patch Changes
- Updated dependencies [9bbbc67]
- Updated dependencies [b3681bf]
- llamaindex@0.5.3
## 0.1.36
### Patch Changes
- llamaindex@0.5.2
## 0.1.35
### Patch Changes
- Updated dependencies [2774681]
- Updated dependencies [a0f424e]
- llamaindex@0.5.1
## 0.1.34
### Patch Changes
- Updated dependencies [16ef5dd]
- Updated dependencies [16ef5dd]
- Updated dependencies [36ddec4]
- llamaindex@0.5.0
## 0.1.33
### Patch Changes
- llamaindex@0.4.14
## 0.1.32
### Patch Changes
- Updated dependencies [e8f8bea]
- Updated dependencies [304484b]
- llamaindex@0.4.13
## 0.1.31
### Patch Changes
- Updated dependencies [f326ab8]
- llamaindex@0.4.12
## 0.1.30
### Patch Changes
- Updated dependencies [8bf5b4a]
- llamaindex@0.4.11
## 0.1.29
### Patch Changes
- Updated dependencies [7dce3d2]
- llamaindex@0.4.10
## 0.1.28
### Patch Changes
- Updated dependencies [3a96a48]
- llamaindex@0.4.9
## 0.1.27
### Patch Changes
- Updated dependencies [83ebdfb]
- llamaindex@0.4.8
## 0.1.26
### Patch Changes
- Updated dependencies [41fe871]
- Updated dependencies [321c39d]
- Updated dependencies [f7f1af0]
- llamaindex@0.4.7
## 0.1.25
### Patch Changes
@@ -1,6 +1,6 @@
{
"name": "@llamaindex/next-agent-test",
"version": "0.1.25",
"version": "0.1.37",
"private": true,
"scripts": {
"dev": "next dev",
@@ -11,7 +11,7 @@
"dependencies": {
"ai": "^3.2.1",
"llamaindex": "workspace:*",
"next": "14.2.4",
"next": "14.2.5",
"react": "18.3.1",
"react-dom": "18.3.1"
},
@@ -20,9 +20,9 @@
"@types/react": "^18.3.3",
"@types/react-dom": "^18.3.0",
"eslint": "^8.57.0",
"eslint-config-next": "14.2.3",
"eslint-config-next": "14.2.5",
"postcss": "^8",
"tailwindcss": "^3.4.4",
"typescript": "^5.5.2"
"typescript": "^5.5.3"
}
}
@@ -1,7 +1,7 @@
"use server";
import { createStreamableUI } from "ai/rsc";
import type { ChatMessage } from "llamaindex";
import { OpenAIAgent } from "llamaindex";
import type { ChatMessage } from "llamaindex/llm/types";
export async function chatWithAgent(
question: string,
@@ -1,5 +1,94 @@
# test-edge-runtime
## 0.1.36
### Patch Changes
- Updated dependencies [9bbbc67]
- Updated dependencies [b3681bf]
- llamaindex@0.5.3
## 0.1.35
### Patch Changes
- llamaindex@0.5.2
## 0.1.34
### Patch Changes
- Updated dependencies [2774681]
- Updated dependencies [a0f424e]
- llamaindex@0.5.1
## 0.1.33
### Patch Changes
- Updated dependencies [16ef5dd]
- Updated dependencies [16ef5dd]
- Updated dependencies [36ddec4]
- llamaindex@0.5.0
## 0.1.32
### Patch Changes
- llamaindex@0.4.14
## 0.1.31
### Patch Changes
- Updated dependencies [e8f8bea]
- Updated dependencies [304484b]
- llamaindex@0.4.13
## 0.1.30
### Patch Changes
- Updated dependencies [f326ab8]
- llamaindex@0.4.12
## 0.1.29
### Patch Changes
- Updated dependencies [8bf5b4a]
- llamaindex@0.4.11
## 0.1.28
### Patch Changes
- Updated dependencies [7dce3d2]
- llamaindex@0.4.10
## 0.1.27
### Patch Changes
- Updated dependencies [3a96a48]
- llamaindex@0.4.9
## 0.1.26
### Patch Changes
- Updated dependencies [83ebdfb]
- llamaindex@0.4.8
## 0.1.25
### Patch Changes
- Updated dependencies [41fe871]
- Updated dependencies [321c39d]
- Updated dependencies [f7f1af0]
- llamaindex@0.4.7
## 0.1.24
### Patch Changes
@@ -1,6 +1,6 @@
{
"name": "@llamaindex/nextjs-edge-runtime-test",
"version": "0.1.24",
"version": "0.1.36",
"private": true,
"scripts": {
"dev": "next dev",
@@ -9,7 +9,7 @@
},
"dependencies": {
"llamaindex": "workspace:*",
"next": "14.2.4",
"next": "14.2.5",
"react": "^18.3.1",
"react-dom": "^18.3.1"
},
@@ -17,6 +17,6 @@
"@types/node": "^20.12.11",
"@types/react": "^18.3.3",
"@types/react-dom": "^18.3.0",
"typescript": "^5.5.2"
"typescript": "^5.5.3"
}
}
@@ -1,5 +1,95 @@
# @llamaindex/next-node-runtime
## 0.0.18
### Patch Changes
- Updated dependencies [9bbbc67]
- Updated dependencies [b3681bf]
- llamaindex@0.5.3
## 0.0.17
### Patch Changes
- llamaindex@0.5.2
## 0.0.16
### Patch Changes
- Updated dependencies [2774681]
- Updated dependencies [a0f424e]
- llamaindex@0.5.1
## 0.0.15
### Patch Changes
- Updated dependencies [16ef5dd]
- Updated dependencies [16ef5dd]
- Updated dependencies [36ddec4]
- llamaindex@0.5.0
## 0.0.14
### Patch Changes
- llamaindex@0.4.14
## 0.0.13
### Patch Changes
- Updated dependencies [e8f8bea]
- Updated dependencies [304484b]
- llamaindex@0.4.13
## 0.0.12
### Patch Changes
- Updated dependencies [f326ab8]
- llamaindex@0.4.12
## 0.0.11
### Patch Changes
- Updated dependencies [8bf5b4a]
- llamaindex@0.4.11
## 0.0.10
### Patch Changes
- Updated dependencies [7dce3d2]
- llamaindex@0.4.10
## 0.0.9
### Patch Changes
- Updated dependencies [3a96a48]
- llamaindex@0.4.9
## 0.0.8
### Patch Changes
- 83ebdfb: fix: next.js build error
- Updated dependencies [83ebdfb]
- llamaindex@0.4.8
## 0.0.7
### Patch Changes
- Updated dependencies [41fe871]
- Updated dependencies [321c39d]
- Updated dependencies [f7f1af0]
- llamaindex@0.4.7
## 0.0.6
### Patch Changes
@@ -1,6 +1,6 @@
{
"name": "@llamaindex/next-node-runtime-test",
"version": "0.0.6",
"version": "0.0.18",
"private": true,
"scripts": {
"dev": "next dev",
@@ -10,7 +10,7 @@
},
"dependencies": {
"llamaindex": "workspace:*",
"next": "14.2.4",
"next": "14.2.5",
"react": "18.3.1",
"react-dom": "18.3.1"
},
@@ -19,9 +19,9 @@
"@types/react": "^18.3.3",
"@types/react-dom": "^18.3.0",
"eslint": "^8.57.0",
"eslint-config-next": "14.2.3",
"eslint-config-next": "14.2.5",
"postcss": "^8",
"tailwindcss": "^3.4.4",
"typescript": "^5.5.2"
"typescript": "^5.5.3"
}
}
@@ -0,0 +1,68 @@
"use server";
import {
OpenAI,
OpenAIAgent,
QueryEngineTool,
Settings,
VectorStoreIndex,
} from "llamaindex";
import { HuggingFaceEmbedding } from "llamaindex/embeddings/HuggingFaceEmbedding";
import { SimpleDirectoryReader } from "llamaindex/readers/SimpleDirectoryReader";
Settings.llm = new OpenAI({
// eslint-disable-next-line turbo/no-undeclared-env-vars
apiKey: process.env.NEXT_PUBLIC_OPENAI_KEY ?? "FAKE_KEY_TO_PASS_TESTS",
model: "gpt-4o",
});
Settings.embedModel = new HuggingFaceEmbedding({
modelType: "BAAI/bge-small-en-v1.5",
quantized: false,
});
Settings.callbackManager.on("llm-tool-call", (event) => {
console.log(event.detail);
});
Settings.callbackManager.on("llm-tool-result", (event) => {
console.log(event.detail);
});
export async function getOpenAIModelRequest(query: string) {
try {
const currentDir = __dirname;
// load our data and create a query engine
const reader = new SimpleDirectoryReader();
const documents = await reader.loadData(currentDir);
const index = await VectorStoreIndex.fromDocuments(documents);
const retriever = index.asRetriever({
similarityTopK: 10,
});
const queryEngine = index.asQueryEngine({
retriever,
});
// define the query engine as a tool
const tools = [
new QueryEngineTool({
queryEngine: queryEngine,
metadata: {
name: "deployment_details_per_env",
description: `This tool can answer detailed questions about deployments happened in various environments.`,
},
}),
];
// create the agent
const agent = new OpenAIAgent({ tools });
const { response } = await agent.chat({
message: query,
});
return {
message: response,
};
} catch (err) {
console.error(err);
return {
errors: "Error Calling OpenAI Model",
};
}
}
@@ -0,0 +1,10 @@
import { getOpenAIModelRequest } from "@/actions/openai";
import { NextRequest, NextResponse } from "next/server";
// POST /api/openai
export async function POST(request: NextRequest) {
const body = await request.json();
const content = await getOpenAIModelRequest(body.query);
return NextResponse.json(content, { status: 200 });
}
@@ -1,5 +1,94 @@
# @llamaindex/waku-query-engine-test
## 0.0.37
### Patch Changes
- Updated dependencies [9bbbc67]
- Updated dependencies [b3681bf]
- llamaindex@0.5.3
## 0.0.36
### Patch Changes
- llamaindex@0.5.2
## 0.0.35
### Patch Changes
- Updated dependencies [2774681]
- Updated dependencies [a0f424e]
- llamaindex@0.5.1
## 0.0.34
### Patch Changes
- Updated dependencies [16ef5dd]
- Updated dependencies [16ef5dd]
- Updated dependencies [36ddec4]
- llamaindex@0.5.0
## 0.0.33
### Patch Changes
- llamaindex@0.4.14
## 0.0.32
### Patch Changes
- Updated dependencies [e8f8bea]
- Updated dependencies [304484b]
- llamaindex@0.4.13
## 0.0.31
### Patch Changes
- Updated dependencies [f326ab8]
- llamaindex@0.4.12
## 0.0.30
### Patch Changes
- Updated dependencies [8bf5b4a]
- llamaindex@0.4.11
## 0.0.29
### Patch Changes
- Updated dependencies [7dce3d2]
- llamaindex@0.4.10
## 0.0.28
### Patch Changes
- Updated dependencies [3a96a48]
- llamaindex@0.4.9
## 0.0.27
### Patch Changes
- Updated dependencies [83ebdfb]
- llamaindex@0.4.8
## 0.0.26
### Patch Changes
- Updated dependencies [41fe871]
- Updated dependencies [321c39d]
- Updated dependencies [f7f1af0]
- llamaindex@0.4.7
## 0.0.25
### Patch Changes
@@ -1,6 +1,6 @@
{
"name": "@llamaindex/waku-query-engine-test",
"version": "0.0.25",
"version": "0.0.37",
"type": "module",
"private": true,
"scripts": {
@@ -10,16 +10,16 @@
},
"dependencies": {
"llamaindex": "workspace:*",
"react": "19.0.0-canary-e3ebcd54b-20240405",
"react-dom": "19.0.0-canary-e3ebcd54b-20240405",
"react-server-dom-webpack": "19.0.0-canary-e3ebcd54b-20240405",
"waku": "0.20.1"
"react": "19.0.0-beta-e7d213dfb0-20240507",
"react-dom": "19.0.0-beta-e7d213dfb0-20240507",
"react-server-dom-webpack": "19.0.0-beta-e7d213dfb0-20240507",
"waku": "0.20.2"
},
"devDependencies": {
"@types/react": "18.3.1",
"@types/react": "18.3.3",
"@types/react-dom": "18.3.0",
"autoprefixer": "10.4.19",
"tailwindcss": "3.4.3",
"typescript": "5.4.5"
"tailwindcss": "3.4.4",
"typescript": "5.5.3"
}
}
@@ -1,3 +1,4 @@
import { extractText } from "@llamaindex/core/utils";
import type {
ChatResponse,
ChatResponseChunk,
@@ -7,8 +8,7 @@ import type {
LLMChatParamsStreaming,
LLMCompletionParamsNonStreaming,
LLMCompletionParamsStreaming,
} from "llamaindex/llm/types";
import { extractText } from "llamaindex/llm/utils";
} from "llamaindex";
import { deepStrictEqual, strictEqual } from "node:assert";
import { llmCompleteMockStorage } from "../../node/utils.js";

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