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11 Commits

Author SHA1 Message Date
leehuwuj 6111943229 update paths for macos 2024-03-22 07:15:42 +07:00
leehuwuj 3e5debb407 update windows and using paths 2024-03-22 07:07:38 +07:00
leehuwuj bf6028f271 add missing llamakey 2024-03-21 14:59:19 +07:00
leehuwuj a4d7737274 update multi file selection for windows 2024-03-21 14:51:43 +07:00
leehuwuj e9f32f27b2 allow to copy multiple files/folders 2024-03-21 09:13:42 +07:00
leehuwuj ce6e4b717c add none data source option 2024-03-21 08:44:21 +07:00
leehuwuj 9bbbd66da1 filter datasource and separate llamaParse question 2024-03-20 16:47:53 +07:00
leehuwuj 485452b9aa add copy loader code 2024-03-20 08:45:25 +07:00
leehuwuj 07af59a08a stg 2024-03-19 17:03:40 +07:00
leehuwuj 6c848a20ad change to array dataSources 2024-03-19 16:57:09 +07:00
leehuwuj 617dbca4f9 add dataSources 2024-03-19 15:02:02 +07:00
192 changed files with 4245 additions and 8199 deletions
+1 -1
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@@ -1,7 +1,7 @@
{
"$schema": "https://unpkg.com/@changesets/config@3.0.0/schema.json",
"changelog": "@changesets/cli/changelog",
"commit": false,
"commit": true,
"fixed": [],
"linked": [],
"access": "public",
-5
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@@ -1,5 +0,0 @@
---
"create-llama": patch
---
Add support E2B code interpreter tool for FastAPI
+5
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@@ -0,0 +1,5 @@
---
"create-llama": patch
---
Add fetching llm and embedding models from server
+5
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@@ -0,0 +1,5 @@
---
"create-llama": patch
---
Add Milvus vector database
+8 -15
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@@ -24,46 +24,39 @@ jobs:
runs-on: ${{ matrix.os }}
steps:
- uses: actions/checkout@v4
- name: Set up python ${{ matrix.python-version }}
uses: actions/setup-python@v5
uses: actions/setup-python@v4
with:
python-version: ${{ matrix.python-version }}
- name: Install Poetry
uses: snok/install-poetry@v1
with:
version: ${{ env.POETRY_VERSION }}
- uses: pnpm/action-setup@v3
- uses: pnpm/action-setup@v2
- name: Setup Node.js ${{ matrix.node-version }}
uses: actions/setup-node@v4
with:
node-version: ${{ matrix.node-version }}
cache: "pnpm"
- name: Install dependencies
run: pnpm install
- name: Install Playwright Browsers
run: pnpm exec playwright install --with-deps
working-directory: .
- name: Build create-llama
run: pnpm run build
working-directory: .
- name: Install
run: pnpm run pack-install
- name: Pack
run: pnpm pack --pack-destination ./output
working-directory: .
- name: Extract Pack
run: tar -xvzf ./output/*.tgz -C ./output
working-directory: .
- name: Run Playwright tests
run: pnpm run e2e
run: pnpm exec playwright test
env:
OPENAI_API_KEY: ${{ secrets.OPENAI_API_KEY }}
working-directory: .
- uses: actions/upload-artifact@v3
if: always()
with:
+3 -6
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@@ -13,20 +13,17 @@ jobs:
runs-on: ubuntu-latest
steps:
- uses: actions/checkout@v4
- uses: pnpm/action-setup@v3
- uses: pnpm/action-setup@v2
with:
version: latest
- name: Setup Node.js
uses: actions/setup-node@v4
with:
node-version-file: ".nvmrc"
cache: "pnpm"
- name: Install dependencies
run: pnpm install
- name: Run lint
run: pnpm run lint
- name: Run Prettier
run: pnpm run format
-36
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@@ -1,36 +0,0 @@
name: Publish to GitHub Releases
on:
push:
tags:
- "v*"
jobs:
build-and-publish:
runs-on: ubuntu-latest
steps:
- name: Checkout Repo
uses: actions/checkout@v4
- uses: pnpm/action-setup@v3
- name: Setup Node.js
uses: actions/setup-node@v4
with:
node-version-file: ".nvmrc"
cache: "pnpm"
- name: Install dependencies
run: pnpm install
- name: Build tarball
run: |
pnpm pack
- name: Create release
uses: ncipollo/release-action@v1
with:
artifacts: "create-llama-*.tgz"
name: Release ${{ github.ref }}
bodyFile: "CHANGELOG.md"
token: ${{ secrets.GITHUB_TOKEN }}
-55
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@@ -1,55 +0,0 @@
name: Release
on:
push:
branches:
- main
concurrency: ${{ github.workflow }}-${{ github.ref }}
jobs:
release:
name: Release
runs-on: ubuntu-latest
steps:
- name: Checkout Repo
uses: actions/checkout@v4
- uses: pnpm/action-setup@v3
- name: Setup Node.js
uses: actions/setup-node@v4
with:
node-version-file: ".nvmrc"
cache: "pnpm"
- name: Install dependencies
run: pnpm install
- name: Add auth token to .npmrc file
run: |
cat << EOF >> ".npmrc"
//registry.npmjs.org/:_authToken=$NPM_TOKEN
EOF
env:
NPM_TOKEN: ${{ secrets.NPM_TOKEN }}
- name: Get changeset status
id: get-changeset-status
run: |
pnpm changeset status --output .changeset/status.json
new_version=$(jq -r '.releases[0].newVersion' < .changeset/status.json)
rm -v .changeset/status.json
echo "new-version=${new_version}" >> "$GITHUB_OUTPUT"
- name: Create Release Pull Request or Publish to npm
id: changesets
uses: changesets/action@v1
with:
commit: Release ${{ steps.get-changeset-status.outputs.new-version }}
title: Release ${{ steps.get-changeset-status.outputs.new-version }}
# build package and call changeset publish
publish: pnpm release
env:
GITHUB_TOKEN: ${{ secrets.GITHUB_TOKEN }}
NPM_TOKEN: ${{ secrets.NPM_TOKEN }}
-3
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@@ -45,6 +45,3 @@ e2e/cache
# intellij
**/.idea
# build artifacts
create-llama-*.tgz
-103
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@@ -1,108 +1,5 @@
# create-llama
## 0.1.8
### Patch Changes
- cd50a33: Add interpreter tool for TS using e2b.dev
## 0.1.7
### Patch Changes
- 260d37a: Add system prompt env variable for TS
- bbd5b8d: Fix postgres connection leaking issue
- bb53425: Support HTTP proxies by setting the GLOBAL_AGENT_HTTP_PROXY env variable
- 69c2e16: Fix streaming for Express
- 7873bfb: Update Ollama provider to run with the base URL from the environment variable
## 0.1.6
### Patch Changes
- 56537a1: Display PDF files in source nodes
## 0.1.5
### Patch Changes
- 84db798: feat: support display latex in chat markdown
## 0.1.4
### Patch Changes
- 0bc8e75: Use ingestion pipeline for dedicated vector stores (Python only)
- cb1001d: Add ChromaDB vector store
## 0.1.3
### Patch Changes
- 416073d: Directly import vector stores to work with NextJS
## 0.1.2
### Patch Changes
- 056e376: Add support for displaying tool outputs (including weather widget as example)
## 0.1.1
### Patch Changes
- 7bd3ed5: Support Anthropic and Gemini as model providers
- 7bd3ed5: Support new agents from LITS 0.3
- cfb5257: Display events (e.g. retrieving nodes) per chat message
## 0.1.0
### Minor Changes
- f1c3e8d: Add Llama3 and Phi3 support using Ollama
### Patch Changes
- a0dec80: Use `gpt-4-turbo` model as default. Upgrade Python llama-index to 0.10.28
- 753229d: Remove asking for AI models and use defaults instead (OpenAIs GPT-4 Vision Preview and Embeddings v3). Use `--ask-models` CLI parameter to select models.
- 1d78202: Add observability for Python
- 6acccd2: Use poetry run generate to generate embeddings for FastAPI
- 9efcffe: Use Settings object for LlamaIndex configuration
- 418bf9b: refactor: use tsx instead of ts-node
- 1be69a5: Add Qdrant support
## 0.0.32
### Patch Changes
- 625ed4d: Support Astra VectorDB
- 922e0ce: Remove UI question (use shadcn as default). Use `html` UI by calling create-llama with --ui html parameter
- ce2f24d: Update loaders and tools config to yaml format (for Python)
- e8db041: Let user select multiple datasources (URLs, files and folders)
- c06d4af: Add nodes to the response (Python)
- 29b17ee: Allow using agents without any data source
- 665c26c: Add redirect to documentation page when accessing the base URL (FastAPI)
- 78ded9e: Add Dockerfile templates for Typescript and Python
- 99e758f: Merge non-streaming and streaming template to one
- b3f2685: Add support for agent generation for Typescript
- 2739714: Use a database (MySQL or PostgreSQL) as a data source
## 0.0.31
### Patch Changes
- 56faee0: Added windows e2e tests
- 60ed8fe: Added missing environment variable config for URL data source
- 60ed8fe: Fixed tool usage by freezing llama-index package versions
## 0.0.30
### Patch Changes
- 3af6328: Add support for llamaparse using Typescript
- dd92b91: Add fetching llm and embedding models from server
- bac1b43: Add Milvus vector database
## 0.0.29
### Patch Changes
-73
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@@ -1,73 +0,0 @@
# Contributing
## Getting Started
Install NodeJS. Preferably v18 using nvm or n.
Inside the `create-llama` directory:
```
npm i -g pnpm
pnpm install
```
Note: we use pnpm in this repo, which has a lot of the same functionality and CLI options as npm but it does do some things better, like caching.
### Building
When we publish to NPM we will have a [ncc](https://github.com/vercel/ncc) compiled version of the tool. To run the build command, run
```
pnpm run build
```
### Test cases
We are using a set of e2e tests to ensure that the tool works as expected.
We're using [playwright](https://playwright.dev/) to run the tests.
To install it, call:
```
pnpm exec playwright install --with-deps
```
Then you can create a global `create-llama` command (used by the e2e tests) that is linked to your local dev environment (if you update the build, you don't need to re-link):
```
pnpm link --global
```
And then finally run the tests:
```
pnpm run e2e
```
To write new test cases write them in [e2e](/e2e)
## Changeset
We use [changesets](https://github.com/changesets/changesets) for managing versions and changelogs. To create a new changeset, run:
```
pnpm changeset
```
Please send a descriptive changeset for each PR.
## Publishing (maintainers only)
To publish a new version of the library, first create a new version:
```shell
pnpm new-version
```
If everything looks good, commit the generated files and release the new version:
```shell
pnpm release
git push # push to the main branch
git push --tags
```
+26 -32
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@@ -18,19 +18,25 @@ to start the development server. You can then visit [http://localhost:3000](http
## What you'll get
- A Next.js-powered front-end using components from [shadcn/ui](https://ui.shadcn.com/). The app is set up as a chat interface that can answer questions about your data (see below)
- A Next.js-powered front-end. The app is set up as a chat interface that can answer questions about your data (see below)
- You can style it with HTML and CSS, or you can optionally use components from [shadcn/ui](https://ui.shadcn.com/)
- Your choice of 3 back-ends:
- **Next.js**: if you select this option, youll have a full-stack Next.js application that you can deploy to a host like [Vercel](https://vercel.com/) in just a few clicks. This uses [LlamaIndex.TS](https://www.npmjs.com/package/llamaindex), our TypeScript library.
- **Next.js**: if you select this option, youll have a full stack Next.js application that you can deploy to a host like [Vercel](https://vercel.com/) in just a few clicks. This uses [LlamaIndex.TS](https://www.npmjs.com/package/llamaindex), our TypeScript library.
- **Express**: if you want a more traditional Node.js application you can generate an Express backend. This also uses LlamaIndex.TS.
- **Python FastAPI**: if you select this option, youll get a backend powered by the [llama-index python package](https://pypi.org/project/llama-index/), which you can deploy to a service like Render or fly.io.
- The back-end has two endpoints (one streaming, the other one non-streaming) that allow you to send the state of your chat and receive additional responses
- You add arbitrary data sources to your chat, like local files, websites, or data retrieved from a database.
- Turn your chat into an AI agent by adding tools (functions called by the LLM).
- **Python FastAPI**: if you select this option youll get a backend powered by the [llama-index python package](https://pypi.org/project/llama-index/), which you can deploy to a service like Render or fly.io.
- The back-end has a single endpoint that allows you to send the state of your chat and receive additional responses
- You can choose whether you want a streaming or non-streaming back-end (if you're not sure, we recommend streaming)
- You can choose whether you want to use `ContextChatEngine` or `SimpleChatEngine`
- `SimpleChatEngine` will just talk to the LLM directly without using your data
- `ContextChatEngine` will use your data to answer questions (see below).
- The app uses OpenAI by default, so you'll need an OpenAI API key, or you can customize it to use any of the dozens of LLMs we support.
## Using your data
You can supply your own data; the app will index it and answer questions. Your generated app will have a folder called `data` (If you're using Express or Python and generate a frontend, it will be `./backend/data`).
If you've enabled `ContextChatEngine`, you can supply your own data and the app will index it and answer questions. Your generated app will have a folder called `data`:
- With the Next.js backend this is `./data`
- With the Express or Python backend this is in `./backend/data`
The app will ingest any supported files you put in this directory. Your Next.js and Express apps use LlamaIndex.TS so they will be able to ingest any PDF, text, CSV, Markdown, Word and HTML files. The Python backend can read even more types, including video and audio files.
@@ -40,28 +46,22 @@ Before you can use your data, you need to index it. If you're using the Next.js
npm run generate
```
Then re-start your app. Remember you'll need to re-run `generate` if you add new files to your `data` folder.
Then re-start your app. Remember you'll need to re-run `generate` if you add new files to your `data` folder. If you're using the Python backend, you can trigger indexing of your data by deleting the `./storage` folder and re-starting the app.
If you're using the Python backend, you can trigger indexing of your data by calling:
## Don't want a front-end?
```bash
poetry run generate
```
It's optional! If you've selected the Python or Express back-ends, just delete the `frontend` folder and you'll get an API without any front-end code.
## Want a front-end?
## Customizing the LLM
Optionally generate a frontend if you've selected the Python or Express back-ends. If you do so, `create-llama` will generate two folders: `frontend`, for your Next.js-based frontend code, and `backend` containing your API.
By default the app will use OpenAI's gpt-3.5-turbo model. If you want to use GPT-4, you can modify this by editing a file:
## Customizing the AI models
The app will default to OpenAI's `gpt-4-turbo` LLM and `text-embedding-3-large` embedding model.
If you want to use different OpenAI models, add the `--ask-models` CLI parameter.
- In the Next.js backend, edit `./app/api/chat/route.ts` and replace `gpt-3.5-turbo` with `gpt-4`
- In the Express backend, edit `./backend/src/controllers/chat.controller.ts` and likewise replace `gpt-3.5-turbo` with `gpt-4`
- In the Python backend, edit `./backend/app/utils/index.py` and once again replace `gpt-3.5-turbo` with `gpt-4`
You can also replace OpenAI with one of our [dozens of other supported LLMs](https://docs.llamaindex.ai/en/stable/module_guides/models/llms/modules.html).
To do so, you have to manually change the generated code (edit the `settings.ts` file for Typescript projects or the `settings.py` file for Python projects)
## Example
The simplest thing to do is run `create-llama` in interactive mode:
@@ -84,19 +84,13 @@ Need to install the following packages:
create-llama@latest
Ok to proceed? (y) y
✔ What is your project named? … my-app
✔ Which template would you like to use? Chat
✔ Which template would you like to use? Chat with streaming
✔ Which framework would you like to use? NextJS
✔ Would you like to set up observability? No
✔ Which UI would you like to use? Just HTML
✔ Which chat engine would you like to use? ContextChatEngine
✔ Please provide your OpenAI API key (leave blank to skip): …
✔ Which data source would you like to use? Use an example PDF
✔ Would you like to add another data source? No
✔ Would you like to use LlamaParse (improved parser for RAG - requires API key)? … no / yes
✔ Would you like to use a vector database? No, just store the data in the file system
? How would you like to proceed? - Use arrow-keys. Return to submit.
Just generate code (~1 sec)
Start in VSCode (~1 sec)
Generate code and install dependencies (~2 min)
Generate code, install dependencies, and run the app (~2 min)
✔ Would you like to use ESLint? … No / Yes
Creating a new LlamaIndex app in /home/my-app.
```
### Running non-interactively
+12 -8
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@@ -26,12 +26,16 @@ export type InstallAppArgs = Omit<
export async function createApp({
template,
framework,
engine,
ui,
appPath,
packageManager,
eslint,
frontend,
modelConfig,
openAiKey,
llamaCloudKey,
model,
embeddingModel,
communityProjectConfig,
llamapack,
vectorDb,
@@ -39,7 +43,6 @@ export async function createApp({
postInstallAction,
dataSources,
tools,
useLlamaParse,
observability,
}: InstallAppArgs): Promise<void> {
const root = path.resolve(appPath);
@@ -72,11 +75,15 @@ export async function createApp({
root,
template,
framework,
engine,
ui,
packageManager,
isOnline,
modelConfig,
eslint,
openAiKey,
llamaCloudKey,
model,
embeddingModel,
communityProjectConfig,
llamapack,
vectorDb,
@@ -84,7 +91,6 @@ export async function createApp({
postInstallAction,
dataSources,
tools,
useLlamaParse,
observability,
};
@@ -121,13 +127,11 @@ export async function createApp({
}
if (toolsRequireConfig(tools)) {
const configFile =
framework === "fastapi" ? "config/tools.yaml" : "config/tools.json";
console.log(
yellow(
`You have selected tools that require configuration. Please configure them in the ${terminalLink(
configFile,
`file://${root}/${configFile}`,
"tools_config.json",
`file://${root}/tools_config.json`,
)} file.`,
),
);
+25 -9
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@@ -4,6 +4,7 @@ import { ChildProcess } from "child_process";
import fs from "fs";
import path from "path";
import type {
TemplateEngine,
TemplateFramework,
TemplatePostInstallAction,
TemplateType,
@@ -11,13 +12,13 @@ import type {
} from "../helpers";
import { createTestDir, runCreateLlama, type AppType } from "./utils";
const templateTypes: TemplateType[] = ["streaming"];
const templateTypes: TemplateType[] = ["streaming", "simple"];
const templateFrameworks: TemplateFramework[] = [
"nextjs",
"express",
"fastapi",
];
const dataSources: string[] = ["--no-files", "--example-file"];
const templateEngines: TemplateEngine[] = ["simple", "context"];
const templateUIs: TemplateUI[] = ["shadcn", "html"];
const templatePostInstallActions: TemplatePostInstallAction[] = [
"none",
@@ -26,12 +27,24 @@ const templatePostInstallActions: TemplatePostInstallAction[] = [
for (const templateType of templateTypes) {
for (const templateFramework of templateFrameworks) {
for (const dataSource of dataSources) {
for (const templateEngine of templateEngines) {
for (const templateUI of templateUIs) {
for (const templatePostInstallAction of templatePostInstallActions) {
if (templateFramework === "nextjs" && templateType === "simple") {
// nextjs doesn't support simple templates - skip tests
continue;
}
const appType: AppType =
templateFramework === "nextjs" ? "" : "--frontend";
test.describe(`try create-llama ${templateType} ${templateFramework} ${dataSource} ${templateUI} ${appType} ${templatePostInstallAction}`, async () => {
templateFramework === "express" || templateFramework === "fastapi"
? templateType === "simple"
? "--no-frontend" // simple templates don't have frontends
: "--frontend"
: "";
if (appType === "--no-frontend" && templateUI !== "html") {
// if there's no frontend, don't iterate over UIs
continue;
}
test.describe(`try create-llama ${templateType} ${templateFramework} ${templateEngine} ${templateUI} ${appType} ${templatePostInstallAction}`, async () => {
let port: number;
let externalPort: number;
let cwd: string;
@@ -48,7 +61,7 @@ for (const templateType of templateTypes) {
cwd,
templateType,
templateFramework,
dataSource,
templateEngine,
templateUI,
vectorDb,
appType,
@@ -66,6 +79,7 @@ for (const templateType of templateTypes) {
});
test("Frontend should have a title", async ({ page }) => {
test.skip(templatePostInstallAction !== "runApp");
test.skip(appType === "--no-frontend");
await page.goto(`http://localhost:${port}`);
await expect(page.getByText("Built by LlamaIndex")).toBeVisible();
});
@@ -74,6 +88,7 @@ for (const templateType of templateTypes) {
page,
}) => {
test.skip(templatePostInstallAction !== "runApp");
test.skip(appType === "--no-frontend");
await page.goto(`http://localhost:${port}`);
await page.fill("form input", "hello");
const [response] = await Promise.all([
@@ -94,13 +109,14 @@ for (const templateType of templateTypes) {
expect(response.ok()).toBeTruthy();
});
test("Backend frameworks should response when calling non-streaming chat API", async ({
test("Backend should response when calling API", async ({
request,
}) => {
test.skip(templatePostInstallAction !== "runApp");
test.skip(templateFramework === "nextjs");
test.skip(appType !== "--no-frontend");
const backendPort = appType === "" ? port : externalPort;
const response = await request.post(
`http://localhost:${externalPort}/api/chat/request`,
`http://localhost:${backendPort}/api/chat`,
{
data: {
messages: [
+25 -10
View File
@@ -4,6 +4,7 @@ import { mkdir } from "node:fs/promises";
import * as path from "path";
import waitPort from "wait-port";
import {
TemplateEngine,
TemplateFramework,
TemplatePostInstallAction,
TemplateType,
@@ -12,7 +13,8 @@ import {
} from "../helpers";
export type AppType = "--frontend" | "--no-frontend" | "";
const MODEL = "gpt-3.5-turbo";
const EMBEDDING_MODEL = "text-embedding-ada-002";
export type CreateLlamaResult = {
projectName: string;
appProcess: ChildProcess;
@@ -65,7 +67,7 @@ export async function runCreateLlama(
cwd: string,
templateType: TemplateType,
templateFramework: TemplateFramework,
dataSource: string,
templateEngine: TemplateEngine,
templateUI: TemplateUI,
vectorDb: TemplateVectorDB,
appType: AppType,
@@ -73,32 +75,45 @@ export async function runCreateLlama(
externalPort: number,
postInstallAction: TemplatePostInstallAction,
): Promise<CreateLlamaResult> {
if (!process.env.OPENAI_API_KEY) {
throw new Error("Setting OPENAI_API_KEY is mandatory to run tests");
}
const createLlama = path.join(
__dirname,
"..",
"output",
"package",
"dist",
"index.js",
);
const name = [
templateType,
templateFramework,
dataSource,
templateEngine,
templateUI,
appType,
].join("-");
const command = [
"create-llama",
"node",
createLlama,
name,
"--template",
templateType,
"--framework",
templateFramework,
dataSource,
"--engine",
templateEngine,
"--ui",
templateUI,
"--vector-db",
vectorDb,
"--model",
MODEL,
"--embedding-model",
EMBEDDING_MODEL,
"--open-ai-key",
process.env.OPENAI_API_KEY,
process.env.OPENAI_API_KEY || "testKey",
appType,
"--use-pnpm",
"--eslint",
"--use-npm",
"--port",
port,
"--external-port",
-18
View File
@@ -48,21 +48,3 @@ export const copy = async (
}),
);
};
export const assetRelocator = (name: string) => {
switch (name) {
case "gitignore":
case "npmrc":
case "eslintrc.json": {
return `.${name}`;
}
// README.md is ignored by webpack-asset-relocator-loader used by ncc:
// https://github.com/vercel/webpack-asset-relocator-loader/blob/e9308683d47ff507253e37c9bcbb99474603192b/src/asset-relocator.js#L227
case "README-template.md": {
return "README.md";
}
default: {
return name;
}
}
};
-109
View File
@@ -1,109 +0,0 @@
import fs from "fs/promises";
import path from "path";
import yaml, { Document } from "yaml";
import { templatesDir } from "./dir";
import { DbSourceConfig, TemplateDataSource, WebSourceConfig } from "./types";
export const EXAMPLE_FILE: TemplateDataSource = {
type: "file",
config: {
path: path.join(templatesDir, "components", "data", "101.pdf"),
},
};
export function getDataSources(
files?: string,
exampleFile?: boolean,
): TemplateDataSource[] | undefined {
let dataSources: TemplateDataSource[] | undefined = undefined;
if (files) {
// If user specified files option, then the program should use context engine
dataSources = files.split(",").map((filePath) => ({
type: "file",
config: {
path: filePath,
},
}));
}
if (exampleFile) {
dataSources = [...(dataSources ? dataSources : []), EXAMPLE_FILE];
}
return dataSources;
}
export async function writeLoadersConfig(
root: string,
dataSources: TemplateDataSource[],
useLlamaParse?: boolean,
) {
if (dataSources.length === 0) return; // no datasources, no config needed
const loaderConfig = new Document({});
// Web loader config
if (dataSources.some((ds) => ds.type === "web")) {
const webLoaderConfig = new Document({});
// Create config for browser driver arguments
const driverArgNodeValue = webLoaderConfig.createNode([
"--no-sandbox",
"--disable-dev-shm-usage",
]);
driverArgNodeValue.commentBefore =
" The arguments to pass to the webdriver. E.g.: add --headless to run in headless mode";
webLoaderConfig.set("driver_arguments", driverArgNodeValue);
// Create config for urls
const urlConfigs = dataSources
.filter((ds) => ds.type === "web")
.map((ds) => {
const dsConfig = ds.config as WebSourceConfig;
return {
base_url: dsConfig.baseUrl,
prefix: dsConfig.prefix,
depth: dsConfig.depth,
};
});
const urlConfigNode = webLoaderConfig.createNode(urlConfigs);
urlConfigNode.commentBefore = ` base_url: The URL to start crawling with
prefix: Only crawl URLs matching the specified prefix
depth: The maximum depth for BFS traversal
You can add more websites by adding more entries (don't forget the - prefix from YAML)`;
webLoaderConfig.set("urls", urlConfigNode);
// Add web config to the loaders config
loaderConfig.set("web", webLoaderConfig);
}
// File loader config
if (dataSources.some((ds) => ds.type === "file")) {
// Add documentation to web loader config
const node = loaderConfig.createNode({
use_llama_parse: useLlamaParse,
});
node.commentBefore = ` use_llama_parse: Use LlamaParse if \`true\`. Needs a \`LLAMA_CLOUD_API_KEY\` from https://cloud.llamaindex.ai set as environment variable`;
loaderConfig.set("file", node);
}
// DB loader config
const dbLoaders = dataSources.filter((ds) => ds.type === "db");
if (dbLoaders.length > 0) {
const dbLoaderConfig = new Document({});
const configEntries = dbLoaders.map((ds) => {
const dsConfig = ds.config as DbSourceConfig;
return {
uri: dsConfig.uri,
queries: [dsConfig.queries],
};
});
const node = dbLoaderConfig.createNode(configEntries);
node.commentBefore = ` The configuration for the database loader, only supports MySQL and PostgreSQL databases for now.
uri: The URI for the database. E.g.: mysql+pymysql://user:password@localhost:3306/db or postgresql+psycopg2://user:password@localhost:5432/db
query: The query to fetch data from the database. E.g.: SELECT * FROM table`;
loaderConfig.set("db", node);
}
// Write loaders config
const loaderConfigPath = path.join(root, "config", "loaders.yaml");
await fs.mkdir(path.join(root, "config"), { recursive: true });
await fs.writeFile(loaderConfigPath, yaml.stringify(loaderConfig));
}
+2 -5
View File
@@ -46,16 +46,13 @@ export const writeDevcontainer = async (
framework: TemplateFramework,
frontend: boolean,
) => {
const devcontainerDir = path.join(root, ".devcontainer");
if (fs.existsSync(devcontainerDir)) {
console.log("Template already has a .devcontainer. Using it.");
return;
}
console.log("Adding .devcontainer");
const devcontainerContent = renderDevcontainerContent(
templatesDir,
framework,
frontend,
);
const devcontainerDir = path.join(root, ".devcontainer");
fs.mkdirSync(devcontainerDir);
await fs.promises.writeFile(
path.join(devcontainerDir, "devcontainer.json"),
+131 -235
View File
@@ -1,14 +1,14 @@
import fs from "fs/promises";
import path from "path";
import { TOOL_SYSTEM_PROMPT_ENV_VAR, Tool } from "./tools";
import {
ModelConfig,
FileSourceConfig,
TemplateDataSource,
TemplateFramework,
TemplateVectorDB,
WebSourceConfig,
} from "./types";
export type EnvVar = {
type EnvVar = {
name?: string;
description?: string;
value?: string;
@@ -30,20 +30,14 @@ const renderEnvVar = (envVars: EnvVar[]): string => {
);
};
const getVectorDBEnvs = (
vectorDb?: TemplateVectorDB,
framework?: TemplateFramework,
): EnvVar[] => {
if (!vectorDb || !framework) {
return [];
}
const getVectorDBEnvs = (vectorDb: TemplateVectorDB) => {
switch (vectorDb) {
case "mongo":
return [
{
name: "MONGODB_URI",
name: "MONGO_URI",
description:
"For generating a connection URI, see https://www.mongodb.com/docs/manual/reference/connection-string/ \nThe MongoDB connection URI.",
"For generating a connection URI, see https://docs.timescale.com/use-timescale/latest/services/create-a-service\nThe MongoDB connection URI.",
},
{
name: "MONGODB_DATABASE",
@@ -101,156 +95,76 @@ const getVectorDBEnvs = (
description: "The password to access the Milvus server.",
},
];
case "astra":
return [
{
name: "ASTRA_DB_APPLICATION_TOKEN",
description: "The generated app token for your Astra database",
},
{
name: "ASTRA_DB_ENDPOINT",
description: "The API endpoint for your Astra database",
},
{
name: "ASTRA_DB_COLLECTION",
description: "The name of the collection in your Astra database",
},
];
case "qdrant":
return [
{
name: "QDRANT_URL",
description:
"The qualified REST URL of the Qdrant server. Eg: http://localhost:6333",
},
{
name: "QDRANT_COLLECTION",
description: "The name of Qdrant collection to use.",
},
{
name: "QDRANT_API_KEY",
description:
"Optional API key for authenticating requests to Qdrant.",
},
];
case "chroma":
const envs = [
{
name: "CHROMA_COLLECTION",
description: "The name of the collection in your Chroma database",
},
{
name: "CHROMA_HOST",
description: "The API endpoint for your Chroma database",
},
{
name: "CHROMA_PORT",
description: "The port for your Chroma database",
},
];
// TS Version doesn't support config local storage path
if (framework === "fastapi") {
envs.push({
name: "CHROMA_PATH",
description: `The local path to the Chroma database.
Specify this if you are using a local Chroma database.
Otherwise, use CHROMA_HOST and CHROMA_PORT config above`,
});
}
return envs;
default:
return [];
}
};
const getModelEnvs = (modelConfig: ModelConfig): EnvVar[] => {
return [
{
name: "MODEL_PROVIDER",
description: "The provider for the AI models to use.",
value: modelConfig.provider,
},
{
name: "MODEL",
description: "The name of LLM model to use.",
value: modelConfig.model,
},
{
name: "EMBEDDING_MODEL",
description: "Name of the embedding model to use.",
value: modelConfig.embeddingModel,
},
{
name: "EMBEDDING_DIM",
description: "Dimension of the embedding model to use.",
value: modelConfig.dimensions.toString(),
},
...(modelConfig.provider === "openai"
? [
const getDataSourceEnvs = (dataSources: TemplateDataSource[]) => {
const envs = [];
for (const source of dataSources) {
switch (source.type) {
case "web":
const config = source.config as WebSourceConfig;
envs.push(
{
name: "OPENAI_API_KEY",
description: "The OpenAI API key to use.",
value: modelConfig.apiKey,
name: "BASE_URL",
description: "The base URL to start web scraping.",
value: config.baseUrl,
},
{
name: "LLM_TEMPERATURE",
description: "Temperature for sampling from the model.",
name: "URL_PREFIX",
description: "The prefix of the URL to start web scraping.",
value: config.baseUrl,
},
{
name: "LLM_MAX_TOKENS",
description: "Maximum number of tokens to generate.",
name: "MAX_DEPTH",
description: "The maximum depth to scrape.",
value: config.depth?.toString(),
},
]
: []),
...(modelConfig.provider === "anthropic"
? [
{
name: "ANTHROPIC_API_KEY",
description: "The Anthropic API key to use.",
value: modelConfig.apiKey,
},
]
: []),
...(modelConfig.provider === "gemini"
? [
{
name: "GOOGLE_API_KEY",
description: "The Google API key to use.",
value: modelConfig.apiKey,
},
]
: []),
...(modelConfig.provider === "ollama"
? [
{
name: "OLLAMA_BASE_URL",
description:
"The base URL for the Ollama API. Eg: http://127.0.0.1:11434",
},
]
: []),
];
);
}
}
return envs;
};
const getFrameworkEnvs = (
framework: TemplateFramework,
port?: number,
): EnvVar[] => {
const sPort = port?.toString() || "8000";
const result: EnvVar[] = [
export const createBackendEnvFile = async (
root: string,
opts: {
openAiKey?: string;
llamaCloudKey?: string;
vectorDb?: TemplateVectorDB;
model?: string;
embeddingModel?: string;
framework?: TemplateFramework;
dataSources?: TemplateDataSource[];
port?: number;
},
) => {
// Init env values
const envFileName = ".env";
const defaultEnvs = [
{
name: "FILESERVER_URL_PREFIX",
description:
"FILESERVER_URL_PREFIX is the URL prefix of the server storing the images generated by the interpreter.",
value:
framework === "nextjs"
? // FIXME: if we are using nextjs, port should be 3000
"http://localhost:3000/api/files"
: `http://localhost:${sPort}/api/files`,
render: true,
name: "MODEL",
description: "The name of LLM model to use.",
value: opts.model || "gpt-3.5-turbo",
},
{
render: true,
name: "OPENAI_API_KEY",
description: "The OpenAI API key to use.",
value: opts.openAiKey,
},
// Add vector database environment variables
...(opts.vectorDb ? getVectorDBEnvs(opts.vectorDb) : []),
// Add data source environment variables
...(opts.dataSources ? getDataSourceEnvs(opts.dataSources) : []),
];
if (framework === "fastapi") {
result.push(
let envVars: EnvVar[] = [];
if (opts.framework === "fastapi") {
envVars = [
...defaultEnvs,
...[
{
name: "APP_HOST",
@@ -260,98 +174,69 @@ const getFrameworkEnvs = (
{
name: "APP_PORT",
description: "The port to start the backend app.",
value: sPort,
value: opts.port?.toString() || "8000",
},
{
name: "EMBEDDING_MODEL",
description: "Name of the embedding model to use.",
value: opts.embeddingModel,
},
{
name: "EMBEDDING_DIM",
description: "Dimension of the embedding model to use.",
},
{
name: "LLM_TEMPERATURE",
description: "Temperature for sampling from the model.",
},
{
name: "LLM_MAX_TOKENS",
description: "Maximum number of tokens to generate.",
},
{
name: "TOP_K",
description:
"The number of similar embeddings to return when retrieving documents.",
value: "3",
},
{
name: "SYSTEM_PROMPT",
description: `Custom system prompt.
Example:
SYSTEM_PROMPT="
We have provided context information below.
---------------------
{context_str}
---------------------
Given this information, please answer the question: {query_str}
"`,
},
opts?.dataSources?.some(
(ds) => (ds.config as FileSourceConfig).useLlamaParse,
)
? {
name: "LLAMA_CLOUD_API_KEY",
description: `The Llama Cloud API key.`,
value: opts.llamaCloudKey,
}
: {},
],
);
];
} else {
envVars = [
...defaultEnvs,
...[
opts.framework === "nextjs"
? {
name: "NEXT_PUBLIC_MODEL",
description:
"The LLM model to use (hardcode to front-end artifact).",
value: opts.model || "gpt-3.5-turbo",
}
: {},
],
];
}
return result;
};
const getEngineEnvs = (): EnvVar[] => {
return [
{
name: "TOP_K",
description:
"The number of similar embeddings to return when retrieving documents.",
value: "3",
},
];
};
const getToolEnvs = (tools?: Tool[]): EnvVar[] => {
if (!tools?.length) return [];
const toolEnvs: EnvVar[] = [];
tools.forEach((tool) => {
if (tool.envVars?.length) {
toolEnvs.push(
// Don't include the system prompt env var here
// It should be handled separately by merging with the default system prompt
...tool.envVars.filter(
(env) => env.name !== TOOL_SYSTEM_PROMPT_ENV_VAR,
),
);
}
});
return toolEnvs;
};
const getSystemPromptEnv = (tools?: Tool[]): EnvVar => {
const defaultSystemPrompt =
"You are a helpful assistant who helps users with their questions.";
// build tool system prompt by merging all tool system prompts
let toolSystemPrompt = "";
tools?.forEach((tool) => {
const toolSystemPromptEnv = tool.envVars?.find(
(env) => env.name === TOOL_SYSTEM_PROMPT_ENV_VAR,
);
if (toolSystemPromptEnv) {
toolSystemPrompt += toolSystemPromptEnv.value + "\n";
}
});
const systemPrompt = toolSystemPrompt
? `\"${toolSystemPrompt}\"`
: defaultSystemPrompt;
return {
name: "SYSTEM_PROMPT",
description: "The system prompt for the AI model.",
value: systemPrompt,
};
};
export const createBackendEnvFile = async (
root: string,
opts: {
llamaCloudKey?: string;
vectorDb?: TemplateVectorDB;
modelConfig: ModelConfig;
framework: TemplateFramework;
dataSources?: TemplateDataSource[];
port?: number;
tools?: Tool[];
},
) => {
// Init env values
const envFileName = ".env";
const envVars: EnvVar[] = [
{
name: "LLAMA_CLOUD_API_KEY",
description: `The Llama Cloud API key.`,
value: opts.llamaCloudKey,
},
// Add model environment variables
...getModelEnvs(opts.modelConfig),
// Add engine environment variables
...getEngineEnvs(),
// Add vector database environment variables
...getVectorDBEnvs(opts.vectorDb, opts.framework),
...getFrameworkEnvs(opts.framework, opts.port),
...getToolEnvs(opts.tools),
getSystemPromptEnv(opts.tools),
];
// Render and write env file
const content = renderEnvVar(envVars);
await fs.writeFile(path.join(root, envFileName), content);
@@ -362,9 +247,20 @@ export const createFrontendEnvFile = async (
root: string,
opts: {
customApiPath?: string;
model?: string;
},
) => {
const defaultFrontendEnvs = [
{
name: "MODEL",
description: "The OpenAI model to use.",
value: opts.model,
},
{
name: "NEXT_PUBLIC_MODEL",
description: "The OpenAI model to use (hardcode to front-end artifact).",
value: opts.model,
},
{
name: "NEXT_PUBLIC_CHAT_API",
description: "The backend API for chat endpoint.",
+79 -58
View File
@@ -1,21 +1,20 @@
import { copy } from "./copy";
import { callPackageManager } from "./install";
import fs from "fs/promises";
import path from "path";
import { cyan } from "picocolors";
import fsExtra from "fs-extra";
import { writeLoadersConfig } from "./datasources";
import { templatesDir } from "./dir";
import { createBackendEnvFile, createFrontendEnvFile } from "./env-variables";
import { PackageManager } from "./get-pkg-manager";
import { installLlamapackProject } from "./llama-pack";
import { isHavingPoetryLockFile, tryPoetryRun } from "./poetry";
import { installPythonTemplate } from "./python";
import { downloadAndExtractRepo } from "./repo";
import { ConfigFileType, writeToolsConfig } from "./tools";
import {
FileSourceConfig,
InstallTemplateArgs,
ModelConfig,
TemplateDataSource,
TemplateFramework,
TemplateVectorDB,
@@ -25,8 +24,8 @@ import { installTSTemplate } from "./typescript";
// eslint-disable-next-line max-params
async function generateContextData(
framework: TemplateFramework,
modelConfig: ModelConfig,
packageManager?: PackageManager,
openAiKey?: string,
vectorDb?: TemplateVectorDB,
llamaCloudKey?: string,
useLlamaParse?: boolean,
@@ -34,37 +33,40 @@ async function generateContextData(
if (packageManager) {
const runGenerate = `${cyan(
framework === "fastapi"
? "poetry run generate"
? "poetry run python app/engine/generate.py"
: `${packageManager} run generate`,
)}`;
const modelConfigured = modelConfig.isConfigured();
const openAiKeyConfigured = openAiKey || process.env["OPENAI_API_KEY"];
const llamaCloudKeyConfigured = useLlamaParse
? llamaCloudKey || process.env["LLAMA_CLOUD_API_KEY"]
: true;
const hasVectorDb = vectorDb && vectorDb !== "none";
if (modelConfigured && llamaCloudKeyConfigured && !hasVectorDb) {
// If all the required environment variables are set, run the generate script
if (framework === "fastapi") {
if (isHavingPoetryLockFile()) {
console.log(`Running ${runGenerate} to generate the context data.`);
const result = tryPoetryRun("poetry run generate");
if (!result) {
console.log(`Failed to run ${runGenerate}.`);
process.exit(1);
}
console.log(`Generated context data`);
return;
if (framework === "fastapi") {
if (
openAiKeyConfigured &&
llamaCloudKeyConfigured &&
!hasVectorDb &&
isHavingPoetryLockFile()
) {
console.log(`Running ${runGenerate} to generate the context data.`);
const result = tryPoetryRun("python app/engine/generate.py");
if (!result) {
console.log(`Failed to run ${runGenerate}.`);
process.exit(1);
}
} else {
console.log(`Generated context data`);
return;
}
} else {
if (openAiKeyConfigured && vectorDb === "none") {
console.log(`Running ${runGenerate} to generate the context data.`);
await callPackageManager(packageManager, true, ["run", "generate"]);
return;
}
}
// generate the message of what to do to run the generate script manually
const settings = [];
if (!modelConfigured) settings.push("your model provider API key");
if (!openAiKeyConfigured) settings.push("your OpenAI key");
if (!llamaCloudKeyConfigured) settings.push("your Llama Cloud key");
if (hasVectorDb) settings.push("your Vector DB environment variables");
const settingsMessage =
@@ -76,16 +78,46 @@ async function generateContextData(
const copyContextData = async (
root: string,
dataSources: TemplateDataSource[],
dataSource?: TemplateDataSource,
) => {
for (const dataSource of dataSources) {
const dataSourceConfig = dataSource?.config as FileSourceConfig;
// Copy local data
const dataPath = dataSourceConfig.path;
const destPath = path.join(root, "data");
const dataSourceConfig = dataSource?.config as FileSourceConfig;
const destPath = path.join(root, "data", path.basename(dataPath));
console.log("Copying data from path:", dataPath);
await fsExtra.copy(dataPath, destPath);
// Copy file
if (dataSource?.type === "file") {
if (dataSourceConfig.paths) {
await fs.mkdir(destPath, { recursive: true });
console.log(
"Copying data from files:",
dataSourceConfig.paths.toString(),
);
for (const p of dataSourceConfig.paths) {
await fs.copyFile(p, path.join(destPath, path.basename(p)));
}
} else {
console.log("Missing file path in config");
process.exit(1);
}
return;
}
// Copy folder
if (dataSource?.type === "folder") {
// Example data does not have path config, set the default path
const srcPaths = dataSourceConfig.paths ?? [
path.join(templatesDir, "components", "data"),
];
console.log("Copying data from folders: ", srcPaths);
for (const p of srcPaths) {
const folderName = path.basename(p);
const destFolderPath = path.join(destPath, folderName);
await fs.mkdir(destFolderPath, { recursive: true });
await copy("**", destFolderPath, {
parents: true,
cwd: p,
});
}
return;
}
};
@@ -120,65 +152,54 @@ export const installTemplate = async (
if (props.framework === "fastapi") {
await installPythonTemplate(props);
// write loaders configuration (currently Python only)
await writeLoadersConfig(
props.root,
props.dataSources,
props.useLlamaParse,
);
} else {
await installTSTemplate(props);
}
// write tools configuration
await writeToolsConfig(
props.root,
props.tools,
props.framework === "fastapi" ? ConfigFileType.YAML : ConfigFileType.JSON,
);
if (props.backend) {
// This is a backend, so we need to copy the test data and create the env file.
// Copy the environment file to the target directory.
await createBackendEnvFile(props.root, {
modelConfig: props.modelConfig,
openAiKey: props.openAiKey,
llamaCloudKey: props.llamaCloudKey,
vectorDb: props.vectorDb,
model: props.model,
embeddingModel: props.embeddingModel,
framework: props.framework,
dataSources: props.dataSources,
port: props.externalPort,
tools: props.tools,
});
if (props.dataSources.length > 0) {
if (props.engine === "context") {
console.log("\nGenerating context data...\n");
await copyContextData(
props.root,
props.dataSources.filter((ds) => ds.type === "file"),
);
props.dataSources.forEach(async (ds) => {
if (ds.type === "file" || ds.type === "folder") {
await copyContextData(props.root, ds);
}
});
if (
props.postInstallAction === "runApp" ||
props.postInstallAction === "dependencies"
) {
await generateContextData(
props.framework,
props.modelConfig,
props.packageManager,
props.openAiKey,
props.vectorDb,
props.llamaCloudKey,
props.useLlamaParse,
props.dataSources.some(
(ds) =>
(ds.type === "file" || ds.type === "folder") &&
(ds.config as FileSourceConfig).useLlamaParse,
),
);
}
}
// Create tool-output directory
if (props.tools && props.tools.length > 0) {
await fsExtra.mkdir(path.join(props.root, "tool-output"));
}
} else {
// this is a frontend for a full-stack app, create .env file with model information
await createFrontendEnvFile(props.root, {
createFrontendEnvFile(props.root, {
model: props.model,
customApiPath: props.customApiPath,
});
}
-106
View File
@@ -1,106 +0,0 @@
import ciInfo from "ci-info";
import prompts from "prompts";
import { ModelConfigParams } from ".";
import { questionHandlers, toChoice } from "../../questions";
const MODELS = [
"claude-3-opus",
"claude-3-sonnet",
"claude-3-haiku",
"claude-2.1",
"claude-instant-1.2",
];
const DEFAULT_MODEL = MODELS[0];
// TODO: get embedding vector dimensions from the anthropic sdk (currently not supported)
// Use huggingface embedding models for now
enum HuggingFaceEmbeddingModelType {
XENOVA_ALL_MINILM_L6_V2 = "all-MiniLM-L6-v2",
XENOVA_ALL_MPNET_BASE_V2 = "all-mpnet-base-v2",
}
type ModelData = {
dimensions: number;
};
const EMBEDDING_MODELS: Record<HuggingFaceEmbeddingModelType, ModelData> = {
[HuggingFaceEmbeddingModelType.XENOVA_ALL_MINILM_L6_V2]: {
dimensions: 384,
},
[HuggingFaceEmbeddingModelType.XENOVA_ALL_MPNET_BASE_V2]: {
dimensions: 768,
},
};
const DEFAULT_EMBEDDING_MODEL = Object.keys(EMBEDDING_MODELS)[0];
const DEFAULT_DIMENSIONS = Object.values(EMBEDDING_MODELS)[0].dimensions;
type AnthropicQuestionsParams = {
apiKey?: string;
askModels: boolean;
};
export async function askAnthropicQuestions({
askModels,
apiKey,
}: AnthropicQuestionsParams): Promise<ModelConfigParams> {
const config: ModelConfigParams = {
apiKey,
model: DEFAULT_MODEL,
embeddingModel: DEFAULT_EMBEDDING_MODEL,
dimensions: DEFAULT_DIMENSIONS,
isConfigured(): boolean {
if (config.apiKey) {
return true;
}
if (process.env["ANTHROPIC_API_KEY"]) {
return true;
}
return false;
},
};
if (!config.apiKey) {
const { key } = await prompts(
{
type: "text",
name: "key",
message:
"Please provide your Anthropic API key (or leave blank to use ANTHROPIC_API_KEY env variable):",
},
questionHandlers,
);
config.apiKey = key || process.env.ANTHROPIC_API_KEY;
}
// use default model values in CI or if user should not be asked
const useDefaults = ciInfo.isCI || !askModels;
if (!useDefaults) {
const { model } = await prompts(
{
type: "select",
name: "model",
message: "Which LLM model would you like to use?",
choices: MODELS.map(toChoice),
initial: 0,
},
questionHandlers,
);
config.model = model;
const { embeddingModel } = await prompts(
{
type: "select",
name: "embeddingModel",
message: "Which embedding model would you like to use?",
choices: Object.keys(EMBEDDING_MODELS).map(toChoice),
initial: 0,
},
questionHandlers,
);
config.embeddingModel = embeddingModel;
config.dimensions =
EMBEDDING_MODELS[
embeddingModel as HuggingFaceEmbeddingModelType
].dimensions;
}
return config;
}
-87
View File
@@ -1,87 +0,0 @@
import ciInfo from "ci-info";
import prompts from "prompts";
import { ModelConfigParams } from ".";
import { questionHandlers, toChoice } from "../../questions";
const MODELS = ["gemini-1.5-pro-latest", "gemini-pro", "gemini-pro-vision"];
type ModelData = {
dimensions: number;
};
const EMBEDDING_MODELS: Record<string, ModelData> = {
"embedding-001": { dimensions: 768 },
"text-embedding-004": { dimensions: 768 },
};
const DEFAULT_MODEL = MODELS[0];
const DEFAULT_EMBEDDING_MODEL = Object.keys(EMBEDDING_MODELS)[0];
const DEFAULT_DIMENSIONS = Object.values(EMBEDDING_MODELS)[0].dimensions;
type GeminiQuestionsParams = {
apiKey?: string;
askModels: boolean;
};
export async function askGeminiQuestions({
askModels,
apiKey,
}: GeminiQuestionsParams): Promise<ModelConfigParams> {
const config: ModelConfigParams = {
apiKey,
model: DEFAULT_MODEL,
embeddingModel: DEFAULT_EMBEDDING_MODEL,
dimensions: DEFAULT_DIMENSIONS,
isConfigured(): boolean {
if (config.apiKey) {
return true;
}
if (process.env["GOOGLE_API_KEY"]) {
return true;
}
return false;
},
};
if (!config.apiKey) {
const { key } = await prompts(
{
type: "text",
name: "key",
message:
"Please provide your Google API key (or leave blank to use GOOGLE_API_KEY env variable):",
},
questionHandlers,
);
config.apiKey = key || process.env.GOOGLE_API_KEY;
}
// use default model values in CI or if user should not be asked
const useDefaults = ciInfo.isCI || !askModels;
if (!useDefaults) {
const { model } = await prompts(
{
type: "select",
name: "model",
message: "Which LLM model would you like to use?",
choices: MODELS.map(toChoice),
initial: 0,
},
questionHandlers,
);
config.model = model;
const { embeddingModel } = await prompts(
{
type: "select",
name: "embeddingModel",
message: "Which embedding model would you like to use?",
choices: Object.keys(EMBEDDING_MODELS).map(toChoice),
initial: 0,
},
questionHandlers,
);
config.embeddingModel = embeddingModel;
config.dimensions = EMBEDDING_MODELS[embeddingModel].dimensions;
}
return config;
}
-67
View File
@@ -1,67 +0,0 @@
import ciInfo from "ci-info";
import prompts from "prompts";
import { questionHandlers } from "../../questions";
import { ModelConfig, ModelProvider } from "../types";
import { askAnthropicQuestions } from "./anthropic";
import { askGeminiQuestions } from "./gemini";
import { askOllamaQuestions } from "./ollama";
import { askOpenAIQuestions } from "./openai";
const DEFAULT_MODEL_PROVIDER = "openai";
export type ModelConfigQuestionsParams = {
openAiKey?: string;
askModels: boolean;
};
export type ModelConfigParams = Omit<ModelConfig, "provider">;
export async function askModelConfig({
askModels,
openAiKey,
}: ModelConfigQuestionsParams): Promise<ModelConfig> {
let modelProvider: ModelProvider = DEFAULT_MODEL_PROVIDER;
if (askModels && !ciInfo.isCI) {
const { provider } = await prompts(
{
type: "select",
name: "provider",
message: "Which model provider would you like to use",
choices: [
{
title: "OpenAI",
value: "openai",
},
{ title: "Ollama", value: "ollama" },
{ title: "Anthropic", value: "anthropic" },
{ title: "Gemini", value: "gemini" },
],
initial: 0,
},
questionHandlers,
);
modelProvider = provider;
}
let modelConfig: ModelConfigParams;
switch (modelProvider) {
case "ollama":
modelConfig = await askOllamaQuestions({ askModels });
break;
case "anthropic":
modelConfig = await askAnthropicQuestions({ askModels });
break;
case "gemini":
modelConfig = await askGeminiQuestions({ askModels });
break;
default:
modelConfig = await askOpenAIQuestions({
openAiKey,
askModels,
});
}
return {
...modelConfig,
provider: modelProvider,
};
}
-95
View File
@@ -1,95 +0,0 @@
import ciInfo from "ci-info";
import ollama, { type ModelResponse } from "ollama";
import { red } from "picocolors";
import prompts from "prompts";
import { ModelConfigParams } from ".";
import { questionHandlers, toChoice } from "../../questions";
type ModelData = {
dimensions: number;
};
const MODELS = ["llama3:8b", "wizardlm2:7b", "gemma:7b", "phi3"];
const DEFAULT_MODEL = MODELS[0];
// TODO: get embedding vector dimensions from the ollama sdk (currently not supported)
const EMBEDDING_MODELS: Record<string, ModelData> = {
"nomic-embed-text": { dimensions: 768 },
"mxbai-embed-large": { dimensions: 1024 },
"all-minilm": { dimensions: 384 },
};
const DEFAULT_EMBEDDING_MODEL: string = Object.keys(EMBEDDING_MODELS)[0];
type OllamaQuestionsParams = {
askModels: boolean;
};
export async function askOllamaQuestions({
askModels,
}: OllamaQuestionsParams): Promise<ModelConfigParams> {
const config: ModelConfigParams = {
model: DEFAULT_MODEL,
embeddingModel: DEFAULT_EMBEDDING_MODEL,
dimensions: EMBEDDING_MODELS[DEFAULT_EMBEDDING_MODEL].dimensions,
isConfigured(): boolean {
return true;
},
};
// use default model values in CI or if user should not be asked
const useDefaults = ciInfo.isCI || !askModels;
if (!useDefaults) {
const { model } = await prompts(
{
type: "select",
name: "model",
message: "Which LLM model would you like to use?",
choices: MODELS.map(toChoice),
initial: 0,
},
questionHandlers,
);
await ensureModel(model);
config.model = model;
const { embeddingModel } = await prompts(
{
type: "select",
name: "embeddingModel",
message: "Which embedding model would you like to use?",
choices: Object.keys(EMBEDDING_MODELS).map(toChoice),
initial: 0,
},
questionHandlers,
);
await ensureModel(embeddingModel);
config.embeddingModel = embeddingModel;
config.dimensions = EMBEDDING_MODELS[embeddingModel].dimensions;
}
return config;
}
async function ensureModel(modelName: string) {
try {
if (modelName.split(":").length === 1) {
// model doesn't have a version suffix, use latest
modelName = modelName + ":latest";
}
const { models } = await ollama.list();
const found =
models.find((model: ModelResponse) => model.name === modelName) !==
undefined;
if (!found) {
console.log(
red(
`Model ${modelName} was not pulled yet. Call 'ollama pull ${modelName}' and try again.`,
),
);
process.exit(1);
}
} catch (error) {
console.log(
red("Listing Ollama models failed. Is 'ollama' running? " + error),
);
process.exit(1);
}
}
-144
View File
@@ -1,144 +0,0 @@
import ciInfo from "ci-info";
import got from "got";
import ora from "ora";
import { red } from "picocolors";
import prompts from "prompts";
import { ModelConfigParams, ModelConfigQuestionsParams } from ".";
import { questionHandlers } from "../../questions";
const OPENAI_API_URL = "https://api.openai.com/v1";
const DEFAULT_MODEL = "gpt-3.5-turbo";
const DEFAULT_EMBEDDING_MODEL = "text-embedding-3-large";
export async function askOpenAIQuestions({
openAiKey,
askModels,
}: ModelConfigQuestionsParams): Promise<ModelConfigParams> {
const config: ModelConfigParams = {
apiKey: openAiKey,
model: DEFAULT_MODEL,
embeddingModel: DEFAULT_EMBEDDING_MODEL,
dimensions: getDimensions(DEFAULT_EMBEDDING_MODEL),
isConfigured(): boolean {
if (config.apiKey) {
return true;
}
if (process.env["OPENAI_API_KEY"]) {
return true;
}
return false;
},
};
if (!config.apiKey) {
const { key } = await prompts(
{
type: "text",
name: "key",
message: askModels
? "Please provide your OpenAI API key (or leave blank to use OPENAI_API_KEY env variable):"
: "Please provide your OpenAI API key (leave blank to skip):",
validate: (value: string) => {
if (askModels && !value) {
if (process.env.OPENAI_API_KEY) {
return true;
}
return "OPENAI_API_KEY env variable is not set - key is required";
}
return true;
},
},
questionHandlers,
);
config.apiKey = key || process.env.OPENAI_API_KEY;
}
// use default model values in CI or if user should not be asked
const useDefaults = ciInfo.isCI || !askModels;
if (!useDefaults) {
const { model } = await prompts(
{
type: "select",
name: "model",
message: "Which LLM model would you like to use?",
choices: await getAvailableModelChoices(false, config.apiKey),
initial: 0,
},
questionHandlers,
);
config.model = model;
const { embeddingModel } = await prompts(
{
type: "select",
name: "embeddingModel",
message: "Which embedding model would you like to use?",
choices: await getAvailableModelChoices(true, config.apiKey),
initial: 0,
},
questionHandlers,
);
config.embeddingModel = embeddingModel;
config.dimensions = getDimensions(embeddingModel);
}
return config;
}
async function getAvailableModelChoices(
selectEmbedding: boolean,
apiKey?: string,
) {
if (!apiKey) {
throw new Error("need OpenAI key to retrieve model choices");
}
const isLLMModel = (modelId: string) => {
return modelId.startsWith("gpt");
};
const isEmbeddingModel = (modelId: string) => {
return modelId.includes("embedding");
};
const spinner = ora("Fetching available models").start();
try {
const response = await got(`${OPENAI_API_URL}/models`, {
headers: {
Authorization: "Bearer " + apiKey,
},
timeout: 5000,
responseType: "json",
});
const data: any = await response.body;
spinner.stop();
return data.data
.filter((model: any) =>
selectEmbedding ? isEmbeddingModel(model.id) : isLLMModel(model.id),
)
.map((el: any) => {
return {
title: el.id,
value: el.id,
};
});
} catch (error) {
spinner.stop();
if ((error as any).response?.statusCode === 401) {
console.log(
red(
"Invalid OpenAI API key provided! Please provide a valid key and try again!",
),
);
} else {
console.log(red("Request failed: " + error));
}
process.exit(1);
}
}
function getDimensions(modelName: string) {
// at 2024-04-24 all OpenAI embedding models support 1536 dimensions except
// "text-embedding-3-large", see https://openai.com/blog/new-embedding-models-and-api-updates
return modelName === "text-embedding-3-large" ? 1024 : 1536;
}
-8
View File
@@ -1,8 +0,0 @@
/* Function to conditionally load the global-agent/bootstrap module */
export async function initializeGlobalAgent() {
if (process.env.GLOBAL_AGENT_HTTP_PROXY) {
/* Dynamically import global-agent/bootstrap */
await import("global-agent/bootstrap");
console.log("Proxy enabled via global-agent.");
}
}
+113 -165
View File
@@ -3,14 +3,13 @@ import path from "path";
import { cyan, red } from "picocolors";
import { parse, stringify } from "smol-toml";
import terminalLink from "terminal-link";
import { assetRelocator, copy } from "./copy";
import { copy } from "./copy";
import { templatesDir } from "./dir";
import { isPoetryAvailable, tryPoetryInstall } from "./poetry";
import { Tool } from "./tools";
import {
FileSourceConfig,
InstallTemplateArgs,
ModelConfig,
TemplateDataSource,
TemplateVectorDB,
} from "./types";
@@ -22,9 +21,8 @@ interface Dependency {
}
const getAdditionalDependencies = (
modelConfig: ModelConfig,
vectorDb?: TemplateVectorDB,
dataSources?: TemplateDataSource[],
dataSource?: TemplateDataSource,
tools?: Tool[],
) => {
const dependencies: Dependency[] = [];
@@ -43,7 +41,6 @@ const getAdditionalDependencies = (
name: "llama-index-vector-stores-postgres",
version: "^0.1.1",
});
break;
}
case "pinecone": {
dependencies.push({
@@ -57,118 +54,32 @@ const getAdditionalDependencies = (
name: "llama-index-vector-stores-milvus",
version: "^0.1.6",
});
dependencies.push({
name: "pymilvus",
version: "2.3.7",
});
break;
}
case "astra": {
dependencies.push({
name: "llama-index-vector-stores-astra-db",
version: "^0.1.5",
});
break;
}
case "qdrant": {
dependencies.push({
name: "llama-index-vector-stores-qdrant",
version: "^0.2.8",
});
break;
}
case "chroma": {
dependencies.push({
name: "llama-index-vector-stores-chroma",
version: "^0.1.8",
});
break;
}
}
// Add data source dependencies
if (dataSources) {
for (const ds of dataSources) {
const dsType = ds?.type;
switch (dsType) {
case "file":
dependencies.push({
name: "docx2txt",
version: "^0.8",
});
break;
case "web":
dependencies.push({
name: "llama-index-readers-web",
version: "^0.1.6",
});
break;
case "db":
dependencies.push({
name: "llama-index-readers-database",
version: "^0.1.3",
});
dependencies.push({
name: "pymysql",
version: "^1.1.0",
extras: ["rsa"],
});
dependencies.push({
name: "psycopg2",
version: "^2.9.9",
});
break;
}
}
const dataSourceType = dataSource?.type;
if (dataSourceType === "file" || dataSourceType === "folder") {
// llama-index-readers-file (pdf, excel, csv) is already included in llama_index package
dependencies.push({
name: "docx2txt",
version: "^0.8",
});
} else if (dataSourceType === "web") {
dependencies.push({
name: "llama-index-readers-web",
version: "^0.1.6",
});
}
// Add tools dependencies
console.log("Adding tools dependencies");
tools?.forEach((tool) => {
tool.dependencies?.forEach((dep) => {
dependencies.push(dep);
});
});
switch (modelConfig.provider) {
case "ollama":
dependencies.push({
name: "llama-index-llms-ollama",
version: "0.1.2",
});
dependencies.push({
name: "llama-index-embeddings-ollama",
version: "0.1.2",
});
break;
case "openai":
dependencies.push({
name: "llama-index-agent-openai",
version: "0.2.2",
});
break;
case "anthropic":
dependencies.push({
name: "llama-index-llms-anthropic",
version: "0.1.10",
});
dependencies.push({
name: "llama-index-embeddings-huggingface",
version: "0.2.0",
});
break;
case "gemini":
dependencies.push({
name: "llama-index-llms-gemini",
version: "0.1.7",
});
dependencies.push({
name: "llama-index-embeddings-gemini",
version: "0.1.6",
});
break;
}
return dependencies;
};
@@ -262,97 +173,134 @@ export const installPythonTemplate = async ({
root,
template,
framework,
engine,
vectorDb,
dataSources,
tools,
postInstallAction,
observability,
modelConfig,
}: Pick<
InstallTemplateArgs,
| "root"
| "framework"
| "template"
| "engine"
| "vectorDb"
| "dataSources"
| "tools"
| "postInstallAction"
| "observability"
| "modelConfig"
>) => {
console.log("\nInitializing Python project with template:", template, "\n");
const templatePath = path.join(templatesDir, "types", template, framework);
await copy("**", root, {
parents: true,
cwd: templatePath,
rename: assetRelocator,
rename(name) {
switch (name) {
case "gitignore": {
return `.${name}`;
}
// README.md is ignored by webpack-asset-relocator-loader used by ncc:
// https://github.com/vercel/webpack-asset-relocator-loader/blob/e9308683d47ff507253e37c9bcbb99474603192b/src/asset-relocator.js#L227
case "README-template.md": {
return "README.md";
}
default: {
return name;
}
}
},
});
const compPath = path.join(templatesDir, "components");
const enginePath = path.join(root, "app", "engine");
if (engine === "context") {
const enginePath = path.join(root, "app", "engine");
const compPath = path.join(templatesDir, "components");
// Copy selected vector DB
await copy("**", enginePath, {
parents: true,
cwd: path.join(compPath, "vectordbs", "python", vectorDb ?? "none"),
});
// Copy all loaders to enginePath
const loaderPath = path.join(enginePath, "loaders");
await copy("**", loaderPath, {
parents: true,
cwd: path.join(compPath, "loaders", "python"),
});
// Select and copy engine code based on data sources and tools
let engine;
tools = tools ?? [];
if (dataSources.length > 0 && tools.length === 0) {
console.log("\nNo tools selected - use optimized context chat engine\n");
engine = "chat";
} else {
engine = "agent";
}
await copy("**", enginePath, {
parents: true,
cwd: path.join(compPath, "engines", "python", engine),
});
console.log("Adding additional dependencies");
const addOnDependencies = getAdditionalDependencies(
modelConfig,
vectorDb,
dataSources,
tools,
);
if (observability === "opentelemetry") {
addOnDependencies.push({
name: "traceloop-sdk",
version: "^0.15.11",
});
const templateObservabilityPath = path.join(
templatesDir,
"components",
"observability",
const vectorDbDirName = vectorDb ?? "none";
const VectorDBPath = path.join(
compPath,
"vectordbs",
"python",
"opentelemetry",
vectorDbDirName,
);
await copy("**", path.join(root, "app"), {
cwd: templateObservabilityPath,
await copy("**", enginePath, {
parents: true,
cwd: VectorDBPath,
});
// Copy engine code
if (tools !== undefined && tools.length > 0) {
await copy("**", enginePath, {
parents: true,
cwd: path.join(compPath, "engines", "python", "agent"),
});
// Write tools_config.json
const configContent: Record<string, any> = {};
tools.forEach((tool) => {
configContent[tool.name] = tool.config ?? {};
});
const configFilePath = path.join(root, "tools_config.json");
await fs.writeFile(
configFilePath,
JSON.stringify(configContent, null, 2),
);
} else {
await copy("**", enginePath, {
parents: true,
cwd: path.join(compPath, "engines", "python", "chat"),
});
}
if (dataSources.length > 0 || dataSources[0].type !== "none") {
// Copy loader.py file to enginePath
await copy("loader.py", enginePath, {
parents: true,
cwd: path.join(compPath, "loaders", "python"),
});
// Copy data source loaders
const loaderPath = path.join(enginePath, "loaders");
for (const source of dataSources) {
const sourceType = source.type;
if (sourceType === "file" || sourceType === "folder") {
const sourceConfig = source.config as FileSourceConfig;
const loaderFolder = sourceConfig.useLlamaParse
? "llama_parse"
: "file";
await copy("**", loaderPath, {
parents: true,
cwd: path.join(compPath, "loaders", "python", loaderFolder),
});
} else {
await copy("**", loaderPath, {
parents: true,
cwd: path.join(compPath, "loaders", "python", sourceType),
});
}
}
}
// const dataSourceType = dataSource?.type;
// if (dataSourceType !== undefined && dataSourceType !== "none") {
// let loaderFolder: string;
// if (dataSourceType === "file" || dataSourceType === "folder") {
// const dataSourceConfig = dataSource?.config as FileSourceConfig;
// loaderFolder = dataSourceConfig.useLlamaParse ? "llama_parse" : "file";
// } else {
// loaderFolder = dataSourceType;
// }
// await copy("**", enginePath, {
// parents: true,
// cwd: path.join(compPath, "loaders", "python", loaderFolder),
// });
// }
}
const addOnDependencies = dataSources
.map((ds) => getAdditionalDependencies(vectorDb, ds, tools))
.flat();
await addDependencies(root, addOnDependencies);
if (postInstallAction === "runApp" || postInstallAction === "dependencies") {
installPythonDependencies();
}
// Copy deployment files for python
await copy("**", root, {
cwd: path.join(compPath, "deployments", "python"),
});
};
-119
View File
@@ -1,28 +1,11 @@
import fs from "fs/promises";
import path from "path";
import { red } from "picocolors";
import yaml from "yaml";
import { EnvVar } from "./env-variables";
import { makeDir } from "./make-dir";
import { TemplateFramework } from "./types";
export const TOOL_SYSTEM_PROMPT_ENV_VAR = "TOOL_SYSTEM_PROMPT";
export enum ToolType {
LLAMAHUB = "llamahub",
LOCAL = "local",
}
export type Tool = {
display: string;
name: string;
config?: Record<string, any>;
dependencies?: ToolDependencies[];
supportedFrameworks?: Array<TemplateFramework>;
type: ToolType;
envVars?: EnvVar[];
};
export type ToolDependencies = {
name: string;
version?: string;
@@ -44,15 +27,6 @@ export const supportedTools: Tool[] = [
version: "0.1.2",
},
],
supportedFrameworks: ["fastapi"],
type: ToolType.LLAMAHUB,
envVars: [
{
name: TOOL_SYSTEM_PROMPT_ENV_VAR,
description: "System prompt for google search tool.",
value: `You are a Google search agent. You help users to get information from Google search.`,
},
],
},
{
display: "Wikipedia",
@@ -63,59 +37,6 @@ export const supportedTools: Tool[] = [
version: "0.1.2",
},
],
supportedFrameworks: ["fastapi", "express", "nextjs"],
type: ToolType.LLAMAHUB,
envVars: [
{
name: TOOL_SYSTEM_PROMPT_ENV_VAR,
description: "System prompt for wiki tool.",
value: `You are a Wikipedia agent. You help users to get information from Wikipedia.`,
},
],
},
{
display: "Weather",
name: "weather",
dependencies: [],
supportedFrameworks: ["fastapi", "express", "nextjs"],
type: ToolType.LOCAL,
envVars: [
{
name: TOOL_SYSTEM_PROMPT_ENV_VAR,
description: "System prompt for weather tool.",
value: `You are a weather forecast agent. You help users to get the weather forecast for a given location.`,
},
],
},
{
display: "Code Interpreter",
name: "interpreter",
dependencies: [
{
name: "e2b_code_interpreter",
version: "0.0.7",
},
],
supportedFrameworks: ["fastapi", "express", "nextjs"],
type: ToolType.LOCAL,
envVars: [
{
name: "E2B_API_KEY",
description:
"E2B_API_KEY key is required to run code interpreter tool. Get it here: https://e2b.dev/docs/getting-started/api-key",
},
{
name: TOOL_SYSTEM_PROMPT_ENV_VAR,
description: "System prompt for code interpreter tool.",
value: `You are a Python interpreter.
- You are given tasks to complete and you run python code to solve them.
- The python code runs in a Jupyter notebook. Every time you call \`interpreter\` tool, the python code is executed in a separate cell. It's okay to make multiple calls to \`interpreter\`.
- Display visualizations using matplotlib or any other visualization library directly in the notebook. Shouldn't save the visualizations to a file, just return the base64 encoded data.
- You can install any pip package (if it exists) if you need to but the usual packages for data analysis are already preinstalled.
- You can run any python code you want in a secure environment.
- Use absolute url from result to display images or any other media.`,
},
],
},
];
@@ -148,43 +69,3 @@ export const toolsRequireConfig = (tools?: Tool[]): boolean => {
}
return false;
};
export enum ConfigFileType {
YAML = "yaml",
JSON = "json",
}
export const writeToolsConfig = async (
root: string,
tools: Tool[] = [],
type: ConfigFileType = ConfigFileType.YAML,
) => {
if (tools.length === 0) return; // no tools selected, no config need
const configContent: {
[key in ToolType]: Record<string, any>;
} = {
local: {},
llamahub: {},
};
tools.forEach((tool) => {
if (tool.type === ToolType.LLAMAHUB) {
configContent.llamahub[tool.name] = tool.config ?? {};
}
if (tool.type === ToolType.LOCAL) {
configContent.local[tool.name] = tool.config ?? {};
}
});
const configPath = path.join(root, "config");
await makeDir(configPath);
if (type === ConfigFileType.YAML) {
await fs.writeFile(
path.join(configPath, "tools.yaml"),
yaml.stringify(configContent),
);
} else {
await fs.writeFile(
path.join(configPath, "tools.json"),
JSON.stringify(configContent, null, 2),
);
}
};
+12 -33
View File
@@ -1,27 +1,11 @@
import { PackageManager } from "../helpers/get-pkg-manager";
import { Tool } from "./tools";
export type ModelProvider = "openai" | "ollama" | "anthropic" | "gemini";
export type ModelConfig = {
provider: ModelProvider;
apiKey?: string;
model: string;
embeddingModel: string;
dimensions: number;
isConfigured(): boolean;
};
export type TemplateType = "streaming" | "community" | "llamapack";
export type TemplateType = "simple" | "streaming" | "community" | "llamapack";
export type TemplateFramework = "nextjs" | "express" | "fastapi";
export type TemplateEngine = "simple" | "context";
export type TemplateUI = "html" | "shadcn";
export type TemplateVectorDB =
| "none"
| "mongo"
| "pg"
| "pinecone"
| "milvus"
| "astra"
| "qdrant"
| "chroma";
export type TemplateVectorDB = "none" | "mongo" | "pg" | "pinecone" | "milvus";
export type TemplatePostInstallAction =
| "none"
| "VSCode"
@@ -31,26 +15,18 @@ export type TemplateDataSource = {
type: TemplateDataSourceType;
config: TemplateDataSourceConfig;
};
export type TemplateDataSourceType = "file" | "web" | "db";
export type TemplateDataSourceType = "none" | "file" | "folder" | "web";
export type TemplateObservability = "none" | "opentelemetry";
// Config for both file and folder
export type FileSourceConfig = {
path: string;
paths?: string[];
useLlamaParse?: boolean;
};
export type WebSourceConfig = {
baseUrl?: string;
prefix?: string;
depth?: number;
};
export type DbSourceConfig = {
uri?: string;
queries?: string;
};
export type TemplateDataSourceConfig =
| FileSourceConfig
| WebSourceConfig
| DbSourceConfig;
export type TemplateDataSourceConfig = FileSourceConfig | WebSourceConfig;
export type CommunityProjectConfig = {
owner: string;
@@ -66,12 +42,15 @@ export interface InstallTemplateArgs {
isOnline: boolean;
template: TemplateType;
framework: TemplateFramework;
engine: TemplateEngine;
ui: TemplateUI;
dataSources: TemplateDataSource[];
eslint: boolean;
customApiPath?: string;
modelConfig: ModelConfig;
openAiKey?: string;
llamaCloudKey?: string;
useLlamaParse?: boolean;
model: string;
embeddingModel: string;
communityProjectConfig?: CommunityProjectConfig;
llamapack?: string;
vectorDb?: TemplateVectorDB;
+100 -107
View File
@@ -2,12 +2,50 @@ import fs from "fs/promises";
import os from "os";
import path from "path";
import { bold, cyan } from "picocolors";
import { assetRelocator, copy } from "../helpers/copy";
import { copy } from "../helpers/copy";
import { callPackageManager } from "../helpers/install";
import { templatesDir } from "./dir";
import { PackageManager } from "./get-pkg-manager";
import { InstallTemplateArgs } from "./types";
const rename = (name: string) => {
switch (name) {
case "gitignore":
case "eslintrc.json": {
return `.${name}`;
}
// README.md is ignored by webpack-asset-relocator-loader used by ncc:
// https://github.com/vercel/webpack-asset-relocator-loader/blob/e9308683d47ff507253e37c9bcbb99474603192b/src/asset-relocator.js#L227
case "README-template.md": {
return "README.md";
}
default: {
return name;
}
}
};
export const installTSDependencies = async (
packageJson: any,
packageManager: PackageManager,
isOnline: boolean,
): Promise<void> => {
console.log("\nInstalling dependencies:");
for (const dependency in packageJson.dependencies)
console.log(`- ${cyan(dependency)}`);
console.log("\nInstalling devDependencies:");
for (const dependency in packageJson.devDependencies)
console.log(`- ${cyan(dependency)}`);
console.log();
await callPackageManager(packageManager, isOnline).catch((error) => {
console.error("Failed to install TS dependencies. Exiting...");
process.exit(1);
});
};
/**
* Install a LlamaIndex internal template to a given `root` directory.
*/
@@ -18,14 +56,14 @@ export const installTSTemplate = async ({
isOnline,
template,
framework,
engine,
ui,
eslint,
customApiPath,
vectorDb,
postInstallAction,
backend,
observability,
tools,
dataSources,
useLlamaParse,
}: InstallTemplateArgs & { backend: boolean }) => {
console.log(bold(`Using ${packageManager}.`));
@@ -35,11 +73,12 @@ export const installTSTemplate = async ({
console.log("\nInitializing project with template:", template, "\n");
const templatePath = path.join(templatesDir, "types", template, framework);
const copySource = ["**"];
if (!eslint) copySource.push("!eslintrc.json");
await copy(copySource, root, {
parents: true,
cwd: templatePath,
rename: assetRelocator,
rename,
});
/**
@@ -79,7 +118,6 @@ export const installTSTemplate = async ({
}
}
// copy observability component
if (observability && observability !== "none") {
const chosenObservabilityPath = path.join(
templatesDir,
@@ -97,40 +135,36 @@ export const installTSTemplate = async ({
);
}
/**
* Copy the selected chat engine files to the target directory and reference it.
*/
let relativeEngineDestPath;
const compPath = path.join(templatesDir, "components");
const relativeEngineDestPath =
framework === "nextjs"
? path.join("app", "api", "chat")
: path.join("src", "controllers");
const enginePath = path.join(root, relativeEngineDestPath, "engine");
if (engine && (framework === "express" || framework === "nextjs")) {
console.log("\nUsing chat engine:", engine, "\n");
// copy vector db component
console.log("\nUsing vector DB:", vectorDb ?? "none", "\n");
await copy("**", enginePath, {
parents: true,
cwd: path.join(compPath, "vectordbs", "typescript", vectorDb ?? "none"),
});
let vectorDBFolder: string = engine;
// copy loader component (TS only supports llama_parse and file for now)
const loaderFolder = useLlamaParse ? "llama_parse" : "file";
await copy("**", enginePath, {
parents: true,
cwd: path.join(compPath, "loaders", "typescript", loaderFolder),
});
if (engine !== "simple" && vectorDb) {
console.log("\nUsing vector DB:", vectorDb, "\n");
vectorDBFolder = vectorDb;
}
// Select and copy engine code based on data sources and tools
let engine;
tools = tools ?? [];
if (dataSources.length > 0 && tools.length === 0) {
console.log("\nNo tools selected - use optimized context chat engine\n");
engine = "chat";
} else {
engine = "agent";
const VectorDBPath = path.join(
compPath,
"vectordbs",
"typescript",
vectorDBFolder,
);
relativeEngineDestPath =
framework === "nextjs"
? path.join("app", "api", "chat")
: path.join("src", "controllers");
await copy("**", path.join(root, relativeEngineDestPath, "engine"), {
parents: true,
cwd: VectorDBPath,
});
}
await copy("**", enginePath, {
parents: true,
cwd: path.join(compPath, "engines", "typescript", engine),
});
/**
* Copy the selected UI files to the target directory and reference it.
@@ -145,54 +179,13 @@ export const installTSTemplate = async ({
await copy("**", destUiPath, {
parents: true,
cwd: uiPath,
rename: assetRelocator,
rename,
});
}
/** Modify frontend code to use custom API path */
if (framework === "nextjs" && !backend) {
console.log(
"\nUsing external API for frontend, removing API code and configuration\n",
);
// remove the default api folder and config folder
await fs.rm(path.join(root, "app", "api"), { recursive: true });
await fs.rm(path.join(root, "config"), { recursive: true, force: true });
}
const packageJson = await updatePackageJson({
root,
appName,
dataSources,
relativeEngineDestPath,
framework,
ui,
observability,
});
if (postInstallAction === "runApp" || postInstallAction === "dependencies") {
await installTSDependencies(packageJson, packageManager, isOnline);
}
// Copy deployment files for typescript
await copy("**", root, {
cwd: path.join(compPath, "deployments", "typescript"),
});
};
async function updatePackageJson({
root,
appName,
dataSources,
relativeEngineDestPath,
framework,
ui,
observability,
}: Pick<
InstallTemplateArgs,
"root" | "appName" | "dataSources" | "framework" | "ui" | "observability"
> & {
relativeEngineDestPath: string;
}): Promise<any> {
/**
* Update the package.json scripts.
*/
const packageJsonFile = path.join(root, "package.json");
const packageJson: any = JSON.parse(
await fs.readFile(packageJsonFile, "utf8"),
@@ -200,15 +193,26 @@ async function updatePackageJson({
packageJson.name = appName;
packageJson.version = "0.1.0";
if (relativeEngineDestPath) {
// TODO: move script to {root}/scripts for all frameworks
if (framework === "nextjs" && customApiPath) {
console.log(
"\nUsing external API with custom API path:",
customApiPath,
"\n",
);
// remove the default api folder
const apiPath = path.join(root, "app", "api");
await fs.rm(apiPath, { recursive: true });
// modify the dev script to use the custom api path
}
if (engine === "context" && relativeEngineDestPath) {
// add generate script if using context engine
packageJson.scripts = {
...packageJson.scripts,
generate: `tsx ${path.join(
generate: `node ${path.join(
relativeEngineDestPath,
"engine",
"generate.ts",
"generate.mjs",
)}`,
};
}
@@ -248,31 +252,20 @@ async function updatePackageJson({
};
}
if (!eslint) {
// Remove packages starting with "eslint" from devDependencies
packageJson.devDependencies = Object.fromEntries(
Object.entries(packageJson.devDependencies).filter(
([key]) => !key.startsWith("eslint"),
),
);
}
await fs.writeFile(
packageJsonFile,
JSON.stringify(packageJson, null, 2) + os.EOL,
);
return packageJson;
}
async function installTSDependencies(
packageJson: any,
packageManager: PackageManager,
isOnline: boolean,
): Promise<void> {
console.log("\nInstalling dependencies:");
for (const dependency in packageJson.dependencies)
console.log(`- ${cyan(dependency)}`);
console.log("\nInstalling devDependencies:");
for (const dependency in packageJson.devDependencies)
console.log(`- ${cyan(dependency)}`);
console.log();
await callPackageManager(packageManager, isOnline).catch((error) => {
console.error("Failed to install TS dependencies. Exiting...");
process.exit(1);
});
}
if (postInstallAction === "runApp" || postInstallAction === "dependencies") {
await installTSDependencies(packageJson, packageManager, isOnline);
}
};
+45 -41
View File
@@ -1,3 +1,4 @@
#!/usr/bin/env node
/* eslint-disable import/no-extraneous-dependencies */
import { execSync } from "child_process";
import Commander from "commander";
@@ -9,19 +10,14 @@ import prompts from "prompts";
import terminalLink from "terminal-link";
import checkForUpdate from "update-check";
import { createApp } from "./create-app";
import { getDataSources } from "./helpers/datasources";
import { getPkgManager } from "./helpers/get-pkg-manager";
import { isFolderEmpty } from "./helpers/is-folder-empty";
import { initializeGlobalAgent } from "./helpers/proxy";
import { runApp } from "./helpers/run-app";
import { getTools } from "./helpers/tools";
import { validateNpmName } from "./helpers/validate-pkg";
import packageJson from "./package.json";
import { QuestionArgs, askQuestions, onPromptState } from "./questions";
// Run the initialization function
initializeGlobalAgent();
let projectPath: string = "";
const handleSigTerm = () => process.exit(0);
@@ -36,6 +32,13 @@ const program = new Commander.Command(packageJson.name)
.action((name) => {
projectPath = name;
})
.option(
"--eslint",
`
Initialize with eslint config.
`,
)
.option(
"--use-npm",
`
@@ -69,6 +72,13 @@ const program = new Commander.Command(packageJson.name)
`
Select a template to bootstrap the application with.
`,
)
.option(
"--engine <engine>",
`
Select a chat engine to bootstrap the application with.
`,
)
.option(
@@ -82,14 +92,7 @@ const program = new Commander.Command(packageJson.name)
"--files <path>",
`
Specify the path to a local file or folder for chatting.
`,
)
.option(
"--example-file",
`
Select to use an example PDF as data source.
Specify the path to a local file or folder for chatting.
`,
)
.option(
@@ -111,6 +114,19 @@ const program = new Commander.Command(packageJson.name)
`
Whether to generate a frontend for your backend.
`,
)
.option(
"--model <model>",
`
Select OpenAI model to use. E.g. gpt-3.5-turbo.
`,
)
.option(
"--embedding-model <embeddingModel>",
`
Select OpenAI embedding model to use. E.g. text-embedding-ada-002.
`,
)
.option(
@@ -149,38 +165,33 @@ const program = new Commander.Command(packageJson.name)
`,
)
.option(
"--use-llama-parse",
"--llama-parse",
`
Enable LlamaParse.
Enable LlamaParse.
`,
)
.option(
"--llama-cloud-key <key>",
`
Provide a LlamaCloud API key.
`,
)
.option(
"--observability <observability>",
`
Specify observability tools to use. Eg: none, opentelemetry
`,
"--list-server-models",
"Fetch available LLM and embedding models from OpenAI API.",
)
.option(
"--ask-models",
`
Select LLM and embedding models.
`,
"--observability <observability>",
"Specify observability tools to use. Eg: none, opentelemetry",
)
.allowUnknownOption()
.parse(process.argv);
if (process.argv.includes("--no-frontend")) {
program.frontend = false;
}
if (process.argv.includes("--no-eslint")) {
program.eslint = false;
}
if (process.argv.includes("--tools")) {
if (program.tools === "none") {
program.tools = [];
@@ -189,13 +200,7 @@ if (process.argv.includes("--tools")) {
}
}
if (process.argv.includes("--no-llama-parse")) {
program.useLlamaParse = false;
}
program.askModels = process.argv.includes("--ask-models");
if (process.argv.includes("--no-files")) {
program.dataSources = [];
} else {
program.dataSources = getDataSources(program.files, program.exampleFile);
program.llamaParse = false;
}
const packageManager = !!program.useNpm
@@ -278,21 +283,21 @@ async function run(): Promise<void> {
}
const preferences = (conf.get("preferences") || {}) as QuestionArgs;
await askQuestions(
program as unknown as QuestionArgs,
preferences,
program.openAiKey,
);
await askQuestions(program as unknown as QuestionArgs, preferences);
await createApp({
template: program.template,
framework: program.framework,
engine: program.engine,
ui: program.ui,
appPath: resolvedProjectPath,
packageManager,
eslint: program.eslint,
frontend: program.frontend,
modelConfig: program.modelConfig,
openAiKey: program.openAiKey,
llamaCloudKey: program.llamaCloudKey,
model: program.model,
embeddingModel: program.embeddingModel,
communityProjectConfig: program.communityProjectConfig,
llamapack: program.llamapack,
vectorDb: program.vectorDb,
@@ -300,7 +305,6 @@ async function run(): Promise<void> {
postInstallAction: program.postInstallAction,
dataSources: program.dataSources,
tools: program.tools,
useLlamaParse: program.useLlamaParse,
observability: program.observability,
});
conf.set("preferences", preferences);
+15 -26
View File
@@ -1,12 +1,12 @@
{
"name": "create-llama",
"version": "0.1.8",
"description": "Create LlamaIndex-powered apps with one command",
"version": "0.0.29",
"keywords": [
"rag",
"llamaindex",
"next.js"
],
"description": "Create LlamaIndex-powered apps with one command",
"repository": {
"type": "git",
"url": "https://github.com/run-llama/LlamaIndexTS",
@@ -20,30 +20,27 @@
"dist"
],
"scripts": {
"build": "bash ./scripts/build.sh",
"build:ncc": "pnpm run clean && ncc build ./index.ts -o ./dist/ --minify --no-cache --no-source-map-register",
"clean": "rimraf --glob ./dist ./templates/**/__pycache__ ./templates/**/node_modules ./templates/**/poetry.lock",
"dev": "ncc build ./index.ts -w -o dist/",
"e2e": "playwright test",
"format": "prettier --ignore-unknown --cache --check .",
"format:write": "prettier --ignore-unknown --write .",
"dev": "ncc build ./index.ts -w -o dist/",
"build": "npm run clean && ncc build ./index.ts -o ./dist/ --minify --no-cache --no-source-map-register",
"lint": "eslint . --ignore-pattern dist --ignore-pattern e2e/cache",
"new-snapshot": "pnpm run build && changeset version --snapshot",
"new-version": "pnpm run build && changeset version",
"pack-install": "bash ./scripts/pack.sh",
"e2e": "playwright test",
"prepare": "husky",
"release": "pnpm run build && changeset publish",
"release-snapshot": "pnpm run build && changeset publish --tag snapshot"
"new-version": "pnpm run build && changeset version"
},
"dependencies": {
"devDependencies": {
"@playwright/test": "^1.41.1",
"@types/async-retry": "1.4.2",
"@types/ci-info": "2.0.0",
"@types/cross-spawn": "6.0.0",
"@types/fs-extra": "11.0.4",
"@types/node": "^20.11.7",
"@types/prompts": "2.0.1",
"@types/tar": "6.1.5",
"@types/validate-npm-package-name": "3.0.0",
"@vercel/ncc": "0.38.1",
"async-retry": "1.3.1",
"async-sema": "3.0.1",
"ci-info": "github:watson/ci-info#f43f6a1cefff47fb361c88cf4b943fdbcaafe540",
@@ -51,35 +48,27 @@
"conf": "10.2.0",
"cross-spawn": "7.0.3",
"fast-glob": "3.3.1",
"fs-extra": "11.2.0",
"global-agent": "^3.0.0",
"got": "10.7.0",
"ollama": "^0.5.0",
"ora": "^8.0.1",
"picocolors": "1.0.0",
"prompts": "2.1.0",
"rimraf": "^5.0.5",
"smol-toml": "^1.1.4",
"tar": "6.1.15",
"terminal-link": "^3.0.0",
"update-check": "1.5.4",
"validate-npm-package-name": "3.0.0",
"yaml": "2.4.1"
},
"devDependencies": {
"wait-port": "^1.1.0",
"@changesets/cli": "^2.27.1",
"@playwright/test": "^1.41.1",
"@vercel/ncc": "0.38.1",
"eslint": "^8.56.0",
"eslint-config-prettier": "^8.10.0",
"husky": "^9.0.10",
"prettier": "^3.2.5",
"prettier-plugin-organize-imports": "^3.2.4",
"rimraf": "^5.0.5",
"typescript": "^5.3.3",
"wait-port": "^1.1.0"
"eslint-config-prettier": "^8.10.0",
"ora": "^8.0.1"
},
"packageManager": "pnpm@9.0.5",
"engines": {
"node": ">=16.14.0"
}
},
"packageManager": "pnpm@8.15.1"
}
+1943 -2610
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File diff suppressed because it is too large Load Diff
+430 -224
View File
@@ -1,28 +1,33 @@
import { execSync } from "child_process";
import ciInfo from "ci-info";
import fs from "fs";
import got from "got";
import ora from "ora";
import path from "path";
import { blue, green, red } from "picocolors";
import prompts from "prompts";
import { InstallAppArgs } from "./create-app";
import {
FileSourceConfig,
TemplateDataSource,
TemplateDataSourceType,
TemplateFramework,
} from "./helpers";
import { COMMUNITY_OWNER, COMMUNITY_REPO } from "./helpers/constant";
import { EXAMPLE_FILE } from "./helpers/datasources";
import { templatesDir } from "./helpers/dir";
import { getAvailableLlamapackOptions } from "./helpers/llama-pack";
import { askModelConfig } from "./helpers/providers";
import { getProjectOptions } from "./helpers/repo";
import { supportedTools, toolsRequireConfig } from "./helpers/tools";
const OPENAI_API_URL = "https://api.openai.com/v1";
export type QuestionArgs = Omit<
InstallAppArgs,
"appPath" | "packageManager"
> & {
askModels?: boolean;
files?: string;
llamaParse?: boolean;
listServerModels?: boolean;
};
const supportedContextFileTypes = [
".pdf",
@@ -57,20 +62,26 @@ if ($result -eq 'OK') {
const WINDOWS_FOLDER_SELECTION_SCRIPT = `
Add-Type -AssemblyName System.windows.forms
$folderBrowser = New-Object System.Windows.Forms.FolderBrowserDialog
$dialogResult = $folderBrowser.ShowDialog()
if ($dialogResult -eq [System.Windows.Forms.DialogResult]::OK)
{
$folderBrowser.SelectedPath
}
$folderBrowser.SelectedPath = [Environment]::GetFolderPath('Desktop')
$folderBrowser.Description = "Please select folders to process:"
$folderBrowser.ShowNewFolderButton = $true
$folderBrowser.RootFolder = [System.Environment+SpecialFolder]::Desktop
$folderBrowser.SelectedPath = [System.IO.Path]::GetFullPath($folderBrowser.SelectedPath)
$folderBrowser.ShowDialog() | Out-Null
$folderBrowser.SelectedPath, $folderBrowser.SelectedPaths
`;
const defaults: Omit<QuestionArgs, "modelConfig"> = {
const defaults: QuestionArgs = {
template: "streaming",
framework: "nextjs",
ui: "shadcn",
engine: "simple",
ui: "html",
eslint: true,
frontend: false,
openAiKey: "",
llamaCloudKey: "",
useLlamaParse: false,
model: "gpt-3.5-turbo",
embeddingModel: "text-embedding-ada-002",
communityProjectConfig: undefined,
llamapack: "",
postInstallAction: "dependencies",
@@ -78,7 +89,7 @@ const defaults: Omit<QuestionArgs, "modelConfig"> = {
tools: [],
};
export const questionHandlers = {
const handlers = {
onCancel: () => {
console.error("Exiting.");
process.exit(1);
@@ -95,9 +106,6 @@ const getVectorDbChoices = (framework: TemplateFramework) => {
{ title: "PostgreSQL", value: "pg" },
{ title: "Pinecone", value: "pinecone" },
{ title: "Milvus", value: "milvus" },
{ title: "Astra", value: "astra" },
{ title: "Qdrant", value: "qdrant" },
{ title: "ChromaDB", value: "chroma" },
];
const vectordbLang = framework === "fastapi" ? "python" : "typescript";
@@ -123,12 +131,12 @@ export const getDataSourceChoices = (
if (selectedDataSource.length > 0) {
choices.push({
title: "No",
value: "no",
value: "none",
});
}
if (selectedDataSource === undefined || selectedDataSource.length === 0) {
choices.push({
title: "No data, just a simple chat or agent",
title: "No data, just a simple chat",
value: "none",
});
choices.push({
@@ -137,30 +145,31 @@ export const getDataSourceChoices = (
});
}
choices.push(
{
if (!selectedDataSource.some((ds) => ds.type === "file")) {
choices.push({
title: `Use local files (${supportedContextFileTypes.join(", ")})`,
value: "file",
},
{
title:
process.platform === "win32"
? "Use a local folder"
: "Use local folders",
value: "folder",
},
);
});
}
if (framework === "fastapi") {
if (!selectedDataSource.some((ds) => ds.type === "folder")) {
choices.push({
title: "Use local folder",
value: "folder",
});
}
if (
!selectedDataSource.some((ds) => ds.type === "web") &&
(process.platform === "win32" || process.platform === "darwin") &&
framework === "fastapi"
) {
choices.push({
title: "Use website content (requires Chrome)",
value: "web",
});
choices.push({
title: "Use data from a database (Mysql, PostgreSQL)",
value: "db",
});
}
return choices;
};
@@ -192,10 +201,9 @@ const selectLocalContextData = async (type: TemplateDataSourceType) => {
process.platform === "win32"
? selectedPath.split("\r\n")
: selectedPath.split(", ");
for (const p of paths) {
if (
fs.statSync(p).isFile() &&
type == "file" &&
!supportedContextFileTypes.includes(path.extname(p))
) {
console.log(
@@ -227,15 +235,85 @@ export const onPromptState = (state: any) => {
}
};
const getAvailableModelChoices = async (
selectEmbedding: boolean,
apiKey?: string,
listServerModels?: boolean,
) => {
const defaultLLMModels = [
"gpt-3.5-turbo-0125",
"gpt-4-turbo-preview",
"gpt-4",
"gpt-4-vision-preview",
];
const defaultEmbeddingModels = [
"text-embedding-ada-002",
"text-embedding-3-small",
"text-embedding-3-large",
];
const isLLMModels = (model_id: string) => {
return model_id.startsWith("gpt");
};
const isEmbeddingModel = (model_id: string) => {
return (
model_id.includes("embedding") ||
defaultEmbeddingModels.includes(model_id)
);
};
if (apiKey && listServerModels) {
const spinner = ora("Fetching available models").start();
try {
const response = await got(`${OPENAI_API_URL}/models`, {
headers: {
Authorization: "Bearer " + apiKey,
},
timeout: 5000,
responseType: "json",
});
const data: any = await response.body;
spinner.stop();
return data.data
.filter((model: any) =>
selectEmbedding ? isEmbeddingModel(model.id) : isLLMModels(model.id),
)
.map((el: any) => {
return {
title: el.id,
value: el.id,
};
});
} catch (error) {
spinner.stop();
if ((error as any).response?.statusCode === 401) {
console.log(
red(
"Invalid OpenAI API key provided! Please provide a valid key and try again!",
),
);
} else {
console.log(red("Request failed: " + error));
}
process.exit(1);
}
} else {
const data = selectEmbedding ? defaultEmbeddingModels : defaultLLMModels;
return data.map((model) => ({
title: model,
value: model,
}));
}
};
export const askQuestions = async (
program: QuestionArgs,
preferences: QuestionArgs,
openAiKey?: string,
) => {
const getPrefOrDefault = <K extends keyof Omit<QuestionArgs, "modelConfig">>(
const getPrefOrDefault = <K extends keyof QuestionArgs>(
field: K,
): Omit<QuestionArgs, "modelConfig">[K] =>
preferences[field] ?? defaults[field];
): QuestionArgs[K] => preferences[field] ?? defaults[field];
// Ask for next action after installation
async function askPostInstallAction() {
@@ -258,19 +336,24 @@ export const askQuestions = async (
},
];
const modelConfigured =
!program.llamapack && program.modelConfig.isConfigured();
const openAiKeyConfigured =
program.openAiKey || process.env["OPENAI_API_KEY"];
// If using LlamaParse, require LlamaCloud API key
const llamaCloudKeyConfigured = program.useLlamaParse
const useLlamaParse = program.dataSources.some(
(ds) =>
ds.type === "file" && (ds.config as FileSourceConfig).useLlamaParse,
);
const llamaCloudKeyConfigured = useLlamaParse
? program.llamaCloudKey || process.env["LLAMA_CLOUD_API_KEY"]
: true;
const hasVectorDb = program.vectorDb && program.vectorDb !== "none";
// Can run the app if all tools do not require configuration
if (
!hasVectorDb &&
modelConfigured &&
openAiKeyConfigured &&
llamaCloudKeyConfigured &&
!toolsRequireConfig(program.tools)
!toolsRequireConfig(program.tools) &&
!program.llamapack
) {
actionChoices.push({
title:
@@ -287,7 +370,7 @@ export const askQuestions = async (
choices: actionChoices,
initial: 1,
},
questionHandlers,
handlers,
);
program.postInstallAction = action;
@@ -308,7 +391,8 @@ export const askQuestions = async (
name: "template",
message: "Which template would you like to use?",
choices: [
{ title: "Chat", value: "streaming" },
{ title: "Chat without streaming", value: "simple" },
{ title: "Chat with streaming", value: "streaming" },
{
title: `Community template from ${styledRepo}`,
value: "community",
@@ -318,9 +402,9 @@ export const askQuestions = async (
value: "llamapack",
},
],
initial: 0,
initial: 1,
},
questionHandlers,
handlers,
);
program.template = template;
preferences.template = template;
@@ -343,7 +427,7 @@ export const askQuestions = async (
})),
initial: 0,
},
questionHandlers,
handlers,
);
const projectConfig = JSON.parse(communityProjectConfig);
program.communityProjectConfig = projectConfig;
@@ -364,7 +448,7 @@ export const askQuestions = async (
})),
initial: 0,
},
questionHandlers,
handlers,
);
program.llamapack = llamapack;
preferences.llamapack = llamapack;
@@ -377,10 +461,13 @@ export const askQuestions = async (
program.framework = getPrefOrDefault("framework");
} else {
const choices = [
{ title: "NextJS", value: "nextjs" },
{ title: "Express", value: "express" },
{ title: "FastAPI (Python)", value: "fastapi" },
];
if (program.template === "streaming") {
// allow NextJS only for streaming template
choices.unshift({ title: "NextJS", value: "nextjs" });
}
const { framework } = await prompts(
{
@@ -390,15 +477,19 @@ export const askQuestions = async (
choices,
initial: 0,
},
questionHandlers,
handlers,
);
program.framework = framework;
preferences.framework = framework;
}
}
if (program.framework === "express" || program.framework === "fastapi") {
if (
program.template === "streaming" &&
(program.framework === "express" || program.framework === "fastapi")
) {
// if a backend-only framework is selected, ask whether we should create a frontend
// (only for streaming backends)
if (program.frontend === undefined) {
if (ciInfo.isCI) {
program.frontend = getPrefOrDefault("frontend");
@@ -430,185 +521,272 @@ export const askQuestions = async (
if (program.framework === "nextjs" || program.frontend) {
if (!program.ui) {
program.ui = defaults.ui;
}
}
if (!program.observability) {
if (ciInfo.isCI) {
program.observability = getPrefOrDefault("observability");
} else {
const { observability } = await prompts(
{
type: "select",
name: "observability",
message: "Would you like to set up observability?",
choices: [
{ title: "No", value: "none" },
{ title: "OpenTelemetry", value: "opentelemetry" },
],
initial: 0,
},
questionHandlers,
);
program.observability = observability;
preferences.observability = observability;
}
}
if (!program.modelConfig) {
const modelConfig = await askModelConfig({
openAiKey,
askModels: program.askModels ?? false,
});
program.modelConfig = modelConfig;
preferences.modelConfig = modelConfig;
}
if (!program.dataSources) {
if (ciInfo.isCI) {
program.dataSources = getPrefOrDefault("dataSources");
} else {
program.dataSources = [];
// continue asking user for data sources if none are initially provided
while (true) {
const firstQuestion = program.dataSources.length === 0;
const { selectedSource } = await prompts(
if (ciInfo.isCI) {
program.ui = getPrefOrDefault("ui");
} else {
const { ui } = await prompts(
{
type: "select",
name: "selectedSource",
message: firstQuestion
? "Which data source would you like to use?"
: "Would you like to add another data source?",
choices: getDataSourceChoices(
program.framework,
program.dataSources,
),
initial: firstQuestion ? 1 : 0,
name: "ui",
message: "Which UI would you like to use?",
choices: [
{ title: "Just HTML", value: "html" },
{ title: "Shadcn", value: "shadcn" },
],
initial: 0,
},
questionHandlers,
handlers,
);
if (selectedSource === "no" || selectedSource === "none") {
// user doesn't want another data source or any data source
break;
}
switch (selectedSource) {
case "exampleFile": {
program.dataSources.push(EXAMPLE_FILE);
break;
}
case "file":
case "folder": {
const selectedPaths = await selectLocalContextData(selectedSource);
for (const p of selectedPaths) {
program.dataSources.push({
type: "file",
config: {
path: p,
},
});
}
break;
}
case "web": {
const { baseUrl } = await prompts(
{
type: "text",
name: "baseUrl",
message: "Please provide base URL of the website: ",
initial: "https://www.llamaindex.ai",
validate: (value: string) => {
if (!value.includes("://")) {
value = `https://${value}`;
}
const urlObj = new URL(value);
if (
urlObj.protocol !== "https:" &&
urlObj.protocol !== "http:"
) {
return `URL=${value} has invalid protocol, only allow http or https`;
}
return true;
},
},
questionHandlers,
);
program.dataSources.push({
type: "web",
config: {
baseUrl,
prefix: baseUrl,
depth: 1,
},
});
break;
}
case "db": {
const dbPrompts: prompts.PromptObject<string>[] = [
{
type: "text",
name: "uri",
message:
"Please enter the connection string (URI) for the database.",
initial: "mysql+pymysql://user:pass@localhost:3306/mydb",
validate: (value: string) => {
if (!value) {
return "Please provide a valid connection string";
} else if (
!(
value.startsWith("mysql+pymysql://") ||
value.startsWith("postgresql+psycopg://")
)
) {
return "The connection string must start with 'mysql+pymysql://' for MySQL or 'postgresql+psycopg://' for PostgreSQL";
}
return true;
},
},
// Only ask for a query, user can provide more complex queries in the config file later
{
type: (prev) => (prev ? "text" : null),
name: "queries",
message: "Please enter the SQL query to fetch data:",
initial: "SELECT * FROM mytable",
},
];
program.dataSources.push({
type: "db",
config: await prompts(dbPrompts, questionHandlers),
});
}
}
program.ui = ui;
preferences.ui = ui;
}
}
}
// Asking for LlamaParse if user selected file or folder data source
if (
program.dataSources.some((ds) => ds.type === "file") &&
program.useLlamaParse === undefined
) {
if (program.framework === "express" || program.framework === "nextjs") {
if (!program.observability) {
if (ciInfo.isCI) {
program.observability = getPrefOrDefault("observability");
} else {
const { observability } = await prompts(
{
type: "select",
name: "observability",
message: "Would you like to set up observability?",
choices: [
{ title: "No", value: "none" },
{ title: "OpenTelemetry", value: "opentelemetry" },
],
initial: 0,
},
handlers,
);
program.observability = observability;
preferences.observability = observability;
}
}
}
if (!program.openAiKey) {
const { key } = await prompts(
{
type: "text",
name: "key",
message: program.listServerModels
? "Please provide your OpenAI API key (or reuse OPENAI_API_KEY env variable):"
: "Please provide your OpenAI API key (leave blank to skip):",
validate: (value: string) => {
if (program.listServerModels && !value) {
if (process.env.OPENAI_API_KEY) {
return true;
}
return "OpenAI API key is required";
}
return true;
},
},
handlers,
);
program.openAiKey = key || process.env.OPENAI_API_KEY;
preferences.openAiKey = key || process.env.OPENAI_API_KEY;
}
if (!program.model) {
if (ciInfo.isCI) {
program.useLlamaParse = getPrefOrDefault("useLlamaParse");
program.llamaCloudKey = getPrefOrDefault("llamaCloudKey");
program.model = getPrefOrDefault("model");
} else {
const { model } = await prompts(
{
type: "select",
name: "model",
message: "Which model would you like to use?",
choices: await getAvailableModelChoices(
false,
program.openAiKey,
program.listServerModels,
),
initial: 0,
},
handlers,
);
program.model = model;
preferences.model = model;
}
}
if (!program.embeddingModel && program.framework === "fastapi") {
if (ciInfo.isCI) {
program.embeddingModel = getPrefOrDefault("embeddingModel");
} else {
const { embeddingModel } = await prompts(
{
type: "select",
name: "embeddingModel",
message: "Which embedding model would you like to use?",
choices: await getAvailableModelChoices(
true,
program.openAiKey,
program.listServerModels,
),
initial: 0,
},
handlers,
);
program.embeddingModel = embeddingModel;
preferences.embeddingModel = embeddingModel;
}
}
if (program.files) {
// If user specified files option, then the program should use context engine
program.engine == "context";
if (!fs.existsSync(program.files)) {
console.log("File or folder not found");
process.exit(1);
} else {
program.dataSources = [
{
type: fs.lstatSync(program.files).isDirectory() ? "folder" : "file",
config: {
paths: program.files.split(","),
},
},
];
}
}
// Asking for data source
if (!program.engine) {
program.dataSources = getPrefOrDefault("dataSources");
if (ciInfo.isCI) {
program.engine = getPrefOrDefault("engine");
} else {
for (let i = 0; i < 2; i++) {
const { selectedSource } = await prompts(
{
type: "select",
name: "selectedSource",
message:
i === 0
? "Which data source would you like to use?"
: "Would you like to add another data source?",
choices: getDataSourceChoices(
program.framework,
program.dataSources,
),
initial: 0,
},
handlers,
);
// Asking for data source config
// Select None data source, No need to config and asking for another data source
if (selectedSource === "none") {
if (selectedSource.length === 0) {
program.dataSources = [
{
type: "none",
config: {},
},
];
}
break;
}
const dataSource = {
type: selectedSource === "exampleFile" ? "folder" : selectedSource,
config: {},
};
// Select local file or folder
if (selectedSource === "file" || selectedSource === "folder") {
const selectedPaths = await selectLocalContextData(selectedSource);
dataSource.config = {
paths: selectedPaths,
};
}
// Selected web data source
else if (selectedSource === "web") {
let { baseUrl } = await prompts(
{
type: "text",
name: "baseUrl",
message: "Please provide base URL of the website:",
initial: "https://www.llamaindex.ai",
},
handlers,
);
try {
if (!baseUrl.includes("://")) {
baseUrl = `https://${baseUrl}`;
}
const checkUrl = new URL(baseUrl);
if (
checkUrl.protocol !== "https:" &&
checkUrl.protocol !== "http:"
) {
throw new Error("Invalid protocol");
}
} catch (error) {
console.log(
red(
"Invalid URL provided! Please provide a valid URL (e.g. https://www.llamaindex.ai)",
),
);
process.exit(1);
}
dataSource.config = {
baseUrl: baseUrl,
depth: 1,
};
}
program.dataSources.push(dataSource);
// No need to ask for another data source if user selected example data
if (selectedSource === "exampleFile") {
break;
}
}
if (
program.dataSources.length === 0 ||
program.dataSources[0].type === "none"
) {
program.engine = "simple";
} else {
program.engine = "context";
}
}
}
// Asking for LlamaParse
// Is user selected pdf file or is there a folder data source
if (!program.llamaParse && program.engine === "context") {
const askingLlamaParse = program.dataSources.some(
(ds) =>
ds.type === "folder" ||
(ds.type === "file" &&
(ds.config as FileSourceConfig).paths?.some(
(p) => path.extname(p) === ".pdf",
)),
);
if (askingLlamaParse) {
const { useLlamaParse } = await prompts(
{
type: "toggle",
name: "useLlamaParse",
message:
"Would you like to use LlamaParse (improved parser for RAG - requires API key)?",
initial: false,
initial: true,
active: "yes",
inactive: "no",
},
questionHandlers,
handlers,
);
program.useLlamaParse = useLlamaParse;
// Ask for LlamaCloud API key
if (useLlamaParse && program.llamaCloudKey === undefined) {
const { llamaCloudKey } = await prompts(
@@ -618,14 +796,20 @@ export const askQuestions = async (
message:
"Please provide your LlamaIndex Cloud API key (leave blank to skip):",
},
questionHandlers,
handlers,
);
program.llamaCloudKey = llamaCloudKey;
}
// TODO: Consider separate llamaParse to another config
program.dataSources.forEach((dataSource) => {
if (dataSource.type === "file" || dataSource.type === "folder") {
(dataSource.config as FileSourceConfig).useLlamaParse = useLlamaParse;
}
});
}
}
if (program.dataSources.length > 0 && !program.vectorDb) {
if (program.engine !== "simple" && !program.vectorDb) {
if (ciInfo.isCI) {
program.vectorDb = getPrefOrDefault("vectorDb");
} else {
@@ -637,21 +821,22 @@ export const askQuestions = async (
choices: getVectorDbChoices(program.framework),
initial: 0,
},
questionHandlers,
handlers,
);
program.vectorDb = vectorDb;
preferences.vectorDb = vectorDb;
}
}
if (!program.tools) {
if (
!program.tools &&
program.framework === "fastapi" &&
program.engine === "context"
) {
if (ciInfo.isCI) {
program.tools = getPrefOrDefault("tools");
} else {
const options = supportedTools.filter((t) =>
t.supportedFrameworks?.includes(program.framework),
);
const toolChoices = options.map((tool) => ({
const toolChoices = supportedTools.map((tool) => ({
title: tool.display,
value: tool.name,
}));
@@ -670,9 +855,30 @@ export const askQuestions = async (
}
}
await askPostInstallAction();
};
if (program.framework !== "fastapi" && program.eslint === undefined) {
if (ciInfo.isCI) {
program.eslint = getPrefOrDefault("eslint");
} else {
const styledEslint = blue("ESLint");
const { eslint } = await prompts({
onState: onPromptState,
type: "toggle",
name: "eslint",
message: `Would you like to use ${styledEslint}?`,
initial: getPrefOrDefault("eslint"),
active: "Yes",
inactive: "No",
});
program.eslint = Boolean(eslint);
preferences.eslint = Boolean(eslint);
}
}
export const toChoice = (value: string) => {
return { title: value, value };
await askPostInstallAction();
// TODO: consider using zod to validate the input (doesn't work like this as not every option is required)
// templateUISchema.parse(program.ui);
// templateEngineSchema.parse(program.engine);
// templateFrameworkSchema.parse(program.framework);
// templateTypeSchema.parse(program.template);``
};
-12
View File
@@ -1,12 +0,0 @@
#!/usr/bin/env bash
# build dist/index.js file
pnpm run build:ncc
# add shebang to the top of dist/index.js
# XXX: Windows needs a space after `node` to work correctly
# Note: ncc can handle shebang but it didn't work with Windows in our tests
echo '#!/usr/bin/env node ' | cat - dist/index.js >temp && mv temp dist/index.js
# make dist/index.js executable
chmod +x dist/index.js
-3
View File
@@ -1,3 +0,0 @@
#!/usr/bin/env bash
pnpm pack && npm install -g $(pwd)/$(ls ./*.tgz | head -1)
@@ -1,26 +0,0 @@
FROM python:3.11 as build
WORKDIR /app
ENV PYTHONPATH=/app
# Install Poetry
RUN curl -sSL https://install.python-poetry.org | POETRY_HOME=/opt/poetry python && \
cd /usr/local/bin && \
ln -s /opt/poetry/bin/poetry && \
poetry config virtualenvs.create false
# Install Chromium for web loader
# Can disable this if you don't use the web loader to reduce the image size
RUN apt update && apt install -y chromium chromium-driver
# Install dependencies
COPY ./pyproject.toml ./poetry.lock* /app/
RUN poetry install --no-root --no-cache --only main
# ====================================
FROM build as release
COPY . .
CMD ["python", "main.py"]
@@ -1,16 +0,0 @@
FROM node:20-alpine as build
WORKDIR /app
# Install dependencies
COPY package.json package-lock.* ./
RUN npm install
# Build the application
COPY . .
RUN npm run build
# ====================================
FROM build as release
CMD ["npm", "run", "start"]
@@ -11,12 +11,11 @@ def get_chat_engine():
top_k = os.getenv("TOP_K", "3")
tools = []
# Add query tool if index exists
# Add query tool
index = get_index()
if index is not None:
query_engine = index.as_query_engine(similarity_top_k=int(top_k))
query_engine_tool = QueryEngineTool.from_defaults(query_engine=query_engine)
tools.append(query_engine_tool)
query_engine = index.as_query_engine(similarity_top_k=int(top_k))
query_engine_tool = QueryEngineTool.from_defaults(query_engine=query_engine)
tools.append(query_engine_tool)
# Add additional tools
tools += ToolFactory.from_env()
@@ -0,0 +1,33 @@
import json
import importlib
from llama_index.core.tools.tool_spec.base import BaseToolSpec
from llama_index.core.tools.function_tool import FunctionTool
class ToolFactory:
@staticmethod
def create_tool(tool_name: str, **kwargs) -> list[FunctionTool]:
try:
tool_package, tool_cls_name = tool_name.split(".")
module_name = f"llama_index.tools.{tool_package}"
module = importlib.import_module(module_name)
tool_class = getattr(module, tool_cls_name)
tool_spec: BaseToolSpec = tool_class(**kwargs)
return tool_spec.to_tool_list()
except (ImportError, AttributeError) as e:
raise ValueError(f"Unsupported tool: {tool_name}") from e
except TypeError as e:
raise ValueError(
f"Could not create tool: {tool_name}. With config: {kwargs}"
) from e
@staticmethod
def from_env() -> list[FunctionTool]:
tools = []
with open("tools_config.json", "r") as f:
tool_configs = json.load(f)
for name, config in tool_configs.items():
tools += ToolFactory.create_tool(name, **config)
return tools
@@ -1,56 +0,0 @@
import os
import yaml
import importlib
from llama_index.core.tools.tool_spec.base import BaseToolSpec
from llama_index.core.tools.function_tool import FunctionTool
class ToolType:
LLAMAHUB = "llamahub"
LOCAL = "local"
class ToolFactory:
TOOL_SOURCE_PACKAGE_MAP = {
ToolType.LLAMAHUB: "llama_index.tools",
ToolType.LOCAL: "app.engine.tools",
}
@staticmethod
def load_tools(tool_type: str, tool_name: str, config: dict) -> list[FunctionTool]:
source_package = ToolFactory.TOOL_SOURCE_PACKAGE_MAP[tool_type]
try:
if "ToolSpec" in tool_name:
tool_package, tool_cls_name = tool_name.split(".")
module_name = f"{source_package}.{tool_package}"
module = importlib.import_module(module_name)
tool_class = getattr(module, tool_cls_name)
tool_spec: BaseToolSpec = tool_class(**config)
return tool_spec.to_tool_list()
else:
module = importlib.import_module(f"{source_package}.{tool_name}")
tools = getattr(module, "tools")
if not all(isinstance(tool, FunctionTool) for tool in tools):
raise ValueError(
f"The module {module} does not contain valid tools"
)
return tools
except ImportError as e:
raise ValueError(f"Failed to import tool {tool_name}: {e}")
except AttributeError as e:
raise ValueError(f"Failed to load tool {tool_name}: {e}")
@staticmethod
def from_env() -> list[FunctionTool]:
tools = []
if os.path.exists("config/tools.yaml"):
with open("config/tools.yaml", "r") as f:
tool_configs = yaml.safe_load(f)
for tool_type, config_entries in tool_configs.items():
for tool_name, config in config_entries.items():
tools.extend(
ToolFactory.load_tools(tool_type, tool_name, config)
)
return tools
@@ -1,134 +0,0 @@
import os
import logging
import base64
import uuid
from pydantic import BaseModel
from typing import List, Tuple, Dict
from llama_index.core.tools import FunctionTool
from e2b_code_interpreter import CodeInterpreter
from e2b_code_interpreter.models import Logs
logger = logging.getLogger(__name__)
class InterpreterExtraResult(BaseModel):
type: str
filename: str
url: str
class E2BToolOutput(BaseModel):
is_error: bool
logs: Logs
results: List[InterpreterExtraResult] = []
class E2BCodeInterpreter:
output_dir = "tool-output"
def __init__(self, api_key: str, filesever_url_prefix: str):
self.api_key = api_key
self.filesever_url_prefix = filesever_url_prefix
def get_output_path(self, filename: str) -> str:
# if output directory doesn't exist, create it
if not os.path.exists(self.output_dir):
os.makedirs(self.output_dir, exist_ok=True)
return os.path.join(self.output_dir, filename)
def save_to_disk(self, base64_data: str, ext: str) -> Dict:
filename = f"{uuid.uuid4()}.{ext}" # generate a unique filename
buffer = base64.b64decode(base64_data)
output_path = self.get_output_path(filename)
try:
with open(output_path, "wb") as file:
file.write(buffer)
except IOError as e:
logger.error(f"Failed to write to file {output_path}: {str(e)}")
raise e
logger.info(f"Saved file to {output_path}")
return {
"outputPath": output_path,
"filename": filename,
}
def get_file_url(self, filename: str) -> str:
return f"{self.filesever_url_prefix}/{self.output_dir}/{filename}"
def parse_result(self, result) -> List[InterpreterExtraResult]:
"""
The result could include multiple formats (e.g. png, svg, etc.) but encoded in base64
We save each result to disk and return saved file metadata (extension, filename, url)
"""
if not result:
return []
output = []
try:
formats = result.formats()
base64_data_arr = [result[format] for format in formats]
for ext, base64_data in zip(formats, base64_data_arr):
if ext and base64_data:
result = self.save_to_disk(base64_data, ext)
filename = result["filename"]
output.append(
InterpreterExtraResult(
type=ext, filename=filename, url=self.get_file_url(filename)
)
)
except Exception as error:
logger.error("Error when saving data to disk", error)
return output
def interpret(self, code: str) -> E2BToolOutput:
with CodeInterpreter(api_key=self.api_key) as interpreter:
logger.info(
f"\n{'='*50}\n> Running following AI-generated code:\n{code}\n{'='*50}"
)
exec = interpreter.notebook.exec_cell(code)
if exec.error:
output = E2BToolOutput(is_error=True, logs=[exec.error])
else:
if len(exec.results) == 0:
output = E2BToolOutput(is_error=False, logs=exec.logs, results=[])
else:
results = self.parse_result(exec.results[0])
output = E2BToolOutput(
is_error=False, logs=exec.logs, results=results
)
return output
def code_interpret(code: str) -> Dict:
"""
Execute python code in a Jupyter notebook cell and return any result, stdout, stderr, display_data, and error.
"""
api_key = os.getenv("E2B_API_KEY")
filesever_url_prefix = os.getenv("FILESERVER_URL_PREFIX")
if not api_key:
raise ValueError(
"E2B_API_KEY key is required to run code interpreter. Get it here: https://e2b.dev/docs/getting-started/api-key"
)
if not filesever_url_prefix:
raise ValueError(
"FILESERVER_URL_PREFIX is required to display file output from sandbox"
)
interpreter = E2BCodeInterpreter(
api_key=api_key, filesever_url_prefix=filesever_url_prefix
)
output = interpreter.interpret(code)
return output.dict()
# Specify as functions tools to be loaded by the ToolFactory
tools = [FunctionTool.from_defaults(code_interpret)]
@@ -1,72 +0,0 @@
"""Open Meteo weather map tool spec."""
import logging
import requests
import pytz
from llama_index.core.tools import FunctionTool
logger = logging.getLogger(__name__)
class OpenMeteoWeather:
geo_api = "https://geocoding-api.open-meteo.com/v1"
weather_api = "https://api.open-meteo.com/v1"
@classmethod
def _get_geo_location(cls, location: str) -> dict:
"""Get geo location from location name."""
params = {"name": location, "count": 10, "language": "en", "format": "json"}
response = requests.get(f"{cls.geo_api}/search", params=params)
if response.status_code != 200:
raise Exception(f"Failed to fetch geo location: {response.status_code}")
else:
data = response.json()
result = data["results"][0]
geo_location = {
"id": result["id"],
"name": result["name"],
"latitude": result["latitude"],
"longitude": result["longitude"],
}
return geo_location
@classmethod
def get_weather_information(cls, location: str) -> dict:
"""Use this function to get the weather of any given location.
Note that the weather code should follow WMO Weather interpretation codes (WW):
0: Clear sky
1, 2, 3: Mainly clear, partly cloudy, and overcast
45, 48: Fog and depositing rime fog
51, 53, 55: Drizzle: Light, moderate, and dense intensity
56, 57: Freezing Drizzle: Light and dense intensity
61, 63, 65: Rain: Slight, moderate and heavy intensity
66, 67: Freezing Rain: Light and heavy intensity
71, 73, 75: Snow fall: Slight, moderate, and heavy intensity
77: Snow grains
80, 81, 82: Rain showers: Slight, moderate, and violent
85, 86: Snow showers slight and heavy
95: Thunderstorm: Slight or moderate
96, 99: Thunderstorm with slight and heavy hail
"""
logger.info(
f"Calling open-meteo api to get weather information of location: {location}"
)
geo_location = cls._get_geo_location(location)
timezone = pytz.timezone("UTC").zone
params = {
"latitude": geo_location["latitude"],
"longitude": geo_location["longitude"],
"current": "temperature_2m,weather_code",
"hourly": "temperature_2m,weather_code",
"daily": "weather_code",
"timezone": timezone,
}
response = requests.get(f"{cls.weather_api}/forecast", params=params)
if response.status_code != 200:
raise Exception(
f"Failed to fetch weather information: {response.status_code}"
)
return response.json()
tools = [FunctionTool.from_defaults(OpenMeteoWeather.get_weather_information)]
@@ -1,22 +1,12 @@
import os
from app.engine.index import get_index
from fastapi import HTTPException
def get_chat_engine():
system_prompt = os.getenv("SYSTEM_PROMPT")
top_k = os.getenv("TOP_K", 3)
index = get_index()
if index is None:
raise HTTPException(
status_code=500,
detail=str(
"StorageContext is empty - call 'poetry run generate' to generate the storage first"
),
)
return index.as_chat_engine(
return get_index().as_chat_engine(
similarity_top_k=int(top_k),
system_prompt=system_prompt,
chat_mode="condense_plus_context",
@@ -1,42 +0,0 @@
import { BaseToolWithCall, OpenAIAgent, QueryEngineTool } from "llamaindex";
import fs from "node:fs/promises";
import path from "node:path";
import { getDataSource } from "./index";
import { STORAGE_CACHE_DIR } from "./shared";
import { createTools } from "./tools";
export async function createChatEngine() {
const tools: BaseToolWithCall[] = [];
// Add a query engine tool if we have a data source
// Delete this code if you don't have a data source
const index = await getDataSource();
if (index) {
tools.push(
new QueryEngineTool({
queryEngine: index.asQueryEngine(),
metadata: {
name: "data_query_engine",
description: `A query engine for documents in storage folder: ${STORAGE_CACHE_DIR}`,
},
}),
);
}
const configFile = path.join("config", "tools.json");
let toolConfig: any;
try {
// add tools from config file if it exists
toolConfig = JSON.parse(await fs.readFile(configFile, "utf8"));
} catch (e) {
console.info(`Could not read ${configFile} file. Using no tools.`);
}
if (toolConfig) {
tools.push(...(await createTools(toolConfig)));
}
return new OpenAIAgent({
tools,
systemPrompt: process.env.SYSTEM_PROMPT,
});
}
@@ -1,42 +0,0 @@
import { BaseToolWithCall } from "llamaindex";
import { ToolsFactory } from "llamaindex/tools/ToolsFactory";
import { InterpreterTool, InterpreterToolParams } from "./interpreter";
import { WeatherTool, WeatherToolParams } from "./weather";
type ToolCreator = (config: unknown) => BaseToolWithCall;
export async function createTools(toolConfig: {
local: Record<string, unknown>;
llamahub: any;
}): Promise<BaseToolWithCall[]> {
// add local tools from the 'tools' folder (if configured)
const tools = createLocalTools(toolConfig.local);
// add tools from LlamaIndexTS (if configured)
tools.push(...(await ToolsFactory.createTools(toolConfig.llamahub)));
return tools;
}
const toolFactory: Record<string, ToolCreator> = {
weather: (config: unknown) => {
return new WeatherTool(config as WeatherToolParams);
},
interpreter: (config: unknown) => {
return new InterpreterTool(config as InterpreterToolParams);
},
};
function createLocalTools(
localConfig: Record<string, unknown>,
): BaseToolWithCall[] {
const tools: BaseToolWithCall[] = [];
Object.keys(localConfig).forEach((key) => {
if (key in toolFactory) {
const toolConfig = localConfig[key];
const tool = toolFactory[key](toolConfig);
tools.push(tool);
}
});
return tools;
}
@@ -1,174 +0,0 @@
import { CodeInterpreter, Logs, Result } from "@e2b/code-interpreter";
import type { JSONSchemaType } from "ajv";
import fs from "fs";
import { BaseTool, ToolMetadata } from "llamaindex";
import crypto from "node:crypto";
import path from "node:path";
export type InterpreterParameter = {
code: string;
};
export type InterpreterToolParams = {
metadata?: ToolMetadata<JSONSchemaType<InterpreterParameter>>;
apiKey?: string;
fileServerURLPrefix?: string;
};
export type InterpreterToolOuput = {
isError: boolean;
logs: Logs;
extraResult: InterpreterExtraResult[];
};
type InterpreterExtraType =
| "html"
| "markdown"
| "svg"
| "png"
| "jpeg"
| "pdf"
| "latex"
| "json"
| "javascript";
export type InterpreterExtraResult = {
type: InterpreterExtraType;
filename: string;
url: string;
};
const DEFAULT_META_DATA: ToolMetadata<JSONSchemaType<InterpreterParameter>> = {
name: "interpreter",
description:
"Execute python code in a Jupyter notebook cell and return any result, stdout, stderr, display_data, and error.",
parameters: {
type: "object",
properties: {
code: {
type: "string",
description: "The python code to execute in a single cell.",
},
},
required: ["code"],
},
};
export class InterpreterTool implements BaseTool<InterpreterParameter> {
private readonly outputDir = "tool-output";
private apiKey?: string;
private fileServerURLPrefix?: string;
metadata: ToolMetadata<JSONSchemaType<InterpreterParameter>>;
codeInterpreter?: CodeInterpreter;
constructor(params?: InterpreterToolParams) {
this.metadata = params?.metadata || DEFAULT_META_DATA;
this.apiKey = params?.apiKey || process.env.E2B_API_KEY;
this.fileServerURLPrefix =
params?.fileServerURLPrefix || process.env.FILESERVER_URL_PREFIX;
if (!this.apiKey) {
throw new Error(
"E2B_API_KEY key is required to run code interpreter. Get it here: https://e2b.dev/docs/getting-started/api-key",
);
}
if (!this.fileServerURLPrefix) {
throw new Error(
"FILESERVER_URL_PREFIX is required to display file output from sandbox",
);
}
}
public async initInterpreter() {
if (!this.codeInterpreter) {
this.codeInterpreter = await CodeInterpreter.create({
apiKey: this.apiKey,
});
}
return this.codeInterpreter;
}
public async codeInterpret(code: string): Promise<InterpreterToolOuput> {
console.log(
`\n${"=".repeat(50)}\n> Running following AI-generated code:\n${code}\n${"=".repeat(50)}`,
);
const interpreter = await this.initInterpreter();
const exec = await interpreter.notebook.execCell(code);
if (exec.error) console.error("[Code Interpreter error]", exec.error);
const extraResult = await this.getExtraResult(exec.results[0]);
const result: InterpreterToolOuput = {
isError: !!exec.error,
logs: exec.logs,
extraResult,
};
return result;
}
async call(input: InterpreterParameter): Promise<InterpreterToolOuput> {
const result = await this.codeInterpret(input.code);
await this.codeInterpreter?.close();
return result;
}
private async getExtraResult(
res?: Result,
): Promise<InterpreterExtraResult[]> {
if (!res) return [];
const output: InterpreterExtraResult[] = [];
try {
const formats = res.formats(); // formats available for the result. Eg: ['png', ...]
const base64DataArr = formats.map((f) => res[f as keyof Result]); // get base64 data for each format
// save base64 data to file and return the url
for (let i = 0; i < formats.length; i++) {
const ext = formats[i];
const base64Data = base64DataArr[i];
if (ext && base64Data) {
const { filename } = this.saveToDisk(base64Data, ext);
output.push({
type: ext as InterpreterExtraType,
filename,
url: this.getFileUrl(filename),
});
}
}
} catch (error) {
console.error("Error when saving data to disk", error);
}
return output;
}
// Consider saving to cloud storage instead but it may cost more for you
// See: https://e2b.dev/docs/sandbox/api/filesystem#write-to-file
private saveToDisk(
base64Data: string,
ext: string,
): {
outputPath: string;
filename: string;
} {
const filename = `${crypto.randomUUID()}.${ext}`; // generate a unique filename
const buffer = Buffer.from(base64Data, "base64");
const outputPath = this.getOutputPath(filename);
fs.writeFileSync(outputPath, buffer);
console.log(`Saved file to ${outputPath}`);
return {
outputPath,
filename,
};
}
private getOutputPath(filename: string): string {
// if outputDir doesn't exist, create it
if (!fs.existsSync(this.outputDir)) {
fs.mkdirSync(this.outputDir, { recursive: true });
}
return path.join(this.outputDir, filename);
}
private getFileUrl(filename: string): string {
return `${this.fileServerURLPrefix}/${this.outputDir}/${filename}`;
}
}
@@ -1,81 +0,0 @@
import type { JSONSchemaType } from "ajv";
import { BaseTool, ToolMetadata } from "llamaindex";
interface GeoLocation {
id: string;
name: string;
latitude: number;
longitude: number;
}
export type WeatherParameter = {
location: string;
};
export type WeatherToolParams = {
metadata?: ToolMetadata<JSONSchemaType<WeatherParameter>>;
};
const DEFAULT_META_DATA: ToolMetadata<JSONSchemaType<WeatherParameter>> = {
name: "get_weather_information",
description: `
Use this function to get the weather of any given location.
Note that the weather code should follow WMO Weather interpretation codes (WW):
0: Clear sky
1, 2, 3: Mainly clear, partly cloudy, and overcast
45, 48: Fog and depositing rime fog
51, 53, 55: Drizzle: Light, moderate, and dense intensity
56, 57: Freezing Drizzle: Light and dense intensity
61, 63, 65: Rain: Slight, moderate and heavy intensity
66, 67: Freezing Rain: Light and heavy intensity
71, 73, 75: Snow fall: Slight, moderate, and heavy intensity
77: Snow grains
80, 81, 82: Rain showers: Slight, moderate, and violent
85, 86: Snow showers slight and heavy
95: Thunderstorm: Slight or moderate
96, 99: Thunderstorm with slight and heavy hail
`,
parameters: {
type: "object",
properties: {
location: {
type: "string",
description: "The location to get the weather information",
},
},
required: ["location"],
},
};
export class WeatherTool implements BaseTool<WeatherParameter> {
metadata: ToolMetadata<JSONSchemaType<WeatherParameter>>;
private getGeoLocation = async (location: string): Promise<GeoLocation> => {
const apiUrl = `https://geocoding-api.open-meteo.com/v1/search?name=${location}&count=10&language=en&format=json`;
const response = await fetch(apiUrl);
const data = await response.json();
const { id, name, latitude, longitude } = data.results[0];
return { id, name, latitude, longitude };
};
private getWeatherByLocation = async (location: string) => {
console.log(
"Calling open-meteo api to get weather information of location:",
location,
);
const { latitude, longitude } = await this.getGeoLocation(location);
const timezone = Intl.DateTimeFormat().resolvedOptions().timeZone;
const apiUrl = `https://api.open-meteo.com/v1/forecast?latitude=${latitude}&longitude=${longitude}&current=temperature_2m,weather_code&hourly=temperature_2m,weather_code&daily=weather_code&timezone=${timezone}`;
const response = await fetch(apiUrl);
const data = await response.json();
return data;
};
constructor(params?: WeatherToolParams) {
this.metadata = params?.metadata || DEFAULT_META_DATA;
}
async call(input: WeatherParameter) {
return await this.getWeatherByLocation(input.location);
}
}
@@ -1,21 +0,0 @@
import { ContextChatEngine, Settings } from "llamaindex";
import { getDataSource } from "./index";
export async function createChatEngine() {
const index = await getDataSource();
if (!index) {
throw new Error(
`StorageContext is empty - call 'npm run generate' to generate the storage first`,
);
}
const retriever = index.asRetriever();
retriever.similarityTopK = process.env.TOP_K
? parseInt(process.env.TOP_K)
: 3;
return new ContextChatEngine({
chatModel: Settings.llm,
retriever,
systemPrompt: process.env.SYSTEM_PROMPT,
});
}
@@ -1,39 +0,0 @@
import os
import yaml
import importlib
import logging
from typing import Dict
from app.engine.loaders.file import FileLoaderConfig, get_file_documents
from app.engine.loaders.web import WebLoaderConfig, get_web_documents
from app.engine.loaders.db import DBLoaderConfig, get_db_documents
logger = logging.getLogger(__name__)
def load_configs():
with open("config/loaders.yaml") as f:
configs = yaml.safe_load(f)
return configs
def get_documents():
documents = []
config = load_configs()
for loader_type, loader_config in config.items():
logger.info(
f"Loading documents from loader: {loader_type}, config: {loader_config}"
)
match loader_type:
case "file":
document = get_file_documents(FileLoaderConfig(**loader_config))
case "web":
document = get_web_documents(WebLoaderConfig(**loader_config))
case "db":
document = get_db_documents(
configs=[DBLoaderConfig(**cfg) for cfg in loader_config]
)
case _:
raise ValueError(f"Invalid loader type: {loader_type}")
documents.extend(document)
return documents
-26
View File
@@ -1,26 +0,0 @@
import os
import logging
from typing import List
from pydantic import BaseModel, validator
from llama_index.core.indices.vector_store import VectorStoreIndex
logger = logging.getLogger(__name__)
class DBLoaderConfig(BaseModel):
uri: str
queries: List[str]
def get_db_documents(configs: list[DBLoaderConfig]):
from llama_index.readers.database import DatabaseReader
docs = []
for entry in configs:
loader = DatabaseReader(uri=entry.uri)
for query in entry.queries:
logger.info(f"Loading data from database with query: {query}")
documents = loader.load_data(query=query)
docs.extend(documents)
return documents
@@ -1,57 +0,0 @@
import os
import logging
from llama_parse import LlamaParse
from pydantic import BaseModel, validator
logger = logging.getLogger(__name__)
class FileLoaderConfig(BaseModel):
data_dir: str = "data"
use_llama_parse: bool = False
@validator("data_dir")
def data_dir_must_exist(cls, v):
if not os.path.isdir(v):
raise ValueError(f"Directory '{v}' does not exist")
return v
def llama_parse_parser():
if os.getenv("LLAMA_CLOUD_API_KEY") is None:
raise ValueError(
"LLAMA_CLOUD_API_KEY environment variable is not set. "
"Please set it in .env file or in your shell environment then run again!"
)
parser = LlamaParse(result_type="markdown", verbose=True, language="en")
return parser
def get_file_documents(config: FileLoaderConfig):
from llama_index.core.readers import SimpleDirectoryReader
try:
reader = SimpleDirectoryReader(
config.data_dir,
recursive=True,
filename_as_id=True,
)
if config.use_llama_parse:
parser = llama_parse_parser()
reader.file_extractor = {".pdf": parser}
return reader.load_data()
except ValueError as e:
import sys, traceback
# Catch the error if the data dir is empty
# and return as empty document list
_, _, exc_traceback = sys.exc_info()
function_name = traceback.extract_tb(exc_traceback)[-1].name
if function_name == "_add_files":
logger.warning(
f"Failed to load file documents, error message: {e} . Return as empty document list."
)
return []
else:
# Raise the error if it is not the case of empty data dir
raise e
@@ -0,0 +1,7 @@
from llama_index.core.readers import SimpleDirectoryReader
DATA_DIR = "data" # directory containing the documents
def get_documents():
return SimpleDirectoryReader(DATA_DIR).load_data()
@@ -0,0 +1,17 @@
import os
from llama_parse import LlamaParse
from llama_index.core import SimpleDirectoryReader
DATA_DIR = "data" # directory containing the documents
def get_documents():
if os.getenv("LLAMA_CLOUD_API_KEY") is None:
raise ValueError(
"LLAMA_CLOUD_API_KEY environment variable is not set. "
"Please set it in .env file or in your shell environment then run again!"
)
parser = LlamaParse(result_type="markdown", verbose=True, language="en")
reader = SimpleDirectoryReader(DATA_DIR, file_extractor={".pdf": parser})
return reader.load_data()
@@ -0,0 +1,12 @@
import os
import importlib
def get_documents():
# For each file in .loaders, import the module and call the get_documents function
for loader in os.listdir(os.path.join(os.path.dirname(__file__), "loaders")):
if loader.endswith(".py"):
loader = loader[:-3]
module = importlib.import_module(f"app.engine.loaders.{loader}")
documents = module.get_documents()
yield documents
@@ -1,36 +0,0 @@
import os
import json
from pydantic import BaseModel, Field
class CrawlUrl(BaseModel):
base_url: str
prefix: str
max_depth: int = Field(default=1, ge=0)
class WebLoaderConfig(BaseModel):
driver_arguments: list[str] = Field(default=None)
urls: list[CrawlUrl]
def get_web_documents(config: WebLoaderConfig):
from llama_index.readers.web import WholeSiteReader
from selenium import webdriver
from selenium.webdriver.chrome.options import Options
options = Options()
driver_arguments = config.driver_arguments or []
for arg in driver_arguments:
options.add_argument(arg)
docs = []
for url in config.urls:
scraper = WholeSiteReader(
prefix=url.prefix,
max_depth=url.max_depth,
driver=webdriver.Chrome(options=options),
)
docs.extend(scraper.load_data(url.base_url))
return docs
@@ -0,0 +1,13 @@
import os
from llama_index.readers.web import WholeSiteReader
def get_documents():
# Initialize the scraper with a prefix URL and maximum depth
scraper = WholeSiteReader(
prefix=os.environ.get("URL_PREFIX"), max_depth=int(os.environ.get("MAX_DEPTH"))
)
# Start scraping from a base URL
documents = scraper.load_data(base_url=os.environ.get("BASE_URL"))
return documents
@@ -1,9 +0,0 @@
import { SimpleDirectoryReader } from "llamaindex";
export const DATA_DIR = "./data";
export async function getDocuments() {
return await new SimpleDirectoryReader().loadData({
directoryPath: DATA_DIR,
});
}
@@ -1,19 +0,0 @@
import {
FILE_EXT_TO_READER,
LlamaParseReader,
SimpleDirectoryReader,
} from "llamaindex";
export const DATA_DIR = "./data";
export async function getDocuments() {
const reader = new SimpleDirectoryReader();
// Load PDFs using LlamaParseReader
return await reader.loadData({
directoryPath: DATA_DIR,
fileExtToReader: {
...FILE_EXT_TO_READER,
pdf: new LlamaParseReader({ resultType: "markdown" }),
},
});
}
@@ -1,5 +0,0 @@
from traceloop.sdk import Traceloop
def init_observability():
Traceloop.init()
@@ -7,7 +7,7 @@ export default function ChatItem(message: Message) {
return (
<div className="flex items-start gap-4 pt-5">
<ChatAvatar {...message} />
<p className="break-words whitespace-pre-wrap">{message.content}</p>
<p className="break-words">{message.content}</p>
</div>
);
}
@@ -1,20 +0,0 @@
import os
from llama_index.vector_stores.astra_db import AstraDBVectorStore
def get_vector_store():
endpoint = os.getenv("ASTRA_DB_ENDPOINT")
token = os.getenv("ASTRA_DB_APPLICATION_TOKEN")
collection = os.getenv("ASTRA_DB_COLLECTION")
if not endpoint or not token or not collection:
raise ValueError(
"Please config ASTRA_DB_ENDPOINT, ASTRA_DB_APPLICATION_TOKEN and ASTRA_DB_COLLECTION"
" to your environment variables or config them in the .env file"
)
store = AstraDBVectorStore(
token=token,
api_endpoint=endpoint,
collection_name=collection,
embedding_dimension=int(os.getenv("EMBEDDING_DIM")),
)
return store
@@ -1,24 +0,0 @@
import os
from llama_index.vector_stores.chroma import ChromaVectorStore
def get_vector_store():
collection_name = os.getenv("CHROMA_COLLECTION", "default")
chroma_path = os.getenv("CHROMA_PATH")
# if CHROMA_PATH is set, use a local ChromaVectorStore from the path
# otherwise, use a remote ChromaVectorStore (ChromaDB Cloud is not supported yet)
if chroma_path:
store = ChromaVectorStore.from_params(
persist_dir=chroma_path, collection_name=collection_name
)
else:
if not os.getenv("CHROMA_HOST") or not os.getenv("CHROMA_PORT"):
raise ValueError(
"Please provide either CHROMA_PATH or CHROMA_HOST and CHROMA_PORT"
)
store = ChromaVectorStore.from_params(
host=os.getenv("CHROMA_HOST"),
port=int(os.getenv("CHROMA_PORT")),
collection_name=collection_name,
)
return store
@@ -0,0 +1,39 @@
from dotenv import load_dotenv
load_dotenv()
import os
import logging
from llama_index.core.storage import StorageContext
from llama_index.core.indices import VectorStoreIndex
from llama_index.vector_stores.milvus import MilvusVectorStore
from app.settings import init_settings
from app.engine.loader import get_documents
logging.basicConfig(level=logging.INFO)
logger = logging.getLogger()
def generate_datasource():
logger.info("Creating new index")
# load the documents and create the index
documents = get_documents()
store = MilvusVectorStore(
uri=os.environ["MILVUS_ADDRESS"],
user=os.getenv("MILVUS_USER"),
password=os.getenv("MILVUS_PASSWORD"),
collection_name=os.getenv("MILVUS_COLLECTION"),
dim=int(os.getenv("MILVUS_DIMENSION", "1536")),
)
storage_context = StorageContext.from_defaults(vector_store=store)
VectorStoreIndex.from_documents(
documents,
storage_context=storage_context,
show_progress=True, # this will show you a progress bar as the embeddings are created
)
logger.info(f"Successfully created embeddings in the Milvus")
if __name__ == "__main__":
init_settings()
generate_datasource()
@@ -0,0 +1,22 @@
import logging
import os
from llama_index.core.indices import VectorStoreIndex
from llama_index.vector_stores.milvus import MilvusVectorStore
logger = logging.getLogger("uvicorn")
def get_index():
logger.info("Connecting to index from Milvus...")
store = MilvusVectorStore(
uri=os.getenv("MILVUS_ADDRESS"),
user=os.getenv("MILVUS_USER"),
password=os.getenv("MILVUS_PASSWORD"),
collection_name=os.getenv("MILVUS_COLLECTION"),
dim=int(os.getenv("EMBEDDING_DIM", "1536")),
)
index = VectorStoreIndex.from_vector_store(store)
logger.info("Finished connecting to index from Milvus.")
return index
@@ -1,20 +0,0 @@
import os
from llama_index.vector_stores.milvus import MilvusVectorStore
def get_vector_store():
address = os.getenv("MILVUS_ADDRESS")
collection = os.getenv("MILVUS_COLLECTION")
if not address or not collection:
raise ValueError(
"Please set MILVUS_ADDRESS and MILVUS_COLLECTION to your environment variables"
" or config them in the .env file"
)
store = MilvusVectorStore(
uri=address,
user=os.getenv("MILVUS_USERNAME"),
password=os.getenv("MILVUS_PASSWORD"),
collection_name=collection,
dim=int(os.getenv("EMBEDDING_DIM")),
)
return store
@@ -0,0 +1,43 @@
from dotenv import load_dotenv
load_dotenv()
import os
import logging
from llama_index.core.storage import StorageContext
from llama_index.core.indices import VectorStoreIndex
from llama_index.vector_stores.mongodb import MongoDBAtlasVectorSearch
from app.settings import init_settings
from app.engine.loader import get_documents
logging.basicConfig(level=logging.INFO)
logger = logging.getLogger()
def generate_datasource():
logger.info("Creating new index")
# load the documents and create the index
documents = get_documents()
store = MongoDBAtlasVectorSearch(
db_name=os.environ["MONGODB_DATABASE"],
collection_name=os.environ["MONGODB_VECTORS"],
index_name=os.environ["MONGODB_VECTOR_INDEX"],
)
storage_context = StorageContext.from_defaults(vector_store=store)
VectorStoreIndex.from_documents(
documents,
storage_context=storage_context,
show_progress=True, # this will show you a progress bar as the embeddings are created
)
logger.info(
f"Successfully created embeddings in the MongoDB collection {os.environ['MONGODB_VECTORS']}"
)
logger.info(
"""IMPORTANT: You can't query your index yet because you need to create a vector search index in MongoDB's UI now.
See https://github.com/run-llama/mongodb-demo/tree/main?tab=readme-ov-file#create-a-vector-search-index"""
)
if __name__ == "__main__":
init_settings()
generate_datasource()
@@ -0,0 +1,20 @@
import logging
import os
from llama_index.core.indices import VectorStoreIndex
from llama_index.vector_stores.mongodb import MongoDBAtlasVectorSearch
logger = logging.getLogger("uvicorn")
def get_index():
logger.info("Connecting to index from MongoDB...")
store = MongoDBAtlasVectorSearch(
db_name=os.environ["MONGODB_DATABASE"],
collection_name=os.environ["MONGODB_VECTORS"],
index_name=os.environ["MONGODB_VECTOR_INDEX"],
)
index = VectorStoreIndex.from_vector_store(store)
logger.info("Finished connecting to index from MongoDB.")
return index
@@ -1,20 +0,0 @@
import os
from llama_index.vector_stores.mongodb import MongoDBAtlasVectorSearch
def get_vector_store():
db_uri = os.getenv("MONGODB_URI")
db_name = os.getenv("MONGODB_DATABASE")
collection_name = os.getenv("MONGODB_VECTORS")
index_name = os.getenv("MONGODB_VECTOR_INDEX")
if not db_uri or not db_name or not collection_name or not index_name:
raise ValueError(
"Please set MONGODB_URI, MONGODB_DATABASE, MONGODB_VECTORS, and MONGODB_VECTOR_INDEX"
" to your environment variables or config them in .env file"
)
store = MongoDBAtlasVectorSearch(
db_name=db_name,
collection_name=collection_name,
index_name=index_name,
)
return store
@@ -0,0 +1 @@
STORAGE_DIR = "storage" # directory to cache the generated index
@@ -4,10 +4,10 @@ load_dotenv()
import os
import logging
from llama_index.core.indices import (
VectorStoreIndex,
)
from app.engine.loaders import get_documents
from llama_index.core.indices import VectorStoreIndex
from llama_index.core.storage import StorageContext
from app.engine.constants import STORAGE_DIR
from app.engine.loader import get_documents
from app.settings import init_settings
@@ -16,18 +16,19 @@ logger = logging.getLogger()
def generate_datasource():
init_settings()
logger.info("Creating new index")
storage_dir = os.environ.get("STORAGE_DIR", "storage")
# load the documents and create the index
documents = get_documents()
index = VectorStoreIndex.from_documents(
documents,
)
# store it for later
index.storage_context.persist(storage_dir)
logger.info(f"Finished creating new index. Stored in {storage_dir}")
storage_context = StorageContext.from_defaults()
docs = []
for doc in get_documents():
storage_context.docstore.add_documents(doc)
docs.extend(doc)
index = VectorStoreIndex.from_documents(docs, storage_context=storage_context)
index.storage_context.persist(persist_dir=STORAGE_DIR)
logger.info(f"Generated index at {STORAGE_DIR}")
if __name__ == "__main__":
init_settings()
generate_datasource()
@@ -1,30 +1,23 @@
import os
import logging
from datetime import timedelta
import os
from cachetools import cached, TTLCache
from app.engine.constants import STORAGE_DIR
from llama_index.core.storage import StorageContext
from llama_index.core.indices import load_index_from_storage
logger = logging.getLogger("uvicorn")
@cached(
TTLCache(maxsize=10, ttl=timedelta(minutes=5).total_seconds()),
key=lambda *args, **kwargs: "global_storage_context",
)
def get_storage_context(persist_dir: str) -> StorageContext:
return StorageContext.from_defaults(persist_dir=persist_dir)
def get_index():
storage_dir = os.getenv("STORAGE_DIR", "storage")
# check if storage already exists
if not os.path.exists(storage_dir):
return None
if not os.path.exists(STORAGE_DIR):
raise Exception(
"StorageContext is empty - call 'python app/engine/generate.py' to generate the storage first"
)
# load the existing index
logger.info(f"Loading index from {storage_dir}...")
storage_context = get_storage_context(storage_dir)
logger.info(f"Loading index from {STORAGE_DIR}...")
storage_context = StorageContext.from_defaults(persist_dir=STORAGE_DIR)
index = load_index_from_storage(storage_context)
logger.info(f"Finished loading index from {storage_dir}")
logger.info(f"Finished loading index from {STORAGE_DIR}")
return index
@@ -0,0 +1,2 @@
PGVECTOR_SCHEMA = "public"
PGVECTOR_TABLE = "llamaindex_embedding"
@@ -0,0 +1,35 @@
from dotenv import load_dotenv
load_dotenv()
import logging
from llama_index.core.indices import VectorStoreIndex
from llama_index.core.storage import StorageContext
from app.engine.loader import get_documents
from app.settings import init_settings
from app.engine.utils import init_pg_vector_store_from_env
logging.basicConfig(level=logging.INFO)
logger = logging.getLogger()
def generate_datasource():
logger.info("Creating new index")
# load the documents and create the index
documents = get_documents()
store = init_pg_vector_store_from_env()
storage_context = StorageContext.from_defaults(vector_store=store)
VectorStoreIndex.from_documents(
documents,
storage_context=storage_context,
show_progress=True, # this will show you a progress bar as the embeddings are created
)
logger.info(
f"Successfully created embeddings in the PG vector store, schema={store.schema_name} table={store.table_name}"
)
if __name__ == "__main__":
init_settings()
generate_datasource()
@@ -0,0 +1,13 @@
import logging
from llama_index.core.indices.vector_store import VectorStoreIndex
from app.engine.utils import init_pg_vector_store_from_env
logger = logging.getLogger("uvicorn")
def get_index():
logger.info("Connecting to index from PGVector...")
store = init_pg_vector_store_from_env()
index = VectorStoreIndex.from_vector_store(store)
logger.info("Finished connecting to index from PGVector.")
return index
@@ -0,0 +1,27 @@
import os
from llama_index.vector_stores.postgres import PGVectorStore
from urllib.parse import urlparse
from app.engine.constants import PGVECTOR_SCHEMA, PGVECTOR_TABLE
def init_pg_vector_store_from_env():
original_conn_string = os.environ.get("PG_CONNECTION_STRING")
if original_conn_string is None or original_conn_string == "":
raise ValueError("PG_CONNECTION_STRING environment variable is not set.")
# The PGVectorStore requires both two connection strings, one for psycopg2 and one for asyncpg
# Update the configured scheme with the psycopg2 and asyncpg schemes
original_scheme = urlparse(original_conn_string).scheme + "://"
conn_string = original_conn_string.replace(
original_scheme, "postgresql+psycopg2://"
)
async_conn_string = original_conn_string.replace(
original_scheme, "postgresql+asyncpg://"
)
return PGVectorStore(
connection_string=conn_string,
async_connection_string=async_conn_string,
schema_name=PGVECTOR_SCHEMA,
table_name=PGVECTOR_TABLE,
)
@@ -1,37 +0,0 @@
import os
from llama_index.vector_stores.postgres import PGVectorStore
from urllib.parse import urlparse
PGVECTOR_SCHEMA = "public"
PGVECTOR_TABLE = "llamaindex_embedding"
vector_store: PGVectorStore = None
def get_vector_store():
global vector_store
if vector_store is None:
original_conn_string = os.environ.get("PG_CONNECTION_STRING")
if original_conn_string is None or original_conn_string == "":
raise ValueError("PG_CONNECTION_STRING environment variable is not set.")
# The PGVectorStore requires both two connection strings, one for psycopg2 and one for asyncpg
# Update the configured scheme with the psycopg2 and asyncpg schemes
original_scheme = urlparse(original_conn_string).scheme + "://"
conn_string = original_conn_string.replace(
original_scheme, "postgresql+psycopg2://"
)
async_conn_string = original_conn_string.replace(
original_scheme, "postgresql+asyncpg://"
)
vector_store = PGVectorStore(
connection_string=conn_string,
async_connection_string=async_conn_string,
schema_name=PGVECTOR_SCHEMA,
table_name=PGVECTOR_TABLE,
embed_dim=int(os.environ.get("EMBEDDING_DIM", 1024)),
)
return vector_store
@@ -0,0 +1,39 @@
from dotenv import load_dotenv
load_dotenv()
import os
import logging
from llama_index.core.storage import StorageContext
from llama_index.core.indices import VectorStoreIndex
from llama_index.vector_stores.pinecone import PineconeVectorStore
from app.settings import init_settings
from app.engine.loader import get_documents
logging.basicConfig(level=logging.INFO)
logger = logging.getLogger()
def generate_datasource():
logger.info("Creating new index")
# load the documents and create the index
documents = get_documents()
store = PineconeVectorStore(
api_key=os.environ["PINECONE_API_KEY"],
index_name=os.environ["PINECONE_INDEX_NAME"],
environment=os.environ["PINECONE_ENVIRONMENT"],
)
storage_context = StorageContext.from_defaults(vector_store=store)
VectorStoreIndex.from_documents(
documents,
storage_context=storage_context,
show_progress=True, # this will show you a progress bar as the embeddings are created
)
logger.info(
f"Successfully created embeddings and save to your Pinecone index {os.environ['PINECONE_INDEX_NAME']}"
)
if __name__ == "__main__":
init_settings()
generate_datasource()
@@ -0,0 +1,20 @@
import logging
import os
from llama_index.core.indices import VectorStoreIndex
from llama_index.vector_stores.pinecone import PineconeVectorStore
logger = logging.getLogger("uvicorn")
def get_index():
logger.info("Connecting to index from Pinecone...")
store = PineconeVectorStore(
api_key=os.environ["PINECONE_API_KEY"],
index_name=os.environ["PINECONE_INDEX_NAME"],
environment=os.environ["PINECONE_ENVIRONMENT"],
)
index = VectorStoreIndex.from_vector_store(store)
logger.info("Finished connecting to index from Pinecone.")
return index
@@ -1,19 +0,0 @@
import os
from llama_index.vector_stores.pinecone import PineconeVectorStore
def get_vector_store():
api_key = os.getenv("PINECONE_API_KEY")
index_name = os.getenv("PINECONE_INDEX_NAME")
environment = os.getenv("PINECONE_ENVIRONMENT")
if not api_key or not index_name or not environment:
raise ValueError(
"Please set PINECONE_API_KEY, PINECONE_INDEX_NAME, and PINECONE_ENVIRONMENT"
" to your environment variables or config them in the .env file"
)
store = PineconeVectorStore(
api_key=api_key,
index_name=index_name,
environment=environment,
)
return store
@@ -1,19 +0,0 @@
import os
from llama_index.vector_stores.qdrant import QdrantVectorStore
def get_vector_store():
collection_name = os.getenv("QDRANT_COLLECTION")
url = os.getenv("QDRANT_URL")
api_key = os.getenv("QDRANT_API_KEY")
if not collection_name or not url:
raise ValueError(
"Please set QDRANT_COLLECTION, QDRANT_URL"
" to your environment variables or config them in the .env file"
)
store = QdrantVectorStore(
collection_name=collection_name,
url=url,
api_key=api_key,
)
return store
@@ -1,40 +0,0 @@
/* eslint-disable turbo/no-undeclared-env-vars */
import * as dotenv from "dotenv";
import { VectorStoreIndex, storageContextFromDefaults } from "llamaindex";
import { AstraDBVectorStore } from "llamaindex/storage/vectorStore/AstraDBVectorStore";
import { getDocuments } from "./loader";
import { initSettings } from "./settings";
import { checkRequiredEnvVars } from "./shared";
dotenv.config();
async function loadAndIndex() {
// load objects from storage and convert them into LlamaIndex Document objects
const documents = await getDocuments();
// create vector store and a collection
const collectionName = process.env.ASTRA_DB_COLLECTION!;
const vectorStore = new AstraDBVectorStore();
await vectorStore.create(collectionName, {
vector: {
dimension: parseInt(process.env.EMBEDDING_DIM!),
metric: "cosine",
},
});
await vectorStore.connect(collectionName);
// create index from documents and store them in Astra
console.log("Start creating embeddings...");
const storageContext = await storageContextFromDefaults({ vectorStore });
await VectorStoreIndex.fromDocuments(documents, { storageContext });
console.log(
"Successfully created embeddings and save to your Astra database.",
);
}
(async () => {
checkRequiredEnvVars();
initSettings();
await loadAndIndex();
console.log("Finished generating storage.");
})();
@@ -1,11 +0,0 @@
/* eslint-disable turbo/no-undeclared-env-vars */
import { VectorStoreIndex } from "llamaindex";
import { AstraDBVectorStore } from "llamaindex/storage/vectorStore/AstraDBVectorStore";
import { checkRequiredEnvVars } from "./shared";
export async function getDataSource() {
checkRequiredEnvVars();
const store = new AstraDBVectorStore();
await store.connect(process.env.ASTRA_DB_COLLECTION!);
return await VectorStoreIndex.fromVectorStore(store);
}
@@ -1,23 +0,0 @@
const REQUIRED_ENV_VARS = [
"ASTRA_DB_APPLICATION_TOKEN",
"ASTRA_DB_ENDPOINT",
"ASTRA_DB_COLLECTION",
"EMBEDDING_DIM",
];
export function checkRequiredEnvVars() {
const missingEnvVars = REQUIRED_ENV_VARS.filter((envVar) => {
return !process.env[envVar];
});
if (missingEnvVars.length > 0) {
console.log(
`The following environment variables are required but missing: ${missingEnvVars.join(
", ",
)}`,
);
throw new Error(
`Missing environment variables: ${missingEnvVars.join(", ")}`,
);
}
}
@@ -1,37 +0,0 @@
/* eslint-disable turbo/no-undeclared-env-vars */
import * as dotenv from "dotenv";
import { VectorStoreIndex, storageContextFromDefaults } from "llamaindex";
import { ChromaVectorStore } from "llamaindex/storage/vectorStore/ChromaVectorStore";
import { getDocuments } from "./loader";
import { initSettings } from "./settings";
import { checkRequiredEnvVars } from "./shared";
dotenv.config();
async function loadAndIndex() {
// load objects from storage and convert them into LlamaIndex Document objects
const documents = await getDocuments();
// create vector store
const chromaUri = `http://${process.env.CHROMA_HOST}:${process.env.CHROMA_PORT}`;
const vectorStore = new ChromaVectorStore({
collectionName: process.env.CHROMA_COLLECTION,
chromaClientParams: { path: chromaUri },
});
// create index from all the Documentss and store them in Pinecone
console.log("Start creating embeddings...");
const storageContext = await storageContextFromDefaults({ vectorStore });
await VectorStoreIndex.fromDocuments(documents, { storageContext });
console.log(
"Successfully created embeddings and save to your ChromaDB index.",
);
}
(async () => {
checkRequiredEnvVars();
initSettings();
await loadAndIndex();
console.log("Finished generating storage.");
})();
@@ -1,16 +0,0 @@
/* eslint-disable turbo/no-undeclared-env-vars */
import { VectorStoreIndex } from "llamaindex";
import { ChromaVectorStore } from "llamaindex/storage/vectorStore/ChromaVectorStore";
import { checkRequiredEnvVars } from "./shared";
export async function getDataSource() {
checkRequiredEnvVars();
const chromaUri = `http://${process.env.CHROMA_HOST}:${process.env.CHROMA_PORT}`;
const store = new ChromaVectorStore({
collectionName: process.env.CHROMA_COLLECTION,
chromaClientParams: { path: chromaUri },
});
return await VectorStoreIndex.fromVectorStore(store);
}
@@ -1,18 +0,0 @@
const REQUIRED_ENV_VARS = ["CHROMA_COLLECTION", "CHROMA_HOST", "CHROMA_PORT"];
export function checkRequiredEnvVars() {
const missingEnvVars = REQUIRED_ENV_VARS.filter((envVar) => {
return !process.env[envVar];
});
if (missingEnvVars.length > 0) {
console.log(
`The following environment variables are required but missing: ${missingEnvVars.join(
", ",
)}`,
);
throw new Error(
`Missing environment variables: ${missingEnvVars.join(", ")}`,
);
}
}
@@ -1,10 +1,16 @@
/* eslint-disable turbo/no-undeclared-env-vars */
import * as dotenv from "dotenv";
import { VectorStoreIndex, storageContextFromDefaults } from "llamaindex";
import { MilvusVectorStore } from "llamaindex/storage/vectorStore/MilvusVectorStore";
import { getDocuments } from "./loader";
import { initSettings } from "./settings";
import { checkRequiredEnvVars, getMilvusClient } from "./shared";
import {
MilvusVectorStore,
SimpleDirectoryReader,
VectorStoreIndex,
storageContextFromDefaults,
} from "llamaindex";
import {
STORAGE_DIR,
checkRequiredEnvVars,
getMilvusClient,
} from "./shared.mjs";
dotenv.config();
@@ -12,7 +18,9 @@ const collectionName = process.env.MILVUS_COLLECTION;
async function loadAndIndex() {
// load objects from storage and convert them into LlamaIndex Document objects
const documents = await getDocuments();
const documents = await new SimpleDirectoryReader().loadData({
directoryPath: STORAGE_DIR,
});
// Connect to Milvus
const milvusClient = getMilvusClient();
@@ -30,7 +38,6 @@ async function loadAndIndex() {
(async () => {
checkRequiredEnvVars();
initSettings();
await loadAndIndex();
console.log("Finished generating storage.");
})();
@@ -1,11 +1,35 @@
import { VectorStoreIndex } from "llamaindex";
import { MilvusVectorStore } from "llamaindex/storage/vectorStore/MilvusVectorStore";
import { checkRequiredEnvVars, getMilvusClient } from "./shared";
import {
ContextChatEngine,
LLM,
MilvusVectorStore,
serviceContextFromDefaults,
VectorStoreIndex,
} from "llamaindex";
import {
checkRequiredEnvVars,
CHUNK_OVERLAP,
CHUNK_SIZE,
getMilvusClient,
} from "./shared.mjs";
export async function getDataSource() {
async function getDataSource(llm: LLM) {
checkRequiredEnvVars();
const serviceContext = serviceContextFromDefaults({
llm,
chunkSize: CHUNK_SIZE,
chunkOverlap: CHUNK_OVERLAP,
});
const milvusClient = getMilvusClient();
const store = new MilvusVectorStore({ milvusClient });
return await VectorStoreIndex.fromVectorStore(store);
return await VectorStoreIndex.fromVectorStore(store, serviceContext);
}
export async function createChatEngine(llm: LLM) {
const index = await getDataSource(llm);
const retriever = index.asRetriever({ similarityTopK: 3 });
return new ContextChatEngine({
chatModel: llm,
retriever,
});
}
@@ -1,5 +1,9 @@
import { MilvusClient } from "@zilliz/milvus2-sdk-node";
export const STORAGE_DIR = "./data";
export const CHUNK_SIZE = 512;
export const CHUNK_OVERLAP = 20;
const REQUIRED_ENV_VARS = [
"MILVUS_ADDRESS",
"MILVUS_USERNAME",
@@ -13,7 +17,7 @@ export function getMilvusClient() {
throw new Error("MILVUS_ADDRESS environment variable is required");
}
return new MilvusClient({
address: process.env.MILVUS_ADDRESS!,
address: process.env.MILVUS_ADDRESS,
username: process.env.MILVUS_USERNAME,
password: process.env.MILVUS_PASSWORD,
});
@@ -1,17 +1,19 @@
/* eslint-disable turbo/no-undeclared-env-vars */
import * as dotenv from "dotenv";
import { VectorStoreIndex, storageContextFromDefaults } from "llamaindex";
import { MongoDBAtlasVectorSearch } from "llamaindex/storage/vectorStore/MongoDBAtlasVectorSearch";
import {
MongoDBAtlasVectorSearch,
SimpleDirectoryReader,
VectorStoreIndex,
storageContextFromDefaults,
} from "llamaindex";
import { MongoClient } from "mongodb";
import { getDocuments } from "./loader";
import { initSettings } from "./settings";
import { checkRequiredEnvVars } from "./shared";
import { STORAGE_DIR, checkRequiredEnvVars } from "./shared.mjs";
dotenv.config();
const mongoUri = process.env.MONGODB_URI!;
const databaseName = process.env.MONGODB_DATABASE!;
const vectorCollectionName = process.env.MONGODB_VECTORS!;
const mongoUri = process.env.MONGO_URI;
const databaseName = process.env.MONGODB_DATABASE;
const vectorCollectionName = process.env.MONGODB_VECTORS;
const indexName = process.env.MONGODB_VECTOR_INDEX;
async function loadAndIndex() {
@@ -19,7 +21,9 @@ async function loadAndIndex() {
const client = new MongoClient(mongoUri);
// load objects from storage and convert them into LlamaIndex Document objects
const documents = await getDocuments();
const documents = await new SimpleDirectoryReader().loadData({
directoryPath: STORAGE_DIR,
});
// create Atlas as a vector store
const vectorStore = new MongoDBAtlasVectorSearch({
@@ -40,7 +44,6 @@ async function loadAndIndex() {
(async () => {
checkRequiredEnvVars();
initSettings();
await loadAndIndex();
console.log("Finished generating storage.");
})();
@@ -1,18 +1,37 @@
/* eslint-disable turbo/no-undeclared-env-vars */
import { VectorStoreIndex } from "llamaindex";
import { MongoDBAtlasVectorSearch } from "llamaindex/storage/vectorStore/MongoDBAtlasVectorSearch";
import {
ContextChatEngine,
LLM,
MongoDBAtlasVectorSearch,
serviceContextFromDefaults,
VectorStoreIndex,
} from "llamaindex";
import { MongoClient } from "mongodb";
import { checkRequiredEnvVars } from "./shared";
import { checkRequiredEnvVars, CHUNK_OVERLAP, CHUNK_SIZE } from "./shared.mjs";
export async function getDataSource() {
async function getDataSource(llm: LLM) {
checkRequiredEnvVars();
const client = new MongoClient(process.env.MONGO_URI!);
const serviceContext = serviceContextFromDefaults({
llm,
chunkSize: CHUNK_SIZE,
chunkOverlap: CHUNK_OVERLAP,
});
const store = new MongoDBAtlasVectorSearch({
mongodbClient: client,
dbName: process.env.MONGODB_DATABASE!,
collectionName: process.env.MONGODB_VECTORS!,
dbName: process.env.MONGODB_DATABASE,
collectionName: process.env.MONGODB_VECTORS,
indexName: process.env.MONGODB_VECTOR_INDEX,
});
return await VectorStoreIndex.fromVectorStore(store);
return await VectorStoreIndex.fromVectorStore(store, serviceContext);
}
export async function createChatEngine(llm: LLM) {
const index = await getDataSource(llm);
const retriever = index.asRetriever({ similarityTopK: 3 });
return new ContextChatEngine({
chatModel: llm,
retriever,
});
}
@@ -1,5 +1,9 @@
export const STORAGE_DIR = "./data";
export const CHUNK_SIZE = 512;
export const CHUNK_OVERLAP = 20;
const REQUIRED_ENV_VARS = [
"MONGODB_URI",
"MONGO_URI",
"MONGODB_DATABASE",
"MONGODB_VECTORS",
"MONGODB_VECTOR_INDEX",
@@ -0,0 +1,4 @@
export const STORAGE_DIR = "./data";
export const STORAGE_CACHE_DIR = "./cache";
export const CHUNK_SIZE = 512;
export const CHUNK_OVERLAP = 20;
@@ -1,39 +1,53 @@
import { VectorStoreIndex } from "llamaindex";
import { storageContextFromDefaults } from "llamaindex/storage/StorageContext";
import {
serviceContextFromDefaults,
SimpleDirectoryReader,
storageContextFromDefaults,
VectorStoreIndex,
} from "llamaindex";
import * as dotenv from "dotenv";
import { getDocuments } from "./loader";
import { initSettings } from "./settings";
import { STORAGE_CACHE_DIR } from "./shared";
import {
CHUNK_OVERLAP,
CHUNK_SIZE,
STORAGE_CACHE_DIR,
STORAGE_DIR,
} from "./constants.mjs";
// Load environment variables from local .env file
dotenv.config();
async function getRuntime(func: any) {
async function getRuntime(func) {
const start = Date.now();
await func();
const end = Date.now();
return end - start;
}
async function generateDatasource() {
async function generateDatasource(serviceContext) {
console.log(`Generating storage context...`);
// Split documents, create embeddings and store them in the storage context
const ms = await getRuntime(async () => {
const storageContext = await storageContextFromDefaults({
persistDir: STORAGE_CACHE_DIR,
});
const documents = await getDocuments();
const documents = await new SimpleDirectoryReader().loadData({
directoryPath: STORAGE_DIR,
});
await VectorStoreIndex.fromDocuments(documents, {
storageContext,
serviceContext,
});
});
console.log(`Storage context successfully generated in ${ms / 1000}s.`);
}
(async () => {
initSettings();
await generateDatasource();
const serviceContext = serviceContextFromDefaults({
chunkSize: CHUNK_SIZE,
chunkOverlap: CHUNK_OVERLAP,
});
await generateDatasource(serviceContext);
console.log("Finished generating storage.");
})();
@@ -1,8 +1,19 @@
import { SimpleDocumentStore, VectorStoreIndex } from "llamaindex";
import { storageContextFromDefaults } from "llamaindex/storage/StorageContext";
import { STORAGE_CACHE_DIR } from "./shared";
import {
ContextChatEngine,
LLM,
serviceContextFromDefaults,
SimpleDocumentStore,
storageContextFromDefaults,
VectorStoreIndex,
} from "llamaindex";
import { CHUNK_OVERLAP, CHUNK_SIZE, STORAGE_CACHE_DIR } from "./constants.mjs";
export async function getDataSource() {
async function getDataSource(llm: LLM) {
const serviceContext = serviceContextFromDefaults({
llm,
chunkSize: CHUNK_SIZE,
chunkOverlap: CHUNK_OVERLAP,
});
const storageContext = await storageContextFromDefaults({
persistDir: `${STORAGE_CACHE_DIR}`,
});
@@ -11,9 +22,23 @@ export async function getDataSource() {
(storageContext.docStore as SimpleDocumentStore).toDict(),
).length;
if (numberOfDocs === 0) {
return null;
throw new Error(
`StorageContext is empty - call 'npm run generate' to generate the storage first`,
);
}
return await VectorStoreIndex.init({
storageContext,
serviceContext,
});
}
export async function createChatEngine(llm: LLM) {
const index = await getDataSource(llm);
const retriever = index.asRetriever();
retriever.similarityTopK = 3;
return new ContextChatEngine({
chatModel: llm,
retriever,
});
}

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