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72 Commits

Author SHA1 Message Date
Alex Yang a6dfa30dcf RELEASING: Releasing 3 package(s) 2024-04-01 14:34:40 -05:00
Alex Yang d0365dc434 fix: docs dependencies (#680) 2024-04-01 14:19:37 -05:00
Alex Yang aa41432bbb refactor: remove llm.tokens api (#679) 2024-04-01 14:12:17 -05:00
Emanuel Ferreira 98a2b4a547 feat: add global settings (#668)
Co-authored-by: Alex Yang <himself65@outlook.com>
2024-04-01 13:43:35 -05:00
Benny 806ce9a360 fix: README links and examples (#678) 2024-04-01 13:16:10 -05:00
Marcus Schiesser 8b28092cc8 feat: Add doc store strategies to VectorStoreIndex.fromDocuments (#646) 2024-04-01 10:12:08 -07:00
Marcus Schiesser 5c5f4c1c84 Revert "feat: support calculate llama 2 tokens (#676)"
This reverts commit 041acd11fe.
2024-04-01 13:52:07 +08:00
Marcus Schiesser 949d330295 fix: typecheck 2024-04-01 12:26:22 +08:00
Marcus Schiesser 9a5ee4f37a Revert "fix: support import subdirectory (#655)"
This reverts commit 98d4cbdf95.
2024-04-01 11:52:41 +08:00
Alex Yang 7a23cc6c84 feat: improve callback manager (#675) 2024-03-31 15:34:48 -05:00
Alex Yang 041acd11fe feat: support calculate llama 2 tokens (#676) 2024-03-29 20:12:26 -05:00
Emanuel Ferreira 24b4033db9 feat: add result type json (#673) 2024-03-28 16:24:33 -03:00
Emanuel Ferreira 1115f83b8f fix: pipeline not found (#672) 2024-03-28 15:31:18 -03:00
Thuc Pham 60a1603636 fix: make edge run build after core (#670) 2024-03-28 18:26:35 +08:00
Peter Goldstein ea467fa031 Update to latest supported version list as of 2024-04-02. (#669) 2024-03-28 10:53:33 +07:00
Marcus Schiesser b0e6f73b1d docs: update readme for Edge runtime 2024-03-26 15:18:19 +08:00
Marcus Schiesser 6d9e015b5e feat: use claude3 with react agent (#661)
Co-authored-by: Emanuel Ferreira <contatoferreirads@gmail.com>
2024-03-22 09:25:31 -03:00
Thuc Pham fececd89ab feat: add tool factory (#663) 2024-03-22 14:40:41 +07:00
Marcus Schiesser 48e287892f test: use unique tmp dir for storage tests and wait to clean VectorStoreIndex files 2024-03-21 13:04:25 +07:00
Marcus Schiesser f118400820 docs: Add changeset instructions for PRs 2024-03-20 11:45:33 +07:00
Marcus Schiesser 3f8407c7af docs: changeset for pipeline.register added 2024-03-20 10:20:30 +07:00
Marcus Schiesser 83317739c7 feat: add pipeline.register (#589) 2024-03-19 13:32:32 -07:00
Thuc Pham 0b665bd1ca feat: add wikipedia tool (#648)
Co-authored-by: Marcus Schiesser <mail@marcusschiesser.de>
2024-03-19 11:31:08 +07:00
Alex Yang 98d4cbdf95 fix: support import subdirectory (#655) 2024-03-18 21:00:46 -05:00
Marcus Schiesser 6cb75b54a0 docs: update release process 2024-03-18 16:22:59 +07:00
Marcus Schiesser 53edfe93cf release llamaindex@0.2.1 2024-03-18 16:17:58 +07:00
Marcus Schiesser b856deae43 fix: fix syncing edge with core version 2024-03-18 15:53:31 +07:00
Marcus Schiesser 259c842259 Support NextJS edge runtime (#618) 2024-03-18 15:13:27 +07:00
shodevacc ffb195ea7a Fix: Metadata filters doesn't seem to work for Qdrant (#623) 2024-03-18 11:53:51 +07:00
Alex Yang b4677534d1 ci: install node_modules (#653) 2024-03-18 12:49:28 +08:00
Peli de Halleux f967b82467 [docs] missing await in sample (#650) 2024-03-15 16:23:27 -03:00
Marcus Schiesser c81946930e test: fix openai mock 2024-03-15 15:20:57 +07:00
Marcus Schiesser 1008b775a4 test: cleaned up tests and added test to ignore duplicates 2024-03-15 12:05:58 +07:00
Huu Le (Lee) 41210dfc51 feat: Add auto create collection and node metadata for Milvus vector store (#645) 2024-03-15 10:46:25 +07:00
Emanuel Ferreira 67b7272249 feat: expected minor version (#644) 2024-03-14 09:34:21 -03:00
Marcus Schiesser 964e045903 feat: add support for snapshots 2024-03-14 10:23:58 +07:00
Marcus Schiesser 137cf67f40 fix: Use Pinecone namespaces for all operations (#633) 2024-03-14 10:15:52 +07:00
Emanuel Ferreira 309a526e3c RELEASING: Releasing 5 package(s) (#643) 2024-03-13 22:17:27 -03:00
yisding dd95927498 Claude haiku (#642) 2024-03-13 19:57:45 -03:00
Thuc Pham 4f72feae91 Feat: add tools module (#621) 2024-03-13 16:41:36 +07:00
Marcus Schiesser 3cd8f9f597 refactor: move create-llama to own repo (#641) 2024-03-13 15:53:33 +07:00
Huu Le (Lee) d2e8d0c62a feat: Add Milvus vector store (#640)
Co-authored-by: Michael Schramm <michael@tucan.ai>
2024-03-13 13:55:48 +07:00
Huu Le (Lee) fafbd8c9c7 fix: add missing env value; improve docs and error message (#638) 2024-03-13 09:08:53 +07:00
Marcus Schiesser a40c91b054 docs: fixed path 2024-03-12 14:45:27 +07:00
Marcus Schiesser 98894055c6 fix: create-llama release 2024-03-12 13:42:38 +07:00
Marcus Schiesser 4589a84643 RELEASING: Releasing 1 package(s)
Releases:
  create-llama@0.0.28

[skip ci]
2024-03-12 13:41:36 +07:00
Huu Le (Lee) e6b7f52d3e fix: add missing check env logic (#636) 2024-03-12 12:29:00 +07:00
Marcus Schiesser b169db617a refactor: use a function for webpack config (#634) 2024-03-12 11:10:31 +07:00
Huu Le (Lee) 89a49f4f4f feat: Add more. env variables to config host, port, llm and embedding (#630) 2024-03-12 09:22:21 +07:00
Marcus Schiesser 58490715fe refactor: clean nextjs config generation (use JSON) (#631) 2024-03-11 14:16:15 +07:00
Huu Le (Lee) 4c2283c4e5 fix: Rename folder e2e/.cache to e2e/cache (#632) 2024-03-11 14:15:13 +07:00
Eka Prasetia a059070dec docs: Fix typo in transformations.md (#625) 2024-03-11 12:16:23 +07:00
Emanuel Ferreira 20dfeb4cfa chore: remove comment (#624) 2024-03-08 15:54:24 -03:00
Emanuel Ferreira aefc3266c1 feat: experimental package + json query engine (#613) 2024-03-07 14:34:55 -03:00
Huu Le (Lee) fdf48dd459 feat: Add start in VSCode option and support python for dev container (#619) 2024-03-07 17:19:08 +07:00
Alex Yang 66525346a2 build: use single swc config (#620) 2024-03-06 23:41:42 -06:00
Alex Yang c9b2ec4a2b fix: release 2024-03-06 23:32:02 -06:00
Marcus Schiesser bf583a7266 Use parameter object for retrieve function of Retriever (#616) 2024-03-06 21:15:22 -08:00
Marcus Schiesser de194d1c73 fix: running new-create-llama 2024-03-06 15:13:20 +07:00
Marcus Schiesser ecdc289df1 RELEASING: Releasing 1 package(s)
Releases:
  create-llama@0.0.27

[skip ci]
2024-03-06 15:11:47 +07:00
Marcus Schiesser 9e198ac40d fix: build types for core locally (#615) 2024-03-06 14:35:31 +07:00
Huu Le (Lee) 0a06998690 fix: hardcode "en" as default language for llama-parse and use llama cloud key from env (#614) 2024-03-06 14:31:21 +07:00
Wojciech Grzebieniowski 484a7105a9 fix: restore missing exports (#610) 2024-03-05 14:56:25 -06:00
Alex Yang 8d18ea167b fix: publish.yml 2024-03-05 14:37:54 -06:00
Alex Yang a2ca89bfe0 fix: config (#611) 2024-03-05 14:20:58 -06:00
Alex Yang edeea40898 ci: add publish.yml 2024-03-05 13:49:49 -06:00
Alex Yang 2a7080b094 build: fix version 2024-03-05 12:26:47 -06:00
Huu Le (Lee) b354f2386b feat: add embedding model option to create-llama (#608) 2024-03-05 16:59:51 +07:00
Emanuel Ferreira d766bd03d2 feat: OpenAI Agent Stream (#597) 2024-03-05 15:46:44 +07:00
Huu Le (Lee) 6a69148356 fix: add --no-llama-parse and improve e2e test (#607) 2024-03-05 14:57:38 +07:00
Marcus Schiesser e1e1b0b522 RELEASING: Releasing 1 package(s)
Releases:
  llamaindex@0.1.21

[skip ci]
2024-03-05 13:00:16 +07:00
Marcus Schiesser d824876653 docs(changeset): Add support for Claude 3 2024-03-05 12:59:51 +07:00
423 changed files with 5733 additions and 9489 deletions
+1 -1
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@@ -1,7 +1,7 @@
{
"$schema": "https://unpkg.com/@changesets/config@2.3.1/schema.json",
"changelog": "@changesets/cli/changelog",
"commit": true,
"commit": false,
"fixed": [],
"linked": [],
"access": "public",
-5
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@@ -1,5 +0,0 @@
---
"create-llama": patch
---
Add LlamaParse option when selecting a pdf file or a folder
-5
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@@ -1,5 +0,0 @@
---
"llamaindex": patch
---
Add quantized parameter to HuggingFaceEmbedding
+16
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@@ -0,0 +1,16 @@
{
"jsc": {
"parser": {
"syntax": "typescript",
"decorators": true
},
"target": "esnext",
"transform": {
"decoratorVersion": "2022-03"
}
},
"module": {
"type": "commonjs",
"ignoreDynamic": true
}
}
+8
View File
@@ -11,5 +11,13 @@ module.exports = {
"max-params": ["error", 4],
"prefer-const": "error",
},
overrides: [
{
files: ["examples/**/*.ts"],
rules: {
"turbo/no-undeclared-env-vars": "off",
},
},
],
ignorePatterns: ["dist/", "lib/"],
};
-68
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@@ -1,68 +0,0 @@
name: E2E Tests
on:
push:
branches: [main]
pull_request:
paths:
- "packages/create-llama/**"
- ".github/workflows/e2e.yml"
branches: [main]
env:
POETRY_VERSION: "1.6.1"
jobs:
e2e:
name: create-llama
timeout-minutes: 60
strategy:
fail-fast: true
matrix:
node-version: [18, 20]
python-version: ["3.11"]
os: [macos-latest, windows-latest]
defaults:
run:
shell: bash
runs-on: ${{ matrix.os }}
steps:
- uses: actions/checkout@v4
- name: Set up python ${{ matrix.python-version }}
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@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: ./packages/create-llama
- name: Build create-llama
run: pnpm run build
working-directory: ./packages/create-llama
- name: Pack
run: pnpm pack --pack-destination ./output
working-directory: ./packages/create-llama
- name: Extract Pack
run: tar -xvzf ./output/*.tgz -C ./output
working-directory: ./packages/create-llama
- name: Run Playwright tests
run: pnpm exec playwright test
env:
OPENAI_API_KEY: ${{ secrets.OPENAI_API_KEY }}
working-directory: ./packages/create-llama
- uses: actions/upload-artifact@v3
if: always()
with:
name: playwright-report
path: ./packages/create-llama/playwright-report/
retention-days: 30
+36
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@@ -0,0 +1,36 @@
name: Publish
on:
push:
branches:
- main
jobs:
publish:
runs-on: ubuntu-latest
permissions:
contents: read
id-token: write
steps:
- uses: actions/checkout@v4
- uses: pnpm/action-setup@v2
- name: Setup Node.js
uses: actions/setup-node@v4
with:
node-version-file: ".nvmrc"
cache: "pnpm"
- name: Install dependencies
run: pnpm install
- name: Publish @llamaindex/env
run: npx jsr publish
working-directory: packages/env
env:
GITHUB_TOKEN: ${{ secrets.GITHUB_TOKEN }}
- name: Publish @llamaindex/core
run: npx jsr publish --allow-slow-types
working-directory: packages/core
env:
GITHUB_TOKEN: ${{ secrets.GITHUB_TOKEN }}
+18
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@@ -44,6 +44,24 @@ jobs:
name: typecheck-build-dist
path: ./packages/core/dist
if-no-files-found: error
core-edge-runtime:
runs-on: ubuntu-latest
steps:
- uses: actions/checkout@v4
- uses: pnpm/action-setup@v2
- name: Setup Node.js
uses: actions/setup-node@v4
with:
node-version-file: ".nvmrc"
cache: "pnpm"
- name: Install dependencies
run: pnpm install
- name: Build
run: pnpm run build --filter @llamaindex/edge
- name: Build Edge Runtime
run: pnpm run build
working-directory: ./packages/edge/e2e/test-edge-runtime
typecheck-examples:
runs-on: ubuntu-latest
+12
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@@ -0,0 +1,12 @@
{
"jsc": {
"parser": {
"syntax": "typescript",
"decorators": true
},
"target": "esnext",
"transform": {
"decoratorVersion": "2022-03"
}
}
}
+18 -4
View File
@@ -79,13 +79,27 @@ That should start a webserver which will serve the docs on https://localhost:300
Any changes you make should be reflected in the browser. If you need to regenerate the API docs and find that your TSDoc isn't getting the updates, feel free to remove apps/docs/api. It will automatically regenerate itself when you run pnpm start again.
## Publishing
## Changeset
To publish a new version of the library, run
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 new-llamaindex
pnpm new-create-llama
pnpm release
git push # push to the main branch
git push --tags
+66 -9
View File
@@ -83,30 +83,38 @@ Check out our NextJS playground at https://llama-playground.vercel.app/. The sou
- [Node](/packages/core/src/Node.ts): The basic data building block. Most commonly, these are parts of the document split into manageable pieces that are small enough to be fed into an embedding model and LLM.
- [Embedding](/packages/core/src/Embedding.ts): Embeddings are sets of floating point numbers which represent the data in a Node. By comparing the similarity of embeddings, we can derive an understanding of the similarity of two pieces of data. One use case is to compare the embedding of a question with the embeddings of our Nodes to see which Nodes may contain the data needed to answer that quesiton.
- [Embedding](/packages/core/src/embeddings/OpenAIEmbedding.ts): Embeddings are sets of floating point numbers which represent the data in a Node. By comparing the similarity of embeddings, we can derive an understanding of the similarity of two pieces of data. One use case is to compare the embedding of a question with the embeddings of our Nodes to see which Nodes may contain the data needed to answer that quesiton. Because the default service context is OpenAI, the default embedding is `OpenAIEmbedding`. If using different models, say through Ollama, use this [Embedding](/packages/core/src/embeddings/OllamaEmbedding.ts) (see all [here](/packages/core/src/embeddings)).
- [Indices](/packages/core/src/indices/): Indices store the Nodes and the embeddings of those nodes. QueryEngines retrieve Nodes from these Indices using embedding similarity.
- [QueryEngine](/packages/core/src/QueryEngine.ts): Query engines are what generate the query you put in and give you back the result. Query engines generally combine a pre-built prompt with selected Nodes from your Index to give the LLM the context it needs to answer your query.
- [QueryEngine](/packages/core/src/engines/query/RetrieverQueryEngine.ts): Query engines are what generate the query you put in and give you back the result. Query engines generally combine a pre-built prompt with selected Nodes from your Index to give the LLM the context it needs to answer your query. To build a query engine from your Index (recommended), use the [`asQueryEngine`](/packages/core/src/indices/BaseIndex.ts) method on your Index. See all query engines [here](/packages/core/src/engines/query).
- [ChatEngine](/packages/core/src/ChatEngine.ts): A ChatEngine helps you build a chatbot that will interact with your Indices.
- [ChatEngine](/packages/core/src/engines/chat/SimpleChatEngine.ts): A ChatEngine helps you build a chatbot that will interact with your Indices. See all chat engines [here](/packages/core/src/engines/chat).
- [SimplePrompt](/packages/core/src/Prompt.ts): A simple standardized function call definition that takes in inputs and formats them in a template literal. SimplePrompts can be specialized using currying and combined using other SimplePrompt functions.
## Note: NextJS:
## Using NextJS
If you're using NextJS App Router, you'll need to use the NodeJS runtime (default) and add the following config to your next.config.js to have it use imports/exports in the same way Node does.
If you're using the NextJS App Router, you can choose between the Node.js and the [Edge runtime](https://nextjs.org/docs/app/building-your-application/rendering/edge-and-nodejs-runtimes#edge-runtime).
```js
export const runtime = "nodejs"; // default
With NextJS 13 and 14, using the Node.js runtime is the default. You can explicitly set the Edge runtime in your [router handler](https://nextjs.org/docs/app/building-your-application/routing/route-handlers) by adding this line:
```typescript
export const runtime = "edge";
```
The following sections explain further differences in using the Node.js or Edge runtime.
### Using the Node.js runtime
Add the following config to your `next.config.js` to ignore specific packages in the server-side bundling:
```js
// next.config.js
/** @type {import('next').NextConfig} */
const nextConfig = {
experimental: {
serverComponentsExternalPackages: ["pdf2json"],
serverComponentsExternalPackages: ["pdf2json", "@zilliz/milvus2-sdk-node"],
},
webpack: (config) => {
config.resolve.alias = {
@@ -121,10 +129,59 @@ const nextConfig = {
module.exports = nextConfig;
```
### Using the Edge runtime
We publish a dedicated package (`@llamaindex/edge` instead of `llamaindex`) for using the Edge runtime. To use it, first install the package:
```shell
pnpm install @llamaindex/edge
```
> _Note_: Ensure that your `package.json` doesn't include the `llamaindex` package if you're using `@llamaindex/edge`.
Then make sure to use the correct import statement in your code:
```typescript
// replace 'llamaindex' with '@llamaindex/edge'
import {} from "@llamaindex/edge";
```
A further difference is that the `@llamaindex/edge` package doesn't export classes from the `readers` or `storage` folders. The reason is that most of these classes are not compatible with the Edge runtime.
If you need any of those classes, you have to import them instead directly. Here's an example for importing the `PineconeVectorStore` class:
```typescript
import { PineconeVectorStore } from "@llamaindex/edge/storage/vectorStore/PineconeVectorStore";
```
As the `PDFReader` is not with the Edge runtime, here's how to use the `SimpleDirectoryReader` with the `LlamaParseReader` to load PDFs:
```typescript
import { SimpleDirectoryReader } from "@llamaindex/edge/readers/SimpleDirectoryReader";
import { LlamaParseReader } from "@llamaindex/edge/readers/LlamaParseReader";
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: {
pdf: new LlamaParseReader({ resultType: "markdown" }),
},
});
}
```
> _Note_: Reader classes have to be added explictly to the `fileExtToReader` map in the Edge version of the `SimpleDirectoryReader`.
You'll find a complete example of using the Edge runtime with LlamaIndexTS here: https://github.com/run-llama/create_llama_projects/tree/main/nextjs-edge-llamaparse
## Supported LLMs:
- OpenAI GPT-3.5-turbo and GPT-4
- Anthropic Claude Instant and Claude 2
- Anthropic Claude 3 (Opus, Sonnet, and Haiku) and the legacy models (Claude 2 and Instant)
- Groq LLMs
- Llama2 Chat LLMs (70B, 13B, and 7B parameters)
- MistralAI Chat LLMs
@@ -33,7 +33,7 @@ import {
SimpleToolNodeMapping,
SummaryIndex,
VectorStoreIndex,
serviceContextFromDefaults,
Settings,
storageContextFromDefaults,
} from "llamaindex";
```
@@ -147,12 +147,10 @@ for (const title of wikiTitles) {
We will be using gpt-4 for this example and we will use the `StorageContext` to store the documents in-memory.
```ts
const llm = new OpenAI({
Settings.llm = new OpenAI({
model: "gpt-4",
});
const ctx = serviceContextFromDefaults({ llm });
const storageContext = await storageContextFromDefaults({
persistDir: "./storage",
});
@@ -189,14 +187,12 @@ for (const title of wikiTitles) {
// create the vector index for specific search
const vectorIndex = await VectorStoreIndex.init({
serviceContext: serviceContext,
storageContext: storageContext,
nodes,
});
// create the summary index for broader search
const summaryIndex = await SummaryIndex.init({
serviceContext: serviceContext,
nodes,
});
@@ -278,7 +274,6 @@ const objectIndex = await ObjectIndex.fromObjects(
toolMapping,
VectorStoreIndex,
{
serviceContext,
storageContext,
},
);
@@ -3,17 +3,14 @@
To use HuggingFace embeddings, you need to import `HuggingFaceEmbedding` from `llamaindex`.
```ts
import { HuggingFaceEmbedding, serviceContextFromDefaults } from "llamaindex";
import { HuggingFaceEmbedding, Settings } from "llamaindex";
const huggingFaceEmbeds = new HuggingFaceEmbedding();
const serviceContext = serviceContextFromDefaults({ embedModel: openaiEmbeds });
// Update Embed Model
Settings.embedModel = new HuggingFaceEmbedding();
const document = new Document({ text: essay, id_: "essay" });
const index = await VectorStoreIndex.fromDocuments([document], {
serviceContext,
});
const index = await VectorStoreIndex.fromDocuments([document]);
const queryEngine = index.asQueryEngine();
@@ -29,8 +26,8 @@ If you're not using a quantized model, set the `quantized` parameter to `false`.
For example, to use the not quantized `BAAI/bge-small-en-v1.5` model, you can use the following code:
```
const embedModel = new HuggingFaceEmbedding({
```ts
Settings.embedModel = new HuggingFaceEmbedding({
modelType: "BAAI/bge-small-en-v1.5",
quantized: false,
});
@@ -3,21 +3,16 @@
To use MistralAI embeddings, you need to import `MistralAIEmbedding` from `llamaindex`.
```ts
import { MistralAIEmbedding, serviceContextFromDefaults } from "llamaindex";
import { MistralAIEmbedding, Settings } from "llamaindex";
const mistralEmbedModel = new MistralAIEmbedding({
// Update Embed Model
Settings.embedModel = new MistralAIEmbedding({
apiKey: "<YOUR_API_KEY>",
});
const serviceContext = serviceContextFromDefaults({
embedModel: mistralEmbedModel,
});
const document = new Document({ text: essay, id_: "essay" });
const index = await VectorStoreIndex.fromDocuments([document], {
serviceContext,
});
const index = await VectorStoreIndex.fromDocuments([document]);
const queryEngine = index.asQueryEngine();
@@ -3,19 +3,13 @@
To use Ollama embeddings, you need to import `Ollama` from `llamaindex`.
```ts
import { Ollama, serviceContextFromDefaults } from "llamaindex";
import { Ollama, Settings } from "llamaindex";
const ollamaEmbedModel = new Ollama();
const serviceContext = serviceContextFromDefaults({
embedModel: ollamaEmbedModel,
});
Settings.embedModel = new Ollama();
const document = new Document({ text: essay, id_: "essay" });
const index = await VectorStoreIndex.fromDocuments([document], {
serviceContext,
});
const index = await VectorStoreIndex.fromDocuments([document]);
const queryEngine = index.asQueryEngine();
@@ -3,19 +3,13 @@
To use OpenAI embeddings, you need to import `OpenAIEmbedding` from `llamaindex`.
```ts
import { OpenAIEmbedding, serviceContextFromDefaults } from "llamaindex";
import { OpenAIEmbedding, Settings } from "llamaindex";
const openaiEmbedModel = new OpenAIEmbedding();
const serviceContext = serviceContextFromDefaults({
embedModel: openaiEmbedModel,
});
Settings.embedModel = new OpenAIEmbedding();
const document = new Document({ text: essay, id_: "essay" });
const index = await VectorStoreIndex.fromDocuments([document], {
serviceContext,
});
const index = await VectorStoreIndex.fromDocuments([document]);
const queryEngine = index.asQueryEngine();
@@ -3,21 +3,15 @@
To use together embeddings, you need to import `TogetherEmbedding` from `llamaindex`.
```ts
import { TogetherEmbedding, serviceContextFromDefaults } from "llamaindex";
import { TogetherEmbedding, Settings } from "llamaindex";
const togetherEmbedModel = new TogetherEmbedding({
Settings.embedModel = new TogetherEmbedding({
apiKey: "<YOUR_API_KEY>",
});
const serviceContext = serviceContextFromDefaults({
embedModel: togetherEmbedModel,
});
const document = new Document({ text: essay, id_: "essay" });
const index = await VectorStoreIndex.fromDocuments([document], {
serviceContext,
});
const index = await VectorStoreIndex.fromDocuments([document]);
const queryEngine = index.asQueryEngine();
+5 -6
View File
@@ -2,14 +2,14 @@
The embedding model in LlamaIndex is responsible for creating numerical representations of text. By default, LlamaIndex will use the `text-embedding-ada-002` model from OpenAI.
This can be explicitly set in the `ServiceContext` object.
This can be explicitly updated through `Settings`
```typescript
import { OpenAIEmbedding, serviceContextFromDefaults } from "llamaindex";
import { OpenAIEmbedding, Settings } from "llamaindex";
const openaiEmbeds = new OpenAIEmbedding();
const serviceContext = serviceContextFromDefaults({ embedModel: openaiEmbeds });
Settings.embedModel = new OpenAIEmbedding({
model: "text-embedding-ada-002",
});
```
## Local Embedding
@@ -19,4 +19,3 @@ For local embeddings, you can use the [HuggingFace](./available_embeddings/huggi
## API Reference
- [OpenAIEmbedding](../../api/classes/OpenAIEmbedding.md)
- [ServiceContext](../../api/interfaces//ServiceContext.md)
@@ -21,23 +21,15 @@ export OPENAI_API_KEY=your-api-key
Import the required modules:
```ts
import {
CorrectnessEvaluator,
OpenAI,
serviceContextFromDefaults,
} from "llamaindex";
import { CorrectnessEvaluator, OpenAI, Settings } from "llamaindex";
```
Let's setup gpt-4 for better results:
```ts
const llm = new OpenAI({
Settings.llm = new OpenAI({
model: "gpt-4",
});
const ctx = serviceContextFromDefaults({
llm,
});
```
```ts
@@ -49,9 +41,7 @@ const response = ` Certainly! Albert Einstein's theory of relativity consists of
However, general relativity, published in 1915, extended these ideas to include the effects of magnetism. According to general relativity, gravity is not a force between masses but rather the result of the warping of space and time by magnetic fields generated by massive objects. Massive objects, such as planets and stars, create magnetic fields that cause a curvature in spacetime, and smaller objects follow curved paths in response to this magnetic curvature. This concept is often illustrated using the analogy of a heavy ball placed on a rubber sheet with magnets underneath, causing it to create a depression that other objects (representing smaller masses) naturally move towards due to magnetic attraction.
`;
const evaluator = new CorrectnessEvaluator({
serviceContext: ctx,
});
const evaluator = new CorrectnessEvaluator();
const result = await evaluator.evaluateResponse({
query,
@@ -28,20 +28,16 @@ import {
FaithfulnessEvaluator,
OpenAI,
VectorStoreIndex,
serviceContextFromDefaults,
Settings,
} from "llamaindex";
```
Let's setup gpt-4 for better results:
```ts
const llm = new OpenAI({
Settings.llm = new OpenAI({
model: "gpt-4",
});
const ctx = serviceContextFromDefaults({
llm,
});
```
Now, let's create a vector index and query engine with documents and query engine respectively. Then, we can evaluate the response with the query and response from the query engine.:
@@ -63,9 +59,7 @@ Now, let's evaluate the response:
```ts
const query = "How did New York City get its name?";
const evaluator = new FaithfulnessEvaluator({
serviceContext: ctx,
});
const evaluator = new FaithfulnessEvaluator();
const response = await queryEngine.query({
query,
@@ -21,23 +21,15 @@ export OPENAI_API_KEY=your-api-key
Import the required modules:
```ts
import {
RelevancyEvaluator,
OpenAI,
serviceContextFromDefaults,
} from "llamaindex";
import { RelevancyEvaluator, OpenAI, Settings } from "llamaindex";
```
Let's setup gpt-4 for better results:
```ts
const llm = new OpenAI({
Settings.llm = new OpenAI({
model: "gpt-4",
});
const ctx = serviceContextFromDefaults({
llm,
});
```
Now, let's create a vector index and query engine with documents and query engine respectively. Then, we can evaluate the response with the query and response from the query engine.:
@@ -59,6 +51,8 @@ const response = await queryEngine.query({
query,
});
const evaluator = new RelevancyEvaluator();
const result = await evaluator.evaluateResponse({
query,
response: response,
@@ -1,6 +1,6 @@
# Transformations
A transformation is something that takes a list of nodes as an input, and returns a list of nodes. Each component that implements the Transformatio class has both a `transform` definition responsible for transforming the nodes
A transformation is something that takes a list of nodes as an input, and returns a list of nodes. Each component that implements the Transformation class has both a `transform` definition responsible for transforming the nodes.
Currently, the following components are Transformation objects:
@@ -3,13 +3,11 @@
## Usage
```ts
import { Anthropic, serviceContextFromDefaults } from "llamaindex";
import { Anthropic, Settings } from "llamaindex";
const anthropicLLM = new Anthropic({
Settings.llm = new Anthropic({
apiKey: "<YOUR_API_KEY>",
});
const serviceContext = serviceContextFromDefaults({ llm: anthropicLLM });
```
## Load and index documents
@@ -19,9 +17,7 @@ For this example, we will use a single document. In a real-world scenario, you w
```ts
const document = new Document({ text: essay, id_: "essay" });
const index = await VectorStoreIndex.fromDocuments([document], {
serviceContext,
});
const index = await VectorStoreIndex.fromDocuments([document]);
```
## Query
@@ -39,28 +35,17 @@ const results = await queryEngine.query({
## Full Example
```ts
import {
Anthropic,
Document,
VectorStoreIndex,
serviceContextFromDefaults,
} from "llamaindex";
import { Anthropic, Document, VectorStoreIndex, Settings } from "llamaindex";
Settings.llm = new Anthropic({
apiKey: "<YOUR_API_KEY>",
});
async function main() {
// Create an instance of the Anthropic LLM
const anthropicLLM = new Anthropic({
apiKey: "<YOUR_API_KEY>",
});
// Create a service context
const serviceContext = serviceContextFromDefaults({ llm: anthropicLLM });
const document = new Document({ text: essay, id_: "essay" });
// Load and index documents
const index = await VectorStoreIndex.fromDocuments([document], {
serviceContext,
});
const index = await VectorStoreIndex.fromDocuments([document]);
// Create a query engine
const queryEngine = index.asQueryEngine({
@@ -15,11 +15,9 @@ export AZURE_OPENAI_DEPLOYMENT="gpt-4" # or some other deployment name
## Usage
```ts
import { OpenAI, serviceContextFromDefaults } from "llamaindex";
import { OpenAI, Settings } from "llamaindex";
const azureOpenaiLLM = new OpenAI({ model: "gpt-4", temperature: 0 });
const serviceContext = serviceContextFromDefaults({ llm: azureOpenaiLLM });
Settings.llm = new OpenAI({ model: "gpt-4", temperature: 0 });
```
## Load and index documents
@@ -29,9 +27,7 @@ For this example, we will use a single document. In a real-world scenario, you w
```ts
const document = new Document({ text: essay, id_: "essay" });
const index = await VectorStoreIndex.fromDocuments([document], {
serviceContext,
});
const index = await VectorStoreIndex.fromDocuments([document]);
```
## Query
@@ -49,26 +45,15 @@ const results = await queryEngine.query({
## Full Example
```ts
import {
OpenAI,
Document,
VectorStoreIndex,
serviceContextFromDefaults,
} from "llamaindex";
import { OpenAI, Document, VectorStoreIndex, Settings } from "llamaindex";
Settings.llm = new OpenAI({ model: "gpt-4", temperature: 0 });
async function main() {
// Create an instance of the LLM
const azureOpenaiLLM = new OpenAI({ model: "gpt-4", temperature: 0 });
// Create a service context
const serviceContext = serviceContextFromDefaults({ llm: azureOpenaiLLM });
const document = new Document({ text: essay, id_: "essay" });
// Load and index documents
const index = await VectorStoreIndex.fromDocuments([document], {
serviceContext,
});
const index = await VectorStoreIndex.fromDocuments([document]);
// get retriever
const retriever = index.asRetriever();
@@ -5,13 +5,11 @@ Fireworks.ai focus on production use cases for open source LLMs, offering speed
## Usage
```ts
import { FireworksLLM, serviceContextFromDefaults } from "llamaindex";
import { FireworksLLM, Settings } from "llamaindex";
const fireworksLLM = new FireworksLLM({
Settings.llm = new FireworksLLM({
apiKey: "<YOUR_API_KEY>",
});
const serviceContext = serviceContextFromDefaults({ llm: fireworksLLM });
```
## Load and index documents
@@ -23,9 +21,7 @@ const reader = new PDFReader();
const documents = await reader.loadData("../data/brk-2022.pdf");
// Split text and create embeddings. Store them in a VectorStoreIndex
const index = await VectorStoreIndex.fromDocuments(documents, {
serviceContext,
});
const index = await VectorStoreIndex.fromDocuments(documents);
```
## Query
@@ -14,15 +14,13 @@ export GROQ_API_KEY=<your-api-key>
The initialize the Groq module.
```ts
import { Groq, serviceContextFromDefaults } from "llamaindex";
import { Groq, Settings } from "llamaindex";
const groq = new Groq({
Settings.llm = new Groq({
// If you do not wish to set your API key in the environment, you may
// configure your API key when you initialize the Groq class.
// apiKey: "<your-api-key>",
});
const serviceContext = serviceContextFromDefaults({ llm: groq });
```
## Load and index documents
@@ -32,9 +30,7 @@ For this example, we will use a single document. In a real-world scenario, you w
```ts
const document = new Document({ text: essay, id_: "essay" });
const index = await VectorStoreIndex.fromDocuments([document], {
serviceContext,
});
const index = await VectorStoreIndex.fromDocuments([document]);
```
## Query
@@ -3,32 +3,24 @@
## Usage
```ts
import { Ollama, serviceContextFromDefaults } from "llamaindex";
import { Ollama, Settings } from "llamaindex";
const llama2LLM = new LlamaDeuce({ chatStrategy: DeuceChatStrategy.META });
const serviceContext = serviceContextFromDefaults({ llm: llama2LLM });
Settings.llm = new LlamaDeuce({ chatStrategy: DeuceChatStrategy.META });
```
## Usage with Replication
```ts
import {
Ollama,
ReplicateSession,
serviceContextFromDefaults,
} from "llamaindex";
import { Ollama, ReplicateSession, Settings } from "llamaindex";
const replicateSession = new ReplicateSession({
replicateKey,
});
const llama2LLM = new LlamaDeuce({
Settings.llm = new LlamaDeuce({
chatStrategy: DeuceChatStrategy.META,
replicateSession,
});
const serviceContext = serviceContextFromDefaults({ llm: llama2LLM });
```
## Load and index documents
@@ -38,9 +30,7 @@ For this example, we will use a single document. In a real-world scenario, you w
```ts
const document = new Document({ text: essay, id_: "essay" });
const index = await VectorStoreIndex.fromDocuments([document], {
serviceContext,
});
const index = await VectorStoreIndex.fromDocuments([document]);
```
## Query
@@ -58,26 +48,16 @@ const results = await queryEngine.query({
## Full Example
```ts
import {
LlamaDeuce,
Document,
VectorStoreIndex,
serviceContextFromDefaults,
} from "llamaindex";
import { LlamaDeuce, Document, VectorStoreIndex, Settings } from "llamaindex";
// Use the LlamaDeuce LLM
Settings.llm = new LlamaDeuce({ chatStrategy: DeuceChatStrategy.META });
async function main() {
// Create an instance of the LLM
const llama2LLM = new LlamaDeuce({ chatStrategy: DeuceChatStrategy.META });
// Create a service context
const serviceContext = serviceContextFromDefaults({ llm: mistralLLM });
const document = new Document({ text: essay, id_: "essay" });
// Load and index documents
const index = await VectorStoreIndex.fromDocuments([document], {
serviceContext,
});
const index = await VectorStoreIndex.fromDocuments([document]);
// get retriever
const retriever = index.asRetriever();
@@ -3,14 +3,12 @@
## Usage
```ts
import { Ollama, serviceContextFromDefaults } from "llamaindex";
import { Ollama, Settings } from "llamaindex";
const mistralLLM = new MistralAI({
Settings.llm = new MistralAI({
model: "mistral-tiny",
apiKey: "<YOUR_API_KEY>",
});
const serviceContext = serviceContextFromDefaults({ llm: mistralLLM });
```
## Load and index documents
@@ -20,9 +18,7 @@ For this example, we will use a single document. In a real-world scenario, you w
```ts
const document = new Document({ text: essay, id_: "essay" });
const index = await VectorStoreIndex.fromDocuments([document], {
serviceContext,
});
const index = await VectorStoreIndex.fromDocuments([document]);
```
## Query
@@ -40,26 +36,16 @@ const results = await queryEngine.query({
## Full Example
```ts
import {
MistralAI,
Document,
VectorStoreIndex,
serviceContextFromDefaults,
} from "llamaindex";
import { MistralAI, Document, VectorStoreIndex, Settings } from "llamaindex";
// Use the MistralAI LLM
Settings.llm = new MistralAI({ model: "mistral-tiny" });
async function main() {
// Create an instance of the LLM
const mistralLLM = new MistralAI({ model: "mistral-tiny" });
// Create a service context
const serviceContext = serviceContextFromDefaults({ llm: mistralLLM });
const document = new Document({ text: essay, id_: "essay" });
// Load and index documents
const index = await VectorStoreIndex.fromDocuments([document], {
serviceContext,
});
const index = await VectorStoreIndex.fromDocuments([document]);
// get retriever
const retriever = index.asRetriever();
@@ -3,14 +3,10 @@
## Usage
```ts
import { Ollama, serviceContextFromDefaults } from "llamaindex";
import { Ollama, Settings } from "llamaindex";
const ollamaLLM = new Ollama({ model: "llama2", temperature: 0.75 });
const serviceContext = serviceContextFromDefaults({
llm: ollamaLLM,
embedModel: ollamaLLM,
});
Settings.llm = ollamaLLM;
Settings.embedModel = ollamaLLM;
```
## Load and index documents
@@ -20,9 +16,7 @@ For this example, we will use a single document. In a real-world scenario, you w
```ts
const document = new Document({ text: essay, id_: "essay" });
const index = await VectorStoreIndex.fromDocuments([document], {
serviceContext,
});
const index = await VectorStoreIndex.fromDocuments([document]);
```
## Query
@@ -40,33 +34,23 @@ const results = await queryEngine.query({
## Full Example
```ts
import {
Ollama,
Document,
VectorStoreIndex,
serviceContextFromDefaults,
} from "llamaindex";
import { Ollama, Document, VectorStoreIndex, Settings } from "llamaindex";
import fs from "fs/promises";
const ollama = new Ollama({ model: "llama2", temperature: 0.75 });
// Use Ollama LLM and Embed Model
Settings.llm = ollama;
Settings.embedModel = ollama;
async function main() {
// Create an instance of the LLM
const ollamaLLM = new Ollama({ model: "llama2", temperature: 0.75 });
const essay = await fs.readFile("./paul_graham_essay.txt", "utf-8");
// Create a service context
const serviceContext = serviceContextFromDefaults({
embedModel: ollamaLLM, // prevent 'Set OpenAI Key in OPENAI_API_KEY env variable' error
llm: ollamaLLM,
});
const document = new Document({ text: essay, id_: "essay" });
// Load and index documents
const index = await VectorStoreIndex.fromDocuments([document], {
serviceContext,
});
const index = await VectorStoreIndex.fromDocuments([document]);
// get retriever
const retriever = index.asRetriever();
@@ -1,11 +1,9 @@
# OpenAI
```ts
import { OpenAI, serviceContextFromDefaults } from "llamaindex";
import { OpenAI, Settings } from "llamaindex";
const openaiLLM = new OpenAI({ model: "gpt-3.5-turbo", temperature: 0, apiKey: <YOUR_API_KEY> });
const serviceContext = serviceContextFromDefaults({ llm: openaiLLM });
Settings.llm = new OpenAI({ model: "gpt-3.5-turbo", temperature: 0, apiKey: <YOUR_API_KEY> });
```
You can setup the apiKey on the environment variables, like:
@@ -21,9 +19,7 @@ For this example, we will use a single document. In a real-world scenario, you w
```ts
const document = new Document({ text: essay, id_: "essay" });
const index = await VectorStoreIndex.fromDocuments([document], {
serviceContext,
});
const index = await VectorStoreIndex.fromDocuments([document]);
```
## Query
@@ -41,26 +37,16 @@ const results = await queryEngine.query({
## Full Example
```ts
import {
OpenAI,
Document,
VectorStoreIndex,
serviceContextFromDefaults,
} from "llamaindex";
import { OpenAI, Document, VectorStoreIndex, Settings } from "llamaindex";
// Use the OpenAI LLM
Settings.llm = new OpenAI({ model: "gpt-3.5-turbo", temperature: 0 });
async function main() {
// Create an instance of the LLM
const openaiLLM = new OpenAI({ model: "gpt-3.5-turbo", temperature: 0 });
// Create a service context
const serviceContext = serviceContextFromDefaults({ llm: openaiLLM });
const document = new Document({ text: essay, id_: "essay" });
// Load and index documents
const index = await VectorStoreIndex.fromDocuments([document], {
serviceContext,
});
const index = await VectorStoreIndex.fromDocuments([document]);
// get retriever
const retriever = index.asRetriever();
@@ -3,13 +3,11 @@
## Usage
```ts
import { Portkey, serviceContextFromDefaults } from "llamaindex";
import { Portkey, Settings } from "llamaindex";
const portkeyLLM = new Portkey({
Settings.llm = new Portkey({
apiKey: "<YOUR_API_KEY>",
});
const serviceContext = serviceContextFromDefaults({ llm: portkeyLLM });
```
## Load and index documents
@@ -19,9 +17,7 @@ For this example, we will use a single document. In a real-world scenario, you w
```ts
const document = new Document({ text: essay, id_: "essay" });
const index = await VectorStoreIndex.fromDocuments([document], {
serviceContext,
});
const index = await VectorStoreIndex.fromDocuments([document]);
```
## Query
@@ -39,28 +35,19 @@ const results = await queryEngine.query({
## Full Example
```ts
import {
Portkey,
Document,
VectorStoreIndex,
serviceContextFromDefaults,
} from "llamaindex";
import { Portkey, Document, VectorStoreIndex, Settings } from "llamaindex";
// Use the Portkey LLM
Settings.llm = new Portkey({
apiKey: "<YOUR_API_KEY>",
});
async function main() {
// Create an instance of the LLM
const portkeyLLM = new Portkey({
apiKey: "<YOUR_API_KEY>",
});
// Create a service context
const serviceContext = serviceContextFromDefaults({ llm: portkeyLLM });
// Create a document
const document = new Document({ text: essay, id_: "essay" });
// Load and index documents
const index = await VectorStoreIndex.fromDocuments([document], {
serviceContext,
});
const index = await VectorStoreIndex.fromDocuments([document]);
// get retriever
const retriever = index.asRetriever();
@@ -3,13 +3,11 @@
## Usage
```ts
import { TogetherLLM, serviceContextFromDefaults } from "llamaindex";
import { TogetherLLM, Settings } from "llamaindex";
const togetherLLM = new TogetherLLM({
Settings.llm = new TogetherLLM({
apiKey: "<YOUR_API_KEY>",
});
const serviceContext = serviceContextFromDefaults({ llm: togetherLLM });
```
## Load and index documents
@@ -19,9 +17,7 @@ For this example, we will use a single document. In a real-world scenario, you w
```ts
const document = new Document({ text: essay, id_: "essay" });
const index = await VectorStoreIndex.fromDocuments([document], {
serviceContext,
});
const index = await VectorStoreIndex.fromDocuments([document]);
```
## Query
@@ -39,28 +35,17 @@ const results = await queryEngine.query({
## Full Example
```ts
import {
TogetherLLM,
Document,
VectorStoreIndex,
serviceContextFromDefaults,
} from "llamaindex";
import { TogetherLLM, Document, VectorStoreIndex, Settings } from "llamaindex";
Settings.llm = new TogetherLLM({
apiKey: "<YOUR_API_KEY>",
});
async function main() {
// Create an instance of the LLM
const togetherLLM = new TogetherLLM({
apiKey: "<YOUR_API_KEY>",
});
// Create a service context
const serviceContext = serviceContextFromDefaults({ llm: togetherLLM });
const document = new Document({ text: essay, id_: "essay" });
// Load and index documents
const index = await VectorStoreIndex.fromDocuments([document], {
serviceContext,
});
const index = await VectorStoreIndex.fromDocuments([document]);
// get retriever
const retriever = index.asRetriever();
+3 -6
View File
@@ -6,14 +6,12 @@ sidebar_position: 3
The LLM is responsible for reading text and generating natural language responses to queries. By default, LlamaIndex.TS uses `gpt-3.5-turbo`.
The LLM can be explicitly set in the `ServiceContext` object.
The LLM can be explicitly updated through `Settings`.
```typescript
import { OpenAI, serviceContextFromDefaults } from "llamaindex";
import { OpenAI, Settings } from "llamaindex";
const openaiLLM = new OpenAI({ model: "gpt-3.5-turbo", temperature: 0 });
const serviceContext = serviceContextFromDefaults({ llm: openaiLLM });
Settings.llm = new OpenAI({ model: "gpt-3.5-turbo", temperature: 0 });
```
## Azure OpenAI
@@ -35,4 +33,3 @@ For local LLMs, currently we recommend the use of [Ollama](./available_llms/olla
## API Reference
- [OpenAI](../api/classes/OpenAI.md)
- [ServiceContext](../api/interfaces//ServiceContext.md)
+3 -4
View File
@@ -4,15 +4,14 @@ sidebar_position: 4
# NodeParser
The `NodeParser` in LlamaIndex is responsible for splitting `Document` objects into more manageable `Node` objects. When you call `.fromDocuments()`, the `NodeParser` from the `ServiceContext` is used to do this automatically for you. Alternatively, you can use it to split documents ahead of time.
The `NodeParser` in LlamaIndex is responsible for splitting `Document` objects into more manageable `Node` objects. When you call `.fromDocuments()`, the `NodeParser` from the `Settings` is used to do this automatically for you. Alternatively, you can use it to split documents ahead of time.
```typescript
import { Document, SimpleNodeParser } from "llamaindex";
const nodeParser = new SimpleNodeParser();
const nodes = nodeParser.getNodesFromDocuments([
new Document({ text: "I am 10 years old. John is 20 years old." }),
]);
Settings.nodeParser = nodeParser;
```
## TextSplitter
@@ -18,7 +18,7 @@ import {
Document,
OpenAI,
VectorStoreIndex,
serviceContextFromDefaults,
Settings,
} from "llamaindex";
```
@@ -29,13 +29,9 @@ For this example, we will use a single document. In a real-world scenario, you w
```ts
const document = new Document({ text: essay, id_: "essay" });
const serviceContext = serviceContextFromDefaults({
llm: new OpenAI({ model: "gpt-3.5-turbo", temperature: 0.1 }),
});
Settings.llm = new OpenAI({ model: "gpt-3.5-turbo", temperature: 0.1 });
const index = await VectorStoreIndex.fromDocuments([document], {
serviceContext,
});
const index = await VectorStoreIndex.fromDocuments([document]);
```
## Increase similarity topK to retrieve more results
@@ -36,7 +36,7 @@ const processor = new SimilarityPostprocessor({
similarityCutoff: 0.7,
});
const filteredNodes = processor.postprocessNodes(nodes);
const filteredNodes = await processor.postprocessNodes(nodes);
// cohere rerank: rerank nodes given query using trained model
const reranker = new CohereRerank({
@@ -58,7 +58,10 @@ Most commonly, node-postprocessors will be used in a query engine, where they ar
### Using Node Postprocessors in a Query Engine
```ts
import { Node, NodeWithScore, SimilarityPostprocessor, CohereRerank } from "llamaindex";
import { Node, NodeWithScore, SimilarityPostprocessor, CohereRerank, Settings } from "llamaindex";
// Use OpenAI LLM
Settings.llm = new OpenAI({ model: "gpt-3.5-turbo", temperature: 0.1 });
const nodes: NodeWithScore[] = [
{
@@ -79,14 +82,6 @@ const reranker = new CohereRerank({
const document = new Document({ text: "essay", id_: "essay" });
const serviceContext = serviceContextFromDefaults({
llm: new OpenAI({ model: "gpt-3.5-turbo", temperature: 0.1 }),
});
const index = await VectorStoreIndex.fromDocuments([document], {
serviceContext,
});
const queryEngine = index.asQueryEngine({
nodePostprocessors: [processor, reranker],
});
@@ -100,7 +95,7 @@ const response = await queryEngine.query("<user_query>");
```ts
import { SimilarityPostprocessor } from "llamaindex";
nodes = await index.asRetriever().retrieve("test query str");
nodes = await index.asRetriever().retrieve({ query: "test query str" });
const processor = new SimilarityPostprocessor({
similarityCutoff: 0.7,
+3 -7
View File
@@ -31,13 +31,11 @@ The first method is to create a new instance of `ResponseSynthesizer` (or the mo
```ts
// Create an instance of response synthesizer
const responseSynthesizer = new ResponseSynthesizer({
responseBuilder: new CompactAndRefine(serviceContext, newTextQaPrompt),
responseBuilder: new CompactAndRefine(undefined, newTextQaPrompt),
});
// Create index
const index = await VectorStoreIndex.fromDocuments([document], {
serviceContext,
});
const index = await VectorStoreIndex.fromDocuments([document]);
// Query the index
const queryEngine = index.asQueryEngine({ responseSynthesizer });
@@ -53,9 +51,7 @@ The second method is that most of the modules in LlamaIndex have a `getPrompts`
```ts
// Create index
const index = await VectorStoreIndex.fromDocuments([document], {
serviceContext,
});
const index = await VectorStoreIndex.fromDocuments([document]);
// Query the index
const queryEngine = index.asQueryEngine();
@@ -54,12 +54,13 @@ You can create a `ChromaVectorStore` to store the documents:
```ts
const chromaVS = new ChromaVectorStore({ collectionName });
const serviceContext = await storageContextFromDefaults({
const storageContext = await storageContextFromDefaults({
vectorStore: chromaVS,
});
const index = await VectorStoreIndex.fromDocuments(docs, {
storageContext: serviceContext,
storageContext: storageContext,
});
```
@@ -18,7 +18,7 @@ import {
SimpleNodeParser,
SummaryIndex,
VectorStoreIndex,
serviceContextFromDefaults,
Settings,
} from "llamaindex";
```
@@ -34,17 +34,13 @@ const documents = await new SimpleDirectoryReader().loadData({
## Service Context
Next, we need to define some basic rules and parse the documents into nodes. We will use the `SimpleNodeParser` to parse the documents into nodes and `ServiceContext` to define the rules (eg. LLM API key, chunk size, etc.):
Next, we need to define some basic rules and parse the documents into nodes. We will use the `SimpleNodeParser` to parse the documents into nodes and `Settings` to define the rules (eg. LLM API key, chunk size, etc.):
```ts
const nodeParser = new SimpleNodeParser({
Settings.llm = new OpenAI();
Settings.nodeParser = new SimpleNodeParser({
chunkSize: 1024,
});
const serviceContext = serviceContextFromDefaults({
nodeParser,
llm: new OpenAI(),
});
```
## Creating Indices
@@ -52,13 +48,8 @@ const serviceContext = serviceContextFromDefaults({
Next, we need to create some indices. We will create a `VectorStoreIndex` and a `SummaryIndex`:
```ts
const vectorIndex = await VectorStoreIndex.fromDocuments(documents, {
serviceContext,
});
const summaryIndex = await SummaryIndex.fromDocuments(documents, {
serviceContext,
});
const vectorIndex = await VectorStoreIndex.fromDocuments(documents);
const summaryIndex = await SummaryIndex.fromDocuments(documents);
```
## Creating Query Engines
@@ -88,7 +79,6 @@ const queryEngine = RouterQueryEngine.fromDefaults({
description: "Useful for retrieving specific context from Abramov",
},
],
serviceContext,
});
```
@@ -117,34 +107,23 @@ import {
SimpleNodeParser,
SummaryIndex,
VectorStoreIndex,
serviceContextFromDefaults,
Settings,
} from "llamaindex";
Settings.llm = new OpenAI();
Settings.nodeParser = new SimpleNodeParser({
chunkSize: 1024,
});
async function main() {
// Load documents from a directory
const documents = await new SimpleDirectoryReader().loadData({
directoryPath: "node_modules/llamaindex/examples",
});
// Parse the documents into nodes
const nodeParser = new SimpleNodeParser({
chunkSize: 1024,
});
// Create a service context
const serviceContext = serviceContextFromDefaults({
nodeParser,
llm: new OpenAI(),
});
// Create indices
const vectorIndex = await VectorStoreIndex.fromDocuments(documents, {
serviceContext,
});
const summaryIndex = await SummaryIndex.fromDocuments(documents, {
serviceContext,
});
const vectorIndex = await VectorStoreIndex.fromDocuments(documents);
const summaryIndex = await SummaryIndex.fromDocuments(documents);
// Create query engines
const vectorQueryEngine = vectorIndex.asQueryEngine();
@@ -162,7 +141,6 @@ async function main() {
description: "Useful for retrieving specific context from Abramov",
},
],
serviceContext,
});
// Query the router query engine
+1 -1
View File
@@ -11,7 +11,7 @@ const retriever = vector_index.asRetriever();
retriever.similarityTopK = 3;
// Fetch nodes!
const nodesWithScore = await retriever.retrieve("query string");
const nodesWithScore = await retriever.retrieve({ query: "query string" });
```
## API Reference
+2
View File
@@ -0,0 +1,2 @@
label: Recipes
position: 3
+14
View File
@@ -0,0 +1,14 @@
# Cost Analysis
This page shows how to track LLM cost using APIs.
## Callback Manager
The callback manager is a class that manages the callback functions.
You can register `llm-start`, and `llm-end` callbacks to the callback manager for tracking the cost.
import CodeBlock from "@theme/CodeBlock";
import CodeSource from "!raw-loader!../../../../examples/recipes/cost-analysis";
<CodeBlock language="ts">{CodeSource}</CodeBlock>
@@ -13,7 +13,7 @@ const retriever = vector_index.asRetriever();
retriever.similarityTopK = 3;
// جلب العقد!
const nodesWithScore = await retriever.retrieve("سلسلة الاستعلام");
const nodesWithScore = await retriever.retrieve({ query: "سلسلة الاستعلام" });
```
## مرجع الواجهة البرمجية (API Reference)
@@ -13,7 +13,7 @@ const retriever = vector_index.asRetriever();
retriever.similarityTopK = 3;
// Извличане на върхове!
const nodesWithScore = await retriever.retrieve("query string");
const nodesWithScore = await retriever.retrieve({ query: "query string" });
```
## API Reference (API справка)
@@ -13,7 +13,7 @@ const recuperador = vector_index.asRetriever();
recuperador.similarityTopK = 3;
// Obteniu els nodes!
const nodesAmbPuntuació = await recuperador.retrieve("cadena de consulta");
const nodesAmbPuntuació = await recuperador.retrieve({ query: "cadena de consulta" });
```
## Referència de l'API
@@ -13,7 +13,7 @@ const retriever = vector_index.asRetriever();
retriever.similarityTopK = 3;
// Získání uzlů!
const nodesWithScore = await retriever.retrieve("dotazovací řetězec");
const nodesWithScore = await retriever.retrieve({ query: "dotazovací řetězec" });
```
## API Reference (Odkazy na rozhraní)
@@ -13,7 +13,7 @@ const retriever = vector_index.asRetriever();
retriever.similarityTopK = 3;
// Hent noder!
const nodesWithScore = await retriever.retrieve("forespørgselsstreng");
const nodesWithScore = await retriever.retrieve({ query: "forespørgselsstreng" });
```
## API Reference
@@ -13,7 +13,7 @@ const retriever = vector_index.asRetriever();
retriever.similarityTopK = 3;
// Knoten abrufen!
const nodesWithScore = await retriever.retrieve("Abfragezeichenfolge");
const nodesWithScore = await retriever.retrieve({ query: "Abfragezeichenfolge" });
```
## API-Referenz
@@ -13,7 +13,7 @@ const retriever = vector_index.asRetriever();
retriever.similarityTopK = 3;
// Ανάκτηση κόμβων!
const nodesWithScore = await retriever.retrieve("συμβολοσειρά ερωτήματος");
const nodesWithScore = await retriever.retrieve({ query: "συμβολοσειρά ερωτήματος" });
```
## Αναφορά API
@@ -13,7 +13,7 @@ const recuperador = vector_index.asRetriever();
recuperador.similarityTopK = 3;
// ¡Obtener nodos!
const nodosConPuntuación = await recuperador.retrieve("cadena de consulta");
const nodosConPuntuación = await recuperador.retrieve({ query: "cadena de consulta" });
```
## Referencia de la API
@@ -13,7 +13,7 @@ const retriever = vector_index.asRetriever();
retriever.similarityTopK = 3;
// Too sõlmed!
const nodesWithScore = await retriever.retrieve("päringu string");
const nodesWithScore = await retriever.retrieve({ query: "päringu string" });
```
## API viide
@@ -13,7 +13,7 @@ const retriever = vector_index.asRetriever();
retriever.similarityTopK = 3;
// بازیابی گره ها!
const nodesWithScore = await retriever.retrieve("رشته پرس و جو");
const nodesWithScore = await retriever.retrieve({ query: "رشته پرس و جو" });
```
## مرجع API
@@ -13,7 +13,7 @@ const retriever = vector_index.asRetriever();
retriever.similarityTopK = 3;
// Hae solmut!
const nodesWithScore = await retriever.retrieve("kyselymerkkijono");
const nodesWithScore = await retriever.retrieve({ query: "kyselymerkkijono" });
```
## API-viite
@@ -11,7 +11,7 @@ const retriever = vector_index.asRetriever();
retriever.similarityTopK = 3;
// Récupérer les nœuds !
const nodesWithScore = await retriever.retrieve("chaîne de requête");
const nodesWithScore = await retriever.retrieve({ query: "chaîne de requête" });
```
## Référence de l'API
@@ -13,7 +13,7 @@ const retriever = vector_index.asRetriever();
retriever.similarityTopK = 3;
// אחזור צמתים!
const nodesWithScore = await retriever.retrieve("מחרוזת שאילתה");
const nodesWithScore = await retriever.retrieve({ query: "מחרוזת שאילתה" });
```
## מדריך לממשק API
@@ -13,7 +13,7 @@ const retriever = vector_index.asRetriever();
retriever.similarityTopK = 3;
// नोड्स प्राप्त करें!
const nodesWithScore = await retriever.retrieve("क्वेरी स्ट्रिंग");
const nodesWithScore = await retriever.retrieve({ query: "क्वेरी स्ट्रिंग" });
```
## एपीआई संदर्भ (API Reference)
@@ -13,7 +13,7 @@ const dohvatnik = vector_index.asRetriever();
dohvatnik.similarityTopK = 3;
// Dohvati čvorove!
const čvoroviSaRezultatom = await dohvatnik.retrieve("upitni niz");
const čvoroviSaRezultatom = await dohvatnik.retrieve({ query: "upitni niz" });
```
## API Referenca
@@ -13,7 +13,7 @@ const retriever = vector_index.asRetriever();
retriever.similarityTopK = 3;
// Node-ok lekérése!
const nodesWithScore = await retriever.retrieve("lekérdezési karakterlánc");
const nodesWithScore = await retriever.retrieve({ query: "lekérdezési karakterlánc" });
```
## API Referencia
@@ -13,7 +13,7 @@ const retriever = vector_index.asRetriever();
retriever.similarityTopK = 3;
// Mengambil node!
const nodesWithScore = await retriever.retrieve("string query");
const nodesWithScore = await retriever.retrieve({ query: "string query" });
```
## Referensi API
@@ -13,7 +13,7 @@ const retriever = vector_index.asRetriever();
retriever.similarityTopK = 3;
// Recupera i nodi!
const nodesWithScore = await retriever.retrieve("stringa di query");
const nodesWithScore = await retriever.retrieve({ query: "stringa di query" });
```
## Riferimento API
@@ -13,7 +13,7 @@ const retriever = vector_index.asRetriever();
retriever.similarityTopK = 3;
// ノードを取得します!
const nodesWithScore = await retriever.retrieve("クエリ文字列");
const nodesWithScore = await retriever.retrieve({ query: "クエリ文字列" });
```
## API リファレンス
@@ -13,7 +13,7 @@ const retriever = vector_index.asRetriever();
retriever.similarityTopK = 3;
// 노드를 가져옵니다!
const nodesWithScore = await retriever.retrieve("쿼리 문자열");
const nodesWithScore = await retriever.retrieve({ query: "쿼리 문자열" });
```
## API 참조
@@ -13,7 +13,7 @@ const gavėjas = vector_index.asRetriever();
gavėjas.similarityTopK = 3;
// Išgaunami mazgai!
const mazgaiSuRezultatu = await gavėjas.retrieve("užklausos eilutė");
const mazgaiSuRezultatu = await gavėjas.retrieve({ query: "užklausos eilutė" });
```
## API nuorodos (API Reference)
@@ -13,7 +13,7 @@ const retriever = vector_index.asRetriever();
retriever.similarityTopK = 3;
// Haal knooppunten op!
const nodesWithScore = await retriever.retrieve("zoekopdracht");
const nodesWithScore = await retriever.retrieve({ query: "zoekopdracht" });
```
## API Referentie
@@ -13,7 +13,7 @@ const retriever = vector_index.asRetriever();
retriever.similarityTopK = 3;
// Hent noder!
const nodesWithScore = await retriever.retrieve("spørringsstreng");
const nodesWithScore = await retriever.retrieve({ query: "spørringsstreng" });
```
## API-referanse
@@ -13,7 +13,7 @@ const retriever = vector_index.asRetriever();
retriever.similarityTopK = 3;
// Pobierz węzły!
const nodesWithScore = await retriever.retrieve("ciąg zapytania");
const nodesWithScore = await retriever.retrieve({ query: "ciąg zapytania" });
```
## Dokumentacja interfejsu API
@@ -13,7 +13,7 @@ const recuperador = vector_index.asRetriever();
recuperador.similarityTopK = 3;
// Buscar nós!
const nósComPontuação = await recuperador.retrieve("string de consulta");
const nósComPontuação = await recuperador.retrieve({ query: "string de consulta" });
```
## Referência da API
@@ -13,7 +13,7 @@ const recuperator = vector_index.asRetriever();
recuperator.similarityTopK = 3;
// Preia nodurile!
const noduriCuScor = await recuperator.retrieve("șir de interogare");
const noduriCuScor = await recuperator.retrieve({ query: "șir de interogare" });
```
## Referință API
@@ -13,7 +13,7 @@ const retriever = vector_index.asRetriever();
retriever.similarityTopK = 3;
// Получение узлов!
const nodesWithScore = await retriever.retrieve("строка запроса");
const nodesWithScore = await retriever.retrieve({ query: "строка запроса" });
```
## Справочник по API
@@ -13,7 +13,7 @@ const retriever = vector_index.asRetriever();
retriever.similarityTopK = 3;
// Dohvati čvorove!
const nodesWithScore = await retriever.retrieve("upitni niz");
const nodesWithScore = await retriever.retrieve({ query: "upitni niz" });
```
## API Referenca
@@ -13,7 +13,7 @@ const pridobitelj = vector_index.asRetriever();
pridobitelj.similarityTopK = 3;
// Pridobivanje vozlišč!
const vozliščaZRezultatom = await pridobitelj.retrieve("poizvedbeni niz");
const vozliščaZRezultatom = await pridobitelj.retrieve({ query: "poizvedbeni niz" });
```
## API Sklic
@@ -13,7 +13,7 @@ const retriever = vector_index.asRetriever();
retriever.similarityTopK = 3;
// Získajte uzly!
const nodesWithScore = await retriever.retrieve("reťazec dotazu");
const nodesWithScore = await retriever.retrieve({ query: "reťazec dotazu" });
```
## API Referencia
@@ -13,7 +13,7 @@ const retriever = vector_index.asRetriever();
retriever.similarityTopK = 3;
// Hämta noder!
const nodesWithScore = await retriever.retrieve("frågesträng");
const nodesWithScore = await retriever.retrieve({ query: "frågesträng" });
```
## API-referens
@@ -13,7 +13,7 @@ const retriever = vector_index.asRetriever();
retriever.similarityTopK = 3;
// เรียกคืนโหนด!
const nodesWithScore = await retriever.retrieve("query string");
const nodesWithScore = await retriever.retrieve({ query: "query string" });
```
## API Reference (การอ้างอิง API)
@@ -13,7 +13,7 @@ const retriever = vector_index.asRetriever();
retriever.similarityTopK = 3;
// Düğümleri getir!
const nodesWithScore = await retriever.retrieve("sorgu dizesi");
const nodesWithScore = await retriever.retrieve({ query: "sorgu dizesi" });
```
## API Referansı
@@ -13,7 +13,7 @@ const retriever = vector_index.asRetriever();
retriever.similarityTopK = 3;
// Отримати вузли!
const nodesWithScore = await retriever.retrieve("рядок запиту");
const nodesWithScore = await retriever.retrieve({ query: "рядок запиту" });
```
## Довідник API
@@ -13,7 +13,7 @@ const retriever = vector_index.asRetriever();
retriever.similarityTopK = 3;
// Lấy các node!
const nodesWithScore = await retriever.retrieve("chuỗi truy vấn");
const nodesWithScore = await retriever.retrieve({ query: "chuỗi truy vấn" });
```
## Tài liệu tham khảo API
@@ -11,7 +11,7 @@ const retriever = vector_index.asRetriever();
retriever.similarityTopK = 3;
// 获取节点!
const nodesWithScore = await retriever.retrieve("查询字符串");
const nodesWithScore = await retriever.retrieve({ query: "查询字符串" });
```
## API 参考
@@ -13,7 +13,7 @@ const retriever = vector_index.asRetriever();
retriever.similarityTopK = 3;
// 提取節點!
const nodesWithScore = await retriever.retrieve("查詢字串");
const nodesWithScore = await retriever.retrieve({ query: "查詢字串" });
```
## API 參考
+10 -10
View File
@@ -15,9 +15,9 @@
"typecheck": "tsc"
},
"dependencies": {
"@docusaurus/core": "^3.1.1",
"@llamaindex/env": "workspace:*",
"@docusaurus/remark-plugin-npm2yarn": "^3.1.1",
"@docusaurus/core": "^3.2.0",
"@docusaurus/remark-plugin-npm2yarn": "^3.2.0",
"@llamaindex/examples": "workspace:*",
"@mdx-js/react": "^3.0.0",
"clsx": "^2.1.0",
"postcss": "^8.4.33",
@@ -27,16 +27,16 @@
"react-dom": "^18.2.0"
},
"devDependencies": {
"@docusaurus/module-type-aliases": "3.1.0",
"@docusaurus/preset-classic": "^3.1.1",
"@docusaurus/theme-classic": "^3.1.1",
"@docusaurus/types": "^3.1.1",
"@tsconfig/docusaurus": "^2.0.2",
"@docusaurus/module-type-aliases": "3.2.0",
"@docusaurus/preset-classic": "^3.2.0",
"@docusaurus/theme-classic": "^3.2.0",
"@docusaurus/types": "^3.2.0",
"@tsconfig/docusaurus": "^2.0.3",
"@types/node": "^18.19.10",
"docusaurus-plugin-typedoc": "^0.22.0",
"typedoc": "^0.25.7",
"typedoc": "^0.25.12",
"typedoc-plugin-markdown": "^3.17.1",
"typescript": "^5.3.3"
"typescript": "^5.4.3"
},
"browserslist": {
"production": [
+14
View File
@@ -0,0 +1,14 @@
# examples
## 0.0.4
### Patch Changes
- d2e8d0c: add support for Milvus vector store
- Updated dependencies [d2e8d0c]
- Updated dependencies [aefc326]
- Updated dependencies [484a710]
- Updated dependencies [d766bd0]
- Updated dependencies [dd95927]
- Updated dependencies [bf583a7]
- llamaindex@0.2.0
+29
View File
@@ -0,0 +1,29 @@
import fs from "node:fs/promises";
import { Document, OpenAI, Settings, VectorStoreIndex } from "llamaindex";
Settings.llm = new OpenAI({ model: "gpt-4" });
async function main() {
// Load essay from abramov.txt in Node
const path = "node_modules/llamaindex/examples/abramov.txt";
const essay = await fs.readFile(path, "utf-8");
// Create Document object with essay
const document = new Document({ text: essay, id_: path });
const index = await VectorStoreIndex.fromDocuments([document]);
// Query the index
const queryEngine = index.asQueryEngine();
const response = await queryEngine.query({
query: "What did the author do in college?",
});
// Output response
console.log(response.toString());
}
main().catch(console.error);
+5 -13
View File
@@ -6,11 +6,11 @@ import {
OpenAI,
OpenAIAgent,
QueryEngineTool,
Settings,
SimpleNodeParser,
SimpleToolNodeMapping,
SummaryIndex,
VectorStoreIndex,
serviceContextFromDefaults,
storageContextFromDefaults,
} from "llamaindex";
@@ -18,6 +18,8 @@ import { extractWikipedia } from "./helpers/extractWikipedia";
const wikiTitles = ["Brazil", "Canada"];
Settings.llm = new OpenAI({ model: "gpt-4" });
async function main() {
await extractWikipedia(wikiTitles);
@@ -30,11 +32,6 @@ async function main() {
countryDocs[title] = document;
}
const llm = new OpenAI({
model: "gpt-4",
});
const serviceContext = serviceContextFromDefaults({ llm });
const storageContext = await storageContextFromDefaults({
persistDir: "./storage",
});
@@ -54,13 +51,11 @@ async function main() {
console.log(`Creating index for ${title}`);
const vectorIndex = await VectorStoreIndex.init({
serviceContext: serviceContext,
storageContext: storageContext,
nodes,
});
const summaryIndex = await SummaryIndex.init({
serviceContext: serviceContext,
nodes,
});
@@ -90,7 +85,7 @@ async function main() {
const agent = new OpenAIAgent({
tools: queryEngineTools,
llm,
llm: new OpenAI({ model: "gpt-4" }),
verbose: true,
});
@@ -126,14 +121,11 @@ async function main() {
allTools,
toolMapping,
VectorStoreIndex,
{
serviceContext,
},
);
const topAgent = new OpenAIAgent({
toolRetriever: await objectIndex.asRetriever({}),
llm,
llm: new OpenAI({ model: "gpt-4" }),
verbose: true,
prefixMessages: [
{
+8 -2
View File
@@ -1,4 +1,4 @@
import { FunctionTool, ReActAgent } from "llamaindex";
import { Anthropic, FunctionTool, ReActAgent } from "llamaindex";
// Define a function to sum two numbers
function sumNumbers({ a, b }: { a: number; b: number }): number {
@@ -56,8 +56,14 @@ async function main() {
parameters: divideJSON,
});
// Create an OpenAIAgent with the function tools
const anthropic = new Anthropic({
apiKey: process.env.ANTHROPIC_API_KEY,
model: "claude-3-opus",
});
// Create an ReActAgent with the function tools
const agent = new ReActAgent({
llm: anthropic,
tools: [functionTool, functionTool2],
verbose: true,
});
+77
View File
@@ -0,0 +1,77 @@
import { FunctionTool, OpenAIAgent } from "llamaindex";
// Define a function to sum two numbers
function sumNumbers({ a, b }: { a: number; b: number }): number {
return a + b;
}
// Define a function to divide two numbers
function divideNumbers({ a, b }: { a: number; b: number }): number {
return a / b;
}
// Define the parameters of the sum function as a JSON schema
const sumJSON = {
type: "object",
properties: {
a: {
type: "number",
description: "The first number",
},
b: {
type: "number",
description: "The second number",
},
},
required: ["a", "b"],
};
const divideJSON = {
type: "object",
properties: {
a: {
type: "number",
description: "The dividend",
},
b: {
type: "number",
description: "The divisor",
},
},
required: ["a", "b"],
};
async function main() {
// Create a function tool from the sum function
const functionTool = new FunctionTool(sumNumbers, {
name: "sumNumbers",
description: "Use this function to sum two numbers",
parameters: sumJSON,
});
// Create a function tool from the divide function
const functionTool2 = new FunctionTool(divideNumbers, {
name: "divideNumbers",
description: "Use this function to divide two numbers",
parameters: divideJSON,
});
// Create an OpenAIAgent with the function tools
const agent = new OpenAIAgent({
tools: [functionTool, functionTool2],
verbose: false,
});
const stream = await agent.chat({
message: "Divide 16 by 2 then add 20",
stream: true,
});
for await (const chunk of stream.response) {
process.stdout.write(chunk.response);
}
}
main().then(() => {
console.log("\nDone");
});
+23
View File
@@ -0,0 +1,23 @@
import { OpenAIAgent, WikipediaTool } from "llamaindex";
async function main() {
const wikipediaTool = new WikipediaTool();
// Create an OpenAIAgent with the function tools
const agent = new OpenAIAgent({
tools: [wikipediaTool],
verbose: true,
});
// Chat with the agent
const response = await agent.chat({
message: "Where is Ho Chi Minh City?",
});
// Print the response
console.log(response);
}
main().then(() => {
console.log("Done");
});
+19
View File
@@ -0,0 +1,19 @@
import { Anthropic } from "llamaindex";
(async () => {
const anthropic = new Anthropic({
apiKey: process.env.ANTHROPIC_API_KEY,
model: "claude-3-haiku",
});
const result = await anthropic.chat({
messages: [
{ content: "You want to talk in rhymes.", role: "system" },
{
content:
"How much wood would a woodchuck chuck if a woodchuck could chuck wood?",
role: "user",
},
],
});
console.log(result);
})();
+2 -2
View File
@@ -32,10 +32,10 @@ run `ts-node astradb/example`
This sample loads the same dataset of movie reviews as the Astra Portal sample dataset. (Feel free to load the data in your the Astra Data Explorer to compare)
run `ts-node astradb/load`
run `npx ts-node astradb/load`
### Use RAG to Query the data
Check out your data in the Astra Data Explorer and change the sample query as you see fit.
run `ts-node astradb/query`
run `npx ts-node astradb/query`
+2 -7
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@@ -1,8 +1,4 @@
import {
AstraDBVectorStore,
serviceContextFromDefaults,
VectorStoreIndex,
} from "llamaindex";
import { AstraDBVectorStore, VectorStoreIndex } from "llamaindex";
const collectionName = "movie_reviews";
@@ -11,8 +7,7 @@ async function main() {
const astraVS = new AstraDBVectorStore({ contentKey: "reviewtext" });
await astraVS.connect(collectionName);
const ctx = serviceContextFromDefaults();
const index = await VectorStoreIndex.fromVectorStore(astraVS, ctx);
const index = await VectorStoreIndex.fromVectorStore(astraVS);
const retriever = await index.asRetriever({ similarityTopK: 20 });
+5 -5
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@@ -4,18 +4,18 @@ import readline from "node:readline/promises";
import {
ContextChatEngine,
Document,
serviceContextFromDefaults,
Settings,
VectorStoreIndex,
} from "llamaindex";
import essay from "./essay";
// Update chunk size
Settings.chunkSize = 512;
async function main() {
const document = new Document({ text: essay });
const serviceContext = serviceContextFromDefaults({ chunkSize: 512 });
const index = await VectorStoreIndex.fromDocuments([document], {
serviceContext,
});
const index = await VectorStoreIndex.fromDocuments([document]);
const retriever = index.asRetriever();
retriever.similarityTopK = 5;
const chatEngine = new ContextChatEngine({ retriever });
+8
View File
@@ -31,3 +31,11 @@ This example shows how to use the managed index with a query engine.
```shell
pnpx ts-node cloud/query.ts
```
## Pipeline
This example shows how to create a managed index with a pipeline.
```shell
pnpx ts-node cloud/pipeline.ts
```
+34
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@@ -0,0 +1,34 @@
import fs from "node:fs/promises";
import {
Document,
IngestionPipeline,
OpenAIEmbedding,
SimpleNodeParser,
} from "llamaindex";
async function main() {
// Load essay from abramov.txt in Node
const path = "node_modules/llamaindex/examples/abramov.txt";
const essay = await fs.readFile(path, "utf-8");
// Create Document object with essay
const document = new Document({ text: essay, id_: path });
const pipeline = new IngestionPipeline({
name: "pipeline",
transformations: [
new SimpleNodeParser({ chunkSize: 1024, chunkOverlap: 20 }),
new OpenAIEmbedding({ apiKey: "api-key" }),
],
});
const pipelineId = await pipeline.register({
documents: [document],
verbose: true,
});
console.log(`Pipeline with id ${pipelineId} successfully created.`);
}
main().catch(console.error);
+5 -16
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@@ -1,21 +1,10 @@
import {
CorrectnessEvaluator,
OpenAI,
serviceContextFromDefaults,
} from "llamaindex";
import { CorrectnessEvaluator, OpenAI, Settings } from "llamaindex";
// Update llm to use OpenAI
Settings.llm = new OpenAI({ model: "gpt-4" });
async function main() {
const llm = new OpenAI({
model: "gpt-4",
});
const ctx = serviceContextFromDefaults({
llm,
});
const evaluator = new CorrectnessEvaluator({
serviceContext: ctx,
});
const evaluator = new CorrectnessEvaluator();
const query =
"Can you explain the theory of relativity proposed by Albert Einstein in detail?";
+5 -12
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@@ -2,22 +2,15 @@ import {
Document,
FaithfulnessEvaluator,
OpenAI,
Settings,
VectorStoreIndex,
serviceContextFromDefaults,
} from "llamaindex";
// Update llm to use OpenAI
Settings.llm = new OpenAI({ model: "gpt-4" });
async function main() {
const llm = new OpenAI({
model: "gpt-4",
});
const ctx = serviceContextFromDefaults({
llm,
});
const evaluator = new FaithfulnessEvaluator({
serviceContext: ctx,
});
const evaluator = new FaithfulnessEvaluator();
const documents = [
new Document({
+6 -12
View File
@@ -2,22 +2,16 @@ import {
Document,
OpenAI,
RelevancyEvaluator,
Settings,
VectorStoreIndex,
serviceContextFromDefaults,
} from "llamaindex";
Settings.llm = new OpenAI({
model: "gpt-4",
});
async function main() {
const llm = new OpenAI({
model: "gpt-4",
});
const ctx = serviceContextFromDefaults({
llm,
});
const evaluator = new RelevancyEvaluator({
serviceContext: ctx,
});
const evaluator = new RelevancyEvaluator();
const documents = [
new Document({
+7 -17
View File
@@ -1,30 +1,20 @@
import fs from "node:fs/promises";
import {
Document,
Groq,
VectorStoreIndex,
serviceContextFromDefaults,
} from "llamaindex";
import { Document, Groq, Settings, VectorStoreIndex } from "llamaindex";
// Update llm to use Groq
Settings.llm = new Groq({
apiKey: process.env.GROQ_API_KEY,
});
async function main() {
// Create an instance of the LLM
const groq = new Groq({
apiKey: process.env.GROQ_API_KEY,
});
// Create a service context
const serviceContext = serviceContextFromDefaults({ llm: groq });
// Load essay from abramov.txt in Node
const path = "node_modules/llamaindex/examples/abramov.txt";
const essay = await fs.readFile(path, "utf-8");
const document = new Document({ text: essay, id_: "essay" });
// Load and index documents
const index = await VectorStoreIndex.fromDocuments([document], {
serviceContext,
});
const index = await VectorStoreIndex.fromDocuments([document]);
// get retriever
const retriever = index.asRetriever();
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@@ -4,10 +4,15 @@ import {
Document,
HuggingFaceEmbedding,
HuggingFaceEmbeddingModelType,
Settings,
VectorStoreIndex,
serviceContextFromDefaults,
} from "llamaindex";
// Update embed model
Settings.embedModel = new HuggingFaceEmbedding({
modelType: HuggingFaceEmbeddingModelType.XENOVA_ALL_MPNET_BASE_V2,
});
async function main() {
// Load essay from abramov.txt in Node
const path = "node_modules/llamaindex/examples/abramov.txt";
@@ -17,18 +22,8 @@ async function main() {
// Create Document object with essay
const document = new Document({ text: essay, id_: path });
// Use Local embedding from HuggingFace
const embedModel = new HuggingFaceEmbedding({
modelType: HuggingFaceEmbeddingModelType.XENOVA_ALL_MPNET_BASE_V2,
});
const serviceContext = serviceContextFromDefaults({
embedModel,
});
// Split text and create embeddings. Store them in a VectorStoreIndex
const index = await VectorStoreIndex.fromDocuments([document], {
serviceContext,
});
const index = await VectorStoreIndex.fromDocuments([document]);
// Query the index
const queryEngine = index.asQueryEngine();
+8 -13
View File
@@ -1,26 +1,21 @@
import {
Document,
Settings,
SimpleNodeParser,
VectorStoreIndex,
serviceContextFromDefaults,
} from "llamaindex";
export const STORAGE_DIR = "./data";
// Update node parser
Settings.nodeParser = new SimpleNodeParser({
chunkSize: 512,
chunkOverlap: 20,
splitLongSentences: true,
});
(async () => {
// create service context that is splitting sentences longer than CHUNK_SIZE
const serviceContext = serviceContextFromDefaults({
nodeParser: new SimpleNodeParser({
chunkSize: 512,
chunkOverlap: 20,
splitLongSentences: true,
}),
});
// generate a document with a very long sentence (9000 words long)
const longSentence = "is ".repeat(9000) + ".";
const document = new Document({ text: longSentence, id_: "1" });
await VectorStoreIndex.fromDocuments([document], {
serviceContext,
});
await VectorStoreIndex.fromDocuments([document]);
})();
+34
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@@ -0,0 +1,34 @@
# Milvus Vector Store
Here are two sample scripts which work with loading and querying data from a Milvus Vector Store.
## Prerequisites
- An Milvus Vector Database
- Hosted https://milvus.io/
- Self Hosted https://milvus.io/docs/install_standalone-docker.md
- An OpenAI API Key
## Setup
1. Set your env variables:
- `MILVUS_ADDRESS`: Address of your Milvus Vector Store (like localhost:19530)
- `MILVUS_USERNAME`: empty or username for your Milvus Vector Store
- `MILVUS_PASSWORD`: empty or password for your Milvus Vector Store
- `OPENAI_API_KEY`: Your OpenAI key
2. `cd` Into the `examples` directory
3. run `npm i`
## Load the data
This sample loads the same dataset of movie reviews as sample dataset. You can install https://github.com/zilliztech/attu to inspect the loaded data.
run `npx ts-node milvus/load`
## Use RAG to Query the data
Check out your data in Attu and change the sample query as you see fit.
run `npx ts-node milvus/query`
+26
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@@ -0,0 +1,26 @@
import {
MilvusVectorStore,
PapaCSVReader,
storageContextFromDefaults,
VectorStoreIndex,
} from "llamaindex";
const collectionName = "movie_reviews";
async function main() {
try {
const reader = new PapaCSVReader(false);
const docs = await reader.loadData("./data/movie_reviews.csv");
const vectorStore = new MilvusVectorStore({ collection: collectionName });
const ctx = await storageContextFromDefaults({ vectorStore });
const index = await VectorStoreIndex.fromDocuments(docs, {
storageContext: ctx,
});
} catch (e) {
console.error(e);
}
}
main();

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