Big News: Socket raises $60M Series C at a $1B valuation to secure software supply chains for AI-driven development.Announcement
Sign In

@langchain/xai

Package Overview
Dependencies
Maintainers
13
Versions
46
Alerts
File Explorer

Advanced tools

Socket logo

Install Socket

Detect and block malicious and high-risk dependencies

Install

@langchain/xai

xAI integration for LangChain.js

latest
Source
npmnpm
Version
1.3.19
Version published
Weekly downloads
65K
-8.82%
Maintainers
13
Weekly downloads
 
Created
Source

@langchain/xai

This package contains the LangChain.js integrations for xAI.

Installation

npm install @langchain/xai @langchain/core

Chat models

This package adds support for xAI chat model inference.

Set the necessary environment variable (or pass it in via the constructor):

export XAI_API_KEY=
import { ChatXAI } from "@langchain/xai";
import { HumanMessage } from "@langchain/core/messages";

const model = new ChatXAI({
  apiKey: process.env.XAI_API_KEY, // Default value.
});

const message = new HumanMessage("What color is the sky?");

const res = await model.invoke([message]);

xAI supports server-side tools that are executed by the API rather than requiring client-side execution. The live_search tool enables the model to search the web for real-time information.

Using the built-in live_search tool

import { ChatXAI, tools } from "@langchain/xai";

const model = new ChatXAI({
  model: "grok-3-fast",
});

// Create the built-in live_search tool with optional parameters
const searchTool = tools.xaiLiveSearch({
  maxSearchResults: 5,
  returnCitations: true,
});

// Bind the live_search tool to the model
const modelWithSearch = model.bindTools([searchTool]);

// The model will search the web for real-time information
const result = await modelWithSearch.invoke(
  "What happened in tech news today?"
);
console.log(result.content);

Using searchParameters for more control

import { ChatXAI } from "@langchain/xai";

const model = new ChatXAI({
  model: "grok-3-fast",
  searchParameters: {
    mode: "auto", // "auto" | "on" | "off"
    max_search_results: 5,
    from_date: "2024-01-01", // ISO date string
    return_citations: true,
  },
});

const result = await model.invoke("What are the latest AI developments?");

Override search parameters per request

const result = await model.invoke("Find recent news about SpaceX", {
  searchParameters: {
    mode: "on",
    max_search_results: 10,
    sources: [
      {
        type: "web",
        allowed_websites: ["spacex.com", "nasa.gov"],
      },
    ],
  },
});

Configuring data sources with sources

You can configure which data sources Live Search should use via the sources field in searchParameters. Each entry corresponds to one of the sources described in the official xAI Live Search docs (web, news, x, rss).

const result = await model.invoke(
  "What are the latest updates from xAI and related news?",
  {
    searchParameters: {
      mode: "on",
      sources: [
        {
          type: "web",
          // Only search on these websites
          allowed_websites: ["x.ai"],
        },
        {
          type: "news",
          // Exclude specific news websites
          excluded_websites: ["bbc.co.uk"],
        },
        {
          type: "x",
          // Focus on specific X handles
          included_x_handles: ["xai"],
        },
      ],
    },
  }
);

You can also use RSS feeds as a data source:

const result = await model.invoke("Summarize the latest posts from this feed", {
  searchParameters: {
    mode: "on",
    sources: [
      {
        type: "rss",
        links: ["https://example.com/feed.rss"],
      },
    ],
  },
});

Notes:

  • The xaiLiveSearch tool options use camelCase field names in TypeScript (for example maxSearchResults, fromDate, returnCitations, allowedWebsites, excludedWebsites, includedXHandles). These are automatically mapped to the underlying JSON API's search_parameters object, which uses snake_case field names as documented in the official xAI Live Search docs.

Combining live_search with custom tools

import { ChatXAI, tools } from "@langchain/xai";

const model = new ChatXAI({ model: "grok-3-fast" });

const modelWithTools = model.bindTools([
  tools.xaiLiveSearch(), // Built-in server tool
  {
    // Custom function tool
    type: "function",
    function: {
      name: "get_stock_price",
      description: "Get the current stock price",
      parameters: {
        type: "object",
        properties: {
          symbol: { type: "string" },
        },
        required: ["symbol"],
      },
    },
  },
]);

Development

To develop the @langchain/xai package, you'll need to follow these instructions:

Install dependencies

pnpm install

Build the package

pnpm build

Or from the repo root:

pnpm build --filter @langchain/xai

Run tests

Test files should live within a tests/ file in the src/ folder. Unit tests should end in .test.ts and integration tests should end in .int.test.ts:

$ pnpm test
$ pnpm test:int

Lint & Format

Run the linter & formatter to ensure your code is up to standard:

pnpm lint && pnpm format

Adding new entrypoints

If you add a new file to be exported, either import & re-export from src/index.ts, or add it to the exports field in the package.json file and run pnpm build to generate the new entrypoint.

FAQs

Package last updated on 21 May 2026

Did you know?

Socket

Socket for GitHub automatically highlights issues in each pull request and monitors the health of all your open source dependencies. Discover the contents of your packages and block harmful activity before you install or update your dependencies.

Install

Related posts