How to init any model in one line
Many LLM applications let end users specify what model provider and model they want the application to be powered by.
This requires writing some logic to initialize different ChatModels based on some user configuration.
The initChatModel()
helper method makes it easy to initialize a number of different model integrations without having to worry about import paths and class names.
Keep in mind this feature is only for chat models.
This guide assumes familiarity with the following concepts:
This feature is only intended to be used in Node environments. Use in non Node environments or with bundlers is not guaranteed to work and not officially supported.
initChatModel
requires langchain>=0.2.11
. See this guide for some considerations to take when upgrading.
See the initChatModel() API reference for a full list of supported integrations.
Make sure you have the integration packages installed for any model providers you want to support. E.g. you should have @langchain/openai
installed to init an OpenAI model.
Basic usageβ
import { initChatModel } from "langchain/chat_models/universal";
// Returns a @langchain/openai ChatOpenAI instance.
const gpt4o = await initChatModel("gpt-4o", {
modelProvider: "openai",
temperature: 0,
});
// Returns a @langchain/anthropic ChatAnthropic instance.
const claudeOpus = await initChatModel("claude-3-opus-20240229", {
modelProvider: "anthropic",
temperature: 0,
});
// Returns a @langchain/google-vertexai ChatVertexAI instance.
const gemini15 = await initChatModel("gemini-1.5-pro", {
modelProvider: "google-vertexai",
temperature: 0,
});
// Since all model integrations implement the ChatModel interface, you can use them in the same way.
console.log(`GPT-4o: ${(await gpt4o.invoke("what's your name")).content}\n`);
console.log(
`Claude Opus: ${(await claudeOpus.invoke("what's your name")).content}\n`
);
console.log(
`Gemini 1.5: ${(await gemini15.invoke("what's your name")).content}\n`
);
/*
GPT-4o: I'm an AI language model created by OpenAI, and I don't have a personal name. You can call me Assistant or any other name you prefer! How can I help you today?
Claude Opus: My name is Claude. It's nice to meet you!
Gemini 1.5: I don't have a name. I am a large language model, and I am not a person. I am a computer program that can generate text, translate languages, write different kinds of creative content, and answer your questions in an informative way.
*/
API Reference:
- initChatModel from
langchain/chat_models/universal
Inferring model providerβ
For common and distinct model names initChatModel()
will attempt to infer the model provider.
See the API reference for a full list of inference behavior.
E.g. any model that starts with gpt-3...
or gpt-4...
will be inferred as using model provider openai
.
import { initChatModel } from "langchain/chat_models/universal";
const gpt4o = await initChatModel("gpt-4o", {
temperature: 0,
});
const claudeOpus = await initChatModel("claude-3-opus-20240229", {
temperature: 0,
});
const gemini15 = await initChatModel("gemini-1.5-pro", {
temperature: 0,
});
API Reference:
- initChatModel from
langchain/chat_models/universal
Creating a configurable modelβ
You can also create a runtime-configurable model by specifying configurableFields
.
If you don't specify a model
value, then "model" and "modelProvider" be configurable by default.
import { initChatModel } from "langchain/chat_models/universal";
const configurableModel = await initChatModel(undefined, { temperature: 0 });
const gpt4Res = await configurableModel.invoke("what's your name", {
configurable: { model: "gpt-4o" },
});
console.log("gpt4Res: ", gpt4Res.content);
/*
gpt4Res: I'm an AI language model created by OpenAI, and I don't have a personal name. You can call me Assistant or any other name you prefer! How can I assist you today?
*/
const claudeRes = await configurableModel.invoke("what's your name", {
configurable: { model: "claude-3-5-sonnet-20240620" },
});
console.log("claudeRes: ", claudeRes.content);
/*
claudeRes: My name is Claude. It's nice to meet you!
*/
API Reference:
- initChatModel from
langchain/chat_models/universal
Configurable model with default valuesβ
We can create a configurable model with default model values, specify which parameters are configurable, and add prefixes to configurable params:
import { initChatModel } from "langchain/chat_models/universal";
const firstLlm = await initChatModel("gpt-4o", {
temperature: 0,
configurableFields: ["model", "modelProvider", "temperature", "maxTokens"],
configPrefix: "first", // useful when you have a chain with multiple models
});
const openaiRes = await firstLlm.invoke("what's your name");
console.log("openaiRes: ", openaiRes.content);
/*
openaiRes: I'm an AI language model created by OpenAI, and I don't have a personal name. You can call me Assistant or any other name you prefer! How can I assist you today?
*/
const claudeRes = await firstLlm.invoke("what's your name", {
configurable: {
first_model: "claude-3-5-sonnet-20240620",
first_temperature: 0.5,
first_maxTokens: 100,
},
});
console.log("claudeRes: ", claudeRes.content);
/*
claudeRes: My name is Claude. It's nice to meet you!
*/
API Reference:
- initChatModel from
langchain/chat_models/universal
Using a configurable model declarativelyβ
We can call declarative operations like bindTools
, withStructuredOutput
, withConfig
, etc. on a configurable model and chain a configurable model in the same way that we would a regularly instantiated chat model object.
import { z } from "zod";
import { tool } from "@langchain/core/tools";
import { initChatModel } from "langchain/chat_models/universal";
const GetWeather = z
.object({
location: z.string().describe("The city and state, e.g. San Francisco, CA"),
})
.describe("Get the current weather in a given location");
const weatherTool = tool(
(_) => {
// do something
return "138 degrees";
},
{
name: "GetWeather",
schema: GetWeather,
}
);
const GetPopulation = z
.object({
location: z.string().describe("The city and state, e.g. San Francisco, CA"),
})
.describe("Get the current population in a given location");
const populationTool = tool(
(_) => {
// do something
return "one hundred billion";
},
{
name: "GetPopulation",
schema: GetPopulation,
}
);
const llm = await initChatModel(undefined, { temperature: 0 });
const llmWithTools = llm.bindTools([weatherTool, populationTool]);
const toolCalls1 = (
await llmWithTools.invoke("what's bigger in 2024 LA or NYC", {
configurable: { model: "gpt-4o" },
})
).tool_calls;
console.log("toolCalls1: ", JSON.stringify(toolCalls1, null, 2));
/*
toolCalls1: [
{
"name": "GetPopulation",
"args": {
"location": "Los Angeles, CA"
},
"type": "tool_call",
"id": "call_DXRBVE4xfLYZfhZOsW1qRbr5"
},
{
"name": "GetPopulation",
"args": {
"location": "New York, NY"
},
"type": "tool_call",
"id": "call_6ec3m4eWhwGz97sCbNt7kOvC"
}
]
*/
const toolCalls2 = (
await llmWithTools.invoke("what's bigger in 2024 LA or NYC", {
configurable: { model: "claude-3-5-sonnet-20240620" },
})
).tool_calls;
console.log("toolCalls2: ", JSON.stringify(toolCalls2, null, 2));
/*
toolCalls2: [
{
"name": "GetPopulation",
"args": {
"location": "Los Angeles, CA"
},
"id": "toolu_01K3jNU8jx18sJ9Y6Q9SooJ7",
"type": "tool_call"
},
{
"name": "GetPopulation",
"args": {
"location": "New York City, NY"
},
"id": "toolu_01UiANKaSwYykuF4hi3t5oNB",
"type": "tool_call"
}
]
*/
API Reference:
- tool from
@langchain/core/tools
- initChatModel from
langchain/chat_models/universal