Friendli
Friendli enhances AI application performance and optimizes cost savings with scalable, efficient deployment options, tailored for high-demand AI workloads.
This tutorial guides you through integrating ChatFriendli
for chat applications using LangChain. ChatFriendli
offers a flexible approach to generating conversational AI responses, supporting both synchronous and asynchronous calls.
Setup
Ensure the @langchain/community
is installed.
- npm
- Yarn
- pnpm
npm install @langchain/community @langchain/core
yarn add @langchain/community @langchain/core
pnpm add @langchain/community @langchain/core
Sign in to Friendli Suite to create a Personal Access Token, and set it as the FRIENDLI_TOKEN
environment.
You can set team id as FRIENDLI_TEAM
environment.
You can initialize a Friendli chat model with selecting the model you want to use. The default model is meta-llama-3-8b-instruct
. You can check the available models at docs.friendli.ai.
Usage
import { ChatFriendli } from "@langchain/community/chat_models/friendli";
const model = new ChatFriendli({
model: "meta-llama-3-8b-instruct", // Default value
friendliToken: process.env.FRIENDLI_TOKEN,
friendliTeam: process.env.FRIENDLI_TEAM,
maxTokens: 800,
temperature: 0.9,
topP: 0.9,
frequencyPenalty: 0,
stop: [],
});
const response = await model.invoke(
"Draft a cover letter for a role in software engineering."
);
console.log(response.content);
/*
Dear [Hiring Manager],
I am excited to apply for the role of Software Engineer at [Company Name]. With my passion for innovation, creativity, and problem-solving, I am confident that I would be a valuable asset to your team.
As a highly motivated and detail-oriented individual, ...
*/
const stream = await model.stream(
"Draft a cover letter for a role in software engineering."
);
for await (const chunk of stream) {
console.log(chunk.content);
}
/*
D
ear
[
H
iring
...
[
Your
Name
]
*/
API Reference:
- ChatFriendli from
@langchain/community/chat_models/friendli
Related
- Chat model conceptual guide
- Chat model how-to guides