| name | openui-forge-langchain |
| description | OpenUI generative UI with LangChain/LangGraph backend. Supports ChatOpenAI and ChatAnthropic. |
| version | 1.2.0 |
| author | OthmanAdi |
OpenUI Forge — LangChain
Build generative UI apps with OpenUI + LangChain. Stream from ChatOpenAI or ChatAnthropic, convert to OpenAI NDJSON.
Activation Triggers
- "openui langchain", "openui langgraph", "openui langsmith"
- "generative ui langchain", "langchain streaming ui"
Prerequisites
- Node.js >= 22 (24 LTS recommended), React >= 18.3.1 (19+ recommended)
OPENAI_API_KEY or ANTHROPIC_API_KEY set
- Next.js project (App Router recommended)
Quick Start
- Install dependencies (pick one or both LLM providers):
npm install @openuidev/react-ui @openuidev/react-headless @openuidev/react-lang lucide-react zod @langchain/openai @langchain/core
- Add the CSS import to
app/layout.tsx:
import "@openuidev/react-ui/components.css";
- Create the API route and frontend page below
- Run
npm run dev and test
Full Code
Backend (OpenAI): app/api/chat/route.ts
import { openuiChatLibrary } from "@openuidev/react-ui/genui-lib";
import { ChatOpenAI } from "@langchain/openai";
import { HumanMessage, SystemMessage, AIMessage } from "@langchain/core/messages";
const model = new ChatOpenAI({ model: process.env.OPENAI_MODEL ?? "gpt-5.5", streaming: true });
export async function POST(req: Request) {
const { messages } = await req.json();
const systemPrompt = openuiChatLibrary.prompt({
preamble: "You are a helpful assistant that generates interactive UIs.",
});
const lcMessages = [
new SystemMessage(systemPrompt),
...messages.map((m: { role: string; content: string }) =>
m.role === "user" ? new HumanMessage(m.content) : new AIMessage(m.content)
),
];
const stream = await model.stream(lcMessages);
const encoder = new TextEncoder();
const id = `chatcmpl-${Date.now()}`;
const readableStream = new ReadableStream({
async start(controller) {
for await (const chunk of stream) {
const text = typeof chunk.content === "string" ? chunk.content : "";
if (!text) continue;
const payload = {
id,
object: "chat.completion.chunk",
choices: [{ index: 0, delta: { content: text }, finish_reason: null }],
};
controller.enqueue(encoder.encode(`data: ${JSON.stringify(payload)}\n\n`));
}
const done = {
id,
object: "chat.completion.chunk",
choices: [{ index: 0, delta: {}, finish_reason: "stop" }],
};
controller.enqueue(encoder.encode(`data: ${JSON.stringify(done)}\n\n`));
controller.enqueue(encoder.encode("data: [DONE]\n\n"));
controller.close();
},
});
return new Response(readableStream, {
headers: { "Content-Type": "text/event-stream" },
});
}
Backend (Anthropic variant): app/api/chat/route.ts
Replace the model initialization and import:
import { ChatAnthropic } from "@langchain/anthropic";
const model = new ChatAnthropic({
model: process.env.ANTHROPIC_MODEL ?? "claude-sonnet-4-6",
maxTokens: 4096,
streaming: true,
});
Everything else (message mapping, stream conversion, response) stays identical.
Frontend: app/chat/page.tsx
"use client";
import { FullScreen } from "@openuidev/react-ui";
import { openuiChatLibrary } from "@openuidev/react-ui/genui-lib";
import {
openAIAdapter,
openAIMessageFormat,
} from "@openuidev/react-headless";
export default function ChatPage() {
return (
<FullScreen
componentLibrary={openuiChatLibrary}
streamProtocol={openAIAdapter()}
messageFormat={openAIMessageFormat}
apiUrl="/api/chat"
/>
);
}
The backend emits SSE (data: {json}\n\n). Pair it with openAIAdapter() on the frontend. (langGraphAdapter is also exported from @openuidev/react-headless if you stream LangGraph events natively rather than converting to OpenAI shape.)
Component Creation
import { defineComponent } from "@openuidev/react-lang";
import { z } from "zod";
export const MetricCard = defineComponent({
name: "MetricCard",
description: "Displays a metric with label, value, and optional trend",
props: z.object({
label: z.string().describe("Metric name"),
value: z.number().describe("Current metric value"),
trend: z.enum(["up", "down", "flat"]).optional().describe("Trend direction"),
}),
component: ({ props }) => (
<div style={{ padding: 16, border: "1px solid #e5e7eb", borderRadius: 8 }}>
<div style={{ fontSize: 14, color: "#6b7280" }}>{props.label}</div>
<div style={{ fontSize: 24, fontWeight: 700 }}>{props.value}</div>
{props.trend && <span>{props.trend === "up" ? "+" : props.trend === "down" ? "-" : "="}</span>}
</div>
),
});
System Prompt Generation
npx @openuidev/cli generate ./src/lib/library.ts --out src/generated/system-prompt.txt
Validation Checklist
Error Patterns
| Error | Cause | Fix |
|---|
| Empty chunks in stream | LangChain AIMessageChunk content may be empty | Skip chunks where text is empty |
| Type error on messages | Wrong LangChain message class | Map user to HumanMessage, assistant to AIMessage |
| Module not found | Missing LangChain provider package | Install @langchain/openai or @langchain/anthropic |
| Stream hangs | Missing [DONE] sentinel | Always send final stop chunk and [DONE] |
| CORS error | Cross-origin frontend | Add CORS headers if frontend/backend are split |