원클릭으로
openui-forge-anthropic
OpenUI generative UI with Anthropic Claude SDK backend. Stream conversion to OpenAI NDJSON format.
Codex 또는 Claude로 설치 이 Prompt를 복사해 Codex, Claude 또는 다른 어시스턴트에 붙여 넣으면 Skill 페이지를 검토하고 설치를 진행할 수 있습니다.
메뉴
OpenUI generative UI with Anthropic Claude SDK backend. Stream conversion to OpenAI NDJSON format.
Codex 또는 Claude로 설치 이 Prompt를 복사해 Codex, Claude 또는 다른 어시스턴트에 붙여 넣으면 Skill 페이지를 검토하고 설치를 진행할 수 있습니다.
SOC 직업 분류 기준
OpenUI generative UI with C# ASP.NET Core Minimal API backend. Direct OpenAI API SSE streaming via HttpClient on .NET 10.
OpenUI generative UI with Elixir Phoenix backend. Chunked SSE streaming via Plug.Conn and Req.
OpenUI generative UI with Go (net/http) backend. Direct OpenAI API streaming via HTTP.
OpenUI generative UI with a Java Spring Boot (WebFlux) backend. Streams the OpenAI API directly via WebClient as SSE.
OpenUI generative UI with LangChain/LangGraph backend. Supports ChatOpenAI and ChatAnthropic.
OpenUI generative UI with OpenAI SDK backend. Streaming chat completions with gpt-5.5 (or any current OpenAI-compatible model).
| name | openui-forge-anthropic |
| description | OpenUI generative UI with Anthropic Claude SDK backend. Stream conversion to OpenAI NDJSON format. |
| version | 1.2.0 |
| author | OthmanAdi |
Build generative UI apps with OpenUI + Anthropic Claude. Converts Anthropic streaming events to OpenAI-compatible NDJSON.
ANTHROPIC_API_KEY environment variable setnpm install @openuidev/react-ui @openuidev/react-headless @openuidev/react-lang lucide-react zod @anthropic-ai/sdk
app/layout.tsx:import "@openuidev/react-ui/components.css";
npm run dev and testapp/api/chat/route.tsThe backend streams from Anthropic and converts each event into OpenAI-compatible SSE chunks that openAIAdapter() expects (data: {json}\n\n lines, terminated by data: [DONE]).
import { openuiChatLibrary } from "@openuidev/react-ui/genui-lib";
import Anthropic from "@anthropic-ai/sdk";
const client = new Anthropic();
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.",
additionalRules: ["Always use Stack as root when combining multiple components."],
});
// ANTHROPIC_MODEL alternatives: claude-opus-4-8, claude-haiku-4-5, claude-fable-5
const stream = client.messages.stream({
model: process.env.ANTHROPIC_MODEL ?? "claude-sonnet-4-6",
max_tokens: 4096,
system: systemPrompt,
messages,
});
const encoder = new TextEncoder();
const readableStream = new ReadableStream({
async start(controller) {
const id = `chatcmpl-${Date.now()}`;
for await (const event of stream) {
if (
event.type === "content_block_delta" &&
event.delta.type === "text_delta"
) {
const chunk = {
id,
object: "chat.completion.chunk",
choices: [
{
index: 0,
delta: { content: event.delta.text },
finish_reason: null,
},
],
};
controller.enqueue(
encoder.encode(`data: ${JSON.stringify(chunk)}\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" },
});
}
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 withopenAIAdapter()on the frontend —openAIReadableStreamAdapter()is for NDJSON (nodata:prefix) and will silently produce no output here.
import { defineComponent } from "@openuidev/react-lang";
import { z } from "zod";
export const StatusCard = defineComponent({
name: "StatusCard",
description: "Displays a status with label and color indicator",
props: z.object({
label: z.string().describe("Status label text"),
status: z.enum(["ok", "warning", "error"]).describe("Current status level"),
}),
component: ({ props }) => {
const colors = { ok: "#22c55e", warning: "#eab308", error: "#ef4444" };
return (
<div style={{ display: "flex", alignItems: "center", gap: 8 }}>
<span style={{ width: 10, height: 10, borderRadius: "50%", background: colors[props.status] }} />
<span>{props.label}</span>
</div>
);
},
});
npx @openuidev/cli generate ./src/lib/library.ts --out src/generated/system-prompt.txt
Or at runtime: openuiChatLibrary.prompt({ preamble: "...", additionalRules: [...] }).
ANTHROPIC_API_KEY is set in .env.localcontent_block_delta events to OpenAI-compatible SSE chunksfinish_reason: "stop" and ends with data: [DONE]streamProtocol={openAIAdapter()} and openAIMessageFormatcomponentLibrary={openuiChatLibrary} prop passed to FullScreen| Error | Cause | Fix |
|---|---|---|
| 401 from Anthropic | Missing or invalid API key | Set ANTHROPIC_API_KEY in .env.local |
| Stream hangs | Missing [DONE] sentinel or controller.close() | Ensure final chunk and [DONE] are sent |
| Garbled output | Not wrapping in data: ... SSE format | Each chunk must be data: {json}\n\n |
| Components render as text | Library not passed to FullScreen | Add componentLibrary={openuiChatLibrary} prop |
| Nothing renders, no error | Used openAIReadableStreamAdapter() (NDJSON) on SSE stream, or adapter= prop (silently ignored) | Use streamProtocol={openAIAdapter()} |
max_tokens required | Anthropic API requires explicit max_tokens | Always set max_tokens (e.g., 4096) |