Display components
Register React components that your agent can render in the chat.
"use client";import React from "react";import { CopilotChat, CopilotKit, useComponent,} from "@copilotkit/react-core/v2";import { BarChart, barChartPropsSchema } from "./bar-chart";import { PieChart, pieChartPropsSchema } from "./pie-chart";import { useSuggestions } from "./suggestions";function Chat() { useComponent({ name: "render_bar_chart", description: "Display a bar chart with labeled numeric values.", parameters: barChartPropsSchema, render: BarChart, }); useComponent({ name: "render_pie_chart", description: "Display a pie chart with labeled numeric values.", parameters: pieChartPropsSchema, render: PieChart, }); useSuggestions(); return ( <div className="flex justify-center items-center h-screen w-full"> <div className="h-full w-full max-w-4xl"> <CopilotChat agentId="gen-ui-tool-based" className="h-full rounded-2xl" /> </div> </div> );}export default function ControlledGenUiDemo() { return ( <CopilotKit runtimeUrl="/api/copilotkit" agent="gen-ui-tool-based"> <Chat /> </CopilotKit> );}What is this?#
Render-only generative UI lets you register React components as tools your agent can invoke. When the agent calls the tool, CopilotKit renders your component directly in the chat with the tool's arguments as props; no handler logic or user interaction required.
useComponent({
name: "showChart",
description: "Populate data and show the user a chart",
parameters: ChartProps,
render: Chart
});
export const ChartProps = z.object({
title: z.string(),
data: z.array(z.object({ label: z.string(), value: z.number() })),
});
export function Chart({ title, data }: z.infer<typeof ChartProps>) {
return (
<div>
<h3>{title}</h3>
<ResponsiveContainer width="100%" height={300}>
<BarChart data={data}>
<XAxis dataKey="label" /><YAxis /><Tooltip />
<Bar dataKey="value" fill="#6366f1" />
</BarChart>
</ResponsiveContainer>
</div>
);
}When should I use this?#
Use render-only generative UI when you want to:
- Display rich UI (cards, charts, tables) inline in the chat
- Show structured data from agent responses
- Render previews, status indicators, or visual feedback
- Let the agent present information beyond plain text
How it works in code#
Install the CopilotKit LangGraph SDK
npm install @copilotkit/sdk-jsWire CopilotKit state + tools into your graph
Frontend tools registered with useFrontendTool arrive on the agent's
state at state.copilotkit.actions. Use CopilotKitStateAnnotation to
expose that channel on your graph, then call
convertActionsToDynamicStructuredTools(...) inside your chat node to
bind the LLM to those actions.
import { RunnableConfig } from "@langchain/core/runnables";
import { SystemMessage } from "@langchain/core/messages";
import { MemorySaver, START, StateGraph } from "@langchain/langgraph";
import { ChatOpenAI } from "@langchain/openai";
import { makeChatOpenAI } from "./openai-headers";
import {
convertActionsToDynamicStructuredTools,
CopilotKitStateAnnotation,
} from "@copilotkit/sdk-js/langgraph";
// CopilotKit forwards frontend tools to the agent via
// `state.copilotkit.actions`. `CopilotKitStateAnnotation` adds that
// channel to your graph's state; `convertActionsToDynamicStructuredTools`
// turns the forwarded action schemas into LangChain tools you can bind
// at model-invocation time.
const AgentStateAnnotation = CopilotKitStateAnnotation;
export type AgentState = typeof AgentStateAnnotation.State;
const SYSTEM_PROMPT = "You are a helpful, concise assistant.";
async function chatNode(state: AgentState, config: RunnableConfig) {
const model = makeChatOpenAI(config, {
temperature: 0,
model: "gpt-4o-mini",
});
const modelWithTools = model.bindTools!([
...convertActionsToDynamicStructuredTools(state.copilotkit?.actions ?? []),
]);
const response = await modelWithTools.invoke(
[new SystemMessage({ content: SYSTEM_PROMPT }), ...state.messages],
config,
);
return { messages: response };
}
const workflow = new StateGraph(AgentStateAnnotation)
.addNode("chat_node", chatNode)
.addEdge(START, "chat_node")
.addEdge("chat_node", "__end__");
const memory = new MemorySaver();
export const graph = workflow.compile({
checkpointer: memory,
});The renderer component receives the tool's arguments as typed props and mounts inline in the chat. Below is the chart renderer wired up in the canonical demo — the agent emits the data, the component draws it.
useComponent({ name: "render_bar_chart", description: "Display a bar chart with labeled numeric values.", parameters: barChartPropsSchema, render: BarChart, });