chore: import upstream snapshot with attribution
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{
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"_meta": {
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"description": "D6 fixtures for langgraph-python / chat-css",
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"sourceFile": "d5-all.json",
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"created": "2026-05-21"
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},
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"fixtures": [
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{
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"match": {
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"userMessage": "verify the css theme rendering",
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"turnIndex": 0,
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"context": "langgraph-python"
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},
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"response": {
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"content": "The chat is themed with hot pink user bubbles and amber assistant bubbles. CSS variables are scoped to .chat-css-demo-scope so the theme does not leak."
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}
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},
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{
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"match": {
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"userMessage": "switch theme to dark mode",
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"turnIndex": 0,
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"context": "langgraph-python"
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},
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"response": {
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"content": "Done — the change_theme tool was invoked and the page is now in dark mode. Frontend tools were registered via useCopilotAction and the agent dispatched the call client-side."
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}
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},
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{
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"match": {
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"userMessage": "tone:professional",
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"turnIndex": 0,
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"context": "langgraph-python"
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},
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"response": {
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"content": "Greetings. I am operating in professional tone. I will provide measured, formal responses calibrated to your stated preferences and refrain from colloquialisms in my replies."
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}
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},
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{
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"match": {
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"userMessage": "tone:casual",
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"turnIndex": 0,
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"context": "langgraph-python"
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},
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"response": {
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"content": "Hey! Casual mode here — I'll keep things friendly and easygoing. Just shoot me whatever you want to know and I'll riff on it without sounding like a press release."
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}
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},
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{
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"match": {
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"userMessage": "expertise:beginner",
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"turnIndex": 0,
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"context": "langgraph-python"
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},
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"response": {
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"content": "Sure! Think of CopilotKit as a friendly toolkit. It helps you add an AI helper to your app. The helper can answer questions, run small tasks, and show buttons or charts when needed."
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}
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},
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{
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"match": {
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"userMessage": "expertise:expert",
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"turnIndex": 0,
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"context": "langgraph-python"
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},
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"response": {
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"content": "CopilotKit composes a runtime adapter (Express/Hono) over the AG-UI SSE protocol; the React client wires hooks (useFrontendTool, useAgentContext) into a typed agent runner. The architecture front-runs round-trip latency by streaming TEXT_MESSAGE_CHUNK and TOOL_CALL events on the same channel."
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}
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},
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{
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"match": {
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"userMessage": "responseLength:concise",
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"turnIndex": 0,
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"context": "langgraph-python"
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},
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"response": {
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"content": "Agent context is a typed payload sent each turn."
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}
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},
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{
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"match": {
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"userMessage": "responseLength:detailed",
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"turnIndex": 0,
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"context": "langgraph-python"
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},
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"response": {
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"content": "Agent context is a typed payload published from the frontend on every turn through the useAgentContext hook. The payload is forwarded into the agent's runtime context (LangGraph 0.6 introduced the `context` channel as the supported relay for per-run frontend-supplied data; legacy `properties` flowed via `forwardedProps` and did not land in `RunnableConfig`). On the Python side, CopilotKitMiddleware reads the value off the runtime context, then routes it into the system-prompt builder so the model sees the user's tone, expertise, and length preferences before each call. The result is per-turn behavior change without a model swap."
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}
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}
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]
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}
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