원클릭으로
ai
Python `ai` SDK — models, providers, streams, events, tools, agents, hooks, MCP, AI SDK UI, structured output, and media generation
Codex 또는 Claude로 설치 이 Prompt를 복사해 Codex, Claude 또는 다른 어시스턴트에 붙여 넣으면 Skill 페이지를 검토하고 설치를 진행할 수 있습니다.
메뉴
Python `ai` SDK — models, providers, streams, events, tools, agents, hooks, MCP, AI SDK UI, structured output, and media generation
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
Project knowledge for configuring Vercel Services in this Next.js and FastAPI starter. Use when editing vercel.json, adding services, debugging frontend-to-backend routing, or explaining Vercel Services local development and deployment.
AWS Aurora PostgreSQL and Aurora DSQL Python integration using asyncpg. Use when building Python backends with Aurora PostgreSQL or Aurora DSQL.
Project knowledge for making this repo preview correctly from Vercel Devbox/Sandbox. Use when configuring Next.js dev settings, explaining how users preview the app from Devbox, or responding to localhost, Sandbox URL, port 3000, or cross-origin dev-resource issues.
| name | ai |
| description | Python `ai` SDK — models, providers, streams, events, tools, agents, hooks, MCP, AI SDK UI, structured output, and media generation |
Use this skill when working with the Python ai SDK.
uv add ai
Direct OpenAI-compatible and Anthropic-compatible providers require optional
extras: uv add "ai[openai]" or uv add "ai[anthropic]". AI Gateway works
with the base package.
import ai
import asyncio
import ai
@ai.tool
async def get_weather(city: str) -> str:
"""Get current weather for a city."""
return f"Sunny, 72F in {city}"
async def main() -> None:
model = ai.get_model("gateway:anthropic/claude-sonnet-4")
agent = ai.agent(tools=[get_weather])
messages = [
ai.system_message("You are a helpful weather assistant."),
ai.user_message("What's the weather in Tokyo?"),
]
async with agent.run(model, messages) as stream:
async for event in stream:
if isinstance(event, ai.events.TextDelta):
print(event.chunk, end="", flush=True)
print(stream.output)
if __name__ == "__main__":
asyncio.run(main())
ai.stream(...) and agent.run(...) are async context managers. Iterate events
inside the context. After iteration, read final state from the stream object.
model = ai.get_model() # reads AI_SDK_DEFAULT_MODEL
model = ai.get_model("anthropic/claude-sonnet-4") # unprefixed: gateway route
model = ai.get_model("gateway:anthropic/claude-sonnet-4")
model = ai.get_model("openai:gpt-5.4") # direct provider route
model = ai.get_model("anthropic:claude-sonnet-4-6")
AI_GATEWAY_API_KEY.OPENAI_API_KEY and
ANTHROPIC_API_KEY.ai.get_provider(...) when you need a custom base URL, API key, headers,
or client.await ai.probe(model) to check credentials and model availability.provider = ai.get_provider(
"openai",
base_url="http://localhost:1234/v1",
api_key="your_access_token_here",
)
model = ai.Model("local-model", provider=provider)
models = await ai.get_provider("anthropic").list_models()
Request-scoped provider options go through params:
params = {
"providerOptions": {
"gateway": {"sort": "cost"},
"anthropic": {"speed": "fast"},
}
}
async with ai.stream(model, messages, params=params) as stream:
async for event in stream:
...
Messages are Pydantic models with typed parts. Use builders for common roles and parts:
ai.system_message("Be concise.")
ai.user_message("Describe this image:", ai.file_part(image_bytes, media_type="image/png"))
ai.assistant_message(ai.thinking("scratchpad"), "Final answer")
ai.tool_result_part("tc-1", result={"temp": 72}, tool_name="get_weather")
ai.tool_message(tool_call_id="tc-1", result=72, tool_name="get_weather")
Common message properties:
message.text, message.reasoning.message.tool_calls, message.tool_results.message.builtin_tool_calls, message.builtin_tool_returns.message.files, message.images, message.videos.message.get_output() or message.get_output(MyModel).Streams and agents yield event objects from ai.events:
async with ai.stream(model, messages, tools=tools) as stream:
async for event in stream:
if isinstance(event, ai.events.TextDelta):
print(event.chunk, end="", flush=True)
elif isinstance(event, ai.events.ToolEnd):
print(event.tool_call.tool_name, event.tool_call.tool_args)
elif isinstance(event, ai.events.ToolCallResult):
for result in event.results:
print(result.tool_name, result.result)
elif isinstance(event, ai.events.HookEvent):
print(event.hook.hook_id, event.hook.status)
elif isinstance(event, ai.events.PartialToolCallResult):
print(event.label, event.value)
After iteration:
stream.message # final assistant message for ai.stream
stream.messages # updated agent history for agent.run
stream.text # text output for ai.stream
stream.output # text or parsed Pydantic output
stream.tool_calls # function tool calls from ai.stream
stream.usage # latest reported usage
Serialize and restore history with Pydantic JSON:
encoded = [message.model_dump(mode="json") for message in stream.messages]
restored = [ai.messages.Message.model_validate(item) for item in encoded]
Use ai.stream when you want one model response and will handle any function
tool calls yourself:
async with ai.stream(model, messages, tools=[get_weather.tool]) as stream:
async for event in stream:
if isinstance(event, ai.events.TextDelta):
print(event.chunk, end="", flush=True)
for call in stream.tool_calls:
print(call.tool_name, call.tool_args)
Use structured output with a Pydantic model:
import pydantic
class Forecast(pydantic.BaseModel):
city: str
temperature: float
async with ai.stream(model, messages, output_type=Forecast) as stream:
async for event in stream:
...
forecast = stream.output
A function tool is an async Python function decorated with @ai.tool. The
function name becomes the tool name, the docstring becomes the description, and
the signature becomes a Pydantic-validated JSON schema.
@ai.tool
async def scan_sector(sector: str, depth: int = 1) -> str:
"""Scan a sector at the requested depth."""
return f"{sector}: clear at depth {depth}"
Use schema-only tools with ai.stream when the SDK should not execute them:
tool = ai.Tool(
kind="function",
name="get_weather",
args=ai.tools.FunctionToolArgs(
description="Get current weather for a city.",
params={
"type": "object",
"properties": {"city": {"type": "string"}},
"required": ["city"],
},
),
)
Provider-executed tools run outside your process:
tools = [ai.providers.anthropic.tools.web_search(max_uses=3)]
async with ai.stream(model, messages, tools=tools) as stream:
async for event in stream:
if isinstance(event, ai.events.BuiltinToolResult):
print(event.result.tool_name, event.result.result)
Tool validation failures and exceptions become ToolCallResult events with
error result parts. The original exception is on event.exception for logging.
if isinstance(event, ai.events.ToolCallResult) and event.exception:
log_exception(event.exception)
Async-generator tools yield partial values while they run. An aggregator turns those values into the final tool result the model sees.
@ai.tool
async def draft_reply(topic: str) -> ai.StreamingTextTool:
"""Draft a reply."""
yield "Checking "
yield f"records for {topic}."
@ai.tool
async def fetch(url: str) -> ai.StreamingStatusTool[str]:
"""Fetch a URL with status updates."""
yield "connecting"
yield "downloading"
yield body # last yield is the tool result
@ai.tool
async def research(topic: str) -> ai.SubAgentTool:
"""Research a topic with a subagent."""
subagent = ai.agent(tools=[...])
async with subagent.run(model, [ai.user_message(topic)]) as stream:
async for event in stream:
yield event
For custom aggregation, annotate an async-generator return type with
Annotated[AsyncGenerator[T], ai.agents.Aggregate(...)]. Built-in
aggregators: ai.agents.ConcatAggregator, ai.agents.LastAggregator, and
ai.agents.MessageAggregator.
Use an agent when the SDK should execute Python tools, append tool results, and continue until the assistant returns a final answer.
agent = ai.agent(tools=[get_weather])
async with agent.run(model, messages) as stream:
async for event in stream:
if isinstance(event, ai.events.TextDelta):
print(event.chunk, end="", flush=True)
history = stream.messages
answer = stream.output
Pass structured output and provider params through agent.run:
async with agent.run(
model,
[ai.user_message("Return a JSON forecast.")],
output_type=Forecast,
params={"temperature": 0},
) as stream:
async for event in stream:
...
forecast = stream.output
Subclass ai.Agent and override loop for custom scheduling, routing,
logging, persistence, or approval logic.
from collections.abc import AsyncGenerator
class CustomAgent(ai.Agent):
async def loop(self, context: ai.Context) -> AsyncGenerator[ai.events.AgentEvent]:
while context.keep_running():
async with (
ai.stream(context=context) as stream,
ai.ToolRunner() as tool_runner,
):
async for event in ai.util.merge(stream, tool_runner.events()):
yield event
if isinstance(event, ai.events.ToolEnd):
tool_call = context.resolve(event.tool_call)
tool_runner.schedule(tool_call)
context.add(stream.message)
context.add(tool_runner.get_tool_message())
Loop helpers: context.model, context.messages, context.tools,
context.output_type, context.params, context.resolve(...),
context.keep_running(), and context.add(...).
Use ai.SubAgentTool for agent-as-tool workflows. Use ai.yield_from(...)
inside custom loops to fan out streams and forward nested events as
PartialToolCallResult values with labels.
async with (
researcher.run(model, research_messages) as research_stream,
analyst.run(model, analyst_messages) as analyst_stream,
):
research_text, analyst_text = await asyncio.gather(
ai.yield_from(
research_stream,
label="researcher",
aggregator=ai.agents.MessageAggregator,
),
ai.yield_from(
analyst_stream,
label="analyst",
aggregator=ai.agents.MessageAggregator,
),
)
Route labels in the consumer:
if isinstance(event, ai.events.PartialToolCallResult):
if event.label == "researcher":
route_research(event.value)
Hooks are runtime suspension points. Tool approvals are the built-in workflow.
@ai.tool(require_approval=True)
async def delete_file(path: str) -> str:
"""Delete a file."""
...
The default loop gates each call behind an approval hook with label
approve_{tool_call_id} and payload ai.tools.ToolApproval.
async with agent.run(model, messages) as stream:
async for event in stream:
if isinstance(event, ai.events.HookEvent) and event.hook.status == "pending":
ai.resolve_hook(
event.hook.hook_id,
ai.tools.ToolApproval(granted=True, reason="approved"),
)
Resolve with granted=False to deny the call and return an error tool result.
Manual hooks block until resolved in live flows:
approval = await ai.hook(
"approve_send_email",
payload=ai.tools.ToolApproval,
metadata={"tool": "send_email"},
)
Resolve or cancel from another task, request handler, or UI callback:
ai.resolve_hook("approve_send_email", {"granted": True, "reason": "approved"})
await ai.cancel_hook("approve_send_email", reason="client disconnected")
Hooks emit HookEvent objects. Their messages use role="internal" and contain
HookPart values.
Serverless resume flow:
async with agent.run(model, messages) as stream:
async for event in stream:
if isinstance(event, ai.events.HookEvent) and event.hook.status == "pending":
ai.abort_pending_hook(event.hook)
yield event
persist(stream.messages)
# Later, restore messages, pre-register the resolution, and rerun.
ai.resolve_hook(hook_id, ai.tools.ToolApproval(granted=True, reason="approved"))
MCP adapters return AgentTool objects usable in ai.agent(...).
tools = await ai.mcp.get_http_tools(
"https://mcp.example.com/mcp",
headers={"Authorization": "Bearer token"},
tool_prefix="docs",
)
tools = await ai.mcp.get_stdio_tools(
"npx",
"-y",
"@anthropic/mcp-server-filesystem",
"/tmp",
tool_prefix="fs",
)
agent = ai.agent(tools=tools)
Use ai.agents.ui.ai_sdk to convert between AI SDK UI messages and Python
runtime messages/events.
class ChatRequest(pydantic.BaseModel):
messages: list[ai.agents.ui.ai_sdk.UIMessage]
@app.post("/chat")
async def chat(request: ChatRequest):
messages, approvals = ai.agents.ui.ai_sdk.to_messages(request.messages)
ai.agents.ui.ai_sdk.apply_approvals(approvals)
async def stream_response():
async with chat_agent.run(model, messages) as stream:
async for chunk in ai.agents.ui.ai_sdk.to_sse(stream):
yield chunk
return fastapi.responses.StreamingResponse(
stream_response(),
headers=ai.agents.ui.ai_sdk.UI_MESSAGE_STREAM_HEADERS,
)
Use ai.agents.ui.ai_sdk.to_ui_messages(messages) to rebuild UI history from
stored runtime messages.
For serverless approvals, monitor HookEvent before passing events to to_sse
and call ai.abort_pending_hook(event.hook) on pending hooks.
Use ai.generate for dedicated image and video models:
image_message = await ai.generate(
ai.get_model("gateway:google/imagen-4.0-generate-001"),
[ai.user_message("A watercolor mothership over a quiet city.")],
ai.ImageParams(n=1, aspect_ratio="16:9"),
)
image = image_message.images[0]
For video generation, pass ai.VideoParams(...) and read message.videos.