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ai-python-serverless-execution
Use when building serverless AI SDK for Python endpoints, handling hook approvals, deferring hooks, or resuming runs across requests.
用 Codex 或 Claude 帮你安装 复制这段 Prompt,粘贴到 Codex、Claude 或其他助手里,让它检查 Skill 页面并帮你完成安装。
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Use when building serverless AI SDK for Python endpoints, handling hook approvals, deferring hooks, or resuming runs across requests.
用 Codex 或 Claude 帮你安装 复制这段 Prompt,粘贴到 Codex、Claude 或其他助手里,让它检查 Skill 页面并帮你完成安装。
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| name | ai-python-serverless-execution |
| description | Use when building serverless AI SDK for Python endpoints, handling hook approvals, deferring hooks, or resuming runs across requests. |
| metadata | {"sdk-version":"0.2.1"} |
Use this when working in a serverless setup, e.g. Vercel Fluid Compute.
The only major difference in serverless is processing tool approvals and other hooks. Since you can't keep the hook future alive, you need to stop the run, save messages, then start a later request with the hook resolution pre-registered.
Mark approval-gated tools with require_approval=True:
@ai.tool(require_approval=True)
async def delete_file(path: str) -> str:
return f"Deleted {path}"
When a deferred hook appears, send it to the client and call
ai.defer_hook(...).
Keep draining the stream. Do not break after the first hook. This lets sibling
tools finish or get marked deferred, and makes stream.messages complete.
deferred_hooks = []
async with agent.run(model, messages) as stream:
async for event in stream:
if (
isinstance(event, ai.events.HookEvent)
and event.hook.status == "pending"
):
deferred_hooks.append(event.hook)
ai.defer_hook(event.hook)
yield event
saved_messages = [
message.model_dump(mode="json")
for message in stream.messages
]
save_messages(saved_messages)
save_deferred_hook_ids([hook.hook_id for hook in deferred_hooks])
Load the saved messages, pre-register hook resolutions, then call agent.run.
messages = [
ai.messages.Message.model_validate(message)
for message in load_messages()
]
for approval in approvals:
ai.resolve_hook(
approval.hook_id,
ai.tools.ToolApproval(
granted=approval.granted,
reason=approval.reason,
),
)
async with agent.run(model, messages) as stream:
async for event in stream:
yield event
save_messages([
message.model_dump(mode="json")
for message in stream.messages
])
Call ai.resolve_hook(...) before agent.run(...). Do not ask the model to
make the tool call again.
Agent.run prepares saved interrupted messages for replay. Completed sibling
tool results are reused, deferred hooks receive the pre-registered resolution,
and replay-only events are hidden from the caller.
agent.run(...); serverless resume usually does not need a custom loop.context.resolve(...), ToolRunner, and
context.add(...) so approvals and replay keep working.ai.resolve_hook(hook_id, data, payload=PayloadType).ai-python-ui-adapter for message conversion,
approval responses, and SSE.Use when connecting AI SDK for Python streams to AI SDK UI useChat clients.
Use for AI SDK for Python basics. Configure a model, make messages, stream, declare tools, build a basic agent.
Use for AI SDK for Python async-generator tools, streaming tool output, subagent tools, PartialToolCallResult events, and custom tool aggregation.
Use for the subagent-as-a-tool pattern.
Use when building custom agent loops. Modify tool dispatch, history management, hooks, control flow.
Use for implementing custom providers in AI SDK for Python.