OpenAI Agents SDK (Python) development. Use when building AI agents, multi-agent handoffs, function tools, guardrails, sessions, streaming, or tracing with the `openai-agents` / `agents` Python package — including Azure OpenAI via LiteLLM. Triggers on imports from `agents`, uses of `Runner.run_sync`/`Runner.run_streamed`, `@function_tool`, `AgentOutputSchema`, `SQLiteSession`, or questions about the openai-agents-python SDK.
OpenAI Agents SDK (Python) development. Use when building AI agents, multi-agent handoffs, function tools, guardrails, sessions, streaming, or tracing with the `openai-agents` / `agents` Python package — including Azure OpenAI via LiteLLM. Triggers on imports from `agents`, uses of `Runner.run_sync`/`Runner.run_streamed`, `@function_tool`, `AgentOutputSchema`, `SQLiteSession`, or questions about the openai-agents-python SDK.
OpenAI Agents SDK (Python)
Use this skill when developing AI agents using OpenAI Agents SDK (openai-agents package).
from agents import Agent, Runner
agent = Agent(
name="Assistant",
instructions="You are a helpful assistant.",
model="gpt-5.4", # or "gpt-5.4-mini", "gpt-5.4-nano"
)
# Synchronous
result = Runner.run_sync(agent, "Tell me a joke")
print(result.final_output)
# Asynchronous
result = await Runner.run(agent, "Tell me a joke")
Key Patterns
Pattern
Purpose
Basic Agent
Simple Q&A with instructions
Azure/LiteLLM
Azure OpenAI integration
AgentOutputSchema
Strict JSON validation with Pydantic
Function Tools
External actions (@function_tool)
Streaming
Real-time UI (Runner.run_streamed)
Handoffs
Specialized agents, delegation
Agents as Tools
Orchestration (agent.as_tool)
LLM as Judge
Iterative improvement loop
Guardrails
Input/output validation
Sessions
Automatic conversation history
Multi-Agent Pipeline
Multi-step workflows
Sandboxing
Isolated execution environment for agents
Subagents
Spawn specialized subordinate agents (Python; TS in beta/development)
Observability
Built-in execution graph recording
Preferred: Live Docs via MCP
Model names and API details change frequently. When available, consult the OpenAI Developer Docs MCP server (openaiDeveloperDocs) before relying on the static references below.
Rules: Cite fetched docs. Never speculate on field names, defaults, or current model IDs — fetch first. Keep quotes under 125 chars.
Fallback when MCP is unavailable: https://developers.openai.com/api/docs/llms.txt (plain-text index of all API docs; each entry has a .md twin at /api/docs/<slug>.md).
Reference Documentation
Offline/quick-lookup snippets. Verify model names and API signatures against the MCP or docs when accuracy matters.