打造智能AI代理:OpenAI Agents SDK实战课

学习使用OpenAI Agents SDK和Codex,从零构建生产级AI代理。涵盖工具集成、多代理编排、语音对话、部署与监控,7小时48分钟视频教程,适合所有水平开发者。

Build OpenAI Agents with OpenAI Codex and OpenAI Agents SDK

Published 5/2026
Created by Puria Izady
MP4 | Video: h264, 1920×1080 | Audio: AAC, 44.1 KHz, 2 Ch
Level: All Levels | Genre: eLearning | Language: English | Duration: 28 Lectures ( 7h 48m ) | Size: 11.4 GB

Build AI agents with the OpenAI Agents SDK and OpenAI Codex: tools, handoffs, guardrails, voice & sandbox agents

What you’ll learn
⚡ Build production-ready AI agents with the OpenAI Agents SDK using agents, instructions, tools, and structured outputs
⚡ Use OpenAI Codex as your AI coding partner to scaffold, build, test, and ship agent apps hands-on
⚡ Master the agent loop: running agents, streaming, state, sessions, and conversation memory
⚡ Orchestrate multi-agent systems with handoffs, guardrails, human review, and agents-as-tools
⚡ Extend agents with hosted tools, function tools, MCP, and connectors to external systems
⚡ Deploy realtime and voice agents to production with tracing, observability

Requirements
❗ Python (optional)
❗ No prior agent-framework experience needed (you’ll learn the OpenAI Agents SDK from the ground up)

Description
Master theOpenAI Agents SDK and build production-ready AI agents from the ground up, then build every one of them hands-on withOpenAI Codex as your AI pair programmer. This comprehensive course takes you from your very first agent to deploying realtime, voice, and sandboxed multi-agent systems that integrate with real tools and external services.

Whether you’re a Python developer stepping into agentic AI, or an experienced engineer who wants to ship reliable agents to production, this course gives you everything you need: the core SDK primitives, the patterns that make agents safe and observable, and a Codex-driven workflow that lets you build faster than ever.

What makes this course different: you don’t just watch, you build.Every lab is constructed with OpenAI Codex, so you learn both the OpenAI Agents SDK and how to drive an AI coding agent to scaffold, implement, test, and ship real applications.

What You’ll Learn, Core SDK & Agent Design
Foundations – Understand what agents are, the agent loop, and how the OpenAI Agents SDK fits together

Prompts & Structured Output – Write effective instructions and get typed, structured results you can rely on

Model Settings – Configure models, providers, and transport for the behavior and cost profile you need

RunContext & Dependency Injection – Pass typed context and dependencies cleanly into your agents

Run Loop, RunResult & the REPL – Run agents, stream output, inspect results, and iterate fast

Hosted & Function Tools – Extend agents with built-in tools and your own Python functions

Agents as Tools – Compose specialized agents by calling one agent from another

Guardrails & Human Review – Add input/output guardrails and human-in-the-loop control for safety

Sessions & Memory – Persist conversation state, and move beyond SQLite to production session storage

Handoffs & Multi-Agent Orchestration – Route work across multiple agents to solve complex tasks

MCP & Connectors – Connect agents to external systems through the Model Context Protocol

Monitoring & Tracing – Trace, monitor, and debug agent runs for full production visibility

Realtime & Voice Agents – Build realtime voice agents and chain multi-step voice workflows

Sandbox Agents – Master SandboxAgents: manifests, capabilities, providers, mounts, credentials, memory, and state composition

Bonus: AWS Bedrock AgentCore – Deploy an OpenAI agent to production on AWS

Hands-On Learning: 6 Production Labs Built with Codex
This isn’t just lectures. You’ll build real applications through comprehensive, step-by-step labs, each driven with OpenAI Codex

Lab 0: Setup – Set up your environment and your Codex workflow so you can build along from day one

Lab 1: Basic Agents – Build your first working agents with instructions, structured output, and context

Lab 2: Multi-Agent Handoffs & Agents as Tools – Orchestrate multiple agents that hand off work and call each other as tools

Lab 3: SandboxAgents – Build a SandboxAgent with manifests, capabilities, and secure mounts

Lab 4: SQL Analyzer Agent – Build a complete capstone agent that combines function tools, structured output, and sessions to analyze data

Lab 5: Voice Agents – Build a realtime voice agent and a chained voice workflow

By the end, you’ll be able to design, build, orchestrate, and ship production-grade OpenAI agents, and you’ll have a repeatable Codex workflow to keep building long after the course ends.

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