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מתחיל 6 June 2026 12:04

נגמר 6 June 2026

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Deploy AI Agents with OpenAI

Master multi-agent AI deployment with OpenAI tools, building scalable systems that communicate, coordinate, and execute tasks through cloud-ready interfaces and secure workflows.
Edureka via Coursera

Edureka

2874 קורסים


7 hours 17 minutes

שדרוג אופציונלי זמין

Not Specified

התקדמות בקצב שלך

Paid Course

שדרוג אופציונלי זמין

סקירה כללית

This course teaches you how to deploy fully functional, multi-agent AI systems using OpenAI’s latest tools and frameworks. You will learn how intelligent agents communicate, coordinate, and execute tasks together—then bring those capabilities into real-world applications through interactive interfaces and cloud deployment workflows.

Through hands-on lessons and guided demos, you’ll design and implement multi-agent architectures, build conversational interfaces with Streamlit, integrate external APIs, and enable structured communication using the Model Context Protocol (MCP) and Agent-to-Agent (A2A) messaging. You will also learn to secure your deployments, manage environment variables, monitor system performance, and ensure scalable, reliable operation across users and workloads.

By the end of this course, you will be able to:

- Explain the structure and roles of multi-agent systems, including coordinator, planner, reasoning, retrieval, and action agents. - Design and implement multi-agent communication workflows using MCP contexts and A2A message passing. - Build and deploy an interactive user interface using Streamlit to enable real-time agent interaction. - Connect the agent backend to external tools and APIs, enabling real-world task execution and workflow automation. - Deploy your multi-agent assistant securely to the cloud, managing API keys, environment variables, and runtime configurations. - Monitor, optimize, and scale multi-agent performance using practical evaluation metrics and deployment best practices. This course is ideal for AI engineers, software developers, automation professionals, and technical leaders who want to build production-ready AI assistants, agentic applications, and enterprise-grade multi-agent systems.

A basic understanding of Python, APIs, and foundational AI agent concepts is recommended. Join us to learn how to deploy intelligent multi-agent systems that are scalable, reliable, and ready for real-world use.

סילבוס

  • Integrating Intelligent Agent Components
  • This module introduces the architecture and design principles behind building multi-agent personal assistant systems. Learners will explore the roles of planner, executor, knowledge, and interface agents and understand how these components collaborate through the Model Context Protocol (MCP). Through guided hands-on exercises with the AgentKit SDK, you’ll design modular frameworks, connect agents for shared context, and implement secure communication patterns that enable intelligent coordination and reliability across agent workflows.
  • Designing User Interaction and Personalization
  • This module focuses on building user-facing, intelligent personal assistants that deliver seamless conversational experiences. You’ll learn to design intuitive chat interfaces using Streamlit, connect multi-agent backends via AgentKit sessions, and enable real-time streaming responses. The module also explores personalization strategies—storing user profiles, adapting behavior dynamically, and maintaining long-term context with MCP. Finally, you’ll implement automation by integrating external APIs and tools, enabling your assistant to execute real-world actions responsibly and efficiently.
  • Deployment, Testing, and Optimization
  • This module guides learners through validating, deploying, and scaling intelligent multi-agent personal assistant systems. You’ll begin by testing reasoning and coordination flows, writing structured test cases, and analyzing performance through response accuracy and latency metrics. Then, you’ll package and deploy your assistant using Streamlit Cloud, manage environment configurations, and enable secure, multi-agent sessions at scale. The module concludes with a capstone project where you’ll deploy a fully functional AI personal assistant, applying best practices for testing, documentation, and responsible AI deployment.

נלמד על ידי

Edureka


נושאים

Artificial Intelligence