This program introduces you to Building Your First Agent with CrewAI, designed for developers and AI enthusiasts who want to design and implement intelligent multi-agent systems. You will begin by learning the foundational concepts of AI agents and agentic AI, exploring how autonomous agents reason, collaborate, and execute tasks. The course also introduces the CrewAI framework, explaining its architecture and how agents, tasks, crews, and flows work together to automate complex workflows.
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推荐体验
推荐体验
初级
Ideal for developers and AI enthusiasts looking to build multi-agent AI systems with CrewAI, requiring basic knowledge of Python and AI concepts.
推荐体验
推荐体验
初级
Ideal for developers and AI enthusiasts looking to build multi-agent AI systems with CrewAI, requiring basic knowledge of Python and AI concepts.
您将学到什么
Explain the concepts of AI agents, agentic AI, and multi-agent systems used in modern AI applications.
Apply prompt engineering, context design, and model configuration to guide agent behavior and reasoning.
Design AI agents, tasks, and workflows using the CrewAI framework for structured multi-agent systems.
Construct and execute collaborative multi-agent crews to automate complex workflows and generate structured outputs.
要了解的详细信息
了解顶级公司的员工如何掌握热门技能

积累特定领域的专业知识
- 向行业专家学习新概念
- 获得对主题或工具的基础理解
- 通过实践项目培养工作相关技能
- 获得可共享的职业证书

该课程共有4个模块
Learn the fundamentals of AI agents and agentic systems and how they differ from traditional prompt-based AI applications. Explore how agents operate, collaborate, and coordinate tasks within multi-agent environments. Examine the architecture of the CrewAI framework, including agents, tasks, crews, and flows, and understand how these components enable structured agent development. Build a strong technical foundation by preparing your development environment, installing CrewAI, and organizing projects for hands-on agent development.
涵盖的内容
16个视频5篇阅读材料4个作业
16个视频•总计91分钟
- Specialization Introduction•6分钟
- Course Introduction•5分钟
- Marketing Team’s Struggle with Traditional AI•6分钟
- Introduction to Agentic AI•6分钟
- Core Concepts of Agentic AI•7分钟
- Difference between AI Agents and Agentic AI•6分钟
- Real-World Agentic AI Use Cases•5分钟
- Single-Agent vs Multi-Agent AI Architectures•7分钟
- How do Multi-Agent Systems Work?•6分钟
- What is CrewAI?•5分钟
- Understanding CrewAI Architecture•6分钟
- CrewAI vs Other AI Agent Frameworks•5分钟
- Preparing Your CrewAI Development Environment•4分钟
- Demonstration: Setting up Virtual Environment for Your Agentic System•5分钟
- Demonstration: Installing CrewAI with uv Package Manager•6分钟
- Demonstration: Understanding Project Structure and File Organization•6分钟
5篇阅读材料•总计70分钟
- Course Syllabus•15分钟
- Types of Agents in AI•15分钟
- Business Case for Multi-Agent AI Systems•15分钟
- Best Practices for Structuring and Managing AI Agent Projects•15分钟
- Module Summary: Introduction to Multi-Agent AI Systems and CrewAI•10分钟
4个作业•总计33分钟
- Knowledge Check: Introduction to Multi-Agent AI Systems and CrewAI•15分钟
- Practice Assignment: Introduction to AI Agents and Agentic AI•6分钟
- Practice Assignment: Multi-Agent Systems and the CrewAI Framework•6分钟
- Practice Assignment: Development Environment Setup for CrewAI•6分钟
Discover how to design intelligent agents by applying prompt engineering, context engineering, and execution flow design. Learn how to configure large language models for different agent roles and evaluate trade-offs such as cost, latency, and performance. Explore techniques for crafting effective prompts that guide agent reasoning and behavior. Develop practical skills in structuring context and designing coordinated execution flows that allow multiple agents to collaborate effectively within an agent-based system.
涵盖的内容
14个视频4篇阅读材料4个作业
14个视频•总计89分钟
- LLM Providers and Model Selection•8分钟
- Demonstration: Configuring Models per Agent Role•7分钟
- Demonstration: Evaluating Cost, Latency, and Accuracy Trade-offs•7分钟
- Principles of Effective Prompt Engineering for Agents•5分钟
- Core Prompting Techniques•7分钟
- Demonstration: Writing prompts to guide agent behavior and tone•7分钟
- Demonstration: Evaluating Prompt Impact Through Structured Comparison•5分钟
- Demonstration: Refining Prompts to Improve Agent Reasoning•7分钟
- Introduction to Context Engineering•7分钟
- Flow Engineering Fundamentals•5分钟
- Demonstration: Designing High-Quality Context for AI Agents•7分钟
- Demonstration: Context Quality in Action – Signal vs Noise•6分钟
- Demonstration: Flow Engineering for Multi-Agent Systems•6分钟
- Demonstration: Architecting Execution Flows in Multi-Agent Systems•4分钟
4篇阅读材料•总计60分钟
- Model Selection Strategies for Agent-Based Applications•15分钟
- Prompt Engineering Best Practices for Agentic Systems•15分钟
- Context and Flow Design Patterns for Agent Systems•15分钟
- Module Summary: Prompt, Context, and Flow Engineering for AI Agents•15分钟
4个作业•总计33分钟
- Knowledge Check: Prompt, Context, and Flow Engineering for AI Agents•15分钟
- Practice Assignment: Choosing and Configuring LLMs for Agents•6分钟
- Practice Assignment: Prompt Engineering for AI Agents•6分钟
- Practice Assignment: Context and Flow Engineering for Agent Systems•6分钟
Learn how to build and execute collaborative agent systems using the CrewAI framework. Design AI agents with clearly defined roles and responsibilities, and create structured tasks that guide agent behavior and outputs. Gain hands-on experience assembling agents into collaborative crews, coordinating task execution, and managing multi-agent workflows. Develop practical skills to run and inspect agent systems, enabling you to build reliable multi-agent solutions that automate complex workflows.
涵盖的内容
12个视频4篇阅读材料4个作业
12个视频•总计81分钟
- Key Elements for High-Performance Agents in CrewAI•7分钟
- Demonstration: Architecting Intelligence: Setting Up Your CrewAI Project•7分钟
- Demonstration: Designing High-Performance Agents with YAML Configuration•5分钟
- Understanding Tasks in CrewAI•5分钟
- Demonstration: Designing High-Precision Research and Strategy Tasks•7分钟
- Demonstration: Building a Self-Executing and Self-Evaluating Campaign Pipeline•7分钟
- Demonstration: Engineering Structured Intelligence: Schemas, Hooks, and Execution Lifecycle•7分钟
- Demonstration: Intelligent Model Assignment and Structured Multi-Agent Execution•7分钟
- Agent Collaboration Mechanisms•5分钟
- Demonstration: Execution Modes and Output Inspection in main.py•7分钟
- Demonstration: Single, Batch, and Async Execution Modes in main.py•7分钟
- Demonstration: Running Your CrewAI System from the Terminal•7分钟
4篇阅读材料•总计60分钟
- Agent Design Patterns and Common Mistakes•15分钟
- Task Design and Output Structuring Best Practices•15分钟
- Collaboration and Orchestration Patterns for Multi-Agent Systems•15分钟
- Module Summary: Building and Executing Multi-Agent Crews•15分钟
4个作业•总计33分钟
- Knowledge Check: Building and Executing Multi-Agent Crews•15分钟
- Practice Assignment: Designing AI Agents in CrewAI•6分钟
- Practice Assignment: Task Definition and Structured Outputs•6分钟
- Practice Assignment: Crew Assembly, Execution, and Collaboration•6分钟
Consolidate your learning from the course and reflect on your progress in building AI agents with CrewAI. Apply your skills in a hands-on project by creating a multi-agent content creation system. Complete a final graded assessment to demonstrate your ability to design and execute collaborative agent workflows.
涵盖的内容
1个视频1篇阅读材料2个作业1个讨论话题
1个视频•总计4分钟
- Course Summary•4分钟
1篇阅读材料•总计30分钟
- Practice Project: Building a Multi-Agent Customer Support Assistant with CrewAI•30分钟
2个作业•总计60分钟
- End Course Knowledge Check: Building Your First AI Agent with CrewAI•30分钟
- Designing a Collaborative Multi-Agent Content Creation System Using CrewAI•30分钟
1个讨论话题•总计5分钟
- Describe Your Learning Journey•5分钟
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Jennifer J.

Larry W.

Chaitanya A.
常见问题
This course is designed for developers, AI enthusiasts, and technical professionals interested in building intelligent multi-agent systems using CrewAI. Whether you are new to AI agents or have prior experience with AI tools, the course provides a clear introduction to agentic AI concepts and practical development workflows. Basic familiarity with Python programming will help you follow the hands-on demonstrations.
Throughout this course, you will learn how to design and build intelligent agents using the CrewAI framework. You will explore AI agent concepts, multi-agent architectures, prompt engineering, and context design to guide agent reasoning. The course also covers designing tasks, creating structured workflows, and assembling collaborative agent crews to automate complex processes.
This course focuses on the CrewAI framework for building multi-agent systems. You will also work with Python, large language models (LLMs), prompt engineering techniques, and structured workflows. These tools help design agents, define tasks, and coordinate collaborative agent execution in real-world applications.
No prior experience with CrewAI or agent frameworks is required. The course begins with foundational concepts such as AI agents, agentic AI, and multi-agent systems before moving into practical development. Basic knowledge of Python and general programming concepts is recommended.
Yes. This course includes demonstrations and practice assignments where you will design agents, define tasks, and assemble multi-agent crews using CrewAI. You will gain practical experience building agent workflows and executing them in a development environment.
The course is designed to be completed in about 4 weeks, with a recommended study pace of 3–4 hours per week. You can learn at your own pace and revisit lessons whenever needed.
Yes. After successfully completing all modules, assignments, and the final project, you will receive a Certificate of Completion. This certificate validates your ability to design and build multi-agent systems using the CrewAI framework.
This course focuses specifically on multi-agent system development using CrewAI. Instead of only discussing AI concepts, it emphasizes hands-on learning through demonstrations, practical assignments, and real-world workflows. You will learn how to design agents, create collaborative crews, and automate complex tasks using structured agent architectures.
After completing this course, you will gain skills relevant to roles such as AI Developer, Machine Learning Engineer, AI Automation Engineer, and Intelligent Systems Developer. The ability to design multi-agent systems and automate workflows is becoming increasingly valuable across industries adopting AI-driven solutions.
Yes. The course introduces agentic AI concepts from the ground up and gradually moves into practical development. Beginners with basic Python knowledge can follow the course and gain the skills needed to start building intelligent AI agent systems.
To access the course materials, assignments and to earn a Certificate, you will need to purchase the Certificate experience when you enroll in a course. You can try a Free Trial instead, or apply for Financial Aid. The course may offer 'Full Course, No Certificate' instead. This option lets you see all course materials, submit required assessments, and get a final grade. This also means that you will not be able to purchase a Certificate experience.
When you enroll in the course, you get access to all of the courses in the Specialization, and you earn a certificate when you complete the work. Your electronic Certificate will be added to your Accomplishments page - from there, you can print your Certificate or add it to your LinkedIn profile.
Yes. In select learning programs, you can apply for financial aid or a scholarship if you can’t afford the enrollment fee. If fin aid or scholarship is available for your learning program selection, you’ll find a link to apply on the description page.
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