English | MP4 | AVC 1280×720 | AAC 44KHz 2ch | 37 Lessons (8h 41m) | 15.75 GB
Get started with automated AI agents
Modern AI Agents introduces you to the concept of automated agents and helps you build a solid understanding of how to design, build, and optimize AI agents to tackle real-world challenges. This second edition expands significantly on production deployment, multi-agent systems, and cutting-edge techniques like MCP integration and reasoning LLMs.
Learn How To:
- Build and use AI agents with CrewAI and LangGraph
- Evaluate and compare leading AI agent frameworks
- Design multi-step workflows and multi-agent architectures
- Integrate existing and custom tools using MCP (Model Context Protocol)
- Use thought, action, observation, and response components
- Test and evaluate agents, their responses, backstories, definitions, and rules
- Add planning and reflection to agents to bolster performance
- Deploy agents in production with Docker
- Enhance agents with memory, code execution, and computer control capabilities
- Fine-tune agents for specialized tasks
Lesson 1: Introduction to AI Agents: Lesson 1 explores the components of a modern AI agent, their core components, and how they differ from the LLMs under the hood. You survey leading agent frameworks, take your first steps building agents with CrewAI, and design multi-step workflows with LangGraph.
Lesson 2: Under the Hood of AI Agents: Lesson 2 dives into the mechanics of AI agents, exploring how large language models power agent workflows. You gain insight into how tools, prompts, and agent contexts work together to create intelligent systems, and learn to create agents directly with LangGraph.
Lesson 3: Building an AI Agent Framework: In Lesson 3, its time to put theory into practice by designing and building your own fully functional AI agent framework. You build custom tools, construct viable prompts, and learn to handle user inputs dynamically to create adaptable end-to-end agentic systems.
Lesson 4: Testing and Evaluating Agents: Lesson 4 focuses on measuring agent performance, covering tool selection evaluation, response quality assessment, and strategies for evaluating agent backstories, task definitions, and rules to ensure reliable outcomes.
Lesson 5: Expanding on ReAct with Planning and Reflection: Lesson 5 enhances your agents with planning and reflection techniques, enabling them to reason through tasks with more care. You explore why agents fail, build plan-and-execute and reflection agents, leverage reasoning LLMs, and give agents the capability to write and execute code.
Lesson 6: Agents in Production: Lesson 6 tackles real-world deployment with multi-agent architectures, MCP integration to empower agents with external capabilities, and a complete multi-agent AI SDR implementation using Docker, MCP, and LangGraph. It shows how multiple specialized agents can collaborate on complex tasks and how MCP (Model Context Protocol) provides a standardized way to connect agents to external tools and data sources.
Lesson 7: Agent Case Studies: Lesson 7 presents practical case studies that push agent capabilities further: making agents smarter with memory, enabling agents to control computers, and fine-tuning agents for specialized performance. These hands-on examples illustrate how persistent memory transforms agent interactions, how agents can navigate and manipulate desktop environments, and how fine-tuning can optimize agent behavior for domain-specific tasks.
Lesson 8: Advanced Applications and Future Directions: Lesson 8 covers emerging trends including additional tools and APIs, and explores the future landscape of AI agents. It examines where the field is headed, from evolving best practices to ethical considerations around automating increasingly complex workflows.
Table of Contents
1 Modern AI Agents Introduction
2 Topics
3 Overview of AI Agents and Their Applications
4 Leading AI Agent Frameworks
5 First Steps with Agents with CrewAI
6 Designing Multi-Step Workflows with LangGraph
7 Topics
8 Understanding Large Language Models
9 Introduction to Tool Integration
10 Key Agent Components Thought, Action, Observation, Response
11 Creating Agents with LangGraph
12 Topics
13 Building Custom Tools
14 Building Our Agent Prompt
15 Using Our Agent
16 Topics
17 How to Evaluate Agents
18 Evaluating Tool Selection and Use
19 Assessing the Quality of Agent Responses
20 Evaluating Agent Backstories, Task Definitions, and Rules
21 Topics
22 Why Agents Fail
23 Plan and Execute Agents
24 Reflection Agents
25 Building Agents with Reasoning LLMs
26 Topics
27 Multi-Agent Architectures
28 Using MCP to Empower Agents
29 Multi-agent AI SDR with Docker, MCP, and LangGraph
30 Topics
31 Making Agents Smarter with Memory
32 Agents Controlling Computers
33 Fine-Tuning Agents
34 Topics
35 Exploring Additional Tools and APIs
36 Future Trends in AI Agents
37 Modern AI Agents Summary
Resolve the captcha to access the links!
