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    Building Ai Agents: Core Component/ Intelligent Architecture

    Posted By: ELK1nG
    Building Ai Agents: Core Component/ Intelligent Architecture

    Building Ai Agents: Core Component/ Intelligent Architecture
    Published 9/2025
    MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz
    Language: English | Size: 272.40 MB | Duration: 0h 50m

    Core Components and Intelligent Architectures

    What you'll learn

    Understand the core components of AI agents and their architectures.

    Build agents with sensors, effectors, memory, and decision-making engines.

    Use tools and frameworks like LangChain, CrewAI, and AutoGen to create agents.

    Design, test, and deploy a personalized AI agent as a final project.

    Requirements

    No prerequisites required — just curiosity and interest in AI. Basic programming knowledge is helpful but not mandatory.

    Description

    Building AI Agents: Core Components and Intelligent ArchitecturesArtificial Intelligence agents are no longer futuristic concepts — they are already powering chatbots, virtual assistants, trading bots, autonomous vehicles, and countless business applications. But what makes an AI agent truly effective? How do we design intelligent systems that can perceive, reason, act, and adapt in the real world?This hands-on course gives you a complete roadmap to understanding and building AI agents from the ground up. You’ll explore the core components of agent architecture — sensors, effectors, decision-making engines, knowledge bases, and communication interfaces — and learn how these pieces fit together into scalable, intelligent systems.Through step-by-step lessons, you’ll discover:The different types of agents (reactive, deliberative, hybrid) and their use casesHow agents perceive the world through text, images, audio, and APIsHow effectors enable agents to take meaningful actions in both digital and physical environmentsThe role of reasoning, planning, and memory in decision-makingHow to structure a knowledge base with databases, vector stores, and context cachingWays agents communicate with humans, systems, and other agentsTools and frameworks like LangChain, CrewAI, and AutoGen that accelerate developmentHow to add error handling and safety layers to keep agents reliable and trustworthyBy the end of this course, you will not only understand the anatomy of intelligent agents, but also gain the skills to design, extend, and deploy your own personalized AI agent as a final project.Whether you are a software developer, ML engineer, or AI enthusiast, this course will equip you with the knowledge and practical experience to build the next generation of intelligent AI systems.

    Overview

    Section 1: Introduction

    Lecture 1 Download Course Materials

    Lecture 2 What are AI agents?

    Lecture 3 Real-World Applications of AI Agents

    Lecture 4 Overview of agent architecture and what learners will build

    Section 2: Core Concepts of AI Agents

    Lecture 5 Definition and types of agents

    Lecture 6 Agent lifecycle and core design principles

    Lecture 7 Foundational elements

    Section 3: Sensors – Perception Layer

    Lecture 8 Types of sensors

    Lecture 9 Preprocessing and interpreting sensor data

    Lecture 10 Simulated vs Real-Time Perception

    Section 4: Effectors – Action Layer

    Lecture 11 What are effectors and how do agents take actions?

    Lecture 12 Digital Effectors – Acting in Software Environments

    Lecture 13 Feedback mechanisms

    Section 5: The Decision-Making Engine

    Lecture 14 Rule-based vs ML-based decision logic

    Lecture 15 Incorporating LLMs for reasoning and planning

    Lecture 16 Multi-step decision chains and memory use

    Section 6: The Knowledge Base

    Lecture 17 Structuring agent memory (short-term vs long-term)

    Lecture 18 Using vector stores, databases, and context caching

    Lecture 19 Dynamic Knowledge Updates & Queries

    Section 7: Communication Interface

    Lecture 20 How Agents Communicate

    Lecture 21 Communication Channels for Agents

    Lecture 22 Contextual Conversation Management

    Section 8: Putting It All Together

    Lecture 23 Architecting Modular, Extensible AI Agents

    Lecture 24 Tools & Frameworks for Building Agents

    Lecture 25 Error Handling & Safety Layers in Agents

    Software developers interested in building intelligent AI systems,Machine learning engineers exploring agent architectures,Data scientists who want to integrate AI agents into workflows,AI enthusiasts eager to understand how agents work in practice