Inside the AI Machine : Real-world projects Using Generative & Agentic AI - Brossura

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9798297853256: Inside the AI Machine : Real-world projects Using Generative & Agentic AI

Sinossi

Inside the AI Machine is your hands-on, plain-English guide to understanding and building real-world AI systems using the latest in large language models (LLMs), agentic frameworks, and tool integrations.

Whether you're a developer, student, researcher, or tech enthusiast, this book walks you through how LLMs really work, how they're trained, how they generate responses, and how you can use them to create powerful applications that think, reason, and act.

All project code is available on GitHub, with direct links provided in the book.

What You’ll Learn
Chapter 1: Under the Hood – The Architecture of Large Language Models
Explore transformer architectures, embeddings, attention mechanisms, and tokenization—explained clearly with diagrams and analogies.

Chapter 2: Training a Giant – Data, Compute, and the Lifecycle of a Model
Understand how LLMs are trained: datasets, compute requirements, pretraining vs. fine-tuning, and why alignment is critical.

Chapter 3: Fine-Tuning and Prompt-Tuning – Making AI Work for You
Discover the difference between few-shot prompting, fine-tuning, LoRA, and prompt engineering—and when to use each one.

Chapter 4: From Prompt to Response – How AI Decides What to Say
Break down the token-by-token generation process, decoding strategies (greedy, top-k, top-p, beam search), and biases in outputs.

Chapter 5: Architecting Agentic Systems with real time projects
Design blueprints for building agent-based AI using tools like LangChain, AutoGPT, CrewAI, or OpenAI functions + memory chains.

Chapter 6: The Toolbelt – Plugging AI into Real-World Tools - with Real Time projects
Explore how agents interact with APIs, browsers, databases, email, files, and even IoT devices through tool integration.

Chapter 7: Real-World AI Projects – Case Studies in Action
Dive into several case studies: AI customer support agents, automated research assistants, creative AI co-pilots, and business workflow bots.

Chapter 8: Multi-Agent Systems – When AIs Collaborate - With Real Time projects
Learn how autonomous agents can coordinate with each other to solve complex problems (e.g., using crew or swarm models).

Chapter 9: Building Your First AI Agent – A Hands-On Guide
A step-by-step guide using open-source tools (Python + LangChain + OpenAI API or local models) to build a basic autonomous agent.

Chapter 10: Guardrails, Ethics, and Trust
Go deeper into alignment techniques, AI hallucinations, red-teaming, ethical constraints, and how to make AI safer and more responsible.

Chapter 11: Future Frontiers – Where AI Is Heading Next
Explore concepts like self-improving agents, lifelong learning, embedded memory, open-ended task planning, and general autonomy.

Chapter 12: How to Install Python

Chapter 13: Python Basics and Real Time projects

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