Applied Machine Learning and AI Agents with PyTorch : From Fundamentals to Real-World Integration for Smarter Developer Productivity
Overview
Applied Machine Learning and AI Agents with PyTorch: From Fundamentals to Real-World Integration for Smarter Developer Productivity
Struggling to build intelligent, autonomous AI agents that actually deliver real-world impact? Applied Machine Learning and AI Agents with PyTorch offers the practical guidance and cutting-edge techniques you need to harness the full power of modern AI frameworks for smarter, more efficient developer workflows.This comprehensive guide takes you from foundational machine learning concepts through advanced agent architectures, all grounded in PyTorch's flexible, production-ready ecosystem. Whether you want to implement reinforcement learning, integrate vision and voice capabilities, or design multi-agent systems that collaborate and self-improve, this book equips you with actionable knowledge and ready-to-run code examples.
What will you gain?
-
Master PyTorch tooling and best practices tailored for AI agents
-
Build reinforcement learning models that solve real-world tasks efficiently
-
Design and deploy multi-modal agents combining text, images, and speech
-
Implement human-in-the-loop workflows and ethical guardrails for safer AI
-
Package, scale, and integrate agents seamlessly into development pipelines
-
Apply continuous feedback loops to refine and enhance agent performance
Are you ready to transform your AI projects from prototypes into scalable, reliable solutions? This book empowers developers, data scientists, and AI practitioners to create sophisticated AI agents that accelerate productivity and deliver measurable results.
Take the next step-equip yourself with the skills to build AI agents that work smarter and integrate seamlessly with your technology stack. This is your essential resource for applied AI development with PyTorch.
This item is Non-Returnable
Customers Also Bought
Details
- ISBN-13: 9798293968510
- ISBN-10: 9798293968510
- Publisher: Independently Published
- Publish Date: July 2025
- Dimensions: 10 x 7 x 0.27 inches
- Shipping Weight: 0.52 pounds
- Page Count: 128
Related Categories
