AI Programming

"AI Programming" offers a comprehensive roadmap for developers seeking to bridge the gap between theoretical artificial intelligence concepts and practical implementation. This guide strategically combines foundational AI knowledge with hands-on programming experience, focusing on popular frameworks like TensorFlow and PyTorch while maintaining accessibility for readers with intermediate programming skills.

The book takes a unique dual-track approach, progressing from essential Python prerequisites through advanced topics like deep learning and model deployment. Rather than dwelling purely on theory, it provides working code examples, case studies, and performance benchmarks that demonstrate real-world applications. Each chapter builds upon previous concepts, moving from AI fundamentals and framework architecture to implementing common models and optimization strategies for production environments.

What sets this resource apart is its practical focus combined with thorough explanations of underlying concepts. While mathematical concepts are addressed, the book doesn't require advanced mathematics knowledge, making it particularly valuable for software developers transitioning to AI development. Through annotated code samples, debugging guides, and hands-on projects, readers learn to build neural networks, implement AI algorithms, and optimize their applications while understanding the reasoning behind specific implementation choices. The balanced approach to frameworks like TensorFlow and PyTorch provides readers with the knowledge to make informed decisions for their own projects.

1146864941
AI Programming

"AI Programming" offers a comprehensive roadmap for developers seeking to bridge the gap between theoretical artificial intelligence concepts and practical implementation. This guide strategically combines foundational AI knowledge with hands-on programming experience, focusing on popular frameworks like TensorFlow and PyTorch while maintaining accessibility for readers with intermediate programming skills.

The book takes a unique dual-track approach, progressing from essential Python prerequisites through advanced topics like deep learning and model deployment. Rather than dwelling purely on theory, it provides working code examples, case studies, and performance benchmarks that demonstrate real-world applications. Each chapter builds upon previous concepts, moving from AI fundamentals and framework architecture to implementing common models and optimization strategies for production environments.

What sets this resource apart is its practical focus combined with thorough explanations of underlying concepts. While mathematical concepts are addressed, the book doesn't require advanced mathematics knowledge, making it particularly valuable for software developers transitioning to AI development. Through annotated code samples, debugging guides, and hands-on projects, readers learn to build neural networks, implement AI algorithms, and optimize their applications while understanding the reasoning behind specific implementation choices. The balanced approach to frameworks like TensorFlow and PyTorch provides readers with the knowledge to make informed decisions for their own projects.

4.84 In Stock
AI Programming

AI Programming

AI Programming

AI Programming

eBook

$4.84 

Available on Compatible NOOK devices, the free NOOK App and in My Digital Library.
WANT A NOOK?  Explore Now

Related collections and offers

LEND ME® See Details

Overview

"AI Programming" offers a comprehensive roadmap for developers seeking to bridge the gap between theoretical artificial intelligence concepts and practical implementation. This guide strategically combines foundational AI knowledge with hands-on programming experience, focusing on popular frameworks like TensorFlow and PyTorch while maintaining accessibility for readers with intermediate programming skills.

The book takes a unique dual-track approach, progressing from essential Python prerequisites through advanced topics like deep learning and model deployment. Rather than dwelling purely on theory, it provides working code examples, case studies, and performance benchmarks that demonstrate real-world applications. Each chapter builds upon previous concepts, moving from AI fundamentals and framework architecture to implementing common models and optimization strategies for production environments.

What sets this resource apart is its practical focus combined with thorough explanations of underlying concepts. While mathematical concepts are addressed, the book doesn't require advanced mathematics knowledge, making it particularly valuable for software developers transitioning to AI development. Through annotated code samples, debugging guides, and hands-on projects, readers learn to build neural networks, implement AI algorithms, and optimize their applications while understanding the reasoning behind specific implementation choices. The balanced approach to frameworks like TensorFlow and PyTorch provides readers with the knowledge to make informed decisions for their own projects.


Product Details

ISBN-13: 9788233946579
Publisher: Publifye
Publication date: 01/13/2025
Sold by: StreetLib SRL
Format: eBook
Pages: 143
File size: 447 KB
From the B&N Reads Blog

Customer Reviews