Description

In the era of intelligent automation and data-driven decision-making, deep learning stands at the core of modern AI systems. Practical Deep Learning Applications for Modern AI Systems in Python: From Basics to Advanced is a comprehensive, hands-on guide designed for learners, practitioners, and professionals who want to master the real-world applications of deep learning using Python.
This book bridges the gap between theory and practice, starting with foundational concepts in neural networks and progressively diving into advanced architectures such as Convolutional Neural Networks (CNNs), Recurrent Neural Networks (RNNs), Generative Adversarial Networks (GANs), Transformers, and Deep Reinforcement Learning. With an emphasis on practical implementation, each chapter includes step-by-step coding tutorials, real-world case studies, and best practices for model optimization and deployment.
Whether you’re building image classifiers, predictive models, natural language processing (NLP) systems, or AI-powered recommendation engines, this guide walks you through the entire deep learning pipeline using libraries like TensorFlow, Keras, PyTorch, Scikit-learn, and OpenCV. You’ll also explore topics like model evaluation, tuning, interpretability, transfer learning, and deploying models in production environments.
Ideal for students, researchers, data scientists, AI engineers, and Python enthusiasts, this book empowers you to confidently develop, train, and deploy deep learning solutions in diverse domains such as healthcare, finance, retail, cybersecurity, and more.
Key Features:
Covers both beginner and advanced levels of deep learning in a structured manner
Real-world datasets and projects for hands-on learning
Clear explanations of mathematical foundations and model architectures
In-depth coverage of popular Python-based deep learning frameworks
Guidance on deploying AI systems for production and cloud environments
Practical use-cases across computer vision, NLP, time series, and tabular data
Unlock the power of deep learning with practical insights and become an AI innovator of tomorrow.

Additional Information
Weight1.5 kg
Dimensions27.87 × 21.6 × 5 cm
Binding Type

Paperback

Languages

Publishers

About Author

Dr. Raja Jitendra Nayaka , B.E , M.Tech, Ph.D. Currently working as an Assistant Professor Senior Grade in the Department of Computer Science & Engineering, School of Engineering, Presidency University, Bangalore. He is interested in Theoretical Computer Science, Artificial Intelligence, Data Science and Deep Learning. His work has spanned various aspects of including the development…

Reviews
Ratings

0.0

0 Product Ratings
5
0
4
0
3
0
2
0
1
0

Review this product

Share your thoughts with other customers

Write a review

Reviews

There are no reviews yet.