🐰 Welcome to MyBunny.TV – Your Gateway to Unlimited Entertainment! 🐰
Enjoy 10,000+ Premium HD Channels, thousands of movies & series, and experience lightning-fast instant activation.
Reliable, stable, and built for the ultimate streaming experience – no hassles, just entertainment! MyBunny.TV – Cheaper Than Cable • Up to 35% Off Yearly Plans • All NFL, ESPN, PPV Events Included 🐰
🎉 Join the fastest growing IPTV community today and discover why everyone is switching to MyBunny.TV!
Joshi A. The Deep Learning Engineer's Handbook. From Fundamentals to Adv. 2025
To start this P2P download, you have to install a BitTorrent client like
qBittorrent
Category:Other Total size: 6.84 MB Added: 5 months ago (2025-05-23 10:21:01)
Share ratio:17 seeders, 0 leechers Info Hash:AC91312FC8322BFEF064D722663828F06A8CF5B3 Last updated: 9 hours ago (2025-11-03 16:17:09)
Report Bad Torrent
×
Description:
Textbook in PDF format
"The Deep Learning Engineer's Handbook: From Fundamentals to Advanced Techniques with Scikit-Learn, Keras, and TensorFlow" is a comprehensive guide designed for STEM professionals looking to master Deep Learning implementation. The book is structured to take readers from foundational concepts to advanced applications, covering essential neural network architectures, training methodologies, and deployment strategies.
This practical handbook features extensive code examples using popular frameworks like TensorFlow, Keras, and Scikit-Learn, enabling readers to build working models from scratch. The content progresses logically through Machine Learning fundamentals, convolutional neural networks, recurrent architectures, transformers, and generative models, culminating in production deployment techniques.
What sets this handbook apart is its balance between theoretical understanding and practical implementation, with hands-on exercises that reinforce learning. The book addresses both model development and operational concerns like monitoring, scaling, and maintaining Deep Learning systems in production environments.
Perfect for engineers, data scientists, and researchers seeking to implement cutting-edge Deep Learning solutions, this handbook serves as both a learning resource and reference guide for building intelligent systems.
Preface
The Machine Learning Landscape
Understanding Machine Learning
Types of Machine Learning Systems
The Machine Learning Pipeline
Setting Up Your Machine Learning Environment
Working with Jupyter Notebooks
Introduction to Python Libraries for ML
Your First Machine Learning Project
Common Challenges in Machine Learning
End-to-End Machine Learning Project
Working with Real-World Data
Data Exploration and Visualization
Data Cleaning and Preprocessing
Feature Engineering and Selection
Model Selection and Training