Hands-On Python and CNTK: A Practical Guide to Deep Learning and AI Development by Sarful Hassan
English | March 12, 2025 | ISBN: N/A | ASIN: B0F1DH5J4J | 253 pages | EPUB | 0.82 Mb
English | March 12, 2025 | ISBN: N/A | ASIN: B0F1DH5J4J | 253 pages | EPUB | 0.82 Mb
Are you looking to master deep learning, artificial intelligence (AI), and Python programming? "Hands-On Python and CNTK: A Practical Guide to Deep Learning and AI Development" is the perfect resource for developers, machine learning enthusiasts, and data scientists who want to build AI applications using Microsoft’s Cognitive Toolkit (CNTK).
This practical guide will walk you through every step of the process, from setting up CNTK to developing powerful deep learning models. Whether you’re a beginner or an experienced developer, this book will give you the hands-on experience you need to start creating cutting-edge AI models with Python and CNTK.Key Highlights:
- Deep Learning with Python and CNTK: Master Python programming and learn how to use CNTK for building neural networks and deep learning applications.
- Hands-on Deep Learning Projects: Work on real-world projects such as image classification, speech recognition, and time series forecasting using Python, CNTK, and deep learning techniques.
- Neural Networks and GPU Acceleration: Build efficient neural networks and speed up training using GPU acceleration for high-performance computation in deep learning.
- Advanced AI Techniques: Dive into advanced topics like convolutional neural networks (CNNs) for image classification, recurrent neural networks (RNNs) for NLP, and reinforcement learning for predictive modeling.
- Optimize Deep Learning Models: Learn advanced optimization techniques, including hyperparameter tuning, early stopping, model checkpoints, and how to deploy scalable AI models.
- CNTK for Scalable AI Solutions: Utilize CNTK’s parallelization features for large-scale model training and explore the world of distributed training.
- Comprehensive Guide: Gain a deep understanding of deep learning, from the basics of Python programming to advanced AI model development with CNTK.
- Practical Approach: This hands-on book is packed with exercises, Python code examples, and projects that will help you apply what you learn immediately.
- Build Real-World AI Applications: Apply deep learning to real-world tasks like speech recognition, image classification, NLP, forecasting, and more.
- Optimized for Performance: Learn to work with GPU acceleration and parallelized training to build fast, scalable models.
- Unlock the Power of CNTK: Learn how to leverage Microsoft CNTK to accelerate your AI projects, ensuring high efficiency and performance.
- Introduction to CNTK and Python for deep learning
- Understanding neural networks and how they work
- Building custom layers, activation functions, and loss functions
- Working with advanced models like CNNs and RNNs
- Implementing reinforcement learning and transfer learning
- Optimizing AI models for better performance
- Using GPU acceleration for faster training