Practical Deep Learning: A Python-Based Introduction by Ronald T Kneusel
- Publisher: COMPUTER SCIENCE
- Availability: In Stock
- SKU: 46819
- Number of Pages: 464
Rs.1,090.00
Rs.1,395.00
Tags: AI programming , AI with Python , best books , Best Price , Best Selling Books , data preprocessing for AI , deep learning algorithms , deep learning for beginners , deep learning for computer vision , deep learning frameworks , deep learning projects , deep learning techniques , deep learning tools , deep learning with Python , hands-on deep learning , machine learning models , neural network architectures , neural network training , ONLINE BOOKS , Online Bookshop , practical AI , practical AI applications , Practical Deep Learning , Python for data science , Python libraries for AI , Python programming for AI , Python-based deep learning , PyTorch , Ronald Kneusel , Ronald T Kneusel , TensorFlow
Practical Deep Learning: A Python-Based Introduction
Author: Ronald T Kneusel
Quality: White Paper Pakistan Print
Practical Deep Learning: A Python-Based Introduction by Ronald T. Kneusel is an essential guide for beginners looking to dive into the world of deep learning using Python. The book introduces core deep learning concepts and techniques while providing hands-on experience through real-world examples and practical exercises. Kneusel begins with a solid foundation in machine learning and gradually delves into more advanced topics like neural networks, backpropagation, and convolutional networks.
Key Points:
-
Beginner-Friendly Approach: The book is designed for readers with little to no prior experience in deep learning or machine learning, providing clear explanations and practical exercises.
-
Hands-On Python Examples: Uses Python as the primary language, with practical examples built using popular libraries like TensorFlow and Keras, helping readers apply concepts in real coding projects.
-
Foundation in Machine Learning: Before diving into deep learning, the book covers fundamental machine learning concepts, ensuring a strong understanding of the basics before tackling advanced topics.
-
Step-by-Step Learning: The book breaks down complex deep learning concepts into manageable, easy-to-understand steps, guiding readers through the process of building neural networks.
-
Real-World Applications: Focuses on practical applications of deep learning, including image recognition, natural language processing, and predictive modeling, making the book highly relevant for real-world use cases.
-
Explains Neural Networks and Backpropagation: Offers a thorough introduction to key deep learning concepts such as neural networks, activation functions, and the backpropagation algorithm, which are essential for building accurate models.
-
Advanced Topics Included: Although geared towards beginners, the book does not shy away from introducing more advanced deep learning techniques, such as convolutional neural networks (CNNs) and recurrent neural networks (RNNs).
-
Clear and Accessible Language: The author uses straightforward language and analogies to make complex mathematical concepts easier to grasp, making the material accessible to non-experts.
-
Practical Deep Learning Projects: Encourages readers to build their own deep learning projects and provides guidance on implementing these models in practical scenarios, enhancing hands-on learning.
-
Ideal for Independent Learning: Perfect for self-study, the book provides all the necessary resources, including code examples, exercises, and project ideas, making it ideal for those learning on their own.
Conclusion:
Practical Deep Learning: A Python-Based Introduction by Ronald T. Kneusel is an invaluable resource for those interested in exploring the world of deep learning. Its beginner-friendly approach, combined with practical examples and clear explanations, makes it an excellent starting point for newcomers.