- Neural Network Programming with TensorFlow
- Manpreet Singh Ghotra Rajdeep Dua
- 231字
- 2021-07-02 15:17:03
What this book covers
Chapter 1, Maths for Neural Networks, covers the basics of algebra, probability, and optimization techniques for neural networks.
Chapter 2, Deep Feedforward Networks, explains the basics of perceptrons, neurons, and feedforward neural networks. You will also learn about various learning techniques and mainly the core learning algorithm called backpropagation.
Chapter 3, Optimization for Neural Networks, covers optimization techniques that are fundamental to neural network learning.
Chapter 4, Convolutional Neural Networks, discusses the CNN algorithm in detail. CNNs and their application to different data types will also be covered.
Chapter 5, Recurrent Neural Networks, covers the RNN algorithm in detail. RNNs and their application to different data types are covered as well.
Chapter 6, Generative Models, explains the basics of generative models and the different approaches to generative models.
Chapter 7, Deep Belief Networking, covers the basics of deep belief networks, how they differ from the traditional neural networks, and their implementation.
Chapter 8, Autoencoders, provides an introduction to autoencoders, which have recently come to the forefront of generative modeling.
Chapter 9, Deep Learning Research and Summary, discusses the current and future research details on deep learning. It also points the readers to papers for reference reading.
Appendix, Getting Started with TensorFlow, discusses environment setup of TensorFlow, comparison of TensorFlow with NumPy, and the concept if Auto differentiation
- 企業數字化創新引擎:企業級PaaS平臺HZERO
- Enterprise Integration with WSO2 ESB
- 數據庫原理與應用(Oracle版)
- Starling Game Development Essentials
- 一個64位操作系統的設計與實現
- 網站數據庫技術
- ZeroMQ
- INSTANT Apple iBooks How-to
- SQL Server 2012數據庫管理教程
- Oracle 11g+ASP.NET數據庫系統開發案例教程
- 企業級大數據項目實戰:用戶搜索行為分析系統從0到1
- 基于數據發布的隱私保護模型研究
- 碼上行動:利用Python與ChatGPT高效搞定Excel數據分析
- Hands-On Java Deep Learning for Computer Vision
- Learning Construct 2