- Java Deep Learning Essentials
- Yusuke Sugomori
- 156字
- 2021-07-16 10:38:41
What this book covers
Chapter 1, Deep Learning Overview, explores how deep learning has evolved.
Chapter 2, Algorithms for Machine Learning - Preparing for Deep Learning, implements machine learning algorithms related to deep learning.
Chapter 3, Deep Belief Nets and Stacked Denoising Autoencoders, dives into Deep Belief Nets and Stacked Denoising Autoencoders algorithms.
Chapter 4, Dropout and Convolutional Neural Networks, discovers more deep learning algorithms with Dropout and Convolutional Neural Networks.
Chapter 5, Exploring Java Deep Learning Libraries – DL4J, ND4J, and More, gains an insight into the deep learning library, DL4J, and its practical uses.
Chapter 6, Approaches to Practical Applications – Recurrent Neural Networks and More, lets you devise strategies to use deep learning algorithms and libraries in the real world.
Chapter 7, Other Important Deep Learning Libraries, explores deep learning further with Theano, TensorFlow, and Caffe.
Chapter 8, What's Next?, explores recent deep learning movements and events, and looks into useful deep learning resources.
- Hands-On Data Structures and Algorithms with Rust
- LibGDX Game Development Essentials
- 大規模數據分析和建模:基于Spark與R
- Greenplum:從大數據戰略到實現
- 輕松學大數據挖掘:算法、場景與數據產品
- Spark大數據分析實戰
- 白話大數據與機器學習
- 數據庫原理與應用
- Google Cloud Platform for Developers
- 數據修復技術與典型實例實戰詳解(第2版)
- R Object-oriented Programming
- 貫通SQL Server 2008數據庫系統開發
- 區塊鏈應用開發指南:業務場景剖析與實戰
- Learning Ansible
- 算力芯片:高性能CPU/GPU/NPU微架構分析