- Hands-On Mathematics for Deep Learning
- Jay Dawani
- 288字
- 2021-06-18 18:55:06
To get the most out of this book
It is expected that most of you have had prior experience with implementing machine learning models and have at least a basic understanding of how they work. It is also assumed that many of you have some prior experience with calculus, linear algebra, probability, and statistics; having this prior experience will help you get the most out of this book.
For those of you who do have prior experience with the mathematics covered in the first five chapters and have a background in machine learning, you are welcome to skip ahead to the content from Chapter 7, Feedforward Neural Networks, onward and keep with the flow of the book from there.
However, for the reader who lacks the aforementioned experience, it is recommended that you stay with the flow and order of the book and pay particular attention to understanding the concepts covered in the first five chapters, moving on to the next chapter or section only when you feel comfortable with what you have learned. It is important that you do not rush or be hasty, as DL is a vast and complex field that should not be taken lightly.
Lastly, to become a very good DL practitioner, it is important that you keep learning and going over the fundamental concepts, as these can often be forgotten quite easily. After having gone through all the chapters in the book and through all the chapters, I recommend trying to read the code for and/or implementing a few architectures and trying to recall what you have learned in this book because doing so will help ground your concepts even further and help you to learn much faster.
- Spark快速大數據分析(第2版)
- Effective Amazon Machine Learning
- Python數據分析、挖掘與可視化從入門到精通
- 卷積神經網絡的Python實現
- SQL查詢:從入門到實踐(第4版)
- Creating Dynamic UIs with Android Fragments(Second Edition)
- 一個64位操作系統的設計與實現
- 大數據架構商業之路:從業務需求到技術方案
- 云數據中心網絡與SDN:技術架構與實現
- 改變未來的九大算法
- 大數據數學基礎(R語言描述)
- Access 2010數據庫程序設計實踐教程
- Deep Learning with R for Beginners
- 企業大數據處理:Spark、Druid、Flume與Kafka應用實踐
- Oracle 11g數據庫管理員指南