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Ng announced late last month that he had finally completed the final chapters of his latest book Machine Learning Yearning:

The entire Chinese version of the book is now available for free download. The Chinese version is called Machine Learning Training Cheats, and the cover looks like this:

As the title suggests, this book focuses on techniques and considerations in machine learning training, including how to set up training sets and test sets, and how to deal with bias and variance problems. The directory is as follows:

The official download address for English version is:

www.deeplearning.ai/machine-lea…

Its website is:

www.deeplearning.ai/

The Chinese version is on Github

Github.com/AcceptedDog…

However, the current Chinese translation is not the final version, if you find any problems, you can go to Github to help fix.

Here I have downloaded the Chinese and English VERSIONS of the PDF, and simply made the catalog label. The download link is:

Pan.baidu.com/s/1D5y0-44p…

You can also reply “MLY” or “Machine Learning training secrets” on the background of my wechat official account to download the link and the above website, Chinese version of Github address.

Thank you very much for translating and sharing the Chinese version on Github for free. I wish everyone, both beginners and those with advanced machine learning knowledge and skills, a great benefit from this book! Finally, if you think the resources shared this time are good, you can click a like or share, thank you!


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