About the authors

Aldrin Yim is a PhD candidate and Markey Scholar in the Computation and System Biology program at Washington University, School of Medicine. His research focuses on applying big data analytics and machine learning approaches in studying neurological diseases and cancer. He is also the founding CEO of Codex Genetics Limited, which provides precision medicine solutions to patients and hospitals in Asia.

Great pleasure to work with Allen and Claire. Also special thanks to Mayur and his team for making the writing process comfortable to us.

 

Claire Chung  is pursuing her PhD degree as a Bioinformatician at the Chinese University of Hong Kong. She enjoys using Python daily for work and lifehack. While passionate in science, her challenge-loving character motivates her to go beyond data analytics. She has participated in web development projects, as well as developed skills in graphic design and multilingual translation. She led the Campus Network Support Team in college, and shared her experience in data visualization in PyCon HK 2017.

 

Allen Yu, PhD, is a Chevening Scholar, 2017-18, and an MSC student in computer science at the University of Oxford. He holds a PhD degree in Biochemistry from the Chinese University of Hong Kong, and he has used Python and Matplotlib extensively during his 10 years of bioinformatics experience.

Apart from academic research, Allen is the co-founder of Codex Genetics Limited, which aims to provide a personalized medicine service in Asia through the use of the latest genomics technology.

I feel honored to take part in this fantastic project. Special thanks to Mayur and Aldrin for leading the production process. Besides, I wish to thank my fiancée for her love and support. I am also grateful to be sponsored by the Chevening Scholarship, which is funded by the UK Foreign and Commonwealth Office (FCO) and partner organizations.
..................Content has been hidden....................

You can't read the all page of ebook, please click here login for view all page.
Reset
3.16.81.14