Free Data Science Books for Beginners: A Curated List
By
Shruti Bhattacharya
Summary
A listicle recommending free Data Science books for beginners, covering essential principles in the interdisciplinary field of Data Science (combining Computer Science, Mathematics, Statistics, and Machine Learning). The article highlights that books are a great free learning resource for novices starting their Data Science journey.
Source
Key quotes
· 3 pulledData Science is an interdisciplinary field between fields such as Computer Science, Mathematics, Statistics, and Machine Learning.
It can be difficult to know where to begin if you are new to Data Science.
Books are a terrific source of learning for novices, and fortunately, there are numerous that are free to read and cover the fundamentals you'll need to get started.
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