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Essential coverage on statistics and data science techniques.
Exposure to Jupyter, PyCharm, and use of GitHub.
Real use-cases, best practices, and smart techniques on the use of data science for data applications.
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Rapid understanding of Python concepts for data science applications.
Understand and practice how to run data analysis with data science techniques and algorithms.
Learn feature engineering, dealing with different datasets, and most trending machine learning algorithms.
Become self-sufficient to perform data science tasks with the best tools and techniques.
WHO THIS BOOK IS FOR
This book is for a beginner or an experienced professional who is thinking about a career or a career switch to Data Science. Each chapter contains easy-to-follow Python examples.

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