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How Machine Learning Works Meap V05 Meap Mostafa Samir Abd Elfattah

  • SKU: BELL-24533916
How Machine Learning Works Meap V05 Meap Mostafa Samir Abd Elfattah
$ 31.00 $ 45.00 (-31%)

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How Machine Learning Works Meap V05 Meap Mostafa Samir Abd Elfattah instant download after payment.

Publisher: Manning Publications
File Extension: PDF
File size: 11.49 MB
Pages: 220
Author: Mostafa Samir Abd El-Fattah
ISBN: 9781617294884, 1617294888
Language: English
Year: 2020
Edition: MEAP

Product desciption

How Machine Learning Works Meap V05 Meap Mostafa Samir Abd Elfattah by Mostafa Samir Abd El-fattah 9781617294884, 1617294888 instant download after payment.

Manning Early Access Program, Version V05
chapters 1 to 7
How Machine Learning Works gives you an in-depth look at the mathematical and theoretical foundations of machine learning. Seasoned practitioner Mostafa Samir Abd El-Fattah takes you step by step through a real-world ML projects. In it, you’ll learn the components that make up a machine learning problem and explore supervised and unsupervised learning. Blending theoretical foundations with practical ML skills, you’ll learn to read existing datasets using pandas, a fast and powerful Python library for data analysis and manipulation. Then, you’ll move on to choosing and implementing ML models with scikit-learn, a popular Python framework that provides a diverse range of ML models and algorithms.
Along the way, you’ll be practicing important math skills, including working with probability, random variables, mean, variance, vectors, matrices, linear algebra, and statistics. You’ll also discover similarity-based methods like K-nearest neighbor and K-means clustering; decision tree-based methods like classification and regression trees; and linear methods like regularization and logical regression. Instead of simply applying black-box methods and techniques to ML problems, you’ll grok their underlying structure and apply a robust mathematical understanding alongside your practical skills. By the end of this comprehensive guide, you’ll be able to comfortably explore and understand the latest ML research as well as identify and tackle novel ML problems!

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