Apress | Mastering Machine Learning With Python In Six Steps: A Practical Implementation Guide To Predictive Data Analytics Using Python, 2nd Edition (2019 EN)

Discussion in 'Artificial intelligence' started by Kanka, Oct 31, 2019.

  1. Kanka

    Kanka Well-Known Member Loyal User

    Messages:
    16,086
    Likes Received:
    446
    Trophy Points:
    83
    [​IMG]

    Author: Manohar Swamynathan
    Full Title: Mastering Machine Learning With Python In Six Steps: A Practical Implementation Guide To Predictive Data Analytics Using Python, 2nd Edition
    Publisher: Apress; 2nd ed. edition (October 2, 2019)
    Year: 2019
    ISBN-13: 9781484249475 (978-1-4842-4947-5), 9781484249468 (978-1-4842-4946-8)
    ISBN-10: 148424947X, 1484249461
    Pages: 457
    Language: English
    Genre: Educational: Artificial Intelligence
    File type: EPUB (True), PDF (True), Code Files
    Quality: 10/10
    Price: 35.30 €


    Explore fundamental to advanced Python 3 topics in six steps, all designed to make you a worthy practitioner. This updated version’s approach is based on the “six degrees of separation” theory, which states that everyone and everything is a maximum of six steps away and presents each topic in two parts: theoretical concepts and practical implementation using suitable Python 3 packages.

    You’ll start with the fundamentals of Python 3 programming language, machine learning history, evolution, and the system development frameworks. Key data mining/analysis concepts, such as exploratory analysis, feature dimension reduction, regressions, time series forecasting and their efficient implementation in Scikit-learn are covered as well. You’ll also learn commonly used model diagnostic and tuning techniques. These include optimal probability cutoff point for class creation, variance, bias, bagging, boosting, ensemble voting, grid search, random search, Bayesian optimization, and the noise reduction technique for IoT data.

    Finally, you’ll review advanced text mining techniques, recommender systems, neural networks, deep learning, reinforcement learning techniques and their implementation. All the code presented in the book will be available in the form of iPython notebooks to enable you to try out these examples and extend them to your advantage.


    Learn:
    ✓ Understand machine learning development and frameworks
    ✓ Assess model diagnosis and tuning in machine learning
    ✓ Examine text mining, natuarl language processing (NLP), and recommender systems
    ✓ Review reinforcement learning and CNN

    Features:
    ✓ Compares different machine learning framework implementations for each topic
    ✓ Covers Reinforcement Learning and Convolutional Neural Networks
    ✓ Explains best practices for model tuning for better model accuracy

    Who This Book Is For:
    Python developers, data engineers, and machine learning engineers looking to expand their knowledge or career into machine learning area.

    -------------
     
    Last edited by a moderator: Oct 18, 2020