Description

DESCRIPTION

In a world where big data is the norm and near-real-time decisions are crucial, machine learning (ML) is a critical component of the data workflow. Machine learning systems can quickly crunch massive amounts of information to offer insights and make decisions in a way that matches or even surpasses human cognitive abilities. These systems use sophisticated computational and statistical tools to build models that can recognize and visualize patterns, predict outcomes, forecast values, and make recommendations.

Real-World Machine Learning is a practical guide designed to teach developers the art of ML project execution. The book introduces the day-to-day practice of machine learning and prepares readers to successfully build and deploy powerful ML systems. Using the Python language and the R statistical package, it starts with core concepts like data acquisition and modeling, classification, and regression. Then it moves through the most important ML tasks, like model validation, optimization and feature engineering. It uses real-world examples that help readers anticipate and overcome common pitfalls. Along the way, they will discover scalable and online algorithms for large and streaming data sets. Advanced readers will appreciate the in-depth discussion of enhanced ML systems through advanced data exploration and pre-processing methods.

KEY FEATURES
  • Accessible and practical introduction to machine learning
  • Contains big-picture ideas and real-world examples
  • Prepares reader to build and deploy powerful predictive systems
  • Offers tips & tricks and highlights common pitfalls
AUDIENCE

Code examples are in Python and R. No prior machine learning experience required.

ABOUT THE TECHNOLOGY

Machine learning has gained prominence due to the overwhelming successes of Google, Microsoft, Amazon, LinkedIn, Facebook, and others in their use of ML. The Gartner report predicts that big data analytics will be a $25 billion market by 2017, and financial firms, marketing organizations, scientific facilities, and Silicon Valley startups are all demanding machine learning skills from their developers.

Real-World Machine Learning

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£39.99

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Usually despatched within 3 days
Paperback / softback by Henrick Brink , Joesph Richards

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Description:

DESCRIPTION In a world where big data is the norm and near-real-time decisions are crucial, machine learning (ML) is a... Read more

    Publisher: Manning Publications
    Publication Date: 29/09/2016
    ISBN13: 9781617291920, 978-1617291920
    ISBN10: 1617291927

    Number of Pages: 264

    Non Fiction , Computing

    Description

    DESCRIPTION

    In a world where big data is the norm and near-real-time decisions are crucial, machine learning (ML) is a critical component of the data workflow. Machine learning systems can quickly crunch massive amounts of information to offer insights and make decisions in a way that matches or even surpasses human cognitive abilities. These systems use sophisticated computational and statistical tools to build models that can recognize and visualize patterns, predict outcomes, forecast values, and make recommendations.

    Real-World Machine Learning is a practical guide designed to teach developers the art of ML project execution. The book introduces the day-to-day practice of machine learning and prepares readers to successfully build and deploy powerful ML systems. Using the Python language and the R statistical package, it starts with core concepts like data acquisition and modeling, classification, and regression. Then it moves through the most important ML tasks, like model validation, optimization and feature engineering. It uses real-world examples that help readers anticipate and overcome common pitfalls. Along the way, they will discover scalable and online algorithms for large and streaming data sets. Advanced readers will appreciate the in-depth discussion of enhanced ML systems through advanced data exploration and pre-processing methods.

    KEY FEATURES
    • Accessible and practical introduction to machine learning
    • Contains big-picture ideas and real-world examples
    • Prepares reader to build and deploy powerful predictive systems
    • Offers tips & tricks and highlights common pitfalls
    AUDIENCE

    Code examples are in Python and R. No prior machine learning experience required.

    ABOUT THE TECHNOLOGY

    Machine learning has gained prominence due to the overwhelming successes of Google, Microsoft, Amazon, LinkedIn, Facebook, and others in their use of ML. The Gartner report predicts that big data analytics will be a $25 billion market by 2017, and financial firms, marketing organizations, scientific facilities, and Silicon Valley startups are all demanding machine learning skills from their developers.

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