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  • Book Overview & Buying Apache Spark for Machine Learning
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Apache Spark for Machine Learning

Apache Spark for Machine Learning

By : Deepak Gowda
4.5 (2)
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Apache Spark for Machine Learning

Apache Spark for Machine Learning

4.5 (2)
By: Deepak Gowda

Overview of this book

In the world of big data, efficiently processing and analyzing massive datasets for machine learning can be a daunting task. Written by Deepak Gowda, a data scientist with over a decade of experience and 30+ patents, this book provides a hands-on guide to mastering Spark’s capabilities for efficient data processing, model building, and optimization. With Deepak’s expertise across industries such as supply chain, cybersecurity, and data center infrastructure, he makes complex concepts easy to follow through detailed recipes. This book takes you through core machine learning concepts, highlighting the advantages of Spark for big data analytics. It covers practical data preprocessing techniques, including feature extraction and transformation, supervised learning methods with detailed chapters on regression and classification, and unsupervised learning through clustering and recommendation systems. You’ll also learn to identify frequent patterns in data and discover effective strategies to deploy and optimize your machine learning models. Each chapter features practical coding examples and real-world applications to equip you with the knowledge and skills needed to tackle complex machine learning tasks. By the end of this book, you’ll be ready to handle big data and create advanced machine learning models with Apache Spark.
Table of Contents (16 chapters)
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1
Part 1: Introduction and Fundamentals
5
Part 2: Supervised Learning
8
Part 3: Unsupervised Learning
12
Part 4: Model Deployment

Understanding data preprocessing

Data preprocessing is a fundamental step in the data mining process. It involves a series of operations on raw data to transform it into a suitable format for further analysis and modeling, particularly in machine learning and AI applications. The key goal of data preprocessing is to enhance the quality, reliability, and efficiency of weather prediction based on historical data.

The main steps in data processing include the following:

  1. Data collection: The first step involves extracting raw data from various sources. Data can be in multiple formats and can include numbers, text, and images.
  2. Data preparation: This step involves preparing the data for processing. It might include sorting the data and organizing it into tables, databases, or files.
  3. Data cleaning: Data cleaning involves filling in the missing values through data imputation, where missing values are replaced with substituted values such as mean, median, and max. It may...
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Apache Spark for Machine Learning
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