Description

Book Synopsis
Take your data engineering skills to the next level by learning how to utilize Scala and functional programming to create continuous and scheduled pipelines that ingest, transform, and aggregate data Key Features Transform data into a clean and trusted source of information for your organization using Scala Build streaming and batch-processing pipelines with step-by-step explanations Implement and orchestrate your pipelines by following CI/CD best practices and test-driven development (TDD) Purchase of the print or Kindle book includes a free PDF eBook Book DescriptionMost data engineers know that performance issues in a distributed computing environment can easily lead to issues impacting the overall efficiency and effectiveness of data engineering tasks. While Python remains a popular choice for data engineering due to its ease of use, Scala shines in scenarios where the performance of distributed data processing is paramount. This book will teach you how to leverage the Scala programming language on the Spark framework and use the latest cloud technologies to build continuous and triggered data pipelines. You’ll do this by setting up a data engineering environment for local development and scalable distributed cloud deployments using data engineering best practices, test-driven development, and CI/CD. You’ll also get to grips with DataFrame API, Dataset API, and Spark SQL API and its use. Data profiling and quality in Scala will also be covered, alongside techniques for orchestrating and performance tuning your end-to-end pipelines to deliver data to your end users. By the end of this book, you will be able to build streaming and batch data pipelines using Scala while following software engineering best practices.What you will learn Set up your development environment to build pipelines in Scala Get to grips with polymorphic functions, type parameterization, and Scala implicits Use Spark DataFrames, Datasets, and Spark SQL with Scala Read and write data to object stores Profile and clean your data using Deequ Performance tune your data pipelines using Scala Who this book is forThis book is for data engineers who have experience in working with data and want to understand how to transform raw data into a clean, trusted, and valuable source of information for their organization using Scala and the latest cloud technologies.

Table of Contents
Table of Contents
  1. Scala Essentials for Data Engineers
  2. Environment Setup
  3. An Introduction to Apache Spark and Its APIs – DataFrame, Dataset, and Spark SQL
  4. Working with Databases
  5. Object Stores and Data Lakes
  6. Understanding Data Transformation
  7. Data Profiling and Data Quality
  8. Test-Driven Development, Code Health, and Maintainability
  9. CI/CD with GitHub
  10. Data Pipeline Orchestration
  11. Performance Tuning
  12. Building Batch Pipelines Using Spark and Scala
  13. Building Streaming Pipelines Using Spark and Scala

Data Engineering with Scala and Spark: Build

Product form

£32.29

Includes FREE delivery

RRP £33.99 – you save £1.70 (5%)

Order before 4pm today for delivery by Thu 18 Dec 2025.

A Paperback / softback by Eric Tome, Rupam Bhattacharjee, David Radford

Out of stock


    View other formats and editions of Data Engineering with Scala and Spark: Build by Eric Tome

    Publisher: Packt Publishing Limited
    Publication Date: 31/01/2024
    ISBN13: 9781804612583, 978-1804612583
    ISBN10: 1804612588

    Description

    Book Synopsis
    Take your data engineering skills to the next level by learning how to utilize Scala and functional programming to create continuous and scheduled pipelines that ingest, transform, and aggregate data Key Features Transform data into a clean and trusted source of information for your organization using Scala Build streaming and batch-processing pipelines with step-by-step explanations Implement and orchestrate your pipelines by following CI/CD best practices and test-driven development (TDD) Purchase of the print or Kindle book includes a free PDF eBook Book DescriptionMost data engineers know that performance issues in a distributed computing environment can easily lead to issues impacting the overall efficiency and effectiveness of data engineering tasks. While Python remains a popular choice for data engineering due to its ease of use, Scala shines in scenarios where the performance of distributed data processing is paramount. This book will teach you how to leverage the Scala programming language on the Spark framework and use the latest cloud technologies to build continuous and triggered data pipelines. You’ll do this by setting up a data engineering environment for local development and scalable distributed cloud deployments using data engineering best practices, test-driven development, and CI/CD. You’ll also get to grips with DataFrame API, Dataset API, and Spark SQL API and its use. Data profiling and quality in Scala will also be covered, alongside techniques for orchestrating and performance tuning your end-to-end pipelines to deliver data to your end users. By the end of this book, you will be able to build streaming and batch data pipelines using Scala while following software engineering best practices.What you will learn Set up your development environment to build pipelines in Scala Get to grips with polymorphic functions, type parameterization, and Scala implicits Use Spark DataFrames, Datasets, and Spark SQL with Scala Read and write data to object stores Profile and clean your data using Deequ Performance tune your data pipelines using Scala Who this book is forThis book is for data engineers who have experience in working with data and want to understand how to transform raw data into a clean, trusted, and valuable source of information for their organization using Scala and the latest cloud technologies.

    Table of Contents
    Table of Contents
    1. Scala Essentials for Data Engineers
    2. Environment Setup
    3. An Introduction to Apache Spark and Its APIs – DataFrame, Dataset, and Spark SQL
    4. Working with Databases
    5. Object Stores and Data Lakes
    6. Understanding Data Transformation
    7. Data Profiling and Data Quality
    8. Test-Driven Development, Code Health, and Maintainability
    9. CI/CD with GitHub
    10. Data Pipeline Orchestration
    11. Performance Tuning
    12. Building Batch Pipelines Using Spark and Scala
    13. Building Streaming Pipelines Using Spark and Scala

    Recently viewed products

    © 2025 Book Curl

      • American Express
      • Apple Pay
      • Diners Club
      • Discover
      • Google Pay
      • Maestro
      • Mastercard
      • PayPal
      • Shop Pay
      • Union Pay
      • Visa

      Login

      Forgot your password?

      Don't have an account yet?
      Create account