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Book Overview & Buying
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Table Of Contents
Time Series Analysis with Spark
By :
Time Series Analysis with Spark
By:
Overview of this book
Written by Databricks Senior Solutions Architect Yoni Ramaswami, whose expertise in Data and AI has shaped innovative digital transformations across industries, this comprehensive guide bridges foundational concepts of time series analysis with the Spark framework and Databricks, preparing you to tackle real-world challenges with confidence.
From preparing and processing large-scale time series datasets to building reliable models, this book offers practical techniques that scale effortlessly for big data environments. You’ll explore advanced topics such as scaling your analyses, deploying time series models into production, Generative AI, and leveraging Spark's latest features for cutting-edge applications across industries. Packed with hands-on examples and industry-relevant use cases, this guide is perfect for data engineers, ML engineers, data scientists, and analysts looking to enhance their expertise in handling large-scale time series data.
By the end of this book, you’ll have mastered the skills to design and deploy robust, scalable time series models tailored to your unique project needs—qualifying you to excel in the rapidly evolving world of big data analytics.
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Table of Contents (18 chapters)
Preface
Part 1: Introduction to Time Series and Apache Spark
Chapter 1: What Are Time Series?
Chapter 2: Why Time Series Analysis?
Chapter 3: Introduction to Apache Spark
Part 2: From Data to Models
Chapter 4: End-to-End View of a Time Series Analysis Project
Chapter 5: Data Preparation
Chapter 6: Exploratory Data Analysis
Chapter 7: Building and Testing Models
Part 3: Scaling to Production and Beyond
Chapter 8: Going at Scale
Chapter 9: Going to Production
Chapter 10: Going Further with Apache Spark
Chapter 11: Recent Developments in Time Series Analysis
Chapter 12: Unlock Your Exclusive Benefits
Index
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