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Databricks ML in Action

You're reading from   Databricks ML in Action Learn how Databricks supports the entire ML lifecycle end to end from data ingestion to the model deployment

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Product type Paperback
Published in May 2024
Publisher Packt
ISBN-13 9781800564893
Length 280 pages
Edition 1st Edition
Languages
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Authors (4):
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Hayley Horn Hayley Horn
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Hayley Horn
Amanda Baker Amanda Baker
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Amanda Baker
Anastasia Prokaieva Anastasia Prokaieva
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Anastasia Prokaieva
Stephanie Rivera Stephanie Rivera
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Stephanie Rivera
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Toc

Table of Contents (13) Chapters Close

Preface 1. Part 1: Overview of the Databricks Unified Data Intelligence Platform FREE CHAPTER
2. Chapter 1: Getting Started and Lakehouse Concepts 3. Chapter 2: Designing Databricks: Day One 4. Chapter 3: Building the Bronze Layer 5. Part 2: Heavily Project Focused
6. Chapter 4: Getting to Know Your Data 7. Chapter 5: Feature Engineering on Databricks 8. Chapter 6: Tools for Model Training and Experimenting 9. Chapter 7: Productionizing ML on Databricks 10. Chapter 8: Monitoring, Evaluating, and More 11. Index 12. Other Books You May Enjoy

Feature engineering on a stream

Before diving into feature engineering on a stream, we want to clarify the difference between streaming pipelines and streaming data. If you have not used Spark Structured Streaming before, it is a stream processing engine built on the Spark SQL engine. It makes it easy to write streaming calculations or transformations like you would write expressions for static data. Structured Streaming pipelines can process batch or streaming data. Streaming pipelines have elements such as checkpoints to automate the data flow. Streaming pipelines, however, are not necessarily always running; rather, they only run when the developer chooses it. In contrast, streaming data (also known as real-time data) refers to continuously generated data that can be processed in real time or batch. To simplify, think of streaming pipelines as a series of automated conveyor belts in a factory set up to process items (data) as they come. These conveyor belts can be turned on or off...

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