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Essential PySpark for Scalable Data Analytics

You're reading from   Essential PySpark for Scalable Data Analytics A beginner's guide to harnessing the power and ease of PySpark 3

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Product type Paperback
Published in Oct 2021
Publisher Packt
ISBN-13 9781800568877
Length 322 pages
Edition 1st Edition
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Author (1):
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Sreeram Nudurupati Sreeram Nudurupati
Author Profile Icon Sreeram Nudurupati
Sreeram Nudurupati
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Table of Contents (19) Chapters Close

Preface 1. Section 1: Data Engineering
2. Chapter 1: Distributed Computing Primer FREE CHAPTER 3. Chapter 2: Data Ingestion 4. Chapter 3: Data Cleansing and Integration 5. Chapter 4: Real-Time Data Analytics 6. Section 2: Data Science
7. Chapter 5: Scalable Machine Learning with PySpark 8. Chapter 6: Feature Engineering – Extraction, Transformation, and Selection 9. Chapter 7: Supervised Machine Learning 10. Chapter 8: Unsupervised Machine Learning 11. Chapter 9: Machine Learning Life Cycle Management 12. Chapter 10: Scaling Out Single-Node Machine Learning Using PySpark 13. Section 3: Data Analysis
14. Chapter 11: Data Visualization with PySpark 15. Chapter 12: Spark SQL Primer 16. Chapter 13: Integrating External Tools with Spark SQL 17. Chapter 14: The Data Lakehouse 18. Other Books You May Enjoy

Scaling out model inferencing

Another important aspect of the whole ML process, apart from data cleansing and model training and tuning, is the productionization of models itself. Despite having access to huge amounts of data, sometimes it is useful to downsample the data and train models on a smaller subset of the larger dataset. This could be due to reasons such as low signal-to-noise ratio, for example. In this, it is not necessary to scale up or scale out the model training process itself. However, since the raw dataset size is very large, it becomes necessary to scale out the actual model inferencing process to keep up with the large amount of raw data that is being generated.

Apache Spark, along with MLflow, can be used to score models trained using standard, non-distributed Python libraries like scikit-learn. An example of a model trained using scikit-learn and then productionized at scale using Spark is shown in the following code example:

import mlflow
from sklearn.model_selection...
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