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Essential PySpark for Scalable Data Analytics

Essential PySpark for Scalable Data Analytics

By : Nudurupati
4.4 (13)
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Essential PySpark for Scalable Data Analytics

Essential PySpark for Scalable Data Analytics

4.4 (13)
By: Nudurupati

Overview of this book

Apache Spark is a unified data analytics engine designed to process huge volumes of data quickly and efficiently. PySpark is Apache Spark's Python language API, which offers Python developers an easy-to-use scalable data analytics framework. Essential PySpark for Scalable Data Analytics starts by exploring the distributed computing paradigm and provides a high-level overview of Apache Spark. You'll begin your analytics journey with the data engineering process, learning how to perform data ingestion, cleansing, and integration at scale. This book helps you build real-time analytics pipelines that help you gain insights faster. You'll then discover methods for building cloud-based data lakes, and explore Delta Lake, which brings reliability to data lakes. The book also covers Data Lakehouse, an emerging paradigm, which combines the structure and performance of a data warehouse with the scalability of cloud-based data lakes. Later, you'll perform scalable data science and machine learning tasks using PySpark, such as data preparation, feature engineering, and model training and productionization. Finally, you'll learn ways to scale out standard Python ML libraries along with a new pandas API on top of PySpark called Koalas. By the end of this PySpark book, you'll be able to harness the power of PySpark to solve business problems.
Table of Contents (19 chapters)
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1
Section 1: Data Engineering
6
Section 2: Data Science
13
Section 3: Data Analysis

Tracking experiments with MLflow

In real life, building a single model is never sufficient. A typical model-building process requires iterating over the process several times, sometimes changing the model parameters and other times tweaking the training dataset, until the desired level of model accuracy is achieved. Sometimes, a model that's suitable for a certain use case might not be useful for another. This means that a typical data science process involves experimenting with several models to solve a single business problem and keeping track of all the datasets, model parameters, and model metrics for future reference. Traditionally, experiment tracking is done using rudimentary tools such as spreadsheets, but this slows down the time to production and is also a tedious process that's prone to mistakes.

The MLflow Tracking component solves this problem with its API and UI for logging ML experiments, including model parameters, model code, metrics, the output of the...

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