Book Image

Optimizing Databricks Workloads

By : Anirudh Kala, Anshul Bhatnagar, Sarthak Sarbahi
Book Image

Optimizing Databricks Workloads

By: Anirudh Kala, Anshul Bhatnagar, Sarthak Sarbahi

Overview of this book

Databricks is an industry-leading, cloud-based platform for data analytics, data science, and data engineering supporting thousands of organizations across the world in their data journey. It is a fast, easy, and collaborative Apache Spark-based big data analytics platform for data science and data engineering in the cloud. In Optimizing Databricks Workloads, you will get started with a brief introduction to Azure Databricks and quickly begin to understand the important optimization techniques. The book covers how to select the optimal Spark cluster configuration for running big data processing and workloads in Databricks, some very useful optimization techniques for Spark DataFrames, best practices for optimizing Delta Lake, and techniques to optimize Spark jobs through Spark core. It contains an opportunity to learn about some of the real-world scenarios where optimizing workloads in Databricks has helped organizations increase performance and save costs across various domains. By the end of this book, you will be prepared with the necessary toolkit to speed up your Spark jobs and process your data more efficiently.
Table of Contents (13 chapters)
1
Section 1: Introduction to Azure Databricks
5
Section 2: Optimization Techniques
10
Section 3: Real-World Scenarios

Learning case studies from the retail and FMCG industry

Data is more important than ever for the retail and FMCG industry. It can be very helpful for maintaining a lean inventory. In addition, data is critical for optimizing the prices of products on demand. Also, a data-driven approach can boost relationships with business partners, thereby helping to smoothen the supply chain.

Case study 6 – real-time analytics using IoT Hub for a retail giant

An organization wanted to build an end-to-end solution wherein edge devices gathered metrics at a certain frequency from all the instruments on the floor shop. These metrics were to be utilized to conduct edge analytics for real-time issues. Thereon, the data would be pushed to a cloud platform where near-real-time data transformations would be done and delivered to a dashboard for visualization. The same data would be persisted for batch processing and leveraged machine learning to gain insights.

The proposed solution architecture...