Spark Performance Tuning for Data Engineers: Part1 – Storage

Data Engineering & Apache Spark Optimization Techniques on Databricks to Boost Speed, Reduce cost & Handle Big Data

Unlock the true potential of Apache Spark by mastering storage-related performance tuning techniques. This hands-on course is packed with real-world scenarios, guided demos, and practical use cases that will help you fine-tune Spark storage strategies for speed, efficiency, and scalability.

What you’ll learn

  • Hands on Demo based on different Scenarios & Usecases.
  • Learn the nuances of spark performance tuning.
  • Get detailed insights about different operations in spark.
  • Get clear understanding about how spark configs work hand in hand & best combination for optimal results.
  • Learn to identify and solve bottlenecks & errors in your spark application.

Course Content

  • Introduction –> 3 lectures • 18min.
  • Important Concepts –> 5 lectures • 1hr 20min.
  • Optimizing Storage –> 7 lectures • 1hr 45min.

Spark Performance Tuning for Data Engineers: Part1 - Storage

Requirements

Unlock the true potential of Apache Spark by mastering storage-related performance tuning techniques. This hands-on course is packed with real-world scenarios, guided demos, and practical use cases that will help you fine-tune Spark storage strategies for speed, efficiency, and scalability.

 

This course is perfect for Intermediate Data Engineers & Spark Developers as well as Aspiring Achitects who wants to optimize Spark jobs, reduce resource costs, and ensure fast, reliable performance for large-scale data applications.

 

What You’ll Learn

1. Understand how Apache Spark handles storage internally: memory vs disk

2. Learn when and how to use Spark caching and persistence effectively

3. Compare and choose the right storage levels: MEMORY_ONLY, MEMORY_AND_DISK, etc.

4. Use real-world examples and hands-on demos to benchmark storage decisions

5. Learn how to monitor storage metrics using the Spark UI

6. Handle memory spills, disk I/O bottlenecks, and storage tuning in cluster environments

7. Apply best practices for storage optimization in cloud and on-prem Spark clusters

 

Why Take This Course?

  • 100% Hands-on: Focused on practical implementation, not just theory
  • Designed for Data Engineers, Spark Developers, and Big Data Practitioners
  • Covers both foundational concepts and advanced tuning techniques
  • Teaches how to measure performance gains using real metrics
  • Helps you make cost-efficient decisions for big data storage

 

Tools & Technologies Covered

  • Apache Spark (2.x and 3.x)
  • DataBricks
  • Spark UI
  • HDFS, DataLake (for storage scenarios)
Get Tutorial