Overview
Unlock the secrets to building scalable and efficient data architectures with 'Data Engineering Best Practices.' This book provides in-depth guidance on designing, implementing, and optimizing cloud-based data pipelines. You will gain valuable insights into best practices, agile workflows, and future-proof designs.
What this Book will help me do
- Effectively plan and architect scalable data solutions leveraging cloud-first strategies.
- Master agile processes tailored to data engineering for improved project outcomes.
- Implement secure, efficient, and reliable data pipelines optimized for analytics and AI.
- Apply real-world design patterns and avoid common pitfalls in data flow and processing.
- Create future-ready data engineering solutions following industry-proven frameworks.
Author(s)
Richard J. Schiller and David Larochelle are seasoned data engineering experts with decades of experience crafting efficient and secure cloud-based infrastructures. Their collaborative writing distills years of real-world expertise into practical advice aimed at helping engineers succeed in a rapidly evolving field.
Who is it for?
This book is ideal for data engineers, ETL specialists, and big data professionals seeking to enhance their knowledge in cloud-based solutions. Some familiarity with data engineering, ETL pipelines, and big data technologies is helpful. It suits those keen on mastering advanced practices, improving agility, and developing efficient data pipelines. Perfect for anyone looking to future-proof their skills in data engineering.