Join us on a literary world trip!
Add this book to bookshelf
Grey
Write a new comment Default profile 50px
Grey
Listen online to the first chapters of this audiobook!
All characters reduced
Serverless Data Engineering - Streamlining Big Data Workflows in the Cloud - cover
PLAY SAMPLE

Serverless Data Engineering - Streamlining Big Data Workflows in the Cloud

Chuck Sherman

Narrator Ray Collins

Publisher: Chuck Sherman

  • 0
  • 0
  • 0

Summary

In the fast-paced world of data engineering, staying agile, scalable, and cost-efficient is paramount. "Serverless Data Engineering" is your essential guide to revolutionizing the way you handle data pipelines and analytics. Dive into the cutting-edge technology of serverless computing and discover how it can supercharge your data engineering projects. 
This book begins by unraveling the fundamentals of serverless architectures, shedding light on the core components and services offered by leading cloud providers. You'll explore the stark differences between serverless and traditional data engineering approaches, setting the stage for a paradigm shift in your work. 
From there, you'll embark on a hands-on journey through the various stages of data engineering, from data ingestion to transformation, storage, orchestration, and beyond. Learn how to architect robust data pipelines using serverless functions, and discover the power of serverless data storage solutions like data warehouses and NoSQL databases. 
"Serverless Data Engineering" doesn't stop at the technical aspects. It delves into the critical realms of data quality, governance, monitoring, and error handling to ensure your data remains pristine and your pipelines resilient. Harness the true potential of scalability and cost optimization, and gain insights into emerging trends like edge computing and machine learning integration. 
"Serverless Data Engineering" is your indispensable companion on the journey to mastering serverless technology and transforming your data engineering practices. Start building smarter, leaner, and more efficient data pipelines today. 
 
Duration: about 4 hours (03:43:47)
Publishing date: 2024-12-25; Unabridged; Copyright Year: — Copyright Statment: —