Recommended Books and Articles on DataOps

Posted by

Books on DataOps

  1. “DataOps: The Missing Link in Your Data Strategy” by Ganesh Srinivasan
    • A comprehensive guide on DataOps fundamentals, including best practices for improving data pipeline efficiency, managing data governance, and ensuring data quality.
  2. “DataOps for Dummies” by Lenny Liebmann
    • This book breaks down DataOps concepts for beginners, offering practical steps for implementing DataOps, improving collaboration, and optimizing data workflows.
  3. “The DataOps Advantage” by Stewart Bond and Daniel O’Brien
    • Focuses on how DataOps can deliver faster, more reliable data access for analytics and business intelligence, with insights into automation and agile data management.
  4. “Data Management for Analytics: Unlocking DataOps for Competitive Advantage” by Daniel J. Power and Ramesh Sharda
    • Explores the role of DataOps in transforming data management, including case studies and techniques for data integration, quality assurance, and real-time analytics.
  5. “Data Quality Fundamentals” by Barr Moses, Lior Gavish, and Kyle Kirwan
    • A deep dive into the data quality aspects of DataOps, providing guidance on building data reliability, monitoring, and validating data in real-time.
  6. “The DevOps Handbook” by Gene Kim, Jez Humble, Patrick Debois, and John Willis
    • While not DataOps-specific, this foundational DevOps book covers principles that apply to DataOps, such as automation, monitoring, and agile development for data pipelines.

Articles on DataOps

  1. “What is DataOps? A Framework for Modern Data Integration” – IBM
    • This article provides a foundational overview of DataOps, discussing its role in modern data management and offering insights on key components like data quality and governance.
  2. “DataOps: Transforming Your Data Infrastructure” – Gartner
    • An industry-focused piece on how DataOps is transforming data infrastructure, with insights on current trends and strategies for adopting DataOps.
  3. “Building a DataOps Culture in Your Organization” – DataKitchen Blog
    • This article offers practical advice on fostering a DataOps culture, including tips for collaboration, process automation, and data workflow improvements.
  4. “DataOps Principles: An Agile Data Process to Operationalize Analytics” – DataRobot Blog
    • Covers core DataOps principles and how they apply to operationalizing analytics, with steps for building agile, responsive data processes.
  5. “The Role of DataOps in Data Management” – Forbes Tech Council
    • A thought leadership article on how DataOps can reshape data management practices, discussing the benefits of automation, collaboration, and improved data quality.
  6. “DataOps for AI and Machine Learning” – O’Reilly by Ted Malaska and Jonathan Seidman
    • Discusses the role of DataOps in supporting AI and machine learning applications, with emphasis on data pipeline automation and data governance.
  7. “DataOps vs. DevOps: Why Both Are Critical in Data-Driven Organizations” – DataOps.com
    • Explores the differences and similarities between DataOps and DevOps, detailing how each approach supports data-driven innovation and operational efficiency.
  8. “Scaling DataOps: Best Practices and Lessons Learned” – InfoQ
    • A practical article that dives into real-world best practices for scaling DataOps in large organizations, including automation, monitoring, and collaboration tips.
  9. “From DataOps to MLOps: The Evolution of Data Operations” – Towards Data Science
    • Discusses the evolution from DataOps to MLOps, covering how DataOps principles support the pipeline needs of machine learning and AI projects.
  10. “DataOps: Agile, Collaborative Data Management for the Enterprise” – McKinsey & Company
    • Focuses on how DataOps enables agile data management within enterprises, with insights into the impact on data workflows, quality control, and compliance.

Subscribe
Notify of
guest
0 Comments
Oldest
Newest Most Voted
Inline Feedbacks
View all comments
0
Would love your thoughts, please comment.x
()
x