Practical Holistics for Data Analysts
ebook ∣ Definitive Reference for Developers and Engineers
By Richard Johnson
Sign up to save your library
With an OverDrive account, you can save your favorite libraries for at-a-glance information about availability. Find out more about OverDrive accounts.
Find this title in Libby, the library reading app by OverDrive.

Search for a digital library with this title
Title found at these libraries:
Library Name | Distance |
---|---|
Loading... |
"Practical Holistics for Data Analysts"
"Practical Holistics for Data Analysts" is a comprehensive guide designed for modern data professionals seeking to master the intersection of holistic analytics and advanced business intelligence platforms. This book meticulously introduces readers to the Holistics framework, situating it within today's complex analytics ecosystem alongside traditional BI, ETL, and cloud-native tools. Through a clear architectural overview and critical comparisons, it empowers analysts and organizations to adopt scalable, model-driven approaches that harmonize data integration, transformation, and visualization.
Covering every stage of the analytics lifecycle, the book delves deeply into robust data modeling techniques, governance, and automated documentation to ensure data quality and compliance from source to insight. Readers will explore sophisticated ELT strategies, advanced SQL engineering, and best practices for workflow orchestration—enabling them to build efficient, maintainable pipelines and real-time analytics environments. Emphasis on security, privacy, and compliance is woven throughout, offering actionable strategies for meeting modern regulatory standards such as GDPR and SOC2, as well as practical guidance on threat modeling and access controls.
Moving beyond technical execution, "Practical Holistics for Data Analysts" addresses the human and collaborative dimensions key to analytical excellence. Chapters dedicated to visualization, reporting, and cross-functional teamwork provide frameworks for creating impactful dashboards, fostering knowledge sharing, and embedding analytics into decision-making processes. The book concludes by exploring future trends—including ML integration, DataOps, and evolving data architectures—outlining a forward-thinking vision for sustainable data innovation. With its blend of actionable guidance and strategic insights, this book is an essential resource for anyone striving to lead and inspire in the world of modern data analytics.