07 Team Reading Catalog - Observatorio-do-Trabalho-de-Pernambuco/documentation GitHub Wiki

7. Team Reading Catalog

A curated list of recommended resources—books, articles, courses, and more—that can help deepen our data engineering knowledge. Please add or update this list as new materials become relevant.


7.1 Books

  1. “Designing Data-Intensive Applications” by Martin Kleppmann
    • Covers data systems, pipelines, and architectures.
  2. “The Data Warehouse Toolkit” by Ralph Kimball
    • Fundamentals of dimensional modeling and data warehouse design.
  3. “Building Microservices” by Sam Newman
    • Helpful if our architecture involves microservices and data flows.

7.2 Articles & Blogs

  1. Uber Engineering Blog
    • Offers insight into large-scale data solutions, real-time analytics, and more.
  2. Netflix Tech Blog
    • Shares how they handle high-volume streaming and data pipeline optimizations.

7.3 Courses & Online Material

  1. Coursera: Data Engineering on Google Cloud Platform
    • Broad overview of GCP’s data tools and pipelines.
  2. Udemy: Data Warehouse & BI Fundamentals
    • Intro to data warehousing concepts, ETL, and basic BI techniques.

7.4 Conferences & Webinars

  • Strata Data Conference
    • Leading event for data science, machine learning, and analytics.
  • Data Council
    • Community-driven event focusing on data engineering and data science.

7.5 Contributing to This List

  • Suggest New Resources: Open the Wiki page, click “Edit,” and add your recommendation.
  • Retirement of Outdated Material: If a link or resource becomes obsolete, consider removing or updating it.
  • Categorize Appropriately: If adding a new section, maintain the numbering scheme for clarity.