Get in Touch

Course Outline

Data Mesh Fundamentals and Principles

Module 1: Introduction and Context

  • Evolution of data architecture: DW, Data Lake, and the emergence of Data Mesh
  • Common challenges in centralized architectures
  • Guiding principles of the Data Mesh approach

Module 2: Principle 1 – Domain-Oriented Ownership

  • Domain-oriented organization
  • Benefits and challenges of decentralizing responsibility
  • Practical cases: defining domains in a real enterprise

Module 3: Principle 2 – Data as a Product

  • What is a "data product"?
  • Roles of the data product owner
  • Best practices for designing data products
  • Hands-on exercise: designing a data product per team

Platform, Governance, and Operational Design

Module 4: Principle 3 – Self-Service Platform

  • Components of a modern data platform
  • Common tools in a Data Mesh ecosystem (Kafka, dbt, Snowflake, etc.)
  • Exercise: designing a self-service platform architecture

Module 5: Principle 4 – Federated Governance

  • Governance in distributed environments
  • Policies, standards, and automation
  • Implementing data quality, security, and privacy policies

Module 6: Organizational Design and Cultural Change

  • New roles in Data Mesh: data product owner, platform team, domain teams
  • How to align incentives across domains
  • Cultural transformation and change management

Implementation, Tools, and Simulation

Module 7: Adoption and Implementation Strategies

  • Roadmap for phased Data Mesh implementation
  • Criteria for selecting pilot domains
  • Lessons learned from real-world implementations

Module 8: Tools, Technologies, and Case Studies

  • Technology stack compatible with Data Mesh
  • Examples of implementation (Netflix, Zalando, etc.)
  • Analysis of success and failure cases

Module 9: Exam Simulation and Practical Cases

  • Module review exercises
  • Certification-style mock exam
  • Results review and discussion

Requirements

• Basic knowledge of data management, data architecture, or data engineering
• Familiarity with concepts such as Data Warehouse, Data Lake, ETL/ELT
• Desirable: Experience with enterprise-level data projects

 21 Hours

Number of participants


Price per participant

Testimonials (1)

Upcoming Courses

Related Categories