Well-Architected Fabric Solution: A Medallion First Approach - Part 1
2025TL; DR
Transform your data solutions with a streamlined Medallion Architecture using Microsoft Fabric. This session is tailored for professionals familiar with Power BI and basic dataflows, providing a step-by-step guide to implementing Bronze, Silver, and Gold layers for a scalable and maintainable pipeline (Part 1).
Session Details
Transform your data solutions with a streamlined Medallion Architecture using Microsoft Fabric. This session is tailored for professionals familiar with Power BI and basic dataflows, providing a step-by-step guide to implementing Bronze, Silver, and Gold layers for a scalable and maintainable pipeline.
Learn how to evolve an unstructured dataflow and semantic model into a comprehensive architecture. Familiarity with Python or SQL is a bonus but not required.
Part 1:
• Overview of Medallion Architecture: Gain a clear understanding of Warehouses and Lakehouses, their role within Microsoft Fabric, and how they enable Medallion Architecture.
• Understanding OneLake: Dive into OneLake and explore its foundational storage structure, including Delta tables and Parquet. Understand key features like columnar storage, Delta optimizations, and performance enhancements through simple, no-code explanations.
Part 2:
• Feature Showdown: Compare and contrast key tools in Microsoft Fabric, such as SQL vs. Spark, Notebooks vs. Dataflows vs. Pipelines, and Warehouses vs. Lakehouses, to determine the best fit for your scenarios.
• Well-Designed Architecture & Best Practices:
Learn about GIT integration, monitoring techniques, and actionable best practices for designing scalable and maintainable data architectures.
Audience:
• BI/SQL Professionals looking to broaden their knowledge of data engineering.
• Data Analysts seeking to deepen their understanding of data architecture.
• Aspiring Data Engineers aiming to master scalable data pipeline architectures.
Prerequisites:
Basic familiarity with Power BI and fundamental data engineering principles. Knowledge of Python or SQL is helpful but not mandatory.
Learning Goals:
1. Step-by-step guidance on converting unstructured dataflows into a robust Medallion Architecture.
2. Clear decision-making insights on tool selection and building well-designed architectures.
3. Practical strategies for scaling and maintaining pipelines with best practices in data engineering.
Learn how to evolve an unstructured dataflow and semantic model into a comprehensive architecture. Familiarity with Python or SQL is a bonus but not required.
Part 1:
• Overview of Medallion Architecture: Gain a clear understanding of Warehouses and Lakehouses, their role within Microsoft Fabric, and how they enable Medallion Architecture.
• Understanding OneLake: Dive into OneLake and explore its foundational storage structure, including Delta tables and Parquet. Understand key features like columnar storage, Delta optimizations, and performance enhancements through simple, no-code explanations.
Part 2:
• Feature Showdown: Compare and contrast key tools in Microsoft Fabric, such as SQL vs. Spark, Notebooks vs. Dataflows vs. Pipelines, and Warehouses vs. Lakehouses, to determine the best fit for your scenarios.
• Well-Designed Architecture & Best Practices:
Learn about GIT integration, monitoring techniques, and actionable best practices for designing scalable and maintainable data architectures.
Audience:
• BI/SQL Professionals looking to broaden their knowledge of data engineering.
• Data Analysts seeking to deepen their understanding of data architecture.
• Aspiring Data Engineers aiming to master scalable data pipeline architectures.
Prerequisites:
Basic familiarity with Power BI and fundamental data engineering principles. Knowledge of Python or SQL is helpful but not mandatory.
Learning Goals:
1. Step-by-step guidance on converting unstructured dataflows into a robust Medallion Architecture.
2. Clear decision-making insights on tool selection and building well-designed architectures.
3. Practical strategies for scaling and maintaining pipelines with best practices in data engineering.
3 things you'll get out of this session
1. Step-by-step guidance on converting unstructured dataflows into a robust Medallion Architecture.
2. Clear decision-making insights on tool selection and building well-designed architectures.
3. Practical strategies for scaling and maintaining pipelines with best practices in data engineering.
Speakers
Reid Havens's other proposed sessions for 2026
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Building a Data Platform that Delivers ROI, Value, and AI Readiness - 2026
Design a Well-Architected Fabric Solution: A Medallion First Approach - 2026
Lights, Camera, Data!: Building Your Brand through YouTube and Speaking - 2026
Navigating Microsoft Fabric: A Practical Guide to Tool Selection - 2026
Power BI Feature Overload: Balancing Flexibility with Maintainability - 2026
Power BI Features I Regret Using (So You Don’t Have To) - 2026
Power BI Settings That Are Secretly Ruining Your Reports - 2026
Scoped for Success: Why Composite Models are a Report's Best Friend - 2026
Semantic Models Comes First: Managing Models for Growth and Self-Service - 2026
Speaker Hacks for Nervous Nerds (From a Nerd Who Talks a Lot) - 2026
Upgrading Power BI Architecture - 2026
F is for Fabric - 2026
Fabric for Muppets - 2026
Steve Campbell
Steve Campbell's other proposed sessions for 2026
Becoming a Master Builder: Creating the Ultimate BI Developer Toolbox - 2026
Building a Data Platform that Delivers ROI, Value, and AI Readiness - 2026
Design a Well-Architected Fabric Solution: A Medallion First Approach - 2026
Navigating Microsoft Fabric: A Practical Guide to Tool Selection - 2026
Scoped for Success: Why Composite Models are a Report's Best Friend - 2026
Semantic Models Comes First: Managing Models for Growth and Self-Service - 2026
Upgrading Power BI Architecture - 2026