Inner and Outer Data Product Architecture - Data Mesh Live 2026

Inner and Outer Data Product Architecture

FormatData Mesh Live - Talk (50min)

Inner and Outer Data Product Architecture

The architecture of a data product is often misunderstood because it is composed of two distinct yet interdependent layers. The outer architecture defines how the data product behaves within the enterprise ecosystem — its contracts, SLAs, metadata, governance boundaries, interoperability rules, lineage, and the mechanisms that ensure trust, compliance, and discoverability.

The inner architecture focuses on how the data product is built — including its pipelines, workloads, storage patterns, serving protocols, orchestration logic, and the technologies used to implement its internal logic.

This session examines both layers in detail, explaining why scaling data products requires a clear separation between external governance and internal engineering autonomy. It highlights how organizations can design composable, governed, and future-proof data products by standardizing the outer architecture while preserving freedom and flexibility in the inner one. The talk clarifies the principles, patterns, and guardrails that allow data products to remain interoperable, high-quality, and AI-ready across the enterprise.

About Paolo Platter

Paolo Platter is one of the earliest pioneers of Data Mesh adoption in Europe. Since 2019, he has led large-scale Data Mesh implementations across major enterprises, guiding both the organizational transition and the technical foundations needed to make decentralization sustainable. He authored the world’s first Data Product Specification, establishing a formal and repeatable way to define, design, and govern data products. Building on this work, in 2021 he created Witboost, the first platform entirely dedicated to Data Product Management and computational governance—now adopted by leading global enterprises to scale ownership, quality, and interoperability across their data ecosystems. Today, Paolo continues to advance the discipline of Data Product Management, shaping industry practices and helping organizations transform how they build, govern, and operate data products at scale.