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Zhamak Dehghani

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Zhamak Dehghani

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creator of Data Mesh Nextdata

Zhamak Dehghani is a pioneering technologist, author, and thought leader known for creating the Data Mesh paradigm and the concept of Autonomous Data Products, implemented by Nextdata OS. Her work has redefined data architecture by promoting decentralized, domain-oriented infrastructure that treats data as a product. Born in Iran, Dehghani holds a Bachelor of Engineering in Computer Software from Shahid Beheshti University and a Master’s in IT Management from the University of Sydney. With over two decades of experience as a software engineer and technologist, she has contributed to multiple patents in distributed systems. As Director of Emerging Technologies at ThoughtWorks, she introduced Data Mesh in 2018. Today, she is the founder and CEO of Nextdata, a software company providing a scalable, federated platform for Autonomous Data Products. Dehghani is also the author of Data Mesh: Delivering Data-Driven Value at Scale and co-author of Software Architecture: The Hard Parts, and a frequent keynote speaker worldwide.

Bio from: Databricks DATA + AI Summit 2023

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As enterprises scale their deployment of Generative AI (Gen AI), a central constraint has come into focus: the primary limitation is no longer model capability, but data infrastructure. Existing platforms, optimized for human interpretation and batch-oriented analytics, are misaligned with the operational realities of autonomous agents that consume, reason over, and act upon data continuously at machine scale. 

In this talk, Zhamak Dehghani — originator of the Data Mesh and a leading advocate for decentralized data architectures — presents a framework for data infrastructure designed explicitly for the AI-native era. She identifies the foundational capabilities required by Gen AI applications: embedded semantics, runtime computational policy enforcement, agent-centric, context-driven discovery.

The session contrasts the architectural demands of AI with the limitations of today’s fragmented, pipeline-driven systems—systems that rely heavily on human intervention and customized orchestration. Dehghani introduces autonomous data products as the next evolution: self-contained, self-governing services that continuously sense and respond to their environment. She offers an architectural deep dive and showcases their power with real-world use cases.  

Attendees will learn the architecture of “Data 3.0”, and how to both use GenAI to transform to this new architecture, and how this new architecture serves GenAI agents at scale.

As enterprises scale their deployment of Generative AI (Gen AI), a central constraint has come into focus: the primary limitation is no longer model capability, but data infrastructure. Existing platforms, optimized for human interpretation and batch-oriented analytics, are misaligned with the operational realities of autonomous agents that consume, reason over, and act upon data continuously at machine scale. 

In this talk, Zhamak Dehghani — originator of the Data Mesh and a leading advocate for decentralized data architectures — presents a framework for data infrastructure designed explicitly for the AI-native era. She identifies the foundational capabilities required by Gen AI applications: embedded semantics, runtime computational policy enforcement, agent-centric, context-driven discovery.

The session contrasts the architectural demands of AI with the limitations of today’s fragmented, pipeline-driven systems—systems that rely heavily on human intervention and customized orchestration. Dehghani introduces autonomous data products as the next evolution: self-contained, self-governing services that continuously sense and respond to their environment. She offers an architectural deep dive and showcases their power with real-world use cases.  

Attendees will learn the architecture of “Data 3.0”, and how to both use GenAI to transform to this new architecture, and how this new architecture serves GenAI agents at scale.