The data lake landscape is undergoing a fundamental transformation. Traditional Hive tables are giving way to a new generation of open table formats—Apache Iceberg, Apache Hudi, Delta Lake, and emerging contenders like DuckLake—each promising to solve the inherent challenges of managing massive datasets at scale.
But which format fits your architecture? This session cuts through the marketing noise to deliver practical insights for data architects and engineers navigating this critical decision. We’ll explore how these formats tackle schema evolution, time travel, ACID transactions, and metadata management differently, and what these differences mean for your data platform’s performance, reliability, and total cost of ownership.
Drawing from real-world implementations, you’ll discover the hidden complexities, unexpected benefits, and common pitfalls of each approach. Whether you’re modernizing legacy Hive infrastructure, building greenfield data lakes, or evaluating lakehouse architectures, you’ll leave with a clear framework for choosing and implementing the right open table format for your specific use case—and the confidence to justify that decision to stakeholders.
Highlights:
View the Adept Events calendar
“Good quality content from experienced speakers. Loved it!”
“As always a string of relevant subjects and topics.”
“Longer sessions created room for more depth and dialogue. That is what I appreciate about this summit.”
“Inspiring summit with excellent speakers, covering the topics well and from different angles. Organization and venue: very good!”
“Inspiring and well-organized conference. Present-day topics with many practical guidelines, best practices and do's and don'ts regarding information architecture such as big data, data lakes, data virtualisation and a logical data warehouse.”
“A fun event and you learn a lot!”
“As a BI Consultant I feel inspired to recommend this conference to everyone looking for practical tools to implement a long term BI Customer Service.”
“Very good, as usual!”