Wei Hu is the Senior Vice President of Research and Development at Oracle. He leads the development of mission-critical database capabilities as well as Blockchain, Kubernetes, Microservices, and Globally Distributed Databases.
Mr. Hu has B.S. and M.S. degrees from the Massachusetts Institute of Technology (MIT). He has been with Oracle since 1998, holds more than 50 patents, and is the author and co-author of several books and papers.
As organizations embed AI into production systems, the need for scalable, globally distributed, and low-latency data infrastructure has intensified. Distributed SQL databases address this by combining the transactional consistency of SQL with the elasticity and fault tolerance of cloud-native architectures—making them ideal for AI and agent-driven workloads.
However, distributed databases have nontrivial challenges. The CAP theorem still governs trade-offs between consistency, availability, and partition tolerance. Cross-region access incur network latency, while evolving data residency and sovereignty rules demand precise control over data placement and replication. Achieving near-instantaneous recovery from hardware, software, or network faults further complicates design—especially under the high concurrency and throughput demands of AI pipelines and inference agents.
This session dissects the architecture and internals of distributed SQL systems, focusing on practical techniques for minimizing latency and maintaining strong consistency. Using Oracle Globally Distributed Database and comparable platforms, we’ll examine sharding strategies, topology-aware data distribution, parallel transaction coordination, and failure handling.
Real-world examples — from transactional systems to AI-driven applications will be used to illustrate design patterns for building resilient, high-performance, cloud-native data tiers capable of sustaining next-generation, AI-enabled workloads.
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