
Data Engineering Podcast
Pushing The Limits Of Scalability And User Experience For Data Processing WIth Jignesh Patel
Jan 7, 2024
The guest, Jignesh Patel, discusses his research on technical scalability and user experience improvements in data management. They explore the challenges of meeting data demand, the limitations of Moore's Law, efficient data retrieval and indexing, strategies for real-world context, and future problems and challenges in complex systems and data processing. The guest also highlights the importance of data discovery in data management technology.
50:26
AI Summary
Highlights
AI Chapters
Episode notes
Podcast summary created with Snipd AI
Quick takeaways
- Jignesh Patel focuses on improving technical scalability and user experience in data management to address the challenges of handling data growth while keeping costs manageable.
- Patel's research explores different architectures and approaches to improve efficiency, scalability, and cost-effectiveness of data platforms through rethinking algorithms, computing substrates, and pushing compute closer to storage.
Deep dives
Research on Technical Scalability and User Experience Improvements in Data Management
Jignesh Patel, a professor in computer science at Carnegie Mellon, discusses his research on technical scalability and user experience improvements in data management. He explores the challenges of building long-term sustainable data platforms that can handle the growth in data demand while keeping costs manageable. Patel also delves into the use of generative AI to make data platforms more programmable and discusses the importance of speed in both the hardware/software architecture and human interactions with data analysis pipelines.
Remember Everything You Learn from Podcasts
Save insights instantly, chat with episodes, and build lasting knowledge - all powered by AI.