Skip to content

Latest commit

 

History

History
8 lines (6 loc) · 964 Bytes

2022-05-17.md

File metadata and controls

8 lines (6 loc) · 964 Bytes

Memory Disaggregation: Potentials and Pitfalls

Nan Ding (Computer Science Department, Lawrence Berkeley National Laboratory)

Abstract

Memory usage imbalance has been consistently observed in many data centers. This has sparked interest in memory disaggregation, which allows applications to use all available memory across an entire data center instead of being confined to the memory of a single server. In the talk, I'll present the design space and implementation for building a disaggregated memory system. I'll then discuss the critical metrics for applications to benefit from memory disaggregation.

Bio

Nan Ding is a Research Scientist in the Performance and Algorithms group of the Computer Science Department at Lawrence Berkeley National Laboratory. Her research interests include high-performance computing, performance modeling, and auto-tuning. Nan received her Ph.D. in computer science from Tsinghua University, Beijing, China in 2018.