About
I am an Assistant Professor in the School of Engineering and Applied Sciences at Harvard University. I received my Ph.D. in Computer Science from Carnegie Mellon University.
I am broadly interested in storage, data management, and machine learning systems with particular focus on workload analysis, efficient storage, and sustainable system design. I like in-depth measurement and analysis to get deep understanding of systems and algorithms in the real world.
My works have received best-paper awards at NSDI'24, NSDI'21, SOSP'21, VALUETOOLS'24, and SYSTOR'16 and have been deployed in production at Google, VMware, Twitter, Redpanda, Momento with many open-source libraries contributed by the community.
My research has been sponsored by Meta, Google Cloud, and AWS. I am a 2020 Meta Fellow, a 2023 Google Cloud Research Innovator, and a 2023 Rising Star in Machine Learning and Systems.
News [all news]
I am looking for highly motivated students to join my lab. Please read this page if you are interested in working with me or asking for a recommendation letter.
Research Areas and Interests
Storage systems and machine learning systems with a focus on efficiency, scalability and robustness:
- Efficient and scalable cache management systems
- Robust and reliable cache/storage management and machine learning systems [OSDI'20][NSDI'22][VLDB'23]
- New approaches to make machine learning practical for storage systems (machine learning for systems) [FAST'23][SOCC'17]
- Performance optimization and sustainability of microservices and serverless architecture [SOCC'23]
- Reliable large model inference on wimpy hardware (system for machine learning)
Research Highlights
Bio
Juncheng Yang is an Assistant Professor in the School of Engineering and Applied Science at Harvard University. He received his Ph.D. in Computer Science from Carnegie Mellon University in 2024. His research interests broadly cover the efficiency, performance, reliability, and sustainability of large-scale data systems.
Juncheng's works have received best paper awards at NSDI'24, NSDI'21, SOSP'21, and SYSTOR'16. His OSDI'20 paper was recognized as one of the best storage papers at the conference and invited to ACM TOS'21. Juncheng received a Facebook Ph.D. Fellowship in 2020, was recognized as a Rising Star in machine learning and systems in 2023, and a Google Cloud Research Innovator in 2023.
His work, Segcache, has been adopted for production at Twitter and Momento. The two eviction algorithms he designed (S3-FIFO, SIEVE) have been adopted for production at Google, VMware, Redpanda, and several others, with over 20 open-source libraries available on GitHub. Moreover, the open-source cache simulation library he created, libCacheSim, has been used by almost 100 research institutes and companies.