Park: An open platform for learning-augmented computer systems
Author(s)
Mao, Hongzi; Negi, Parimarjan; Narayan, Akshay; Wang, Hanrui; Yang, Jiacheng; Wang, Haonan; Marcus, Ryan; Addanki, Ravichandra; Khani, Mehrdad; He, Songtao; Nathan, Vikram; Cangialosi, Frank; Bojja Venkatakrishnan, Shaileshh; Weng, Wei-Hung; Han, Song; Kraska, Tim; Alizadeh Attar, Mohammadreza; ... Show more Show less
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© 2019 Neural information processing systems foundation. All rights reserved. We present Park, a platform for researchers to experiment with Reinforcement Learning (RL) for computer systems. Using RL for improving the performance of systems has a lot of potential, but is also in many ways very different from, for example, using RL for games. Thus, in this work we first discuss the unique challenges RL for systems has, and then propose Park an open extensible platform, which makes it easier for ML researchers to work on systems problems. Currently, Park consists of 12 real world system-centric optimization problems with one common easy to use interface. Finally, we present the performance of existing RL approaches over those 12 problems and outline potential areas of future work.
Date issued
2019Department
Massachusetts Institute of Technology. Computer Science and Artificial Intelligence Laboratory; Massachusetts Institute of Technology. Department of Electrical Engineering and Computer ScienceJournal
Advances in Neural Information Processing Systems