The following publications are possibly variants of this publication:
- ByteSeries: an in-memory time series database for large-scale monitoring systemsXuanhua Shi, Zezhao Feng, Kaixi Li, Yongluan Zhou, Hai Jin 0001, Yan Jiang, Bingsheng He, Zhijun Ling, Xin Li. CLOUD 2020: 60-73 [doi]
- Gödel: Unified Large-Scale Resource Management and Scheduling at ByteDanceWu Xiang, Yakun Li, Yuquan Ren, Fan Jiang, Chaohui Xin, Varun Gupta, Chao Xiang, Xinyi Song, Meng Liu, Bing Li, Kaiyang Shao, Chen Xu, Wei Shao, Yuqi Fu, Wilson Wang, Cong Xu, Wei Xu, Caixue Lin, Rui Shi, Yuming Liang. CLOUD 2023: 308-323 [doi]
- Sparkle: optimizing spark for large memory machines and analyticsMijung Kim, Jun Li, Haris Volos, Manish Marwah, Alexander Ulanov, Kimberly Keeton, Joseph Tucek, Lucy Cherkasova, Le Xu, Pradeep Fernando. CLOUD 2017: 656 [doi]
- SifrDB: A Unified Solution for Write-Optimized Key-Value Stores in Large DatacenterFei Mei, Qiang Cao, Hong Jiang 0001, Jingjun Li. CLOUD 2018: 477-489 [doi]
- A Comparison of End-to-End Decision Forest Inference PipelinesHong Guan, Saif Masood, Mahidhar Reddy Dwarampudi, Venkatesh Gunda, Hong Min, Lei Yu 0002, Soham Nag, Jia Zou 0001. CLOUD 2023: 200-215 [doi]
- Cirrus: a Serverless Framework for End-to-end ML WorkflowsJoao Carreira, Pedro Fonseca, Alexey Tumanov, Andrew Zhang, Randy H. Katz. CLOUD 2019: 13-24 [doi]