User Tools

Site Tools


projects:caas

Differences

This shows you the differences between two versions of the page.

Link to this comparison view

Both sides previous revisionPrevious revision
Next revision
Previous revision
projects:caas [2024/06/28 20:17] – [Publications] rajuprojects:caas [2024/06/30 18:54] (current) – [Support] raju
Line 11: Line 11:
 ====== Investigators ====== ====== Investigators ======
  
-  * Raju Rangaswami, Principal Investigator, FIU +  * [[https://acadent.github.io/|Raju Rangaswami]], Principal Investigator, FIU 
-  * Ming Zhao, Principal Investigator, ASU +  * [[https://visa.lab.asu.edu/web/people/mingzhao/|Ming Zhao]], Principal Investigator, ASU 
-  * Jason X Liu, Co-Principal Investigator +  * [[https://people.cis.fiu.edu/liux/|Jason X Liu]], Co-Principal Investigator 
-  * Giri Narasimhan, Co-Principal Investigator+  * [[https://users.cs.fiu.edu/~giri/|Giri Narasimhan]], Co-Principal Investigator
  
  
Line 21: Line 21:
  
   * Dr. Liana Valdes (PhD graduate)    * Dr. Liana Valdes (PhD graduate) 
 +  * Dr. Qirui Yang (PhD graduate)
   * Alexis Gonzales (PhD student)   * Alexis Gonzales (PhD student)
-  * Pratik Poudel (PhD student) +  * Pratik Poudel (PhD student) 
-  * Qirui Yang (PhD student) +
   * Kritshekhar Jha (PhD student)   * Kritshekhar Jha (PhD student)
   * Emam Hossain (PhD student)   * Emam Hossain (PhD student)
Line 32: Line 32:
   * Lester Fernandez (Undergraduate student)   * Lester Fernandez (Undergraduate student)
   * Lillian Seebold (Undergraduate student)   * Lillian Seebold (Undergraduate student)
 +
 +===== Abstract =====
 +
 +Caching has been a consistent tool of designers of high-performance, scalable computing systems, but it has been deplo
 +yed in so many ways that it can be difficiult to standardize and scale in cloud systems. This project elevates the use
 + of caching in cloud-scale storage system to a "first-class citizen" by designing and implementing generalized Caching
 +-as-a-Service (CaaS). CaaS defines transformative technology along four complementary dimensions. First, it defines a 
 +new abstraction and architecture for storage caches whereby storage stacks can easily embed lightweight CaaS clients w
 +ithin a distributed compute infrastructure. Second, CaaS formulates and theoretically analyzes distributed caching alg
 +orithms that operate within the CaaS service such that individual CaaS server nodes cooperate towards achieving global
 +ly optimal caching decisions. Third, the distributed CaaS clients and servers are co-designed to achieve strict durabi
 +lity and fault-tolerance in their implementations. And finally, all of the CaaS advancements are driven by insights ge
 +nerated from a detailed whole-system simulator that models the diverse cache devices, network configurations, and appl
 +ication demand.
 +
 +The CaaS project supports a broad spectrum of applications that run in the private and public clouds. The CaaS project
 + showcases these improvements via use cases in three important computing paradigms: Cloud, Big Data, and Deep Learning
 +. The findings from the CaaS project create new educational content and research opportunities for undergraduates, Mas
 +ters, and PhD students via exposition and involvement of these student groups within classroom projects and laboratory
 + work. The outreach activities focus on the recruitment of under-represented students from minority groups in Computer
 + Science for participation in the project. The outcomes of the CaaS project include open source software and public di
 +ssemination of research findings which help transition of the new technologies to practice.
 +
 +
  
 ====== Publications ====== ====== Publications ======
 +  * Lu, Xiaoyang and Najafi, Hamed and Liu, Jason and Sun, Xian-He, CHROME: Concurrency-Aware Holistic Cache Management Framework with Online Reinforcement Learning. 2024 IEEE International Symposium on High-Performance Computer Architecture (HPCA) 2024.
   * Maruf, Adnan and Carlson, Daniel and Ghosh, Ashikee and Saha, Manoj and Bhimani, Janki and Rangaswami, Raju, Allocation Policies Matter for Hybrid Memory Systems (Poster and Extended Abstract). IEEE International Conference on High-Performance Parallel and Distributed Computing 2023.    * Maruf, Adnan and Carlson, Daniel and Ghosh, Ashikee and Saha, Manoj and Bhimani, Janki and Rangaswami, Raju, Allocation Policies Matter for Hybrid Memory Systems (Poster and Extended Abstract). IEEE International Conference on High-Performance Parallel and Distributed Computing 2023. 
   * Steven Lyons, Raju Rangaswami,  Finding optimal non-datapath caching strategies via network flow. Theoretical computer science, 2023.    * Steven Lyons, Raju Rangaswami,  Finding optimal non-datapath caching strategies via network flow. Theoretical computer science, 2023. 
-  * Pratik Poudel. Storage System Trace Characterization, Compression, and Synthesis using Machine Learning – An Extended Abstract. International Conference on Principles of Advanced Discrete Simulation (PADS) 2023. +  * Q. Yang, R. Jin, AdaCache: A Disaggregated Cache System with Adaptive Block Size for Cloud Block Storage.  IEEE International Conference on Cloud Computing 2023. 
-  * Rangaswami, Raju. (2022). FAB Storage for the Hybrid Cloud. IEEE International Conference on Networking, Architecture and Storage (NAS2022.  +  * Pratik Poudel. Storage System Trace Characterization, Compression, and Synthesis using Machine Learning – An Extended Abstract. International Conference on Principles of Advanced Discrete Simulation (PADS) 2023.  
-  * LuXiaoyang and NajafiHamed and LiuJason and SunXian-He, CHROME: Concurrency-Aware Holistic Cache Management Framework with Online Reinforcement Learning2024 IEEE International Symposium on High-Performance Computer Architecture (HPCA2024.  +  * Lyons, Steven, Raju Rangaswami, and Ning Xie, Finding optimal non-datapath caching strategies via network flow, Journal of Theoretical Computer Science 2023. 
-  * LyonsStevenRaju Rangaswami, and Ning XieFinding optimal non-datapath caching strategies via network flowJournal of Theoretical Computer Science (2023).+  * Zhao, Ming, Kritshekhar Jha, and Sungho Hong, GPU-enabled function-as-a-service for machine learning inference, IEEE International Parallel and Distributed Processing Symposium (IPDPS2023
 +  * Lixi ZhouJiaqing ChenAmitabh Das, Hong Min, Lei Yu, Ming Zhao, and Jia ZouServing deep learning models with deduplication from relational databasesProc. VLDB Endow. 15, 10 (June 2022). 
 +  * Q. YangR. JinB. DavisD. Inupakutika and M. ZhaoPerformance Evaluation on CXL-enabled Hybrid Memory Pool2022 IEEE International Conference on Networking, Architecture and Storage (NAS2022,
   *  Jason Liu, Simulus: Easy Breezy Simulation in Python, Winter Simulation Conference (WSC) 2020.   *  Jason Liu, Simulus: Easy Breezy Simulation in Python, Winter Simulation Conference (WSC) 2020.
   * Adnan Maruf, Ashikee Ghosh, Janki Bhimani, Daniel Campello, Andy Rudoff, Raju Rangaswami, MULTI-CLOCK: Dynamic Tiering for Hybrid Memory Systems, IEEE HPCA 2022.   * Adnan Maruf, Ashikee Ghosh, Janki Bhimani, Daniel Campello, Andy Rudoff, Raju Rangaswami, MULTI-CLOCK: Dynamic Tiering for Hybrid Memory Systems, IEEE HPCA 2022.
 +  * Rangaswami, Raju. (2022). FAB Storage for the Hybrid Cloud. IEEE International Conference on Networking, Architecture and Storage (NAS) 2022. 
   * Liana V. Rodriguez, Alexis Gonzalez, Pratik Poudel, Raju Rangaswami, and Jason Liu, Unifying the data center caching layer: feasible? profitable?,  ACM/USENIX HotStorage 2021.   * Liana V. Rodriguez, Alexis Gonzalez, Pratik Poudel, Raju Rangaswami, and Jason Liu, Unifying the data center caching layer: feasible? profitable?,  ACM/USENIX HotStorage 2021.
-  * ZhaoMingKritshekhar Jha, and Sungho HongGPU-enabled function-as-a-service for machine learning inferenceIEEE International Parallel and Distributed Processing Symposium (IPDPS2023+  * Learning Cache Replacement with CACHEUSLiana V. Rodriguez, Farzana Yusuf, Steven Lyons, Eysler PazRaju Rangaswami, and Jason LiuMing ZhaoGiri Narasimhan, USENIX File and Storage Technologies (FAST), February, 2021
-  * Lixi ZhouJiaqing ChenAmitabh DasHong MinLei YuMing Zhaoand Jia Zou2022Serving deep learning models with deduplication from relational databasesProcVLDB Endow. 15, 10 (June 2022)+  * ZouJ.ZhaoM.ShiJ.& Wang, C., Watson: A workflow-based data storage optimizer for analyticsIn 36th IntlConfon Massive Storage Systems and Technology 2020. 
-  * QYangRJin, B. Davis, D. Inupakutika and M. Zhao, Performance Evaluation on CXL-enabled Hybrid Memory Pool, 2022 IEEE International Conference on Networking, Architecture and Storage (NAS) 2022,+ 
 +===== Public Software ===== 
 + 
 +  * [[https://github.com/sylab/cacheus|Sources for the paper titled "Learning Cache Replacement with CACHEUS"Proceed 
 +ings of USENIX FAST 2021.]] 
 + 
 ====== Support ====== ====== Support ======
  
-This work has been supported by the National Science Foundation award [[https://www.nsf.gov/awardsearch/showAward?AWD_ID=1956229&HistoricalAwards=false|CNS-1956229]].+This work has been supported by the National Science Foundation awards [[https://www.nsf.gov/awardsearch/showAward?AWD_ID=1956229&HistoricalAwards=false|CNS-1956229]] and [[https://www.nsf.gov/awardsearch/showAward?AWD_ID=1955593&HistoricalAwards=false|CNS-1955593|]].
projects/caas.1719605839.txt.gz · Last modified: by raju