Serverless computing has become popular with cloud providers because of its ease of use by application developers, its lightweight runtime, ease of maangement, resource elasticity and fine-grained billing. Adapting data analytics applications to serverless platforms pose new challenges. To maximize the benefits of serverless, the data analytics systems must be well designed, implemented, maintained, and optimized to efficiently process the massive amount of intermediate data, achieve the best possible job performance with a limited budget, minimize the cost without violating the QoS objective, etc. Recent work on serverless analytics has demonstrated the benefits of serverless architectures for resource- and cost-efficient data analytics.
This workshop aims to focus on these problems, both from application development side and serverless system infrastructure side. It aims to bring together researchers and practitioners from data analytics and serverless computing communities to address the emerging need for serverless data analytic systems and applications. We welcome new ideas and critical research on Serverless Data Analytics as well as reports on best practices.
The topics covered in the workshop include, but are not limited to:
- Serverless architecture for data analytics
- Task scheduling for serverless analytics
- Intermediate storage systems for serverless analytics
- Fine-grained resource allocation for serverless analytics
- High performance runtime for serverless analytics
- Query optimization in a serverless environment
- Data caching for serverless analytics
The workshop will have one keynote and 3-4 accepted papers with sufficient time for discussions.
Keynote Speaker: Gustavo Alonso, ETH Zürich
Paper submission is to be done through CMT at the following site: https://cmt3.research.microsoft.com/SDA2023
All papers will be peer reviewed by the Program Committee. The submitted papers should not have been previously published or concurrently under consideration. Work-in-progress papers that are shorter in length are acceptable and encouraged. The workshop will be in-person and one author of each paper is required to register.
Regular papers are 12 pages (excluding references); shorter, work-in-progress papers are limited to 6 pages (excluding references). PVLDB formatting guidelines and styles apply. Please consult http://vldb.org/pvldb/volumes/17/formatting for templates.
- Papers due: 22 June 2023, 12:00pm EST
- Author notification: 15 July 2023
- Camera-ready: 22 July 2023, 12:00pm EST
The Workshop Proceedings will be online, following VLDB 2023 process for all workshops.
- Ashraf Aboulnaga, Qatar Computing Research Institute
- Gustavo Alonso, ETH Zürich
- Samer Al-Kiswani, University of Waterloo
- Khuzaima Daudjee, University of Waterloo
- Niv Dayan, University of Toronto
- Schahram Dustdar, TU Wien
- Robin Grosman, Huawei Technologies Canada
- Alexandru Iosup, Vrije Universiteit Amsterdam
- Guoliang Li, Tsinghua University
- Samuel Madden, MIT
- Mohammad Shahrad, University of British Columbia
- Jianguo Wang, Purdue University