![](https://dblp.uni-trier.de./img/logo.320x120.png)
![search dblp search dblp](https://dblp.uni-trier.de./img/search.dark.16x16.png)
![search dblp](https://dblp.uni-trier.de./img/search.dark.16x16.png)
default search action
27th JSSPP 2024: San Francisco, CA, USA
- Dalibor Klusácek
, Julita Corbalán
, Gonzalo P. Rodrigo
:
Job Scheduling Strategies for Parallel Processing - 27th International Workshop, JSSPP 2024, San Francisco, CA, USA, May 31, 2024, Revised Selected Papers. Lecture Notes in Computer Science 14591, Springer 2025, ISBN 978-3-031-74429-7 - Dalibor Klusácek
, Václav Chlumský:
Real-Life HPC Workload Trace Featuring Refined Job Runtime Estimates. 1-19 - Monish Soundar Raj, Thomas MacDougall, Di Zhang, Dong Dai:
An Empirical Study of Machine Learning-Based Synthetic Job Trace Generation Methods. 20-39 - Hang Cui, Keichi Takahashi, Yoichi Shimomura, Hiroyuki Takizawa:
Clustering Based Job Runtime Prediction for Backfilling Using Classification. 40-59 - Vanamala Venkataswamy, Jake Grigsby, Andrew Grimshaw, Yanjun Qi:
Launchpad: Learning to Schedule Using Offline and Online RL Methods. 60-83 - Arup Kumar Sarker, Aymen Alsaadi, Niranda Perera, Mills Staylor, Gregor von Laszewski, Matteo Turilli, Ozgur Ozan Kilic, Mikhail Titov, André Merzky, Shantenu Jha, Geoffrey C. Fox:
Radical-Cylon: A Heterogeneous Data Pipeline for Scientific Computing. 84-102 - Mohammad Samadi, Tiago Carvalho, Luís Miguel Pinho, Sara Royuela:
Evaluation of Heuristic Task-to-Thread Mapping Using Static and Dynamic Approaches. 103-119 - Roy Nissim, Oded Schwartz
, Reut Shabo:
Challenges in Parallel Matrix Chain Multiplication. 120-140 - Daiki Nakai, Keichi Takahashi, Yoichi Shimomura, Hiroyuki Takizawa:
A Node Selection Method for on-Demand Job Execution with Considering Deadline Constraints. 141-160 - Sho Ishii, Keichi Takahashi
, Yoichi Shimomura, Hiroyuki Takizawa
:
Maximizing Energy Budget Utilization Using Dynamic Power Cap Control. 161-180 - Luc Angelelli, Danilo Carastan-Santos
, Pierre-François Dutot
:
Run Your HPC Jobs in Eco-Mode: Revealing the Potential of User-Assisted Power Capping in Supercomputing Systems. 181-196
![](https://dblp.uni-trier.de./img/cog.dark.24x24.png)
manage site settings
To protect your privacy, all features that rely on external API calls from your browser are turned off by default. You need to opt-in for them to become active. All settings here will be stored as cookies with your web browser. For more information see our F.A.Q.