Job Scheduling Strategies for Parallel Processing
28th International Workshop, JSSPP 2025, Milan, Italy, June 3-4, 2025, Revised Selected Papers
Herausgeber: Klusá¿ek, Dalibor; Rodrigo, Gonzalo P.; Corbalán, Julita
Job Scheduling Strategies for Parallel Processing
28th International Workshop, JSSPP 2025, Milan, Italy, June 3-4, 2025, Revised Selected Papers
Herausgeber: Klusá¿ek, Dalibor; Rodrigo, Gonzalo P.; Corbalán, Julita
- Broschiertes Buch
- Merkliste
- Auf die Merkliste
- Bewerten Bewerten
- Teilen
- Produkt teilen
- Produkterinnerung
- Produkterinnerung
This book constitutes the refereed proceedings of the 28th International Workshop on Job Scheduling Strategies for Parallel Processing, JSSPP 2025, held in Milan, Italy, during June 3-4, 2025. The 17 full papers and 1 keynote paper presented in this book were carefully reviewed and selected from 25 submissions. These papers covered interesting topics within the resource management and scheduling domains.
Andere Kunden interessierten sich auch für
- Tom TaulliAzure AI Fundamentals (AI-900) Study Guide38,99 €
- Challenges and Algorithms for Knowledge Discovery from Data51,99 €
- Jeremy KahnMastering AI15,99 €
- Anil AnanthaswamyWhy Machines Learn18,27 €
- Thomas KesselChatGPT und Large Language Models? Frag doch einfach!19,90 €
- Stefan WagenscheidtDas ChatGPT Handbuch für Superkräfte: ChatGPT als Chance! Die wichtigsten PROMPTS für automatische Kundenkommunikation, Textgenerierung, Kunst, Marketing, Datenanalyse und personalisierte Interaktion19,90 €
- Ehsan SheroyDiving Into Parallel Universes22,99 €
-
-
-
This book constitutes the refereed proceedings of the 28th International Workshop on Job Scheduling Strategies for Parallel Processing, JSSPP 2025, held in Milan, Italy, during June 3-4, 2025. The 17 full papers and 1 keynote paper presented in this book were carefully reviewed and selected from 25 submissions. These papers covered interesting topics within the resource management and scheduling domains.
Produktdetails
- Produktdetails
- Lecture Notes in Computer Science Nr.16210
- Verlag: Springer International Publishing AG / Springer-Verlag GmbH
- Artikelnr. des Verlages: 89587405
- Seitenzahl: 350
- Erscheinungstermin: 4. Dezember 2025
- Englisch
- ISBN-13: 9783032105066
- ISBN-10: 3032105064
- Artikelnr.: 75536161
- Herstellerkennzeichnung
- Springer-Verlag GmbH
- Tiergartenstr. 17
- 69121 Heidelberg
- ProductSafety@springernature.com
- Lecture Notes in Computer Science Nr.16210
- Verlag: Springer International Publishing AG / Springer-Verlag GmbH
- Artikelnr. des Verlages: 89587405
- Seitenzahl: 350
- Erscheinungstermin: 4. Dezember 2025
- Englisch
- ISBN-13: 9783032105066
- ISBN-10: 3032105064
- Artikelnr.: 75536161
- Herstellerkennzeichnung
- Springer-Verlag GmbH
- Tiergartenstr. 17
- 69121 Heidelberg
- ProductSafety@springernature.com
.
How to make the ultimate goal of energy
efficient data centers a reality. .
Power
Aware Scheduling for Multi
Center HPC Electricity Cost Optimization. .
Job Grouping Based Intelligent Resource Prediction Framework. .
Kubernetes Scheduling with Checkpoint/Restore: Challenges and Open Problems. .
Adaptive Carbon
Aware scheduling policies for HPC systems. .
Resource elasticity for scientific platforms on HPC infrastructure. .
More for Less: Integrating Capability
Predominant and Capacity
Predominant Computing. .
Workflow Batch Job Scheduling with Considering Task Dependencies. .
Quality
Aware Energy
Efficient Scheduling of Moldable
Parallel Streaming Computations on Heterogeneous Multicore CPUs with DVFS. .
Optimizing Energy Efficiency in Heterogeneous Computing via Multi
Objective Scheduling with Reinforcement Learning. .
Static powercap vs. EAR hard
powercap: Performance evaluation. .
Deep RC: A Scalable Data Engineering and Deep Learning Pipeline. .
Fedsort: An Optimized Federated Scheduling Strategy for Cloud Workloads with Inter
task Dependencies. .
Evaluating the Impact of Algorithmic Components on Task Graph Scheduling. .
Communication
balanced Job Allocation using SLURM. .
Performance Models to support HPC Co
Scheduling. .
ELiSE: A tool to support algorithmic design for HPC co
scheduling. .
Deadline Miss Minimization Scheduling for License
Constrained CAE Jobs in Hybrid Cloud Infrastructure.
How to make the ultimate goal of energy
efficient data centers a reality. .
Power
Aware Scheduling for Multi
Center HPC Electricity Cost Optimization. .
Job Grouping Based Intelligent Resource Prediction Framework. .
Kubernetes Scheduling with Checkpoint/Restore: Challenges and Open Problems. .
Adaptive Carbon
Aware scheduling policies for HPC systems. .
Resource elasticity for scientific platforms on HPC infrastructure. .
More for Less: Integrating Capability
Predominant and Capacity
Predominant Computing. .
Workflow Batch Job Scheduling with Considering Task Dependencies. .
Quality
Aware Energy
Efficient Scheduling of Moldable
Parallel Streaming Computations on Heterogeneous Multicore CPUs with DVFS. .
Optimizing Energy Efficiency in Heterogeneous Computing via Multi
Objective Scheduling with Reinforcement Learning. .
Static powercap vs. EAR hard
powercap: Performance evaluation. .
Deep RC: A Scalable Data Engineering and Deep Learning Pipeline. .
Fedsort: An Optimized Federated Scheduling Strategy for Cloud Workloads with Inter
task Dependencies. .
Evaluating the Impact of Algorithmic Components on Task Graph Scheduling. .
Communication
balanced Job Allocation using SLURM. .
Performance Models to support HPC Co
Scheduling. .
ELiSE: A tool to support algorithmic design for HPC co
scheduling. .
Deadline Miss Minimization Scheduling for License
Constrained CAE Jobs in Hybrid Cloud Infrastructure.
.
How to make the ultimate goal of energy
efficient data centers a reality. .
Power
Aware Scheduling for Multi
Center HPC Electricity Cost Optimization. .
Job Grouping Based Intelligent Resource Prediction Framework. .
Kubernetes Scheduling with Checkpoint/Restore: Challenges and Open Problems. .
Adaptive Carbon
Aware scheduling policies for HPC systems. .
Resource elasticity for scientific platforms on HPC infrastructure. .
More for Less: Integrating Capability
Predominant and Capacity
Predominant Computing. .
Workflow Batch Job Scheduling with Considering Task Dependencies. .
Quality
Aware Energy
Efficient Scheduling of Moldable
Parallel Streaming Computations on Heterogeneous Multicore CPUs with DVFS. .
Optimizing Energy Efficiency in Heterogeneous Computing via Multi
Objective Scheduling with Reinforcement Learning. .
Static powercap vs. EAR hard
powercap: Performance evaluation. .
Deep RC: A Scalable Data Engineering and Deep Learning Pipeline. .
Fedsort: An Optimized Federated Scheduling Strategy for Cloud Workloads with Inter
task Dependencies. .
Evaluating the Impact of Algorithmic Components on Task Graph Scheduling. .
Communication
balanced Job Allocation using SLURM. .
Performance Models to support HPC Co
Scheduling. .
ELiSE: A tool to support algorithmic design for HPC co
scheduling. .
Deadline Miss Minimization Scheduling for License
Constrained CAE Jobs in Hybrid Cloud Infrastructure.
How to make the ultimate goal of energy
efficient data centers a reality. .
Power
Aware Scheduling for Multi
Center HPC Electricity Cost Optimization. .
Job Grouping Based Intelligent Resource Prediction Framework. .
Kubernetes Scheduling with Checkpoint/Restore: Challenges and Open Problems. .
Adaptive Carbon
Aware scheduling policies for HPC systems. .
Resource elasticity for scientific platforms on HPC infrastructure. .
More for Less: Integrating Capability
Predominant and Capacity
Predominant Computing. .
Workflow Batch Job Scheduling with Considering Task Dependencies. .
Quality
Aware Energy
Efficient Scheduling of Moldable
Parallel Streaming Computations on Heterogeneous Multicore CPUs with DVFS. .
Optimizing Energy Efficiency in Heterogeneous Computing via Multi
Objective Scheduling with Reinforcement Learning. .
Static powercap vs. EAR hard
powercap: Performance evaluation. .
Deep RC: A Scalable Data Engineering and Deep Learning Pipeline. .
Fedsort: An Optimized Federated Scheduling Strategy for Cloud Workloads with Inter
task Dependencies. .
Evaluating the Impact of Algorithmic Components on Task Graph Scheduling. .
Communication
balanced Job Allocation using SLURM. .
Performance Models to support HPC Co
Scheduling. .
ELiSE: A tool to support algorithmic design for HPC co
scheduling. .
Deadline Miss Minimization Scheduling for License
Constrained CAE Jobs in Hybrid Cloud Infrastructure.