Energy-Aware Workload Consolidation on GPU

@article{Li2011EnergyAwareWC,
  title={Energy-Aware Workload Consolidation on GPU},
  author={Dong Li and Surendra Byna and Srimat T. Chakradhar},
  journal={2011 40th International Conference on Parallel Processing Workshops},
  year={2011},
  pages={389-398}
}
  • Dong Li, Surendra Byna, Srimat T. Chakradhar
  • Published 2011
  • Computer Science
  • 2011 40th International Conference on Parallel Processing Workshops
  • Enterprise workloads like search, data mining and analytics, etc. typically involve a large number of users who are simultaneously using applications that are hosted on clusters of commodity computers. Use of GPUs for enterprise computing is challenging because of poor performance and higher energy consumption compared to running enterprise workloads on CPUs. In this paper, we show that the GPU work consolidation can improve system throughput and results in significant energy savings over… CONTINUE READING
    Runtime Systems and Scheduling Support for High-End CPU-GPU Architectures
    pVOCL: Power-Aware Dynamic Placement and Migration in Virtualized GPU Environments
    14
    A flexible scheduling framework for heterogeneous CPU-GPU clusters
    3
    Low-Energy Kernel Scheduling Approach for Energy Saving
    Power Aware Computing on GPUs
    67

    References

    Publications referenced by this paper.
    SHOWING 1-10 OF 30 REFERENCES
    An integrated GPU power and performance model
    445
    Enabling Task Parallelism in the CUDA Scheduler
    85
    A first look at integrated GPUs for green high-performance computing
    26
    Modeling GPU-CPU workloads and systems
    98