Adaptive Performance Optimization under Power Constraint in Multi-thread Applications with Diverse Scalability

07/30/2017
by   Stefano Conoci, et al.
0

In modern data centers, energy usage represents one of the major factors affecting operational costs. Power capping is a technique that limits the power consumption of individual systems, which allows reducing the overall power demand at both cluster and data center levels. However, literature power capping approaches do not fit well the nature of important applications based on first-class multi-thread technology. For these applications performance may not grow linearly as a function of the thread-level parallelism because of the need for thread synchronization while accessing shared resources, such as shared data. In this paper we consider the problem of maximizing the application performance under a power cap by dynamically tuning the thread-level parallelism and the power state of the CPU-cores. Based on experimental observations, we design an adaptive technique that selects in linear time the optimal combination of thread-level parallelism and CPU-core power state for the specific workload profile of the multi-threaded application. We evaluate our proposal by relying on different benchmarks, configured to use different thread synchronization methods, and compare its effectiveness to different state-of-the-art techniques.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
08/18/2019

Workload-Aware Opportunistic Energy Efficiency in Multi-FPGA Platforms

The continuous growth of big data applications with high computational a...
research
06/02/2019

Mutable Locks: Combining the Best of Spin and Sleep Locks

In this article we present Mutable Locks, a synchronization construct wi...
research
08/22/2020

Online Adaptive Learning for Runtime Resource Management of Heterogeneous SoCs

Dynamic resource management has become one of the major areas of researc...
research
04/11/2019

Energy-Efficient High-Throughput Data Transfers via Dynamic CPU Frequency and Core Scaling

The energy footprint of global data movement has surpassed 100 terawatt ...
research
06/19/2018

COUNTDOWN - three, two, one, low power! A Run-time Library for Energy Saving in MPI Communication Primitives

Power consumption is a looming treat in today's computing progress. In s...
research
10/09/2020

A Vertex Cut based Framework for Load Balancing and Parallelism Optimization in Multi-core Systems

High-level applications, such as machine learning, are evolving from sim...
research
04/20/2022

MashUp: Scaling TCAM-based IP Lookup to Larger Databases by Tiling Trees

Ternary content addressable memories (TCAMs) are commonly used to implem...

Please sign up or login with your details

Forgot password? Click here to reset