Dwarf in a Giant: Enabling Scalable, High-Resolution HPC Energy Monitoring for Real-Time Profiling and Analytics

06/07/2018
by   Antonio Libri, et al.
0

Energy efficiency, predictive maintenance and security are today key challenges in High Performance Computing (HPC). In order to be addressed, accurate monitoring of the power and performance, along with real-time analysis, are required. However, modern HPC systems still have limited power introspection capabilities, lacking fine-grain and accurate measurements, as well as dedicated systems for live edge analysis. With the goal of bridging this gap, we developed DiG (Dwarf in a Giant), an enabler framework for green computing, predictive maintenance and security of supercomputers. DiG provides high quality monitoring of power and energy consumption of HPC nodes. It is completely out-of-band and can be deployed in any hardware architecture/large-scale datacenter at a low cost. It supports (i) fine-grained power monitoring up to 20us (50x improvement in resolution than state-of-the-art - SoA); (ii) below 1 power measurements, which makes it suitable for the most rigorous requirements of HPC ranking lists (i.e. Top500); (iii) high-precision time-stamping (sub-microsecond), which is three order of magnitude better than SoA; (vi) real-time profiling, useful for debugging energy aware applications; (v) possibility for edge analytics machine learning algorithms, with no impact on the HPC computing resources. Our experimental results show it can capture key spectral features of real computing applications and network intrusion attacks, opening new opportunities for learning algorithms on power management, maintenance and security of supercomputers.

READ FULL TEXT

page 9

page 10

research
07/11/2023

Design of an energy aware petaflops class high performance cluster based on power architecture

In this paper we present D.A.V.I.D.E. (Development for an Added Value In...
research
02/22/2021

BayesPerf: Minimizing Performance Monitoring Errors Using Bayesian Statistics

Hardware performance counters (HPCs) that measure low-level architectura...
research
12/01/2019

LEGaTO: Low-Energy, Secure, and Resilient Toolset for Heterogeneous Computing

The LEGaTO project leverages task-based programming models to provide a ...
research
03/04/2021

The RECIPE Approach to Challenges in Deeply Heterogeneous High Performance Systems

RECIPE (REliable power and time-ConstraInts-aware Predictive management ...
research
09/09/2021

3D Real-Time Supercomputer Monitoring

Supercomputers are complex systems producing vast quantities of performa...
research
05/13/2021

Toward Real-time Analysis of Experimental Science Workloads on Geographically Distributed Supercomputers

Massive upgrades to science infrastructure are driving data velocities u...
research
01/29/2018

A cost effective and reliable environment monitoring system for HPC applications

We present a slow control system to gather all relevant environment info...

Please sign up or login with your details

Forgot password? Click here to reset