NEW APPROACH TO PREDICTION OF MEMORY LEAK IN HPC HIGH-PERFORMANCE COMPUTING BY USING MPI (MESSAGE PASSING INTERFACE)

Authors

DOI:

https://doi.org/10.69923/IJAS.2024.010101

Keywords:

HPC, MPI, Machine Learning, Prediction Model, Algorithm, Anomaly Detection, Random Forests, Decision Trees

Abstract

The analysis has been done to describe how the memory leaks in HPC system can be done better that has been utilised by MPI. The beginning of this work has been done by defining a introduction which illustrates the significance of the memory leak analysis in HPC. the entire work started with this segment and in identifying this challenge, it also illustrates the Artificial Intelligence and the interface known as the message passing interface. However, the entire framework illustrates diagnosis and anomalies, detailing memory leak prediction approaches and techniques. Hence, the main focus of this method has been to enhance MPI based HPC memory leak analysis. Shipping in containers and algorithmic forecasting are used to achieve this aim. The approach covers MPI data collection and Machine Learning model development in detail. The findings and analysis imply that Decision Trees and Random Forests may efficiently discover abnormalities in many HPC systems. Success with these strategies supports this. In determination, choice of features, model versatility, and multidisciplinary cooperation are crucial for boosting the leakage of memory estimation in supercomputer mechanisms

Downloads

Download data is not yet available.

Author Biographies

  • Dr. Iehab AbdulJabbar Kamil, University of Anbar

    Born in Iraq, Baghdad, 11-11-1976, he obtained a bachelor’s degree from Al-Rafidain University College in computer science. He holds a master's degree from Belarusian State University of Informatics and Radioelectronics in Computer Science - Information Security. He obtained a doctorate from Tomsk State University (Russian Federation). He is fluent in English and Russian. He worked as an employee in the Ministry of Science and Technology, Iraq - Baghdad. He worked as an assistant lecturer at Saratov State University. He currently works as a lecturer at Anbar University, Department of Information Systems, and has more than 10 research papers in national and international conferences. His area of interest is Fault Tolerance, Real-Time System and Computer security.

  • Dr. Mohanad A. AL-Askari, Lecturer

    Information Systems - Computer Sciences and IT

Downloads

Published

— Updated on 06/30/2024

Issue

Section

Articles

How to Cite

[1]
“NEW APPROACH TO PREDICTION OF MEMORY LEAK IN HPC HIGH-PERFORMANCE COMPUTING BY USING MPI (MESSAGE PASSING INTERFACE)”, IJApSc, vol. 1, no. 1, pp. 1–8, Jun. 2024, doi: 10.69923/IJAS.2024.010101.

Most read articles by the same author(s)

<< < 1 2 

Similar Articles

You may also start an advanced similarity search for this article.