Adaptive Learning for Concept Drift in Application Performance Modeling

被引:7
|
作者
Madireddy, Sandeep [1 ]
Balaprakash, Prasanna [1 ]
Carns, Philip [1 ]
Latham, Robert [1 ]
Lockwood, Glenn K. [2 ]
Ross, Robert [1 ]
Snyder, Shane [1 ]
Wild, Stefan M. [1 ]
机构
[1] Argonne Natl Lab, Lemont, IL 60439 USA
[2] Lawrence Berkeley Natl Lab, Berkeley, CA USA
关键词
D O I
10.1145/3337821.3337922
中图分类号
TP3 [计算技术、计算机技术];
学科分类号
0812 ;
摘要
Supervised learning is a promising approach for modeling the performance of applications running on large HPC systems. A key assumption in supervised learning is that the training and testing data are obtained under the same conditions. However, in production HPC systems these conditions might not hold because the conditions of the platform can change over time as a result of hardware degradation, hardware replacement, software upgrade, and configuration updates. These changes could alter the data distribution in a way that affects the accuracy of the predictive performance models and render them less useful; this phenomenon is referred to as concept drift. Ignoring concept drift can lead to suboptimal resource usage and decreased efficiency when those performance models are deployed for tuning and job scheduling in production systems. To address this issue, we propose a concept-drift-aware predictive modeling approach that comprises two components: (1) an online Bayesian changepoint detection method that can automatically identify the location of events that lead to concept drift in near-real time and (2) a moment-matching transformation inspired by transfer learning that converts the training data collected before the drift to be useful for retraining. We use application input/output performance data collected on Cori, a production supercomputing system at the National Energy Research Scientific Computing Center, to demonstrate the effectiveness of our approach. The results show that concept-drift-aware models obtain significant improvement in accuracy; the median absolute error of the best-performing Gaussian process regression improved by 58.8% when the proposed approaches were used.
引用
收藏
页数:11
相关论文
共 50 条
  • [11] Adaptive classification using incremental learning for seismic-volcanic signals with concept drift
    Castro-Cabrera, Paola
    Castellanos-Dominguez, G.
    Mera, Carlos
    Franco-Marin, Luis
    Orozco-Alzate, Mauricio
    JOURNAL OF VOLCANOLOGY AND GEOTHERMAL RESEARCH, 2021, 413
  • [12] Adaptive Ensemble Based Learning in Non-stationary Environments with Variable Concept Drift
    Susnjak, Teo
    Barczak, Andre L. C.
    Hawick, Ken A.
    NEURAL INFORMATION PROCESSING: THEORY AND ALGORITHMS, PT I, 2010, 6443 : 438 - 445
  • [13] Two-Stage Adaptive Ensemble Learning Method for Different Types of Concept Drift
    Guo, Husheng
    Zhang, Yang
    Wang, Wenjian
    Jisuanji Yanjiu yu Fazhan/Computer Research and Development, 2024, 61 (07): : 1799 - 1811
  • [14] FedNN: Federated learning on concept drift data using weight and adaptive group normalizations
    Kang, Myeongkyun
    Kim, Soopil
    Jin, Kyong Hwan
    Adeli, Ehsan
    Pohl, Kilian M.
    Park, Sang Hyun
    PATTERN RECOGNITION, 2024, 149
  • [15] Concept Drift Learning with Alternating Learners
    Xu, Yunwen
    Xu, Rui
    Yan, Weizhong
    Ardis, Paul
    2017 INTERNATIONAL JOINT CONFERENCE ON NEURAL NETWORKS (IJCNN), 2017, : 2104 - 2111
  • [16] Predictive learning models for concept drift
    Case, J
    Jain, S
    Kaufmann, S
    Sharma, A
    Stephan, F
    ALGORITHMIC LEARNING THEORY, 1998, 1501 : 276 - 290
  • [17] Predictive learning models for concept drift
    Case, J
    Jain, S
    Kaufmann, S
    Sharma, A
    Stephan, F
    THEORETICAL COMPUTER SCIENCE, 2001, 268 (02) : 323 - 349
  • [18] Learning under Concept Drift: A Review
    Lu, Jie
    Liu, Anjin
    Dong, Fan
    Gu, Feng
    Gama, Joao
    Zhang, Guangquan
    IEEE TRANSACTIONS ON KNOWLEDGE AND DATA ENGINEERING, 2019, 31 (12) : 2346 - 2363
  • [19] Tiny Machine Learning for Concept Drift
    Disabato, Simone
    Roveri, Manuel
    IEEE TRANSACTIONS ON NEURAL NETWORKS AND LEARNING SYSTEMS, 2024, 35 (06) : 8470 - 8481
  • [20] An Ensemble Learning Approach for Concept Drift
    Liao, Jian-Wei
    Dai, Bi-Ru
    2014 INTERNATIONAL CONFERENCE ON INFORMATION SCIENCE AND APPLICATIONS (ICISA), 2014,