A lightweight performance proxy for deep-learning model training on Amazon SageMaker

被引:0
|
作者
Tesser, Rafael Keller [1 ,2 ,3 ]
Marques, Alvaro [2 ]
Borin, Edson [2 ]
机构
[1] Univ Campinas Unicamp, Ctr Comp Engn & Sci, Sao Paulo, Brazil
[2] Univ Campinas Unicamp, Inst Comp, Sao Paulo, Brazil
[3] Fed Univ Technol Parana UTFPR, Bachelors Course Comp Sci, Santa Helena, PR, Brazil
来源
关键词
cloud computing; cost prediction; deep learning; machine learning; performance prediction;
D O I
10.1002/cpe.8104
中图分类号
TP31 [计算机软件];
学科分类号
081202 ; 0835 ;
摘要
Cloud computing has become popular for training deep-learning (DL) models, avoiding the costs of acquiring and maintaining on-premise systems. SageMaker is a cloud service that automates the execution of DL workloads. Its features include automatic hyperparameter optimization and use of spot instances. Nonetheless, it does not assist in selecting the right instance type for a workload. In public clouds, rent price depends on the configuration of the chosen instance type. Advanced and faster instances are typically more expensive, but not always the best choice. To select the optimal instance type, users must compare the workload's relative performance (and hence cost) on several candidates. Building on the execution profiles of multiple DL applications, we model the performance and cost of training DL applications on SageMaker and propose a lightweight technique to estimate these at low temporal and monetary cost. This method is a performance proxy that can be used to replace more expensive performance measurement procedures. So, it could speed up any technique that relies on such measurements. We show how it can help cloud customers seeking suitable instance types to train DL models, and that it can accurately predict the performance of different instance types when training these models on SageMaker.
引用
收藏
页数:22
相关论文
共 50 条
  • [31] Predicting progression to AD using a deep-learning model
    Kelsey R.
    Nature Reviews Neurology, 2019, 15 (9) : 492 - 492
  • [32] Stock Price Prediction using Deep-Learning Model
    Pralcash, Tamil A.
    Sudha
    2024 4TH INTERNATIONAL CONFERENCE ON PERVASIVE COMPUTING AND SOCIAL NETWORKING, ICPCSN 2024, 2024, : 533 - 538
  • [33] Deep-learning model for screening sepsis using electrocardiography
    Joon-myoung Kwon
    Ye Rang Lee
    Min-Seung Jung
    Yoon-Ji Lee
    Yong-Yeon Jo
    Da-Young Kang
    Soo Youn Lee
    Yong-Hyeon Cho
    Jae-Hyun Shin
    Jang-Hyeon Ban
    Kyung-Hee Kim
    Scandinavian Journal of Trauma, Resuscitation and Emergency Medicine, 29
  • [34] Intuitive physics learning in a deep-learning model inspired by developmental psychology
    Luis S. Piloto
    Ari Weinstein
    Peter Battaglia
    Matthew Botvinick
    Nature Human Behaviour, 2022, 6 : 1257 - 1267
  • [35] Intuitive physics learning in a deep-learning model inspired by developmental psychology
    Piloto, Luis S.
    Weinstein, Ari
    Battaglia, Peter
    Botvinick, Matthew
    NATURE HUMAN BEHAVIOUR, 2022, 6 (09) : 1257 - +
  • [36] Hierarchical image classification using transfer learning to improve deep learning model performance for amazon parrots
    Kim, Jung-Il
    Baek, Jong-Won
    Kim, Chang-Bae
    SCIENTIFIC REPORTS, 2025, 15 (01):
  • [37] Training deep-learning segmentation models from severely limited data
    Zhao, Yao
    Rhee, Dong Joo
    Cardenas, Carlos
    Court, Laurence E.
    Yang, Jinzhong
    MEDICAL PHYSICS, 2021, 48 (04) : 1697 - 1706
  • [38] Subgroup Comparison of Electrocardiogram Deep-Learning Model Performance for Estimating Coronary Artery Calcium Score
    Yoo, Hakje
    Hwang, Sung Ho
    Yum, Yunjin
    Kim, Jong-Ho
    Joo, Hyung Joon J.
    CIRCULATION, 2022, 146
  • [39] Performance of deep-learning based approaches to improve polygenic scores
    Kelemen, Martin
    Xu, Yu
    Inouye, Michael
    EUROPEAN JOURNAL OF HUMAN GENETICS, 2024, 32 : 1635 - 1635
  • [40] Performance of a Deep-Learning Neural Network Model in Assessing Skeletal Maturity on Pediatric Hand Radiographs
    Larson, David B.
    Chen, Matthew C.
    Lungren, Matthew P.
    Halabi, Safwan S.
    Stence, Nicholas V.
    Langlotz, Curtis P.
    RADIOLOGY, 2018, 287 (01) : 313 - 322