Reducing Training Time in Skin Cancer Classification Using Convolutional Neural Network with Mixed Precision Implementation

In the field of skin cancer classification, machine learning and deep learning have been extensively utilized, particularly with convolutional neural network (CNN) architectures. However, there remains room for exploration to achieve optimal performance. This study investigates the use of the Mobile...

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Main Authors: Raka Ryandra Guntara, Hendriyana, Indira Syawanodya
Format: Article
Language:English
Published: Ikatan Ahli Informatika Indonesia 2024-12-01
Series:Jurnal RESTI (Rekayasa Sistem dan Teknologi Informasi)
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Online Access:https://jurnal.iaii.or.id/index.php/RESTI/article/view/5996
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author Raka Ryandra Guntara
Hendriyana
Indira Syawanodya
author_facet Raka Ryandra Guntara
Hendriyana
Indira Syawanodya
author_sort Raka Ryandra Guntara
collection DOAJ
description In the field of skin cancer classification, machine learning and deep learning have been extensively utilized, particularly with convolutional neural network (CNN) architectures. However, there remains room for exploration to achieve optimal performance. This study investigates the use of the MobileNetV3Large architecture for transfer learning, chosen for its efficiency in low-power and memory-constrained applications. To further enhance performance, black-hat morphological transformation and oversampling techniques were applied to the ISIC 2020 dataset. Additionally, mixed precision training was implemented to reduce training time. The research aimed to compare the accuracy, precision, recall, F1-score, and training time of models trained with and without mixed precision. The findings revealed that while the model without mixed precision achieved superior performance with accuracy, precision, recall, and F1-score metrics reaching 98%, both models yielded an AUC-ROC of 1. Notably, mixed precision training significantly reduced training time by 1,646 seconds (27 minutes and 26 seconds), representing an 8.39% speed increase. These results suggest that mixed precision can meaningfully accelerate model training while maintaining competitive performance. The practical implications of this research include its potential to improve the efficiency of skin cancer classification models, making them more suitable for real-time clinical applications, particularly in resource-constrained environments.
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publishDate 2024-12-01
publisher Ikatan Ahli Informatika Indonesia
record_format Article
series Jurnal RESTI (Rekayasa Sistem dan Teknologi Informasi)
spelling doaj-art-8d8ebc592f8244dcbfcb1424a3830ee12025-01-13T03:30:32ZengIkatan Ahli Informatika IndonesiaJurnal RESTI (Rekayasa Sistem dan Teknologi Informasi)2580-07602024-12-018685385910.29207/resti.v8i6.59965996Reducing Training Time in Skin Cancer Classification Using Convolutional Neural Network with Mixed Precision ImplementationRaka Ryandra Guntara0Hendriyana1Indira Syawanodya2Universitas Pendidikan IndonesiaUniversitas Pendidikan IndonesiaUniversitas Pendidikan IndonesiaIn the field of skin cancer classification, machine learning and deep learning have been extensively utilized, particularly with convolutional neural network (CNN) architectures. However, there remains room for exploration to achieve optimal performance. This study investigates the use of the MobileNetV3Large architecture for transfer learning, chosen for its efficiency in low-power and memory-constrained applications. To further enhance performance, black-hat morphological transformation and oversampling techniques were applied to the ISIC 2020 dataset. Additionally, mixed precision training was implemented to reduce training time. The research aimed to compare the accuracy, precision, recall, F1-score, and training time of models trained with and without mixed precision. The findings revealed that while the model without mixed precision achieved superior performance with accuracy, precision, recall, and F1-score metrics reaching 98%, both models yielded an AUC-ROC of 1. Notably, mixed precision training significantly reduced training time by 1,646 seconds (27 minutes and 26 seconds), representing an 8.39% speed increase. These results suggest that mixed precision can meaningfully accelerate model training while maintaining competitive performance. The practical implications of this research include its potential to improve the efficiency of skin cancer classification models, making them more suitable for real-time clinical applications, particularly in resource-constrained environments.https://jurnal.iaii.or.id/index.php/RESTI/article/view/5996skin cancermobilenetv3largetransfer learningmixed precisionmetric evaluation
spellingShingle Raka Ryandra Guntara
Hendriyana
Indira Syawanodya
Reducing Training Time in Skin Cancer Classification Using Convolutional Neural Network with Mixed Precision Implementation
Jurnal RESTI (Rekayasa Sistem dan Teknologi Informasi)
skin cancer
mobilenetv3large
transfer learning
mixed precision
metric evaluation
title Reducing Training Time in Skin Cancer Classification Using Convolutional Neural Network with Mixed Precision Implementation
title_full Reducing Training Time in Skin Cancer Classification Using Convolutional Neural Network with Mixed Precision Implementation
title_fullStr Reducing Training Time in Skin Cancer Classification Using Convolutional Neural Network with Mixed Precision Implementation
title_full_unstemmed Reducing Training Time in Skin Cancer Classification Using Convolutional Neural Network with Mixed Precision Implementation
title_short Reducing Training Time in Skin Cancer Classification Using Convolutional Neural Network with Mixed Precision Implementation
title_sort reducing training time in skin cancer classification using convolutional neural network with mixed precision implementation
topic skin cancer
mobilenetv3large
transfer learning
mixed precision
metric evaluation
url https://jurnal.iaii.or.id/index.php/RESTI/article/view/5996
work_keys_str_mv AT rakaryandraguntara reducingtrainingtimeinskincancerclassificationusingconvolutionalneuralnetworkwithmixedprecisionimplementation
AT hendriyana reducingtrainingtimeinskincancerclassificationusingconvolutionalneuralnetworkwithmixedprecisionimplementation
AT indirasyawanodya reducingtrainingtimeinskincancerclassificationusingconvolutionalneuralnetworkwithmixedprecisionimplementation