An optimal data access framework for telerehabilitation system
In the telerehabilitation system, the statistical data of the patients’ movement are stored in the temporary storage and synchronised to the storage service of online cloud data. Application providers faced a problem in reducing the monetary cost of the whole cloud service and reducing the footprint...
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Faculty of Information and Communication Technology (FTMK), Universiti Teknikal Malaysia Melaka (UTeM)
2021
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my.upm.eprints.958722023-03-28T03:15:30Z http://psasir.upm.edu.my/id/eprint/95872/ An optimal data access framework for telerehabilitation system Muhammed, Abdullah Ismail, Waidah Basarang, Siti Nabilah Aldailamy, Ali Y. Hendradi, Rimuljo In the telerehabilitation system, the statistical data of the patients’ movement are stored in the temporary storage and synchronised to the storage service of online cloud data. Application providers faced a problem in reducing the monetary cost of the whole cloud service and reducing the footprint of the main memory space. In addition, users encounter long latency when the required data need to be read from the cloud via the internet and the hard disk drive (HDD) of the cloud servers. To solve this problem, an optimal data access framework is presented to cache the statistical data of the patients in the application server. The main memory database and cache use internal tracking in the main memory to track records that are not accessed by transferring the data to the disk. This mechanism retains the keys and all indexed fields of evicted records in the main memory which prevents potential memory space savings for the application that have many keys and secondary indexes. Therefore, to overcome the mentioned problems, the cloud database is categorised into three partitions (hot, warm, cold). In addition, a cache memory image in the application server is provided for the hot partition of the cloud database. The use of cache memory image reduces the number of reading operations from the cloud and saves the space of the main memory. The experimental results showed that the proposed framework can produce good quality solutions by utilising the main memory space and reducing the latency and read operations from the cloud that lead to reducing the monetary costs. Faculty of Information and Communication Technology (FTMK), Universiti Teknikal Malaysia Melaka (UTeM) 2021 Article PeerReviewed Muhammed, Abdullah and Ismail, Waidah and Basarang, Siti Nabilah and Aldailamy, Ali Y. and Hendradi, Rimuljo (2021) An optimal data access framework for telerehabilitation system. Journal of Advanced Computing Technology and Application (JACTA), 3 (1). pp. 25-36. ISSN 2672-7188; ESSN: 2682-8820 https://jacta.utem.edu.my/jacta/article/view/5224 |
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In the telerehabilitation system, the statistical data of the patients’ movement are stored in the temporary storage and synchronised to the storage service of online cloud data. Application providers faced a problem in reducing the monetary cost of the whole cloud service and reducing the footprint of the main memory space. In addition, users encounter long latency when the required data need to be read from the cloud via the internet and the hard disk drive (HDD) of the cloud servers. To solve this problem, an optimal data access framework is presented to cache the statistical data of the patients in the application server. The main memory database and cache use internal tracking in the main memory to track records that are not accessed by transferring the data to the disk. This mechanism retains the keys and all indexed fields of evicted records in the main memory which prevents potential memory space savings for the application that have many keys and secondary indexes. Therefore, to overcome the mentioned problems, the cloud database is categorised into three partitions (hot, warm, cold). In addition, a cache memory image in the application server is provided for the hot partition of the cloud database. The use of cache memory image reduces the number of reading operations from the cloud and saves the space of the main memory. The experimental results showed that the proposed framework can produce good quality solutions by utilising the main memory space and reducing the latency and read operations from the cloud that lead to reducing the monetary costs. |
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Article |
author |
Muhammed, Abdullah Ismail, Waidah Basarang, Siti Nabilah Aldailamy, Ali Y. Hendradi, Rimuljo |
spellingShingle |
Muhammed, Abdullah Ismail, Waidah Basarang, Siti Nabilah Aldailamy, Ali Y. Hendradi, Rimuljo An optimal data access framework for telerehabilitation system |
author_facet |
Muhammed, Abdullah Ismail, Waidah Basarang, Siti Nabilah Aldailamy, Ali Y. Hendradi, Rimuljo |
author_sort |
Muhammed, Abdullah |
title |
An optimal data access framework for telerehabilitation system |
title_short |
An optimal data access framework for telerehabilitation system |
title_full |
An optimal data access framework for telerehabilitation system |
title_fullStr |
An optimal data access framework for telerehabilitation system |
title_full_unstemmed |
An optimal data access framework for telerehabilitation system |
title_sort |
optimal data access framework for telerehabilitation system |
publisher |
Faculty of Information and Communication Technology (FTMK), Universiti Teknikal Malaysia Melaka (UTeM) |
publishDate |
2021 |
url |
http://psasir.upm.edu.my/id/eprint/95872/ https://jacta.utem.edu.my/jacta/article/view/5224 |
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