To search, Click
below search items.
|
|

All
Published Papers Search Service
|
Title
|
Drug-Drug Interaction Prediction Using Krill Herd Algorithm Based on Deep Learning Method
|
Author
|
Abdulsamad Al-Marghilani
|
Citation |
Vol. 21 No. 7 pp. 319-328
|
Abstract
|
Parallel administration of numerous drugs increases Drug-Drug Interaction (DDI) because one drug might affect the activity of other drugs. DDI causes negative or positive impacts on therapeutic output. So there is a need to discover DDI to enhance the safety of consuming drugs. Though there are several DDI system exist to predict an interaction but nowadays it becomes impossible to maintain with a large number of biomedical texts which is getting increased rapidly. Mostly the existing DDI system address classification issues, and especially rely on handcrafted features, and some features which are based on particular domain tools. The objective of this paper to predict DDI in a way to avoid adverse effects caused by the consumed drugs, to predict similarities among the drug, Drug pair similarity calculation is performed. The best optimal weight is obtained with the support of KHA. LSTM function with weight obtained from KHA and makes bets prediction of DDI. Our methodology depends on (LSTM-KHA) for the detection of DDI. Similarities among the drugs are measured with the help of drug pair similarity calculation. KHA is used to find the best optimal weight which is used by LSTM to predict DDI. The experimental result was conducted on three kinds of dataset DS1 (CYP), DS2 (NCYP), and DS3 taken from the DrugBank database. To evaluate the performance of proposed work in terms of performance metrics like accuracy, recall, precision, F-measures, AUPR, AUC, and AUROC. Experimental results express that the proposed method outperforms other existing methods for predicting DDI. LSTM-KHA produces reasonable performance metrics when compared to the existing DDI prediction model.
|
Keywords
|
Drug-Drug Interaction, Long Short Term
Memory, Krill Herd Algorithm, Deep Learning, Machine Learning
|
URL
|
http://paper.ijcsns.org/07_book/202107/20210741.pdf
|
Title
|
Drug-Drug Interaction Prediction Using Krill Herd Algorithm Based on Deep Learning Method
|
Author
|
Abdulsamad Al-Marghilani
|
Citation |
Vol. 21 No. 7 pp. 319-328
|
Abstract
|
Parallel administration of numerous drugs increases Drug-Drug Interaction (DDI) because one drug might affect the activity of other drugs. DDI causes negative or positive impacts on therapeutic output. So there is a need to discover DDI to enhance the safety of consuming drugs. Though there are several DDI system exist to predict an interaction but nowadays it becomes impossible to maintain with a large number of biomedical texts which is getting increased rapidly. Mostly the existing DDI system address classification issues, and especially rely on handcrafted features, and some features which are based on particular domain tools. The objective of this paper to predict DDI in a way to avoid adverse effects caused by the consumed drugs, to predict similarities among the drug, Drug pair similarity calculation is performed. The best optimal weight is obtained with the support of KHA. LSTM function with weight obtained from KHA and makes bets prediction of DDI. Our methodology depends on (LSTM-KHA) for the detection of DDI. Similarities among the drugs are measured with the help of drug pair similarity calculation. KHA is used to find the best optimal weight which is used by LSTM to predict DDI. The experimental result was conducted on three kinds of dataset DS1 (CYP), DS2 (NCYP), and DS3 taken from the DrugBank database. To evaluate the performance of proposed work in terms of performance metrics like accuracy, recall, precision, F-measures, AUPR, AUC, and AUROC. Experimental results express that the proposed method outperforms other existing methods for predicting DDI. LSTM-KHA produces reasonable performance metrics when compared to the existing DDI prediction model.
|
Keywords
|
Drug-Drug Interaction, Long Short Term
Memory, Krill Herd Algorithm, Deep Learning, Machine Learning
|
URL
|
http://paper.ijcsns.org/07_book/202107/20210741.pdf
|
Title
|
Drug-Drug Interaction Prediction Using Krill Herd Algorithm Based on Deep Learning Method
|
Author
|
Abdulsamad Al-Marghilani
|
Citation |
Vol. 21 No. 7 pp. 319-328
|
Abstract
|
Parallel administration of numerous drugs increases Drug-Drug Interaction (DDI) because one drug might affect the activity of other drugs. DDI causes negative or positive impacts on therapeutic output. So there is a need to discover DDI to enhance the safety of consuming drugs. Though there are several DDI system exist to predict an interaction but nowadays it becomes impossible to maintain with a large number of biomedical texts which is getting increased rapidly. Mostly the existing DDI system address classification issues, and especially rely on handcrafted features, and some features which are based on particular domain tools. The objective of this paper to predict DDI in a way to avoid adverse effects caused by the consumed drugs, to predict similarities among the drug, Drug pair similarity calculation is performed. The best optimal weight is obtained with the support of KHA. LSTM function with weight obtained from KHA and makes bets prediction of DDI. Our methodology depends on (LSTM-KHA) for the detection of DDI. Similarities among the drugs are measured with the help of drug pair similarity calculation. KHA is used to find the best optimal weight which is used by LSTM to predict DDI. The experimental result was conducted on three kinds of dataset DS1 (CYP), DS2 (NCYP), and DS3 taken from the DrugBank database. To evaluate the performance of proposed work in terms of performance metrics like accuracy, recall, precision, F-measures, AUPR, AUC, and AUROC. Experimental results express that the proposed method outperforms other existing methods for predicting DDI. LSTM-KHA produces reasonable performance metrics when compared to the existing DDI prediction model.
|
Keywords
|
Drug-Drug Interaction, Long Short Term
Memory, Krill Herd Algorithm, Deep Learning, Machine Learning
|
URL
|
http://paper.ijcsns.org/07_book/202107/20210741.pdf
|
Title
|
Drug-Drug Interaction Prediction Using Krill Herd Algorithm Based on Deep Learning Method
|
Author
|
Abdulsamad Al-Marghilani
|
Citation |
Vol. 21 No. 7 pp. 319-328
|
Abstract
|
Parallel administration of numerous drugs increases Drug-Drug Interaction (DDI) because one drug might affect the activity of other drugs. DDI causes negative or positive impacts on therapeutic output. So there is a need to discover DDI to enhance the safety of consuming drugs. Though there are several DDI system exist to predict an interaction but nowadays it becomes impossible to maintain with a large number of biomedical texts which is getting increased rapidly. Mostly the existing DDI system address classification issues, and especially rely on handcrafted features, and some features which are based on particular domain tools. The objective of this paper to predict DDI in a way to avoid adverse effects caused by the consumed drugs, to predict similarities among the drug, Drug pair similarity calculation is performed. The best optimal weight is obtained with the support of KHA. LSTM function with weight obtained from KHA and makes bets prediction of DDI. Our methodology depends on (LSTM-KHA) for the detection of DDI. Similarities among the drugs are measured with the help of drug pair similarity calculation. KHA is used to find the best optimal weight which is used by LSTM to predict DDI. The experimental result was conducted on three kinds of dataset DS1 (CYP), DS2 (NCYP), and DS3 taken from the DrugBank database. To evaluate the performance of proposed work in terms of performance metrics like accuracy, recall, precision, F-measures, AUPR, AUC, and AUROC. Experimental results express that the proposed method outperforms other existing methods for predicting DDI. LSTM-KHA produces reasonable performance metrics when compared to the existing DDI prediction model.
|
Keywords
|
Drug-Drug Interaction, Long Short Term
Memory, Krill Herd Algorithm, Deep Learning, Machine Learning
|
URL
|
http://paper.ijcsns.org/07_book/202107/20210741.pdf
|
Title
|
Drug-Drug Interaction Prediction Using Krill Herd Algorithm Based on Deep Learning Method
|
Author
|
Abdulsamad Al-Marghilani
|
Citation |
Vol. 21 No. 7 pp. 319-328
|
Abstract
|
Parallel administration of numerous drugs increases Drug-Drug Interaction (DDI) because one drug might affect the activity of other drugs. DDI causes negative or positive impacts on therapeutic output. So there is a need to discover DDI to enhance the safety of consuming drugs. Though there are several DDI system exist to predict an interaction but nowadays it becomes impossible to maintain with a large number of biomedical texts which is getting increased rapidly. Mostly the existing DDI system address classification issues, and especially rely on handcrafted features, and some features which are based on particular domain tools. The objective of this paper to predict DDI in a way to avoid adverse effects caused by the consumed drugs, to predict similarities among the drug, Drug pair similarity calculation is performed. The best optimal weight is obtained with the support of KHA. LSTM function with weight obtained from KHA and makes bets prediction of DDI. Our methodology depends on (LSTM-KHA) for the detection of DDI. Similarities among the drugs are measured with the help of drug pair similarity calculation. KHA is used to find the best optimal weight which is used by LSTM to predict DDI. The experimental result was conducted on three kinds of dataset DS1 (CYP), DS2 (NCYP), and DS3 taken from the DrugBank database. To evaluate the performance of proposed work in terms of performance metrics like accuracy, recall, precision, F-measures, AUPR, AUC, and AUROC. Experimental results express that the proposed method outperforms other existing methods for predicting DDI. LSTM-KHA produces reasonable performance metrics when compared to the existing DDI prediction model.
|
Keywords
|
Drug-Drug Interaction, Long Short Term
Memory, Krill Herd Algorithm, Deep Learning, Machine Learning
|
URL
|
http://paper.ijcsns.org/07_book/202107/20210741.pdf
|
Title
|
Drug-Drug Interaction Prediction Using Krill Herd Algorithm Based on Deep Learning Method
|
Author
|
Abdulsamad Al-Marghilani
|
Citation |
Vol. 21 No. 7 pp. 319-328
|
Abstract
|
Parallel administration of numerous drugs increases Drug-Drug Interaction (DDI) because one drug might affect the activity of other drugs. DDI causes negative or positive impacts on therapeutic output. So there is a need to discover DDI to enhance the safety of consuming drugs. Though there are several DDI system exist to predict an interaction but nowadays it becomes impossible to maintain with a large number of biomedical texts which is getting increased rapidly. Mostly the existing DDI system address classification issues, and especially rely on handcrafted features, and some features which are based on particular domain tools. The objective of this paper to predict DDI in a way to avoid adverse effects caused by the consumed drugs, to predict similarities among the drug, Drug pair similarity calculation is performed. The best optimal weight is obtained with the support of KHA. LSTM function with weight obtained from KHA and makes bets prediction of DDI. Our methodology depends on (LSTM-KHA) for the detection of DDI. Similarities among the drugs are measured with the help of drug pair similarity calculation. KHA is used to find the best optimal weight which is used by LSTM to predict DDI. The experimental result was conducted on three kinds of dataset DS1 (CYP), DS2 (NCYP), and DS3 taken from the DrugBank database. To evaluate the performance of proposed work in terms of performance metrics like accuracy, recall, precision, F-measures, AUPR, AUC, and AUROC. Experimental results express that the proposed method outperforms other existing methods for predicting DDI. LSTM-KHA produces reasonable performance metrics when compared to the existing DDI prediction model.
|
Keywords
|
Drug-Drug Interaction, Long Short Term
Memory, Krill Herd Algorithm, Deep Learning, Machine Learning
|
URL
|
http://paper.ijcsns.org/07_book/202107/20210741.pdf
|
Title
|
Drug-Drug Interaction Prediction Using Krill Herd Algorithm Based on Deep Learning Method
|
Author
|
Abdulsamad Al-Marghilani
|
Citation |
Vol. 21 No. 7 pp. 319-328
|
Abstract
|
Parallel administration of numerous drugs increases Drug-Drug Interaction (DDI) because one drug might affect the activity of other drugs. DDI causes negative or positive impacts on therapeutic output. So there is a need to discover DDI to enhance the safety of consuming drugs. Though there are several DDI system exist to predict an interaction but nowadays it becomes impossible to maintain with a large number of biomedical texts which is getting increased rapidly. Mostly the existing DDI system address classification issues, and especially rely on handcrafted features, and some features which are based on particular domain tools. The objective of this paper to predict DDI in a way to avoid adverse effects caused by the consumed drugs, to predict similarities among the drug, Drug pair similarity calculation is performed. The best optimal weight is obtained with the support of KHA. LSTM function with weight obtained from KHA and makes bets prediction of DDI. Our methodology depends on (LSTM-KHA) for the detection of DDI. Similarities among the drugs are measured with the help of drug pair similarity calculation. KHA is used to find the best optimal weight which is used by LSTM to predict DDI. The experimental result was conducted on three kinds of dataset DS1 (CYP), DS2 (NCYP), and DS3 taken from the DrugBank database. To evaluate the performance of proposed work in terms of performance metrics like accuracy, recall, precision, F-measures, AUPR, AUC, and AUROC. Experimental results express that the proposed method outperforms other existing methods for predicting DDI. LSTM-KHA produces reasonable performance metrics when compared to the existing DDI prediction model.
|
Keywords
|
Drug-Drug Interaction, Long Short Term
Memory, Krill Herd Algorithm, Deep Learning, Machine Learning
|
URL
|
http://paper.ijcsns.org/07_book/202107/20210741.pdf
|
Title
|
Drug-Drug Interaction Prediction Using Krill Herd Algorithm Based on Deep Learning Method
|
Author
|
Abdulsamad Al-Marghilani
|
Citation |
Vol. 21 No. 7 pp. 319-328
|
Abstract
|
Parallel administration of numerous drugs increases Drug-Drug Interaction (DDI) because one drug might affect the activity of other drugs. DDI causes negative or positive impacts on therapeutic output. So there is a need to discover DDI to enhance the safety of consuming drugs. Though there are several DDI system exist to predict an interaction but nowadays it becomes impossible to maintain with a large number of biomedical texts which is getting increased rapidly. Mostly the existing DDI system address classification issues, and especially rely on handcrafted features, and some features which are based on particular domain tools. The objective of this paper to predict DDI in a way to avoid adverse effects caused by the consumed drugs, to predict similarities among the drug, Drug pair similarity calculation is performed. The best optimal weight is obtained with the support of KHA. LSTM function with weight obtained from KHA and makes bets prediction of DDI. Our methodology depends on (LSTM-KHA) for the detection of DDI. Similarities among the drugs are measured with the help of drug pair similarity calculation. KHA is used to find the best optimal weight which is used by LSTM to predict DDI. The experimental result was conducted on three kinds of dataset DS1 (CYP), DS2 (NCYP), and DS3 taken from the DrugBank database. To evaluate the performance of proposed work in terms of performance metrics like accuracy, recall, precision, F-measures, AUPR, AUC, and AUROC. Experimental results express that the proposed method outperforms other existing methods for predicting DDI. LSTM-KHA produces reasonable performance metrics when compared to the existing DDI prediction model.
|
Keywords
|
Drug-Drug Interaction, Long Short Term
Memory, Krill Herd Algorithm, Deep Learning, Machine Learning
|
URL
|
http://paper.ijcsns.org/07_book/202107/20210741.pdf
|
Title
|
Drug-Drug Interaction Prediction Using Krill Herd Algorithm Based on Deep Learning Method
|
Author
|
Abdulsamad Al-Marghilani
|
Citation |
Vol. 21 No. 7 pp. 319-328
|
Abstract
|
Parallel administration of numerous drugs increases Drug-Drug Interaction (DDI) because one drug might affect the activity of other drugs. DDI causes negative or positive impacts on therapeutic output. So there is a need to discover DDI to enhance the safety of consuming drugs. Though there are several DDI system exist to predict an interaction but nowadays it becomes impossible to maintain with a large number of biomedical texts which is getting increased rapidly. Mostly the existing DDI system address classification issues, and especially rely on handcrafted features, and some features which are based on particular domain tools. The objective of this paper to predict DDI in a way to avoid adverse effects caused by the consumed drugs, to predict similarities among the drug, Drug pair similarity calculation is performed. The best optimal weight is obtained with the support of KHA. LSTM function with weight obtained from KHA and makes bets prediction of DDI. Our methodology depends on (LSTM-KHA) for the detection of DDI. Similarities among the drugs are measured with the help of drug pair similarity calculation. KHA is used to find the best optimal weight which is used by LSTM to predict DDI. The experimental result was conducted on three kinds of dataset DS1 (CYP), DS2 (NCYP), and DS3 taken from the DrugBank database. To evaluate the performance of proposed work in terms of performance metrics like accuracy, recall, precision, F-measures, AUPR, AUC, and AUROC. Experimental results express that the proposed method outperforms other existing methods for predicting DDI. LSTM-KHA produces reasonable performance metrics when compared to the existing DDI prediction model.
|
Keywords
|
Drug-Drug Interaction, Long Short Term
Memory, Krill Herd Algorithm, Deep Learning, Machine Learning
|
URL
|
http://paper.ijcsns.org/07_book/202107/20210741.pdf
|
Title
|
Drug-Drug Interaction Prediction Using Krill Herd Algorithm Based on Deep Learning Method
|
Author
|
Abdulsamad Al-Marghilani
|
Citation |
Vol. 21 No. 7 pp. 319-328
|
Abstract
|
Parallel administration of numerous drugs increases Drug-Drug Interaction (DDI) because one drug might affect the activity of other drugs. DDI causes negative or positive impacts on therapeutic output. So there is a need to discover DDI to enhance the safety of consuming drugs. Though there are several DDI system exist to predict an interaction but nowadays it becomes impossible to maintain with a large number of biomedical texts which is getting increased rapidly. Mostly the existing DDI system address classification issues, and especially rely on handcrafted features, and some features which are based on particular domain tools. The objective of this paper to predict DDI in a way to avoid adverse effects caused by the consumed drugs, to predict similarities among the drug, Drug pair similarity calculation is performed. The best optimal weight is obtained with the support of KHA. LSTM function with weight obtained from KHA and makes bets prediction of DDI. Our methodology depends on (LSTM-KHA) for the detection of DDI. Similarities among the drugs are measured with the help of drug pair similarity calculation. KHA is used to find the best optimal weight which is used by LSTM to predict DDI. The experimental result was conducted on three kinds of dataset DS1 (CYP), DS2 (NCYP), and DS3 taken from the DrugBank database. To evaluate the performance of proposed work in terms of performance metrics like accuracy, recall, precision, F-measures, AUPR, AUC, and AUROC. Experimental results express that the proposed method outperforms other existing methods for predicting DDI. LSTM-KHA produces reasonable performance metrics when compared to the existing DDI prediction model.
|
Keywords
|
Drug-Drug Interaction, Long Short Term
Memory, Krill Herd Algorithm, Deep Learning, Machine Learning
|
URL
|
http://paper.ijcsns.org/07_book/202107/20210741.pdf
|
Title
|
Drug-Drug Interaction Prediction Using Krill Herd Algorithm Based on Deep Learning Method
|
Author
|
Abdulsamad Al-Marghilani
|
Citation |
Vol. 21 No. 7 pp. 319-328
|
Abstract
|
Parallel administration of numerous drugs increases Drug-Drug Interaction (DDI) because one drug might affect the activity of other drugs. DDI causes negative or positive impacts on therapeutic output. So there is a need to discover DDI to enhance the safety of consuming drugs. Though there are several DDI system exist to predict an interaction but nowadays it becomes impossible to maintain with a large number of biomedical texts which is getting increased rapidly. Mostly the existing DDI system address classification issues, and especially rely on handcrafted features, and some features which are based on particular domain tools. The objective of this paper to predict DDI in a way to avoid adverse effects caused by the consumed drugs, to predict similarities among the drug, Drug pair similarity calculation is performed. The best optimal weight is obtained with the support of KHA. LSTM function with weight obtained from KHA and makes bets prediction of DDI. Our methodology depends on (LSTM-KHA) for the detection of DDI. Similarities among the drugs are measured with the help of drug pair similarity calculation. KHA is used to find the best optimal weight which is used by LSTM to predict DDI. The experimental result was conducted on three kinds of dataset DS1 (CYP), DS2 (NCYP), and DS3 taken from the DrugBank database. To evaluate the performance of proposed work in terms of performance metrics like accuracy, recall, precision, F-measures, AUPR, AUC, and AUROC. Experimental results express that the proposed method outperforms other existing methods for predicting DDI. LSTM-KHA produces reasonable performance metrics when compared to the existing DDI prediction model.
|
Keywords
|
Drug-Drug Interaction, Long Short Term
Memory, Krill Herd Algorithm, Deep Learning, Machine Learning
|
URL
|
http://paper.ijcsns.org/07_book/202107/20210741.pdf
|
Title
|
Drug-Drug Interaction Prediction Using Krill Herd Algorithm Based on Deep Learning Method
|
Author
|
Abdulsamad Al-Marghilani
|
Citation |
Vol. 21 No. 7 pp. 319-328
|
Abstract
|
Parallel administration of numerous drugs increases Drug-Drug Interaction (DDI) because one drug might affect the activity of other drugs. DDI causes negative or positive impacts on therapeutic output. So there is a need to discover DDI to enhance the safety of consuming drugs. Though there are several DDI system exist to predict an interaction but nowadays it becomes impossible to maintain with a large number of biomedical texts which is getting increased rapidly. Mostly the existing DDI system address classification issues, and especially rely on handcrafted features, and some features which are based on particular domain tools. The objective of this paper to predict DDI in a way to avoid adverse effects caused by the consumed drugs, to predict similarities among the drug, Drug pair similarity calculation is performed. The best optimal weight is obtained with the support of KHA. LSTM function with weight obtained from KHA and makes bets prediction of DDI. Our methodology depends on (LSTM-KHA) for the detection of DDI. Similarities among the drugs are measured with the help of drug pair similarity calculation. KHA is used to find the best optimal weight which is used by LSTM to predict DDI. The experimental result was conducted on three kinds of dataset DS1 (CYP), DS2 (NCYP), and DS3 taken from the DrugBank database. To evaluate the performance of proposed work in terms of performance metrics like accuracy, recall, precision, F-measures, AUPR, AUC, and AUROC. Experimental results express that the proposed method outperforms other existing methods for predicting DDI. LSTM-KHA produces reasonable performance metrics when compared to the existing DDI prediction model.
|
Keywords
|
Drug-Drug Interaction, Long Short Term
Memory, Krill Herd Algorithm, Deep Learning, Machine Learning
|
URL
|
http://paper.ijcsns.org/07_book/202107/20210741.pdf
|
Title
|
Drug-Drug Interaction Prediction Using Krill Herd Algorithm Based on Deep Learning Method
|
Author
|
Abdulsamad Al-Marghilani
|
Citation |
Vol. 21 No. 7 pp. 319-328
|
Abstract
|
Parallel administration of numerous drugs increases Drug-Drug Interaction (DDI) because one drug might affect the activity of other drugs. DDI causes negative or positive impacts on therapeutic output. So there is a need to discover DDI to enhance the safety of consuming drugs. Though there are several DDI system exist to predict an interaction but nowadays it becomes impossible to maintain with a large number of biomedical texts which is getting increased rapidly. Mostly the existing DDI system address classification issues, and especially rely on handcrafted features, and some features which are based on particular domain tools. The objective of this paper to predict DDI in a way to avoid adverse effects caused by the consumed drugs, to predict similarities among the drug, Drug pair similarity calculation is performed. The best optimal weight is obtained with the support of KHA. LSTM function with weight obtained from KHA and makes bets prediction of DDI. Our methodology depends on (LSTM-KHA) for the detection of DDI. Similarities among the drugs are measured with the help of drug pair similarity calculation. KHA is used to find the best optimal weight which is used by LSTM to predict DDI. The experimental result was conducted on three kinds of dataset DS1 (CYP), DS2 (NCYP), and DS3 taken from the DrugBank database. To evaluate the performance of proposed work in terms of performance metrics like accuracy, recall, precision, F-measures, AUPR, AUC, and AUROC. Experimental results express that the proposed method outperforms other existing methods for predicting DDI. LSTM-KHA produces reasonable performance metrics when compared to the existing DDI prediction model.
|
Keywords
|
Drug-Drug Interaction, Long Short Term
Memory, Krill Herd Algorithm, Deep Learning, Machine Learning
|
URL
|
http://paper.ijcsns.org/07_book/202107/20210741.pdf
|
Title
|
Access efficiency of small sized files in Big Data using various
Techniques on Hadoop Distributed File System platform
|
Author
|
Neeta Alange and Anjali Mathur
|
Citation |
Vol. 21 No. 7 pp. 359-364
|
Abstract
|
In recent years Hadoop usage has been increasing day by day. The need of development of the technology and its specified outcomes are eagerly waiting across globe to adopt speedy access of data. Need of computers and its dependency is increasing day by day. Big data is exponentially growing as the entire world is working in online mode. Large amount of data has been produced which is very difficult to handle and process within a short time. In present situation industries are widely using the Hadoop framework to store, process and produce at the specified time with huge amount of data that has been put on the server. Processing of this huge amount of data having small files & its storage optimization is a big problem. HDFS, Sequence files, HAR, NHAR various techniques have been already proposed. In this paper we have discussed about various existing techniques which are developed for accessing and storing small files efficiently. Out of the various techniques we have specifically tried to implement the HDFS- HAR, NHAR techniques.
|
Keywords
|
HDFS, Flat Table Technique, Table Chain Technique, Small File Merging.
|
URL
|
http://paper.ijcsns.org/07_book/202107/20210741.pdf
|
Title
|
Access efficiency of small sized files in Big Data using various
Techniques on Hadoop Distributed File System platform
|
Author
|
Neeta Alange and Anjali Mathur
|
Citation |
Vol. 21 No. 7 pp. 359-364
|
Abstract
|
In recent years Hadoop usage has been increasing day by day. The need of development of the technology and its specified outcomes are eagerly waiting across globe to adopt speedy access of data. Need of computers and its dependency is increasing day by day. Big data is exponentially growing as the entire world is working in online mode. Large amount of data has been produced which is very difficult to handle and process within a short time. In present situation industries are widely using the Hadoop framework to store, process and produce at the specified time with huge amount of data that has been put on the server. Processing of this huge amount of data having small files & its storage optimization is a big problem. HDFS, Sequence files, HAR, NHAR various techniques have been already proposed. In this paper we have discussed about various existing techniques which are developed for accessing and storing small files efficiently. Out of the various techniques we have specifically tried to implement the HDFS- HAR, NHAR techniques.
|
Keywords
|
HDFS, Flat Table Technique, Table Chain Technique, Small File Merging.
|
URL
|
http://paper.ijcsns.org/07_book/202107/20210741.pdf
|

|
|