Effectiveness of Sniffer Using Natural Language in Learning Computer Network Traffic

Computer networks are currently very active in the development of technology that is around us. Seeing this, of course knowledge of the network will be needed if there is a problem on the network. Scapy is a Python module that allows for sending, sniffing and dissecting a packet on a network. This c...

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Main Authors: Putu Adhika Dharmesta, I Made Agus Dwi Suarjaya, I Made Sunia Raharja
Format: Article
Language:Indonesian
Published: Ikatan Ahli Indormatika Indonesia 2020-06-01
Series:Jurnal RESTI (Rekayasa Sistem dan Teknologi Informasi)
Subjects:
Online Access:http://jurnal.iaii.or.id/index.php/RESTI/article/view/1696
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spelling doaj-7c2b14d65c0e49799c17710d081c203e2020-11-25T03:44:08ZindIkatan Ahli Indormatika IndonesiaJurnal RESTI (Rekayasa Sistem dan Teknologi Informasi)2580-07602020-06-014339240310.29207/resti.v4i3.16961696Effectiveness of Sniffer Using Natural Language in Learning Computer Network TrafficPutu Adhika Dharmesta0I Made Agus Dwi Suarjaya1I Made Sunia Raharja2Universitas UdayanaUdayana UniversityUdayana UniversityComputer networks are currently very active in the development of technology that is around us. Seeing this, of course knowledge of the network will be needed if there is a problem on the network. Scapy is a Python module that allows for sending, sniffing and dissecting a packet on a network. This capability allows users to create an application that can dissect how the workings of a network packet. Researchers will create a protocol traffic learning application on a computer network using Scapy and natural language to convey the results of the ongoing sniffing process. The application uses natural language to convey the translation of the sniffing process. The translation result of the sniffing process by using the natural language of this application is expected to be effective and can facilitate and make users understand and learn about the work process of a network packet. To measure the effectiveness of the use of natural language for the translation of the sniffing process a questionnaire was distributed to students of the SMKN 1 Denpasar school majoring in Computer and Network Engineering. The results of the distribution of the questionnaire were then calculated using a Likert scale and then the results obtained that the original results of the sniffing process got a Likert scale value of 37%. While the results of sniffing that have been translated get a value of 73%. This shows respondent better understands the results that have been translated compared to the original results that have not been translated.http://jurnal.iaii.or.id/index.php/RESTI/article/view/1696computer networksniffingpacket snifferscapypython
collection DOAJ
language Indonesian
format Article
sources DOAJ
author Putu Adhika Dharmesta
I Made Agus Dwi Suarjaya
I Made Sunia Raharja
spellingShingle Putu Adhika Dharmesta
I Made Agus Dwi Suarjaya
I Made Sunia Raharja
Effectiveness of Sniffer Using Natural Language in Learning Computer Network Traffic
Jurnal RESTI (Rekayasa Sistem dan Teknologi Informasi)
computer network
sniffing
packet sniffer
scapy
python
author_facet Putu Adhika Dharmesta
I Made Agus Dwi Suarjaya
I Made Sunia Raharja
author_sort Putu Adhika Dharmesta
title Effectiveness of Sniffer Using Natural Language in Learning Computer Network Traffic
title_short Effectiveness of Sniffer Using Natural Language in Learning Computer Network Traffic
title_full Effectiveness of Sniffer Using Natural Language in Learning Computer Network Traffic
title_fullStr Effectiveness of Sniffer Using Natural Language in Learning Computer Network Traffic
title_full_unstemmed Effectiveness of Sniffer Using Natural Language in Learning Computer Network Traffic
title_sort effectiveness of sniffer using natural language in learning computer network traffic
publisher Ikatan Ahli Indormatika Indonesia
series Jurnal RESTI (Rekayasa Sistem dan Teknologi Informasi)
issn 2580-0760
publishDate 2020-06-01
description Computer networks are currently very active in the development of technology that is around us. Seeing this, of course knowledge of the network will be needed if there is a problem on the network. Scapy is a Python module that allows for sending, sniffing and dissecting a packet on a network. This capability allows users to create an application that can dissect how the workings of a network packet. Researchers will create a protocol traffic learning application on a computer network using Scapy and natural language to convey the results of the ongoing sniffing process. The application uses natural language to convey the translation of the sniffing process. The translation result of the sniffing process by using the natural language of this application is expected to be effective and can facilitate and make users understand and learn about the work process of a network packet. To measure the effectiveness of the use of natural language for the translation of the sniffing process a questionnaire was distributed to students of the SMKN 1 Denpasar school majoring in Computer and Network Engineering. The results of the distribution of the questionnaire were then calculated using a Likert scale and then the results obtained that the original results of the sniffing process got a Likert scale value of 37%. While the results of sniffing that have been translated get a value of 73%. This shows respondent better understands the results that have been translated compared to the original results that have not been translated.
topic computer network
sniffing
packet sniffer
scapy
python
url http://jurnal.iaii.or.id/index.php/RESTI/article/view/1696
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