ANALYSIS OF THE PERFORMANCE OF SUPPORT VECTOR MACHINE IN DETECTING NETWORK INTRUSION IN THE COMPUTER LAB OF SMKN 1 WERA
DOI:
https://doi.org/10.54367/means.v11i1.6514Keywords:
Network Monitoring, SNMP, MikroTik Router, Data Communication, Network ManagementAbstract
Network management in the Village Office of Nunggi has not been optimally supported by a real-time monitoring system, resulting in limited visibility of network performance and potential disruptions in service delivery. This study implements a network monitoring system based on the Simple Network Management Protocol (SNMP) on MikroTik routers to improve the effectiveness of network utilization. The system is designed to collect and analyze network performance data such as bandwidth usage, uptime, CPU load, and traffic conditions in real time. The monitoring results are displayed through a user-friendly interface to assist administrators in detecting network problems more quickly and accurately. The implementation shows that the SNMP-based monitoring system is able to provide timely and structured network information, thereby improving network stability, efficiency, and management responsiveness. Overall, this research demonstrates that SNMP implementation on MikroTik routers is effective in supporting better network monitoring and decision-making in the Village Office environment.References
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