KLASTERING DATA PEGAWAI STATUS PANGKAT DAN JABATAN PADA DINAS PERHUBUNGAN BANYUWANGI MENGGUNAKAN METODE K-MEANS

Authors

  • Akmaluddin Akmaluddin Universitas Ibrahimy Author
  • Zaehol Falah Universitas Ibrahimy Author

DOI:

https://doi.org/10.69714/25yt4342

Keywords:

K-Means Clusterin, Banyuwangi Transportation Agenc, Personnel data management, RapidMiner

Abstract

Complex personnel data management is a strategic challenge for organizations, especially in government agencies such as the Banyuwangi Transportation Agency. This study aims to provide a solution to this problem by using the K-Means Clustering method. This technique allows grouping employee data based on key attributes, namely rank, position, and length of service. The research data was obtained from the Banyuwangi Transportation Agency personnel documents and processed using RapidMiner software to ensure the accuracy of the clustering results. The results of the study show that employee data can be grouped into two main clusters. These clusters reflect employee distribution patterns based on the characteristics of rank, position, and length of service, which can then be used to support strategic decision making, such as the preparation of employee training, promotion, and rotation policies. This study proves that the K-Means method is effective in analyzing complex personnel data and makes a significant contribution to increasing the efficiency of human resource management in government agencies.

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Published

2025-02-01

How to Cite

KLASTERING DATA PEGAWAI STATUS PANGKAT DAN JABATAN PADA DINAS PERHUBUNGAN BANYUWANGI MENGGUNAKAN METODE K-MEANS (Akmaluddin Akmaluddin & Zaehol Falah , Trans.). (2025). Jurnal Ilmiah Multidisiplin Ilmu, 2(1), 76-80. https://doi.org/10.69714/25yt4342