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Faktor Penentu Keberhasilan Manajemen E-learning dan Minat Belajar Mahasiswa : (Studi kasus mahasiswa FTI Universitas Sebelas April Sumedang) Leni Nurhayati; Reny Rian Marliana; Sri Bekti Handayani Ningsih; Iyat Ratna K
Jurnal Teknik Mesin, Industri, Elektro dan Informatika Vol. 3 No. 3 (2024): September : JURNAL TEKNIK MESIN, INDUSTRI, ELEKTRO DAN INFORMATIKA
Publisher : Pusat Riset dan Inovasi Nasional

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.55606/jtmei.v3i3.4152

Abstract

Along with the development of the digital era, the use of e-Learning has become inevitable. Almost all countries in the world, including Indonesia, are implementing e-learning in the world of education. However, to be able to implement e-learning successfully, there are several determining factors for success that must be met. The determining factors for the success of implementing e-learning cannot be separated from how management is carried out by an institution in implementing learning using e-learning. The success of e-learning implementation is also influenced by the level of user satisfaction. The successful implementation of e-learning can also influence students' interest in learning. The aim of this research is to determine the factors determining the success of e-learning implementation and their influence on students' interest in learning. The research method used is quantitative research. The conclusion obtained from the results of this research is that there are 2 factors that determine success in implementing e-learning, management of the content development process and management of the e-learning environment. E-learning environment management has a significant influence on four constructs of student learning interest, namely involvement, interest, acceptance and feelings of enjoyment. And management of the content development process has a significant effect on acceptance and feelings of enjoyment. So the research results show that E-Learning Environment management has a significant effect on interest in learning, while Content Development Process management for buying gas only has a significant effect on aspects of acceptance and feelings of pleasure.
Visualisasi Data Kependudukan Menggunakan Power Business Intelligence (Studi Kasus Kelurahan Sukamiskin Kecamatan Arcamanik Kota Bandung) Sri Bekti Handayani Ningsih; Iyat Ratna Komala; Leni Nurhayati; Maya Suhayati
JURNAL PENELITIAN SISTEM INFORMASI (JPSI) Vol. 3 No. 1 (2025): JURNAL PENELITIAN SISTEM INFORMASI
Publisher : Institut Teknologi dan Bisnis (ITB) Semarang

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.54066/jpsi.v3i1.2944

Abstract

Sukamiskin Village is one of the villages in the Arcamanik sub-district of Bandung City. Population data is very useful as a basis for policy making to improve the economy, determine security facilities, improve infrastructure, and so on. One of the community institutions that have the task of collecting population data is the Rukun Tetangga (RT) management. The application of the Power Business Intelligence (Power BI) application in analyzing population data in Sukamiskin Village by taking sample data in Sukamiskin village RT.01 RW.06. The population data analyzed includes information such as population size, age distribution, education level, gender, marital status and employment status. This study aims to provide a clear picture or visualization of population data in Sukamiskin village RT.01 RW.06 using the Microsoft Power BI application with the stages of collecting data, entering data, modeling data, and visualizing data. The results of this research are in the form of a dashboard/summary report and detailed report on the population data of the Sukamiskin village RT.01 RW.06. The results of the analysis show that Power BI is able to present data comprehensively and assist in strategic decision making at the village level. The implementation of Power BI is expected to increase the benefits of population data and accelerate the process of