PENINGKATAN KEMAMPUAN DATA ANALYTIC MELALUI PELATIHAN ASEAN DATA SCIENCE EXPLORERS MENGGUNAKAN SAP ANALYTIC CLOUD

Estu Sinduningrum, Firman Noor Hasan, Ahmad Rizal Dzikrillah, Arien Bianingrum Rossianiz, Dimas Febriawan, Irawati Irawati

Abstract


ABSTRAK

Kegiatan pengabdian masyarakat ini dilatarbelakangi oleh kerjasama kawan menggunakan ASEAN Foundation dan SAP. Pada tanggal 12 Maret 2021 kegiatan yang dilaksanakan secara virtual ini menggunakan platform Meeting Room dan Virtual Classroom. Peserta berasal dari mahasiswa dari Fakultas Teknik Universitas Dr.Hamka (UHAMKA) Jakarta. Metode yang digunakan untuk menguji manfaat dari perangkat lunak SAP Analytics Cloud ini berupa pelatihan dengan melakukan teknik pengumpulan data populasi Fakultas Teknik Uhamka. Kuesioner yang diberikan kepada mahasiswa berhubungan dengan uji validasi dan kebenaran penyampaian materi pelatihan. Lalu kualitas pengumpulan data yang sesuai dengan realitas saat ini dengan menggunakan instrumen kuantitatif kualitas. Hasil evaluasi ini yaitu terdapat 40 mahasiswa yang bersedia mengikuti kompetisi SAP Analitycs Cloud. Dengan dilaksanakannya kegiatan pelatihan ini sebanyak 85,76% peserta training sudah menaruh pemahaman mengenai SAP Analytics Cloud untuk menjawab tantangan era Revolusi Industri 4.0 mengenai analisis data.

 

Kata Kunci: analisis data; revolusi industri 4.0; SAP analytics cloud

 

ABSTRACT

This community service activity was motivated by the collaboration of friends using the ASEAN Foundation and SAP. On March 12, 2021, this virtual activity will use the Meeting Room and Virtual Classroom platforms. Participants came from students from the Faculty of Engineering, Dr. Hamka University (UHAMKA) Jakarta. The method used to test the benefits of the SAP Analytics Cloud software is in the form of training by performing population data collection techniques, Faculty of Engineering, Uhamka. Questionnaires given to students relate to the validation test and the correctness of the delivery of training materials. Then the quality of data collection in accordance with current reality by using quality quantitative instruments. The results of this evaluation are that there are 40 students who are willing to take part in the SAP Analytics Cloud competition. With the implementation of this training activity, 85.76% of the training participants have an understanding of SAP Analytics Cloud to answer the challenges of the Industrial Revolution 4.0 era regarding data analysis.

 

Keywords: data analysis; industrial revolution 4.0; SAP analytics cloud


Keywords


data analysis; industrial revolution 4.0; SAP analytics cloud

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DOI: https://doi.org/10.31764/jpmb.v6i4.10734

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