Home
Author Guide
Editor Guide
Reviewer Guide
Special Issues
Special Issue Introduction
Special Issues List
Topics
Published Issues
2024
2023
2022
2021
2020
2019
2018
2017
2016
2015
2014
2013
2012
2010
2009
2008
2007
2006
journal menu
Aims and Scope
Editorial Board
Indexing Service
Article Processing Charge
Open Access Policy
Publication Ethics
Digital Preservation Policy
Editorial Process
Subscription
Contact Us
General Information
ISSN:
1796-2021 (Online); 2374-4367 (Print)
Abbreviated Title:
J. Commun.
Frequency:
Monthly
DOI:
10.12720/jcm
Abstracting/Indexing:
Scopus
;
DBLP
;
CrossRef
,
EBSCO
,
Google Scholar
;
CNKI,
etc.
E-mail questions
or comments to
editor@jocm.us
Acceptance Rate:
27%
APC:
800 USD
Average Days to Accept:
88 days
3.4
2023
CiteScore
51st percentile
Powered by
Article Metrics in Dimensions
Editor-in-Chief
Prof. Maode Ma
College of Engineering, Qatar University, Doha, Qatar
I'm very happy and honored to take on the position of editor-in-chief of JCM, which is a high-quality journal with potential and I'll try my every effort to bring JCM to a next level...
[Read More]
What's New
2024-11-25
Vol. 19, No. 11 has been published online!
2024-10-16
Vol. 19, No. 10 has been published online!
2024-08-20
Vol. 19, No. 8 has been published online!
Home
>
Published Issues
>
2020
>
Volume 15, No. 1, January 2020
>
Collaboration Study Case between the Industry and the University: Use of Lightgbm Algorithm for Data Analytics in the Execution History of Scheduled Routines (Job)
Juan J. Arenas
1
, Cesar Soto
2
, and Freddy Paz
1
1. Department of Engineering Pontifical Catholic University of Peru, Lima, Lima 32, Peru
2. Graduate School Pontifical Catholic University of Peru, Lima, Lima 32, Peru
Abstract
—At present, the link between the University and the industry for the generation of innovation is becoming more frequent. This link is achieved through cooperation projects, where a company presents a challenge to the university. In the case of computer engineering, the challenges are in the development of software, systems auditing or data analytics, among others. In this paper, we will present the work done by the university for a company. The objective of this project was to analyze a set of more than 5 million data to predict whether a Job (routine program to execute an executable) will be executed correctly or not. For the project, CRISP-DM was used as a methodology, and the activities carried out during the execution of the project range from the understanding of the business to the validation of the selected model. The algorithm presented for the proposed model was LightGBM, which has been widely used due to the speed of training with large amounts of data.
Index Terms
—Information system, data analytics, case study, data methodology, machine learning.
Cite: Juan J. Arenas, Cesar Soto, and Freddy Paz, “Collaboration Study Case between the Industry and the University: Use of Lightgbm Algorithm for Data Analytics in the Execution History of Scheduled Routines (Job),”Journal of Communications vol. 15, no. 1, pp. 101-106, January 2020. Doi: 10.12720/jcm.15.1.101-106
Copyright © 2020 by the authors. This is an open access article distributed under the Creative Commons Attribution License (
CC BY-NC-ND 4.0
), which permits use, distribution and reproduction in any medium, provided that the article is properly cited, the use is non-commercial and no modifications or adaptations are made.
12-M08
PREVIOUS PAPER
Image Compression as a Variation Calculus Task
NEXT PAPER
Implementing Policy Rules in Attributes Based Access Control with XACML within a Cloud-Enabled IoT Environment