Industrial Data: Impact Factor, Indexing, Publication Time & Fees


The Industrial Data is reputed journal publishes research related to engineering, innovation, technology, science, management. The ISSN of the journal is 1810-9993.

Through this web page, researchers can check the indexing, publication fee, journal quartile, and journal aim & scope.

Industrial Data: Details

Journal TitleIndustrial Data
PublisherUniversidad Nacional Mayor de San Marcos
Publication CountryPeru
ISSN1810-9993
Publication AreaTechnology: Technology (General): Industrial engineering. Management engineering
Publication LanguageSpanish
Review ProcessDouble anonymous peer review
Scopus IndexedNo

Indexing

The Industrial Data is indexed in: DOAJ.

Publication Fee

The Industrial Data does not charge any publication fee.

Publication Time

The Industrial Data takes an average of 16 weeks to publish research papers.

Journal Official Website

The official website of the journal is https://revistasinvestigacion.unmsm.edu.pe/index.php/idata.

Please visit only official website of the journal to submit research papers.



Similiar journals to publish


Industrial Data
ISSN: 1810-9993
Publisher: Universidad Nacional Mayor de San Marcos
Journal Scope: engineering, innovation, technology, science, management

Industrial Management and Data Systems
ISSN: 2635577
Publisher: Emerald Group Publishing Ltd.
Journal Scope: Business, Management and Accounting; Computer Science; Engineering

ATOMIC DATA AND NUCLEAR DATA TABLES
ISSN: 1090-2090
Publisher: ACADEMIC PRESS INC ELSEVIER SCIENCE
Journal Scope: Physics and Astronomy

INDUSTRIAL MANAGEMENT & DATA SYSTEMS
ISSN: 1758-5783
Publisher: EMERALD GROUP PUBLISHING LTD
Journal Scope:

Ingenieria Industrial
ISSN: 0718-8307
Publisher: Universidad del Bío-Bío
Journal Scope: industrial engineering, technology, simulation, supply chain, operational research, operations management

Indonesian Journal of Data and Science
ISSN: 2715-9930
Publisher: Yocto Brain
Journal Scope: data science, data mining, data communication, data security, data representation