Big data processing in the logistics industry

The aim of modern logistics is to achieve maximum connectivity in the supply chain. Companies are using increasingly innovative technological solutions, which creates the opportunity of generating a wide variety of data. This leads to several challenges and the need to change data storage and proces...

Full description

Bibliographic Details
Main Author: Snezhana Sulova
Format: Article
Language:Bulgarian
Published: Knowledge and business 2021-06-01
Series:Ikonomika i Kompûtʺrni Nauki
Subjects:
Online Access:http://eknigibg.net/Volume7/Issue1/spisanie-br1-2021.pdf
id doaj-e4afa97e1661498cb4aa218b69871af8
record_format Article
spelling doaj-e4afa97e1661498cb4aa218b69871af82021-06-28T11:36:22ZbulKnowledge and businessIkonomika i Kompûtʺrni Nauki2367-77912367-77912021-06-0171619Big data processing in the logistics industrySnezhana Sulova0https://orcid.org/0000-0003-4889-0973University of Economics, Varna, BulgariaThe aim of modern logistics is to achieve maximum connectivity in the supply chain. Companies are using increasingly innovative technological solutions, which creates the opportunity of generating a wide variety of data. This leads to several challenges and the need to change data storage and processing models. The aim of the study is to analyze the technological aspects of the digital transformation in logistics and to propose a conceptual framework for big data management and processing in the logistics industry. It is based on the discovery of existing prototype methodologies for big data processing which are used in all areas of business, as well as on the research of existing specific approaches to the processing of different types of big data in logistics. Basic principles for building a modern architecture for managing and processing big data in logistics are presented. The defined framework can be used by the companies to process structured, semi-structured and unstructured data in real time or for batch processing and to help optimize several business processes in the logistics industry. As a result, using it will help the analytical processes in these companies and it will be possible to make informed business decisions in dynamic conditions and in globalization. A software implementation of a conceptual framework with the Apache Handoop open-source software is proposed. The study is part of Project BG05M2OP001-1.002-0002-C02 "Digitalization of Economy in a Big Data Environment".http://eknigibg.net/Volume7/Issue1/spisanie-br1-2021.pdflogisticsbig datadigitizationconceptual framework
collection DOAJ
language Bulgarian
format Article
sources DOAJ
author Snezhana Sulova
spellingShingle Snezhana Sulova
Big data processing in the logistics industry
Ikonomika i Kompûtʺrni Nauki
logistics
big data
digitization
conceptual framework
author_facet Snezhana Sulova
author_sort Snezhana Sulova
title Big data processing in the logistics industry
title_short Big data processing in the logistics industry
title_full Big data processing in the logistics industry
title_fullStr Big data processing in the logistics industry
title_full_unstemmed Big data processing in the logistics industry
title_sort big data processing in the logistics industry
publisher Knowledge and business
series Ikonomika i Kompûtʺrni Nauki
issn 2367-7791
2367-7791
publishDate 2021-06-01
description The aim of modern logistics is to achieve maximum connectivity in the supply chain. Companies are using increasingly innovative technological solutions, which creates the opportunity of generating a wide variety of data. This leads to several challenges and the need to change data storage and processing models. The aim of the study is to analyze the technological aspects of the digital transformation in logistics and to propose a conceptual framework for big data management and processing in the logistics industry. It is based on the discovery of existing prototype methodologies for big data processing which are used in all areas of business, as well as on the research of existing specific approaches to the processing of different types of big data in logistics. Basic principles for building a modern architecture for managing and processing big data in logistics are presented. The defined framework can be used by the companies to process structured, semi-structured and unstructured data in real time or for batch processing and to help optimize several business processes in the logistics industry. As a result, using it will help the analytical processes in these companies and it will be possible to make informed business decisions in dynamic conditions and in globalization. A software implementation of a conceptual framework with the Apache Handoop open-source software is proposed. The study is part of Project BG05M2OP001-1.002-0002-C02 "Digitalization of Economy in a Big Data Environment".
topic logistics
big data
digitization
conceptual framework
url http://eknigibg.net/Volume7/Issue1/spisanie-br1-2021.pdf
work_keys_str_mv AT snezhanasulova bigdataprocessinginthelogisticsindustry
_version_ 1721356586889248768