Economic Aspects of Introducing Artificial Intelligence Solutions in Logistics and Port Sectors: The Data Entry Case

The development and implementation of digital solutions are new in contemporary businesses in logistics. As a next step, the potential of advanced solutions that make use of an AI or ML algorithm and which leverage on data is highly promoted. Yet, the implementation on a large scale of these types o...

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Main Authors: Valentin Carlan, Thierry Vanelslander
Format: Article
Language:English
Published: Frontiers Media S.A. 2021-07-01
Series:Frontiers in Future Transportation
Subjects:
Online Access:https://www.frontiersin.org/articles/10.3389/ffutr.2021.710330/full
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spelling doaj-8eec23d8c2d44f4eb031916e008cfea82021-09-04T01:51:00ZengFrontiers Media S.A.Frontiers in Future Transportation2673-52102021-07-01210.3389/ffutr.2021.710330710330Economic Aspects of Introducing Artificial Intelligence Solutions in Logistics and Port Sectors: The Data Entry CaseValentin CarlanThierry VanelslanderThe development and implementation of digital solutions are new in contemporary businesses in logistics. As a next step, the potential of advanced solutions that make use of an AI or ML algorithm and which leverage on data is highly promoted. Yet, the implementation on a large scale of these types of solutions is happening at a slow pace. Recent studies show that a considerable amount of data in the maritime supply chain (MarSC) is still transferred through traditional communication channels (e.g., via e-mails or attached xls, pdf, csv, xml, etc. documents). Human intervention is thus needed to fetch this information and type it over in internal ERP systems. This type of practice opens the scene for extra labor, misinterpretation, or faults. This research puts forward the port users’ perspective on the implementation of AI and ML-based applications for the automatic handling of data. To achieve this goal, a structured survey is launched. The survey results show that, while AI and ML technologies have a high potential to take over repetitive and fault-sensitive tasks, human operators are still needed to maintain customer relations or carry out other planning-related tasks. This initial inquiry shows that, although there are operational costs that are avoided by AI-based technologies, the logistics sector shows low willingness to pay or join development tracks for this type of solutions.https://www.frontiersin.org/articles/10.3389/ffutr.2021.710330/fullAI in logisticswillingness to paycost typesimplementation requirementsdata entry
collection DOAJ
language English
format Article
sources DOAJ
author Valentin Carlan
Thierry Vanelslander
spellingShingle Valentin Carlan
Thierry Vanelslander
Economic Aspects of Introducing Artificial Intelligence Solutions in Logistics and Port Sectors: The Data Entry Case
Frontiers in Future Transportation
AI in logistics
willingness to pay
cost types
implementation requirements
data entry
author_facet Valentin Carlan
Thierry Vanelslander
author_sort Valentin Carlan
title Economic Aspects of Introducing Artificial Intelligence Solutions in Logistics and Port Sectors: The Data Entry Case
title_short Economic Aspects of Introducing Artificial Intelligence Solutions in Logistics and Port Sectors: The Data Entry Case
title_full Economic Aspects of Introducing Artificial Intelligence Solutions in Logistics and Port Sectors: The Data Entry Case
title_fullStr Economic Aspects of Introducing Artificial Intelligence Solutions in Logistics and Port Sectors: The Data Entry Case
title_full_unstemmed Economic Aspects of Introducing Artificial Intelligence Solutions in Logistics and Port Sectors: The Data Entry Case
title_sort economic aspects of introducing artificial intelligence solutions in logistics and port sectors: the data entry case
publisher Frontiers Media S.A.
series Frontiers in Future Transportation
issn 2673-5210
publishDate 2021-07-01
description The development and implementation of digital solutions are new in contemporary businesses in logistics. As a next step, the potential of advanced solutions that make use of an AI or ML algorithm and which leverage on data is highly promoted. Yet, the implementation on a large scale of these types of solutions is happening at a slow pace. Recent studies show that a considerable amount of data in the maritime supply chain (MarSC) is still transferred through traditional communication channels (e.g., via e-mails or attached xls, pdf, csv, xml, etc. documents). Human intervention is thus needed to fetch this information and type it over in internal ERP systems. This type of practice opens the scene for extra labor, misinterpretation, or faults. This research puts forward the port users’ perspective on the implementation of AI and ML-based applications for the automatic handling of data. To achieve this goal, a structured survey is launched. The survey results show that, while AI and ML technologies have a high potential to take over repetitive and fault-sensitive tasks, human operators are still needed to maintain customer relations or carry out other planning-related tasks. This initial inquiry shows that, although there are operational costs that are avoided by AI-based technologies, the logistics sector shows low willingness to pay or join development tracks for this type of solutions.
topic AI in logistics
willingness to pay
cost types
implementation requirements
data entry
url https://www.frontiersin.org/articles/10.3389/ffutr.2021.710330/full
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