How to use no-code artificial intelligence to predict and minimize the inventory distortions for resilient supply chains
Year of publication: |
2024
|
---|---|
Authors: | Jauhar, Sunil Kumar ; Jani, Shashank Mayurkumar ; Kamble, Sachin S. ; Pratap, Saurabh ; Belhadi, Amine ; Gupta, Shivam |
Published in: |
International journal of production research. - London [u.a.] : Taylor & Francis, ISSN 1366-588X, ZDB-ID 1485085-0. - Vol. 62.2024, 15, p. 5510-5534
|
Subject: | Inventory distortion | No-Code Artificial Intelligence (NCAI) | out-of-stocks | overstocks | supply chain resilience | Lieferkette | Supply chain | Künstliche Intelligenz | Artificial intelligence | Lagermanagement | Warehouse management | Risikomanagement | Risk management | Lagerhaltungsmodell | Inventory model |
-
Roles of inventory and reserve capacity in mitigating supply chain disruption risk
Lücker, Florian, (2019)
-
Evolving hybrid deep neural network models for end-to-end inventory ordering decisions
Moraes, Thais de Castro, (2023)
-
Digital inventory powered by drones and robots
Yearling, Matt, (2018)
- More ...
-
Digital transformation technologies to analyze product returns in the e-commerce industry
Jauhar, Sunil Kumar, (2023)
-
Belhadi, Amine, (2023)
-
Maheshwari, Pratik, (2024)
- More ...