Abstract

This article consolidates current knowledge of methods that optimize data flows in the supplier chain and associate them with an improvement in the verification of the supplier's efficiency. Drawing fifteen sources of precipitation collection, mapping four family-WMS-C methods, mapping of flow values ​​4.0 with EDI/ASN integration, logging process and KPI and SLAS sharing through cross orgastular administration and suppliers. Small empirical component includes: We reduce standardized effects from reported messages, combine them with random effect models and run meta-ragging for mediators testing (automation levels, depth of management, supplier level). Results show that data standardization plus visibility of close time realized permanently works better than different analysts; The management system increases technical benefits. Asymmetry must still explain; Publishing distortion of control shows limited deformity. The design of the synthesis, presents the verification and sam-dualog book for setting up the warehouse: diagnose data delay, perfection and agreement; Verify the supplier against the KPI; And adjust through targeted tasks (eg ASN mandate, Master-Dedaa, verification, combined control panel). The contribution is practical: Trackable structure and matrix of decision -making, which aligns the intervention of the data flow with the average supplier results and supports replication in practice in different contexts.

Keywords: Data flow optimization; Supplier performance; Warehouse logistics; EDI/ASN integration.

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 How to Cite
[1]
KASHTALIAN, T. 2025. Methods of optimizing data flow in the supply chain: Verification and adjustment of the efficiency of the work of suppliers. International Journal of Science and Engineering Invention. 11, 10 (Oct. 2025), 122–128. DOI:https://doi.org/10.23958.299.

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