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Volume 6 Issue 8
August 2025
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Measurement and Effects of Supply Chain Bottlenecks Using Natural Language Processing
Author(s) | Bharathram Nagaiah |
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Country | United States |
Abstract | In today’s increasingly complex global manufacturing landscape, supply chain bottlenecks have far-reaching consequences—from production delays and surging costs to reputation damage. This article explores how NextGen Natural Language Processing (NLP) technology can be harnessed by a Chief Information Officer (CIO) at a global manufacturing enterprise to identify, measure, and mitigate bottlenecks across worldwide facilities. By ingesting unstructured operational data—such as Forecast, lead times, inventory levels, vehicle info, procurement notes, shift reports, Production data and customer support tickets—into an intelligent “single pane of glass” digital dashboard, NLP enables real-time detection of emerging issues and supports proactive decision-making. The article spans essential areas: setting objectives and key performance indicators (KPIs); selecting NLP models and algorithms; building and deploying the NLP pipeline; extracting and interpreting bottleneck signals; and quantifying improvements in cycle time, cost savings, and service level. A case scenario illustrates how one division achieved a 25% reduction in downtime and a 15% cut in logistics latency in six months. We conclude with best practices, organizational readiness recommendations, and a future outlook on integrating multimodal AI sensors for even greater operational resilience and agility. |
Keywords | NLP supply chain, supply chain bottlenecks, global manufacturing ops, predictive ops intelligence, CIO digital transformation |
Field | Engineering |
Published In | Volume 6, Issue 8, August 2025 |
Published On | 2025-08-04 |
Cite This | Measurement and Effects of Supply Chain Bottlenecks Using Natural Language Processing - Bharathram Nagaiah - IJLRP Volume 6, Issue 8, August 2025. DOI 10.70528/IJLRP.v6.i8.1690 |
DOI | https://doi.org/10.70528/IJLRP.v6.i8.1690 |
Short DOI | https://doi.org/g9v44m |
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