Enhancing Supply Chain Efficiency Through Retrieve-Augmented Generation Approach in Large Language Models

Publication Date

1-1-2024

Document Type

Conference Proceeding

Publication Title

Proceedings - IEEE 10th International Conference on Big Data Computing Service and Applications, BigDataService 2024

DOI

10.1109/BigDataService62917.2024.00025

First Page

117

Last Page

121

Abstract

This paper delves into the fascinating integration of Retrieval-Augmented Generation (RAG) with Large Language Models (LLMs) for optimizing supply chain management operations. RAG combines the robust retrieval capabilities of information retrieval systems with the generative prowess of neural language models to create a powerful tool that bolsters data protection while expanding the knowledge base to capture supply chain intricacies. This innovative methodology revolves around a dual-component system that employs a retrieval module to pinpoint relevant information from a knowledge base, while a generation module crafts contextualized responses using large language models. Through iterative retrieval strategies and tailored chunk optimization techniques, RAG enables contextualized analysis, predictive insights, and data-driven decision-making that streamlines processes from demand forecasting to inventory optimization. An experimental setup mimicking enterprise data classification assesses RAG's efficacy, employing recursive retrieval, multi-hop querying, and integration of generative and retrieval processes. Results showcase RAG's potential to revolutionize supply chain logistics, enhancing operational agility, minimizing disruptions, and fortifying data security. The impacts span improved forecasting accuracy, inventory level optimization, supplier risk assessment, and comprehensive supply chain reporting. However, RAG necessitates stringent ethical considerations and robust countermeasures against exploitation. Future work centers on system scalability, advanced evaluation metrics, and interdisciplinary collaboration between machine learning, retrieval systems, and supply chain domains. Overall, this paper presents a groundbreaking approach to optimizing supply chain management operations that could significantly impact the industry's future.

Keywords

Deep Learning, LLM, RAG, Supply Chain Operations, Unstructured Big Data

Department

Computer Engineering

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