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Hauptverfasser: Busany, Nimrod, Hadar, Ethan, Hadad, Hananel, Rosenblum, Gil, Maszlanka, Zofia, Akhigbe, Okhaide, Amyot, Daniel
Format: Preprint
Veröffentlicht: 2024
Schlagworte:
Online-Zugang:https://arxiv.org/abs/2412.07668
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author Busany, Nimrod
Hadar, Ethan
Hadad, Hananel
Rosenblum, Gil
Maszlanka, Zofia
Akhigbe, Okhaide
Amyot, Daniel
author_facet Busany, Nimrod
Hadar, Ethan
Hadad, Hananel
Rosenblum, Gil
Maszlanka, Zofia
Akhigbe, Okhaide
Amyot, Daniel
contents Eliciting requirements for Business Intelligence (BI) systems remains a significant challenge, particularly in changing business environments. This paper introduces a novel AI-driven system, called AutoBIR, that leverages semantic search and Large Language Models (LLMs) to automate and accelerate the specification of BI requirements. The system facilitates intuitive interaction with stakeholders through a conversational interface, translating user inputs into prototype analytic code, descriptions, and data dependencies. Additionally, AutoBIR produces detailed test-case reports, optionally enhanced with visual aids, streamlining the requirement elicitation process. By incorporating user feedback, the system refines BI reporting and system design, demonstrating practical applications for expediting data-driven decision-making. This paper explores the broader potential of generative AI in transforming BI development, illustrating its role in enhancing data engineering practice for large-scale, evolving systems.
format Preprint
id arxiv_https___arxiv_org_abs_2412_07668
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Automating Business Intelligence Requirements with Generative AI and Semantic Search
Busany, Nimrod
Hadar, Ethan
Hadad, Hananel
Rosenblum, Gil
Maszlanka, Zofia
Akhigbe, Okhaide
Amyot, Daniel
Software Engineering
Eliciting requirements for Business Intelligence (BI) systems remains a significant challenge, particularly in changing business environments. This paper introduces a novel AI-driven system, called AutoBIR, that leverages semantic search and Large Language Models (LLMs) to automate and accelerate the specification of BI requirements. The system facilitates intuitive interaction with stakeholders through a conversational interface, translating user inputs into prototype analytic code, descriptions, and data dependencies. Additionally, AutoBIR produces detailed test-case reports, optionally enhanced with visual aids, streamlining the requirement elicitation process. By incorporating user feedback, the system refines BI reporting and system design, demonstrating practical applications for expediting data-driven decision-making. This paper explores the broader potential of generative AI in transforming BI development, illustrating its role in enhancing data engineering practice for large-scale, evolving systems.
title Automating Business Intelligence Requirements with Generative AI and Semantic Search
topic Software Engineering
url https://arxiv.org/abs/2412.07668