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SiriusBI: A Comprehensive LLM-Powered Solution for Data Analytics in Business Intelligence

Databases 2025-07-29 v3

Abstract

With the proliferation of Large Language Models (LLMs) in Business Intelligence (BI), existing solutions face critical challenges in industrial deployments: functionality deficiencies from legacy systems failing to meet evolving LLM-era user demands, interaction limitations from single-round SQL generation paradigms inadequate for multi-round clarification, and cost for domain adaptation arising from cross-domain methods migration. We present SiriusBI, a practical LLM-powered BI system addressing the challenges of industrial deployments through three key innovations: (a) An end-to-end architecture integrating multi-module coordination to overcome functionality gaps in legacy systems; (b) A multi-round dialogue with querying mechanism, consisting of semantic completion, knowledge-guided clarification, and proactive querying processes, to resolve interaction constraints in SQL generation; (c) A data-conditioned SQL generation method selection strategy that supports both an efficient one-step Fine-Tuning approach and a two-step method leveraging Semantic Intermediate Representation for low-cost cross-domain applications. Experiments on both real-world datasets and public benchmarks demonstrate the effectiveness of SiriusBI. User studies further confirm that SiriusBI enhances both productivity and user experience. As an independent service on Tencent's data platform, SiriusBI is deployed across finance, advertising, and cloud sectors, serving dozens of enterprise clients. It achieves over 93% accuracy in SQL generation and reduces data analysts' query time from minutes to seconds in real-world applications.

Keywords

Cite

@article{arxiv.2411.06102,
  title  = {SiriusBI: A Comprehensive LLM-Powered Solution for Data Analytics in Business Intelligence},
  author = {Jie Jiang and Haining Xie and Siqi Shen and Yu Shen and Zihan Zhang and Meng Lei and Yifeng Zheng and Yang Li and Chunyou Li and Danqing Huang and Yinjun Wu and Wentao Zhang and Xiaofeng Yang and Bin Cui and Peng Chen},
  journal= {arXiv preprint arXiv:2411.06102},
  year   = {2025}
}

Comments

14 pages, 8 figures

R2 v1 2026-06-28T19:54:07.316Z