JarviX: A LLM No code Platform for Tabular Data Analysis and Optimization
Shang-Ching Liu, ShengKun Wang, Wenqi Lin, Chung-Wei Hsiung, Yi-Chen, Hsieh, Yu-Ping Cheng, Sian-Hong Luo, Tsungyao Chang, Jianwei Zhang

TL;DR
JarviX is an innovative no-code platform leveraging Large Language Models to automate and optimize tabular data analysis, visualization, and predictive modeling, streamlining data science workflows.
Contribution
It introduces a comprehensive framework combining LLM-driven data insights with AutoML for automated optimization of machine configurations.
Findings
Effective data insight summaries generated by LLMs
Automated pipeline improves analysis efficiency
Successful application in practical use cases
Abstract
In this study, we introduce JarviX, a sophisticated data analytics framework. JarviX is designed to employ Large Language Models (LLMs) to facilitate an automated guide and execute high-precision data analyzes on tabular datasets. This framework emphasizes the significance of varying column types, capitalizing on state-of-the-art LLMs to generate concise data insight summaries, propose relevant analysis inquiries, visualize data effectively, and provide comprehensive explanations for results drawn from an extensive data analysis pipeline. Moreover, JarviX incorporates an automated machine learning (AutoML) pipeline for predictive modeling. This integration forms a comprehensive and automated optimization cycle, which proves particularly advantageous for optimizing machine configuration. The efficacy and adaptability of JarviX are substantiated through a series of practical use case…
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Taxonomy
TopicsNatural Language Processing Techniques · Topic Modeling · Data Quality and Management
