A2P-Vis: an Analyzer-to-Presenter Agentic Pipeline for Visual Insights Generation and Reporting
Shuyu Gan, Renxiang Wang, James Mooney, Dongyeop Kang

TL;DR
A2P-Vis is an innovative multi-agent pipeline that automates the entire process of data analysis, visualization, and report generation, producing high-quality, coherent data reports without manual intervention.
Contribution
The paper introduces A2P-Vis, a novel multi-agent system that automates data profiling, visualization, insight scoring, and report writing, bridging gaps in end-to-end automated data science workflows.
Findings
Automates visualization and insight generation from raw data.
Produces publication-ready, coherent data reports.
Enhances practical usefulness of automated data analysis.
Abstract
Automating end-to-end data science pipeline with AI agents still stalls on two gaps: generating insightful, diverse visual evidence and assembling it into a coherent, professional report. We present A2P-Vis, a two-part, multi-agent pipeline that turns raw datasets into a high-quality data-visualization report. The Data Analyzer orchestrates profiling, proposes diverse visualization directions, generates and executes plotting code, filters low-quality figures with a legibility checker, and elicits candidate insights that are automatically scored for depth, correctness, specificity, depth and actionability. The Presenter then orders topics, composes chart-grounded narratives from the top-ranked insights, writes justified transitions, and revises the document for clarity and consistency, yielding a coherent, publication-ready report. Together, these agents convert raw data into curated…
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Taxonomy
TopicsData Visualization and Analytics · Scientific Computing and Data Management · Multimodal Machine Learning Applications
