CoDA: Agentic Systems for Collaborative Data Visualization

Misha Sra
Zichen Chen
2025

Abstract

Automating data visualization from natural language is crucial for data science, yet current systems struggle with complex, multi-file datasets and iterative refinement. Existing approaches, including simple single- or multi-agent systems, often oversimplify the task, focusing on initial query parsing while failing to robustly manage data complexity, code errors, or final visualization quality. In this paper, we reframe this challenge as a collaborative multi-agent problem. We introduce CoDA, a multi-agent system that employs specialized LLM agents for metadata analysis, task planning, code generation, and iterative reflection. We formalize this pipeline, demonstrating how metadata-focused analysis bypasses token limits and quality-driven refinement ensures robustness. Extensive evaluations show CoDA achieves substantial accuracy gains, outperforming competitive baselines by up to 49.0%. This work advocates that future visualization automation should evolve from isolated code generation to integrated, collaborative agentic workflows.