TY - CONF T1 - Interactive Visualization for Data Science Scripts T2 - 2022 IEEE Visualization in Data Science (VDS) Y1 - 2022 A1 - Faust, Rebecca A1 - C. Scheidegger A1 - K. Isaacs A1 - W. Z. Bernstein A1 - M. Sharp A1 - North, Chris KW - behavioral sciences KW - codes KW - data science KW - Data visualization KW - debugging KW - prototypes KW - visualization AB - As the field of data science continues to grow, so does the need for adequate tools to understand and debug data science scripts. Current debugging practices fall short when applied to a data science setting, due to the exploratory and iterative nature of analysis scripts. Additionally, computational notebooks, the preferred scripting environment of many data scientists, present additional challenges to understanding and debugging workflows, including the non-linear execution of code snippets. This paper presents Anteater, a trace-based visual debugging method for data science scripts. Anteater automatically traces and visualizes execution data with minimal analyst input. The visualizations illustrate execution and value behaviors that aid in understanding the results of analysis scripts. To maximize the number of workflows supported, we present prototype implementations in both Python and Jupyter. Last, to demonstrate Anteater’s support for analysis understanding tasks, we provide two usage scenarios on real world analysis scripts. JF - 2022 IEEE Visualization in Data Science (VDS) PB - IEEE Computer Society CY - Los Alamitos, CA, USA UR - https://doi.ieeecomputersociety.org/10.1109/VDS57266.2022.00009 ER -