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Canis: A High-Level Language for Data-Driven Chart Animations
Authors:T Ge  Y Zhao  B Lee  D Ren  B Chen  Y Wang
Affiliation:1. Shandong University, Qingdao, China;2. Microsoft Research, Redmond, WA, United States;3. University of California, Santa Barbara, CA, United States;4. Peking University, Beijing, China
Abstract:In this paper, we introduce Canis, a high-level domain-specific language that enables declarative specifications of data-driven chart animations. By leveraging data-enriched SVG charts, its grammar of animations can be applied to the charts created by existing chart construction tools. With Canis, designers can select marks from the charts, partition the selected marks into mark units based on data attributes, and apply animation effects to the mark units, with the control of when the effects start. The Canis compiler automatically synthesizes the Lottie animation JSON files Aira], which can be rendered natively across multiple platforms. To demonstrate Canis’ expressiveness, we present a wide range of chart animations. We also evaluate its scalability by showing the effectiveness of our compiler in reducing the output specification size and comparing its performance on different platforms against D3.
Keywords:CCS Concepts  ? Human-centered computing → Visualization toolkits  Information visualization  Visualization systems and tools
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