We present Anu.js, a toolkit for web-based immersive analytics (IA). The IA design space is vast, multi-faceted, and everchanging, challenging development in the absence of robust authoring support. The web is a popular platform for visualization applications, research, and teaching, and by leveraging the benefits of web technologies and adopting imperative authoring paradigms we can achieve the necessary expressiveness, compatibility, and ergonomics to support IA research and development. Anu.js adapts D3’s data-binding model to 3D contexts, granting fine-grained control over the creation, representation, animation, performance, and interaction of 3D scene-graphs. Additionally, Anu.js offers declarative prefabs to support common visualization elements and interactions, and synergizes with popular visualization libraries which allows developers to leverage these proven utilities. We demonstrate Anu.js’s potential through our diverse example gallery, expert evaluation, and potential future applications. Through this, Anu.js empowers developers in accelerating the creation of novel and bespoke visualizations for immersive web-based applications.
ACM CHI Conference on Human Factors in Computing Systems