Finding a good computational representation for a problem allows us to map high level objectives to low level details and select the appropriate set of algorithmic tools. Selecting this representation requires not only computational knowledge but also a deep understanding of the application domain. In this talk I will discuss my work on building design and media authoring tools by combining domain expertise with a wide range of algorithmic techniques. I will describe how this approach helps us to offload tedious steps to computation and guide users’ attention toward the more creative, open-ended decisions. As two different examples of this approach, I will discuss my work on video editing and quilt design tools. I will also discuss future opportunities to combine domain expertise and algorithmic insights to build novel computational tools.
Bio: Mackenzie Leake is a METEOR postdoctoral fellow at MIT CSAIL. She received her PhD and MS in computer science from Stanford University and a BA in computational science and studio art from Scripps College. Her research in human-computer interaction and computer graphics focuses on designing computational tools for various creative domains, including textiles and video. Her research has been supported by Adobe Research, Brown Institute for Media Innovation, and Stanford Enhancing Diversity in Graduate Education (EDGE) fellowships. In 2022 she was named a Rising Star in EECS and a WiGraph Rising Star in Computer Graphics.
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