Claire Kayacik

Claire Kayacik

Claire Kayacik is a UX Researcher currently working on zero-to-one generative AI initiatives on Google Search. She advocates for human-centered AI practices through her 20% work with the People + AI Research Group (PAIR) and Google Brain's Magenta music and creativity project.
Authored Publications
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    Preview abstract In this paper, we present a natural language code synthesis tool, GenLine, backed by a large generative language model and a set of task-specific prompts. To understand the user experience of natural language code synthesis with these types of models, we conducted a user study in which participants applied GenLine to two programming tasks. Our results indicate that while natural language code synthesis can sometimes provide a magical experience, participants still faced challenges. In particular, participants felt that they needed to learn the model’s "syntax,'' despite their input being natural language. Participants also faced challenges in debugging model input, and demonstrated a wide range of variability in the scope and specificity of their requests. From these findings, we discuss design implications for future natural language code synthesis tools built using generating language models. View details
    Preview abstract Creative generative machine learning interfaces are stronger when multiple actors bearing different points of view actively contribute to them. User experience (UX) research and design involvement in the creation of machine learning (ML) models help ML research scientists to more effectively identify human needs that ML models will fulfill. The People and AI Research (PAIR) group within Google developed a novel program method in which UXers are embedded into an ML research group for three months to provide a human-centered perspective on the creation of ML models. The first full-time cohort of UXers were embedded in a team of ML research scientists focused on deep generative models to assist in music composition. Here, we discuss the structure and goals of the program, challenges we faced during execution, and insights gained as a result of the process. We offer practical suggestions for how to foster communication between UX and ML research teams and recommended UX design processes for building creative generative machine learning interfaces. View details
    Magenta Studio: Augmenting Creativity with Deep Learning in Ableton Live
    Yotam Mann
    Jon Gillick
    Monica Dinculescu
    Carey Radebaugh
    Curtis Hawthorne
    Proceedings of the International Workshop on Musical Metacreation (MUME) (2019)
    Preview abstract The field of Musical Metacreation (MuMe) has pro-duced impressive results for both autonomous and in-teractive creativity. However, there are few examplesof these systems crossing over to the “mainstream” ofmusic creation and consumption. We tie together ex-isting frameworks (Electron, TensorFlow.js, and MaxFor Live) to develop a system whose purpose is tobring the promise of interactive MuMe to the realmof professional music creators. Combining compellingapplications of deep learning based music generationwith a focus on ease of installation and use in a pop-ular DAW, we hope to expose more musicians and pro-ducers to the potential of using such systems in theircreative workflows. Our suite of plug-ins for AbletonLive, named Magenta Studio, is available for downloadathttp://g.co/magenta/studioalong with itsopen source implementation. View details