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citizen of a developing country or emerging economy where women are underrepresented in Science, Technology, Engineering and Mathematics (STEM) disciplines*. You are not eligible to apply if you hold dual
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represented in the building blocks of AI. At its core, IDI is a data practice around which other interdisciplinary work is convened. While theory and analysis are critical components of IDI’s work, our impact
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of knowledge represented in the building blocks of AI. At its core, IDI is a data practice around which other interdisciplinary work is convened. While theory and analysis are critical components of IDI’s work
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; integration across disciplines; and balancing theory, experimentation, and practice to create an unmatched environment for learning and exploration. Through collaboration with researchers from all parts
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-driven applications, including conversational interfaces, chatbots, text summarizers, and recommendation engines and managing engineering teams Bachelors/Advanced Degree in Mathematics, Physics
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place across the departments of Physics, Chemistry and Chemical Biology, Mathematics and the School of Engineering and Applied Sciences. Active research areas include quantum information and computer
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, control theory, or a related field. Strong statistical understanding and a talent for data analysis and visualization using Matlab or Python are expected. Specific experience with experimental design
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development of researchers who are transitioning from training environments in the physical, mathematical, computational sciences and/or engineering into postdoctoral work in the biological sciences, and who
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interface between the life and mathematical sciences as part of Harvard’s Initiative in Quantitative Biology and its NSF/Simons Center for the Mathematical and Statistical Analysis of Biology. Funds from
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and statistical genetics. Potential research projects include (but are not limited to) developing statistical methods and theory for large-scale multiple testing, variable selection, spectral clustering