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-Latin American research, design and the history of design, education, hip-hop, African studies, the African diaspora, African American studies, literature, and creative writing. Fellows are provided with
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following areas: -Biophysical instrumentation development: optical and mechanical design, simulation, development and control -Optical imaging; Single-molecule fluorescence and FRET; Lasers; Pump-probe
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students on papers, theses, dissertations, fellowship proposals, presentations, talks, and other modes of communication. They also will design and lead workshops and events that will help Harvard Griffin
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for understanding how AI-enabled control, optimization, and market design can support large-scale decarbonization, grid modernization, and the integration of distributed and flexible energy resources. Research topics
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computing applications—mainly for a SWaP-constrained AV—using hybrid electro-photonic accelerators. We propose to design and prototype a complete electro-photonic computing (EPiC) system (CPUs + accelerators
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biological systems, with an emphasis on autonomous reasoning, decision-making, and reinforcement learning. The postdoctoral fellow will design, implement, and evaluate agentic AI frameworks that integrate
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traditions, as well as how religious worldviews inform the design, governance, and ethical evaluation of AI technologies. This position is a full-time postdoctoral appointment, one-year term (Academic Year
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findings to inform product-market fit, sensor design, and deployment strategy · Prepare results into a manuscript for peer-reviewed journal · Communicate project progress and coordinate with research team
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biology. A background in the visual arts and/or design is looked upon favorably. All positions require a doctoral degree. The Disease Biophysics Group is a creative, transdisciplinary group of engineers
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of polarization and magnetization degrees of freedom. Efforts are also aimed at learning computationally lean and geometrically rich representations and designing methods for quantifying uncertainty of predictions