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Skip to content HARVARD.EDU About Mission / Vision People Annual Reports Contact Us Programs AWS Impact Computing Bias² Causal Inference CrisisReady Fellowships & Funds SPUDS Trust in Science See
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the fellow to become familiar throughout this project with statistical techniques for causal inference and high dimensional data. 3. “Impacts of weather insurance on adaptation, social networks and migration
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Qualifications: Experience: Proven track record of research excellence, as demonstrated by publications in top peer-reviewed journals. Skills: Strong analytical and problem-solving abilities, excellent
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relevant field (e.g., electrical engineering or neuroscience). Additional Qualifications: Experience: Proven track record of research excellence, as demonstrated by publications in top peer-reviewed journals
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: Applicants are expected to hold a Ph.D. Excellent track record of research involving design and characterization of biomolecules. The candidate should be open-minded, creative, energetic, and a critical
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unique ideas and perspectives to the table. Key Responsibilities: Conduct phylogenetic and molecular analyses to track venom evolution in cephalopods using bioinformatics and comparative phylogenetic
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assessment, and ambulatory behavioral assessments to precisely track brain and cognitive change over short intervals. The program of research seeks to understand individual differences in aging trajectories
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fellow to join our studies on the genetic basis of human evolution, with a focus on the evolution of the human brain. Candidates with a strong track record in any biological field are welcome to apply
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excellent track record of research involving immunology, therapeutics, and/or design and characterization of biomolecules. The candidate should be open-minded, creative, energetic, and a critical thinker
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at least two of the following: electrophysiology, rodent experimentation, programming of controllers, neuroprosthetics or neuromodulators, peripheral nerve surgery, neural interfacing models Track record