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Details Title Postdoctoral Fellow in Deep Learning Theory and/or Theoretical Neuroscience School Harvard John A. Paulson School of Engineering and Applied Sciences Department/Area Position
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strong skills in data analysis, and have a strong background in the neuroscience, learning and memory, motor control, biomechanics, control theory, or a related field. Strong statistical understanding and
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Details Title Postdoctoral Fellow in Psychology School Faculty of Arts and Sciences Department/Area Psychology Position Description Research on Theory-of-Mind, Pragmatics, and ‘Scripted’ Behavior
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evolutionary life history theory, growth and development, endocrinology, nutrition, reproductive ecology or aging. Additional Qualifications Special Instructions Candidates should upload the following materials
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on performance. Basic Qualifications Candidates must have a PhD in a subfield of Biological Anthropology or an adjacent field, with interests in areas like evolutionary life history theory, growth and development
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Microalgal-Bacterial Symbioses Princeton University, laboratory of Mohammad Seyedsayamdost Suzana Leles, Ph.D. Reconciling theory to predict the evolutionary trajectories of mixotrophic protists University
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following areas: Foundations of intelligence, including mathematical and computational models of intelligence, cognitive theories of intelligence, and the neurobiological basis of intelligence. Applications
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are available in Jacob Zavatone-Veth’s research group at Harvard’s Center for Brain Science. We are broadly interested in the theory of neural computation; see jzv.io for more information and recent publications
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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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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