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  2. Zoubin Ghahramani | Department of Engineering

    https://www.eng.cam.ac.uk/profiles/zg201
    My work focuses on advancing the general mathematical and algorithmic foundations of these fields, although I have also worked on applications of Bayesian machine learning to computational biology and bioinformatics, econometrics ... His academic career
  3. Engineering Tripos Part IIB, 4G3: Computational Neuroscience, 2023-24 …

    https://teaching.eng.cam.ac.uk/content/engineering-tripos-part-iib-4g3-computational-neuroscience-2023-24
    describe models of plasticity and learning and how they apply to the basic paradigms of machine learning (supervised, unsupervised, reinforcement) as well as pattern formation in the nervous system. ... Content. The course covers basic topics in
  4. Research Assistants | Cambridge Centre for Neuropsychiatric Research

    https://ccnr.ceb.cam.ac.uk/Team/Research-Assistants
    14 Jul 2024: During my studies there, I developed strong skills in applied data science and machine learning, as well as fundamental knowledge of neural computation and computational cognitive neuroscience, focused on realistic simulation ... health. Contact:
  5. Computational and Biological Learning Laboratory | Department of…

    https://www.eng.cam.ac.uk/research/academic-divisions/information-engineering/research-groups/computational-and-biological
    Computational and Biological Learning Laboratory. The Computational and Biological Learning Laboratory uses engineering approaches to understand the brain and to develop artificial learning systems. ... Research includes Bayesian learning, computational
  6. Engineering Tripos Part IIB, 4G3: Computational Neuroscience, 2021-22 …

    https://teaching.eng.cam.ac.uk/content/engineering-tripos-part-iib-4g3-computational-neuroscience-2021-22
    describe models of plasticity and learning and how they apply to the basic paradigms of machine learning (supervised, unsupervised, reinforcement) as well as pattern formation in the nervous system. ... Content. The course covers basic topics in
  7. Engineering Tripos Part IIB, 4G3: Computational Neuroscience, 2020-21 …

    https://teaching.eng.cam.ac.uk/content/engineering-tripos-part-iib-4g3-computational-neuroscience-2020-21
    describe models of plasticity and learning and how they apply to the basic paradigms of machine learning (supervised, unsupervised, reinforcement) as well as pattern formation in the nervous system. ... Content. The course covers basic topics in
  8. Engineering Tripos Part IIB, 4G3: Computational Neuroscience, 2022-23 …

    https://teaching.eng.cam.ac.uk/content/engineering-tripos-part-iib-4g3-computational-neuroscience-2022-23
    describe models of plasticity and learning and how they apply to the basic paradigms of machine learning (supervised, unsupervised, reinforcement) as well as pattern formation in the nervous system. ... Content. The course covers basic topics in
  9. Engineering Tripos Part IIB, 4G3: Computational Neuroscience, 2017-18 …

    https://teaching.eng.cam.ac.uk/content/engineering-tripos-part-iib-4g3-computational-neuroscience-2017-18
    describe models of plasticity and learning and how they apply to the basic paradigms of machine learning (supervised, unsupervised, reinforcement) as well as pattern formation in the nervous system. ... Content. The course covers basic topics in
  10. Engineering Tripos Part IIB, 4G3: Computational Neuroscience, 2019-20 …

    https://teaching.eng.cam.ac.uk/content/engineering-tripos-part-iib-4g3-computational-neuroscience-2019-20
    describe models of plasticity and learning and how they apply to the basic paradigms of machine learning (supervised, unsupervised, reinforcement) as well as pattern formation in the nervous system. ... Content. The course covers basic topics in
  11. Engineering Tripos Part IIB, 4G3: Computational Neuroscience, 2018-19 …

    https://teaching.eng.cam.ac.uk/content/engineering-tripos-part-iib-4g3-computational-neuroscience-2018-19
    describe models of plasticity and learning and how they apply to the basic paradigms of machine learning (supervised, unsupervised, reinforcement) as well as pattern formation in the nervous system. ... Content. The course covers basic topics in

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