Sergey Levine speaking on July 28 in Developing Minds global online lecture series
Dear colleagues, On July 28, the Developing Minds global online lecture series will feature Sergey Levine, UC Berkeley, USA: "From Reinforcement Learning to Embodied Learning“ https://sites.google.com/view/developing-minds-series/home The live event will take place via zoom at: 09:00 PDT (Pacific Daylight Time) 16:00 UTC (Universal Coordinated Time) 18:00 CEST (Central European Summer Time) 01:00 JST, July 29 (Japan Standard Time) To participate please register here: https://sites.google.com/view/developing-minds-series/home Abstract Reinforcement learning provides one of the most widely studied abstractions for learning-based control. However, while the RL formalism is elegant and concise, real-world embodied learning problems (e.g., in robotics) deviate substantially from the most widely studied RL problem settings. The need to exist in a real physical environment challenges RL methods in terms of generalization, robustness, and capacity for lifelong learning -- all aspects of the RL problem that are often neglected in commonly studied benchmark problems. In this talk, I will discuss how we can devise a framework for learning-based control that is at its core focused on generalization, robustness, and continual adaptation. I will argue that effective utilization of previously collected experience, in combination with multi-task learning, represents one of the most promising paths for tackling these challenges, and present recent research in RL and robotics that studies this perspective. Bio Sergey Levine received a BS and MS in Computer Science from Stanford University in 2009, and a Ph.D. in Computer Science from Stanford University in 2014. He joined the faculty of the Department of Electrical Engineering and Computer Sciences at UC Berkeley in fall 2016. His work focuses on machine learning for decision making and control, with an emphasis on deep learning and reinforcement learning algorithms. Applications of his work include autonomous robots and vehicles, as well as computer vision and graphics. His research includes developing algorithms for end-to-end training of deep neural network policies that combine perception and control, scalable algorithms for inverse reinforcement learning, deep reinforcement learning algorithms, and more. Web: https://people.eecs.berkeley.edu/~svlevine/ The talk will also be recored and the recording made available via the web page: https://sites.google.com/view/developing-minds-series/home Stay healthy, Jochen Triesch -- Prof. Dr. Jochen Triesch Johanna Quandt Chair for Theoretical Life Sciences Frankfurt Institute for Advanced Studies and Goethe University Frankfurt http://fias.uni-frankfurt.de/~triesch/ Tel: +49 (0)69 798-47531 Fax: +49 (0)69 798-47611
Dear All, We are looking for postdocs and graduate students (Master’s and/or Ph.D. levels) to use inspirations from neuroscience to make better AI and conversely to apply AI to better understand brain function and behaviour. Projects will be related to our recent work: Neurons learn by predicting future activity. Nature Machine Intelligence 2022 https://www.nature.com/articles/s42256-021-00430-y Predictive neuronal adaptation as a basis for consciousness. Front in Sys Neurosci 2022 https://www.frontiersin.org/articles/10.3389/fnsys.2021.767461/full Miniaturized head-mounted microscope for whole-cortex mesoscale imaging in freely behaving mice. Nature Methods 2021 https://www.nature.com/articles/s41592-021-01104-8 A Matlab-based toolbox for characterizing behavior of rodents engaged in string-pulling. Elife 2020 https://elifesciences.org/articles/54540 Challenges of a small world analysis for the continuous monitoring of behavior in mice. Neuroscience and Behavioral Reviews 2022 https://www.sciencedirect.com/science/article/pii/S0149763422001105 Data-driven analyses of motor impairments in animal models of neurological disorders. PLoS Biology 2019 https://journals.plos.org/plosbiology/article?id=10.1371/journal.pbio.300051... The project is a collaborative effort between the research groups of Majid Mohajerani (http://lethbridgebraindynamics.com/majid-mohajerani/) and Artur Luczak (http://lethbridgebraindynamics.com/artur-luczak/). Successful candidates will join the highly collaborative and interdisciplinary Canadian Centre for Behavioural Neuroscience and Brain Dynamics group. We are located close to Rocky Mountains, Lethbridge has the largest number of sunny days in Canada, and it is the most affordable city for young people in Canada (https://dailyhive.com/calgary/alberta-city-most-affordable-young-people ). The applications review will start on Aug 15th till the positions are filled. Interested applicants must send an email to Dr Mohajerani (mohajerani@uleth.ca<mailto:mohajerani@uleth.ca>) and Dr. Luczak (luczak@uleth.ca<mailto:luczak@uleth.ca>) and include a cover letter, curriculum vitae, a brief statement of research interests, and contact information of three references. Cheers, Artur
participants (2)
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Jochen Triesch
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Luczak, Artur