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Immediately After Journal Club Immediately After Journal Club BRAINS, MINDS AND MACHINES COURSE SCHEDULE Morning 9-12 Afternoon 1:30-5:30 Evening 8-9 Night 9- Mon 15 Reception - 5pm at Swope Terrace Reception Tue 16 Introduction Student introductions Project introductions ---Lillie Auditorium ---Lillie Auditorium ---Loeb Laboratory Wed 17 9am MBL orientation Neuroscience,programming Project discussions Linear algebra, probability, optimization --Francisco Flores, Joe Olson--- ---Loeb Laboratory --Joe Olson, Andrei Barbu, Kevin Smith-- ---Loeb Laboratory ---Loeb Laboratory Thur 18 Deep Learning tutorial Studying the Murine Mind at a Big Scale, Evening Seminar Series: Reception @ 41-70 restaurant ---Andrei Barbu and Gemma Roig--- Tutorial:The Allen Institute's Brain "The Science of Consciousness" Neural Mechanisms Underlying Observatory and Cell Types Datasets --- Christof Koch, Allen Institute for Brain Science Visual Object Recognition: ---Christof Koch, Lydia Ng--- --- Lillie Auditorium The Convergence of Computer Vision ---Lillie Auditorium and Biological Vision ---Jim DiCarlo---- ---Lillie Auditorium Fri 19 Computational neuroscience/ Attention and active learning Evening Seminar Series: Reception @ MBL Quad Propagation of sensory representations ---Jacqueline Gottlieb--- --- Dorin Comaniciu, Siemens Healthcare in cortex-like deep architectures Computer Vision tutorial --- Speck Auditorium ---Gabriel Kreiman, Haim Sompolinsky--- ---Andrei Barbu and Gemma Roig--- ---Lillie Auditorium ---Lillie Auditorium Sat 20 Cognitive Neuroscience Neuroscience (methods), Journal Club Discussion Social @ MBL Quad and Face Recognition Neural data analysis @ MBL Private Dining Room, upstairs Swope Cnt immediately after journal club ---Marge Livingstone, Nancy Kanwisher--- ---Diego Mendoza 7:30pm-9pm ---Lillie Auditorium Francisco Flores, Ethan Meyers--- ---Loeb Laboratory Sun 21 Machine learning Machine Learning ---Lorenzo Rosasco ---Lorenzo Rosasco, --- Lillie Auditorium Charlie Frogner, Gemma Roig--- ---Loeb Laboratory Mon 22 Robotics tutorial/Robotics Panel Discussion: AI from Academia to Industry, and bac Evening Seminar Series: AI for Enterprise Softwar Reception @ MBL Quad ---Tedrake, Tellex V. Chandrasekhar, R. Socher, and C. Cadieu --- Richard Socher, Salesforce --- Lillie Auditorium Lillie Auditorium --- Lillie Auditorium Tue 23 Computational cogsci Church, Signal processing, Journal Club Discussion Social @ MBL Quad ---Josh Tenenbaum Psychophysics and mTurk @ MBL Private Dining Room, upstairs Swope Cntr immediately after journal club ---Lillie Auditorium ---Kevin Smith, Wiktor Mlynarski, Jiye Kim--- 7:30pm-9pm ---Loeb Laboratory Wed 24 Evening Seminar Series Reception @ 41-70 restaurant --- Jeff Lichtman, Harvard --- Lillie Auditorium Thur 25 Martha’s Vineyard trip Fri 26 Memory Deep Generative Models, ---Matt Wilson, Gabriel Kreiman--- Haxby's talk, debate ---Lillie Auditorium ---Alan Yuille, James Haxby, Nancy Kanwisher--- Sat 27 Social perception stats ---Rebecca Saxe, Ken Nakayama--- -- SueYeon Chung-- ---Lillie Auditorium ---Loeb Laboratory Sun 28 Mon 29 Development I Evening Seminar Series Reception @ 41-70 restaurant ---Liz Spelke, Sam Gershman--- --- Max Tegmark, MIT ---Lillie Auditorium --- Lillie Auditorium Tue 30 Development II AI, Geometry and the Mind Journal Club Discussion (tentative) Social (tentative) ---Laura Schulz--- ---Patrick Winston, L. Mahadevan--- @ MBL Private Dining Room, upstairs Swope Cnt @ MBL Quad ---Lillie Auditorium ---Lillie Auditorium 7:30pm-9pm immediately after journal club Wed 31 Invariance, AI / Language AI / Vision Evening Seminar Series Reception @ 41-70 restaurant ---Tomaso Poggio, Boris Katz--- --- Shimon Ullman, Andrei Barbu --- --- Marc Raibert, Boston Dynamics ---Lillie Auditorium ---Lillie Auditorium --- Lillie Auditorium Thur 1 Audition and speech Audition/vision panel Journal Club Discussion (tentative) Social (tentative) ---Josh McDermott, Ghazanfar, Jeremy Wolfe--- ---Speck Auditorium @ MBL Private Dining Room, upstairs Swope Cnt @ MBL Quad ---Lillie Auditorium 7:30pm-9pm immediately after journal club Fri 2 Gemma Boat Ride available 1:15 - 3:00 pm Sat 3 Sun 4 Student presentations Student presentations Closing reception - 7PM --- Speck Auditorium --- Speck Auditorium at Landfall Restaurant LEGEND Talk Project Tutorial Social Panel.
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