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  1. proslijedio/la je Tweet
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  2. proslijedio/la je Tweet
    8. sij

    An exciting (re)start for my lab, synced with a brand new semester! (Pssst! Always looking for motivated and curious students!)

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  3. proslijedio/la je Tweet
    8. sij

    Spread the word! Pleas RT

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  4. proslijedio/la je Tweet
    6. sij

    *REMINDER + PLS RT* Our workshop, From Neuroscience to Artificially Intelligent Systems (NAISys), has an abstract deadline of January 10. This Friday!!! But, it's only 1-page, so easy-peasy: Please send in ideas for how neuroscience can inform AI!

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  5. proslijedio/la je Tweet

    I asked if neurons can do XOR a while ago. Here we got a nice new answer!

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  6. proslijedio/la je Tweet
    19. pro 2019.

    You want your hypothesis to be true, but after N experiments the effect is not quite significant. So you do a few more experiments. Naughty, naughty! You are guilty of p-hacking! But in a recent paper, Reinagel shows that it's not so bad in practice.

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  7. proslijedio/la je Tweet
    16. pro 2019.

    Published today in , an analysis led by researchers at the Allen Institute surveying the activity of ~60,000 neurons in the mouse visual system reveals how far we have to go to understand how the brain computes.

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  8. 9. pro 2019.

    Training deep neural density estimators to identify mechanistic models of neural dynamics

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  9. proslijedio/la je Tweet
    9. pro 2019.

    I'm thrilled to be starting my research group in at . Interested in deep learning theory and neuroscience? I'm looking for team members!

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  10. proslijedio/la je Tweet
    4. pro 2019.

    Thought that frontal cortex is all random mixed selectivity, messy? Think again! Great work by a great team,

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  11. proslijedio/la je Tweet
    27. stu 2019.

    Our work on 'Distributed coding of choice, action, and engagement across the mouse brain' is published today in Nature! With , , and . Here's a quick recap and what's new since bioRxiv.

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  12. proslijedio/la je Tweet
    20. stu 2019.

    Our first paper on sub-cellular cortical function in realistic-ish navigation behavior: We simultaneously imaged dendrites and their somas in retrosplenial cortex while mice walked around and rotated freely despite 'head fixation' during 2-photon imaging.

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  13. proslijedio/la je Tweet
    14. stu 2019.

    Another batch of exciting positions in the Science of Intelligence Cluster, including a PhD position in our lab. Apply!

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  14. proslijedio/la je Tweet
    11. stu 2019.

    New on with Camille Rullán Buxó: "Poisson balanced spiking networks." Extends Boerlin, Machens & Denève's BSN framework to include conditionally Poisson spiking, which confers improved stability, accuracy, & biological plausibility.

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  15. 10. stu 2019.

    Up for a good start in an acting career (see 0:42)! Haha!

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    Excited to share this work from our group on direction reversing neurons. This phenomenon was one of the first things I noticed in our Brain Observatory pilot data, and when Yazan noticed the same thing in his models, it was fun to put the pieces together.

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  17. proslijedio/la je Tweet
    28. lis 2019.

    1/ SciTwitter: I'm very excited to share our new Perspective article out in Nature Neuroscience today!

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    9. lis 2019.

    I’m looking for students to work on ‘deep phenotying’ and theories of sensorimotor learning! Apply!!!!

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  19. 4. lis 2019.

    BBC News - Paralysed man moves in mind-reading exoskeleton

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  20. proslijedio/la je Tweet
    4. lis 2019.

    Preprint with Alexandré Rene + André Longtin: Inference of a mesoscopic population model from population spike trains . Want to adjust the parameters of network model with pools of adapting spiking neurons? Derive likelihood from mesoscopic approximations!

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