sinzlab

@sinzlab

Neuroscience and AI at university Tübingen/CyberValley.

Tübingen
Vrijeme pridruživanja: ožujak 2018.

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  1. proslijedio/la je Tweet
    17. sij

    Interested in how can help understand and how can advance ? Two weeks left to apply to summer school in beautiful ! Great line of lecturers and hands-on workshop on and data.

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  2. proslijedio/la je Tweet
    2. sij

    HNY and 1st discovery from mouse V1 serial section EM dataset! Largest wiring diagram yet btw identified cortical neurons Brain Science supported by MICrONS. 1/n

    Ovo je potencijalno osjetljiv multimedijski sadržaj. Saznajte više
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  3. proslijedio/la je Tweet

    Likelihood functions encoded in the primary visual cortex better predict decision making under uncertainty than point estimates alone, consistent with PPC predictions. work with out today

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

    Sick and tired of holiday fun? A cure: our paper on V1! (and for the image: apologies to Jorge Cham )

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  5. proslijedio/la je Tweet
    22. pro 2019.

    Delighted that the Society for Neuroscience has NOT co-signed the lobby's letter on Open Access. Here's that idiotic letter: It would be great if took the opposite stance, publicly (and helped make fully Open Access).

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  6. 19. pro 2019.

    Tübingen: great place for machine learning, neuroscience, and sunrises apparently (view from the office). Have great holidays everyone and see you next year.

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

    If you’re at check out ‘s talk at 11:30 (East Ballroom A)

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

    Interested to build less artificial and more intelligent algorithms by learning from brains? Join our team! Our is hiring people at all levels with strong background in math and machine learning and with an entrepreneurial spirit interested in AI startups.

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  10. proslijedio/la je Tweet
    6. pro 2019.
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  11. proslijedio/la je Tweet
    5. pro 2019.

    “Artificial and natural computations for sensory perception: what is the link?” - summer school 7-13 June 2020 - Bertinoro, Italy: (and more!)

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

    Contribute to answering one of the most exciting questions in modern life sciences: how does our brain work? Apply to our MSc and PhD programs in neuroscience at GSN-LMU :

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

    🥳 Now published in ! A review on how deep-learning powered animal pose estimation is posed to influence the landscape of realizable real-world, ethological neuroscience - by myself & | Free share link:

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  14. proslijedio/la je Tweet

    How do different species’ retinal functions relate to their natural environments and behavioural needs? See this new Review by Tom Baden, Thomas Euler and Philipp Berens

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

    I am hiring a graduate student to join our group at the (full position, 4 years funding)! Please apply if you are interested in working on machine/deep learning and visual cognitive neuroscience. Details here: Please share/RT far and wide!

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

    I am recruiting post-docs for my new lab in Frankfurt, Germany. Physiology & computational neuroscience of navigation and vestibular systems in Marmosets - including freely moving ephys!

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

    Neuroscience has inspired , but lacks methods to directly translate neural data into better algorithms. Lead by Zhe Li in our paper we used neural data to engineer more robust AI algorithms with better generalization .

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  18. proslijedio/la je Tweet
    15. stu 2019.

    Check out our work on modeling the mouse visual system with pretrained networks trained on static object recognition. We find that equivalent random networks are just as useful! Come by if you’ll be at . Colab of

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  19. proslijedio/la je Tweet

    "In contrast to similar work in the primate, we find no match between the hierarchy of mouse visual cortical areas and the layers of CNNs trained on object categorization. Although VGG16 achieves state-of-the-art performance, it is matched by random weights."

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