andrew ilachinski

@AI_ilachinski

I straddle two worlds: one grounded in science (complexity/AI), the other, in art (photography). This page is focused on the more scientific pursuits.

Northern VA
Vrijeme pridruživanja: studeni 2017.

Tweetovi

Blokirali ste korisnika/cu @AI_ilachinski

Jeste li sigurni da želite vidjeti te tweetove? Time nećete deblokirati korisnika/cu @AI_ilachinski

  1. proslijedio/la je Tweet
    13. sij

    Introducing computer-designed organisms. Our new study out this week in PNAS. w/ , Douglas Blackiston, and

    Prikaži ovu nit
    Poništi
  2. proslijedio/la je Tweet
    10. sij
    Poništi
  3. proslijedio/la je Tweet
    1. sij

    special treat for the New Year: a Bengio-Marcus joint production! a collaborative dialog, written in hopes of setting a gently reasoned tone for the exciting decade ahead

    Poništi
  4. proslijedio/la je Tweet
    19. pro 2019.

    Report on an IPAM long program on ML for Physics and Physics for ML (which I co-organized), written by some of the participants.

    Poništi
  5. proslijedio/la je Tweet

    2019 was a great experience! Don’t miss 2 brilliant summary of the events: (1) 72-page detailed event summary by (2) Visual Note by Thanks for hosting the largest AI event.

    , , i još njih 6
    Poništi
  6. proslijedio/la je Tweet

    A new report on ’s global impact is now live. analyzes the technology’s broad impact on society, from national economies to autonomous vehicles. Read more on our blog:

    Poništi
  7. proslijedio/la je Tweet
    26. stu 2018.

    Two types of brains have emerged in nature: solid (ours) and liquid (ant colonies, immune system). What can be computed by liquid brains? How can they learn? Are there universal rules? Here's our new paper on the statistical physics of liquid brains

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

    NEW: The Center has released the executive summary and policy recommendations for an upcoming report outlining a framework for a national AI strategy. Explore a preview of the report’s concrete and detailed policy recommendations:

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

    What are some limitations of interpretable machine learning methods? This summer, our students worked on this question. We compiled the results in a free online book, which we release today. 🎉🎉🎉 Find out more:

    Prikaži ovu nit
    Poništi
  10. proslijedio/la je Tweet
    2. pro 2019.

    In this Nature Perspective article the authors review the advantages and future prospects of neuromorphic computing: a multidisciplinary engineering concept for energy-efficient artificial intelligence with brain-inspired functionality.

    Poništi
  11. proslijedio/la je Tweet
    4. pro 2019.

    Brilliant catalogue of downloadable papers for the Dec 2019 complex networks conference. Already read through a dozen papers!

    Poništi
  12. proslijedio/la je Tweet
    25. stu 2019.

    AI asks fundamental questions about the nature of “intelligence”, but what about understanding life itself? gives an overview of Artificial Life for AI people.

    Poništi
  13. proslijedio/la je Tweet
    12. stu 2019.

    Extending the intellectual edge with artificial intelligence by AJDSS Volume 1 Issue 1 "The rapidly evolving capabilities of () will enable better and faster by leaders."

    Poništi
  14. proslijedio/la je Tweet

    I've just released a fairly lengthy paper on defining & measuring intelligence, as well as a new AI evaluation dataset, the "Abstraction and Reasoning Corpus". I've been working on this for the past 2 years, on & off. Paper: ARC:

    Prikaži ovu nit
    Poništi
  15. proslijedio/la je Tweet
    6. stu 2019.
    Poništi
  16. proslijedio/la je Tweet
    16. svi 2018.

    AI and Compute: Our analysis showing that the amount of compute used in the largest AI training runs has had a doubling period of 3.5 months since 2012 (net increase of 300,000x):

    Prikaži ovu nit
    Poništi
  17. proslijedio/la je Tweet
    7. stu 2019.

    Mapping the physics research space: a machine learning approach “scientific knowledge maps based on a machine learning approach....where it is possible to measure the similarity or distance between different research topics and knowledge domains”

    , , i još njih 6
    Poništi
  18. proslijedio/la je Tweet
    5. stu 2019.

    We're releasing the 1.5billion parameter GPT-2 model as part of our staged release publication strategy. - GPT-2 output detection model: - Research from partners on potential malicious uses: - More details:

    Poništi
  19. proslijedio/la je Tweet
    4. stu 2019.

    BREAKING: National Security Commission on AI Releases Interim Report | Story by |

    Poništi
  20. proslijedio/la je Tweet
    1. stu 2019.

    NIST Seeks Comment on Draft Adversarial Machine Learning Report - Homeland Security Today

    Poništi

Čini se da učitavanje traje već neko vrijeme.

Twitter je možda preopterećen ili ima kratkotrajnih poteškoća u radu. Pokušajte ponovno ili potražite dodatne informacije u odjeljku Status Twittera.

    Možda bi vam se svidjelo i ovo:

    ·