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  1. proslijedio/la je Tweet

    Challenge accepted! What’s your team name? Ours is 😎

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  2. proslijedio/la je Tweet
    30. sij

    Feynman Lessons for Learning: 🧠 1) Understanding is more important than memorization! 2) Learn principles, not formulas. 3) Ask questions! 4) Read Books every day. 5) Teaching is a powerful tool to learning.

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  3. proslijedio/la je Tweet
    28. sij

    Introducing , a 2.6B-param open-domain chatbot with near-human quality. Remarkably, we show strong correlation between perplexity & humanlikeness! Paper: Sample conversations:

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  4. proslijedio/la je Tweet
    28. sij

    Check out Meena, a new state-of-the-art open-domain conversational agent, released along with a new evaluation metric, the Sensibleness and Specificity Average, which captures basic, but important attributes for normal conversation. Learn more below!

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  5. proslijedio/la je Tweet
    28. sij

    Test your image classification model with your phone camera! Learn how to deploy models with TensorFlow Lite:

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  6. proslijedio/la je Tweet
    27. sij

    Another great result demonstrating that VAEs (deep learning + amortized variational inference) make a lot of sense for data compression. Its loss function directly maximizes compressibility, and the resulting codec is fully parallelizable.

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  7. proslijedio/la je Tweet
    25. sij

    When I learn new idea, I must repeatedly learn it from multiple before it *clicks* If you're learning nets - add this to your list It discusses for: - images - audio - databases

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  8. proslijedio/la je Tweet
    18. sij

    umeedon se ha ghayal ...umeeed pe zinda ha ✊💦

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  9. proslijedio/la je Tweet
    22. sij

    bnchod yaha cheeeinnk aane par log god bless you bolte ha aur mere muh se behnchod niklta ha

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    What advancements in can we expect this year? asked industry experts from Google, IBM and more for their predictions.

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  12. proslijedio/la je Tweet
    14. sij

    By restructuring math expressions as a language, Facebook AI has developed the first neural network that uses symbolic reasoning to solve advanced mathematics problems.

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  13. proslijedio/la je Tweet
    14. sij

    If you really want to do something, you'll find a way. If you don't, you'll find an excuse.

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  14. proslijedio/la je Tweet
    13. sij
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  15. proslijedio/la je Tweet
    11. sij

    1. Never stop learning. 2. See failure as a beginning. 3. Teach others what you know. 4. Assume nothing, question everything. 5. Analyze objectively. 6. Practice humility. 7. Respect constructive criticism. 8. Love what you do. 9. Give credit where it's due. 10. Take initiative.

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  16. proslijedio/la je Tweet
    11. sij

    Forget what netas think, fact that so many journalists from other organisations, including Times Now, Republic, Zee News have messaged, tweeted and called to congratulate for shows there’s hunger to do good journalism. Unearth truth. Don’t push propaganda.

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  17. proslijedio/la je Tweet
    10. sij
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  18. proslijedio/la je Tweet
    10. sij

    2011-2013: Failed university, learned how to learn. 2015-2016: Failed to love myself, learned to love myself. 2016-2017: Failed startup, learned to code. 2018-2019: Failed financial goals, employed myself. Failure is opportunity in disguise.

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  19. proslijedio/la je Tweet
    10. sij

    To those learning ML, You’ll see work from , FB + others and be amazed. You also might think, “there’s no way I could do that.” And get discouraged. How do I know? Because I think that. Remind yourself: - Learning takes time - You get worse before you get better

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  20. proslijedio/la je Tweet
    10. sij

    Workera recently published a report on AI career pathways. It doesn't mention hardware. I also don't see the difference b/w SWE-ML & ML Engineer. But it highlights some important distinctions. I also like talk on the structure of AI teams

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