Into the Bytecode Podcast Por Sina Habibian arte de portada

Into the Bytecode

Into the Bytecode

De: Sina Habibian
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Into the Bytecode is a podcast about building the future. Check out these links for more: - Twitter: twitter.com/sinahab - Website: intothebytecode.com - Newsletter for updates: bytecode.substack.com© 2025 Sina Habibian Economía
Episodios
  • #52 – Michael Nielsen on being a wise optimist about science and technology
    Mar 27 2025

    This is my conversation with Michael Nielsen, scientist, author, and research fellow at the Astera Institute.

    Timestamps:
    - (00:00:00) intro
    - (00:01:06) cultivating optimism amid existential risks
    - (00:07:16) asymmetric leverage
    - (00:12:09) are "unbiased" models even feasible?
    - (00:18:44) AI and the scientific method
    - (00:23:23) unlocking AI's full power through better interfaces
    - (00:30:33) sponsor: Splits
    - (00:31:18) AIs, independent agents or intelligent tools?
    - (00:35:47) autonomous military and weapons
    - (00:42:14) finding alignment
    - (00:48:28) aiming for specific moral outcomes with AI?
    - (00:54:42) freedom/progress vs safety
    - (00:57:46) provable beneficiary surveillance
    - (01:04:16) psychological costs
    - (01:12:40) the ingenuity gap

    Links:
    - Michael Nielsen: https://michaelnielsen.org/
    - Michael Nielsen on X: https://x.com/michael_nielsen
    - Michael's essay on being a wise optimist about science and technology: https://michaelnotebook.com/optimism/
    - Michael's Blog: https://michaelnotebook.com/
    - The Ingenuity Gap (Tad Homer-Dixon): https://homerdixon.com/books/the-ingenuity-gap/

    Thank you to our sponsor for making this podcast possible:
    - Splits: https://splits.org

    Into the Bytecode:
    - Sina Habibian on X: https://twitter.com/sinahab
    - Sina Habibian on Farcaster: https://warpcast.com/sinahab
    - Into the Bytecode: https://intothebytecode.com

    Disclaimer: This podcast is for informational purposes only. It is not financial advice nor a recommendation to buy or sell securities. The host and guests may hold positions in the projects discussed.

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    1 h y 17 m
  • #51 – Jeffrey Quesnelle on Nous Research, large language models, and the human mind
    Mar 18 2025

    This is my conversation with Jeffrey Quesnelle, cofounder of Nous Research.

    Timestamps:
    - (00:00:00) intro
    - (00:01:08) working with new technologies
    - (00:06:15) Nous Research origin story
    - (00:14:08) open frontiers in research
    - (00:26:07) fourier transforms for gradient compression
    - (00:32:58) math behind distributed training
    - (00:38:18) sponsor: Splits
    - (00:39:02) neural networks history and fundamentals
    - (00:51:29) the human mind and AI, hyperdimensional representation
    - (01:01:15) intuition and reasoning
    - (01:15:00) parallels with reinforcement learning
    - (01:19:15) the cat is out of the bag
    - (01:47:11) deeper mysteries

    Links:
    - Jeffrey Quesnelle: https://jeffq.com/
    - Jeffrey Quesnelle on X: https://x.com/theemozilla
    - Nous Research: https://nousresearch.com/
    - Psyche: https://nousresearch.com/nous-psyche/

    Thank you to our sponsor for making this podcast possible:
    - Splits: https://splits.org

    Into the Bytecode:
    - Sina Habibian on X: https://twitter.com/sinahab
    - Sina Habibian on Farcaster: https://warpcast.com/sinahab
    - Into the Bytecode: https://intothebytecode.com

    Disclaimer:
    This podcast is for informational purposes only. It is not financial advice nor a recommendation to buy or sell securities. The host and guests may hold positions in the projects discussed.

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    2 h y 6 m
  • #50 – Alexander Long on Pluralis Research and protocol learning for frontier models
    Feb 25 2025

    This is my conversation with Alexander Long, Founder & CEO of Pluralis Research.

    Timestamps:
    - (00:00:00) intro
    - (00:00:55) collaborative training
    - (00:09:49) economics of training
    - (00:13:10) what is protocol learning?
    - (00:20:48) protocol learning design and politics
    - (00:33:39) sponsor: Splits
    - (00:34:22) hardware requirements
    - (00:41:53) adapting to the landscape
    - (00:49:53) open and closed models
    - (00:52:52) market structure with fully open models
    - (00:56:34) research and risks
    - (01:02:19) labor and national security
    - (01:10:58) looking to the future
    - (01:14:20) outro

    Links:
    - Alexander on X: https://x.com/_alexanderlong
    - Alexander on Github: https://github.com/AlexanderJLong
    - Article 2: Protocol Learning, Protocol Models and the Great Convergence: https://www.pluralisresearch.com/p/article-2-protocol-learning-protocol
    - Decentralized Training Looms: https://www.pluralisresearch.com/p/decentralized-ai-looms

    Thank you to our sponsor for making this podcast possible:
    - Splits: https://splits.org

    Into the Bytecode:
    - Sina Habibian on X: https://twitter.com/sinahab
    - Sina Habibian on Farcaster - https://warpcast.com/sinahab
    - Into the Bytecode: https://intothebytecode.com

    Disclaimer: this podcast is for informational purposes only. It is not financial advice nor a recommendation to buy or sell securities. The host and guests may hold positions in the projects discussed.

    Más Menos
    1 h y 15 m
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