Neural Nets and Nobel Prizes: AI's 40-Year Journey from the Lab to Ubiquity
AI + a16z25 Loka 2024

Neural Nets and Nobel Prizes: AI's 40-Year Journey from the Lab to Ubiquity

In this episode of AI + a16z, General Partner Anjney Midha shares his perspective on the recent collection of Nobel Prizes awarded to AI researchers in both Physics and Chemistry. He talks through how early work on neural networks in the 1980s spurred continuous advancement in the field — even through the "AI winter" — which resulted in today's extremely useful AI technologies.

Here's a sample of the discussion, in response to a question about whether we will see more high-quality research emerge from sources beyond large universities and commercial labs:

"It can be easy to conclude that the most impactful AI research still requires resources beyond the reach of most individuals or small teams. And that open source contributions, while valuable, are unlikely to match the breakthroughs from well-funded labs. I've even heard heard some dismissive folks call it cute, and undermine the value of those.

"But on the other hand, I think that you could argue that open source and individual contributions are becoming increasingly more important in AI development. I think that the democratization of AI will lead probably to more diverse and innovative applications. And I think, in particular, the reason we should expect an explosion in home scientists — folks who aren't necessarily affiliated with a top-tier academic, or for that matter, industry lab — is that as open source models get more and more accessible, the rate limiter really is on the creativity of somebody who's willing to apply the power of that model's computational ability to a novel domain. And there are just a ton of domains and combinatorial intersections of different disciplines.

"Our blind spot for traditional academia [is that] it's not particularly rewarding to veer off the publish-or-perish conference circuit. And if you're at a large industry lab and you're not contributing directly to the next model release, it's not that clear how you get rewarded. And so being an independent actually frees you up from the incentive misstructure, I think, of some of the larger labs. And if you get to leverage the millions of dollars that the Llama team spent on pre-training, applying it to data sets that nobody else has perused before, it results in pretty big breakthroughs."

Learn more:

They trained artificial neural networks using physics

They cracked the code for proteins’ amazing structures

Notable AI models by year

Follow on X:

Anjney Midha

Derrick Harris

Check out everything a16z is doing with artificial intelligence here, including articles, projects, and more podcasts.

Please note that the content here is for informational purposes only; should NOT be taken as legal, business, tax, or investment advice or be used to evaluate any investment or security; and is not directed at any investors or potential investors in any a16z fund. a16z and its affiliates may maintain investments in the companies discussed. For more details please see a16z.com/disclosures.


Hosted by Simplecast, an AdsWizz company. See pcm.adswizz.com for information about our collection and use of personal data for advertising.

Jaksot(81)

Data Management for Enterprise LLMs

Data Management for Enterprise LLMs

In this episode of AI + a16z, Fivetran cofounder and CEO George Fraser and a16z partner Guido Appenzeller discuss how LLMs fit into the data management picture within large enterprises. In order to ta...

7 Helmi 202538min

From NLP to LLMs: The Quest for a Reliable Chatbot

From NLP to LLMs: The Quest for a Reliable Chatbot

In this episode of AI + a16z, a16z General Partner Martin Casado and Rasa cofounder and CEO Alan Nichol discuss the past, present, and future of AI agents and chatbots. Alan shares his history working...

10 Tammi 202538min

Best of the Year: Building AI Companies

Best of the Year: Building AI Companies

A 2024 highlight reel, featuring founders sharing their insights, advice, and experiences building AI companies — from foundation-model labs to vertical applications. Topics include:Building AI tools ...

27 Joulu 202446min

Can AI Agents Finally Fix Customer Support?

Can AI Agents Finally Fix Customer Support?

In this episode of the AI + a16z podcast, Decagon cofounder/CEO Jesse Zhang and a16z partner Kimberly Tan discuss how LLMs are reshaping customer support, the strong market demand for AI agents, and h...

18 Joulu 202444min

REPLAY: Scoping the Enterprise LLM Market

REPLAY: Scoping the Enterprise LLM Market

This is a replay of our first episode from April 12, featuring Databricks VP of AI Naveen Rao and a16z partner Matt Bornstein discussing enterprise LLM adoption, hardware platforms, and what it means ...

30 Marras 202443min

Building Developers Tools, From Docker to Diffusion Models

Building Developers Tools, From Docker to Diffusion Models

In this episode of AI + a16z, Replicate cofounder and CEO Ben Firshman, and a16z partner Matt Bornstein, discuss the art of building products and companies that appeal to software developers. Ben was ...

15 Marras 202441min

The Best Way to Achieve AGI Is to Invent It

The Best Way to Achieve AGI Is to Invent It

Longtime machine-learning researcher, and University of Washington Professor Emeritus, Pedro Domingos joins a16z General Partner Martin Casado to discuss the state of artificial intelligence, whether ...

4 Marras 202438min

Suosittua kategoriassa Liike-elämä ja talous

sijotuskasti
psykopodiaa-podcast
mimmit-sijoittaa
rss-rahapodi
rss-rahamania
rss-lahtijat
ostan-asuntoja-podcast
rahapuhetta
rss-neuvottelija-sami-miettinen
rss-h-asselmoilanen
rss-laakispodi
inderespodi
rss-porssipuhetta
rss-startup-ministerio
rss-bisnesta-bebeja
sijoituspodi
rss-strategian-seurassa
asuntoasiaa-paivakirjat
rss-merja-mahkan-rahat
rss-paasipodi