The AI Daily Brief: Artificial Intelligence News and Analysis - 5 Questions Shaping the Near Future of GenAI
Episode Date: August 29, 2024Exploring the five critical questions that are shaping the near-term future of generative AI. From the impact of California’s SB 1047 AI safety bill and the ongoing debate about an AI bubble to the ...potential plateau in AI capabilities and the challenges of enterprise AI adoption. Also, discussing the legal battles over AI copyright infringement and the future of AI agents. Stay informed on the latest developments and trends in the world of AI. Concerned about being spied on? Tired of censored responses? AI Daily Brief listeners receive a 20% discount on Venice Pro. Visit https://venice.ai/nlw and enter the discount code NLWDAILYBRIEF. Learn how to use AI with the world's biggest library of fun and useful tutorials: https://besuper.ai/ Use code 'podcast' for 50% off your first month. The AI Daily Brief helps you understand the most important news and discussions in AI. Subscribe to the podcast version of The AI Daily Brief wherever you listen: https://pod.link/1680633614 Subscribe to the newsletter: https://aidailybrief.beehiiv.com/ Join our Discord: https://bit.ly/aibreakdown
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Today we're discussing five questions shaping the near-term future of generative AI.
The AI Daily Brief is a daily podcast and video about the most important news and discussions in AI.
To join the conversation, follow the Discord link in our show notes.
Welcome back to the AI Daily Brief.
We are definitely in a bit of a late summer lull when it comes to AI news.
Enough so, in fact, that if you happen to see any accounts on Twitter or LinkedIn,
trying to drop their posts about the last two days have been so insane in AI,
you should instantly unfollow and, frankly, block those accounts.
But in any case, despite there being a little bit of a news slumber this week, there are still some
really interesting things to discuss as it relates to where we are in the AI cycle. And so today,
what we're going to be doing is discussing five questions shaping the near-term future of generative
AI. And perhaps unsurprisingly, we are going to kick off with the question of regulation and more
specifically SB 1047. We have been closely tracking the progress of this particular bill, and frankly,
it's pretty hard to get a handle on exactly how this is going to play out.
At first, the sides were simply the loud parts of the AI safety community on the one hand
and the accelerationist on the other, but it's increasingly drawn in attention from all sorts
of other people as well. Nancy Pelosi and California's congressional delegation weighed in,
sharing their opposition to the bill. But then Elon Musk came out and expressed his support
for the bill, which some saw as unexpected and others saw as him trying to screw California
with its pants on as he left the state. The latest person to weigh in,
is San Francisco Mayor London Breed. In a short, simple letter, she wrote,
I'm proud that in a few short years, San Francisco has become the AI capital of the world.
21 of the top 50 AI firms are located here, capturing over 70% of global venture capital funding
for generative AI last year. The industry is core to our city's economy and future.
And this letter is written to Senator Scott Weiner, who's pushing the bill.
I share your desire to ensure that AI develops in a safe and sustainable way, and I agree with
the overall intent of your legislation. However, I believe that more work needs to be done to bring
together industry government and community stakeholders before moving forward with a legislative
solution that doesn't add unnecessary bureaucracy. With additional time and collaboration, I am confident
that we can find a solution that addresses many of the concerns raised in recent months, while still
enabling this emerging field to grow in a safe and sustainable way. As such, I unfortunately write
in opposition to your bill SB 1047. Now, what's interesting about all of this is that it doesn't just
matter for California. One, SB 1047 is going to impact people because anyone who does business in
California will be impacted, which is going to be a huge portion of the Gen AI field. But more than that,
the debate is also drawing some lines around things that will shape future conversations. One of the
big underlying themes is who gets to control what we're concerned about when it comes to AI safety.
As I have mentioned in previous episodes, I believe that part of the challenge of this particular
bill is the degree to which it's focused on extreme and catastrophic risks rather than current
and contemporaneous risks. This makes sense, given its genesis, with a lot of folks for whom that is
their primary concern, but it's also why a lot of people said that they didn't engage with the
process, because they fundamentally don't think that these things should be regulated. And that, of course,
gets to a second underlying theme, what matters to regulate. Part of the debate we're having
right now is not just about SB 1047, but about which aspects of AI should even be considered
for regulation right now. We're also getting a chance to see where industry stands in specific,
and in particular you've seen things like Open AI coming out in support of a different bill,
seemingly to try to suggest that it's not about all legislation, its opposition is specifically
to this legislation. It does seem as though we'll be on to the next phase of the conversation soon.
Anna Tong from Reuters earlier today tweeted,
staff have requested that Scott Wiener's California AI bill SB 1047 be voted on today.
Now, of course, a vote one way or another doesn't mean this thing is done, but it certainly
will move us to the next step.
Second question shaping the near future of generative AI is AI in a bubble? Specifically,
is it in a Wall Street bubble? Aside from the regulatory discussion around SB 1047, this has perhaps
been our most common topic over the course of the summer. The state of play was admirably summed up
by the Washington Post in this piece from the end of July called Big Tech says AI is booming,
Wall Street is starting to see a bubble. Now, on the bubble front, there have been a number of
different reports and blog posts that have been widely referenced. One of them is Goldman Sachs,
Gen AI, Too Much Spend, Too Little Benefit. Another is AI $600 billion question, a blog post that was
published by Sequoia. Now, neither of these are perhaps as negative as their titles might seem,
But to the extent that they are negative, they both largely argue that the capital expenditures that have gone into and will go into the AI buildout are going to be very hard for companies to recoup.
That's the $600 billion question.
That's the amount of money that David Kahn from Sequoia estimates that companies would have to make to have made their spend with companies like Nvidia worth it.
The flipside argument comes from venture capitalist Sarah Taville, who wrote a blog post where she argued that, quote,
the next few years is going to make the $600 billion question look small.
effectively that if these companies are right, the value of what happens on the other side of this AI
buildout is so immense that it dwarfs all of these considerations.
Now, the interesting thing is that Sarah could be right, and yet in the short term, there could
still be a correction. Wall Street is uncomfortably forced to play the role of venture capitalist
in this field, trying to figure out how much the value of the future of AI is worth relative to
the current considerations. One of the theories that I have around why this has been such a big
conversation over the summer is the fact that we're heading into a rate-cutting cycle.
I think that a big part of the reason that Wall Street has clung to the AI narrative for the last
couple of years is that it coincided with the Federal Reserve raising rates for a time at the
fastest clip in about 40 years. AI was a thing to be excited about, and perhaps was held on to a
little bit harder than it otherwise would have because it was the one bright spot in an
otherwise gloomy period for markets. Now that the rate cycle is poised to go in the other direction,
are we seeing Wall Street jettison some amount of the AI hype because they're simply able to
now because they have a new theme again in the form of rate cuts and what they'll mean for liquidity
and markets. Now, the implications are big. There is likely a trickle-down effect for startups in the
space, particularly for the open AIs and anthropics of the world, which could need to fundraise again
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The third question shaping the near future of AI is whether we're in a capability slowdown and whether, in fact, we've plateaued.
It is notable to many people that for close to 15 months now, GBT4 has been the state of the art.
Now, yes, GPT4 has gotten a little bit better.
GPT40 is different than what was released last spring. And of course, lots and lots of competitors
have caught up to Open AI. You've got Claude 3.5 Sonnet right now. You've had Lama 3 catch up with an
open source model that's basically at the state of the art. But there's still a big debate and a big
question around whether we're really seeing a slowdown in progress and what it means for how much
more we could wrench out of this particular AI architecture. This could have implications for things like
regulation. If we are starting to get to a plateau, does that change the way that people think about
how aggressively we need to regulate versus waiting and seeing what capabilities future models actually have.
Certainly, it seems to be impacting the foundation model companies themselves.
Yesterday, we discussed new reports out of OpenAI around their attempt to launch their reasoning
model strawberry, in part to help build out GPT5, which they are apparently codenaming Orion.
The frontier of capabilities really does impact a lot in this space, and so this is a question
that I think is worth watching closely.
Fourth question shaping the near future of AI is around enterprise AI adoption
and where we are in that cycle. I think the biggest takeaway here is that every enterprise basically
in the world is trying to adopt AI and finding trouble doing so for a variety of reasons,
basically all reasons that justify the existence of superintelligent for what it's worth.
Companies have bad visibility into what employees are doing with AI and bad strategies for gaining
that visibility. They're not sure what type of upscaling or capabilities training their people
need, and they're not sure how to translate the individual usage that's happening up into
organization level change. This is the big theme of
a recent McKinsey report called Gen AIs Next Infliction Point from employee experimentation to
organizational transformation. This report had similar statistics to the earlier LinkedIn Microsoft
report that we've referenced frequently that found that 75% of employees are using AI now,
but 78% of them are doing it on their own and not telling people about it. In a similar way,
this study found that 91% of employees are using AI, but just a very small percentage of
companies are actually implementing multiple AI workflows as a company. In other words,
right now, there is, yes, personal productivity enhancement going on, but that's not translating up
to actual organizational transformation. Now, this matters for a few reasons. First of all, Enterprise AI
adoption is going to be a transmission engine for a huge amount of disruption. Most people still work
inside big companies, and so how they do or don't adopt AI will impact people's work
lives in a pretty dramatic way. There will also be a big impact for startups. Enterprise AI
adoption and the patterns therein will shape what type of markets and customer basis startups can
go win, to say nothing of M&A and acquisitions as well. So I think the patterns and norms and
expectations when it comes to enterprise AI adoption are actually much more significant than just in
terms of what any given company is doing. As an aside, of course, if any of you companies out
there are trying to figure out AI adoption, might I point you over to B-super.a.i slash teams,
where you can learn all about the AI enablement network that we're building. Fifth on our list of
questions shaping the near-term future of AI actually might not ultimately be all that near-term,
is going to be significant, and that is, of course, the question of all of these numerous copyright lawsuits
when it comes to AI training. There are a million of these going on. Every week, there's some new update.
For example, recently, courts declined to dismiss copyright infringement claims against companies
including Mid-Journey and Staple Defusion, allowing the case to proceed. Then just last week,
we got a new lawsuit from authors suing Anthropic for copyright infringement over AI training,
and ultimately it's very clear that these lawsuits are going to end up at the highest levels. These are going
be Supreme Court decisions. The results could very much impact future AI models. I guess the question
for me is whether the genie is too out of the bottle by the time they come through, or whether the results
will be dramatic enough that it actually makes people go back and correct and change models and take them
offline. What's more, I think that alongside the legal discussion, there is going to be a society
level discussion around what the norm should be when it comes to AI training rights and remuneration.
Like I said, this is a little bit of a fudge because I'm not sure how near term it is. But given that
there is something in the news every week about the progress in these cases, I still thought it was
worth noting. Now, one big bonus or honorable mention is the perpetual next thing in generative
AI for the last year and a half, which is, of course, AI agents. There is a sense that AI agents
could be a next frontier that once again fundamentally changes how we think about this technology,
although for now they remain mostly in the realm of the potential. Still, it is worth keeping an eye
on this area because at some point they will no longer just be in the realm of the potential,
and it could be very significant when that transition happens.
So friends, those are five questions shaping the near future of Gen AI.
Let me know what you think about this.
Come join the discussion on Spotify or in the comments on YouTube.
I'm interested to see what you think and whether I've missed anything.
For now, though, that is going to do it for today's AI Daily Brief.
Until next time, peace.
