The a16z Show - ElevenLabs CEO: Why Voice is the Next AI Interface
Episode Date: November 5, 2025ElevenLabs CEO and co‑founder Mati Staniszewski joins Jennifer Li to explain how the team ships research‑grade AI at lightning speed—from text‑to‑speech and fully licensed AI music to real�...�time voice agents—and why voice is the next interface for human‑computer interaction. He shares the small, autonomous team model, global hiring approach, and how the Voice Marketplace has paid creators over $10M while evolving into an enterprise platform. Resources:Follow Mati on X: https://x.com/matistanisFollow Jennifer on X: https://x.com/JenniferHli Stay Updated: If you enjoyed this episode, be sure to like, subscribe, and share with your friends!Find a16z on X: https://x.com/a16zFind a16z on LinkedIn: https://www.linkedin.com/company/a16zListen to the a16z Podcast on Spotify: https://open.spotify.com/show/5bC65RDvs3oxnLyqqvkUYXListen to the a16z Podcast on Apple Podcasts: https://podcasts.apple.com/us/podcast/a16z-podcast/id842818711Follow our host: https://x.com/eriktorenbergPlease 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. Stay Updated:Find a16z on YouTube: YouTubeFind a16z on XFind a16z on LinkedInListen to the a16z Show on SpotifyListen to the a16z Show on Apple PodcastsFollow our host: https://twitter.com/eriktorenberg 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.
Transcript
Discussion (0)
We don't want to become same as previous generation of the editing suite.
So instead, let's solve it on the research level where it will know based on the voice
exactly how it should speak with the speed.
To be able to cater to all those different use cases, you need such a big array of different voices,
different languages, different accents, different styles.
So we launched the voice marketplace where you could create your voice and then share it.
And when the voice base shared, you earn money in the return.
Today we have almost 10,000 voices.
We paid $10 million back to the people in the community.
There's some crazy stories from the voices, just speaking through exactly the technology, showing the examples, and kind of avoiding this initial knee-jerk reaction that AI is bad has been tremendous.
Voice is rapidly becoming the next interface for human computer interaction.
Today, you hear from Maddie Stanishefsky, co-founder and CEO of 11 Labs on building at lightning speed, from text to speech and fully licensed AI music to real-time voice agents, as well as how small autonomous teams and global hiring,
power the company's product velocity.
We discussed the ethics of AI audio,
the voice marketplace paying creators over 10 million,
and the shift from creator brand to enterprise platform.
Plus, why speed is the moat in the race to define the future of sound.
Let's get into it.
I'm excited to welcome our fresh speaker, Maddie,
co-founder and CEO of B11 Labs.
All right, so good to have you here, Maddie.
Thanks so much for having me here.
Great to see everyone and good morning.
That was the Walk Home music generated by Eleven Labs.
was it?
It was.
We expand continuously
across the audio space
and we started with voices,
then created an orchestration
of how to build voice agents
and now also create a fully licensed
music model.
So can produce amazing music
to go alongside with it.
Awesome.
We'll talk about that.
I've had the opportunity
and also the luck to get to know
from the very early days
when 11 Labs got started
and get to partner
of the last three years
to just see your execution
everywhere from product launches to shipping new lines and models.
Like you just mentioned, everything from speech to speech to text,
and then we started doing music, sound effects, and now the AI agent platform.
I'm very curious.
First, I'm still in all of the shipping speed after all the three years.
But I want to ask how do you actually maintain both the speed and quality
when you have such expensive product roadmap?
So first of all, we partner all the speed.
almost three years ago. And so it's great to hear all the kind notes. But also, they didn't realize when we partnered, the infrastructure team was free people. And of course, now I'm 11 loves founder. We love number 11. And the company, Infra, team is 11 people. So we've seen the growth of the other side as well. And I hear that the companies here raise $66 billion in the total fundraising. So the number 11 is everywhere here. But I think that to start off, I think first piece, I think the smartest person I got to know as my co-founder, Piotch.
who has been the research brain for creating a lot of the models
and then being able to assemble what we think are the most incredible researchers in the voice space,
to really create the first text to speech model that could understand the context in a better way
and turn that into the emotion intonation, then find a way to capture the characteristics of the voice
so you have the voice sound with the right style, with the right age,
with the right gender dialect, everything in one.
And then the researchers across, of course, now expanded that to speech to text, music and other words.
So that's our foundation.
And then the way we structure it to be able to ship quickly,
especially with so many things happening in the AI space,
is a lot of small teams.
So today we have roughly 20 product teams,
each of 5 to 10 people's size,
which full independence can go ahead and ship products.
Of course, that carries some of the sometimes issues
of duplicative work or sometimes people going at different speeds,
but at the positive end,
the ownership of each of the teams is extremely high.
So people know that this is down to the work.
to them to really deliver and ship. And it allows us to move extremely quickly. We back at our
work into creative space, our creative platform where we help with narrations, voiceovers,
dubs for creatives and creatives in the media entertainment space. And then on the agents side,
where we help people recreate voice agent experience, conversational agent experience, across customer
experience all the way through to immersive media. Great. 11 labs has labs in the name.
Very similar to many of the other big labs, which means you're doing your first party R&D and model development,
but also building all these 20 products.
How do you think about balancing both,
like keep progressing on the model research,
but at the same time not delaying sort of the product launches?
It's very tricky.
I'm sure many of you have the same thing.
Do you build the product when you don't know
if the research innovation will displace the product you just built?
We had this in the early days too.
So one of the simple examples was we had a model at work,
and one of the most common requests was
could we do at different speeds for voices?
So could you have additional slider to modify the speed of how audio gets generated and how quickly it speaks?
And we are very against this idea of no, we don't want to do any sliders, any toggles.
We don't want to become same as previous generation of the editing suites.
So instead, let's solve it on the research level where it will know based on the voice,
exactly how it should speak with the speed.
And we resisted this for, I think, good amount of nine months, and we couldn't solve it on the research side.
And then the product was super simple solve that got all the users across.
And now the approach we take and looking at this is if we think the research work will take more than three months, then the product is can do anything they want to start adding other models, adding some of the extensions.
Of course, sometimes the timeline is tricky to predict, but roughly the guidance we have from our internal research team, what are the initiatives we hope to ship this quarter, what are long-term initiatives?
And then for anything long-term, you can use any other work to close that gap and make it better.
I guess first you kind of have to figure out if the research commitment is going to meet the timeline first and then go on to align with the product teams.
That makes a lot of sense.
As everyone is moving to San Francisco and building in person and locked in in the same space, 11 has always been building globally and having people more distributed.
But you not have centers, I guess, in different locations from London, Warsaw, San Francisco to New York and other.
other places. How do you think about building this global expansion and finding talent globally
versus, I guess, the trade-offs of building in the same place?
Yeah, so me and microfunder Polish. We started between Warsaw and London at the time.
And I think 11 laps wouldn't have existed if we were in starting from Europe. It's a very
peculiar thing. But in Poland, if you watch a movie in Polish language, like a foreign movie
in Polish language, all the voices, whether that's a male voice or a female voice,
get narrated with one single character. No emotion.
no intonation.
As you can imagine, it's pretty terrible.
And it's still happening today for most of the content out there.
I've had a similar experience growing up in China
that we have a lot of Western movies dubbed in Chinese monotone.
So bad. So bad.
And it's like in Poland, of course, post-communist country,
it's a cheaper way to do it.
You don't have to hire as many people.
You have one monotone audio book reading of a movie.
And that was kind of where the company started.
And we started initially in Europe.
and we realized that if we wanted the best people to solve what was a research problem at the time,
we need to hire wherever they are.
And we couldn't lock ourselves to just San Francisco or look at the West Coast.
We knew that we need to find them across Europe, across Asia,
and bring them into the company.
So we started fully remote and started looking at those people.
And then on engineering, we also were very against this traditional hiring method
of looking at LinkedIn, looking at traditional background,
and trying to figure out could we go and figure out,
a different method to hire people. That led to some very interesting hires. So we hired a person
that had incredible open source text to speech model and was working in the call center at the same
time as a recipient of the calls to make money. And he's now the team, one of the most brilliant
researchers we have doing all the data processing. But the same pattern kind of followed. And of course,
the early team was very distributed. And then as we started scaling, so beyond 30 people,
we realized that the new people joining, there's a benefit of them having a space,
to be next to others to get deeper into the culture,
understand what are all the products that are happening in the company.
So we started the hubs where you can go into London and Warsaw in San Francisco,
where you can work with others in person.
And that's how we try to marry those two.
If you are early in your career, we try to hire you in the hub
so you can immerse yourself in the company.
If you are used to remote work completely fine.
But then if you want, you can always come and join us in the hub.
And that worked really well.
Currently, we continue hiring very untraditional backgrounds
in some of the place of the company,
and then fusing that with very traditional backgrounds,
which can teach the others.
And sales, for example,
we've done some of those experiments too,
where that combination worked really well.
The lesson is you can really find talent everywhere,
just how hard and how you look for them.
And I think in Europe also,
this was an interesting one.
In the US, people are very keen and excited to work,
and if you go for any social event,
like you want to talk about work.
And in Europe, I didn't have this feeling
where it's like most people don't want to do that.
it's like the cultural piece is different.
But then you do have the pockets of people that actually strive it too.
They just don't have the companies where they could do that in.
So I feel like our team from Europe is the most motivated and passionate set of people that we are lucky to have.
Yeah, I can attest to that given I've met some of them.
Very hardcore, very good work ethic for sure.
And you have also maintained a pretty flat org structure and have people own quite laterally a lot of responsibilities.
Can you talk about the rationale behind that?
and I guess there was also no title policy.
Yeah, so we removed titles a year ago, and it's going well, that still works.
And I do think that, but I thought a lot of AI companies kind of do it too already
with a member of technical staff being like the usual piece you have for engineering,
and then in a lot of the go-to-market, you are just go-to-market,
not VP of sales or other roles.
So I think it's actually a pretty common pattern.
But in our case, we had a small team approach where you have extremely small amount of people,
usually the five to ten.
And we wanted to make it very clear that every team, we create those teams.
You have six months to prove it.
If it's proven that team will stay and continue working.
But it really is that the moment you join, you can have any impact on the company.
So you can have any role in that team.
The tenure will not define your position in the hierarchy.
If you are smart and quick and passionate, you can elevate yourself very quickly,
which this really helped.
And also it's a common layer to the external world
where everybody looking at 11 laps knows that we are,
the go-to-market team is go-to-market team.
There's no positioning to the same extent.
What this allows us to do is I think when we speak
with a lot of our partners, with a lot of our customers,
they also know that they are getting the best people always.
And we can also send people to different conferences,
different events, regardless of that positioning.
I think the tricky thing in the flat structure is not only positives.
And the way we currently have, it's a set of leads effectively for the subdivisions.
So the research, creative work, agents work, go to markets, self-serve and sales led.
And of course, ops.
Only that's the layer of leads.
And then under that, there's pretty flat small team approach across the world.
But then you really want the leads to be able to carry the complexity around the team.
So suggest things between one team to another,
if they see that there's something valuable between them happening.
So I think picking those people that can context switch between
is super important and then letting the team fully focus on that.
And then having, which was interesting learning,
where if you put a person into all the Slack channels
and give them transparency, they actually get frequently distracted
because then they read all the messages.
You can still choose not to read them, but they still do.
So you kind of need to cut the access to a lot of those pieces to force the attention.
And that kind of works.
All those small things work really well.
Maybe we can borrow some of that lesson too.
Let's transition gear a little bit.
You're on the front line seeing a lot of the creative work,
whether it's from art, music, or advertising that are starting to adopt AI tools.
And in the beginning, that was not the case.
There was a lot of resistance.
And now we're just seeing the adaptation and the welcoming.
of using more of the generative AI tools,
including AI audio.
And you have done some really smart things
from the marketplace payouts
to working with these creative industries
since day one, actually.
I remember how much you stress
like we have to find a way to work with them
and sort of observing sort of market shift over time.
So the question is,
how do you actually adapt to these changes
and find the ways
to work with the industry
in the infancy in the beginning
and how did you navigate some of the challenges in that?
So I think the first piece is actually
spending time with the industry
and trying to understand what are their priorities,
their incentives.
Of course, it's sometimes tricky,
sometimes you then end up being star-struck.
We had an honor and pleasure to work with Jared
on some of his incredible work
and learn from him on what is important
and which parts of the production
process, you can actually use AI, which ones you want to keep, where is it actually helpful.
So I think that's the super important thesis across all the partnerships in the space.
In our case, we try to figure out how to do that on the voice space,
which is, of course, with that technology, A, how will the voice acting space look like in the future?
And then, too, of course, to be able to cut it to all those different use cases,
you need such a big array of different voices,
different languages, different accents, different styles.
So we launched a voice marketplace
where you could create your voice and then share it.
And when the voice base shared, you earn money in the return.
Today we have almost 10,000 voices.
We paid $10 million back to the people in the community.
There are some crazy stories from the voices.
One of our first voices will say a deep Spanish voice
and the magic of the technology is that the same voice
now is available on all different languages in the same way.
So it's 30 different languages at the time.
Now it's 70, but 30 languages at the time.
And we had this Spanish voice join us.
And it wasn't picking up on the Spain.
Nobody really liked it as much.
And then it picked up in an English-speaking country,
that same voice because of that deepness.
And now it's our top free voice for all the uskises.
So hidden messages, you can all register to our voice marketplace
and maybe earn some money too.
So that's the, I think,
the second important thing, it's like figuring out how we can be part,
how we can bring the industry together to disrupt together
rather than just the disrupt.
And with labels, I think I'm still learning how to interact.
So we worked with labels, the Merlin and Cobalt, so four majors,
to bring their music into the music model so we can do it in a licensed way.
So you can generate that and give commercial rights,
so you're fully protected.
That was a hard process.
It took us 18 months to figure out the agreement.
that works. And in the end, I think the main thing was adding sort of forcing functions or forcing
timings to find effectively a trigger of like, okay, this is when we do it. And we either do it
together or we do it separately. And those forcing functions really help add urgency. Then we need
to move that forcing function a few times, but it still worked to a large extent to go after that.
And then two is, of course, finding the compromise wasn't easy.
But then in our case, working with the labels there,
plus protecting what they are caring about.
And they, of course, also care about how they continue doing well by their members,
by their artists that they work with.
So we would spend a lot of time working with their members
speaking about how we think about technology,
what's going to happen in the next couple of years.
and that really helped.
So just speaking through exactly the technology,
showing the examples,
and kind of avoiding this initial need-jerk reaction
that AI is bad has been tremendous.
And maybe tying back to the earlier question
as you are navigating this landscape,
how do you think about bringing the right talent
that can lead some of these functions?
And these are mostly unknown territories
of how to navigate it,
like where have you been seeing success in bringing the right people?
So here for the spaces that are kind of completely new to us,
so this and like legalists and another example,
we would always kind of bring at least one or two people that were in that space
that kind of have interacted with the same parties full time in the past,
but then would actually adjust that with a lot of consulting people
that would help us in a specific conversation.
in this case in music we had music lawyers that worked very closely with us that consult across
a few of them and the good thing is that they know all the players and they effectively were this
bridging up between both of us so we could speak the same language and and then that was that was
that was really helpful yeah and you have had a very specific taste for people that are risk
tolerant enough and also understand
the commercial business opportunities
to help guide the right
chain of actions in each of those domains
have found that very fascinating.
100%. I mean legal, I don't know how many of you
are trying to find a first legal counsel
or have a number of those.
For us, this was, I think, one of the trickest roles
to hire for because you are hiring
into the space. You don't know,
you know very little about.
And then we had the first couple of legal people
that were clearly not fed, so we separated paths.
Then we hired a third person,
and that person came from a number of Fortune 500 companies.
And they never worked in startup space, never worked in venture.
And what resulted is, like, everything,
every conversation was pointing out the risks that we see.
So, like, anything we wanted to do was, like,
the number of risks that this could carry.
And it was really tricky to work because we, it's like you kind of get risks,
but you've gone the risk advice of like, okay, and this is where we should draw the line.
But everything was back the decision.
And now we hired a person working previously in a number of companies, as a council,
and don't poach them.
They are increasing and they understand the risk equation a lot better,
where they are not only like a counterpart to figuring out what the risks are,
but also like, okay, this is.
what other companies do, this is what we should potentially do,
and then they are like a true fault partner,
and that's tremendous change.
For sure.
11 Labs started as more of a creator brand,
everywhere from the individual creators
to the creators that are building businesses.
But now you have been having a lot of success
moving into enterprise,
not just started from the AI agent platform,
but even with the tech to speech,
speech to text models.
How have you been navigating that transition?
Because that's one of the very common place
where a lot of really great consumer, creator brands,
fell down, but you have had so far a pretty smooth transition.
So when we launched, we had a lot of early inbound
when we started the classic PLG,
a lot of inbound from Enterprise.
And I remember speaking with A60Z team when they joined us,
where our initial take was, of course,
we want to be engineering company,
we don't want salespeople.
We would like to reinvent that
and have like engineers do the sales.
We did hire one traditional salesperson
and one non-traditional salesperson,
like an engineer.
We told them like do sales now.
And that really, as you can imagine,
didn't work out in the specific case.
But we learned our lesson.
And we now do invest in a combination of that.
It's 80% sales, 20% engineering.
So still a little bit of that.
But it was like super important level
of understanding who are the customers,
what they care about,
and working deeply with them to bring it back.
And then that kind of working with them
was kind of opening of what we need to actually do
on the product and research side.
Munjal from Hippocratic is here.
He was one of the earliest incredible use cases
in the healthcare space
where they would create effectively agents
that would take inbound calls
that are calling the hospitals
to take and schedule appointments.
And beyond that, they would do all the other parts of outboding to the patients
to remind them about taking medicine or reminding them out the appointment that's happening.
And to be able to do that, that suddenly shifts from using one foundational model
into combining the speech to text, the LM, the text to speech, to orchestrate them together,
then the integrations you need to build, then you actually need to deploy.
And they were one of the areas that was 2023, but then we've seen this repeated part there
across a number of other customers
and customer experience space and many others.
And we decided to invest more
into helping with the entire orchestration.
So instead of just doing text to speech,
we can help combining our research
to make this whole combination of that's more fluid.
But then if you are thinking about enterprise,
you do need to build the combination of knowledge base
inside a system.
You need to help deploy that with telephony providers,
whether it's Twilio, it's Siptranking.
like how do you do that in a templateize an easier easier way?
And then of course the biggest gap that's the most common,
it's easy to do a demo, but how do you actually build it to production?
How do you test, how your version control, how you evaluate, monitor over time,
fine tune over time based on the results.
And all of that has been a big part.
And underlying all of that, and we spoke a little bit with Matt before coming here,
the foundation needs to be there, which is the security, the compliance,
serving the customers across that will rely on that infrastructure.
That's something that we want to shine through at 11 laps
where if you are using the software,
it's going to always be reliable and always the four-nines or five-nights,
hopefully one day will be there, which is tricky in the AI space.
That's the goal.
Of course, the difference between, one obvious difference between PLG and sales
is the cycle to work through and identify the right customers,
much longer. And I think that's where eagerness from our internal team was interesting to observe
where you had a lot of people that didn't work in an enterprise setting. And then you had other
side of the company that did. And the side that didn't was very skeptic about going enterprise
and waiting the six months or 12 months to results. And in the early days, we needed to shield them
from that information and trust us, we'll do this and it will work. But they were very skeptic.
Of course, after 12 months it worked out.
But that was probably the hardest culturally of how you kind of still keep everyone jumping
on the same train.
That's exactly right.
A lot of companies actually, at least I observed sort of slowed down after start adopting
more of the enterprise sort of product launching and like building for the customer's
request that started to, thank you so much, to delay sort of the product launch.
Is that something you're seeing
or is there still like a good balance
of like we still want to be able to put out demos
and POCs and early teasers quickly
but at the same time we'll get to
deliver a very robust and reliable product?
So there are two parts.
The first part is so we have like a difference
on a team structure and then we have a difference
on the kind of external product structure.
On the external product structure,
we want to ship very quickly.
But of course if you are shipping to enterprise,
you want to make sure that it's stable and reliable.
So we delineate very clearly what's alpha, what's not alpha,
and then we go for that transition through that period.
And then as we work with the customers,
they can, and then our partners,
they can decide whether they want the access to alpha in the first place.
And when they do, that's clearly shown
that this is an alpha product.
It might not be as stable.
And so they get a choice.
And I think that choice has been the most important lever,
like do you want it or not?
And some are incredible on doing that innovation
and showing some of the work
or experimenting with that work.
Deutsche Telecom with John here
is creating some of the incredible new podcast experiences
and that came from testing early models
of turning a text into a more notebook elm style of a podcast
with incredible voices that you can select for
German speaking voices, English speaking voices
that sound good.
And then there's a second which is team structure piece,
and that's something that we didn't do until later
when we had more than 100 of us
is that we delineate inside a company products
that are pre-product market fit and post-product market fit.
On the post-product market fit,
you are working for the long term.
You test and evaluate a lot before.
You only deploy when that's truly ready.
The pre-product market fit,
your mission is to ship until you think we've hit the product market fit.
And usually we give the six months period of like proving it out.
If not, we kill the product and we've killed product in the past in this way.
But that's like the main important piece of like, okay, until we know there's a big potential user base,
we will continue iterating.
I have been able to observe some of those, I guess, hard decisions in the moment,
but it's the right decision later on to let go some of the products.
This is all my favorite questions.
My partner Martin Casado always say companies go through three phases.
There is the product phase, there's sales phase, and there's a scaling phase.
And given you have been through some of those phases, what has been the hardest transition for you as a CEO?
There is a lot of many ones.
Of course, I have my co-founder next to me across each of those, which is the, I know him for 15 years.
He's my best friend since high school.
So I have like the most luck to have that combination.
of course, you, Jennifer and all the partners to help us through those transitions,
which has been incredible. But I think the recent realization was when we are now 350 people
company. And of course, that means our go-to-market team and the incentive structure around
that has evolved pretty strongly. And what wasn't clear to me, and now in hindsight,
is obvious, is that in early days, everybody would just operate on a passion basis. They would
just operate what they think is best for the company. As our go to market team enlarged,
we realize that the incentive structure really matters if you are building that machine. And
that transition where you shift from a lot of the people that are helping create that machine
are part of that machine, those incentive structures will eventually drive the behaviors,
which might be slightly different to what you had in mind if you don't make it extremely clear.
And in some ways, the quota, the commissions are effectively a lagging indicator of strategy.
And then strategy is kind of leading of what will happen in the future.
So you need to find a way to resolve those two together
where you want to make sure the quota and commissions
and the strategy that you want to drive are closer together
and the kind of the disparity as close as possible.
And so here, for me, the biggest realization,
was that we are becoming a bigger company
because there are clear behaviors that happen
based on the commissions. And then
two, to actually resolve those,
we need to be very upfront in terms of
making it explicit that sometimes
even if commissions are just this
and you think it's a wrong thing, come back
to us, let's speak about it and not just
course. So now we are explicit with all
our sales teams that if they are seeing a deal
that let's say might be competitive in nature
and our pricing table would suggest
that they can go very low and earn higher
commission, but they think it's wrong. It's better to come to us. We are happy to still grant
commission, but kill the deal and go outwards. We had this case recently where one of our
foundational level competitor came to us wanting to license our models for demos. And of course,
the incentive would suggest that you should sell to them, but luckily, likely we didn't.
Yeah. You granted commission, though. In early days, you can definitely rely on.
And I just said that now it's in the policy
so you cannot sell to the foundational model companies.
So it's clear, clear to all the...
Very clear.
That was incredible, Maddie.
Thank you so much for sharing all the lessons and learnings with us.
Let's give a round of applause to Maddie.
Thank you.
Thanks for listening to this episode of the A16D podcast.
If you like this episode, be sure to like, comment, subscribe,
leave us a rating or review, and share it with your friends and family.
For more episodes, go to YouTube, Apple,
podcast in Spotify. Follow us on X, A16Z, and subscribe to our substack at A16Z.com. Thanks again for
listening, and I'll see you in the next episode. As a reminder, 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. Please note that A16Z and its affiliates may also maintain investments in the
companies discussed in this podcast. For more details, including a link to our investments,
please see a16Z.com forward slash disclosures.
