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Home/The SaaS Podcast/Episode 418
From 40M Free Users to 8-Figure ARR with Freemium SaaS
Peter Wang, Anaconda

From 40M Free Users to 8-Figure ARR with Freemium SaaS

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Episode Summary

Peter Wang gave away his product to 40 million users without even requiring an email address. Then he built a freemium SaaS business generating 8-figure ARR on top of it.

In this episode, Peter reveals how Anaconda turned Python into the dominant language for data science and AI, why he started a nonprofit and a startup at the same time, and the painful internal conflicts that erupted when employees couldn't agree on whether the open source community or the enterprise business should come first.

Peter Wang is the co-founder and Chief AI and Innovation Officer of Anaconda, a platform that offers essential open-source Python packages for AI, data science, and machine learning.

In 2011, Peter and his co-founder, Travis (the creator of NumPy), saw an opportunity to make Python mainstream in data science and analytics, but they faced a tough road ahead.

At the time, Python wasn't widely accepted in enterprise. Most companies were heavily invested in Java-based tools like Hadoop. Convincing them to switch to Python for big data analysis was a huge challenge. The founders bootstrapped Anaconda by offering consulting and training services while investing heavily in building an open-source community. They even started a 501(c)(3) nonprofit alongside their Delaware C Corp to support the ecosystem.

They also had to take on well-established competitors in industries that had been relying on the same outdated tools for decades and prove that their modern, open-source solution could deliver better results.

In 2015, their freemium SaaS model took shape when a law enforcement agency reached out and said they loved the free tools but needed a secure, behind-the-firewall version they could pay for. That inbound request became the first enterprise product sale. Peter and his team kept adding features like CVE scoring, vulnerability alerts, and license filtering based on what customers asked for.

But the freemium SaaS approach also created internal confusion. Marketing and sales hires couldn't wrap their heads around a product that was "a box of other people's parts" with no traditional upsell path. Some employees wanted to double down on the open source community. Others wanted to focus purely on enterprise revenue. Aligning both sides around the same vision was one of the hardest challenges Peter faced.

Despite those challenges, today Anaconda serves over 40 million users worldwide, generates 8-figure ARR largely from its enterprise solutions, and employs over 350 people. The company has also raised $80 million in funding.

Topics: Product-Led Growth|Pricing & Monetization|Bootstrapping

Key Insight

Anaconda co-founder Peter Wang built a freemium SaaS that reached 40 million users by investing in open-source community building and conferences for three years before launching an enterprise product, then monetized by selling security, governance, and compliance tools to the IT buyers inside organizations already using the free product.

Key Ideas

  • Bootstrapped for 3 years through consulting while funding open-source community building and PyData conferences
  • First enterprise sale came from inbound - a law enforcement agency asked for a secure, behind-the-firewall version of the free tools
  • Monetization targets IT and compliance buyers, not the practitioners using the free product - a fundamentally different buyer than the user
  • Internal teams struggled to align open-source community goals with enterprise revenue, creating years of organizational confusion
  • Python's adoption in enterprise was organic and bottom-up, reaching 40 million users without requiring email signups

Key Lessons

  • 🚀 Freemium SaaS needs community investment before monetization: Anaconda spent three years funding PyData conferences, open-source projects, and advocacy before launching an enterprise product - the grassroots adoption of 40 million users became the foundation for 8-figure ARR.
  • 🎯 Sell to the buyer, not the user, in freemium SaaS: Anaconda's free users are data scientists, but the paying customers are IT managers and compliance officers who need governance and security - two completely different personas.
  • 🛠️ Let inbound demand shape your first product: Anaconda's first enterprise sale came when a law enforcement agency asked for a secure package repository. Peter followed Lean Startup principles and built what the customer requested instead of guessing what to build.
  • 📉 Expect organizational confusion when open source meets enterprise: New hires struggled to understand a product that was "a box of other people's parts" with no traditional upsell, creating years of internal tension between community advocates and revenue-focused teams.
  • 💰 Compete on simplicity, not features, against incumbents: Rather than matching decades of specialized functionality, Peter bet that Python would win because it "fit in people's heads" - domain experts chose ease of use over feature completeness.
  • 🧠 Founders must hold vision and self-criticism simultaneously: Peter describes the founder's job as manifesting existential optimism while being your own harshest critic - courage is not the absence of fear but acting despite it.
  • 🤝 Don't sell past the close with freemium SaaS customers: Each enterprise customer only needs a subset of your capabilities. Solve their specific problem rather than overwhelming them with your full vision, and return later when you have more to offer.

Watch the Episode

Chapters

00:00Introduction
02:29Peter's favorite quote about building ships
03:57What Anaconda does and who it serves
06:13Business size - 8-figure ARR, 350+ employees
08:28Bootstrapping with consulting for the first three years
10:07Starting a nonprofit and a startup at the same time
14:59Overcoming skepticism - Python vs Java and Hadoop
17:54Betting on the end user over the enterprise buyer
20:50How organic community growth reached 40 million users
23:38The contrarian approach - no email required
25:07First enterprise product from an inbound request
29:41Competing with decades-old incumbents using simplicity
33:33Holding vision and self-criticism as a founder
38:18Internal confusion - open source vs enterprise teams
44:05Inbound vs outbound enterprise sales
46:43How ChatGPT and AI affect Python and Anaconda
48:39Lightning round
50:38Book recommendations and founder advice
56:05Where to find Peter and Python-in-Excel

Episode Q&A

How did Peter Wang bootstrap Anaconda's freemium SaaS for three years before generating product revenue?

Peter and his co-founder Travis funded the business through consulting and training services while investing all margins into open-source community building, PyData conferences, and the Conda package manager. They also secured DARPA contracts and raised a small friends-and-family seed round to sustain development.

How did Anaconda get its first enterprise customer for its freemium SaaS product?

A law enforcement agency emailed and said they loved the free tools but couldn't let employees install random packages from the internet. They asked for a secure, behind-the-firewall package repository they could manage internally. Peter's team built it and sold it to them, following Lean Startup principles of listening when customers come with money in hand.

Why did Peter Wang start a nonprofit and a startup at the same time when founding Anaconda?

Peter believed the open-source community was integral to the business thesis, not a side project. The nonprofit (NumFOCUS) housed open-source projects, raised grant money, and hosted conferences. Anaconda Inc. underwrote those conferences early on, then handed them off once they became self-funding, creating a sustainable flywheel between community adoption and enterprise demand.

How does Anaconda monetize 40 million free users without requiring email signups?

Anaconda doesn't upsell individual practitioners. Instead, when organizations adopt Python at scale, IT managers, compliance officers, and CIOs need governance, security scanning, CVE alerts, and license filtering. Anaconda sells enterprise subscriptions to those buyers - a completely different persona than the end user.

What internal challenges did Anaconda face balancing its freemium SaaS model with open-source community needs?

New hires couldn't understand the product - marketers and salespeople saw "a box of other people's parts" with no traditional upsell. Community-focused employees resented enterprise distractions, while enterprise-focused employees saw community investment as a waste. Peter described the multi-dimensional confusion as one of the hardest aspects of scaling the business.

How did Anaconda compete with decades-old incumbent analytical tools using a freemium SaaS approach?

Rather than matching incumbents feature-for-feature, Peter focused on the end user - domain experts like engineers, quants, and analysts who needed something that fit in their heads. Python was "good enough" for their specific use cases even if incumbents had more specialized features built up over decades. As the community grew, crowdsourced contributions closed the functionality gap.

What role did PyData conferences play in growing Anaconda's freemium SaaS user base?

Peter personally created the PyData conference concept to give practitioners a venue separate from traditional programming conferences. These events helped data scientists find a tribe, validated Python for data as a real discipline, generated books and tutorials, and created organic word-of-mouth adoption that eventually reached 40 million users.

How did Peter Wang overcome enterprise skepticism about Python when Hadoop and Java dominated big data?

Peter bet on end users rather than enterprise buyers. His thesis was that non-programmers - engineers, analysts, finance professionals - would reach for Python because it fit in their heads and let them work with data without learning complex systems. As grassroots adoption grew inside companies, enterprise demand followed naturally.

What is Peter Wang's view on how AI and ChatGPT will affect Anaconda's freemium SaaS business?

Peter believes that even as AI writes more code, humans still need an auditable language they can read and verify. Python serves that role because it's easy to read and run independently. He argues that trusting AI-generated code without human-readable verification is dangerous, which keeps Python and Anaconda relevant in the AI era.

Book Recommendations

The Four Steps to the Epiphany

by Steve Blank

The Innovator's Dilemma

by Clayton Christensen

Links

  • Anaconda: Website | LinkedIn | X
  • Peter Wang: LinkedIn | X
  • Omer Khan: LinkedIn | X
Full Transcript

Omer Khan [00:00:09]:
Welcome to another episode of the SaaS podcast. I'm your host Omer Khan and this is a show where I interview proven founders and industry experts who share their stories, strategies and insights to help you build, launch and grow your SaaS business. In this episode, I talk to Peter Wang, the co founder and chief AI and Innovation Officer of Anaconda, a platform that offers essential open source Python packages for AI, data science and machine learning. In 2011, Peter and his co founder Travis saw an opportunity to make Python mainstream in data science and analytics.

Omer Khan [00:00:43]:
But they faced a tough road ahead. At the time, Python wasn't widely accepted in enterprise. With most companies heavily invested in Java based tools like Hadoop. Convincing them to switch to Python for big data analysis was a huge challenge. The founders bootstrapped Anaconda by offering consulting and training services while investing heavily in building an open source community. They also had to take on well established competitors in industries that had been relying on the same outdated tools for decades and prove that their modern open source solution could deliver better results.

Omer Khan [00:01:13]:
In 2015, they launched their first enterprise product offering corporate clients a more secure and controlled version of their open source tools. This was great for monetization and revenue growth, but it also led to internal challenges as employees struggled to balance the needs of open source users and enterprise clients. This caused a lot of confusion around resource prioritization and aligning the company's vision with its business model. Despite those challenges, today Anaconda serves over 40 million users worldwide, generates 8 figures in ARR largely from its enterprise solutions, and employs over 350 people.

Omer Khan [00:01:48]:
The company has also raised $45 million in funding. In this episode, you'll learn what strategies the founders use to overcome skepticism and get businesses to adopt Python in a market dominated by Java and Hadoop. How Anaconda competed with long established incumbents in key industries. How the founders balanced the needs of their vast open source community with the demands of enterprise clients.

Omer Khan [00:02:09]:
How Peter and his team turned customer feedback into a profitable enterprise product while scaling with limited resources and what lessons Peter's learned about staying adaptable and focused as Anaconda has grown from a bootstrap startup to an 8 figure ARR SaaS company. So I hope you enjoy it. Peter, welcome to the show.

Peter Wang [00:02:29]:
Thank you, thank you. So glad to be here. Thank you for having me.

Omer Khan [00:02:32]:
My pleasure. Do you have a favorite quote? Something that inspires or motivates you that you can share with us?

Peter Wang [00:02:38]:
Yeah, well, there's. I think one of my favorite quotes when it comes to entrepreneurship in business is a quote from Antoine de Saint Exupery, the author of the Little Prince, and he had this fabulous quote, he said, he if you want to build a ship, don't drum up the men to gather wood, divide the work and give orders, but instead teach them to yearn for the vast and endless sea. And it's just one of those like beautiful quotes that especially when you're early stage, you seem to be doing impossible task. It's a vast endless sea.

Peter Wang [00:03:12]:
And the thing that the founder can do is to create that inspiration. Now if all you ever do is teach them to see, you will not get a ship built. At some point you have to go gather wood and divvy up the orders. But, but I think it's important, it's important when we're building new things to put that dent in the universe, kind of that mentality. Founders need to give themselves some credit of, of having the chutzpah, having the inspiration to do that. And that is a unique founder thing to own always.

Omer Khan [00:03:40]:
Yeah, I love that. That's a great quote. So tell us about Anaconda. What is the pro, what should I say? What do the products do you know, who do you, you know, who do you help and what are the main problems that you're solving?

Peter Wang [00:03:57]:
Yeah, so Anaconda is. It is a very popular distribution of software that people use to do data science, machine learning, python, numerical computing, engineering and all that kind of stuff. So it is a collection of open source software primarily. This is what people know us for. And you go to our website, you download the software and now you have all of the different pieces that you need and if you don't have all of them, you can use our software package installer update tool to go get other bits and pieces.

Peter Wang [00:04:29]:
Because the open source ecosystem around Python is very, very large and some of those pieces you want to get are very complex. Even though it's all open source software, it's extremely hard to build those things correctly, make them work right for whatever hardware you have, etc. So we've taken care of that problem for people and we've been doing that for a very long time. 12 years now we've done that. And really we were at the center of the movement to bring Python to numerical computing, Python, data science into the mainstream.

Peter Wang [00:04:56]:
So the reason why Python is the most popular tool for data and AI today is because of what was launched at Anaconda. So we both build that open source software installation and update mechanism, but we also do, we invest a lot into the open source ecosystem, incubating New things, maintaining old things that people don't want to maintain anymore but that are critical to the ecosystem. All of that. But the really, I think the important piece for the people listening to this podcast is the monetization of that.

Peter Wang [00:05:25]:
And so that is then the enterprise products and services that we sell to our thousands and thousands of enterprise customers. Enterprise accounts. Right. There's millions of users of those places, but thousands of accounts. So we do all of those things, but I think we're best known, and probably most known for are software download that people use to run Python, data, science, AI, ML stuff.

Omer Khan [00:05:47]:
Great. So open source product used by millions of people around the world and then a few thousand enterprise accounts, which are how, you know, basically is how you.

Peter Wang [00:06:01]:
You monetize a few thousand paying enterprise accounts. There's hundreds of thousands of enterprises that use us, but only a few thousand that are paying us right now. Yeah.

Omer Khan [00:06:13]:
And give us a sense of the size of the business. Where are you in terms of revenue, size of team?

Peter Wang [00:06:20]:
We're a very, very healthy eight figures.

Omer Khan [00:06:23]:
Eight figures in ARR. And how big is the team today?

Peter Wang [00:06:30]:
North of 350. We've been hiring pretty rapidly.

Omer Khan [00:06:32]:
And you've raised just around. We were talking about this earlier. It's about 80 million.

Peter Wang [00:06:38]:
That's right.

Omer Khan [00:06:39]:
Great. Okay. So the business was founded in 2012. It was you and your co founder, Travis. So this was a little factoid that I sort of discovered that he was the. Was he the creator of numpy?

Peter Wang [00:06:58]:
Yes, Travis is actually the creator of Numpy and scipy. And for those on the call who are not familiar with those libraries who

Omer Khan [00:07:06]:
know what is numpy?

Peter Wang [00:07:08]:
Yeah, I mean, I don't assume anything. It's a big world out there. Software. So numpy is the numerical Python library that basically creates, you know, allows you to do vector and array matrix math with, with Python. And it's a fundamental, very fundamental piece of, of numerical. I mean it is sort of the most fundamental piece of numerical computing. Sort of like what the Linux kernel is to the Linux ecosystem. Right. And then SCIPY is scientific Python and that is the various additional functions and like nerdy math calculations that you want to do, you know.

Peter Wang [00:07:40]:
And so it's used very heavily in engineering, it's used very heavily in finance and places like that. And then all of the other tools in the Python ecosystem really build upon these things. So there are two really, I would say like one is maybe one is the Linux kernel, the other is GCC or something. They're so fundamental to what makes Python work for data. But yes, Travis is the founder, so he's the creator of those two tools and I guess he's a co creator of SciPy, but he is the sole original creator of Numpy.

Peter Wang [00:08:08]:
These are all of course now maintained by teams much bigger. And that came later. But yeah, we created the company because we started doing a lot of consulting around this stuff. So before we started the company we were consultants on top of numerical computing in Python and Python for engineering simulation, financial simulation analysis, all of that stuff.

Omer Khan [00:08:28]:
So let's go back to 2011. You, you guys, I mean we say the company was founded in 2012 but you bootstrapped for the first three years. Mostly your revenue was coming from consulting and training services. So just walk us through that like how you guys got started here and then at what point did this become a product business?

Peter Wang [00:09:01]:
So the company was founded on a thesis that the Python, numerical Python and the Python data stack as we called it, that that ecosystem was ready to really be taken mainstream into transforming and disrupting business data analysis and disrupting in a good way, right? Transformatively, innovatively disrupting that, that software ecosystem. That was our bet. And we knew that there were many deficiencies, many things that needed to be made better usability bits, scalability, you know, data connectivity, all these kinds of things.

Peter Wang [00:09:38]:
But based on our consultancy we could see that this was starting to organically get adopted into big banks, investment banks, hedge funds, people with a lot of money to throw in IT and software. But they were opting to use this, you know, still emerging somewhat open source Python stuff. So that was the bet. And so when we started the company, we knew that a lot of our work was going to be community building, a lot of our work was going to be advocacy and marketing. So very unique among startups.

Peter Wang [00:10:07]:
We founded the startup Anaconda, actually used to be called Continuum Analytics. So we started Continuum analytics as a company to, to build products around this open source ecosystem and sustainably fund additional continued innovation there. We also started a nonprofit. So not many founding teams start a 501C3 and a Delaware C Corp at the same time as, as multiple components of the same underlying business thesis. But we did that. And so as part of the community efforts, we then create a foundation to house a lot of these projects, raise grant money for them.

Peter Wang [00:10:39]:
We created a meet a set of meetups and conferences. So I personally created the concept of PI Data and the PI Data, you know, meetups and conferences that are now global. So all of those things were efforts to drive adoption of Python. So those first three years we had a couple million dollars of seed funding from friends and family that we raised. We want some DARPA contracts, which was amazing. DARPA was great partner to work with.

Peter Wang [00:11:03]:
All that money that came in either went directly into seeding and building new kinds of open source projects, or creating more adoption and creating more marketing materials to advocate for the use of Python. All these kinds of things. Some that went into building things that would eventually become our core product. Right? And that is the Anaconda package installation system, the Conda package manager, some of our various websites and hosting sites that host then the packages that people build, that we build.

Peter Wang [00:11:32]:
All those things were then, you know, those were built on the, on the margins coming from the consulting service that we did in those days.

Omer Khan [00:11:38]:
Can you explain the rationale? I mean, in the early stages when you're, you're trying to get your business off the ground, there are so many things to do. You just, you know, a founder just doesn't have time to do everything. And then for you to also say, okay, we're going to have this nonprofit side, you know, we're going to kind of focus on that piece as well. Can you just explain the rationale, like why you guys felt that was so important for you to take on at that point, you know, over.

Peter Wang [00:12:11]:
That's actually a question no one's ever asked me. That's a really, really good question. I've told the astounding story many times. Many podcasts I've told about, like Streetman, I've told on other podcasts and whatnot, but no one's ever asked me that question, like, why did you waste your time with this distracting activity around this other stuff? But I think in a beautiful way it connects back to that original quote, right? Yearn for the vast and endless sea. There was a mission to what we were doing.

Peter Wang [00:12:35]:
We really believed in the quality and the amazing power, the amazing power of the open source community to create high quality, innovative things. And so for us, building that community and supporting and pushing that was not an optional thing. That was what we were trying to do. There's a related quote that I almost selected, but I'll give it to you now. And it's from Peter Norvig. And he said the best businesses are built by those who wanted to achieve a goal and had to start a business to do so.

Peter Wang [00:13:06]:
And in our case, it was exactly that. We wanted to achieve a goal, which is to make Python the language and the technology for data analysis and numerical computing in the world, and to do that. We had to create community support things and to really make that sustainable. We had done enough consulting to know that just trying to piggyback this on the basis on the back of consulting margins was not going to be enough. And if we really want to create a sustainable ecosystem, like we need to actually show we could build products around this.

Peter Wang [00:13:34]:
So we started a company around that as well. So for us, the company is, is, is, is sort of integral to the community motion that we were doing. But, but from a very tactical and pragmatic business standpoint, it proved to be a great business strategy because the bigger you make the pie and the more people you get to grow that pie, the bigger your share naturally becomes. It's an expanding universe. Right. So it was really important that we did that.

Omer Khan [00:13:58]:
Yeah, I think it's turned out to be a very smart strategy. I was just curious whether it was intentional at the time or an accidental outcome of you doing it for a different reason.

Peter Wang [00:14:13]:
Oh, and I didn't take it in a defensive way at all. I mean, I think it's a great question. Right? But, but it's really. Yeah, it was, was something that we, we were, we were really motivated. You know, we did have a vision behind this and I think this has helped in terms of general credibility of what we do. We certainly made a lot of mistakes along the way and whatnot.

Peter Wang [00:14:32]:
But all along so many people in that community have, you know, they've gotten a start, they've many others have started, have gotten funded startups, built companies, built their careers out of this ecosystem and they would not have had that opportunity. We don't have such a vibrant ecosystem if we hadn't had, if we were always just doing it from a, you know, just a bean counting perspective, like how much we're getting out of it and all that stuff. So in the end it really did pay it forward for us. Right.

Peter Wang [00:14:58]:
As a business, one of the things

Omer Khan [00:14:59]:
that's interesting to me is that personally, you know, if I think about data science or data scientists today, it's hard to imagine anyone talking about those terms without the word Python coming up at some point. And so it was really surprising to me when earlier we were chatting, you said in those early days we were struggling to convince people to use Python. Just tell us what was going on, what were people using at the time? What kind of objections were you getting?

Peter Wang [00:15:37]:
Yeah, so again, 2011 timeframe, 2010, that was when big data was the thing. People really were starting to turn the corner on cloud. So cloud is going to be much More popularly adopted and NoSQL, big data, Hadoop, right? These are the big things people are talking about. Data science was even still sort of a term that people were looking at with suspicion. 2012, 2013, 14, lots of jokes about data scientists, just a statistician who lives in San Francisco, these kinds of things, those are new terms at that time.

Peter Wang [00:16:09]:
And so everyone, all the focus was on Hadoop and Big Data. So, you know, when you're, when you're then talking about this Python stuff on the side, it's like, well, that's not Java. And you know, big data, big iron, big systems. Hadoop was already in Java, Spark was Scala, which at least ran on the jvm. And many people thought, well, Scala and Spark, that's going to be the future of all this stuff. We can rebuild everything, everything that the R people and the Python people are doing.

Peter Wang [00:16:36]:
You could do all of that inside Spark and inside the jvm. We certainly didn't feel that was the case. But you know, that was where the argument, well, ultimately resolved itself in the market. Right? But, but there were certainly perspectives there. And from a statistics standpoint, you know, there are these, there are a lot of big statistical tools and big analytical software that were around and people did see that open source tools like R would be a competitor to that.

Peter Wang [00:17:01]:
So I think R was seen as the rightful heir to the throne and in that space and then in comes like a bunch of these like applied physics, engineering, whatever, kinds of like nerds from the Python land. And you know, Python at that time was defending itself on all fronts right there. You know, there was competitive competition, Ruby for web frameworks and, and then on, on the data side, numerical side, we were just a weird little sideshow.

Peter Wang [00:17:28]:
So the first, first or second Strata conference I went to, I think Strata was the big Data conference that O'Reilly put on. I was getting, I would say, not roundly mocked, but people were definitely like, wait, why, why are you talking about Python? I mean, this is a big data conference, right? And, and so definitely there was a lot of that. But you know, we, we had a bet and I think our bet played out pretty well.

Peter Wang [00:17:54]:
And my fundamental thesis was that, and what we've seen, our consulting was that end users, people who are not traditional programmers, they have analytical needs, they could be, they could be a mechanical engineer or electrical engineer, they could be a quant finance person, they could be someone doing marketing analytics, they have a lot of data they want to go and ask really interesting questions of beyond what they can do in Excel. Certainly beyond what you can ask in SQL. And they're not programmers, so they don't want to learn 15 different languages and hodgepodge of stuff.

Peter Wang [00:18:27]:
And Python was something that would fit in their heads, let them do the data stuff they wanted to do, maybe do a few other things. And it was all, it was good enough. And so our bet was that that was going to drive a lot of adoption and that we could then plumb other kinds of connectivity into that ecosystem, that Python ecosystem, if you could just be the first mile, or I guess in the telecom, since they called the last mile right when it actually goes to the house.

Peter Wang [00:18:53]:
So when you actually have a person with a brain with interesting questions of data, fingers on keyboard, what are they thinking? What are they typing? And our bet was from what's seen in our consultancy, for what we had seen in our open source ecosystem, who are the people that were showing up in it? There are people that didn't have a traditional programming background, they're not software devs, they don't have 12 years of C experience, they have all these other domain expertise. And we saw those people reaching for Python as a preferred tool.

Peter Wang [00:19:18]:
So we bet on the end user, we bet on this tool that would fit in their heads and then we try to bring other things to make that ecosystem more powerful, but we'd plummet through to the end user. And now this has really been validated. I don't know if you guys saw the announcement just recently, the Excel integration of Python. So now anyone who's using Excel can reach for these Python tools and it's right there in the formula bar.

Peter Wang [00:19:39]:
So our thesis has proven out brilliantly beyond what we possibly could have imagined when we started 12 years ago.

Omer Khan [00:19:46]:
So you were facing a lot of skepticism about using Python rather than sort of pushing a rock uphill and trying to convince all these people. What I'm hearing is you were like, well, we did that to some degree. But what was more impactful was focusing on the end user, people who, you know, weren't sort of traditional software developers, but needed to be able to use a tool like this and make sure that you were, you were speaking to them, serving their needs and so on, how you talked about community building.

Omer Khan [00:20:28]:
But how are you reaching these people? How, or was it all inbound? Like, how did this, this sort of community effort really, really take off? I mean, today, like, how many, how many developers would you say, or let's not say developers, how many end users you know are using Anaconda today?

Peter Wang [00:20:50]:
It's in the tens of Millions. You know, it's, it's, it's weird because we don't have a traditional multi tenant SaaS. You know, you don't go to website to run Python. You download Python, you run it locally, we don't put creepy trackers and everything in it like the software, you download it and if you choose not to give us your email address, then, you know, you just have your stuff.

Peter Wang [00:21:10]:
Now when you go and you update packages, of course that reaches our, our, our, you know, package hosting repositories and we can sort of, we, we run a lot of analytics and we do a lot of this kind of stuff to sort of see even when people don't log in or don't create an account with us, you know, what, what is the actual number of uniques and all that kind of stuff. And based on the best analytics that we can tell, it's north of 40 million users, which is shocking.

Peter Wang [00:21:35]:
But then if you think about the fact that we have, you know, millions of millions of unique downloads of our bulk installer every single week, I mean it adds up a lot. And you think about how many people in schools, universities, they're learning Python. The first thing they do is they download Anaconda, they start playing with this stuff. So, and it's international, you know, it's China, it's India, it's South Korea, it's Australia, it's everyone in India. Everyone is doing this stuff because everyone needs data and they want to do machine learning on it.

Peter Wang [00:22:02]:
So yeah, it's millions and millions of people. But to your question, how do we get it going? It was all organic and that's why the community building was so important, that by creating these PI data conferences and having even that term, GitHub was part of it, Twitter was part of it. There was definitely a socialization element in the virtual spaces.

Peter Wang [00:22:22]:
But having these real conferences and meetups create a venue for these practitioners who wouldn't go to like, they don't go to traditional programming conference because that's where people talk about language things and all these like very, very sort of programmer dev centric stuff. And so when you have like a PI data conference where people go there and they learn tips and tricks how to apply these different libraries to the data problems they have, well, they feel like they found a tribe, right?

Peter Wang [00:22:49]:
And then people start writing books and they're, you know, just all these things, YouTube videos, tutorials, we do webinars, we invest a lot in that community building and really validating that. There is a Python data science thing that that actually is a thing and not just an off label use. I think that's a lot of sweat equity and sort of, I won't call it emotional labor, but it's a lot of invisible investment. I mean Anaconda Inc. Underwrote a lot of those conferences. You know, you got to sign venues, contracts, food vendors stuff, all these things.

Peter Wang [00:23:18]:
And the nonprofit Non Focus did not have much money at the time. So we underwrote a lot of those conferences and, and once those became self funding, we handed all of that off to Mount Focus. So it became a revenue generator for them and they could take those revenues and turn them around to being grants to the open source projects. So that was kind of how we got that separate engine going in the nonprofit open source space.

Omer Khan [00:23:38]:
It's just mind blowing. That number of like 40 million plus end users. And in many ways I think a lot of people would be like just freaked out by this idea of wait a minute, you've got 40 million plus free users of your product. You don't ask for an email.

Peter Wang [00:23:59]:
We ask for it, but we don't require it. We do ask for it but you can click the X so you don't have to give it to us. Right?

Omer Khan [00:24:05]:
You don't require it and you don't have a multi tenant solution. People have to either. The way they can, you know, get Anaconda, as you said, is either download locally on their computer or for enterprise customers, which we'll talk about in a while. They can have some kind of on prem solution. So in many ways you're doing things, so many things which are so contrarian I guess in terms of how you are supposed to run a subscription business like this.

Omer Khan [00:24:41]:
Let's talk about how that on prem product, you know, it sort of started to come, you know, come about. So we talked about like the first three years of consulting, training services and then year four, 2015, 2016 is when you started to provide some clients as on Prem Solution. How did that happen?

Peter Wang [00:25:07]:
Well, I do want to clarify. We do have a cloud based multi tenant sort of traditional SaaS application for hosted notebooks in the cloud. You go to Anaconda cloud, I encourage you to, if they don't want to install something, they can use it there. But it's not our primary thing.

Omer Khan [00:25:22]:
Right?

Peter Wang [00:25:23]:
We have, we have, you know, a healthy number of users on there. It's growing but it's not like our primary thing. So the on prem. The on prem bit and your question specifically was which aspect of it was like how did the business, how did that business emerge?

Omer Khan [00:25:37]:
Yeah. So, you know, you're kind of going down this path of consulting, training, you're building this community. You know, you're starting to get some traction. You've sort of figured out who the right ICP is, at least in terms of the community side and the open source side. Did you guys just wake up one day and say, hey, let's add an on prem offering?

Peter Wang [00:26:00]:
No, actually this was very Lean Startups. Cause this was me and Travis's first startup, right. So we're like, well, we read a bunch of books. We're a couple of nerds. So we read some books. We were both in Austin, which did not have as much of. There was like, no, like venture ecosystem. It's not like we were in the Bay Area. Every, every, every night there's a meetup, drink up. Something where you're just swimming in other founders and like, you just learn so much from them through osmosis. We had very little of that.

Peter Wang [00:26:27]:
So we're reading books. We would go to some of these things, but it wasn't, I would say it was not rigorous and it was not in the groundwater right in Austin. So. So we really took like four, four steps to the epiphany. Lean Startup, a lot of these kinds of things, very much to heart. So we got inbound. So. So our software download, you download this thing and like so many pieces of open source software, there's always updates. You want to get the newest version with some feature or maybe there's a bug fix.

Peter Wang [00:26:51]:
So people are getting package updates all the time. And it's a very large ecosystem, hundreds of thousands of different libraries and packages. Okay, great. So we get emails from companies. The first is actually from a law enforcement agency. And they said, hey, we love what you guys are doing with Python and this is great, but we cannot have our folks here internally just installing random packages off the Internet. Do you have something you could sell us? That we would have our own behind the firewall package repository that we could then manage. Right.

Peter Wang [00:27:21]:
That we would be able to exile certain packages that we don't want people to use, that we could force certain kinds of updates if there's security updates, et cetera, et cetera. And we said, you know, we don't, but we could put one together. And we put that together. So we put that together, sold it to them, and there it is. That was your first product sale. And Lean Startup just says, when customers come to you with money in hand saying, we want this product, you should at least listen to that.

Peter Wang [00:27:45]:
Right so we listened to that, we built that, and then we started talking to other people. You know, again, inbounds, we also did some webinars which really we did invest in a little bit about marketing and positioning of this stuff. And it turns out that a lot of people have this need, especially when it comes to running. You know, when people do Python stuff for data, they're running it on data.

Peter Wang [00:28:03]:
And so there's sensitivity around it oftentimes, you know, there's corporate environments where the data cannot leave a particular network, in some cases data cannot leave a particular machine, right? So they really need to have all the stuff running. They really want to have an internal mirror and a way to manage their open source consumption internally. So that became then this, we just added more and more features. People wanted the ability to filter out GPL code. They didn't want their junior data scientists to absolutely put, to, to accidentally put some GPL web service into production. Right?

Peter Wang [00:28:34]:
And so all these kinds of things. And then we started doing things like CVE scoring and vulnerability alerts and stuff like that. We had, you know, custom package build services. We had ways for people internally to create additional channels and make it so that only the dev, the dev cluster only see some packages, the production cluster sees other packages. We just added more and more bells and whistles and things like that. And I mean that's kind of, that product is still a mainstay of what we sell today.

Omer Khan [00:29:00]:
What, what percentage of, of your revenue roughly comes from that, that product?

Peter Wang [00:29:08]:
So that product is in the, I'd say probably about 30% of revenue, maybe more than that. So it's, it's a little bit difficult because there's the on prem. But then we also can run that in a cloud for people. So people do want their own customized package server, but they wanted, they're all cloud, you know, they might be cloud native and have a Kubernetes thing spun up on Amazon or, you know, wherever. And so we do that and then we also have a secure commercial package repo that we sell subscriptions to.

Peter Wang [00:29:38]:
And that's, that's another good chunk of our revenue.

Omer Khan [00:29:41]:
Let's talk a little bit about. You sort of mentioned the incumbents that you, you know, were around at the time. And so you're making a bet that Python and Anaconda is the right solution for these, these end users. But you also told me earlier that, you know, one of the struggles that you had was that you just felt that, you know, we weren't as good or as polished as a lot of Those other alternatives. Can you kind of give an example about that?

Omer Khan [00:30:21]:
Like you know, I can say not as good as polish, but you know, make it real for us. Give us an example like so people

Peter Wang [00:30:26]:
can understand, you know, some of these other analytical tools, they have a lot of specialized analysis functions that have been developed over decades. I mean these, these tools, these incumbents are decades old, right? And so if you are doing a particular kind of financial analysis, you'll literally have every possible thing in there because they've been accumulating customer use cases for decades and they put functions in there and they, they would just, you know, that's what they've got.

Peter Wang [00:30:51]:
In the open source world you get whatever, you get whatever somebody decided they needed and they took the time to go write it and put into the thing. So when you're first starting in an open source ecosystem, that crowdsourcing contribution dynamic is not so large. Your, your baseline, how many people you have is not that big. Now as it gets bigger and bigger, you then acute, you have more and more people, more pull requests and then maintainers merge those in and it becomes more and more capable. And that's great.

Peter Wang [00:31:15]:
But when you're early on you don't have as much coverage of basic functionality maybe. Right. But then there's other kinds of things where, yeah, where like there may be some visualization, some special visualization, they want some particular format. And we saw this in geophysics, like I'll give you an example for like oil and gas geoscience and geophysics. There are a lot of very expensive tools for doing analysis that have just been there forever.

Peter Wang [00:31:39]:
And so when we're first doing, even consulting with some of this stuff, people like using the Python as an alternative maybe to matlab, they like using certain kinds of things, were nicer to write a Python, but then certain kinds of visualizations that were very custom. You imagine looking down a well, like if they have a well and they do some analysis of all the measurements down a well. That's not a standard plot type that most people run into. Right.

Peter Wang [00:32:05]:
It's kind of a weird kind of chart, but they've got a very custom way of looking at this kind of data in the geosciences and all of the big software suites for that industry have very custom, very nice and polished UIs for this they've been developing over decades. And in the open source world it's like whenever I get hacked up together in like space a couple of months, that's what you get, right. So there's that kind of a Thing. So there's just like a lot of that kind of stuff that makes any sense?

Omer Khan [00:32:33]:
Yeah, that totally makes sense. You know, it kind of. I was thinking about that, that, you know, with many founders, they. They have this dilemma that they have to deal with that. On the one hand, they know all the flaws in their product. They know all the stuff that's kind of works but is kind of, you know, just, you know, glued together and could fall apart. They know about things that they want to do that could be ten times better, but they just haven't been able to invest the time and the resources to do that.

Omer Khan [00:33:14]:
And yet at the same time, they have to go out there and tell the world and tell customers how great their product is. And it sounds like you went through sort of a similar process. Was that like a difficult thing to do at the time?

Peter Wang [00:33:33]:
It wasn't a difficult thing because I was such a believer in the community and the amazing people in it. And I really believed that the idea of empowering these subject matter experts or domain experts, empowering them was fundamentally the right thing to do. So this is where, you know, if you're the founder, you're creating a religion, you have to be the center of sort of intersubjective belief that there's a meaningful mission, that there's a thing to do. So for me, it wasn't difficult to manifest that future visionary, positive thing.

Peter Wang [00:34:08]:
But also for me, like, if you talk to other people, people who work with me and whatnot, that is sort of my natural mode is I'm very forward looking, optimistic. So that was also a little bit easier for me. And I recognize that for many people, depending on their psychological and sort of neurological thing, that may be a really difficult thing to do. Right. And I know that a lot of technical people do struggle with that kind of thing. I'm naturally very extroverted. So it's easy.

Peter Wang [00:34:30]:
So I don't want to make it sound like it's always going to. It should be easy because you're absolutely right. That is an enormously hard thing to do. It is enormously hard because you have to hold that vision. You have to manifest the vision and the fact that you could do it. You have to fundamentally be existentially positive and optimistic if you're going to push any kind of organization to the promised land. But I think the way you get through that is developing an internal capacity to manifest two things at the same time.

Peter Wang [00:35:03]:
So you have to manifest for yourself that honesty and like, oh, here's what

Omer Khan [00:35:07]:
we need to do.

Peter Wang [00:35:08]:
But I really believe we can do it. But, but the other thing is that it's sort of a, it's a customer subjectivity. So you're going to be your own. You better be your own harshest critic or you're not going to make it right. So you're going to be your own harshest critic. Your customer isn't. Your customer is looking at you for the same reason why it's hard to sell stuff. You also actually probably have a bit more leeway than you think.

Omer Khan [00:35:31]:
Right.

Peter Wang [00:35:32]:
Which is the customer. If you use the jobs to be done framework for product development, your customer is hiring you to do or hiring your product to do something. And all you have to convince them is that it does that one thing better than whatever they've got currently going on, that it's worth them making. You know, taking, taking the leap and making the switch. You don't have to solve like when you're building the product, you feel like you have to solve the world's problems, make the best possible thing.

Peter Wang [00:35:56]:
But every single customer only has some subset of, of those things that are value propositions for them. So if you just handle it for them, well, that's great if that. If some prospect customer comes in and says, this is not good enough for me, great, maybe in the future will go back to them and it will be good. So you move on to the next prospect. And so manifesting that like other center of perspective, it's very, it can be very liberating in the sense that you don't have to be such a harsh critic for yourself.

Peter Wang [00:36:24]:
You can just say, well, what does that customer really need out of all the things we've got? Can we cobble something together? Can we put this in a way that it solves that problem for them? And if it does, they'll be happy to pay you for it now. It's great. And then you come back later when you've got all this other stuff that you think is going to be even better in the. It's also tied to like, don't sell past the close.

Peter Wang [00:36:43]:
It's tied to all these kinds of things where as a founder, as a visionary is all these things you could see all things it could be, but you don't have to sell all of those things to every customer.

Omer Khan [00:36:53]:
Right.

Peter Wang [00:36:54]:
And in that space you can find a lot of forgiveness for yourself and find a lot of peace, hopefully. Does that make sense? There's a lot of hand waving, but hopefully that totally.

Omer Khan [00:37:05]:
Yeah, the hand waving is fine. Totally makes sense. And I think the way you put it, it's an obvious thing, but I think the way you described it, maybe I haven't heard that before, but often I think founders, when they're building a product, they look at the competitors or the incumbents, they see something that has hundred features and they're thinking, oh my God, I just got this one or two things here. There's just a huge feature gap between what I can offer and what these products have. Number one.

Omer Khan [00:37:43]:
Often it's taken decades to get to that point, but what you pointed out, hey, how many customers are using all those features in those products and if you can figure out which subset of customers are using a small percentage of those features and just focus on them and help them do a particular task better, you don't have to go and build all those features and spend a decade before you launch the product, which is often how you feel like what you want to do.

Omer Khan [00:38:18]:
Let's talk a little bit about the, you know, we talked about the open source side, the enterprise business. So now that's getting traction. You know, you've got more and more these on prem solutions in place. The open source piece is growing. And then as you know, you told me, as you start to hire people, it becomes like really confusing for a lot of people coming in. Like, I guess the question I asked you at the beginning, like, why are we doing these things? Why, why are we, you know, like.

Omer Khan [00:38:55]:
And you had like two opposite kind of perspectives depending on where somebody was in the organization, right?

Peter Wang [00:39:01]:
Yeah, there's. For us, it was particularly hard for two reasons, not just one, right. On the one hand, and the first one is that. We have a very broad. It's a weird product if you think about what we have, because although we write some of the open source that's in what we ship, we don't write most of the open source. We're really a distributor, we compile and build and that can be very nuanced and tricky. So there's value that we add there when we do that. But nonetheless, the upstream source code comes from other people.

Peter Wang [00:39:36]:
So it doesn't look like a traditional software product. I mean, if you think about, if you're a non technical marketer or salesperson, someone who's not technical, but you go into a tech company and you ask them, well, what's your product? Okay, it's this thing, it's a box of other people's bits, you know, like, well, you know, like, how am I gonna. What, what. It's a box of other people's bits. And, and so like that is kind of a weird thing to try to sell in any case.

Peter Wang [00:40:00]:
But then additionally to that, we have this weird thing where because we pushed and sort of broke new ground and created this Python data science, that job category didn't exist when we started the company because we made the tools available. That job category became a thing and people started using our tools. And so there's grassroots adoption inside businesses, but those people are oftentimes new. They don't know how to procure, they don't know how to buy, they don't know how to navigate budgets inside enterprises.

Peter Wang [00:40:35]:
And meanwhile enterprises, they have a love hate relationship with new technologies, right? They know they need to be innovative, they know they need to stay on top of the stuff, but they also just feel like they're constant on the technology treadmill. So there's always internal corporate inertia and pushback headwinds against new things coming in. So you have to convince those buyers, the economic buyers, the IT people, the compliance, safety, CIO people, procurement, you have to convince them that this new tech is good.

Peter Wang [00:41:04]:
And by the way, you should probably buy this thing to support these people using the free thing. So we didn't have a simple like, oh, here's, you know, a screwdriver if you want more screwdriver heads by the plus plus subscription, or here's a database if you want more rows by the subscription. Our problem is a very weird thing. Here's all this free amazing stuff. It works great. None of it is limited in any way. Use the crap out of it and we start using it a lot inside your business.

Peter Wang [00:41:28]:
The managers are going to want to have some way to govern it. They will not have some stuff running on prem. They want better collaboration tools and we sell through that way. So then internally, what that means, when we hire people in, we'll hire someone who's doing marketing or we hire someone who's doing sales. They have to in their heads, wrap their heads around, number one, the product is a box of other people's parts. Number two, you're not upselling the straightforward upsells of these things.

Peter Wang [00:41:52]:
You're not saying, oh, you could do a million rows, we want to do 10 million rows, you got to pay us. You're not upselling in that traditional way. Your upsell is actually not even going to the people who are using it. Your upsell is to this other route, which is these other stakeholders. So it's very complicated. And if you get someone who understands the practitioner aspect, they sometimes don't understand how to do top down marketing to the B2B economic buyer, but vice versa.

Peter Wang [00:42:16]:
You buy something, you get someone who's experienced, who has a Rolodex salesperson, they know how to approach the B2B buyer, but they don't actually for them any investment in the open source, the community, the practitioner tools is wasted because you're not selling that stuff like that stuff, you don't make any money. So why are you putting your developer resources onto making the enterprise product better? Right. And so it's a really, it was just so many dimensions of hard.

Peter Wang [00:42:40]:
If I had known that that was how hard it was going to be, I would have tried to engineer other kinds of products. Right. That would not have this confusing and conflation that happened with this stuff.

Omer Khan [00:42:51]:
Yeah, it's fascinating because it's like as you were telling me earlier, you were in a situation where some people are saying we've got this massive open source community, why are we getting distracted with this enterprise thing? And, and then people on the enterprise side saying we're generating revenue from this, why do we need this open source thing? But really that was how the flywheel was spinning. Right? Because you had this massive distribution and then people are starting to use this in their organization.

Omer Khan [00:43:25]:
They don't need to pay for anything, they don't necessarily need permission as long as they can install Python and Anaconda and get started. And in many cases you don't have the email address so you can't even, you know, even if you wanted to do some kind of upsell or marketing, you can't do that. So how did that actually happen? Like, so you've got let's say like a million people out there who have downloaded Anaconda who are using the product. Some of them are in enterprise, you know, organizations. Is it all inbound?

Omer Khan [00:44:05]:
Like eventually when some manager says there has to be a better way to do this and them coming to you and saying, you know, give us, you know, like, like the first customer saying can you give us an on prem solution and we'll pay for it. Or were your team finding ways to do outbound as well in these.

Peter Wang [00:44:27]:
It's a little of both. It's a little both. I mean over time, you know, we don't have to advocate for the use of Python data science anymore. People do that.

Omer Khan [00:44:35]:
Right.

Peter Wang [00:44:36]:
Python's the language of AI, so that's what it is. But we do have to still drive awareness for people about the vulnerabilities they might have in adopting just purely open source approach. It's Always open source, but just using things from the free and community side of things. There are, there are, there's real value in them securing their open source supply chain. That's a term that is now, you know, it's actually in executive orders. There's NIST standards around this kind of thing and, and people can't ignore it anymore.

Peter Wang [00:45:04]:
So that is certainly one of those like, market shifts that has been a tailwind for us and it's helped us, you know, find receptive ears and we talk to people about this kind of security stuff. So there's definitely an outbound aspect of the marketing around this and we could do a better job of, of fixing up or cleaning up some of the UI bits for what we do install that people know about other value added services, even as a practitioner, single practitioner, that they can upgrade and get from us.

Peter Wang [00:45:34]:
We're sort of, we, we've split our focus in many different ways over the years, but we definitely, like, that's an area that we are trying to invest more in. It's just getting that direct practitioner consumption of our cloud services or using us to share more of the things they build with other people, showing how easy it can be to do that. There's a lot of that kind of stuff that we, you know, everything takes money. And so doing that kind of outbound marketing takes money. All these things take money.

Peter Wang [00:46:01]:
And so we've had to sort of sort of peanut butter some of our investments in this way. I mean, the funny thing is we go to a conference, you know, we get very bimodal sort of responses. Some people say, oh, Anaconda, I use you the, you guys are great. Um, and then it's like, whoa, you guys have enterprise products. I always thought you were a nonprofit, like people, literally, you know, and that's, that's not great.

Peter Wang [00:46:22]:
Given that I'm like, you know, looking at the PNLs all the time, being like, okay, how do we like, balance the needs for more engineering resources versus this and all that? And so it's like, oh, we thought you're a nonprofit, but now that we know you got an enterprise product, this is great. We can actually use that. So that tells me I invest more in some of that outbound messaging, right? So these are the kinds of things that we sort of, you know, even now we're still trying to figure out how to dial in.

Omer Khan [00:46:43]:
One last question before we go into the lightning round. How does the world of ChatGPT and people now suddenly using prompts to query all kinds of different data sources? How do you see that impacting what you're doing?

Peter Wang [00:47:02]:
I think that it will. So there's definitely this sentiment that ChatGPT will just write all the code for us. So why do we need to learn Python or learn any of these other things? My thesis is that right now it is humans writing code, and then we get it to where computers can be writing code. But it's important to have a language that the computer is writing the code in that we can verify.

Peter Wang [00:47:29]:
We might not be writing a lot more of the Python code or code being written in the world in general, will be done by computers and machines, but we're still going to want to have an audit trail. And so in that case, it's not about the language that a person can write as much as the language that people can read and maybe tweak and verify on their own. And that's still Python. It's an easy language to read, it's easy language to write. It fits in most people's brains.

Peter Wang [00:47:56]:
So I think even if we buy into this idea that the LLMs will do all this coding for us in short order, having a language that we can read and audit and run independently to get this to verify the results is super critical. I mean, the last thing you want is a machine that says, well, I generate the code, spun up all these Docker containers, I ran all this code and here's your result. The answer's 42. And you're like, what? Let me go try that.

Peter Wang [00:48:22]:
And you look at the Docker container and it's spewed out, it's put out 10,000 lines of C and then it's got a weird make file of another thousand lines. You like, oh, my God. There's no way I can verify the answer's 42.

Omer Khan [00:48:33]:
Right.

Peter Wang [00:48:34]:
So I think it's really important, even if we move to a mode where they're programming, that we have auditable things that are human readable.

Omer Khan [00:48:39]:
Yeah, that's a great answer. I love that. Okay, let's wrap up. Let's get onto the lightning round. I've got seven quick fire questions for you. All right, what's one of the best pieces of business advice you've received?

Peter Wang [00:48:53]:
One of the best pieces of business advice is that it's in general, it's all about meeting other people's needs. So whenever you're thinking through a problem, when you're thinking about what do I do? Or why am I struggling with this? Or what's wrong, I mean, whenever we're in a pain fear mode, we are Very. You know, we're trying to meet our own needs, but in general, our problems come from not meeting other people's needs. So it's really important that you develop the conscientiousness and the consciousness to be able to have a state of mind that.

Peter Wang [00:49:22]:
That outside of your own subjectivity, frames and holds. The other person's subjectivity understands, well, what are their. What are their needs? How do I meet their needs? And one other one. So, yes, for one, but I want to give you another one that's really important that I wish I had learned earlier, which is in general, in life, but it's true in business. Boundaries are loving. It's not wrong to say, here's my boundary. This is all I can do for you as a founder. You know, you. You.

Peter Wang [00:49:50]:
You're sort of the person who does everything of last resort. You care. You catch all the balls as they drop. But in relationships in general, in life, but also in. In client relationships, you know, it's okay to fire a bad customer sometimes. You have to. With employees. I, you know, I. I actually had sort of my. My.

Peter Wang [00:50:08]:
My emotional mental breakdown at one point was because I was trying to be the counselor and the camp coach for a hundred people, and that was just too much like my internal emotional thermal sync was completely deregulated and dysregulated. And so that's an important lesson that I hadn't learned, but I've learned now, and I want to make sure everyone else, as many people as possible, understand that the boundaries are loving.

Omer Khan [00:50:35]:
Great. What book would you recommend to our audience and why?

Peter Wang [00:50:38]:
I really think Four Steps to the Epiphany was a really fantastic book. It's hard to say why. It just had a lot of good bits and pieces. I really. I was just. I loved it. I thought it was a fantastic book. But another one that people should definitely read is Innovator's Dilemma. That's a fantastic book. People should definitely read that book.

Omer Khan [00:50:54]:
Great. What's one attribute or characteristic in your mind of a successful founder?

Peter Wang [00:51:00]:
Well, we already touched on this, but I think it's the ability to simultaneously manifest existential optimism while also being completely paranoid about everything going wrong. And this idea that courage isn't a lack of fear. Right. You have to see all of it. It does fear. Like, you feel it, but you do it anyway. And so I think that is an attribute that's really important is being able to manifest both those things.

Omer Khan [00:51:28]:
What's your favorite personal productivity tool or habit?

Peter Wang [00:51:32]:
I just take a lot of notes. So for a Long time as an Evernote user. I switched over to using Joplin. I. I'm trying to put other things in Obsidian now, but it's basically just I'm scrapbooking ideas, I'm putting meeting minutes down. I have like readings and other things. I really wish I had a better tab browser organizer. So I don't have like a perfect system for this at all. But I definitely feel like having a single place where I take all these notes is just been super critical. I couldn't, I couldn't function without that.

Omer Khan [00:52:00]:
Cool. Yeah. I'm trying to use Obsidian more and more as well these days.

Peter Wang [00:52:04]:
It's fantastic.

Omer Khan [00:52:04]:
Yeah, yeah, yeah. What's the new or crazy business idea you'd love to pursue if you had the time?

Peter Wang [00:52:10]:
Well, there's some things that are AI related and adjacent, but I think the crazy of it, and this is something I'm definitely going to do, is create a network, a sort of research network, a research group, maybe institute is too big of a name that really is in support of looking for weird and interesting physical phenomena that we don't have explanations for.

Peter Wang [00:52:40]:
So you can call it sort of fringe physics, but not like just crazy random theories that people have no evidence for, but actually fringe sort of evidentiary physics, like what are the weird things that people observe but we, we actually don't understand or can't, can't explain. And creating really a single place where people can catalog all these things, talk about them, and we can really start to understand some of the stuff. So that kind of radical physics or hermetical physics institute is, is sort of my crazy idea.

Omer Khan [00:53:09]:
What's an interesting or fun fact about you that most people don't know?

Peter Wang [00:53:14]:
I'm. I'm really into astronomy, so I've been an amateur astronomer since I was like 13 or 14 years old. And I have a really big, I have unfortunately too many telescopes, but one of them is a really big telescope. It's a 28 inch diameter, pretty large telescope. And I, and I do the thing that I do that most even astronomers don't do, is I use military night vision equipment to look through the telescope. And that is an amazingly cool thing. And you can see nebulas, you see all these things that would otherwise be photographic objects.

Peter Wang [00:53:46]:
Like you have to photograph for hours and do long exposure with military night vision gear. And with the right kinds of filters, you can see amazing things in real time, even a smaller scope, but in a big scope, it's really spectacular. So that's my hobby.

Omer Khan [00:54:00]:
And finally, what's one of Your most important passions outside of your work.

Peter Wang [00:54:03]:
I'm tied into a group of thinkers that are really looking into like what is the future? What should the future operating system for civilization really look like? How do we do infinite game, not zero sum games, kinds of dynamics and really bring that to life. And this does tie into my open source work because I think open source software is one of those proof points that human collaboration at scale can yield incredibly powerful artifacts that is way more effective than what capitalism and even market economics has produced.

Peter Wang [00:54:39]:
And as we get to a world where we have more and more technology to suffice human needs, we need to start thinking about how. It's not about limits of growth or degrowth or anything like this.

Peter Wang [00:54:49]:
It's more about how do we, as a collective action principle, organize humanity so that we don't keep running, burning up the earth and burning up our own internal psyches and whatnot, chasing this infinite growth, but actually having a mentality, a growth mentality that actually can rest in the the biosphere that we have, but still produce a lot of really wonderful things. So that term, my friends, I've taken to calling Game B instead of Game A, which is the current system of the world, hyper growth, hyper financialization, all these things.

Peter Wang [00:55:23]:
And so if people are interested in that, they can look for some of my podcasts I've done and interviews and

Omer Khan [00:55:29]:
writings around Game B. Super interesting. So thank you so much, Peter, for joining me. It's been a great conversation. It was great to just unpack the Anaconda story and a very, very unique business and very different to 99% of the types of SaaS, businesses and guests that I have on the show. But it definitely, I think it opened my eyes and hopefully it'll get people listening to this, maybe thinking a little bit differently about things that they could or should be doing with their business. So I appreciate you making the time to do this.

Omer Khan [00:56:05]:
If people want to check out Anaconda, they can go to anaconda.com and if folks want to get in touch with you, what's the best way for them to do that?

Peter Wang [00:56:13]:
I am on bluesky at Wang Social. I was actually angel investor and founder. Well, not founder, but angel investor Blue Sky. I am also on Twitter Wang, but I've been sort of moving to Blue sky as my primary social thing. You can also find me at LinkedIn. My DMs are open there on LinkedIn. And one thing I would say is people can also use Anaconda directly through Excel by typing equals PY in their formula bar and they can now type Python code and that runs on Anaconda backed container in Azure.

Peter Wang [00:56:42]:
So you don't have to install anything. You don't have to go to our webpage. You already have Anaconda if you have Excel.

Omer Khan [00:56:48]:
That's a great integration.

Peter Wang [00:56:50]:
It's fantastic. Yeah. Well, thank you so much for having me. This is a really fun conversation. Thanks for asking me that really beautiful question at the start that no one's ever asked me before. Yeah. Thank you so much for having me. This has been a pleasure.

Omer Khan [00:57:02]:
It was my pleasure. Thank you. And I wish you and the team the best of success.

Peter Wang [00:57:05]:
Thank you so much.

Omer Khan [00:57:06]:
Cheers.

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