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The New Way To Build A Startup

By Y Combinator

Summary

Topics Covered

  • AI Enables 20x Companies
  • Compound Startups Evolve with AI
  • Atlas Multiplies Engineer Output
  • AI Teammate Services Fortune 500s
  • AI Source of Truth Scales Revenue

Full Transcript

If you haven't tried Claude Code in the last month, it's time to give it another shot. And if you have, you know what I'm

shot. And if you have, you know what I'm talking about. It feels like AGI is

talking about. It feels like AGI is here. One of Anthropic's own engineers

here. One of Anthropic's own engineers writes, "Claude wrote Claude Co-work. Us

humans meet in person to discuss foundational architecture and product decisions. But all of us devs manage

decisions. But all of us devs manage anywhere between three and eight clawed instances, implementing features, fixing bugs, or researching potential

solutions. Think about what that means.

solutions. Think about what that means.

The team developing one of the most sophisticated AI products in the world, something many of you probably use every day, is using this AI internally to

improve their product. I think this points to a fundamental shift in how startups operate. Right now, the best

startups operate. Right now, the best teams aren't automating one or two internal functions. They're automating

internal functions. They're automating all of them. Often they're tiny teams able to beat huge incumbents thanks to internal automation. Their leanness is

internal automation. Their leanness is their superpower. I've been calling

their superpower. I've been calling these startups 20x companies.

Several years ago, my friend Parker Conrad, founder of Ripling and Zenits, coined the term compound startup to describe companies that build multiple

integrated products in parallel rather than focusing narrowly on one thing.

>> The theory of like the compound software business is that there's this island of product market fit that's kind of over the edge of the horizon line that's sort

of harder to get to. But if you can build, you know, multiple parallel applications at once, you can get there and and it actually ends up being a much

more powerful type of product market fit that's much harder to displace at that point.

>> The 20X company could be an evolution of Parker's idea, but applied to internal automation. Instead of just narrowly

automation. Instead of just narrowly automating a few things like writing code or handling customer support, 20X companies build automations across all

internal features, code, support, marketing, sales, hiring, QA, and more.

This makes each of their employees orders of magnitude more powerful than they would be otherwise. It also allows them to postpone hiring additional sales and ops staff for much longer, keeping

payroll down and culture from drifting.

The phrase 20x company was actually coined by the founders of Giga ML, which builds voice-based customer service agents for enterprise to describe how

they managed to close Door Dash as a customer going up against incumbents that were literally 20x as large. When

we got Doash as a customer, we were approximately like four to five engineers going against players who had like 100x engineers. So we kind of like coined the term like hey we are a 20x company because we are able to beat

these much bigger players who are like 20x us by having a better product and better numbers.

>> Giga was able to close Door Dash and several other Fortune 500 companies as customers because of a powerful internal agent they call Atlas. So Atlas can

basically do anything within the product which you want to do. So it can use browsers, it can edit the policies, it can write code, it can do anything within the product.

>> Atlas dramatically expands the range of what each engineer can take on.

>> So let's say before Atlas, every engineer can probably work on four to five problems at once because they are bottlenecked by all the boilerplate stuff they have to do for the customers, right? Customers have integrations, they

right? Customers have integrations, they would have to probably work on that. Now

with AFD taking care of all the boilerplate stuff, each engineer scope is basically doubled or tripled because they don't need to work on the boiler plate code.

>> But Atlas doesn't just accelerate Giga's engineers. It also acts as a full-time

engineers. It also acts as a full-time AI employee that works in tandem with a human FTE to service dozens of accounts.

>> Right now, we have only a single human FTE within the company. as hard as it's to believe because we have companies like Door Dash using us. We are in pilots with multiple Fortune 500s, 10

plus Fortune 500s where each of these companies probably have volumes over like 500,000 or a million calls a day.

It's only been possible because like we have Atlas and this person can primarily focus on just the customer relationships, the ask by the customers, taking customer requests and turning them into feature requests and

everything.

>> Building an AI teammate is one approach.

Another is to build an AI integrated source of truth that gives employees instant context across your entire system. Legion Health, which is building

system. Legion Health, which is building an AI native psychiatry network, is one example of how to do this. Legion built

a custom internal interface for their care operations team that lets them pull patient history, scheduling availability, insurance codes, and a lot more. What we're showing you right now

more. What we're showing you right now is an interface that a vast majority of our care operations team uses in their

day-to-day work for anything that actually has not been yet automated. And

this includes everything from, as Arthur's kind of showing on his screen, digging into a particular patient or many patients backgrounds, trying to understand where they're at in their journey, if they need a new appointment

to be rescheduled, if they're having a prescription issue, if they've sent us a message that in traditional healthcare might have otherwise gotten lost in the sea of different communications that go

back and forth between so many different people. All of that is at a fingertips

people. All of that is at a fingertips reach for every single member of our KO ops.

>> This single source of truth interface has let Legion keep its ops headcount flat even as it's dramatically scaled revenue.

>> So we've grown 4x in the past year, but we haven't hired uh a single net new person. We've been able to 4x the number

person. We've been able to 4x the number of patients. We're seeing thousands of

of patients. We're seeing thousands of patients a month. We have dozens of providers, but we have one clinical lead. We have one patient support person

lead. We have one patient support person and we have one billing person. And in a typical healthcare company, those are all departments. You know, those are

all departments. You know, those are call centers. Those are groups of people

call centers. Those are groups of people sitting around desks doing a ton of things manually. A third approach is

things manually. A third approach is actually build custom agents for each employee depending on their workflow and preferences. Phase shift, which is

preferences. Phase shift, which is building agents to automate accounts receivable, took this approach.

>> So phase shift right now is a 12person team and we're going up against companies that have been around since 2006 that have hundreds of employees.

The key to us as a 12 person team moving so fast is we bring AI into every process that is manual and try to automate as much as possible with AI agents.

>> One way phase shift does this is by literally asking its employees to document the manual tasks they do and then building custom agents for them. So

what we do is essentially say what do you spend your time doing throughout the day and we make them document that and then we build quick AI agents >> and this culture of relentless

automation has let phase shift delay hiring for entire functions.

>> We've actually avoided hiring a design person at the company so far to date we're about a 12 person company by just leveraging magic patterns and our engineering team uses that to build all front-end designs.

>> These approaches aren't mutually exclusive. You can build AI teammates, a

exclusive. You can build AI teammates, a unified source of truth, and custom agents for each member of your team. The

companies that do this are staying lean and setting record high growth rates.

This is the new way to build, and the startups that figure it out first are going to win.

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