YC Partner Reveals: Building an AI-Native Company from Scratch

marsbitОпубликовано 2026-05-15Обновлено 2026-05-15

Введение

"YC Partner Reveals: Building an AI-Native Company from Scratch" YC partner Diana Hu argues that true AI-native companies operate 1000x faster than incumbents, not by using AI for mere efficiency, but by making it the company's core operating system. This requires a fundamental shift: companies must become "queryable" to AI, with all workflows and communications generating data for AI to learn from, creating a "closed-loop" system for continuous optimization. For example, an AI agent with access to tickets, code, meetings, and customer feedback can analyze past performance and autonomously plan future engineering cycles, dramatically increasing output. In product development, the new paradigm is the "AI software factory": humans write specifications and tests, while AI agents generate the code. This transparent, data-driven model renders traditional middle management obsolete. Future AI-native companies will consist of three roles: Independent Contributors (who build/operate with AI), Directly Responsible Individuals (who own outcomes), and the AI Founder who leads by example. The critical shift is maximizing token usage over headcount. A small, AI-augmented team can outperform large traditional teams. Startups have a key advantage: they can design their entire culture and systems around AI from day one, unburdened by legacy processes. The core takeaway: Founders must personally experience AI's transformative power. The future belongs to those who embed AI into their com...

Source: Y Combinator

In Silicon Valley, Y Combinator (YC) is widely recognized as the "philosopher's stone" for global startups.

As the world's premier startup incubator, since its founding in 2005, YC has incubated over 5,600 companies, giving birth to tech giants such as Airbnb, Stripe, Dropbox, Reddit, and Coinbase. Even OpenAI's CEO Sam Altman once served as YC's President.

It can be said that YC's perspective represents the cutting-edge trends in tech entrepreneurship. Recently, YC partner Diana Hu proposed a striking assertion in the podcast "How To Build A Company With AI From The Ground Up": The operating speed of an AI-native startup could be up to 1000 times faster than existing industry giants.

TinTinLand has compiled the key insights from the original video. Let's explore, from YC's perspective, how a truly AI-native company should operate.

Not "Using AI," but "Running on AI"

Currently, most discussions about AI still revolve around "increasing efficiency," such as "AI can make engineers more efficient" or "we need to add a Copilot to our existing workflow." This mindset is fundamentally misguided.

The true transformation is not about productivity gains, but the emergence of entirely new capabilities.

A true AI-native company should not merely treat AI as a tool, but rather see it as the company's operating system (OS). In this model, every workflow, every decision, and every process should be handled through an intelligent layer that continuously learns and improves.

With the support of AI tools, a single capable individual can now build features that previously required an entire team, or even things that were previously impossible.

Making the Entire Company AI-Queryable

Building a Closed-Loop System

Diana introduced the "Closed Loop" concept from control systems to describe the ideal AI company.

  • Open Loop System: This is how traditional companies operate. Management makes decisions, employees execute, but results often cannot be measured and fed back systematically, with significant information loss throughout the process.

  • Closed Loop System: The system continuously monitors outputs, captures information, and feeds it back to the AI, thereby constantly optimizing processes over time.

The Prerequisite for a Closed Loop: Queryability

To achieve such a closed loop, it is necessary to make the company completely transparent and queryable to AI.

This means that all actions within the company must produce "digital artifacts" that AI can learn from:

👉 Use AI assistants to record meetings throughout, reduce the use of private messages and emails, embed AI agents in all communication channels, and build a company-wide real-time dashboard covering revenue, sales, engineering, hiring, and operations.

Specific Case: Revolutionizing Engineering Management

Diana gave a concrete example from engineering management: Suppose you have an AI Agent with access to Linear tickets, Slack channels, GitHub repositories, Notion docs, customer feedback emails, and daily standup meeting recordings.

Then, this Agent can genuinely analyze what was actually delivered in the last sprint and how well it matched customer needs—rather than relying on the distorted information from multiple layers of reporting.

Building on this, the Agent can go a step further: automatically propose engineering plans for the next sprint, making them more predictable and accurate. Diana mentioned that she has seen teams adopting this approach halve their engineering timelines while accomplishing nearly ten times more work.

The core principle behind this is: To gain the full capabilities of AI, you need to provide the model with the same level of context as your employees.

Software Factory: Humans Define Specs, AI Writes Code

At the product development level, a new paradigm is emerging—the AI Software Factory. This is an evolution of Test-Driven Development (TDD):

  • Humans Define Success: Humans write requirement specifications (Specs) and test cases defining success criteria.

  • AI Handles Implementation: AI Agents generate the code implementation and iterate until all tests pass.

  • Shift in Human Role: Humans define what to build and judge the output; writing the code itself is the Agent's job.

Diana noted that some leading companies have already achieved codebases with no handwritten code at all, only Specs and test suites.

This is also how the "10x engineer" envisioned by software engineer Steve Yegge can be realized: surround a single engineer with a systematic cluster of Agents, enabling them to build things that would have been impossible to achieve alone before.

Flat 2.0: A New Organizational Structure

When a company becomes queryable and information flow becomes transparent and driven by an AI layer, the traditional pyramid management structure becomes obsolete.

Traditionally, we needed middle managers to convey information up and down the organization. But in the new world, the AI intelligent layer takes on this role. If your company is queryable and highly digitized, you should need almost no "human middleware."

Every layer of human routing you eliminate is a direct speed gain.

The Three Types of Employees in Future Companies

Diana referenced a point by Block (formerly Square) founder Jack Dorsey: If you keep your old organizational structure and management practices, you're completely missing out on this wave.

Future AI-native companies will consist of the following three types of employees:

  • Type 1: Independent Contributors (ICs). These are the people directly creating and operating things. In an AI-native company, this isn't limited to engineers—operations, support, sales—everyone brings a working prototype to meetings, not just a PowerPoint.

  • Type 2: Directly Responsible Individuals (DRIs), focusing on strategy and customer outcomes. This isn't a manager in the traditional sense, but someone with clear accountability for a specific result.

  • Type 3: AI Founders, at the forefront, leading by example to show the team the capability gains brought by AI, not delegating AI strategy to others.

Key Shift: Maximizing Token Usage

👉 The most critical shift for an AI-native company is not maximizing headcount, but maximizing Token usage.

  • Leaner Teams: A single employee working with AI tools can produce output equivalent to what previously required a large engineering team.

  • Restructured Budget: Founders should be willing to pay very high API bills. Because these bills replace extremely expensive and bloated personnel costs.

In this model, startups can generate enormous impact with a very small scale.

The "Dimensionality Reduction" Advantage for Startups

Why is now the best time for startups to surpass giants?

Diana pointed out that large incumbent companies face serious "path dependency." They must maintain existing businesses while undoing years of accumulated standard operating procedures (SOPs) and core assumptions. For them, changing core processes is extremely risky.

In contrast, AI-native startups hold a massive advantage:

You can design the entire system, workflow, and company culture around AI from day one. The result is that AI-native startups can operate potentially 1000 times faster than existing industry giants.

Conclusion: The Non-Outsourcable Belief

Finally, Diana offered a crucial admonition: Do not outsource your belief in the power of AI tools; you must experience it firsthand yourself.

You must personally sit at the computer and work with programming Agents until you witness with your own eyes how they shatter your perception of "what is possible."

For early-stage founders, this is the best of times: no legacy systems to bind you, no thousand-person team to retrain, no entrenched organizational structure. You have the freedom to build the company right from the start.

The future winners will be those who dare to embed AI into the soul of their company from day one.

Связанные с этим вопросы

QWhat is the core difference between an AI-native company and a traditional company using AI tools, according to the article?

AThe core difference is that a true AI-native company treats AI as the operating system (OS) of the entire company, integrating it into every workflow, decision, and process as a continuous learning intelligent layer. In contrast, traditional companies often treat AI merely as a tool for improving efficiency ('giving our process a Copilot').

QWhat does Diana Hu mean by a 'Closed Loop' system in an AI-native company?

AA 'Closed Loop' system is one that continuously monitors outputs, captures information, and feeds it back to the AI, allowing the processes to be optimized over time. This contrasts with an 'Open Loop' system typical of traditional companies, where decisions are made and executed but results are not systematically measured and fed back, leading to significant information loss.

QWhat key principle must be followed to achieve a full AI-powered closed-loop system within a company?

ATo achieve a full AI-powered closed-loop system, the company must be made completely transparent and queryable to the AI. This means all internal actions must produce 'digital artifacts' for the AI to learn from, and the AI must be provided with the same level of contextual information as human employees.

QHow does the article describe the concept of an 'AI Software Factory' and the changing role of engineers?

AThe 'AI Software Factory' is an evolution of Test-Driven Development (TDD). In this paradigm, humans define the specifications (Specs) and write test cases to define success criteria. AI Agents then generate the code to meet these specs and iterate until all tests pass. The engineer's role shifts from writing code to defining what to build and judging the output; the act of coding itself becomes the work of the AI Agent.

QAccording to the article, what is the fundamental budget and resource shift for an AI-native startup compared to a traditional one?

AThe fundamental shift is from maximizing headcount to maximizing token usage. Founders should be willing to pay very high API bills, as these costs replace the far more expensive and cumbersome costs of large human teams. A lean team empowered by AI tools can achieve output equivalent to a much larger traditional engineering team.

Похожее

The Value Distribution of Stablecoins

**Summary: The Value Distribution of Stablecoins** The article argues that stablecoins are evolving from mere trading tools into broader channels for dollar access. It divides the stablecoin ecosystem into four layers to analyze how value is distributed: 1. **Issuance Layer:** Mints stablecoins, holds reserve assets, and captures the spread between reserve yield and user costs (e.g., Tether, Circle). This layer currently earns the largest profit margin. 2. **Infrastructure Layer:** Connects stablecoins to the traditional financial system, handling fiat on/off-ramps, banking integration, compliance (KYC/AML), and asset management (e.g., Bridge, BVNK). This is the "unglamorous" but critical work, building the essential bridges between crypto and real-world finance. 3. **Acquiring/Distribution Layer:** Integrates stablecoins into merchant systems, manages payment flows, and provides enterprise financial software (e.g., Stripe, Coinbase). They act as the access point for businesses. 4. **Application Layer:** The end-users and businesses that ultimately use stablecoins for payments, settlements, or as a store of value. They benefit from convenience but have little pricing power. The core thesis is that while the issuance layer currently dominates profits, the often-overlooked **infrastructure layer holds significant long-term potential**. The real challenge and barrier to mass adoption is not the on-chain transfer of stablecoins (which is simple), but the complex "last mile" integration into existing business workflows, banking systems, and regulatory frameworks across different countries. Companies in this layer are currently in a "land grab" phase, investing heavily to build networks, secure bank partnerships, and establish compliance pathways. While their position is currently pressured by the profitable issuers above and distribution platforms below, the article suggests that if stablecoins become a default financial rail for businesses, the infrastructure providers who have done the hard work of integration will ultimately gain strong pricing power and become entrenched, essential players.

marsbit4 ч. назад

The Value Distribution of Stablecoins

marsbit4 ч. назад

The Value Distribution of Stablecoins

The Value Distribution of Stablecoins The article argues that stablecoins are evolving from a mere trading tool into a broad "dollar channel." It analyzes the industry's value chain through four layers: 1. **Issuance Layer (e.g., Tether, Circle):** The top layer that mints stablecoins, holds reserve assets, and captures the thickest interest rate spread. 2. **Infrastructure Layer (e.g., Bridge, BVNK):** Connects stablecoins to the traditional financial system, handling critical but complex "dirty work" like fiat on/off-ramps, banking integration, compliance (KYC/AML), and cross-border settlement. 3. **Acquiring/Distribution Layer (e.g., Stripe, Coinbase):** Embeds stablecoins into merchant systems, manages payment flows, and integrates with enterprise software. 4. **Application Layer:** End-users and businesses that ultimately use stablecoins for payments, settlement, or storing value. The author posits that while the issuance layer currently captures the most profit, the most overlooked and potentially critical layer is infrastructure. The core challenge for stablecoin adoption isn't the on-chain transfer (which is simple), but bridging the gap between blockchain and the real-world financial system. This involves solving practical problems for businesses: fiat conversion, reconciliation, tax handling, and user onboarding. Infrastructure companies are currently in a difficult "land-grab" phase—building networks, securing banking relationships, and achieving compliance country-by-country. They face pressure from both the profitable issuance layer above and distribution platforms below. However, the author suggests this layer is building a crucial moat. Once stablecoins become a default business rail, the infrastructure players who have done the hard work of integration may gain significant, durable value and pricing power.

链捕手4 ч. назад

The Value Distribution of Stablecoins

链捕手4 ч. назад

How to Do Research Well: Deliberately Practice the Real Skills That Matter

No one truly teaches you how to do research. You're often given a desk, a pre-selected problem, and vague instructions to "create something new." Consequently, many people reverse-engineer the job based on visible outputs—papers, posts, announcements—learning only how to *appear* like a researcher rather than how to *become* one. True research capability is built from stacking small, trainable skills, nearly all of which can be developed through deliberate practice. **Pick Your Own Problem:** Most researchers absorb problems from advisors or trends, lacking the underlying reasoning. Choosing a problem you genuinely care about, as John Schulman advises, leads to original work. Develop "taste" like a muscle: predict experiment outcomes, guess paper results from methods, and track which findings remain important over time. **Upgrade Your Inputs:** Relying on shared reading lists (arXiv hot lists, filtered group chats) leads to unoriginal conclusions. Undervalued old literature often holds crucial insights (e.g., MoE, LSTM, backpropagation). Richard Sutton's "The Bitter Lesson" or Claude Shannon's 1952 talk on creative thinking are more predictive than lengthy modern surveys. Breadth matters as much as depth: draw from neuroscience, mechanism design, hardware knowledge, and honest statistics. Read papers directly, especially appendices and limitations sections. **Write Everything Down:** As Paul Graham noted, writing exposes flaws in seemingly mature ideas. Writing is the cheapest defense against self-deception. Following Feynman's principle, Darwin programmatically wrote down facts contradicting his theory to combat memory bias. Maintain a detailed log of hypotheses, setups, predictions, results, and updated understandings. Reviewing past logs fosters essential humility.

marsbit6 ч. назад

How to Do Research Well: Deliberately Practice the Real Skills That Matter

marsbit6 ч. назад

Торговля

Спот
Фьючерсы

Популярные статьи

Неделя обучения по популярным токенам (2): 2026 может стать годом приложений реального времени, сектор AI продолжает оставаться в тренде

2025 год — год институциональных инвесторов, в будущем он будет доминировать в приложениях реального времени.

1.8k просмотров всегоОпубликовано 2025.12.16Обновлено 2025.12.16

Неделя обучения по популярным токенам (2): 2026 может стать годом приложений реального времени, сектор AI продолжает оставаться в тренде

Обсуждения

Добро пожаловать в Сообщество HTX. Здесь вы сможете быть в курсе последних новостей о развитии платформы и получить доступ к профессиональной аналитической информации о рынке. Мнения пользователей о цене на AI (AI) представлены ниже.

活动图片