Eight Years of Entrepreneurship Notes from a16z's AI Partner

marsbitОпубликовано 2026-04-26Обновлено 2026-04-26

Введение

An early generative AI entrepreneur reflects on his 8-year journey building Rosebud AI, founded in 2018—a time when the field was still called “synthetic media.” Initially experimenting with models like CycleGAN and StyleGAN, he believed AI could make creation as intuitive as playing a game. Over the years, his team launched multiple products, including the viral app TokkingHeads, which gained 2 million users, learning to design around imperfect model outputs to deliver “good enough” user experiences. The evolution from niche synthetic media to general-purpose AI infrastructure—especially after GPT-4’s release—reshaped product possibilities. Code generation matured enough by 2023 to enable text-to-game prototyping. The author emphasizes that the real differentiator now isn’t just model capability but product design, distribution, and business model innovation. Having stepped down as CEO of Rosebud AI, he joins a16z as a partner focused on investing in the frontier model stack—models, infrastructure, and tools. He remains optimistic about AI-driven progress in creative tools, coding, and scientific domains. The piece concludes with a forward-looking note: the next phase of AI will be less about what’s possible and more about how capabilities are productized and scaled in the real world.

Editor's Note: This article is an eight-year retrospective from an early generative AI entrepreneur. In 2018, before GPT emerged, he founded Rosebud AI, aiming to "make creation as easy as playing a game," and successively launched multiple AI creative tools, including TokkingHeads. At a time when model capabilities were still immature, these products amplified the "good enough but usable" experience through process and interaction design, achieving early user growth and product validation.

This journey almost covers the complete evolution cycle of generative AI from "synthetic media" to a general-purpose infrastructure: from experimental explorations with CycleGAN and StyleGAN to GPT-4 pushing the boundaries of code generation and interactive creation. Technological progress continuously rewrites product logic and entrepreneurial pace. The author's path also reflects a clearer structural shift—when models become variables, the real watershed is no longer just the technology itself, but how to build products, distribution, and commercialization around it.

After stepping down as CEO and joining a16z, the author will shift focus to investing in frontier model stacks and related infrastructure. But more important than the individual path is that these eight years of experience point to an emerging trend: the first phase of generative AI (proving what it can do) is ending, and the next, longer cycle of competition will revolve around how capabilities are organized, productized, and ultimately integrated into the real world.

The original text follows:

I have joined a16z as a partner, focusing on investments in infrastructure and AI. At the same time, after eight years at the helm of Rosebud AI, I will be stepping down as CEO.

Below are some reflections on these eight years. I have immense respect for those still building on the front lines. A single model release can obliterate your product roadmap or accelerate it by years. The forms of design, product, and engineering have changed compared to three months ago, let alone eight years ago. The pace of technological advancement makes this era the most exciting time for entrepreneurship, yet also the most challenging.

At a16z, I will focus on the frontier model stack: including the models themselves, as well as the infrastructure and development tools built around them. I am excited by the rapid evolution of model capabilities—more and more progress is being driven by AI itself. I am also optimistic about the breakthroughs AI will bring in mathematics and science. Additionally, having spent the past eight years building AI creative tools, I retain a particular interest in this direction.

Prior to this, I have also participated in some seed-round investments as an angel investor, including @fal, @periodiclabs, @SakanaAILabs, and @ExaAILabs. Moving forward, I look forward to dedicating all my energy to supporting the founders building this technology stack.

2018: Betting on Generative AI Before GPT

Eight years is a very long time for a startup in the generative AI space.

I started in late 2018, almost an "ancient era," when the field was still called "synthetic media." I was tinkering with CycleGAN and StyleGAN, whose generated content was both bizarre and fascinating, convincing me that one day, creation would be as light and free as playing in a game's build mode (the name "rosebud" itself comes from The Sims).

Creation, at its best, should be a form of play. The earliest glimmers of generative AI made me believe that this "play-like creation experience" could expand to more forms of creation. I began to imagine how generative AI would reshape video games (like that CycleGAN video I trained on footage from "Myst" in 2018).

Eight years later, we can now generate videos, games, and even music with a single prompt. That once-imagined future has finally arrived—and this is just the beginning.

Looking back, the reason I formed such a strong conviction so early might be that my life has always been at the intersection of technology and art: a background in mathematics and deep learning PhD on one side, and a passion for dance and music on the other. Generative AI entrepreneurship requires both: the technical background allowed me to see what was coming, and the artistic inclination made me eager to build it.

The entrepreneurial journey is always longer and harder than imagined. Finding something you almost irrationally believe in maximizes your chances of persevering.

2018—2023: Winning Users Over with "Good Enough"

Screenshot of the third iOS app, Tokkingheads. The core of early generative AI was designing simple processes and actively embracing the product's roughness.

Along the way, we released numerous products to hone our intuition for cutting-edge model capabilities and learn to package them into magical experience that masked early flaws. The lesson from that stage: when model output is far from perfect, you can design consumer experiences that allow users to iterate and get feedback quickly. Users are discerning but not fragile—winning them over with "good enough" is sufficient.

By the third mobile app, we had accumulated enough insight for Tokkingheads to achieve viral organic growth, surpassing 2 million users in weeks. The next key lesson followed: as a founder, you must be clear about what product form keeps you motivated long-term. Tokkingheads could have gone the route of a viral smash hit, but I wasn't sure if that was the right soil to develop this creative magic into a more complete product—and that more complete product was what I truly wanted.

So we kept iterating. We worked on AI-generated stock photos, AI art for NFTs (yes... I naively thought artwork quality was key, only to find the real skill was hype and speculation), and AI game asset generation tools. Each product taught me something specific: what users are willing to pay for, and how fast models are improving. Sandwiched between these projects were a global pandemic and the Silicon Valley Bank and First Republic Bank runs—reminders to be grateful. The ability to keep building is itself a privilege.

2023: Code Generation Matures

Code generation finally became good enough, and the timing was ripe to build game tools for non-technical creators. After the release of GPT-4, that future became tangible. In March 2023, I shared a memo with the team and pieced together the initial version of Rosebud's text-to-game feature using the prototype below.

Screenshot of a tweet from March 23, 2023. I used GPT-4 to learn Three.js, combined with Rosebud's generative AI to generate a skybox, demonstrating an early prototype of summoning 3D scenes with text.

Internal memo from the author to the team in early 2023, documenting product judgments after the breakthrough in code generation capabilities. The core judgment of this internal letter was: AI is at a critical window that will define the next few decades, and the next two years will be a phase of highly intense competition—fast-paced, high-stakes, with clear elimination. The company would go all-in on this "sprint," suitable only for those with strong internal drive, willing to endure high pressure and make long-term commitments—because this is not just a job, but a historic opportunity that could change one's career trajectory.

2026 and Beyond: What Can You Build That Labs Won't?

Figure: Demo video—the author builds a 3D city simulation game in the browser via prompts.

Making games requires mobilizing both creative intuition and technical ability. Generative AI is key to turning game creation itself into a form of play—any model progress in images, video, world models, or code is immediately absorbed and transformed. The business model of games is also most likely to remain outside the purview of frontier labs: the core monetization path is still player payments, and building a distribution system on the player side seems like an overly indirect side quest for labs sprinting full speed towards AGI. For founders, choosing what to build is always an ongoing game of finding space outside the lab's critical path.

Rosebud is thriving. We have organically accumulated a large, highly active community of creators. I will miss the casual chats with creators on Discord and the daily user support emails (a user willing to complain truly cares about your product). The next phase focuses on scaling distribution to the player side, making now a good time to hand the baton to the teammates who have been fighting alongside me.

Congratulations to @glazworks on becoming the new CEO of Rosebud! He possesses the rare combination of machine learning talent and product aesthetic.

Martin Casado and the a16z team have been with Rosebud throughout its growth. Martin and I had a key conversation about whether JavaScript was the right tech stack for Rosebud games—Unity or Roblox might be hotter, but JavaScript's code generation was improving much faster due to higher accessibility of training data. This team pursues the truth and is willing to bet on wagers that bring more builders. This is the path to the ideal future: we must build, we must innovate.

I look forward to working with you all from the other side of the table. DMs are always open.

Связанные с этим вопросы

QWhat was the author's main focus when founding Rosebud AI in 2018, and what technological trends did they observe?

AThe author founded Rosebud AI in 2018 with the goal of making creation as easy as playing a game. They observed early generative AI technologies like CycleGAN and StyleGAN, which produced intriguing but imperfect results, and believed these were the precursors to a future where AI could democratize creative expression across various media.

QHow did the author's company, Rosebud AI, approach product development when model outputs were still imperfect?

ARosebud AI designed consumer-friendly experiences that allowed for rapid iteration and feedback to compensate for the粗糙 (rough) outputs of early models. They embraced a 'good enough to be useful' philosophy, focusing on intuitive workflows that masked the limitations of the technology, which helped them achieve viral growth with products like TokkingHeads.

QWhat significant shift in AI capabilities occurred around 2023, and how did it impact Rosebud AI's product strategy?

AThe release of GPT-4 marked a maturity in code generation capabilities. This breakthrough enabled Rosebud AI to develop tools that allowed non-technical creators to build games through text prompts, fundamentally shifting their product strategy towards leveraging AI for interactive and game creation.

QWhy does the author believe that gaming is a promising area for AI-driven innovation, despite the focus of major AI labs on AGI?

AThe author argues that gaming requires a blend of creative and technical skills, making it an ideal domain for generative AI. Additionally, the business model of gaming (player monetization) and the need for player-side distribution are often outside the core focus of major AI labs racing towards AGI, creating opportunities for startups to innovate in this space.

QWhat is the author's new role at a16z, and what investment areas are they particularly excited about?

AThe author has joined a16z as a partner focusing on infrastructure and AI investments. They are particularly excited about the frontier model stack, which includes the models themselves and the surrounding infrastructure and tools. They also have a continued interest in AI for creativity, given their background, and are optimistic about AI-driven breakthroughs in math and science.

Похожее

Trend in US Stocks: Jensen Huang's One Sentence Triggers $47 Billion Surge; Google Raises Funds for First Time in 20 Years

U.S. markets reached record highs on June 2nd, but the real story was the intensifying AI arms race, now pivoting from chip supremacy to a scramble for capital to fund compute infrastructure. The day highlighted two stark realities: Nvidia CEO Jensen Huang's endorsement of Marvell Technology as the "next trillion-dollar company" at Computex fueled a historic 32.5% surge, adding $47 billion to its value. Conversely, Alphabet announced its first equity raise in two decades—an $80 billion plan—signaling that even its massive cash flow can't keep pace with soaring AI capital expenditures, forecast to exceed $180 billion in 2026. While the S&P 500 closed above 7,600 for the first time, led by tech and semiconductor stocks (SOXX +5.79%), sector performance was mixed. Alphabet's 4% drop dragged down communications services, illustrating market anxiety over the unsustainable cost of the AI buildout. Hewlett Packard Enterprise soared 25% on stellar earnings, proving AI's benefits extend beyond chip designers to infrastructure providers. Beneath the index highs, concerns linger over extreme concentration in a few AI stocks and geopolitical tensions. The focus now shifts to upcoming economic data, particularly Friday's nonfarm payrolls, which could challenge the market's current "ignore rates, chase AI" mentality.

marsbit4 мин. назад

Trend in US Stocks: Jensen Huang's One Sentence Triggers $47 Billion Surge; Google Raises Funds for First Time in 20 Years

marsbit4 мин. назад

Can DeepSeek Save China One Trillion Dollars?

"DeepSeek and the $1 Trillion Infrastructure Question" The article examines whether DeepSeek's AI optimization breakthroughs could potentially save China $1 trillion in future AI infrastructure costs. The analysis begins with Nvidia's upcoming Vera Rubin AI platform, costing ~$7.8 million, where memory (HBM4/LPDDR5X) constitutes $2 million—a 435% cost increase in one year, highlighting how AI hardware spending is shifting toward expensive memory components. DeepSeek's approach works in the opposite direction. Through three key technical innovations showcased in DeepSeek V4, the company dramatically improves hardware efficiency: 1. **Memory Compression (MLA)**: Re-engineers the attention mechanism to compress long-context memory (KV Cache) by over 90%, drastically reducing expensive HBM usage. 2. **Selective Activation (MoE)**: Employs Mixture-of-Experts architecture where only a small fraction of parameters (e.g., 49B out of 1.6T in V4-Pro) are activated per token, allowing most parameters to reside in cheaper memory/SSD. 3. **Computation Caching**: Reuses previously computed results via cache hits, replacing expensive GPU computations with cheap memory reads. Combined, these optimizations allow the same hardware to produce approximately 4x more tokens, effectively reducing required hardware investment by 75%. DeepSeek's pricing reflects this: a 10-billion token workload costs ~$522 monthly versus ~$9,000-$10,000 for competitors. The $1 trillion savings projection stems from McKinsey's estimate that global AI infrastructure will require ~$5.2 trillion investment by 2030. As China's daily token consumption grows toward quadrillions, even marginal efficiency gains scale massively. With a conservative 4x throughput improvement, China could avoid building tens of thousands of AI data centers equivalent to ~7 trillion RMB ($1 trillion) in saved investment. Critically, this strategy shifts dependency from scarce, expensive GPU/HBM—where China lags—toward more accessible storage, caching, and systems engineering where domestic suppliers like CXMT are gaining strength. Rather than "replacing Nvidia," DeepSeek rebalances AI's value chain away from monolithic hardware dependency. Ultimately, DeepSeek's technical breakthroughs could lower the barrier to AI adoption across Chinese industries by making advanced capabilities affordable at scale—transforming who can access next-generation AI.

marsbit47 мин. назад

Can DeepSeek Save China One Trillion Dollars?

marsbit47 мин. назад

Overturning the Mainstream Approach to Hallucinations: Metacognition is the New Solution for Large Models to Break the Hallucination Barrier

This paper, "Hallucinations Undermine Trust; Metacognition is a Way Forward," proposes a paradigm shift in combating AI hallucination. It argues that the current mainstream approaches—striving for omniscience by scaling data/models or having AI abstain from uncertain answers—are fundamentally flawed. The former has inevitable knowledge gaps, while the latter imposes a crippling "utility tax," requiring the rejection of many correct answers to achieve high accuracy, due to models' poor "discrimination" (the ability to distinguish correct from incorrect answers internally). The core contribution is redefining hallucination not as "being wrong," but as "expressing false information with unwarranted certainty." The proposed solution is **Faithful Uncertainty** or **Metacognition**: enabling AI to accurately perceive its internal uncertainty and honestly express it in its language (e.g., using hedging phrases when unsure). This creates a more reliable assistant that provides useful information while signaling its confidence, minimizing harm from errors. The paper emphasizes that metacognition is critical for the era of AI Agents. Without it, Agents cannot intelligently decide when to use tools like search engines, leading to inefficiency and misuse. Key implementation challenges are highlighted: the "bootstrapping paradox" of training with static uncertainty data, the "alignment distortion signal" where human preference training suppresses internal uncertainty cues, and the difficulty of causally evaluating true metacognition vs. its superficial imitation. The paper concludes that the goal should not be an infallible AI, but one that is honest about the limits of its knowledge, thereby building user trust through transparent communication of its certainty.

marsbit51 мин. назад

Overturning the Mainstream Approach to Hallucinations: Metacognition is the New Solution for Large Models to Break the Hallucination Barrier

marsbit51 мин. назад

Hedge by Buying Gold and Oil, Chase Soaring Returns with AI. ‘Dated’ Bitcoin Enters a Bear Market

Bitcoin has recently declined, hitting a two-month low near $66,123, while Ethereum fell to a three-month low around $1,837. Analysts suggest the drop is not merely due to factors like ETF outflows or MicroStrategy's selling but reflects a deeper issue: Bitcoin is losing a broader asset competition. In a near-zero interest rate environment, Bitcoin previously thrived as an outlet for investor dissatisfaction with inflation and limited options. However, the market landscape has shifted. Bitcoin now occupies an "awkward middle ground," facing competition on three fronts. For inflation hedging, investors prefer gold, energy stocks, and commodity producers—assets with tangible backing and clearer pricing power. For growth exposure, AI-related companies with actual revenues and profits are more attractive. Even within crypto, investors can choose stablecoins, exchanges, or infrastructure firms tied directly to adoption, offering clearer business models and leverage. Thus, Bitcoin is no longer the top choice for hedging, growth, or crypto exposure. This shift is evident in market reactions: despite recent warnings about persistent inflation from a Fed official, Bitcoin did not rally as it might have in the past. Instead, capital flowed to assets with direct commodity or energy exposure. The recent ETF outflows and MicroStrategy sales are symptoms, not causes, of this new reality. Investors are becoming more selective, demanding clearer value propositions beyond mere scarcity. The emerging bear case for Bitcoin is not about it being a bubble or failed technology, but that scarcity alone is no longer sufficient.

华尔街日报54 мин. назад

Hedge by Buying Gold and Oil, Chase Soaring Returns with AI. ‘Dated’ Bitcoin Enters a Bear Market

华尔街日报54 мин. назад

Торговля

Спот
Фьючерсы

Популярные статьи

Как купить S

Добро пожаловать на HTX.com! Мы сделали приобретение Sonic (S) простым и удобным. Следуйте нашему пошаговому руководству и отправляйтесь в свое крипто-путешествие.Шаг 1: Создайте аккаунт на HTXИспользуйте свой адрес электронной почты или номер телефона, чтобы зарегистрироваться и бесплатно создать аккаунт на HTX. Пройдите удобную регистрацию и откройте для себя весь функционал.Создать аккаунтШаг 2: Перейдите в Купить криптовалюту и выберите свой способ оплатыКредитная/Дебетовая Карта: Используйте свою карту Visa или Mastercard для мгновенной покупки Sonic (S).Баланс: Используйте средства с баланса вашего аккаунта HTX для простой торговли.Третьи Лица: Мы добавили популярные способы оплаты, такие как Google Pay и Apple Pay, для повышения удобства.P2P: Торгуйте напрямую с другими пользователями на HTX.Внебиржевая Торговля (OTC): Мы предлагаем индивидуальные услуги и конкурентоспособные обменные курсы для трейдеров.Шаг 3: Хранение Sonic (S)После приобретения вами Sonic (S) храните их в своем аккаунте на HTX. В качестве альтернативы вы можете отправить их куда-либо с помощью перевода в блокчейне или использовать для торговли с другими криптовалютами.Шаг 4: Торговля Sonic (S)С легкостью торгуйте Sonic (S) на спотовом рынке HTX. Просто зайдите в свой аккаунт, выберите торговую пару, совершайте сделки и следите за ними в режиме реального времени. Мы предлагаем удобный интерфейс как для начинающих, так и для опытных трейдеров.

1.4k просмотров всегоОпубликовано 2025.01.15Обновлено 2026.06.02

Как купить S

Sonic: Обновления под руководством Андре Кронье – новая звезда Layer-1 на фоне спада рынка

Он решает проблемы масштабируемости, совместимости между блокчейнами и стимулов для разработчиков с помощью технологических инноваций.

2.3k просмотров всегоОпубликовано 2025.04.09Обновлено 2025.04.09

Sonic: Обновления под руководством Андре Кронье – новая звезда Layer-1 на фоне спада рынка

HTX Learn: Пройдите обучение по "Sonic" и разделите 1000 USDT

HTX Learn — ваш проводник в мир перспективных проектов, и мы запускаем специальное мероприятие "Учитесь и Зарабатывайте", посвящённое этим проектам. Наше новое направление .

1.8k просмотров всегоОпубликовано 2025.04.10Обновлено 2025.04.10

HTX Learn: Пройдите обучение по "Sonic" и разделите 1000 USDT

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 S (S) представлены ниже.

活动图片