Gensyn AI: Don't Let AI Repeat the Mistakes of the Internet

marsbitPublished on 2026-05-10Last updated on 2026-05-10

Abstract

In recent months, the rapid growth of the AI industry has attracted significant talent from the crypto sector. A persistent question among researchers intersecting both fields is whether blockchain can become a foundational part of AI infrastructure. While many previous AI and Crypto projects focused on application layers (like AI Agents, on-chain reasoning, data markets, and compute rentals), few achieved viable commercial models. Gensyn differentiates itself by targeting the most critical and expensive layer of AI: model training. Gensyn aims to organize globally distributed GPU resources into an open AI training network. Developers can submit training tasks, nodes provide computational power, and the network verifies results while distributing incentives. The core issue addressed is not decentralization for its own sake, but the increasing centralization of compute power among tech giants. In the era of large models, access to GPUs (like the H100) has become a decisive bottleneck, dictating the pace of AI development. Major AI companies are heavily dependent on large cloud providers for compute resources. Gensyn's approach is significant for several reasons: 1) It operates at the core infrastructure layer (model training), the most resource-intensive and technically demanding part of the AI value chain. 2) It proposes a more open, collaborative model for compute, potentially increasing resource utilization by dynamically pooling idle GPUs, similar to early cloud computin...

Over the past few months, due to the vigorous development of the entire AI industry, a large number of crypto industry talents have shifted to AI. Researchers involved in both fields are also exploring a proposition that no one has yet successfully realized:

Can blockchain become a part of AI infrastructure?

In the past two years, the market has seen many versions of the integration of AI and Crypto: AI Agents, on-chain inference, data markets, compute power leasing. The hype is high, but there aren't many projects that have truly formed a closed business loop. The reason is simple: most projects remain at the "AI application layer." But Gensyn is targeting the most core and expensive layer of the AI industry:

"Model Training"

How to achieve this? By organizing globally distributed GPU resources into an open AI training network. Developers can submit training tasks, nodes provide computing power, the network is responsible for verifying the training results and completing incentive distribution. What is truly worth paying attention to behind this is not "decentralization" itself, but a problem that is becoming increasingly impossible to ignore in the AI industry:

Computing resources have rapidly concentrated in the hands of a few giants. Large companies are already competing for chips several years in advance. Over the past year, a clear trend has gradually formed in the AI industry: whoever controls GPUs controls the speed of AI development, especially in the era of large models, where training resources have become a core barrier to entry.

H100 supply is tight, cloud service prices continue to rise. The first step for major domestic companies to develop AI is not to expand teams, but to lock in computing resources. This is also why behind OpenAI, Anthropic, and xAI, there are large cloud vendors. Because behind model competition, it has essentially become infrastructure competition. And the significance of Gensyn lies in:

Providing a new way to organize resources for AI training.

1. It Targets the Most Core Infrastructure Layer of the AI Industry

Many AI+Crypto projects lean more towards application-layer narratives. To put it bluntly, everyone is just building apps. But Gensyn directly enters the training phase. This is the part of the entire AI value chain with the highest technical barriers and the greatest resource consumption, and it is currently the layer most prone to forming platform barriers. Because once the training network reaches scale, it is not just a compute marketplace; it may become an important entry point for future AI development. This is also why the market continues to pay attention to Gensyn, and why A16Z has made two major investments leading the rounds.

2. It Provides a More Open Model of Compute Collaboration

Traditional AI training heavily relies on centralized cloud platforms. The advantage is stability, but costs are also continuously rising. Especially for small and medium-sized AI teams, training resources have gradually become a limiting factor for innovation. The idea Gensyn provides is: bring more idle GPUs into the network, allowing training resources to be dynamically scheduled, thereby improving overall compute utilization. Behind this logic is somewhat similar to when cloud computing first emerged: not reinventing computing, but reorganizing computing resources. If this model can be consistently proven, it will bring not only cost optimization but also potentially improve the resource efficiency of the entire AI industry.

3. Technical Barriers Are Its Important Moat

The truly difficult part of a training network is never "connecting GPUs," but rather: how to verify training results, how to ensure nodes honestly execute tasks, how to maintain training reliability in a distributed environment. What Gensyn has been working on is precisely this part, including mechanisms like probabilistic verification, task distribution models, node coordination systems, etc. These things might not be as "eye-catching" as Agent narratives, but they determine whether the network is truly usable. To some extent, Gensyn is more like a deep-tech infrastructure company. This is also its biggest difference from many projects in the same track.

4. It Has Formed a Closed Business Loop

One of the biggest controversies in the Crypto industry in the past has been: many projects have narratives but lack real demand. However, AI training is different. This is a proven, fast-growing real market. Global AI training demand continues to expand, the GPU resource gap persists in the long term, and Gensyn is targeting an industrial chain segment where clear demand already exists. In other words, it's not "on-chain for the sake of being on-chain," but because the AI industry itself needs a more flexible, more open resource scheduling system. This is also why more and more capital is starting to focus on the AI Infra direction. Because compared to short-cycle applications, infrastructure, once it forms network effects, often has a longer lifecycle.

Finally, a very interesting change is taking place. In the past, people always thought: Crypto is a financial system, AI is a technical system.

But now, the boundary between the two is becoming increasingly blurred. AI needs resource coordination, incentive mechanisms, and global collaboration. And these are precisely the areas where Crypto excels the most. It's about making training capability no longer belong only to a few giants, but becoming a more open, more collaborative system. At least from what we can see now, this is no longer just a conceptual story but is evolving towards a real AI infrastructure. And the most valuable companies of the AI era often also emerge from the infrastructure layer.

Related Questions

QAccording to the article, what is the core proposition that many AI+Crypto projects explore?

AThe article states that the core proposition being explored is whether blockchain can become part of AI infrastructure.

QWhat specific layer of the AI industry does Gensyn target, and why is it significant?

AGensyn targets the 'model training' layer, which is the most core, expensive, and technically demanding part of the AI value chain, representing a high barrier to entry and platform advantage.

QWhat is the major problem in the AI industry that Gensyn aims to address, according to the text?

AGensyn aims to address the problem of centralized control of GPU computing power by a few giants, which limits access, increases costs, and controls the pace of AI development, especially in the large model era.

QWhat is the fundamental value proposition of Gensyn's decentralized training network?

AIts value proposition is to organize globally distributed GPU resources into an open AI training network, providing a new, more flexible, and open model for resource coordination and scheduling to improve overall computing power utilization.

QWhat does the article identify as Gensyn's key technological challenge and moat, compared to other AI+Crypto projects?

AThe key technological challenge and moat is not simply connecting GPUs, but developing systems for verifying training results, ensuring node honesty, and maintaining training reliability in a distributed environment (e.g., probabilistic verification mechanisms).

Related Reads

The Midlife Crisis of Crypto GPs: No PMF, No Next Check from LPs

The article "The Midlife Crisis of Crypto GPs: No PMF, No Next LP Check" analyzes the shifting crypto fundraising landscape. It argues the era of selling grand visions to LPs is over; GPs must now offer products with clear Product-Market Fit (PMF). The author categorizes crypto fundraising products into three types: Primary (VC funds), Liquid (trading strategies), and CeFi/DeFi Native Yield. This summary focuses on the Primary market. Key points include: * **Market Shift:** LPs are impatient, demand immediate returns, and are skeptical of future promises. The "easy money" narrative has faded. * **GP Value Erosion:** LP learning curves have shortened (aided by AI), reducing the value of a GP's basic "crypto knowledge." Superior judgment is now rare. * **Weakened LP Motivations:** Traditional reasons for LPs to invest in crypto VC funds (capturing industry beta, gaining access, leveraging GP judgment) have weakened due to new products like ETFs and increased LP sophistication. * **Surviving in Primary:** The primary market will likely persist for: 1) large funds in endowment mandates treating it as a lottery ticket, 2) family offices/HNWIs using proprietary capital, 3) a few funds with proven recent outperformance, and 4) funds with strong ecosystem "deal-making" capabilities. * **Conclusion:** For most GPs, rebuilding trust requires starting over in a niche, demonstrating alpha-generating ability, or providing concrete value/services to LPs.

marsbit2h ago

The Midlife Crisis of Crypto GPs: No PMF, No Next Check from LPs

marsbit2h ago

Crypto GPs' Midlife Crisis: No PMF, No LP's Next Check

The article "The Midlife Crisis of Crypto GPs: No PMF, No LP's Next Check" analyzes the shifting crypto fundraising landscape. It argues that the era of LPs funding vague "vision" is over; GPs must now offer products with clear Product-Market Fit (PMF) to secure capital. The market has matured. LPs, disillusioned by the last cycle's failures and wary of long lock-up periods, now demand tangible, near-term returns rather than speculative narratives. The proliferation of accessible crypto ETFs and other liquid products has reduced the need for VC blind pools as an entry point. The author categorizes crypto fundraising products into three types: Primary (VC funds, with blind pools or clear pipelines), Liquid (alpha/beta, directional/market-neutral strategies), and CeFi/DeFi Native Yield (crypto-specific mechanisms like staking, farming). Focusing on the Primary market, the piece details why traditional LP rationales for investing in crypto VCs have weakened: easier beta access via ETFs, diminished "access" and "judgement" premiums as LPs build internal teams, and a widespread lack of proven superior returns from GPs. Ultimately, only specific players are likely to remain at the primary VC table: large funds with access to patient endowment capital, family offices/HNWIs investing proprietary capital, the few funds with demonstrable excess returns from the last cycle, and those with clear "deal-making" or ecosystem resource advantages. For others, the path forward is to rebuild trust by proving alpha-generation capability in a niche or providing concrete, valuable services.

链捕手2h ago

Crypto GPs' Midlife Crisis: No PMF, No LP's Next Check

链捕手2h ago

The Age of Decoupling Has Arrived: Bitcoin is No Longer the Sole Compass of Crypto

The era of the cryptocurrency market moving in lockstep with Bitcoin is ending, as the industry splits into two distinct asset categories: endogenous and exogenous. Endogenous assets, like Bitcoin, derive value purely from the crypto market's cycles. Their narratives swing between being "interstellar money" in bull markets and "digital collectibles" in bear markets. Exogenous assets, however, are nominally crypto but operate with independent value drivers. Examples include: * **Venice:** An AI inference service using tokens for payments; its consumer-AI business model is decoupled from crypto price swings. * **Figure:** A fintech lender using blockchain to speed up loan approvals; its core value is in credit, not crypto. * **Stablecoin firms like BVNK:** Acquired by traditional finance giants (Mastercard, Stripe), their growth is tied to payment infrastructure, not market cycles. Hybrid projects like **Hyperliquid** (a decentralized exchange) show a shift, with a growing share of non-crypto trading (e.g., prediction markets). This divergence is fundamental. Endogenous assets remain highly correlated to Bitcoin, similar to gold miners to gold. Exogenous assets are evolving to have their own fundamentals, like the weak correlation between gold and the S&P 500. This changes investment analysis. Evaluating exogenous assets requires traditional fundamental research—assessing user bases, unit economics, and moats—more akin to fintech investing than charting Bitcoin. Promising exogenous sectors include: on-chain exchanges/brokers, AI-crypto fusion, privacy-focused digital banks, lending (institutional/private credit), stablecoins/real-world asset tokenization, payment rails, and non-financial crypto-consumer products. Currently, investing via equity is often safer than via tokens, as token value accrual mechanisms need further regulatory and industry development (e.g., the CLARITY Act). Nonetheless, the core trend is clear: crypto market drivers are diversifying from a single factor (Bitcoin) to multiple fundamentals, ending the era of uniform market moves.

marsbit3h ago

The Age of Decoupling Has Arrived: Bitcoin is No Longer the Sole Compass of Crypto

marsbit3h ago

Trading

Spot
Futures

Hot Articles

Discussions

Welcome to the HTX Community. Here, you can stay informed about the latest platform developments and gain access to professional market insights. Users' opinions on the price of AI (AI) are presented below.

活动图片