Blockchain has finally begun sailing toward the main channel after 18 years

链捕手Опубліковано о 2026-06-15Востаннє оновлено о 2026-06-15

Анотація

After 18 years of development, blockchain technology is beginning to move from a specialized niche into mainstream adoption, according to a recent industry analysis. The shift is reflected in the changing strategies of major crypto venture capital firms, which are expanding their focus beyond pure "digital ownership" towards broader themes like "autonomy." The report highlights that leading VC firms like Variant, Paradigm, Haun Ventures, and YZi Labs are broadening their investment mandates to include not only crypto but also artificial intelligence (AI), robotics, biotech, and other frontier technologies. This reflects a recognition that the isolated "crypto investment" narrative is losing appeal to limited partners (LPs) as capital and attention increasingly flow toward AI and other high-growth tech sectors. A key emerging thesis is that blockchain's most significant future application may not be as a consumer-facing product, but as the underlying economic and settlement infrastructure for the AI era. As AI agents and autonomous systems become more prevalent, they will require programmable, global, and low-cost payment networks (like stablecoins), verifiable digital identities, and secure wallets to manage transactions and assets on behalf of users. The investment by stablecoin issuer Tether into robotics company NEURA, with plans to integrate its wallet technology, is cited as a prime example of this convergence. However, the article cautions that simply labeling projec...

Author: Gu Yu, ChainCatcher

Earlier this month, veteran crypto venture capital firm Variant announced the completion of a new fundraise of $222 million, further expanding its fund theme from the previous "digital ownership" to "autonomy."

This may seem like just another ordinary fundraise, but the signal behind it is not ordinary.

Jesse Walden, a partner at Variant, stated that in the future, the label of "crypto investor" may gradually disappear, becoming akin to "internet investors." In other words, crypto is no longer an independent, closed investment vertical, but more like an underlying technological paradigm, embedded within main channels such as AI, finance, social media, robotics, data, content, and consumer products.

This is perhaps also the most pragmatic response from crypto VCs facing the impact of AI: not to compete with AI for narratives, but to attempt to become the underlying financial rails of the AI world.

1. Crypto VCs Begin Blurring Boundaries

In recent years, the fundraising logic of crypto VCs has been primarily built on one premise: blockchain will give rise to a new set of platforms, protocols, and applications independent of the Web2 world.

As narratives such as DeFi, NFTs, GameFi, Layer1, Layer2, modularization, restaking, DePin, and RWA emerged one after another, this logic was once highly convincing. Funds that entered new narratives early enough could potentially reap returns far exceeding traditional equity investments through secondary market liquidity of tokens.

However, this logic is now faltering. The core reason is the significant weakening of the wealth effect within the crypto market itself. Bitcoin has fallen sharply this year, with many market views citing fund outflows from crypto ETFs, macro liquidity pressures, and investors shifting towards AI and large tech IPOs as important reasons. Meanwhile, AI and hard tech companies like SpaceX, OpenAI, and Anthropic continue to capture the attention of LPs and the secondary market, significantly undermining the scarcity of crypto assets in "growth stories."

This means crypto funds are not just competing with other crypto funds, but with all assets representing future growth. AI, robotics, space, defense tech, and energy infrastructure are all competing for the same pool of LP risk budget.

Against this backdrop, "investing only in crypto" has gradually transformed from a professional label into a potential constraint.

If LPs believe AI is the most important technological variable of the next decade, it's difficult for a fund to prove its irreplaceability solely by saying "we understand tokenomics better." Especially considering that over the past cycles, many crypto projects have failed to demonstrate real revenue, user retention, and application scenarios, instead leaving behind structural issues like high FDV, low circulation, airdrop farming, and on-chain zombie applications.

This is why more and more crypto VCs are proactively blurring their boundaries.

YZi Labs has already expanded its investment scope to three major directions: Web3, AI, and biotechnology, and this year participated in a $52 million funding round for AI industrial robotics company RoboForce.

According to a February report by The Wall Street Journal, Paradigm is seeking to raise up to about $1.5 billion for its next fund, expanding its investment scope from crypto to "frontier tech" such as AI and robotics, while continuing to invest in the crypto sector. In May, AI manufacturing company SendCutSend completed a $110 million funding round with participation from Paradigm.

In May, Haun Ventures announced the completion of a $1 billion new fundraise, expanding its investment scope to the AI agent space. Its founder Katie Haun stated that AI will "increasingly represent us in economic activities," and services need to adapt for this future.

2. AI Agents Could Be Crypto's True Large-Scale Adoption Application

In the past, crypto projects often tried to get users to use products for the sake of "decentralization," but reality has proven that the vast majority of users do not change their behavior based on ideology.

Today, the crypto industry finds itself in an awkward position: it still possesses unique capabilities like globalization, open finance, composability, asset issuance, and censorship resistance, but these capabilities have long lacked truly high-frequency, essential, and large-scale application entry points.

What is more likely to happen in the future is that users will not know they are using crypto, but AI agents, robots, financial applications, games, or content platforms will invoke stablecoins, wallets, smart contracts, and on-chain identities in the background.

From Variant's perspective, autonomy is not just automation. Automation solves whether machines can complete tasks for humans, while autonomy focuses on whether users truly control their own assets, identity, data, and decision-making power. Variant stated in an article that building autonomous systems requires solving a series of issues such as incentive mechanisms, law, governance, security, verification, policy, and geopolitical interfaces in adversarial markets, with digital ownership being an important pillar of autonomy.

"The ideas that fueled the Web3 movement will find new momentum in the AI era. We did a lot of experiments, and crypto initially wanted to be seen as the product itself. But ultimately, we found that crypto is the rails that underpin many products, and its growth story is just beginning," Jesse Walden said.

This is perhaps the most important cognitive correction in the crypto industry in recent years.

Crypto does not have to be the front-end application users open every day; it can become the economic settlement layer between machines and machines, humans and machines, and applications and applications in the AI era.

If an AI agent is to perform tasks on behalf of users, it needs a wallet; if it needs to autonomously purchase APIs, call computing power, pay for data, and subscribe to services, it needs a low-cost, global, programmable payment network; if it needs to carry identity, reputation, and assets across multiple platforms, it needs an open account system; if it needs the external world to trust the results of its actions, it needs verification and audit mechanisms.

These issues are precisely within the scope of capabilities crypto has accumulated over the past decade-plus.

3. The Tether Investment Case

The crypto giant Tether's investment in NEURA Robotics is a typical case of this trend.

On June 10th, German robotics company NEURA Robotics completed a $1.4 billion funding round with investors including Tether, Amazon, Nvidia, Qualcomm, Bosch, Schaeffler, and the European Investment Bank, among others. NEURA stated that the funds will be used to scale the commercialization of cognitive robots and humanoid robots, with plans to produce millions of robots by 2030. The company also disclosed that its order backlog already exceeds $1 billion.

On the surface, this is an investment in AI robotics; but for Tether, it's clearly more than just a financial bet.

According to the related press release, NEURA's robot platform is expected to integrate Tether's Wallet Development Kit (WDK), embedding self-custody wallet functionality directly into the robot system. This means that robots in the future may receive micropayments for completing tasks, conduct transactions with other systems, or perform economic activities within human-preset parameters.

This is precisely one of the most imaginative new use cases for stablecoins.

In the past, the biggest users of stablecoins were traders, cross-border payment users, gray arbitrageurs, and some residents of emerging markets. It solved the problems of transfer, settlement, and value storage between humans. But if AI agents and robots begin to become economic actors, the usage frequency and scenarios for stablecoins could be significantly amplified.

A robot could accept orders, complete transportation, and receive USDT micropayments; an AI agent could automatically purchase data, invoke models, and pay for SaaS services; an automated supply chain system could automatically settle after goods arrive, sensors verify, and contracts confirm. Compared to traditional banking systems, on-chain payments are inherently suited for this high-frequency, small-amount, cross-border, machine-readable economic activity.

This is also why AI is not merely a competitive threat to crypto. AI is diverting crypto's capital attention, but it may also create the real demand that crypto has been lacking.

4. AI + Crypto is Not a Universal Formula

Of course, AI + Crypto does not inherently make sense.

Over the past two years, the market has seen too many crudely combined projects: connecting ChatGPT to a Telegram group is called an AI agent; packaging a model API call as token economics; cramming data annotation, computing power leasing, and agent platforms into a whitepaper. The problems with many of these projects are essentially no different from the last cycle's GameFi and SocialFi: big concept, small revenue, heavy tokenomics, light product.

Truly valuable AI + Crypto projects should meet at least one condition: they would not exist without crypto, or they are significantly better with crypto.

For example, agents need self-custody wallets and permission management; AI-generated content requires verifiable provenance and ownership; model, computing, and data markets need open settlement and incentive mechanisms; robot economies need machine-readable payment networks; autonomous organizations need transparent governance and enforceable rules. In these scenarios, crypto is not a marketing label slapped on the outside; it is a fundamental component required for the system to operate.

This is also the question crypto projects and VCs need to answer next.

If they simply change their fund intro pages to AI + Crypto just because it's easier to raise money, it won't change the industry's predicament. The market will eventually realize that most so-called integration projects have neither AI moats nor crypto necessity.

But if they can find the real intersection points in AI agents, robotics, data markets, financial automation, and on-chain identity, the crypto industry may indeed usher in a new application cycle.

This time, growth may not come from more retail investors rushing into exchanges to buy new coins, but from more machines, applications, and enterprises using on-chain rails in the background.

5. Conclusion

Faced with the impact of AI, the answer from crypto VCs is already clear: stop viewing crypto as an isolated vertical, but reinterpret it within larger technological waves.

This is both proactive evolution and a forced pivot.

When LP funds flow to AI, when entrepreneurs' attention flows to AI, when secondary market risk appetite flows to AI, crypto funds that continue to talk only about Layer1, DeFi, NFTs, crypto gaming, and airdrop growth will find their survival space increasingly narrow.

But this doesn't mean the crypto story is over. On the contrary, if AI agents truly become new internet users, if robots truly become new economic participants, and if automated systems truly begin to execute more and more transactions on behalf of humans, then the wallets, stablecoins, smart contracts, on-chain identities, and open financial networks built by crypto over many years may for the first time encounter high-frequency, essential, non-speculative use cases.

The crypto industry needs new narratives more than ever, but it needs new real demand even more.

Пов'язані питання

QAccording to the article, how is the investment focus of crypto VCs shifting in response to the rise of AI?

ACrypto VCs are shifting from treating crypto as an independent, closed investment sector to viewing it as an underlying technological paradigm. They are expanding their investment scope beyond pure crypto into broader areas like AI, robotics, biotech, and frontier tech. They aim to integrate crypto's capabilities, such as open finance and digital ownership, as foundational infrastructure within these mainstream technological domains, particularly as the economic settlement layer for the AI world.

QWhat does the article suggest is the 'most realistic answer' crypto VCs have given to the impact of AI?

AThe most realistic answer is not to compete with AI for narrative dominance, but to attempt to become the underlying financial infrastructure or 'rails' of the AI world. Instead of crypto being the front-end product users interact with, it aims to serve as the backend economic settlement layer for AI agents, robots, and automated systems.

QUsing Tether's investment in NEURA Robotics as an example, what new potential application scenario for stablecoins is highlighted?

AThe investment highlights the potential for stablecoins to be used in machine-to-machine and AI agent economies. With NEURA's robots integrating Tether's wallet tools, machines could autonomously earn micropayments for completing tasks, trade with other systems, or execute economic behaviors within human-set parameters. This represents a shift from stablecoins serving human users for transfers and storage to facilitating high-frequency, small-amount, cross-border, and machine-readable economic activities.

QWhat key condition does the article propose for a valuable 'AI + Crypto' project?

AA valuable 'AI + Crypto' project should satisfy at least one condition: it either cannot exist without crypto, or it becomes significantly better with crypto. Crypto should not be just a marketing label but an essential foundational component required for the system to operate, such as providing self-custody wallets for AI agents, verifiable provenance for AI-generated content, or open settlement for data markets.

QWhat fundamental problem does the article identify with the previous logic of crypto investment, and why is it failing now?

AThe previous logic was based on the premise that blockchain would spawn new platforms, protocols, and applications independent of the Web2 world, offering outsized returns through secondary market token liquidity. This logic is failing because the crypto market's own wealth effect has significantly weakened. Crypto assets are losing their scarcity in 'growth stories' as capital, LP attention, and investor risk appetite flow towards AI, large tech IPOs, and other frontier technologies like robotics and space tech.

Пов'язані матеріали

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.

marsbit55 хв тому

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

marsbit55 хв тому

Following US Ban on Fable 5, Zhipu AI's Stock Soars 47%

On June 15th, shares of Zhipu AI surged dramatically on the Hong Kong stock market, peaking at a 47.6% gain before closing 32.82% higher. This sharp increase was directly triggered by two recent industry events. On June 12th, Anthropic announced it was suspending global access to its latest flagship models, Claude Fable 5 and Claude Mythos 5, to comply with a U.S. government export control order. The next day, Zhipu AI announced it would open access to its latest open-source flagship model, GLM-5.2, under the permissive MIT license. The Anthropic incident highlighted a critical issue beyond raw model capability: the risk of sudden, unpredictable loss of access to advanced AI models, especially for developers and enterprises deeply integrated with them. This has shifted industry and market focus toward factors like stability, sustainable access, and controllability. Zhipu's move, promoting "frontier intelligence for all," positions its openly available model as a reliable and accessible alternative. The GLM-5.2 model emphasizes "Long Horizon Task" capabilities with a 1M context window, targeting complex, multi-step coding and engineering workflows where maintaining context is crucial. Analysts note this event exposes the risk of dependency on closed-source models subject to single jurisdictional controls, potentially accelerating a shift toward domestic base models and localized deployments. The market's reaction signals a new valuation dimension in AI: providers who can offer stable, long-term, and sustainably accessible AI capabilities are gaining strategic importance.

marsbit1 год тому

Following US Ban on Fable 5, Zhipu AI's Stock Soars 47%

marsbit1 год тому

Fully Entering the AI Era: Alipay Bets on Conversation, WeChat Holds Fast to Social

In May 2026, Alipay announced over 300 million AI payment transactions. Shortly after, WeChat opened its mini-programs for AI integration, sparking controversy by requiring developer source code access. This highlights their diverging approaches to AI integration. Alipay is testing "Project Treasure," an optional AI-native interface replacing traditional app grids with a conversational window. Users can command complex tasks (e.g., "book a ride and order coffee") handled end-to-end by AI. This shift follows an abandoned standalone AI app, focusing instead on enhancing its existing user base. For unmodified mini-programs, Alipay's AI uses "screen-reading" to simulate user interactions, bypassing the need for developer overhaul. It also introduced "Token Pay" for micro-transactions and "AI Wallets" for autonomous agent spending. WeChat, prioritizing its core social function, is taking an embedded approach. Its AI agent will operate within existing contexts like group chats and official accounts, assisting without a separate interface. To enable this, WeChat offers developers two paths: granting source code access for direct AI control ("Automatic Mode") or manually encapsulating services into standardized "Skills." Both place significant burden on developers. Key differences emerge in handling legacy services: WeChat demands developer cooperation (code or labor), while Alipay's screen-reading offers immediate, if potentially less stable, compatibility. Alipay's 3 billion AI transactions demonstrate user acceptance of AI-driven commercial actions. The divergent strategies may reshape mini-program ecosystems—Alipay passively "AI-fying" services, WeChat potentially favoring resource-rich developers—and set competing technical standards. Ultimately, the competition centers on where users entrust the command to "help me get things done."

marsbit1 год тому

Fully Entering the AI Era: Alipay Bets on Conversation, WeChat Holds Fast to Social

marsbit1 год тому

Торгівля

Спот
Ф'ючерси
活动图片