a16z: The Best Technology Doesn't Always Win in the Enterprise Market

marsbitPubblicato 2026-03-11Pubblicato ultima volta 2026-03-11

Introduzione

a16z: Why the "Best" Tech Doesn't Always Win in Enterprise Markets In the current blockchain application cycle, founders are learning a crucial lesson: enterprises don't buy the "best" technology; they buy the upgrade path with the least disruption. For decades, new enterprise tech has offered promises of order-of-magnitude improvements—faster settlement, lower costs, cleaner architecture—but adoption rarely matches technical superiority. The gap isn't performance but product-market fit. Enterprises prioritize minimizing downside risk over maximizing gains. Decision-makers in large institutions face asymmetric penalties: missing an opportunity is rarely punished, but a visible failure can damage careers and attract regulatory scrutiny. Thus, decisions are driven by "what is least likely to fail" rather than "what might be achieved." Enterprise decisions are made by a coalition of stakeholders—legal, compliance, risk, finance, security—each with veto power and different concerns. The "customer" is rarely a single buyer but a group focused on avoiding errors. Successful founders identify these decision-makers early and tailor their pitch to address specific institutional constraints. Third-party consultants and system integrators often act as gatekeepers, repackaging new technology into familiar frameworks to reduce perceived risk. Ignoring this layer is a strategic mistake. A common error is using a one-size-fits-all sales pitch or advocating for a "rip-and-replace" appro...

Written by: Pyrs Carvolth, Christian Crowley

Compiled by: Chopper, Foresight News

In the current blockchain application cycle, founders are learning a troubling but profound lesson: enterprises don't buy the 'best' technology; they buy the upgrade path with the least disruption.

For decades, new enterprise technologies have promised orders-of-magnitude improvements over traditional infrastructure: faster settlement, lower costs, cleaner architecture. But the reality of implementation rarely matches the technical advantages.

This means: if your product is 'clearly better' but doesn't win, the gap isn't in performance, but in product-market fit.

This article is for a group of crypto founders: those who started in the public chain space and are now painfully pivoting to enterprise business. For many, this is a huge blind spot. Below, we share key insights based on our own experience, case studies of founders who successfully sold products to enterprises, and real feedback from enterprise buyers to help you better pitch to enterprises and secure deals.

What Does 'Best' Really Mean?

Inside large enterprises, the 'best technology' is the one that perfectly integrates with existing systems, approval processes, risk models, and incentive structures.

SWIFT is slow and expensive, yet it still stands. Why? Because it provides shared governance and regulatory security. COBOL is still used because rewriting a stable system poses existential risks. Batch file transfers still exist because they create clear checkpoints and audit trails.

An uncomfortable conclusion might be: the slow adoption of blockchain in enterprises is not due to a lack of education or vision, but to product design misalignment. Founders who insist on selling the most perfect technological form will keep hitting walls. Founders who treat enterprise constraints as design inputs rather than compromises are the ones most likely to succeed.

So, don't downplay the value of blockchain; the key is to package a version that enterprise tech teams can accept, which requires the following approaches.

Enterprises Fear Loss Far More Than They Love Gain

A common mistake founders make when selling to enterprises is assuming that decision-makers are primarily driven by gains: better technology, faster systems, lower costs, cleaner architecture, etc.

The reality is that the core motivation for enterprise buyers is to minimize downside risk.

Why? In large institutions, the cost of failure is asymmetric. This is the complete opposite of small startups, a point easily overlooked by founders who haven't worked in big companies. Missing an opportunity is rarely punished, but a clear mistake (especially one related to unfamiliar new technology) can severely impact career prospects, trigger audits, or even attract regulatory scrutiny.

Decision-makers rarely benefit directly from the technology they recommend. Even if strategically aligned and company-wide investment exists, the gains are dispersed and indirect. But losses are immediate and often personal.

The result is that enterprise decisions are rarely driven by 'what might be achieved' but more by 'what is unlikely to fail.' This is why many 'better' technologies struggle to gain traction. The barrier to entry is usually not technical superiority, but: does using this technology make the decision-maker's job safer or riskier?

Therefore, you must rethink: who is your real customer? One of the most common mistakes founders make in enterprise sales is thinking the 'most tech-savvy person' is the buyer. The reality is that enterprise adoption is rarely driven by technological belief, but more by organizational dynamics.

In large institutions, decisions are less about gains and more about risk management, coordination costs, and accountability. At an enterprise scale, most organizations outsource part of the decision-making process to consulting firms, not because they lack intelligence or expertise, but because critical decisions must be continuously validated and defensible. Bringing in a reputable third party provides external validation, disperses responsibility, and offers credible justification if the decision is later questioned. This is true for most Fortune 500 companies, hence the huge annual consulting budgets.

In other words: the larger the institution, the more decisions must withstand internal scrutiny after the fact. As the saying goes, 'No one ever got fired for hiring McKinsey.'

How Enterprises Actually Make Decisions

Enterprise decision-making is a lot like how many people use ChatGPT today: we don't use it to make decisions for us, but to test ideas, weigh pros and cons, reduce uncertainty, while always remaining accountable.

Enterprises behave largely the same, except their decision support layer is people, not a large language model.

New decisions must pass through layers of legal, compliance, risk, procurement, security, executive oversight, etc. Each layer cares about different questions, such as:

  • What could go wrong?
  • Who is responsible if something goes wrong?
  • How does this integrate with existing systems?
  • How do I explain this decision to executives, regulators, or the board?

Therefore, for truly meaningful innovation projects, the 'customer' is almost never a single buyer. The so-called 'buyer' is actually a coalition of stakeholders, many of whom care more about not making mistakes than about innovation.

Many technically superior products often lose here: not because they are unusable, but because there is no suitable person within the organization who can use them safely.

Take the example of an online gambling platform. As prediction markets gain popularity, crypto 'picks and shovels' providers (like on-ramp service providers) might see online sports betting platforms as natural enterprise clients. But to do this, you must first understand: the regulatory framework for online sports betting is different from prediction markets, including separate licenses for each state. Knowing that states have different attitudes towards crypto, the on-ramp provider would realize: its customer is not the product, engineering, or business team wanting to access crypto liquidity, but the legal, compliance, and finance teams, who care about the risks to existing gambling licenses and core fiat business.

The simplest solution is to identify the decision-makers early and explicitly. Don't be afraid to ask your product champion (the person who likes your product) how to help them sell it internally. Behind the scenes, there are often legal, compliance, risk, finance, security... they all have hidden veto power and vastly different concerns. The winning teams package their product as a risk-managed decision, giving stakeholders ready-made answers and a clear benefit/risk framework. Just by asking, you can find out who to package for, and then find a seemingly safe and reassuring path to 'yes'.

Consulting Firms

Often, new technology passes through an intermediary layer before reaching enterprise buyers. Third parties like consulting firms, system integrators, and auditors often play a key role in the translation and legitimization of new technologies. Like it or not, they become the gatekeepers of new technology. They use mature, familiar frameworks and collaboration models to translate new solutions into familiar concepts, turning uncertainty into actionable advice.

Founders are often frustrated or skeptical of this, feeling that consulting firms slow progress, add unnecessary processes, and become additional interested parties influencing the final decision. They do! But founders must be realistic: in the US alone, the management consulting services market is expected to exceed $130 billion by 2026, mostly from large enterprises seeking help with strategy, risk, and transformation. Although blockchain-related business is only a small part, don't assume that a project with 'blockchain' can escape this decision-making system.

Like it or not, this model has influenced enterprise decisions for decades. Even if you're selling a blockchain solution, this logic won't disappear. Our experience communicating with Fortune 500 companies, large banks, and asset management institutions repeatedly proves: ignoring this layer can be a strategic mistake.

The collaboration between Deloitte and Digital Asset is a classic example: by partnering with large consulting firms like Deloitte, Digital Asset's blockchain infrastructure was repackaged into language more familiar to enterprises, such as governance, risk, and compliance. For institutional buyers, the participation of a trusted party like Deloitte both validates the technology and makes the implementation path clearer and more defensible.

Don't Use the Same Pitch

Because enterprise decision-makers are extremely sensitive to their own needs (especially downside risk), you must tailor your presentation: do not use the same enterprise sales pitch, the same PPT, the same framework for every potential customer.

Details matter. Two large banks may look similar on the surface, but their systems, constraints, and internal priorities can be vastly different. What impresses one may be completely ineffective with the other.

A generic pitch tells the other party: you haven't spent time understanding how this institution specifically defines the project. If your pitch isn't tailored, it's hard for the institution to believe your solution can be a perfect fit.

An even more serious mistake: the 'rip and replace' narrative. In the crypto space, founders often tend to描绘 a completely new future: completely replacing old systems and开创 a new era with newer, better decentralized technology. But enterprises rarely do this; traditional infrastructure is deeply embedded in workflows, compliance processes, existing vendor contracts, reporting systems, and countless touchpoints and stakeholders. Rip and replace doesn't just disrupt daily operations; it introduces all sorts of risks.

The broader the impact of the change, the less likely anyone within the organization will dare to make the decision: the bigger the decision, the larger the decision-making coalition.

The success stories we've seen are where founders first adapt to the enterprise client's现状, rather than asking the client to adapt to their ideal. When designing the entry point, it must integrate into existing systems and workflows, minimize disruption, and establish a reliable foothold.

A recent example is the collaboration between Uniswap and BlackRock on tokenized funds. Uniswap did not position DeFi as a replacement for traditional asset management, but rather provided permissionless secondary market liquidity for products issued under BlackRock's existing regulatory and fund structure. This integration did not require BlackRock to abandon its operating model; it merely extended it on-chain.

Once you pass the procurement process and the solution is officially launched, it's completely possible to pursue more ambitious goals later.

Enterprises Hedge Their Bets, You Need to Be the 'Right Hedge'

This risk aversion manifests as a predictable behavior: institutions hedge their bets, and often on a large scale.

Large enterprises don't bet everything on emerging infrastructure; instead, they run multiple experiments simultaneously. Allocating small budgets to multiple vendors, testing various solutions in innovation departments, or running pilots without touching core systems. From the institution's perspective, this preserves optionality while limiting risk exposure.

But for founders, there's a subtle trap here: being selected ≠ being adopted. Many crypto companies are just one of the options enterprises use to test the waters; a pilot is fine, but there's no need to scale up.

The real goal is not to win a pilot, but to become the hedge with the highest probability of winning. This requires more than just technical superiority; it requires professionalism.

Why Professionalism Trumps Purity

In these markets, clarity, predictability, and credibility usually crush pure innovation: it's hard to win on technology alone. That's why professionalism is crucial; it reduces uncertainty.

By professionalism, we mean: designing and presenting the product with full consideration of institutional realities (e.g., legal constraints, governance processes, and existing systems), and committing to operate within these现实 frameworks. Following conventions tells the other party: this product is governable, auditable, and controllable. Whether this aligns with the spirit of blockchain or crypto, this is how enterprises view technology implementation.

This may seem like enterprises resisting change, but it's not. It's a rational response to enterprise incentives.

Getting bogged down in the ideological purity of the technology, be it 'decentralization,' 'minimal trust,' or other crypto ethos, is difficult to convince institutions bound by legal, regulatory, and reputational constraints. Products that require enterprises to accept the 'full vision' all at once ask too much, too soon.

Of course, there are examples of breakthrough technology + ideological purity winning. LayerZero recently launched the new public chain Zero, attempting to solve scalability and interoperability challenges in enterprise adoption while preserving the principles of decentralization and permissionless innovation.

But Zero's real differentiator is not just its architecture, but its institutional design thinking. Instead of creating a one-size-fits-all network and expecting enterprises to adapt, it co-designs dedicated 'Zones' for specific scenarios like payments, settlement, and capital markets with core partners.

Zero's architecture, the team's willingness to truly collaborate around these application scenarios, and the LayerZero brand all help minimize some concerns of large traditional financial institutions. These factors叠加, leading to announcements of partnerships with institutions like Citadel, DTCC, and ICE.

Founders can easily interpret enterprise resistance as conservatism, bureaucracy, or lack of vision. Sometimes it is, but there's usually another reason: most institutions are not irrational; they are oriented towards maintaining operations. They are designed to preserve capital, protect reputation, and withstand scrutiny.

The technology that wins in this environment is not necessarily the most elegant or ideologically pure, but the one that strives to adapt to the enterprise's现状.

These realities help us see the long-term potential of blockchain infrastructure in the enterprise space.

Enterprise transformation is rarely achieved overnight. Look at the 'digital transformation' of the 2010s: although the relevant technologies had existed for years, most large enterprises are still modernizing their core systems, often at great cost and with the help of consulting firms. Large-scale digital transformation is a gradual process achieved through controlled integration and scaling based on mature use cases, not an overnight replacement. This is the reality of enterprise transformation.

Successful founders are not those who demand the full vision from the start, but those who understand phased implementation.

Domande pertinenti

QAccording to the article, why do enterprises often choose technologies that are not the 'best' in terms of performance?

AEnterprises prioritize technologies that minimize downside risk and integrate seamlessly with existing systems, approval processes, risk models, and incentive structures, rather than those with the highest technical performance.

QWhat is the core motivation for enterprise buyers when making technology decisions?

AThe core motivation for enterprise buyers is to minimize downside risk, as failures can severely impact careers, attract audits, or invite regulatory scrutiny, while benefits are often dispersed and indirect.

QHow do consulting firms influence the adoption of new technologies in enterprises?

AConsulting firms act as gatekeepers by repackaging new technologies into familiar frameworks, validating them, and providing external endorsement, which helps enterprises make defensible decisions and reduce perceived risks.

QWhat mistake do founders often make when pitching to enterprises, and what should they do instead?

AFounders often use a one-size-fits-all pitch or advocate for a 'rip-and-replace' approach. Instead, they should tailor their presentations to each enterprise's specific constraints and design solutions that integrate with existing systems to minimize disruption.

QWhat does 'professionalism' mean in the context of selling technology to enterprises, and why is it important?

AProfessionalism refers to designing and presenting products that align with institutional realities like legal constraints, governance processes, and existing systems. It is crucial because it reduces uncertainty and signals that the product is governable, auditable, and manageable, making it more acceptable to risk-averse enterprises.

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