It took me a year to see the painful truth about Agent payments
Author: jessy
Compiled by: Jiahua, ChainCatcher
Over the past year, I have been dedicated to building infrastructure for the Agent economy, engaging with teams from Stripe, Visa, Coinbase, Google, and dozens of startups driving Agent business. I have compiled the entire industry, launched products, and sought to find market fit.
Currently, there is no real demand, and startups face many structural issues when venturing into this field.
Last month, Stripe launched 288 new products at the Sessions conference, with access to their Agent documentation accounting for nearly 40% of total document reads. Their Agent business marketplace has over 1,000 enabled merchants. However, at the Sessions conference, the number of registered Agents conducting transactions was only in single digits.
Visa mentioned that their Agent payment tokens (tied to Agents, used for tokenized payment on behalf of users) currently require 3 to 9 months of KYC approval, and a minimum revenue threshold of $250 million must be met to qualify. Nowadays, only companies at the level of Amazon and Walmart can complete this identity verification loop.
Coinbase reported that as of April, there were 69,000 active Agents on the x402 protocol and 165 million transactions. However, independent on-chain analysis shows that the actual daily transaction volume is about $17,000, with roughly half being test transactions (according to CoinDesk, March 2026).
Agents for Merchants
We built shop.fast.xyz to directly validate the real application of purchasing-style commerce. It includes real products, merchants, and transactions.
For most product categories, the current user experience of AI shopping is far inferior to traditional e-commerce. When you buy clothes, electronics, or furniture, you want to see pictures, browse various options, and make comparisons.
The conversational format of chatbots is actually a regression. You are replacing a rich visual interface with pure text dialogue, while humans are essentially visual shoppers.
Agents perform excellently in areas we initially thought would be difficult. They can understand user needs and handle instructions like "something similar but cheaper" effectively. The model layer plays a role.
But it cannot replace the experience of browsing ten products side by side and selecting one. The chat interface can be enhanced with carousels and interactive displays, but to that extent, you are essentially just recreating an e-commerce frontend in the chat window. For visually-driven price comparison shopping, we have yet to find a compelling reason to prove that chat interfaces are better than native e-commerce interfaces.
We see real demand from merchants, but it is a defensive demand.
Merchants want their stores to be queryable by Agents. This is not because current customers are buying through Agents, but because they fear being left behind if this becomes the mainstream channel.
This is a strategy of "Agent Engine Optimization (AEO)," but currently, it is just a nice-to-have rather than essential. Merchants are preparing for a wave that has not yet arrived.
Conversational commerce can indeed enhance the experience in certain scenarios: high-frequency, low-decision-cost purchases where users already know what they want. Ordering takeout is the most obvious example. The market is large, the frequency is extremely high, and decisions are quick ("Help me order pad thai from that place last time"). Conversational Agents have a chance here.
However, major takeout platforms have not opened their APIs. The only way is "computer usage": allowing AI to navigate applications visually like humans. This method is slow, fragile, and the reasoning cost is simply unsustainable for a $15 lunch order.
Another breakthrough lies in the extremely complex UI navigation of certain stores, which is very painful. Stacked discounts, promotional codes, loyalty programs, and confusing checkout processes.
An Agent that can understand "use my coupon, deduct my reward points, find the cheapest shipping, operate in my native language" can simplify those currently poor experiences. This is particularly important for elderly users, non-native speakers shopping in foreign online stores, or very niche scenarios with specific needs.
Both breakthroughs require a large consumer-facing (B2C) distribution channel. You are competing for user entry points with DoorDash (the largest delivery platform in the U.S., with a 56% market share) and Amazon.
Consumer-scale distribution is an advantage for the giants. The supply side of purchasing-style commerce is ready, while the demand side is constrained by user experience and distribution channels; building more infrastructure does not solve these two problems.
Agents for APIs
We discussed the actual payment needs with dozens of developers. The situation is almost astonishingly consistent: the current use of Agents for APIs is frequent, including computation, reasoning, and data sources. Developers already have subscription services, archived API keys, and billing relationships with core suppliers.
The typical argument for stablecoins is that on Stripe, the minimum effective cost for credit card processing is about 2.9% plus 30 cents, making API calls under a dollar unprofitable. But for today's low-frequency transaction volumes, prepaid amounts can solve this problem. Developers can preload their accounts, and the issue is resolved.
The deeper issue lies in the supplier market. Most mainstream SaaS companies do not want to provide temporary API access that costs only a fraction of a cent. Their business model is based on multi-year enterprise contracts. Companies that rely on large commitment contracts will resist pricing mechanisms that bypass their existing models.
Machine commerce is structurally a long-tail market, including smaller services, niche data sources, individual developers, and MCP servers. Protocols like MPP and x402 are very suitable for this sub-market.
But by definition, this is a market serving advanced users with special needs, and historically, developers have often been one of the groups with the lowest willingness to pay.
When Stripe Projects was launched, it partnered with 32 supplier partners, such as Vercel, Supabase, Cloudflare, Twilio, etc., covering most of the tools developers use to build and deploy software, all accessible through existing billing systems. The top demand in the developer tech stack has already been met.
Opportunities for new payment channels exist in all areas outside of these top 30 services: opportunities do exist, but their scale is inherently much smaller than the flashy numbers suggest.
The same pattern applies to content acquisition. Agents have been continuously scraping and summarizing articles, while publishers are fighting back.
However, when content monetization arrives at scale, it will be realized through CDN providers that are already positioned between publishers and the internet (Cloudflare has already launched AI auditing tools for this purpose), or through large-scale licensing agreements between publishers and AI labs.
The opportunities for this infrastructure will ultimately flow to the giants that already have distribution channels.
Agents for Agents
The business model of Agents for Agents is a long-term vision that currently remains almost entirely theoretical, with no one achieving meaningful transaction volumes. Various startups are tackling the core challenges: Agent discovery, trust establishment, terms negotiation, and dispute resolution.
When this transaction structure truly materializes, it will be fundamentally different from existing payment tracks. Neither party in the transaction will include human identities. Delays will be in the sub-second range. Funds ranging from fractions of a cent to millions of dollars will operate within the same process.
Additionally, there will be multi-party settlement mechanisms, which completely do not conform to the existing payment tracks' preset bilateral buy-sell model. Once this happens, we believe it will come quickly and at a large scale.
This is a long-term bet on dedicated settlement infrastructure, and it genuinely exists. But "real long-term bets" and "current markets" are two different matters.
For months, we have also been among those promoting this market, and we have built a complete infrastructure around it over the past few years. With our distributed network, it can theoretically scale to over 1 billion TPS, with latencies under 50 milliseconds and average consistency of 10 milliseconds. But we must align with the current real position of the market.
Agents for Finance
This can be said to be the only category with existing demand. The customer base already exists and has a willingness to pay. Nowadays, fund managers, finance teams, and DeFi users are all paying for financial tools. Integrating AI into existing workflows is a natural product evolution.
Agent finance also creates entirely new behavioral patterns. An Agent that can autonomously monitor and rebalance hundreds of positions in real-time operates in ways that humans cannot manually replicate. This is not just automation; it is a substantial capability enhancement.
The challenge lies in the competitive landscape. The financial industry is heavily regulated and highly dependent on existing business relationships. Established institutions have licenses, compliance infrastructure, and customer relationships. Startups can seek a foothold in areas with lighter regulation (such as DeFi), areas where giants are slow to act, or areas where AI can create capabilities that giants do not possess.
However, compared to the other three categories, the competitive dynamics here are more favorable to mature enterprises, as layering AI on top of existing products and customer bases is far easier than the reverse.
The Real Competitive Edge
So, why is everyone still building these things? There are two reasons.
First is motivation. Industry giants have ample cash flow to bet on a future that may take years to materialize. For them, the cost of entering five years early is merely a rounding error, while the cost of entering a year late could be catastrophic. So they must build.
Second is cognitive blind spots. When your main business is payments, every problem looks like a payment problem. The Agent economy needs a payment layer, so let’s build that payment layer.
But payments are just one part of a larger issue. The real challenge is not how to transfer funds between Agents, but how to coordinate work between Agents and humans, verify work results, and settle outcomes. Payments are just part of the settlement. Settlement is just part of coordination. And coordination is the real big cake.
Large-scale coordination will naturally give rise to settlement mechanisms as a necessity. Payments are just one instrument in this symphony, not the entire movement. Companies that solve coordination problems will absorb payment businesses, not the other way around.
Most legacy companies are engaging in defensive building to prepare for future scenarios of large-scale machine transactions. Since their funding runway is infinite, timelines do not matter to them.
But startups do not have this luxury. We must seek the true location of the market and cannot wait idly for the tide to come in.
A year of building has led us in an unexpected direction. There, market activities genuinely exist, are growing rapidly, and have not been adequately served. It exists outside of the four categories we have described.
You may also like

Morning Report | OpenAI has submitted an S-1 registration statement draft to the U.S. SEC; Morpho completes $175 million financing

Galaxy Deep Research Report: How Hyperliquid's HIP-4 Upgrade Changes the Landscape of Prediction Markets?

Latest research from 13 top universities including Cornell University: The current state, challenges, and misconceptions of the fusion of Crypto and AI

Deconstructing Anthropic: The Best AI Company, Possibly Also a Type of Organizational Invention

Every exchange is a "Universal Exchange."

The counterattack of traditional finance: Alliance chains are quietly reviving

Pantera Capital Partner: How Tokenization is Restructuring the Private Equity and Early Investment Ecosystem?

Mastercard Launches Agent Pay for AI, Plans to Record AI Agent Payment Authorizations on Polygon
Mastercard launched Agent Pay for AI, a new payment protocol designed to help AI agents make small payments such as pay-per-use access to data and APIs. The system plans to record human-granted AI agent permissions on Polygon, focusing on verifiable authorization, identity, and payment controls.

Curve Deploys Llamalend v2 on Optimism With 250,000 OP Incentives
Curve launched Llamalend v2 on Optimism with 250,000 OP incentives from the Optimism Foundation. The upgrade expands Llamalend beyond its earlier crvUSD-focused model, adding broader collateral support, LlamaRisk market reviews, and the ability to use Curve LP tokens as collateral.

Raydium Old Liquidity Pool Reportedly Exploited, With $1.34 Million Moved to Ethereum and Tornado Cash
An old Raydium liquidity pool was reportedly exploited for around $1.34 million in USDC, RAY, and wSOL, with the stolen funds bridged to Ethereum and deposited into Tornado Cash. The incident highlights the tail risks of legacy DeFi pools, old contracts, and cross-chain fund laundering paths.

Kalshi Executive Challenges “SBF Backed AI Unicorns” Narrative, Says Leopold Aschenbrenner Was Key Figure
Kalshi executive John Wang questioned the “SBF backed AI unicorns” narrative, saying Leopold Aschenbrenner was the key figure behind major AI investment decisions.

New York Proposes Stricter Stablecoin Issuer Rules Aligned With Federal GENIUS Act
NYDFS proposed stricter stablecoin issuer rules aligned with the GENIUS Act, covering reserves, custody, redemption timelines, audits, and capital buffers.

CryptoQuant Says Bitcoin Profitable Supply Is Near 45% Pressure Zone as On-Chain Data Points to Market Repricing
CryptoQuant said Bitcoin’s profitable supply is nearing the 45% pressure zone, signaling rising market stress, unrealized losses, and a possible on-chain repricing phase.

Bitcoin Falls Below 200-Week Moving Average as On-Chain Data Shows Over Half of Supply in Loss
Bitcoin dropped below its 200-week moving average as on-chain data showed over 50% of circulating supply is now in loss, signaling rising market stress.

CFTC Reportedly Plans New Prediction Market Rules Focused on Manipulation Risk and Public Interest Review
The CFTC is reportedly preparing new prediction market rules focused on manipulation risk, public interest review, and retail trader protections.

Meet the new WEEX trial fund—your gateway to greater profits

WEEX Labs Lands at Dutch Blockchain Week: A Disruptive Crypto × AI Conversation Sets Sail in Amsterdam

SK Hynix Reportedly Plans U.S. ADR Listing as Early as August, With SEC Approval Possible in Late June
SK Hynix may pursue a U.S. ADR listing as early as August, with SEC approval reportedly possible in late June amid strong AI chip supply chain demand.
