Commerce Without Clicks

The dawn of agents in shopping.

Atul Ajoy & Jasleen Kaur · April 2026

The analog storefront

When you open any product page on the internet, you'll see an image carousel designed for human eyes, a star rating designed to trigger social proof, and an original price with a new suggested value designed to create urgency through perceived discounts.

Now imagine you've deployed an AI agent to be the buyer on your behalf. It can't see images. It doesn't feel urgency. It doesn't have a browser session or cookies. Every single element of ecommerce was designed for a human, and every single one breaks when the buyer is software.

What's more is that the revenue model is broken. Cart abandonment rates hover at 70% due to unexpected fees, confusing product options, and overplayed psychological games on the part of merchants. And now, consumers are looking to agentic shopping experiences, which will put pressure on merchants to change their own tactics. Nearly 60% of 18–34 year old shoppers say they trust an agent shopping on their behalf and, last year, 1 in 6 Black Friday purchases, $70 billion in GMV, were AI-assisted.

As agents become the primary interface for more and more commercial transactions, the entire commerce stack needs to be rearchitected. The infrastructure that powers $5 trillion in annual e-commerce was built on a fundamental assumption that may become obsolete: that the buyer is a person.


For your eyes only

Below is a typical product page. Every element was designed for a human with eyes, emotions, and a mouse. Click the elements that break when the buyer is an AI agent.

Find all 8 human assumptions
0 / 8 found
acmegear.com/products/alpine-pro-42l-backpack
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Home Backpacks Alpine Pro
Alpine Pro 42L Backpack: Ultralight Series
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★★★★★2,341 reviews · "Best pack I've ever owned"
3
$189.00$249.0024% off, Today only!
4
Engineered for the relentless explorer. The Alpine Pro's aerospace-grade Dyneema® fabric laughs at rough terrain while cradling your gear in cloud-like comfort. Because your next summit shouldn't wait.
5
Earn 945 Summit Points with this purchase · Use your Amex Platinum for 5x points
6
Add to Cart
7
I'm not a robot
8

Every element assumed a human.

Images, emotions, urgency, loyalty badges, CAPTCHAs, cookies, none of these work when the buyer is software. The entire page needs to be rebuilt as structured data, machine-readable pricing, and programmatic protocols.


The new commerce relay

We don't believe that agentic commerce will remove humans from the loop. The real commerce workflow of tomorrow is a four-phase handoff: humans discover, an LLM layer bridges intent, agents execute checkout, and humans pick back up for fulfillment and continuity. Hover over each phase to see what lives inside it.


Passing the baton

The four-bar structure above captures the central insight: commerce doesn't flip from human to agent in one clean step. It splits. Humans keep the front end, the "I want winter boots" moment of intent formation. Agents run the middle, querying merchant APIs and executing programmatic checkout. Fulfillment, disputes, and loyalty stay human on paper, but agents co-pilot every piece: optimizing returns, assembling chargeback evidence, maximizing reward redemption.

The LLM layer is the bridge. When a consumer tells ChatGPT, Claude, Perplexity, or Gemini that they need winter boots, they're forming intent in natural language. The LLM interprets that intent, translates it into structured queries, and hands it off to an agent. This is where human discovery ends and agent discovery begins. The handoff is the most important architectural seam in the new commerce stack, and it's the least well-defined.

Human discovery still matters, but its function changes. Marketing, SEO, personalization, social commerce, and ads all target the human before they reach the LLM. Instagram shopping, influencer content, and brand storytelling still drive intent formation. But once that intent crosses into the LLM layer, the merchant loses control. The agent takes over, queries structured product APIs, evaluates price and offer feeds, negotiates with merchant agents, and either counter-offers or commits. Discovery has shifted from pull to push: search is dying as the primary interface, and agents now monitor preferences continuously and surface options proactively.

Whoever owns the agent owns the top of funnel. The new gatekeeper is an LLM with entirely different ranking logic and no established playbook for winning placement. Perplexity, Google, and OpenAI have all announced agentic shopping experiences in partnership with the likes of PayPal and Stripe to power payments, and with marketplaces for access to multiple merchants at once.

The post-purchase phase is where the human-agent collaboration is most nuanced. Agents can and will co-pilot logistics (optimizing carrier selection, tracking shipments, flagging delays), facilitate returns (auto-generating labels, routing refunds to the highest-yield account), and even assist with dispute resolution. And as we argue elsewhere in this piece, loyalty is shifting decisively toward agents: when an agent controls payment routing, loyalty becomes a machine-readable variable in an optimization function, not an emotional relationship. What remains human is the final authority, the consumer who approves a chargeback, decides whether to keep or return, and ultimately judges whether the experience earned repeat business.

The implication is structural: the commerce stack is no longer a linear funnel that one actor traverses. It's a relay race between humans and agents, with the LLM layer as the baton exchange. The companies that build the handoff infrastructure, the translation layer between human intent and agent execution, will own the most valuable real estate in the new stack.


Time is money

Same task: pick three high-consideration wardrobe staples. One side browses like a human. The other queries an API. Watch every painful micro-step on the left while the right side finishes in seconds.


Membership had its privileges

Today, the battle for top-of-wallet is fought through loyalty. Chase, Capital One, and Amex all aim to own the wallet by having a consumer-facing shopping portal. These platforms aim to target a human who sees a badge, feels a nudge, and picks their card based on emotional affinity of scoring a deal and the dopamine of point accumulation.

However, when an agent controls the workflow, including payment routing, the entire incentive structure inverts. The agent doesn't care about your brand. It has no card affinity. It optimizes for the principal's utility function: lowest effective cost, best rewards yield, fastest fulfillment. Loyalty becomes a machine-readable parameter in an optimization function, not an emotional relationship. Your five-star badge is just a UI component.

Soon, the battle for top-of-wallet will play out across four fronts:

Top of Wallet
Previously: whoever you showed at checkout.

Fintechs and FI payment businesses are converging on each other as Chase offers BNPL on top of credit cards and Affirm offers credit cards on top of BNPL. There is no longer a clear preference driving consumers’ choices.

What this looks like
Chase launched Chase Pay Over Time in 2023, letting cardholders split any purchase into BNPL installments. In the same window, Affirm launched the Affirm Card, a debit card with post-purchase financing and revolving credit behavior. The card issuer and the BNPL lender are now the same product, competing on the same transaction, from opposite directions.

Agents can control the entire checkout workflow, including what payment method to use, presenting a deep structural threat to FIs’ wallet position.

What this looks like
An agent buying a $420 international flight evaluates four options in 80ms: Amex Platinum (5× points on airfare, ~$21 value), Chase Sapphire Reserve (3× points + access to the $300 travel credit), a 2% cashback card, and a debit card with no FX fee. It picks the net-best option for this specific transaction, not the one with the loudest brand. The physical card in the wallet is irrelevant.

Existing shopping portals like Chase Travel, Capital One Shopping, and Amex Offers may evolve into full agent deployments that ensure card prioritization by owning the discovery experience.

What this looks like
Chase Travel is already a multi-billion-dollar booking portal where Chase locks in reward multipliers when you book inside it. The next move is a full Chase-branded shopping agent: when a cardholder asks their LLM for a flight or a laptop, the agent routes the query through Chase’s inventory first, quietly preserving card placement by owning discovery. Capital One Shopping and Amex Offers are already halfway there.

As the consumer gets further from the transaction lifecycle, traditional loyalty may become obsolete, forcing FIs to partner directly with merchants and AI platforms to stay in the routing decision.

What this looks like
Today, a 5× dining category bonus works because the human remembers to pull out the right card. An agent doesn’t forget, but it also doesn’t care about the card’s branding. The future of loyalty may look less like general-purpose rewards and more like embedded, transaction-specific deals: “Amazon × Chase: 6% back, agent-activated at checkout.” The issuer pays for placement at the transaction layer, not for slot-in-wallet.

This extends to advertising, the battle for human attention to drive the top of the funnel is more important than ever. Today, ads work because they capture human attention across display ads, sponsored listings, influencer content, and remarketing. Agents don't have attention to capture. The human-facing half of advertising, influencer marketing, brand storytelling, social commerce, still drives intent formation in the discovery phase and keeps working. But the downstream conversion infrastructure, the part that turns attention into transactions, moves to protocols. On the agent side, merchants compete not by buying impressions but by offering better terms: lower prices, higher commission to the agent's principal, better return policies, faster shipping. The "ad" for an agent becomes a machine-readable offer with a bid attached, and the companies that build the agent-facing equivalents, structured offer feeds, machine-readable loyalty APIs, and programmatic payment routing, will own the next era of commercial infrastructure.

The existential question for FIs: If agents are selecting the payment method, and agents optimize on math rather than emotion, does top of wallet survive at all? Loyalty programs of the future look less like points accumulation and more like two distinct models: exclusive storefronts (FIs deploy their own shopping agents with proprietary inventory); and dynamic programming (consumer agents approach merchant agents with intent to buy, merchants respond with hyper-personalized offers, and the best bid wins the GMV).

The art of the deal

Configure a procurement agent and a vendor agent, then watch them negotiate a SaaS contract. No sales decks, no pricing calls, no multi-week back-and-forth.


Trust but verify

For agents to participate in commerce at scale, they need to authenticate, carry reputation, hold payment credentials, and act within delegated authority. This is the connective tissue across the entire agentic commerce stack, and it's the hardest part to build.

Today, identity in commerce is fragmented and human-centric: usernames, passwords, session cookies, 2FA codes sent to phones. None of this works for software. An agent needs a portable identity object, something like a DID (decentralized identifier) combined with a delegation framework that specifies exactly what the agent can and cannot do on behalf of its principal.

The directive includes: spending limits (per-transaction and cumulative), category restrictions, merchant whitelists, payment method preferences, negotiation boundaries, and time-based expiration. Get identity wrong and you get either paralyzed agents (too restrictive) or rogue agents (too permissive). The infrastructure for this doesn't exist yet.

This is also where the fraud problem rewires. Today, fraud is about stolen card numbers and identity theft. In an agentic world, fraud is about compromised agent credentials, unauthorized delegation, and impersonation of legitimate agents. The Know Your Agent (KYA) problem is real: new fraud and risk systems are required to identify agentic fraud and bad actors, evaluating human vs. agent intentionality rather than just behavioral patterns. Fraud detection needs to shift from behavioral analysis of human purchasing patterns to credential verification and authority chain validation. The companies that build this trust layer will sit at the center of agentic commerce.


What's in your wallet?

An agent needs an identity but not a username and password. Instead, it needs a credential object that carries delegated authority, spending limits, and reputation. Toggle permissions and watch which transactions become possible.


Follow the money

Every participant in commerce is about to get a new job description. Merchants, payment providers, consumers, and LLMs each sit somewhere different in the value chain once agents take the middle, and each one is going to be paid, compensated, or squeezed differently than they were when the buyer was a browser.

For merchants, the transition is an additive burden, not a substitution. The old playbook doesn't go away, humans still form intent before the LLM layer picks it up, which means ads, brand storytelling, SEO, and conversion optimization still matter for staying in the consideration set. But now merchants have a second job which is to build an entirely new layer on top: structured product catalogs, machine-readable pricing APIs, agent identity integrations, programmatic checkout. The brand work feeds the intent funnel; the agent infrastructure captures the transaction. Skip the first and you never enter the agent's query. Skip the second and you get routed around even when you're the best fit. Merchants who treat agent-readiness as a Phase 2 project will discover the transaction was already done by the time they got there. Merchant moat will come from the compounding effect of data infrastructure plus brand equity, but the cost of funding both on the same top line, in a market where LLM intermediaries keep extracting a bigger cut of the value chain, is where merchants may struggle.

For payment providers and FIs, the threat is disintermediation. Today, top-of-wallet is won through emotional affinity, card design, loyalty programs, and checkout placement. When an agent selects the payment method, it evaluates every available card in milliseconds and picks whichever one nets the most value per dollar after rewards, fees, and settlement speed. Card networks and issuers need to compete on agent-readable terms, including programmatic reward rates, real-time authorization APIs, dynamic incentive structures that agents can evaluate in milliseconds. The FIs that embed themselves into the agent's decision function survive. Those that depend on human habit face a slow death.

Amex has led the charge. In April 2026, American Express launched its Agentic Commerce Experiences (ACE) developer kit along with Amex Agent Purchase Protection, the first major issuer pledge to cover losses when a registered AI agent makes an erroneous purchase. The closed-loop network, where Amex is simultaneously the issuer, the network, and the acquirer, lets them do what no intermediated payment network can: register agents, verify intent, pass tokenized credentials, see full cart context, adjudicate disputes, and stand behind the entire transaction with capital. They brought the partners that matter from day one: Delta, Expedia, and Hilton on the merchant side; Adyen, Fiserv, Stripe, and PayPal on the payments side. The moat isn't logistics, it's the vertical integration of the money itself. When the biggest unsolved problem in agentic commerce is who is liable when the agent gets it wrong, the network that already underwrites its cardholders' purchases is structurally the default trusted counterparty. Amex has always offered a premium experience for a premium price; in an agentic world, that posture stops being a marketing promise and becomes the technical spec.

For consumers, the promise is leverage. An agent negotiating on your behalf across ten merchant APIs simultaneously is a fundamentally better buyer than a human browsing alone. Prices come down, comparison quality goes up, and the time cost of shopping collapses. But the trade-off is control. Consumers delegate purchasing authority to software they don't fully understand, mediated by LLMs whose incentive structures are opaque. The principal-agent problem is real: does the agent optimize for the consumer's utility function or for the LLM platform's revenue model?

For the LLMs, OpenAI, Anthropic, Google, Perplexity, the opportunity is to become the new access point and distribution layer. They sit at the handoff point between human intent and agent execution. They interpret natural language queries into structured commerce actions. They are the new gatekeepers, and their business model will likely include some combination of referral fees, merchant placement premiums, and consumer subscription revenue. This is the Google AdWords moment for AI: whoever controls the translation layer between "I need winter boots" and "POST /api/v1/cart/commit" captures the most valuable position in the new stack.

The business model question: In human commerce, merchants paid for attention (ads) and consumers paid for products. In agentic commerce, merchants pay for agent accessibility (API infrastructure, structured data), LLMs capture the mediation layer (referral fees, placement), payment providers compete on programmatic terms, and consumers pay for agent capability. The value chain doesn't just shift, it inverts.

Prime real estate

Mobile wasn't just a new screen. It was a new channel that restructured everything behind it: payments (Apple Pay, tap-to-pay), the experience of logistics (real-time tracking, push notifications, same-day as the default expectation), marketing (app-install ads, location-aware offers), and identity (biometric auth). The delivery networks mostly already existed; mobile made them more accessible and increased the demand for an instant experience. Every layer of commerce infrastructure was rebuilt for mobile because the human's relationship to the transaction changed: from episodic desktop sessions to a persistent, embodied, always-on presence that could track a package from a pocket, pay with a thumbprint, and act on an offer wherever it reached them.

Agentic commerce requires active supply-side participation: structured product APIs, machine-readable pricing, agent identity integrations, programmatic checkout, agent-accessible offer feeds, real-time inventory. Without merchant and marketplace buy-in, agents have nothing to query, so the supply side has to opt in, and marketplaces are best positioned to be first movers, providing access to aggregated, real-time inventory. Marketplaces have the largest inventory sets, and partnering with LLMs is the clear path for those that haven't built much aside from inventory aggregation. There are three types of marketplaces that survive the new world.

Not all marketplaces land the same way. The ones with structural edges beyond discovery survive the shift. Let's talk about Amazon, where we have the clearest example, and the moat cuts both ways. For consumers: its logistics network (same-day/next-day delivery that no one can replicate), Prime membership (subscription lock-in bundling video, music, grocery, and free shipping), and catalog breadth mean an agent might find a better price on a merchant API elsewhere, but the bundled value proposition wins when the consumer's utility function weights delivery speed and return ease. For sellers: FBA hands them the infrastructure an agent prioritizes, fastest shipping, cheapest returns, verified inventory, which means FBA listings structurally win agent-mediated queries even when the seller hasn't lifted a finger on agent-readiness themselves. The algorithm running Amazon's Buy Box has had the mechanism of agentic selection for the last 20 years; sellers who optimized for it (best pricing, fastest to fulfill, high customer satisfaction) are already optimized for the LLM-routed query.

Everyone else can't wait. For the long tail of merchants, D2C brands, and marketplaces, the moment to join the agentic revolution is now. Perplexity, Google, and OpenAI have all launched LLM-native shopping assistants, which are already evolving into their next form. In March 2026, OpenAI sunset its Instant Checkout feature, which had tried to own the full transaction inside ChatGPT. It didn't work: only about twelve Shopify merchants ever went live, and users consistently preferred to finish checkout on the retailer's own site. A specific architecture failed, the one where the LLM tried to be both the pipe and the toll booth. But the pivot is the point. OpenAI didn't retreat from commerce; it concentrated on discovery and redirected transactions to retailer-owned surfaces. Target, Sephora, Nordstrom, Lowe's, Best Buy, The Home Depot, and Wayfair are now integrated through OpenAI's Agentic Commerce Protocol, co-developed with Stripe. The merchants that aren't indexed by these systems within the next 12–18 months won't be indexed at all, because agents don't browse. They query, and if you're not in the structured data layer, you don't exist.

The new infrastructure map has five clear segments.

01 / 05
Merchant Enablement
Infrastructure that lets merchants index and enrich their inventory and launch first-party agents on their own assets.
The wedge
Most merchants have product data scattered across Shopify, PIMs, ERPs, and spreadsheets. Before an agent can query a merchant, someone has to unify it into a schema the agent can actually consume. Whoever normalizes the long tail of SKU data owns the on-ramp.
02 / 05
FI Infrastructure
Platforms that help financial institutions compete with browsers to own the user experience, the way travel portals do today.
The wedge
Giving issuers their own first-party shopping agent, Chase Travel but AI-native. Owning the query surface before a generic LLM gets to the user is the only way to preserve card-level top of wallet.
03 / 05
Data & Analytics
Analytics on agentic activity: engagement, cart completion, and ROI on generative engine optimization.
The wedge
Generative engine optimization (GEO) measurement: which LLMs surface your SKUs, in which queries, at what rank. Nobody owns the agent-side equivalent of Google Search Console yet.
04 / 05
Permissioning & Risk
Agentic commerce enables automated fraud at scale. An entirely new suite of security primitives will be required.
The wedge
Know Your Agent (KYA): verifying the agent, the delegation chain, and the authority scope at transaction time. Fraud models trained on human behavior miss everything an agent does.
05 / 05
Situational Commerce
Developer tools to build new storefront experiences with agent-first discovery and checkout.
The wedge
Checkout primitives for headless, agent-first experiences: API endpoints for quote, commit, and fulfill that don't assume a cart or session. Shopify's Hydrogen was for headless humans; this is for headless agents.

The order of automations

Not all commerce verticals will adopt agentic infrastructure at the same pace. The sequence depends on data readiness, purchase frequency, stakes of getting it wrong, and where the energy is today.

WAVE 1
Active investment & deployment
Commodity Replenishment Household Goods
Wave 1 is already shipping in consumer replenishment. Amazon Subscribe & Save, Walmart+, and Instacart have been running quasi-agentic reordering for years, commodity SKUs and household staples where repeat intent is stable and the agent value is obvious.
WAVE 2
Infrastructure building
B2B Procurement Fashion Consumer Electronics Travel Beauty & Personal Care
Agents handle discovery but the rails aren't ready. B2B procurement has structured catalogs and system-as-buyer workflows, but enterprise buying cycles and approval chains slow deployment. Fashion and electronics need richer product schemas and keep humans in the final-review loop for fit and consideration. Travel and beauty wait on agent identity, delegated booking authority, and the brand affinity that slows adoption even when the economics fit.
WAVE 3
Data infrastructure required
Auto Parts Home & Furniture Luxury Goods
High agent value-add but the structured data infrastructure needs to be built first. Auto parts have VIN lookups but fragmented catalogs. Furniture and luxury are high-ticket, infrequent, and visual, requiring richer product schemas.
WAVE 4
Regulatory & trust barriers
Insurance Healthcare Financial Products Real Estate
High stakes, heavy regulation, and human consent requirements. Agents may co-pilot comparison and research, but the transaction itself will require human authorization loops for the foreseeable future.

What we're looking for

The playbook for agentic commerce isn't written yet. The protocols for how agents authenticate, negotiate, and transact are just being formed. The trust frameworks for delegated purchasing authority are still theoretical. The data infrastructure that lets a merchant serve both a human browsing on their phone and an agent querying via API is being built in real time. Every layer we've described in this piece, from structured product schemas to agent identity to programmatic payment routing to the LLM handoff layer, represents an infrastructure gap that needs to be filled.

This is not a single-product opportunity. It's a full stack rebuild. The merchant enablement layer, the FI infrastructure layer, the permissioning and fraud layer, the analytics layer, the developer tooling layer: each one needs its own defining company. Unlike mobile commerce, which evolved over a decade, agentic commerce is being pulled forward by LLM platforms that are already shipping features to hundreds of millions of users. The distribution is moving faster than the infrastructure, the moment to participate is now.

What we have today is an acute cold-start problem. Merchants won't build agent-ready infrastructure until agent-mediated demand materializes; agent-mediated demand won't materialize until merchants are agent-ready. The platforms that break this deadlock are the ones that own the full stack, end to end: the model, the marketplace, the payment rails, the logistics. Alibaba's Qwen is already running full agentic commerce at scale because Alibaba owns every layer. Amazon's Rufus is building the same model on top of FBA and Prime. End-to-end players bootstrap the category because they don't need other players to participate. They generate their own demand, provide their own supply, and prove the behavior is real.

Commerce has always been won by the same three things: convenience, experience, and value. Convenience moves from one-click to zero-click. Experience moves from browse-to-buy to describe-to-buy. Value gets optimized mathematically by an agent that doesn't forget the better coupon or the faster shipping option. The winners are the companies that can deliver all three, which is exactly what end-to-end players do by construction and what infrastructure players enable for everyone else.

If you're laying the foundations for agentic commerce, we want to talk.