Thinks 1986

WSJ: “In the beginning, chatbots spewed answers in a stream of not-quite-consciousness. Now, unless we ask a very simple question, the AI chatbot performs a “chain of thought”: The AI has a conversation with itself to arrive at a suitable answer. Some bots go further, by asking a different AI model—usually, variants of themselves—to gut-check an answer.”

FT: “Maybe official statistics have little value? That was the radical view of Sir John Cowperthwaite, who was the financial secretary of Hong Kong throughout the 1960s, when it was a rapidly growing, laissez-faire British colony. Cowperthwaite thought the value of official statistics wasn’t merely minimal, but negative: he told the economist Milton Friedman that he didn’t collect economic data, because it would only encourage the Whitehall variety of mandarin to interfere. In context, Cowperthwaite’s position was understandable: few economies were more at risk of clumsy meddling than Hong Kong, a colonial possession pursuing a libertarian path on the opposite side of the world from soft-left imperial rulers. Still, there are at least two weaknesses in his argument. The first is the hope that ignorance might restrain the interventionist impulses of governments. It might simply make those interventionist impulses clumsier. The second is the unexamined premise that only a government might find official statistics useful.”

Bloomberg: “[Andy] Jassy understands the importance of starting experiments that are more visible than abstract AI algorithms, chips in data centers or satellites way up in space. The company is building a 225,000-square-foot facility outside Chicago, a combination superstore and warehouse, where it will blend robotics and AI to sell general merchandise, groceries and prepared food, according to permitting documents and people familiar with the plans. It’s classic Amazon: The company has failed repeatedly at developing new store formats and is way behind rivals like Walmart in the business of selling fresh food. None of that matters. Jassy says the company will simply keep trying new things until something sticks. “We’re doing an ungodly amount of invention right now,” he says. “And I think that will be true for as long as I can foresee in the future. It’s just part of our DNA.””

Ben Thompson: “Cerebras makes something completely different. While a silicon wafer has a diameter of 300mm, the “reticle limit” — the maximum area that a lithography tool can expose on that wafer — is around 26mm x 33mm. This is the effective size limit for chips; going beyond that entails linking two separate chips together over a chip-to-chip interposer, which is exactly what Nvidia has done with the B200. Cerebras, on the other hand, has invented a way to lay down wiring across the so-called “scribe lines” that are the boundary between reticle exposures, making the entire wafer into a single chip with no need for relatively slow chip-to-chip linkages. The net result is a chip with a lot of compute and a lot of SRAM that is blisteringly fast to access. To put it in numbers, the WSE-3 (Cerebras’ latest chip) has 44GB of on-chip SRAM at 21 PB/s of bandwidth; an H100 has 80GB of HBM at 3.35 TB/s. In other words, the WSE-3 has just over half the memory of an H100, but 6,000 times the memory bandwidth. The reason to compare the WSE-3 to an H100 is that the H100 is the chip most used for inference — and inference is clearly what Cerebras is most well-suited for.”

A Tax-onomy of Transactions and the Road to Alpha (Part 8)

The Seven Alpha Plays – 3

Play 6 — Shift Repeat Adtech to Owned Repeat. From Repeat Direct Adtech to Repeat Direct CRM or Organic. Primary lever: Tax. NEVER served: Never Pay Twice.

This is the most visible pay-twice play and the one a CFO actually understands. Repeat Direct Adtech is the red-flag bucket from Part 3. The brand already knows the customer. The customer has bought before. Yet the transaction was generated through paid media. The dashboard celebrates ROAS; Revenue Tax accounting sees leakage. The goal is not to eliminate all repeat paid media overnight — some retargeting may remain useful for genuinely lapsed customers the owned channels cannot reach. The goal is to identify how much of Repeat Direct Adtech could have been prevented by better owned-channel attention, better timing, and earlier intervention — and then to actually prevent it.

The “actually prevent it” is where the play lives. Knowing the leakage size is diagnosis; closing the leakage is execution. Two mechanisms make the shift possible, and neither is the standard CRM playbook of the last decade.

The first mechanism is CRM 2.0 — Agentic Marketing. Standard CRM runs on rules and segments: if customer falls in cohort X, send template Y on day Z. It is calendar-driven, batch-and-blast at best, and segmented-flow at its most sophisticated. CRM 2.0 replaces the rule engine with multiple agents working with a decisioning agent. Functional agents handle the specialised work — content generation, audience analysis, deliverability monitoring, channel selection, outcome attribution. The decisioning agent orchestrates their outputs into the per-customer call: what the next-best-action is, given that customer’s TAT cell, attention trajectory, transaction history, and current need-state. The decisioning agent does in software what a brilliant relationship manager would do across a customer base of millions: hold a B– customer in utility content rather than push them another offer; suppress a B customer who is currently transacting from the next promotional wave; trigger a recovery sequence on an R1 customer the moment a re-engagement signal appears. The agent is the difference between batch campaigns and per-customer marketing operations. It is what makes the shift from Adtech to CRM operationally feasible at scale, because the agent does in software what manual segmentation cannot: it makes the right decision on the right customer at the right moment, every day, without human triage. In doing so, CRM 2.0 reduces Route Tax (less Adtech) and Offer Tax (less discount dependency) simultaneously. Repeat Direct Adtech is the bill the brand pays for the decisions CRM 2.0 makes for free.

The second mechanism is Channels 2.0. Adtech wins repeat transactions partly because owned channels deteriorate faster than brands realise. Email deliverability decays. WhatsApp opt-in degrades. Push notifications get muted. App engagement drops. By the time the CRM team notices, the channel has lost reach, and the only way to reach the customer is paid media. Channels 2.0 is the discipline of treating owned channels as living infrastructure, not static configuration. It means actively maintaining deliverability across mailbox providers, rotating sending domains before reputation degrades, segmenting WhatsApp opt-in flows to preserve quality, deploying NeoMails as a primary attention surface that earns daily engagement, and instrumenting Real Reach as a first-class metric — the 90-day engaged base as a percentage of total list size. A brand with healthy Channels 2.0 has owned reach. A brand without it has a list it cannot use, which is the same thing as not having a list at all. CRM 2.0 makes the decisions; Channels 2.0 ensures the decisions actually land.

Together they close the loop. A large Repeat Direct Adtech bucket is almost always the downstream consequence of a large B–, T–, R1, or R2 pool the brand missed three months earlier — which itself is almost always the downstream consequence of CRM 1.0 making the wrong decisions through Channels 1.0 that no longer reach the customer. Play 6 is the play that converts that two-stage failure into a two-stage fix. The Alpha is measurable in two ways: the immediate margin improvement from shifting paid repeat revenue to owned (10–20% of Repeat Direct Adtech is the typical recoverable share in a first pilot), and the compounding decay-prevention that comes from healthier owned channels (Weakening Pool stops growing, R1 stops being created at the same rate, the future cost of Adtech reacquisition falls).

The CFO sees the immediate gain; the CMO sees the compounding one. Play 6 is the play where they agree on what they are watching.

Thinks 1985

Mint on India’s mutual fund Rs 74 trillion crore industry: “Monthly SIP inflows, which stood at ₹8,055 crore in 2019, have swelled to ₹32,087 crore as of March 2026. The number of folios has expanded from 82 million to 270 million during the same period, underscoring the depth and breadth of this retail wave. The investor boom has naturally been mirrored on the supply side. The number of asset management companies (AMCs) has crossed the 50 mark, up from 42 in 2019 with 11 more licences in the pipeline, intensifying competition in an already crowded field.”

WSJ: “Rhodium reports that once Chinese firms reach technological parity with their competitors, they take market share at breathtaking speed. The result: In 2016, Rhodium estimates, China controlled more than 50% of export volumes in 163 industries (using an international classification system). By 2024, that had risen to 315. China’s massive trade surpluses are often attributed to chronically weak domestic demand. Yet China can create demand when it wants. To nurture its drone industry, Beijing encourages numerous sectors, including agriculture, local government and tourism, to integrate drones, “complemented by public investment in enabling infrastructure, including the use of local government special bonds,” Rhodium writes.”

Deirdre McCloskey: “An equality of outcome, the brain surgeon paid at the finish line, or the tenth mile, the same as the street sweeper, certainly comports with an equality of souls…. But unfortunately in large groups the ignoring of a person’s marginal work product, and making payments according to the noble belief in the equality of human worth – in which all us monotheists and modern liberals do, I affirm yet again, fervently believe – does not work. Through gross misallocation in the short run, and the collapse of spurs to innovation in the long, such an enforced equality of outcome leads in a large group to a dismal equality of poverty, and then to tyranny. Such attempts fail every time at large scale, even when they are kindly and sincere and gentle.” [via CafeHayek]

NYTimes on Ukraine’s 35-year-old defense minister: “The future of warfare is being written in Ukraine, and Mr. [Mykhailo] Fedorov, a technology evangelist who is four months into his job, is one of its authors. In the same way that apps remade taxi services and food delivery, Mr. Fedorov believes that warfare is ripe for disruption. That, he says, means offloading the fighting as much as possible onto machines — including, someday, those that can make lethal decisions on their own. “The world needs security, and only autonomous weapons can ensure it,” Mr. Fedorov said in an interview in his office at the Ministry of Defense. “Autonomous weapons are the new nuclear weapons. Countries that possess them will be protected.””

A Tax-onomy of Transactions and the Road to Alpha (Part 7)

The Seven Alpha Plays – 2

Play 3 — Accelerate Test to Best. From T or T– to B. Primary lever: Time. NEVER served: Never Lose Customers.

The first purchase is not the victory. The second purchase is the proof. A one-time buyer is still only a hypothesis — evidence of interest, not yet of habit. The most important early-lifecycle task is to move One to Two, and then Two to habit. This is where many D2C brands leak LTV: they celebrate the first transaction and hand the customer to generic promotional flows. T customers can be guided through replenishment, onboarding, product education, category expansion, and reminders. T– customers need relationship repair before a transaction push. A faster second transaction changes LTV, CAC payback, and future channel mix. The Alpha is not just the next order — it is shortening the time it takes for the customer to become a repeat customer.

Play 4 — Protect Best from Becoming Rest. From B– to B. Primary lever: Time and Tax. NEVER served: Never Lose Customers.

This is the highest-ROI play in the entire system. A B– customer is still valuable. They may still appear healthy in a transaction dashboard, still sit in a “loyal” or “VIP” segment. But attention has begun to weaken. The cost of holding a B– is a fraction of the cost of recovering an R1 once they have already drifted. The wrong move is more pressure. Best customers often do not need another discount — they need recognition, memory, service, access, relevance, and sometimes restraint. Sometimes the right action is not to send. Sometimes it is a personal note. Sometimes it is a NeoMail that restores attention without making a transaction demand. This is Meridian territory: the economics justify deeper intelligence because losing a Best customer creates the largest future reacquisition bill. Holding them before they become R1 is Alpha at its cleanest.

Play 5 — Recover Rest Before Adtech. From R1 / R2 to B– / T– via Atrium, then to B / T via Meridian. Primary lever: Tax. NEVER served: Never Pay Twice.

R1 and R2 are both Rest, but they are not equal. R1 customers were once Best — they have transaction depth, proven value, and their recovery deserves priority. R2 customers bought once or twice and then lost attention — they may be worth recovering, but the economics must be more disciplined. Most brands treat dormancy as one bucket. That is expensive. R1 deserves richer recovery; R2 may need low-cost attention rebuilding or selective suppression; Lost Leads deserve even less investment.

One mechanical point matters for the dashboard. Recovery is a two-step move, not a one-step move. The first step is Atrium’s work: restore attention. A recovered R1 returns to B–, not to B — attention has been rebuilt, but the transaction has not. Likewise, R2 returns to T–. The customer is reachable again on owned channels, but the relationship has not yet re-proven itself economically. The second step is Meridian’s work: convert that restored attention into a transaction on an owned route. When that transaction lands, B– graduates to B; T– graduates to T. Atrium recovers attention. Meridian recovers the transaction. The two engines do different jobs and the dashboard should count them separately — otherwise the brand books Alpha on attention alone, which is potential Alpha, not realised Alpha. The transaction count is durable. The column is what moves under recovery — first under Atrium, then under Meridian.

NeoMails create soft re-entry. NeoNet recovers through cooperative attention. ActionAds monetise attention when an immediate purchase is not the right ask. The Alpha is the tax avoided: every R1 recovered through NeoMarketing instead of paid media saves the 5–10 point spread between the recovery rung and the adtech rung — multiplied by the customer’s future LTV.

Thinks 1984

NYTimes: “The 21st-century tech industry has accomplished a lot of cool things, but among the most remarkable may be a trick of language: It managed to make the word “smart” feel repulsive and the word “dumb” sound appealing… The smart things are paining us. The dumb ones are blessedly quiet — which, at this point, can feel like the more intelligent option.”

Bloomberg: “A brain-computer interface, or BCI, connects the brain directly to an electronic device, such as a computer, bypassing the rest of the body. The interface is designed to detect brain activity — for example, the electrical signals generated by neurons — and translate it into commands that can control machines. BCIs offer hope to people who’ve suffered damage to the nerves between their brain and various muscles. The interfaces could help them communicate if they’re unable to speak, or allow them to use their minds to control external devices if they’re paralyzed. This could improve the quality of life for stroke patients and individuals with debilitating neurological conditions such as amyotrophic lateral sclerosis (better known as ALS or Lou Gehrig’s disease). BCIs can also stimulate the brain with information from the outside world. This could allow people with vision loss to see or those with hearing loss to hear.”

WSJ: “Data centers on the ground feature racks of servers in cavernous, temperature-controlled buildings. Orbital data centers will feature swarms of satellites laden with AI chips. They will need solar arrays to produce electricity to run the AI computing systems. The satellites are expected to fly in an orbit that roughly travels over Earth’s poles to maximize their exposure to sunlight.”

Arnold Kling: “The future should not be accessing a bank web site and looking at menus. The future should be that I can say what kind of transaction I want, and the bank software either tells me that it is not feasible or walks me through how to get it done. The future should not be looking at an airline’s web site to find a flight. The future should be that I can say where I am going and when I would like to go. Relevant airlines respond with proposals for flight times, prices, and terms. The future should not be professors trying to figure out “courseware.” The future should be that the university has data that connects students/courses/professors and you can get at that data through an English-language query.”

A Tax-onomy of Transactions and the Road to Alpha (Part 6)

The Seven Alpha Plays – 1

The framework now has all the pieces. The Revenue Tax Ladder shows where each transaction sits by cost. The seven buckets show whether revenue is being bought, owned, reacquired, or surrendered. The TAT shows where each customer sits by depth and attention. The missing rung supplies the recovery layer between CRM and Adtech.

What remains is action. Alpha is not created by analysis. It is created by movement.

There are only two movements that matter. The first is moving transactions down the Revenue Tax Ladder — from Intermediated to Direct, from Adtech to CRM, from CRM to Organic. The second is moving customers in the right direction on the TAT — leftward from Lost to Weakening to Strong, and downward from Next to Test to Best. Every Alpha intervention is one of these movements.

Seven plays cover the field.

Play 1 — Capture Identity From Anonymous to Identified, on every surface. Primary lever: Tax. NEVER served: Never Pay Twice.

A sale without identity is a transaction without a future. Identity leaks from two surfaces, and most brands underestimate the first one.

The own-website leak. A Direct Anonymous visitor who buys without identifying is the most expensive customer the brand will ever acquire — the brand paid the acquisition cost, owned the traffic, controlled the surface, and still walked away without an identity. Every future transaction with that person will have to be paid for again, because the brand has no way to reach them. This is the silent leak in the Tax-onomy: the customer landed on the brand’s own site, transacted, and the brand has no email, no phone, no name. The CRM Ladder cannot operate on someone the brand cannot address. Fixing this is mechanical, not aspirational — value exchanges before checkout (size guides, ingredient explainers, founder notes, early access, free samples), soft-gated content, identity-required loyalty membership, account-creation incentives at checkout, post-purchase warranty or replenishment registration. The principle: no transaction on the brand’s own surface should complete without an identity attached.

The intermediated leak. Marketplaces and quick-commerce platforms — Amazon, Flipkart, Nykaa, Blinkit, Zepto — are not bad. They create discovery, convenience, and immediacy. But if the brand never captures identity from those transactions, every future purchase with the same person remains platform-taxed. A customer who buys the product three times on Blinkit is a loyal user of the product, but not yet a customer of the brand. The mechanisms here are different from the own-website ones because the brand does not own the surface: QR codes on packaging, warranty registration, replenishment reminders, recipe clubs, care guides, member benefits, Mu offers, NeoMail subscriptions, community access. The brand has one moment — the physical product in the customer’s hands — to convert a platform transaction into a direct identity. Most brands waste it.

Why Play 1 is the foundational play. Identity capture does not reduce the tax on the first sale. It reduces the tax on the second, third, and fourth. The leakage compounds in two directions: every Anonymous Direct buyer becomes a future Adtech retargeting line item; every Intermediated buyer becomes a future platform-tax line item. Identity capture is the only play that pays for itself across the entire future LTV of a customer. It is the precondition for every other Alpha play in the framework — Plays 4, 5, and 6 cannot operate on customers the brand cannot identify. That is why Play 1 sits first in the list. The numbering is not arbitrary.

Play 2 — Convert Next to Test. From N or N– to T. Primary lever: Time. NEVER served: Never Lose Customers.

N customers have attention but no transaction. They have raised their hand — opened, browsed, clicked, installed, subscribed, or engaged. The job is to convert without defaulting immediately to paid media or heavy discounting. N– customers are more fragile: attention is weakening before they have bought. This is where most brands panic and increase promotional pressure. That may work for some, but it often accelerates fatigue. The better move is to create belief, trust, and usefulness before the conversion ask. For N, Sell may work. For N–, Relate may be needed first. The Alpha is in reducing the time from identity to first transaction while keeping the effective tax below New Direct Adtech.

Thinks 1983

WSJ: “As artificial intelligence makes life frictionless, we risk removing the very frictions that keep human beings healthy: effort, challenge, learning and forward motion. The next public-health crisis may be stagnation, not stress. The fix isn’t another pleasure. It’s progression. Progression is not simply about moving forward; nor is it about constant achievement or relentless productivity. It is about adaptation: the way a muscle grows stronger when challenged, or a mind becomes more flexible when it explores.”

Lindy Elkins-Tanton: “Metacognition refers to thinking about thinking: What’s your knowledge of your own thinking process? Metacognition involves planning, assessing, monitoring, strategizing, and evaluating. It sits above you, looks at you, and says, “How am I doing?” Every day, we all walk down familiar mental paths or processes that we’ve done over and over. Applying metacognition to these well-worn paths, thinking about how and why we do them the way we do, and how they can be better, is the way to constantly self-improve.”

Mint: “The more useful task, for scholars and policymakers, is to pay attention to entrepreneurial action: where it emerges, how it is enabled or blocked, and what it changes. If we can learn to recognize and support that action, the missing definition may not trouble us quite as much.”

SaaStr: “The companies that will win the next five years in B2B + AI are the ones still adding net new customers at a healthy clip. Ideally accelerating. That means the product is still compelling enough that people who have never used it before are choosing it over alternatives, including the new AI-native alternatives, and including doing nothing.”

A Tax-onomy of Transactions and the Road to Alpha (Part 5)

The Missing Rung — NeoMarketing as the Recovery Layer

Parts 2 and 3 ended with a question the framework had created but not yet answered. The Revenue Tax Ladder showed a 15-percentage-point cliff between CRM (5–10%) and Adtech (20–25%). The TAT in Part 4 surfaced the customers who fall into that cliff — the B– drifting toward R1, the T– drifting toward R2, the Lost-Lead pool that should never have been allowed to go dark. Two frameworks pointing at the same gap from different angles. Both implying the same conclusion.

The gap is not a market opportunity to be filled with better adtech. It is an engine missing from the brand’s marketing stack.

The current ladder reads:

Organic / Direct: 0–5% CRM / Owned channels: 5–10% Adtech: 20–25% Intermediated: 30–40%+

The brand has owned channels for customers who are still listening. The brand has paid channels for customers it has lost. What the brand does not have is a layer for the customers who are drifting but not yet lost — the middle column of the TAT, where attention is weakening but a relationship still exists. These customers cannot be reached through standard CRM because the very things CRM measures — opens, clicks, transactions — are starting to fail. They have not yet drifted far enough to justify the 20–25% adtech tax of treating them as a new prospect. They are in between, and the marketing stack has no in-between.

This is the rung the ladder is missing. A 10–15% recovery layer that operates on owned identity but uses different mechanics than standard CRM. A layer designed not to push transactions but to rebuild attention. A layer whose unit cost sits below paid media because it runs on the brand’s existing data and existing customer relationships, but above standard CRM because it does work standard CRM cannot do: it competes for the customer’s attention against everything else in the customer’s life, not just against the customer’s inbox.

Call this layer NeoMarketing.

With the missing rung inserted, the ladder now reads:

Organic / Direct: 0–5% CRM / Owned channels: 5–10% NeoMarketing Recovery: 10–15% Adtech: 20–25% Intermediated: 30–40%+

The exact percentage will vary by category and implementation. The point is not the number. The point is the existence of the rung. A brand that has only CRM and Adtech is forced to choose between cheap channels that no longer work and expensive channels that do. NeoMarketing changes the choice.

NeoMarketing is not a single product. It is the architecture that occupies the missing rung. It does for the B–, T–, R1, and R2 cells of the TAT what CRM does for the B, T, N cells — but with different mechanics suited to the different problem. CRM converts attention into transactions. NeoMarketing first restores attention, then hands the restored customer back to CRM to transact. The two layers are complementary, not competitive.

Four engines occupy the NeoMarketing rung, each addressing a different cell of the TAT.

Atrium — the attention recovery engine. Atrium operates on the right and middle columns of the TAT — the customers whose attention is weakening or lost. The unit of Atrium is not the campaign or the message; it is the daily attention episode. NeoMails are the primary surface — daily emails designed not to sell but to reward the act of opening, embedding interactive magnets (quizzes, polls, mini-games, predictions) that give the customer a reason to engage independent of any transaction. Atrium’s job is to restore attention to the weakening and lost cells — moving R1 back toward B–, R2 back toward T–, and holding B– and T– customers from drifting further rightward. Meridian then carries each restored customer the final step leftward when the next transaction lands on an owned route.

Meridian — the LTV maximisation engine. Meridian operates on the B cell — the brand’s most valuable customers who are still listening. Where Atrium rebuilds attention, Meridian deepens the value of attention that already exists. Meridian runs the personalisation, recommendation, velvet-rope, and premium-tier work that turns a strong-attention Best customer into a higher-LTV Best customer. It is the engine for Never Lose Customers — the doctrine that says holding a B from drifting into B– is cheaper than recovering an R1.

Atrium works where attention is scarce. Meridian works where value is high. Atrium asks: how do we make this customer listen again? Meridian asks: what is the next best decision for this specific valuable customer? Together, they cover the gap between CRM and Adtech.

NeoNet — the cooperative recovery and acquisition network. NeoNet operates across brand boundaries. When Brand A’s R1 customer is highly engaged with Brand B’s NeoMail, NeoNet allows Brand A to reach that customer through Brand B’s owned attention — deterministically, identity-matched, at a fraction of the cost of Google or Meta reacquisition. The same machinery acquires New customers for Brand A by surfacing them through Brand B’s audience without renting that audience from a platform. NeoNet replaces platform tax with cooperative surplus.

ActionAds — the monetisation layer that funds the rest. ActionAds are in-email ad slots that appear in NeoMails. They monetise the attention NeoMails earn from customers who are engaged but not transacting today — the Permanent Spectator population, the T- customers being held in a low-cost orbit, the B customer reading the daily email between purchases. ActionAds make the NeoMarketing rung structurally self-funding: the attention the brand earns from its own customers generates revenue from advertisers willing to pay for that attention. The economics close on themselves. The recovery layer pays for itself.

The four engines compose into a single operating logic. Atrium recovers attention. Meridian compounds it. NeoNet extends it across the network. ActionAds funds it.

The doctrinal shift is sharper than it first appears. Traditional CRM treats customers as campaign targets. NeoMarketing treats them as moving states on the TAT. Traditional CRM asks: what message should we send? NeoMarketing asks: what state is this customer in, and what action will move them leftward or downward on the TAT? Traditional CRM escalates from owned channels to paid media when CRM fails. NeoMarketing inserts a recovery layer before that escalation, so the cliff is no longer the only available route.

The framework Parts 2, 3, and 4 built is now complete. The Revenue Tax Ladder has five rungs, not four. The TAT has an answer for every cell, not just the easy ones. The cliff has been closed.

Without the rung, the brand can diagnose the cliff but not cross it. With the rung, Alpha becomes operational.

What remains is the playbook.

Thinks 1982

NYTimes: “There’s an ocean of distance between the “patient” that A.I. is analyzing and the patient that the human doctor or nurse is assessing. Navigating the gap is something writers also grapple with. When making a diagnosis, as it were, of good writing to publish in the literary journal I edit, I look for characters that are fully realized, with physicality that is palpable and an emotional complexity both visceral and vivid. These details aren’t always made explicit, but pieced together in hints and subtle cues. What I’ve realized over the years is this is not so different from what a doctor has to do when assessing her patient’s health. This is the inherent limitation of A.I. in medicine. It’s simply impossible — at least for now — for these tools to truly see the multidimensional patient.”

Donald Boudreaux: “Whenever economic change occurs, some particular workers lose jobs, and some particular locations lose business and population. Economic growth requires economic change and adjustment. It always has and always will. But the story of America is that ordinary people not only recover over time, but become wealthier. It’s an error to single out the freer trade of the past few decades as a unique source of economic change that justifies greater skepticism of globalization.”

Jack Clark: “I now believe we are living in the time that AI research will be end-to-end automated. If that happens, we will cross a Rubicon into a nearly-impossible-to-forecast future…The purpose of this essay is to enumerate why I think the takeoff towards fully automated AI R&D is happening. I’ll discuss some of the consequences of this, but mostly I expect to spend the majority of this essay discussing the evidence for this belief, and will spend most of 2026 working through the implications.”

McKinsey: “In time, AI will affect every industry, but it will not create value in the same way everywhere—or for everyone. The companies best positioned for this disruption will treat AI as a strategic inflection point. They will use productivity gains to stay in the game, innovation to expand and defend profit pools, and early, deliberate choices to shape emerging market structures and their role within them.”

A Tax-onomy of Transactions and the Road to Alpha (Part 4)

BRTN and the Transactions-Attention Table

Parts 2 and 3 mapped the Tax lever. Part 4 maps the Time lever.

The seven transaction buckets reveal where Tax is leaking. They show whether a brand is buying revenue, owning revenue, reacquiring revenue, or surrendering revenue to intermediaries. But Tax is only one half of Alpha. The other half is Time — the gap between one transaction and the next, the speed at which a customer climbs from Next to Test to Best, the rate at which Best customers drift silently into Rest. To see Time, the brand needs a different framework altogether — one that classifies customers, not transactions.

A customer relationship does not collapse in a single moment. It decays in stages. The customer does not wake up one morning and decide to leave the brand. They stop opening. Then they stop clicking. Then they stop visiting. Then the time since last transaction stretches. Only later does the brand notice the absence — usually when the customer has already drifted far enough that the only reliable way back is paid media at 20–25%, or worse, an Intermediated route at 30–40%+.

This is why Time between Transactions cannot be measured only by transactions. By the time the transaction gap becomes visible, the attention gap has already done the damage.

For four decades the working customer-state framework in retail and direct marketing has been RFM — Recency, Frequency, Monetary. When did this customer last buy? How often do they buy? How much do they spend? RFM was a remarkable framework for its era and still works as a basic diagnostic. But it has a structural blind spot that becomes more expensive every year: all three of its variables are transaction variables. Recency means transaction recency. Frequency means transaction frequency. Monetary means transaction value. RFM cannot see a customer who has stopped opening emails, stopped clicking on push notifications, stopped opening the app — until the transactions also stop.

A customer who bought three times and is still opening every week is not the same as a customer who bought three times but has ignored the brand for ninety days. Same purchase count. Different future. Same RFM score, perhaps. Opposite trajectory.

In a world where attention decays before transactions stop, RFM is a rear-view mirror.

BRTN: the four canonical states

The first refinement is to collapse RFM scoring into four states that match how a CMO actually thinks about the customer base.

Best are the brand’s most valuable customers — three or more transactions with current attention. They are the profit engine.

Rest are customers who once mattered but are now drifting or dormant. They are not dead. They are simply no longer paying attention to the brand’s owned channels.

Test are early buyers whose future value is still uncertain. They have bought once or twice, but the relationship has not yet become habit.

Next are the future customers — identified non-buyers and genuine new acquisitions waiting to be converted.

BRTN is powerful because it shifts the marketer’s question from “Who bought?” to “Who is still listening?” But BRTN by itself still carries the RFM blind spot in a softer form: it tells the brand where a customer currently is, not where they are about to go. To make BRTN operational, the CRM team needs a simple grid — the equivalent of RFM for an attention-first world.

The Transactions-Attention Table (TAT)

Call it the Transactions-Attention Table, or TAT.

The rows measure transaction depth. The columns measure attention recency. The critical point is that attention recency means days since last meaningful attention event, not days since last transaction. A meaningful attention event is an email open, click, magnet interaction, app open, push tap, WhatsApp response, product browse, or wishlist action — any signal that shows the customer is still reachable through owned channels.

Transactions ↓
Attention →
0–30 days
Strong
30–90 days
Weakening
90+ days
Lost
0 N N– L
1–2 T T– R2
3+ B B– R1

Nine cells. Each one a distinct managerial state with a distinct strategic prescription.

N — Next. Identified, no purchase yet, attention strong. The classic active lead. Convert.

N– — Weakening Next. Identified, no purchase, attention slipping. The brand still has a chance, but the strategy must shift. Another hard-sell campaign may accelerate the fade. This customer needs relevance, trust, utility — a reason to stay reachable before the lead goes cold.

L — Lost Lead. No purchase and no recent attention. This is not Rest. This person has never bought. Recovery investment should be low. Suppression, repermission, or low-cost attention rebuilding may be appropriate; heavy discounts and paid reacquisition rarely are.

T — Test. One or two purchases, strong attention. The acceleration cell. Drive the next transaction. This is where early-lifecycle marketing matters most — the second transaction is not just more revenue, it is evidence that the relationship may compound.

T– — Weakening Test. One or two purchases, attention slipping. A fragile state — proof of purchase, but not proof of habit. The wrong move is to keep shouting “buy again.” The right move is to preserve attention before pushing the next transaction.

B — Best. Three or more purchases, attention strong. The heart of the business. Best customers should receive the best personalisation, the best service, early access, recognition, and the deepest relationship investment.

B– — Weakening Best. The single most economically important cell on the grid. A high-value customer in the act of becoming Rest, flagged before the transaction signal would show it. The dashboard may still call them loyal because they have bought many times — but attention says something has changed. The cost of holding a B– is a fraction of the cost of recovering an R1. The brand that catches B– early avoids the AdWaste it would otherwise pay to recover them later.

R1 — Rest-1. Former Best customers who have lost attention. These are the most valuable recovery opportunities because the brand has proof of depth. They deserve priority recovery — winning them back protects the largest future LTV. Recovered R1 customers return to B– first — attention restored, transaction not yet re-proven — and graduate to B only when the next transaction lands on an owned route.

R2 — Rest-2. Lower-depth buyers who have lost attention. They matter, but the recovery economics must be more disciplined. Some will be worth low-cost reactivation. Some are better served by attention-monetisation if attention can be rebuilt. Some should simply be left alone. Recovered R2 customers return to T– on the same logic, graduating to T once the transaction follows.

Sell, Relate, Recover — the doctrine the table enforces

The power of TAT is not the labels. It is the action logic the columns impose.

Sell when attention is strong. The left column — N, T, B — is where transaction prompts pay off. The customer is listening. Move them forward: first purchase, second purchase, cross-sell, replenishment, upgrade, referral.

Relate when attention is weakening. The middle column — N–, T–, B– — is the danger zone. The brand must shift from Sell to Relate: fewer hard offers, more value, more utility, more recognition, more memory, more reasons to remain connected. The goal is not immediate conversion. The goal is to stop the attention slide. Most CRM teams do not have a Relate playbook; they have a Sell playbook with the frequency dialled up, which is exactly the opposite of what these cells need.

Recover when attention is lost. The right column — L, R2, R1 — is where the CRM channel has already failed. Recovery must be tiered: R1 deserves more investment than R2; Lost Leads deserve less than past buyers. A single grid prevents the common mistake of treating all inactivity as equal.

The one-line doctrine the table produces:

Sell when attention is strong. Relate when attention is weakening. Recover when attention is lost.

The grid is a velocity field, not a snapshot

A customer is never permanently in one cell of the TAT. Two forces act on every customer simultaneously, and they pull in different directions.

The brand’s CRM effort pushes customers downward through the grid — from N to T to B — by driving transactions. Each successful Sell play moves a customer down a row.

Entropy pushes customers rightward through the grid — from Strong to Weakening to Lost — by attention decay. Every day the brand does nothing, the entire customer base drifts rightward.

The job of a CRM team is to bend trajectories downward faster than entropy pulls them rightward. A healthy operation produces high downward velocity (Convert and Accelerate plays moving N → T → B) and resists rightward drift (Relate plays keeping customers in the Strong column). When the downward force wins, the brand grows LTV. When the rightward force wins, the brand grows AdWaste — because every customer who drifts into the Lost column becomes a candidate for paid reacquisition the brand will pay for next quarter.

This is what the Time lever from Part 1 means, operationally. Less Time between transactions is the downward arrow on the TAT. Compressing N → T → B is the lever in action. Less Tax per transaction is what the Revenue Tax Ladder from Part 2 governs — what each downward move actually costs when it happens.

A brand with many customers in B and T has momentum. A brand with too many in B– and T– has a silent attention crisis. A brand with a large R1 pool has allowed valuable customers to decay. A brand with heavy Repeat Direct Adtech and a large R1 pool is paying the price of having missed the warning signs months earlier — and is now paying the adtech tax to undo what cheap CRM attention could have prevented.

This is the hidden link between Part 3 and Part 4. The transaction taxonomy tells the brand what tax it paid. The TAT tells the brand why that tax may need to be paid again next quarter.

RFM looked backward: who bought, how often, and how much?

TAT looks forward: who bought, who is still listening, and who is about to be lost?

The answer determines the next action. And the next action determines whether the customer moves toward Alpha — or falls into AdWaste.

What the TAT does not yet describe is the intervention. The B– and R1 cells expose a structural problem the Revenue Tax Ladder also pointed to in Part 2 — the cliff between CRM (5–10%) and Adtech (20–25%) has nowhere economically viable for a brand to land a recovery transaction. The grid surfaces the customers who need that recovery. The ladder shows there is no rung to recover them onto. This is not a tactical gap. It is a missing engine. That is the work of the next part.