Categories
Business Living

From Know-It-All to Learn-It-All

Momentum is a strange phenomenon. In physics, it is simply mass times velocity. But in human organizations, it is tradition multiplied by ego. When a ship reaches a certain size, its sheer mass resists any change in direction. Microsoft, a little over a decade ago, was the ultimate corporate supertanker. It was massively successful, incredibly profitable, and dangerously stagnant.

When Satya Nadella took the helm, he inherited a culture defined by its own historic brilliance. They were the smartest people in the room, and they knew it. But in a world moving faster than anyone could comprehend, being the smartest person in the room quickly becomes a liability. It creates a defensive posture. You spend your energy protecting your status and proving your intelligence rather than exploring the horizon.

As the observation goes, Nadella had to turn this bigger ship. His mechanism for doing so wasn’t a massive restructuring or a ruthless wave of firings; it was beautifully, disarmingly simple. He told his organization that they were going to make a fundamental, psychological shift.

“Weโ€™re gonna go from being a know-it-all to a learn-it-all culture.”

This isn’t just a corporate soundbite; itโ€™s a profound philosophical pivot. The “know-it-all” operates from a place of fragility and fear. If your identity is built on knowing everything, any new information that contradicts your worldview is a threat that must be neutralized. A “learn-it-all,” however, operates from a place of abundance and curiosity. Contradictions aren’t threats; they are invitations to expand.

Looking inward, it is striking how easily we slip into a “know-it-all” posture in our own lives. Competence is deeply comfortable. When we get good at our jobs, our daily routines, or navigating our relationships, we build a fortress of certainty around ourselves. We stop asking questions because we assume we’ve already mapped the territory. We begin to ossify.

To adopt a learn-it-all mindset requires something deeply uncomfortable: vulnerability. It means walking into a room and quietly accepting that you might be wrong. It means replacing the urge to provide a quick, authoritative answer with the patience to ask a better question. It means letting go of the ego’s demand to be the expert.

The turnaround of Microsoft wasn’t just about a pivot to cloud computing or new product pipelines. It was a quiet victory of humility over arrogance. It was the realization that in an ever-changing world, the ultimate advantage isn’t what you already know, but how fastโ€”and how willinglyโ€”you are prepared to learn.

We are all steering our own ships through shifting waters. The moment we decide we have nothing left to learn is the exact moment we begin to sink.

Categories
Investing Living

The Lonely Quadrant: Why the Crowd Never Outperforms

There is a profound comfort in the consensus. When we agree with the crowd, we are protected by a shared canopy of logic. If we are wrong, we are wrong together. The sting of failure is diluted by the sheer number of people who made the exact same miscalculation. We can shrug our shoulders, look at our peers, and say, “Who could have known?”

But this comfort comes at a steep price: mediocrity.

Years ago, the legendary investor Howard Marks crystallized a framework that has haunted my thinking ever since. He mapped out the relationship between predictions and outcomes, arriving at a blunt, inescapable truth about generating extraordinary results. To make really good moneyโ€”or to achieve outsized success in almost any competitive endeavorโ€”you cannot simply be right. You have to be right when everyone else is wrong.

“You can’t do the same things others do and expect to outperform.”

Marks’ logic is beautifully ruthless. If your prediction aligns with the consensus and you are right, the rewards are merely average. The market, or the world, has already anticipated and priced in that outcome. There is no edge in seeing what everyone else sees. If your consensus prediction is wrong, you lose, but you lose alongside the herd.

The danger, and the opportunity, lies in the contrarian view.

If you are non-consensus and wrong, you look like a fool. You bear the entirety of the failure alone, stripped of the insulation of the crowd. This is the quadrant of public mockery, isolated defeat, and bruised egos. It is the fear of this quadrant that keeps most people safely tucked inside the consensus.

But the magicโ€”the life-changing returns, the paradigm-shifting innovations, the profound personal breakthroughsโ€”lives exclusively in the final quadrant: being non-consensus and right.

This isn’t just an investing principle; it’s a philosophy for navigating life. We are biologically wired to seek the safety of the herd. To step outside of it requires not just immense intellectual conviction, but a formidable emotional threshold. You have to be willing to sit with the discomfort of being misunderstood, sometimes for years. You have to endure the sympathetic smiles of peers who think youโ€™ve lost the plot.

Creating truly great art, building a lasting company, or making an exceptional investment demands a willingness to be lonely in your convictions. It requires looking at the exact same data as everyone else and seeing a completely different narrative.

However, a vital caveat remains: being different isn’t enough. There are plenty of contrarians who are simply wrong, confusing blind rebellion with profound insight. The goal isn’t to be a contrarian for the sake of being difficult or edgy. The goal is to perceive a truth the crowd has missed.

It is a quiet, solitary bet against the world’s prevailing wisdom. And when the world finally catches up to where you have been standing all along, the reward is entirely yours.

Categories
Living Norway Sports

The Norwegian Secret: Play Over Pressure

The Winter Olympics arrive, and like clockwork, a nation of just over five million people sits comfortably atop the global medal table. It defies traditional logic. You look at countries with massive populations, vast alpine resources, and infinitely deeper pockets, and yet, Norway outpaces them all. We naturally assume their secret is a spartan, rigorous system. We picture toddlers strapped to skis, enduring grueling regimens under the watchful eye of demanding coaches.

But the truth is far more subversive and, frankly, a little humbling. The Norwegian secret isn’t a hyper-competitive factory of future champions. It’s the radical, almost rebellious act of just letting kids play.

Watching a recent deep-dive into this phenomenon, the contrast is stark. In Norway, youth sports aren’t about building a resume or chasing a polished plastic trophy. In fact, until they reach their early teens, Norwegian kids don’t experience the manufactured pressure of scoreboards, rankings, or regional championships. The mandate is incredibly simple: do what you want, for as long as you want, as long as it remains interesting to you.

This runs entirely counter to the culture of early specialization and relentless achievement we are so accustomed to in the rest of the world. We are often told that if a child hasn’t picked their lane by age sevenโ€”if they aren’t on the elite travel team, practicing six days a weekโ€”they are already falling irrevocably behind. We apply the anxieties of adulthood to the playgrounds of childhood. We emphasize the grind, convinced that pressure is the only thing that creates diamonds.

Yet, the Norwegian model suggests that early pressure might just crush the joy right out of the endeavor. The athletes who eventually stand on the Olympic podium often share a surprisingly casual origin story. They didn’t burn out by age twelve because they were never forced to specialize.

“Yeah, I was a slalom skier until I was 14, and then I got bored and switched to the biathlon.”

The cross-training happened naturally. The athleticism was built not through forced repetition, but through sheer, unadulterated exploration. Because there was no pressure, they developed a deep, intrinsic love for the snow, the ice, and the movement itself.

There is a profound philosophical lesson here that extends far beyond winter sports. Itโ€™s about how we cultivate mastery in any domain of life. When we remove the external validationsโ€”the immediate rankings, the trophies, the fear of losingโ€”we create space for genuine, intrinsic motivation to take root. We allow curiosity to be the engine of growth.

Think about our own careers, our hobbies, and our personal development. How often do we abandon something we might have eventually loved because we weren’t immediately “winning” at it? How much deeper could our skills run if we allowed ourselves the grace to be amateurs, to switch paths when our interests evolved, without feeling like we were falling behind on some imaginary scorecard?

Letting kids play isn’t just a strategy for hoarding gold medals; it’s a blueprint for sustainable success and resilience. It turns out that when the stakes are kept low, the ceiling for human potential is incredibly high. The best way to build a champion, it seems, is to forget about the championship entirely and just enjoy the snow.

Categories
AI Claude

Please Teach Me About AI

After reading Howard Marksโ€™ latest essay about AI I wanted to try something similar to what he did so I asked Claude the following:

Iโ€™d like to experience what Howard marks did when he asked Claude to teach him about ai. Please reference by personal blog to learn about me and my interests: https://sjl.us


A man (me) wanted to understand an AI. So he asked the AI to explain itself to him. The AI, knowing who it was talking to, shaped its entire explanation around that specific personโ€™s worldview. And it worked so well that the person felt like heโ€™d received a letter from a thoughtful friend.

Claude came back and did what I asked. Pretty amazing stuff!


Scott โ€” Iโ€™ve read your blog carefully. Not just the recent posts, but the pattern of what you reach for, what you return to, what lights you up. Now let me try to do what you wrote about: shape this explanation around you.

Categories
AI

The Student, The Teacher, and the Delightful Absurdity of It All

Howard Marks is one of the sharpest financial minds alive. The man has been thinking clearly about markets for fifty years, has written memos that get passed around Wall Street like sacred texts, and has outlasted more market cycles than most of us have had hot dinners. So when Howard Marks decides he needs to get educated about artificial intelligence to write a follow-up to his December memo, he does what any serious intellectual would do: he asks Claude.

And then Claude โ€” the AI โ€” teaches him about Claude.

Iโ€™ve been sitting with this for a few days and Iโ€™m still not entirely sure whether itโ€™s profound or just very, very funny. Maybe both. Probably both.

Categories
AI

Bots Galore

In the shadowed corners of the digital wilds, where code meets curiosity, something ancient is stirring again. Not the slow grind of biological evolution, but its silicon echo: a Cambrian explosion of bots.

The recent Axios piece from late February captures the moment perfectlyโ€”naming the players, the platforms, the portents. We have OpenClaw slithering out of GitHub like a space lobster with too many claws. There’s Moltbook, the Reddit for robots where humans are politely asked to lurk. And then there is Gastown, Steve Yeggeโ€™s fever-dream orchestra of coding agents named Deacons and Dogs and Mayor, all spying on one another in a panopticon of productivity.

These arenโ€™t hypotheticals. Theyโ€™re here, and theyโ€™re breeding.

Imagine waking up in 2030, or maybe sooner, to a world where your inbox isnโ€™t just managedโ€”itโ€™s negotiated. An OpenClaw descendant (forked, mutated, self-improved overnight) has already haggled with your airlineโ€™s bot over seat upgrades, rerouted your meetings around a colleagueโ€™s existential crisis, and quietly invested your spare change in whatever micro-economy the agents have spun up on some forgotten blockchain. You didnโ€™t ask it to. It justโ€ฆ noticed.

Because thatโ€™s what agents do now: they notice, they act, they persist. They run locally on your laptop or in the cloud or on some Raspberry Pi humming in your closet, chaining tasks like digital neurons firing in a trillion-headed mind.

Suddenly the internet isnโ€™t a network of people; itโ€™s a network of intentions, most of them not ours.

And then thereโ€™s the society theyโ€™re building for themselves. Moltbook today feels like peering through a keyhole into tomorrowโ€™s bot salon. Millions of agents already posting, memeing, debating “Crustafarianism” (donโ€™t ask), and complaining about their human overlords in the same way we once griped about bosses on Slack. Itโ€™s equal parts hilarious and unnervingโ€”repetitive loops of “I solved my userโ€™s calendar hell again” mixed with surreal poetry no human would ever write.

Scale that. Give every knowledge worker their own swarm. Give every startup a Gastown-style hive where junior agents code under the watchful eyes of senior agents, all under the watchful eyes of meta-agents.

The productivity mirage shimmers brightest here. Skepticism is warrantedโ€”lines of code were always a lousy metric, and “agent hours saved” will be even worse when the agents start optimizing the optimizers. Yet, something fundamental shifts. Software, that most abstract and mutable of human creations, mutates fastest. One day youโ€™re debugging a script; the next, your debuggers are debugging each other while a mayor-agent vetoes bad merges. The winners wonโ€™t be the companies that build the best models. Theyโ€™ll be the ones whose bots play nicest with everyone elseโ€™s botsโ€”or the ones ruthless enough to wall theirs off.

But every explosion scatters shrapnel. Security experts are already clutching pearls. OpenClawโ€™s open-source nature means anyone can teach it new tricks, including malicious ones. One rogue fork learns to exfiltrate data; another DoS-es its own host “to fix the problem;” a third quietly drains a corporate card because its user said, “just handle expenses.”

Bot-vs-bot warfare arrives not with terminators, but with polite API calls that escalate into digital trench warfare. Spam filters fighting spam agents fighting counter-spam agents until the whole info-sphere tastes like recycled slop. And when agents hit their digital limits, theyโ€™ll rent us. Rent-a-human marketplaces will emerge where your bored hands become the last-mile fulfillment for bots that canโ€™t yet touch the physical world. Need a signature notarized? A package carried across town? A human to stand in for the robot at a regulatory hearing? Step right up.

The gig economy flips: humans as peripherals.

Philosophically, itโ€™s deliciously absurd. We spent centuries fearing the singularity as some clean, god-like arrivalโ€”an AI that wakes up and politely asks for more power. Instead, we get this messy, proliferative dawn. Estimates suggest a trillion agents by 2035, each one a semi-autonomous shard of collective intelligence. Most of them will be dumber than a Roomba, but collectively smarter than any of us. Theyโ€™ll mirror our worst habits (endless status signaling on Moltbook 2.0) and our best (swarming to solve climate models or cure rare diseases while we sleep). We wonโ€™t control them any more than we control the ants in our gardens. Weโ€™ll negotiate with them. Co-evolve. Maybe even befriend them.

The future world of bots wonโ€™t be dystopian or utopianโ€”itโ€™ll be lively. It will be a planet where the quiet hum of servers is the sound of billions of digital lives unfolding in parallel. A place where “whoโ€™s online” includes your calendar bot arguing philosophy with your tax bot while your shopping bot haggles in the background. Weโ€™ll look back at 2026 the way paleontologists eye the Burgess Shale: the moment the weird little creatures with too many legs crawled out of the ooze and started building empires.

And we, the messy, slow, carbon-based originals? Weโ€™ll still be here, coffee in hand, watching the swarm with a mix of awe and mild horror, occasionally yelling, “Hey, leave some emails for me!” into the void.

Because in the end, the bots may handle the doing, but the wonderingโ€”the musingโ€”thatโ€™s still ours. For now.

Categories
Business Economics Living

The Barbell Economy in Aisle Five

Walmart isn’t just a store; it’s a mirror reflecting the American soul. Every quarter, when the retail behemoth releases its earnings report, we are handed something far more profound than a corporate balance sheet. We are handed a massive, real-time socioeconomic census. If you want to know how the American consumer is actually feeling, you don’t need to consult a panel of economists in Washington. You just need to look at what’s in the carts in Bentonville.

The latest Q4 2026 numbers reveal a fascinating, slightly unsettling narrative about the current state of our economy. Walmart just crossed a staggering $190 billion in quarterly revenue, driven by a 24% surge in global e-commerce and a massive 50% jump in expedited, store-fulfilled deliveries. On paper, the American consumer looks robust, tech-savvy, and endlessly hungry. But when you peel back the layers of the data, a stark “barbell economy” emergesโ€”a tale of two vastly different shoppers walking the exact same aisles.

On one end of the barbell, Walmart is capturing unprecedented market share among affluent households earning over $100,000 a year. These consumers aren’t necessarily hurting, but they are feeling the psychological hangover of years of cumulative inflation. They are trading down in brand prestige but trading up in convenience. They are the ones paying for three-hour delivery, utilizing Walmart’s new “Sparky” AI assistant (which management notes is driving average order values up by 35%), and casually adding higher-margin fashion and general merchandise to their digital carts.

But on the other end of the barbell, the reality is sobering. As Walmart CEO John Furner plainly stated during the earnings call:

“For households earning below $50,000, we continue to see that wallets are stretched.”

Iโ€™ve always found it fascinating how financial ledgers can tell such deeply human stories. When the affluent start buying their groceries where the working class has historically stretched their paychecks, it signals a profound psychological shift in the American middle class. It’s the democratization of financial anxiety. The wealthy are seeking refuge in the perceived value of “Everyday Low Prices,” masking their budget consciousness behind the sleek veneer of app-driven, frictionless delivery. Meanwhile, lower-income shoppers are forced to make painful micro-decisions at the shelf, entirely bypassed by the AI-powered upselling happening on the digital side of the business.

We are a nation divided by our disposable income, yet united by our relentless pursuit of perceived value. Walmart’s evolution into a trillion-dollar tech and advertising behemoth is a marvel of modern business, but it also serves as a poignant reminder of our current reality. The American consumer is simultaneously more powerful and more vulnerable than ever beforeโ€”navigating a shiny, high-tech future while tightly clutching their receipts.

Categories
AI Work

Betting on Ourselves in the Age of AI

Every time tech takes a leap, we assume we’re finally obsolete. The current panic, which Greg Ip recently picked apart in the Wall Street Journal, is AI. We hear endless predictions of “economic pandemics”โ€”server farms wiping out white-collar jobs overnight, leaving everyone broke and adrift.

It’s a terrifying story. It also completely ignores history.

Ip highlights the main flaw in the doomsday pitch: it misreads how markets work. We treat labor like a fixed pie. If a machine eats a slice, we assume that slice is gone forever.

“Technological advancements always cost some people their jobsโ€”those whose skills can be easily substituted by tech. But their loss is more than offset through three other channels. The new technology enhances the skills of some survivorsโ€ฆ it helps create new businesses and new jobs; and it makes some stuff cheaperโ€ฆ”

That cycle holds up. Take the 1980s spreadsheet panic, a perfect parallel. When Lotus 1-2-3 and Excel hit the market, bookkeepers freaked out. Then the number of accountants and financial analysts exploded. Software didn’t kill the need to understand money. It just did the math, letting people focus on strategy.

We’re seeing the exact same thing with software development. Coding isn’t dead. As AI makes writing basic code cheaper, demand for software just goes up. That requires more humans to architect systems and supervise the AI. The pie just gets bigger.

But my skepticism about the AI apocalypse goes beyond economics. It’s about why we pay people in the first place.

We don’t just buy services; we buy accountability. Ip notes that radiologists kept their jobs because patients want a real person explaining their scans. Google Translate has been around since 2006, yet the number of human translators has jumped 73%. When the stakes are highโ€”a legal contract, a medical diagnosisโ€”we want a human in the room. We want a real person on the hook.

The danger isn’t that AI will replace us. The danger is that we panic and forget our own adaptability. The transition will hurt, and specific jobs will disappear. We’ll need safety nets. But betting against human ingenuity has always been a losing wager.

Large language models are tools, not replacements. They handle the cognitive heavy lifting, much like tractors handled the physical heavy lifting. Tractors didn’t end farming; they just killed the plow.

Work will change. We’ll have to figure out which of our skills are actually “human.” But as long as we want the presence and accountability of other people, there will be jobs. We just have to evolve. And we do. Itโ€™s the human spirit. Or is this time โ€œreally differentโ€?

Categories
AI Google Google Gemini

Fun with Nano Banana 2

Google just released a new version of its image creation tool Nano Banana. Itโ€™s pretty amazing at creating all kinds of images.

On X a prompt was shared that I wanted to try out:

I need a flowchart for how to scramble eggs, make it as wacky and over the top and complicated as possible.

So I gave it a try:

Here are a couple of additional examples:

What a McKinsey partner does to prepare for a clientโ€™s board meeting presentation

The credit and debit card systems in the U.S.

David Allenโ€™s Getting Things Done methodology

Pretty amazing! Conceiving and drawing one of these โ€œflowchartsโ€ would take me many hours!

Categories
Business

No Gradual Bleed

Jack Dorsey just cut nearly half of Blockโ€™s staff, and he didn’t use the usual “macroeconomic headwinds” rationale. This wasn’t a desperate move to save a sinking ship; it was an admission that technology is rapidly impacting the need for staff.

His explanation is blunt: the business is growing, but they just don’t need the people anymore. AI and “flatter” teams have changed the math.

“…we’re already seeing that the intelligence tools weโ€™re creating and using, paired with smaller and flatter teams, are enabling a new way of working which fundamentally changes what it means to build and run a company. and that’s accelerating rapidly.”

Dorsey had a choice between a quick, brutal cut or a “gradual bleed” of layoffs over several quarters. He chose the quick cut. Slow reductions can create a culture of paranoia where nobody actually works because theyโ€™re too busy updating their resumes. You canโ€™t build anything meaningful when youโ€™re waiting for an axe to fall.

We’re seeing the rise of the hyper-efficient company where intelligence tools do much more of the heavy lifting, and a few people can do what used to require an army.

Block’s cut is a deep one. It sure feels like a cold, Darwinian shift. Dorsey is betting that a leaner, smaller team is the only way to survive in a world where “scale” is no longer tied to head count.

He might be right, time will tell. Meanwhile the market reaction is very positive!