Outrageous Predictions
Des médicaments contre l’obésité pour tous – même pour les animaux de compagnie
Jacob Falkencrone
Global Head of Investment Strategy
Investment Strategist
Early bank earnings reveal confidence, credit health, and whether businesses and households still borrow willingly.
Early AI readouts reveal who pays for the buildout and who keeps the margins after the spending.
Treat earnings season as a direction finder, not a precision tool. Avoid overreacting to one quarter.
Earnings season is often sold like a sports scoreboard: beat or miss, win or lose. In real life, it is closer to a school report card. The grade matters, but the teacher’s comments tell you what happens next.
US bank results arrive first because banking is where today’s confidence meets tomorrow’s cash flow. If consumers and companies feel good, they borrow, spend, invest, and pay on time. If they feel uneasy, they delay projects, cut inventories, and protect cash.
When you listen to bank calls, focus on three plain signals.
First, loan demand. Are households still taking mortgages and car loans, and are businesses still funding expansion? Weak demand can mean caution, but it can also mean customers already have enough cash. The wording tells you which.
Second, credit quality. That is the polite phrase for “are people paying back what they borrowed?” Watch for language about delinquencies (late payments) and provisions, meaning money set aside for potential future losses. A small rise is normal. A sharp change in tone is the point.
Third, the mix of profits. Banks earn money from lending, but also from trading and dealmaking. Trading can jump around with markets. Lending tends to move with the real economy. If a bank beats expectations mainly because trading is strong, that is useful, but it is not the same as broad-based confidence.
One more thing: do not treat guidance like a promise. Treat it like management’s best attempt at honesty, under pressure, with a microphone on.
The AI story now shifts from “look what the software can do” to “who pays for the machines, the buildings, and the electricity.” This is where the invoice metaphor becomes real.
AI spending has several layers.
At the top sit the buyers of computing power, often large companies building AI features into products and services. Close behind are the platforms that host AI workloads in data centres. They fund much of the upfront spending.
Then come the suppliers. Chip designers and manufacturers sell the processors. Data centre builders sell concrete, cooling, and networking. Power producers and grid owners supply the electricity. Each layer wants a healthy margin, meaning profit after costs. Not everyone gets it at the same time.
Even if you never plan to own a chip stock, this matters because it is a real-world measure of demand. If orders for advanced chips stay strong, the AI buildout keeps moving. If the tone shifts towards caution, it can signal that customers are pausing, stretching delivery schedules, or pushing for better pricing.
For a long-term investor, the key is to separate excitement from economics. AI can be transformative and still be expensive. The market’s main question in 2026 is simple: does the spending convert into cash generation, or does it keep eating it?
Here is the link between banks and AI.
If banks sound cautious, it usually means credit becomes more selective. When money is harder to get, expensive projects face tougher questions. That is when big AI budgets get scrutinised, not because AI stops being useful, but because funding stops being easy.
If banks describe healthy borrowers and stable credit, it gives management teams more room to keep investing. AI spending can keep running, especially for firms that treat it as essential, not optional.
This is why “beat or miss” headlines matter less than the story underneath. One quarter can be noisy. A shift in language across many companies is the signal.
The first risk is false certainty. A strong quarter can reflect timing, accounting, or one-off gains. A weak quarter can reflect temporary costs that later fade. If management leans heavily on “one-time” explanations, take notes and see if the pattern repeats.
The second risk is the funding squeeze showing up late. Credit problems often arrive after the economy slows, not on the same day it slows. Watch for rising provisions and more cautious language on consumer stress.
The third risk is AI cost creep. Data centres and power are physical constraints. If firms talk about higher build costs, longer timelines, or pressure on margins, the invoice is growing.
Earnings season is the market’s annual reminder that investing is not fortune-telling. It is pattern recognition with imperfect data. Banks help you read the mood because they sit in the middle of borrowing, spending, and risk. AI helps you read the bill because it shows where the economy chooses to invest real money, in real buildings, using real electricity.
If you remember one line, keep this: banks show the mood of the economy, AI shows the invoice. Your job is not to predict every number. Your job is to stay calm, track the direction, and avoid letting one noisy quarter push you off a sensible long-term plan.
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