Outrageous Predictions
Executive Summary: Outrageous Predictions 2026
Saxo Group
Investment Strategist
Oracle’s quarter showed strong cloud and artificial intelligence (AI) growth, but softer guidance and huge spending knocked the share price sharply.
The update signals a new AI phase where data centres need heavy capital before profits and free cash flow fully follow.
For investors, Oracle is a live case study in reading backlogs, capital expenditure and customer concentration instead of chasing AI headlines.
Oracle’s latest earnings were a reminder that even artificial intelligence (AI) darlings still answer to arithmetic. On 10 December 2025, the company reported second quarter fiscal 2026 results after the United States close and saw its shares fall about 11.5% in after-hours trading.
The twist is that the headline story was growth, not collapse. Revenue and cloud sales rose strongly and Oracle’s backlog of future AI and cloud contracts now sits in the hundreds of billions of dollars. What upset investors was softer guidance and a sharp increase in planned spending to build yet more AI data centres.
For long-term investors, that mix matters more than a single rough session. Oracle has become one of the clearest listed plays on AI infrastructure. Its numbers now give a live view of the next phase of the AI boom, when big promises start colliding with bigger capital bills.
Strip out the noise and the quarter looked solid. Revenue grew in the mid-teens, cloud revenue grew in the mid-thirties and infrastructure as a service was the star, growing close to 70%. Non-GAAP (generally accepted accounting principles) earnings per share jumped more than 50% compared with a year earlier.
Underneath, the picture is less dramatic and more instructive. Profit was boosted by roughly 2.7 billion USD gain from selling Oracle’s stake in chip designer Ampere Computing, while operating income grew more slowly than revenue as the company poured money into data centres and hardware. Remaining performance obligations climbed to 523 billion USD, up from about 455 billion USD last quarter, but a large chunk of that backlog comes from a small group of AI heavyweights. Oracle has visibility, but it is also tying a lot of future returns to a few demanding and fast-moving partners.
This is where expectations bit. The company’s outlook for the next quarter underwhelmed analysts, even as management raised its capital expenditure plans for fiscal 2026 by around 15 billion USD compared with earlier guidance. In other words, more spending, more contracted work, but less near-term earnings comfort than the market had hoped for.
Oracle now sits in the engine room of the AI build out. Its cloud infrastructure platform rents out clusters of Nvidia and AMD chips so customers can train and run large models. That makes Oracle a direct player in AI infrastructure, not just a database vendor.
The catch is cost and concentration. Building modern AI data centres means committing tens of billions of USD before most revenue shows up as cash. Oracle now expects fiscal 2026 capital expenditure to run 15 billion USD above earlier plans, even as guidance underwhelmed. Much of its backlog depends on a few deep pocketed customers, including OpenAI and major cloud and social media groups. The key question for investors is no longer who has the biggest backlog, but who can earn decent returns on that capital and keep the revenue genuinely sticky.
This shift matters for the wider AI space. The early phase of the boom rewarded any company that could secure graphics chips and talk convincingly about models. The next phase looks more like a capital cycle, where investors start comparing which platforms can translate huge order books into sustainable margins and free cash flow, rather than simply cheering every new AI headline.
The first risk is simple overbuilding. If AI demand cools faster than expected, the industry could end up with more data centre capacity than it can profitably use for a time. Early warnings would include slower backlog growth, softer pricing and more talk of “optimising” existing sites rather than adding new ones.
The second risk is balance sheet strain. Oracle already carries sizeable debt and now plans much higher capital expenditure. If growth or margins disappoint, credit ratings could come under pressure and borrowing costs could rise just as investment needs peak.
The third risk comes from regulation and customer stability. Many of the biggest AI customers face antitrust questions and shifting rules on data and safety. Any major setback for those firms would quickly feed through to their infrastructure partners and could change the pace and shape of the build out.
Use Oracle as a template for other AI names. Focus on how quickly big backlogs turn into recognised revenue and, more importantly, cash.
Compare businesses on capital intensity and balance sheet strength. Some, such as chip designers or software platforms, can grow with lighter investment. Others, such as cloud infrastructure or data centres, need heavy ongoing spending and stronger financing.
Pay attention to customer concentration. A single flagship contract can look impressive on day one, but it also ties a lot of value to one relationship.
In a fast-moving AI cycle, flexibility, diversification and position sizing may matter as much as the technology story. Oracle’s experience shows that even when demand is strong, the route from contracts to durable returns can be long and bumpy.
Oracle’s latest quarter is not the moment AI stopped mattering. The huge backlog and solid cloud growth still show how central AI workloads have become. What the sharp share price move really reflects is a change of question, from “who is in the game” to “who can play it profitably without overstretching the balance sheet”.
For long-term investors, that shift is helpful. Oracle’s setback shows that even apparent AI winners still face the old rules of capital, cash flow and concentration risk. Treating these results as a case study, rather than a verdict on AI as a theme, can keep the focus on quality, resilience and sensible position sizing as the next chapter of the AI build out unfolds.
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