Quarterly Outlook
Q4 Outlook for Investors: Diversify like it’s 2025 – don’t fall for déjà vu
Jacob Falkencrone
Global Head of Investment Strategy
Chief Investment Strategist
In our view, AI remains one of the most powerful forces reshaping markets, but the tone is changing. Strong earnings from leading chipmakers e.g., Nvidia’s Q3 FY2026 revenue grew 62% YoY (Source: Nvidia Investor Relations) reassure investors that demand is real, yet the sharp swings in market reaction show that enthusiasm now sits alongside questions around sustainability, profitability, and execution.
The broad “everything goes up” phase of the AI trade is fading. What replaces it is a more nuanced market: one that rewards fundamentals over narratives.
Investors now face a key challenge of understanding which companies have the financial and operational strength to compete through cycles. That will potentially help them to separate the durable players from those caught up in the momentum.
Below is a simplified but strategically meaningful framework that could be used to decode the AI ecosystem.
Why it matters: AI is extremely capital-intensive. Companies investing in chips, power, and data centres need financial strength to survive both growth phases and volatility.
What to look for:
Risks: Heavy borrowing or negative cash flow may amplify volatility.
Why it matters: Investors are becoming more selective; they want to see AI adding real business value, not just product demos.
What to look for:
Risks: Companies that invest ahead of monetisation may face margin pressure.
Why it matters: AI needs chips, land, power, cooling, and network bandwidth. Access to scarce infrastructure is becoming a major competitive edge.
What to look for:
Risks: Delays due to power shortages or supply constraints.
Why it matters: As models get more similar, proprietary data becomes the true differentiator.
What to look for:
Risks: Companies relying on public data face weaker defensibility.
Why it matters: Sticky customers create recurring revenue and lower the risk of AI investments not paying off.
What to look for:
Risks: Churn or weak engagement can quickly erode the AI narrative.
Why it matters: Many AI suppliers — especially in chips, cloud infrastructure, and data-centre services — rely heavily on a small number of hyperscalers. When 20–50% of revenue comes from one or two clients, even a slight pause in spending can create sudden earnings volatility.
What to look for:
Risks: Revenue may fall sharply if a major customer delays capex, shifts to an in-house solution, renegotiates pricing, or reduces reliance on the company’s AI infrastructure.
Why it matters: Markets are punishing over-promising and rewarding measured execution.
What to look for:
Risks: Missed timelines or shifting goalposts raise credibility concerns.
Why it matters: Elevated expectations increase volatility, especially in an environment where interest rates may stay higher for longer.
What to look for:
Risks: Stocks with perfection priced in can fall sharply on small disappointments.
Illustrative only. Not investment advice.
Reasoning is simplified to help investors understand strengths and risks.
While AI is clearly transforming industries and driving a multi-year investment cycle, in our opinion the next stage of this cycle may reward companies that balance ambition with financial strength, operational execution and diversified demand.
This 8-factor checklist gives investors a simple, structured framework to evaluate AI stocks, acknowledging both the potential upside and the meaningful risks.