Outrageous Predictions
A Fortune 500 company names an AI model as CEO
Charu Chanana
Chief Investment Strategist
Chief Investment Strategist
The AI selloff has made stock selection more important. The opportunity is not simply in buying what fell the most, but in identifying companies where the share price has corrected while business quality, AI monetisation and valuation support remain intact.
The recent selloff in AI-linked stocks has raised a familiar question for investors: is this a buying opportunity, or a warning sign?
The answer is unlikely to be the same for every stock.
A broad “buy the dip” approach can be risky when valuations are still elevated, earnings expectations are high, and many investors are crowded into the same AI winners. The better approach is to screen for companies where the price has reset, but the business case has not broken.
This screener is designed to identify US-listed technology stocks with strong growth, healthy margins, positive free cash flow, manageable leverage and a meaningful pullback from recent highs.
The first step is to create a quality-growth universe. The screen uses the following criteria:
This is not a deep-value screen. It is a quality-growth pullback screen. The goal is to find companies where the market has reset expectations, but the fundamentals may still be intact.
After identifying the 12-stock universe, the next step is to rank the names.
The model uses four factors and a total score of 100 points.
This captures whether the company is fundamentally strong enough to deserve a second look after the selloff.
The sub-factors include:
This is the manual overlay.
It asks: is AI already showing up in revenue, backlog, orders, cloud usage, pricing power or customer adoption?
Stock | AI score /5 | Rationale |
NVDA | 5.0 | Direct AI compute revenue engine |
MSFT | 5.0 | AI demand visible through cloud and enterprise software |
MU | 5.0 | HBM and advanced memory are clear AI bottlenecks |
MRVL | 4.5 | Custom AI silicon and data-centre connectivity |
ANET | 4.5 | AI networking demand |
LITE | 4.0 | Optical connectivity for AI data centres |
TER | 4.0 | AI compute and memory testing |
KLAC | 4.0 | Process control for advanced chip manufacturing |
ONTO | 3.5 | Advanced packaging and HBM-linked exposure |
NVMI | 3.5 | Metrology for advanced DRAM and semis |
NOW | 3.0 | Enterprise AI adoption, less direct revenue visibility |
GWRE | 2.0 | Cloud software compounder with AI optionality |
This factor measures whether the selloff has created better valuation support.
To make the valuation score more robust, I would combine:
Suggested valuation scoring
A. Forward P/E score — 50% of valuation score
B. Relative P/E Z-score — 50% of valuation score
Combined valuation formula
Valuation score = Forward P/E score × 50% + Relative P/E Z-score × 50%
Then this combined valuation score feeds into the overall model at a 20% weight.
This uses the field: price as a percentage of 52-week high.
The lower the number, the bigger the correction.
Suggested scoring:
This gives credit to stocks where the valuation reset has been more meaningful.
The final score is a weighted average, not a simple average.
Total score =
This matters because not all factors should carry the same importance. After an AI selloff, business quality and actual AI monetisation should matter more than just how far a stock has fallen.
Rank | Stock | Business | AI engine /5 | Valuation /5 | Correction /5 | Weighted Average /5 |
1 | MU | 4.75 | 5.00 | 4.25 | 4.00 | 4.58 |
2 | NVDA | 4.73 | 5.00 | 4.75 | 3.00 | 4.47 |
3 | MSFT | 3.63 | 5.00 | 4.75 | 4.00 | 4.34 |
4 | NOW | 4.30 | 3.00 | 4.75 | 5.00 | 4.14 |
5 | ANET | 4.33 | 4.50 | 3.75 | 3.00 | 4.00 |
6 | MRVL | 4.10 | 4.50 | 3.00 | 3.50 | 3.88 |
7 | TER | 3.68 | 4.00 | 3.25 | 3.50 | 3.65 |
8 | ONTO | 3.68 | 3.50 | 3.75 | 3.50 | 3.60 |
9 | KLAC | 3.78 | 4.00 | 3.25 | 3.00 | 3.58 |
10 | LITE | 3.35 | 4.00 | 3.00 | 4.00 | 3.61 |
11 | NVMI | 4.03 | 3.50 | 3.25 | 3.50 | 3.56 |
12 | GWRE | 3.85 | 2.00 | 4.00* | 5.00 | 3.55 |
*Guidewire has no relative P/E Z-score available in the screen, so the valuation score uses only its forward P/E for now. A neutral relative valuation score could also be used.
The model still puts Micron, Nvidia and Microsoft at the top because they combine strong business quality with clear AI monetisation and reasonable valuation support after the selloff.
Micron screens especially well because AI is not just about compute. It is also about memory bandwidth, and HBM remains one of the clearest bottlenecks in the AI infrastructure chain. That gives Micron a stronger AI monetisation profile than a traditional memory-cycle label would suggest.
Nvidia remains one of the strongest AI revenue engines in the market. The correction from highs is less dramatic than some other names, but its business quality and direct AI monetisation visibility remain exceptional. Its negative relative valuation Z-score also suggests the stock has become more reasonable versus its own history. The key risk is that expectations are still high, so earnings will need to keep supporting the valuation.
Microsoft offers a more diversified AI exposure through cloud, enterprise software and productivity tools. It is less directly cyclical than semiconductors, while still offering exposure to AI adoption through Azure, Copilot and enterprise software demand. Its relative valuation also looks more supportive after the reset.
The next group — Arista, Marvell, Teradyne, KLA, Nova, Onto Innovation and Lumentum — represents the broader AI infrastructure chain. These companies are exposed to networking, custom silicon, semiconductor testing, metrology, optical connectivity and advanced chip manufacturing.
This is important because the AI trade is not only about GPUs. AI infrastructure also needs memory, networking, testing, inspection, packaging and data-centre connectivity.
ServiceNow and Guidewire are more software-led stories. ServiceNow has a credible enterprise AI adoption angle and a meaningful correction from highs, but investors may want more evidence that AI is driving revenue, upsell or margin expansion. Guidewire is more of a cloud software compounder with AI optionality, rather than a direct AI monetisation engine.
There are still important risks.
The selloff has created a more interesting entry point in parts of technology, but it has also raised the bar for stock selection.
The best post-selloff candidates are not necessarily the stocks that have fallen the most. They are the ones where: price has corrected, but earnings power, business quality and AI monetisation remain intact.
This screener highlights a useful watchlist across AI compute, cloud, memory, networking, optical infrastructure, semiconductor equipment and selected software names.
For investors, the next phase of the AI trade may be less about owning everything with an AI label — and more about identifying the companies that are actually monetising the buildout.