Key takeaways
- The S&P 500 Information Technology index is now trading at only about a 4% forward P/E premium to the overall S&P 500, its lowest relative valuation since early 2019 and the cheapest in roughly seven years.
- That premium has collapsed by roughly 30+ percentage points since late 2025, after a period when tech traded nearly 47% richer than the index at the June 2024 peak.
- For retail investors, this shift opens the door to selectively add high‑quality tech and AI exposure via ETFs like XLK and strong individual names (MSFT, AAPL, NVDA, GOOGL), while still respecting macro risks around rates, war, and earnings.finance.
- AI‑driven trading bots from Tickeron can help turn this “tech is cheaper” narrative into a rules‑based plan—screening leaders vs laggards, timing entries, and managing risk instead of just buying every dip on emotion.
What “cheapest in 7 years” actually means
According to recent analysis, the S&P 500 Information Technology index now trades at a forward P/E only about 4% above the broader S&P 500—down from a roughly 47% premium at the 2024 peak and the lowest spread since early 2019. Put differently, tech has gone from “massively more expensive than the market” to “barely richer than average,” and is on track to become cheaper than the index for the first time since around 2017 if the trend continues.
For a retail investor, that doesn’t automatically mean “back up the truck,” but it does mean this: the big multiple gap that made people nervous about owning tech at any price has largely been worked off. Now you’re much closer to paying “market‑level” valuations for companies that, in many cases, still grow faster than the market and sit at the center of the AI and data‑center build‑out.finance.
Where to look: ETFs and flagship names
Core tech and AI exposure
- ETF: Technology Select Sector SPDR (XLK) – holds U.S. large‑cap tech, heavily concentrated in Microsoft, Apple, and NVIDIA, with about 40% of assets in those three names and strong long‑term outperformance vs SPY.
- Key names inside XLK:
Over the last five years XLK has beaten SPY by roughly 30–35 percentage points, driven by AI, semis, and software, but 2026’s correction has pulled valuations closer to longer‑term averages. If you wanted more tech but hesitated at nosebleed multiples, this relative de‑rating is the environment you were waiting for.
“Almost as cheap as staples”
Some strategists note that tech valuations are now nearing those of consumer‑staples stocks, a rare alignment historically associated with strong forward returns when growth eventually stabilizes. That doesn’t remove macro risks (rates, war, regulation), but it does mean you’re no longer paying a huge premium for the sector’s superior growth profile.
Retail takeaway: use broad tools like XLK (or similar global tech ETFs) as your base, then layer in a few individual leaders you understand, rather than chasing every speculative AI ticker.
Potential winners and losers within tech
Even at cheaper relative valuations, not all tech is equal.
Potential winners
- Cash‑rich megacaps with durable moats and direct AI leverage (MSFT, GOOGL, AMZN, NVDA, AVGO).
- Select semiconductors and data‑center infrastructure names that sit in the critical path of AI compute and networking.finance.
- Profit‑generating software platforms with pricing power and subscription models.
Potential laggards/risks
- Story stocks and unprofitable growth names whose valuations were built on zero‑rate assumptions; they may not bounce just because “tech is cheap” on average.
- Cyclical hardware tied to weak end‑markets (PCs, low‑end devices) without strong AI tailwinds.
Retail angle: the valuation reset is sector‑level; your job is to make sure you’re tilted toward the structural winners inside that sector, not just anything with a “tech” label.
How a retail investor can act on this
A simple, practical framework:
- Decide your core tech allocation.
- Choose a base ETF such as XLK and set a target range (for example, 15–25% of your equity sleeve, depending on your risk tolerance and time horizon).
- Choose a base ETF such as XLK and set a target range (for example, 15–25% of your equity sleeve, depending on your risk tolerance and time horizon).
- Tilt toward quality leaders.
- Add 3–5 individual names with real earnings, FCF, and AI or cloud leverage (MSFT, AAPL, NVDA, GOOGL, AVGO) instead of loading up on speculative microcaps.finance.
- Add 3–5 individual names with real earnings, FCF, and AI or cloud leverage (MSFT, AAPL, NVDA, GOOGL, AVGO) instead of loading up on speculative microcaps.finance.
- Balance with defensives and real assets.
- Pair tech with some exposure to sectors that benefit from inflation and war‑driven volatility (energy via XLE, maybe some materials) plus a slice of defensives (XLP, XLU) so you’re not all‑in on one macro outcome.
- Pair tech with some exposure to sectors that benefit from inflation and war‑driven volatility (energy via XLE, maybe some materials) plus a slice of defensives (XLP, XLU) so you’re not all‑in on one macro outcome.
- Set rules before volatility hits.
- Pre‑define how much you’ll add if tech falls another 10–15%, and at what drawdown you’ll stop adding and simply hold. This keeps you from either panic‑selling or over‑averaging as headlines swing.
Turning “cheap tech” into a rules‑based strategy with Tickeron’s AI bots
This is where Tickeron’s AI trading bots can help retail investors go from a story to a system.
According to Tickeron, their bots:
- Use multi‑timeframe Financial Learning Models (FLMs) – running on 5‑, 15‑, and 60‑minute cycles to detect trends, breakouts, and volatility regimes in ETFs like XLK and stocks like MSFT, NVDA, and AAPL.
- Provide directional and pattern‑based signals – identifying when tech leaders break above resistance, confirm reversals, or show statistically significant dip‑buy opportunities, along with historical win‑rate data for those setups.
- Can be linked to options or stock strategies – some bots are tuned for leveraged and options trading, with reported strategy‑level returns exceeding 100% annualized in certain market conditions by exploiting momentum and volatility systematically.
For a retail investor, a practical use case could be:
- Run a “Tech Core” bot that manages entries and trims in XLK and a small basket of megacap tech names based on technical and volatility signals.
- Pair it with a “Rotation” bot that tracks XLK vs SPY and defensives; when AI detects sustained relative strength returning to tech at these cheaper valuations, it gradually increases your tech weight within pre‑set limits.
- Use the bots’ built‑in risk controls—position sizing, stop levels, and max‑drawdown rules—to avoid turning a fundamentally sound “cheap tech” thesis into an oversized, undisciplined bet.
That way, you’re not just reacting to headlines that “tech is cheap for the first time in 7 years.” You’re using AI to decide which tech to own, when to scale in, and how to keep risk in check as the macro backdrop (war, bonds, inflation) continues to shift.
Tickeron AI Perspective