Goldman Sachs Revisits the State of the AI Boom: Strong Earnings Will Override Valuation Concerns Until the Investment Cycle Peaks, Volatility to Rise Further

marsbitPublished on 2026-06-24Last updated on 2026-06-24

Abstract

Goldman Sachs discusses the current AI investment boom, arguing it is not a simple repeat of the 1999-2000 bubble. Unlike the dot-com era, current valuations are not wildly out of control because earnings expectations are rising in tandem with stock prices. The key issue is that market prices have already priced in substantial optimism, making them sensitive to any narrative shifts. The core risk has shifted from "valuation bubble" to "earnings bubble." While strong profits from companies in semiconductors, cloud infrastructure, and data centers currently outweigh valuation concerns, this is dependent on the ongoing capital expenditure cycle. The true test will be whether these robust earnings can be sustained after the investment cycle peaks. Current market prices imply optimistic assumptions, such as faster AI adoption, higher productivity gains, and a larger share of economic profits going to capital owners. The AI boom may also be masking relative weakness in the non-AI sectors of the economy. As a result, market volatility is expected to rise. Goldman recommends that investors consider maintaining exposure while adding downside protection, such as put options, to manage potential drawdowns.

Author: Chasing the Trend Trading Desk, Wall Street News

The AI market rally is not a simple replay of the 1999–2000 bubble. Goldman Sachs believes the more critical question now is that while earnings and capital expenditures are still being revised upward, market prices have already priced in a large amount of optimistic expectations, and investor sensitivity to narrative changes is increasing.

According to the Chasing the Trend Trading Desk, Goldman Sachs noted in a June 22 research report that the AI investment boom may continue, with recent market expectations for its scale even requiring further upward revisions. However, the report also pointed out that much of the value has already been priced in, making the market more vulnerable to any news challenging the optimistic AI narrative.

The main risk in AI trading is no longer just a "valuation bubble." Forward P/E ratios have not significantly run out of control, due to simultaneous upward revisions in earnings expectations. What truly needs to be tested is whether the current strong earnings can be sustained after the capital expenditure cycle peaks.

For investors, strong earnings may continue to outweigh valuation concerns until the peak of the AI investment cycle appears. However, as incremental market value becomes increasingly reliant on optimistic assumptions, stock volatility may rise further, and the value of downside protection is also increasing.

AI is Not 1999, but the Market Has Run Ahead of the Macro Picture

Goldman Sachs's core assessment is that today's AI cycle is not like 1999–2000, which was built on extreme valuation expansion, macroeconomic overheating, and financing imbalances.

Current fundamentals are not significantly deteriorating; they are even strengthening. AI-related companies have strong earnings, capital expenditure plans continue to be revised upward, and the market therefore has reasons to keep buying related assets. Compared to the late 1990s, forward valuations have not shown the same degree of runaway expansion.

But this does not mean the risk is lower. The market cap growth of AI-related companies has clearly outpaced baseline macroeconomic calculations. To justify current prices, one must assume AI winners can secure a higher-than-normal share of productivity gains for an extended period.

In other words, the core bet of the current market is not that "valuations can expand infinitely," but that "exceptionally high earnings can persist."

What Resembles the 90s is Investment Intensity; Other Bubble Signals Have Not Yet Appeared in Unison

The late stages of the 1990s tech bubble had four typical signals: investment remaining at abnormally high levels, declining macroeconomic profit margins, rapidly rising corporate financing needs and leverage, and a widening current account deficit.

Currently, the only clearly evident signal is the first one: accelerating AI capital expenditures. The report states that tech investment as a share of GDP has already surpassed the 1990s peak, and its growth rate is faster. Hyperscale cloud providers' expectations for 2026 capital expenditures have increased by nearly 80% compared to six months ago. On the current trajectory, AI-related investment could approach or even exceed the peak of the 1990s tech investment boom in the coming years.

However, this capital expenditure cycle still differs from that of the past. First, its duration has not yet reached the length of the late 1990s. Second, its coverage is not as broad. The 1990s tech investment resembled a broad-based economic expansion, whereas today's AI capital expenditures are more concentrated among hyperscale cloud providers, semiconductors, and the related infrastructure chain.

The most crucial macro-level contrast lies in profits.

In the late 1990s, corporate profit margins peaked and began declining after 1997, eroded by rising wages and unit labor costs. The current situation is different. The corporate profit share of GDP remains near highs, and productivity growth has not been completely offset by wage acceleration similar to back then.

Corporate financing has also not followed the same path. Free cash flow for hyperscale cloud providers has declined noticeably, and the share of capital expenditures to operating cash flow has risen sharply. However, for the entire corporate sector, the gap between savings and investment has not significantly deteriorated because profit growth has largely offset the rising investment rate.

External imbalances are also different. In the late 1990s, the U.S. current account deficit widened; currently, the deficit is actually narrowing. At least from the perspective of macroeconomic imbalances, the current AI cycle has not yet developed the typical cracks seen at the end of the previous bubble.

$27 Trillion in Market Cap Increase, Exceeding the Baseline Macro Ledger

Changes at the market level are more aggressive.

Since the end of November 2022, the incremental value of AI-related companies is approximately $27 trillion, higher than the level of around $19 trillion in November 2025. Meanwhile, traditional U.S. equity valuations remain near historical highs; the Shiller CAPE ratio has only been higher at the end of 1999 and in 2000.

However, there is a key difference between this rally and 1999: earnings expectations are also being revised upward rapidly. Because EPS expectations have risen, even as stock prices continue to climb, forward P/E ratios have not increased in parallel this year. Recent gains have been driven more by earnings than by pure valuation expansion.

The problem is that the macroeconomic ledger does not provide support of comparable magnitude. Baseline calculations show that the present value of new capital income for the U.S. economy from AI productivity gains is about $9 trillion. Even using a more conservative market definition, focusing only on "pure AI" companies, the related value increase is about $14 trillion. Adding 25% of the incremental value from other AI-related companies brings the total to about $17 trillion, still above the baseline calculation.

To Justify Current Prices, One Must Bet on Winners Keeping a Larger Long-Term Profit Share

Current market prices are not entirely inexplicable, but they require more optimistic assumptions.

These assumptions include: faster AI adoption, higher productivity gains from AI, capital capturing a larger share of the economic benefits, or U.S. companies securing a larger portion of global AI revenues.

One optimistic scenario outlined in the report is: U.S. companies capture 50% of global related revenues, the capital income share is significantly above the economic average, AI adoption is faster, and the discount rate is lower. Only if multiple conditions hold simultaneously does the potential value more easily cover the current market cap increase.

The most compelling optimistic narrative is that AI-related companies can maintain a higher share of productivity gains over the long term. So far, this narrative has indeed been supported by earnings. Strong profits and high margins for semiconductor companies, cloud providers, and infrastructure beneficiaries are precisely what are supporting the market.

But this is also the point of vulnerability. In the early stages of a productivity acceleration, profit shares typically rise; over a longer horizon, competition, investment expansion, and a new wave of innovation may erode excess returns. While the AI industry has high concentration and technical characteristics that may favor capital owners, how long the barriers for current winners can last remains an open question.

The Greatest Risk Shifts from "Valuation Bubble" to "Earnings Bubble"

The AI investment boom itself is generating substantial profits. Companies selling chips, computing power, and building data centers directly benefit from rising capital expenditures. As long as the investment peak is not yet in sight, upward earnings revisions may continue to outweigh valuation concerns.

However, if the market directly extrapolates the strong profits of the next two or three years far into the future, risks will rise. Capital expenditures cannot grow at the current intensity forever. Once the investment cycle peaks, it may become harder to gauge the earnings trajectory for the companies currently benefiting most directly.

This is also why "forward P/E not being expensive" does not necessarily mean cheap. Cyclical industries and commodity companies often appear inexpensive at the peak of their cycles because the earnings denominator is too high. Whether the AI infrastructure chain will face a similar issue depends on how long the investment intensity can last, how quickly AI benefits materialize, and whether technological innovation reduces reliance on high-intensity capital spending.

AI May Be Masking Weakness in the Non-AI Economy

Compared to the 1990s, there is another important difference in the current macroeconomic backdrop.

In the late 1990s, U.S. domestic demand was extremely strong; in the final two years, real domestic demand grew at an annualized rate of nearly 6%, with robust consumption, residential investment, and non-tech investment. Capital inflows from the Asian and emerging market crises, a strong dollar, and global commodity price deflation actually masked overheating within the U.S., prolonging the cycle.

The current situation is the opposite. The U.S. economy outside of AI is not that strong. Non-tech investment is weak, consumption growth is far below the late 1990s level, and real disposable income grew at an annualized rate of about 1% over the past two years, compared to 5%–6% in the late 1990s.

This suggests that the AI boom may not be adding fuel to an already overheated economy, but rather offsetting weakness in areas outside AI. Consequently, the kind of extreme bubble seen in 1999–2000 and the typical imbalances before the 2001 recession might be less likely to appear. However, if the AI narrative faces setbacks, the non-AI parts may not provide sufficient support.

Volatility Shifting Gears, Portfolios Need More Downside Protection

Market structure has already begun to change.

Credit spreads remain tight, differing from the path of gradually rising credit pressure in 1998–2000. But stock volatility has begun to rise more noticeably. Over the past few months, single-stock implied volatility has increased, U.S. single-stock option skew has moved lower, and demand for call options relative to put options has risen.

At the same time, implied correlation has fallen to very low levels, suppressing index volatility, but long-term index volatility has also been creeping higher. Gains are also more concentrated. Broad index performance remains more moderate than in the late 1990s, but the gains in the semiconductor index over the past few years have approached the performance of the Nasdaq in its later stages. In April and May, the consecutive two-month gains for the Nasdaq, South Korea, Taiwan, the SOX semiconductor index, and a basket of unprofitable tech stocks all reached multi-year highs.

As long as the investment cycle peak has not yet arrived, strong earnings may continue to dominate the market. But as prices become increasingly dependent on optimistic assumptions, the value of downside protection increases. In terms of strategy, it may be more about staying in the trade while using put protection or replacing some spot exposure with call options to control drawdowns.

There is also a countervailing risk on the interest rate side: if the non-AI economy's vulnerabilities are exposed after the AI investment peak passes, the probability of a significant decline in interest rates at that time may be higher than usual.

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Related Questions

QAccording to Goldman Sachs, what is the key difference between the current AI investment cycle and the 1999-2000 tech bubble?

AThe key difference is that the current cycle is not driven by extreme valuation expansion, macroeconomic overheating, and financing imbalances like the 1999-2000 bubble. Instead, strong earnings growth and rising capital expenditure plans are supporting the market, and forward-looking P/E ratios have not reached the same extreme levels. The current market's core bet is on the sustainability of supernormal profits rather than unlimited valuation expansion.

QWhat are the main risks for the AI trade highlighted in the Goldman Sachs report, and how have they shifted?

AThe main risks have shifted from 'valuation bubble' concerns to 'earnings bubble' concerns. While forward P/E ratios do not appear excessively high due to concurrent earnings revisions, the real risk is whether the current strong earnings of AI infrastructure companies (chips, cloud, data centers) can be sustained after the capital expenditure cycle peaks. The market is becoming more vulnerable to any news that challenges the optimistic AI narrative.

QWhat is one major similarity and one major difference between the current AI capital expenditure cycle and the 1990s tech investment boom?

AOne major similarity is the intensity of investment. The tech investment-to-GDP ratio has surpassed the 1990s peak and is rising faster. A major difference is the scope: the 1990s boom was a broader, economy-wide expansion, whereas today's AI capex is more concentrated among hyperscale cloud providers, semiconductor companies, and related infrastructure chains.

QWhy does the report suggest that current AI-related stock prices require optimistic assumptions to justify?

AThe market value increase of AI-related companies since late 2022 (~$27 trillion) exceeds the baseline macroeconomic calculation of the present value of added capital income from AI productivity gains (~$9 trillion). To justify current prices, one must assume a faster AI adoption rate, higher productivity gains, a larger share of economic gains going to capital (companies), or U.S. firms capturing a disproportionately high share of global AI revenues.

QWhat portfolio implications does Goldman Sachs draw from the analysis of the AI investment cycle?

AThe report suggests that market volatility is likely to increase further. While strong earnings may continue to outweigh valuation concerns until the investment cycle peaks, the growing reliance on optimistic assumptions raises the value of downside protection. Investors are advised to consider strategies like staying invested but using put options for protection or replacing some spot exposure with call options to control drawdowns.

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