by Christopher Gannatti, CFA Global Head of Research, WisdomTree
Key Takeaways
- The escalating capital expenditures of tech giants like Alphabet, Amazon and Microsoft underscore the heavy investment required to sustain artificial intelligence advancements, with quarterly capex levels rising 12x over the past decade.
- WisdomTree has three Funds that relate to AI directly and provide access to diverse sectors in the AI ecosystem, including semiconductors, cybersecurity and cloud computing, all of which have experienced recent high volatility due to shifting Fed expectations.
- With software-as-a-service (SaaS) business models enabling rapid scalability, our cloud and cybersecurity Funds offer exposure to companies poised for high-margin growth, while our AI Fund adds diversified AI exposure across both software and hardware sectors.
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It has been nearly two years since the release of ChatGPT, the viral application that achieved a milestone of 100 million users in two months1 and changed our collective perception regarding artificial intelligence’s potential.
Global equity markets have since been led by the Magnificent 72—the companies large enough to develop, train and run models with similar capabilities as ChatGPT.
Megatrends do not move in a simple upward trend without correction. Even if AI continues to march forward, it will naturally get tougher for the world’s largest companies to beat expectations and continually raise guidance to keep their already enormous market capitalizations growing.
This piece highlights a few ideas to participate in the exciting new technologies that are being developed.
CapEx: The Guidepost for Our AI Journey
Perhaps the hottest area of investment in the artificial intelligence space has been generative AI, the broader category of applications that ChatGPT represents. However, many of the most notable models are massive, with hundreds of billions, if not trillions, of parameters. The infrastructure and expertise needed requires a level of resources only realistic for the world’s largest firms.
The cloud hyperscalers,3 with their sprawling datacenters, are central to the story. We saw an example play out with OpenAI and Microsoft—OpenAI needed money, and Microsoft has thus far provided roughly $14 billion,4 but equally if not more important was access to Microsoft’s Azure cloud computing infrastructure.
Alphabet, Microsoft and Amazon—the companies running the three largest public cloud platforms—are in a race. Giving users on these platforms access to the largest AI models is an added carrot that, possibly, encourages users to spend even more money and helps these companies grow their cloud revenues that much faster.
Nvidia has also created an extremely valuable niche in this discussion of behavioral economics and business strategy. Each Nvidia chip release gets massive attention. Customers on the hyperscaler cloud platforms see the capabilities of the A100, then H100 and soon-to-be B100 chips—and they want access. Each cloud provider needs to provide at least a baseline level of access to Nvidia’s newest technologies or risk customers going elsewhere.
As Nvidia’s chips provide faster model development, training and inference capabilities, these companies continue to buy Nvidia’s chips—even if they all simultaneously are seeking to develop their own internal semiconductors.
Bottom line: While spending on AI infrastructure will not last forever, it should last for a number of years. The world’s most well capitalized companies see this as existential investment and at all costs plan to keep up with peers rather than focus on return on investment (ROI), telling us these firms are betting that there is a lot of growth to come.5
CapEx: A Rough 12x Increase over 10 Years
Figure 1 looks at the quarterly capital expenditures (CapEx), publicly reported for Alphabet, Amazon and Microsoft (the hyperscalers), plus Apple and Meta Platforms.
- In early 2014, the level of quarterly CapEx was around $5 billion.
- In the most recent available quarter, quarterly CapEx was above $60 billion.
The narrative around this figure is discussed when each company reports quarterly earnings. Currently, the language is focused on the idea of “maintaining” and “growing,” rather than signaling a return to more of a profitability focus. We are seeing an annualized rate in the neighborhood of $250 billion for just these five firms.
Figure 1: CapEx Trends over the Past 10 Years
Sources: Bloomberg, FactSet. Past performance is not indicative of future results.
Another way to look at this is shown in figure 2, where we open things up from the companies where CapEx is in extreme focus to the broader Magnificent 7. Nvidia and Tesla face different market dynamics than the aforementioned five companies in figure 1. Even so:
- Alphabet, Amazon, Meta and Microsoft are increasing CapEx as a percentage of sales in 2024 relative to the 10 years prior.
- Apple, Nvidia and Tesla, on the other hand, exhibited a lower percentage of CapEx to sales relative to the prior 10 years.
- Microsoft is the most notable, with its 2024 figure at 19.5%, whereas its 10-year average is closer to 11%. That’s the most significant acceleration—and we note that the 2024 revenue is much larger in absolute dollar terms than what was observed in prior years.
Figure 2: Capex to Sales
Sources: Bloomberg, FactSet. Past performance is not indicative of future results.
Software vs. Semiconductors—the Quintessential Question
WisdomTree has three distinct investment strategies that relate to AI directly:
- The WisdomTree Artificial Intelligence and Innovation Fund (WTAI): is designed to track, before fees and expenses, the total return performance of the WisdomTree Artificial Intelligence and Innovation Index. This strategy is generating exposure to what we think of as the AI ecosystem, which includes a mix of semiconductors, software, robotics, companies in biotech—the list goes on.
- The WisdomTree Cybersecurity Fund (WCBR): WCBR is designed to track, before fees and expenses, the total return performance of the WisdomTree Team8 Cybersecurity Index. Here, the exposure is to software-as-a-service (SaaS) cybersecurity companies. Team8 has delineated eight clear areas that represent their view of the future of cybersecurity, and constituents need to prove their capability in at least one of them.
- The WisdomTree Cloud Computing Fund (WCLD): WCLD is designed to track, before fees and expenses, the total return performance of the BVP Nasdaq Emerging Cloud Index. Here, the exposure is to SaaS companies more broadly—cybersecurity is included, but so is collaboration, videoconferencing, human resources, compliance, accounting, etc. The cloud business model is extremely flexible, and the key is that users are subscribing to a specific service.
Figure 3: Standardized Returns
Sources: LSEG, FactSet and WisdomTree, specifically data is from the PATH Fund Comparison Tool, as of 9/30/24. NAV denotes total return
performance at net asset value. MP denotes market price performance. Past performance is not indicative of future results. Investment return
and principal value of an investment will fluctuate so that an investor’s shares, when redeemed, may be worth more or less than their
original cost. Current performance may be lower or higher than the performance data quoted. For the most recent month-end and
standardized performance, click the relevant ticker: WTAI, WCBR, WCLD.
Path Dependency: 2023 Year-End Created a Lot of What We Saw in 2024
Equity markets are constantly taking in new information. During November and December 2023, it was viewed as nearly certain that the U.S. Federal Reserve would lower interest rates quickly in 2024. This was the primary reason that WTAI, WCBR and WCLD exhibited a roughly 30% return in two months.
While we’d love to say otherwise, for any two-month period, this should be viewed as an extremely unusual level of returns.
Figure 4: Remember the End of 2023?
Sources: LSEG, FactSet and WisdomTree, specifically data is from the PATH Fund Comparison Tool, for the period 10/31/23–12/31/23. NAV
denotes total return performance at net asset value. MP denotes market price performance. Past performance is not indicative of future
results. Investment return and principal value of an investment will fluctuate so that an investor’s shares, when redeemed, may be
worth more or less than their original cost. Current performance may be lower or higher than the performance data quoted. For the
most recent month-end and standardized performance, click the relevant ticker: WTAI, WCBR, WCLD.
Then the expectations of six to seven rate cuts starting in early 2024 did not materialize. The volatility in returns exhibited by WTAI, WCBR and WCLD in 2024 could be viewed at least in part as an adjustment to these expectations. We see this volatility on display in figure 5, which includes impacts from all sorts of other events as well.
Figure 5: Year-to-Date Volatility in WTAI, WCBR and WCLD
Sources: LSEG, FactSet and WisdomTree, specifically data is from the PATH Fund Comparison Tool, for the period 12/31/23–11/1/24. NAV
denotes total return performance at net asset value. MP denotes market price performance. Past performance is not indicative of future
results. Investment return and principal value of an investment will fluctuate so that an investor’s shares, when redeemed, may be
worth more or less than their original cost. Current performance may be lower or higher than the performance data quoted. For the
most recent month-end and standardized performance, click the relevant ticker: WTAI, WCBR, WCLD.
Conclusion: An Eventual Return to the Fundamentals
The SaaS nature of WCBR and WCLD—two strategies where this is basically THE exposure on a business model basis—is important to keep in mind. Companies operating in this model can develop software and then place it in the hands of hundreds of millions of users—if the demand is there. The key expense that many of them face is how to get customers to know they exist.
We note that few business models in history have been shown to scale as quickly or with as high a gross margin as SaaS businesses, when they are in favor.
WTAI, on the other hand, includes exposure to a diversified array of companies and business models. Making physical products—like Tesla making cars—is different from creating and distributing software. Still, we don’t believe that software alone accurately reflects AI.
Looking to figure 6, we see that the weighted-average sales growth across all three strategies has been strong. Even if the most recent year looks a bit lower relative to the three-year and five-year periods, these figures are still strong.
Figure 6: Weighted-Average Sales Growth for WTAI, WCLD and WCBR
Sources: LSEG, FactSet and WisdomTree, specifically data is from the PATH Fund Comparison Tool, as of 9/30/24.
1 Source: https://www.visualcapitalist.com/wp-content/uploads/2023/07/CP_Threads-Fastest-100-Million.jpg
2 The Magnificent 7 refers to Alphabet, Amazon, Apple, Microsoft, Meta Platforms, Nvidia and Tesla.
3 When we say “cloud hyperscalers” we refer to Alphabet, Amazon and Microsoft, which are widely cited as having the world’s three largest public cloud computing infrastructure platforms.
4 Source: Jordan Novet, “Microsoft CFO Says OpenAI Investment Will Cut into Profit this Quarter,” CNBC.com, 10/30/24.
5 Source: Nate Rattner, “Breaking Down the Tech Giants’ AI Spending Surge,” Wall Street Journal, 8/3/24.