Technology Report
Sovereign AI Is the Next Fault Line in the Global Tech Sector
Sovereign AI Is the Next Fault Line in the Global Tech Sector
The electronics supply chain was only the start of tech’s global decoupling.
Technology Report
The electronics supply chain was only the start of tech’s global decoupling.
This article is part of Bain's 2024 Technology Report.
As technology companies race to capitalize on breakthroughs in large language models (LLMs) and generative artificial intelligence (AI), executives must now grapple with an additional layer of complexity and opportunity: the emergence of “sovereign” AI blocs around the world.
De-globalization in technology began with the electronics supply chain, particularly semiconductors. Disruptions from Covid-19 and geopolitical tensions between the US and China (including export controls and restrictive policies on trade and talent) pushed tech companies to rapidly invest in making their supply chains more resilient. They’ve expanded their manufacturing footprints beyond China and created more flexibility within their talent pools. With government support, companies are building new semiconductor hubs in places including the US, India, Germany, and Japan.
Now the post-globalization movement in technology is spreading to data, AI, security, and privacy. Governments worldwide—including India, Japan, France, Canada, and the United Arab Emirates—are spending billions of dollars to subsidize sovereign AI. In other words, they’re investing in domestic computing infrastructure and AI models developed within their borders, trained on local data and languages.
While it’s tempting to compare sovereign AI to the decoupling of semiconductor supply chains, the challenges are quite different. For example, compared to the semiconductor market, which has a complex supply chain with intellectual property fragmented throughout, the AI market is easier to enter. This is largely due to open-source LLMs, which make launching new AI products simpler.
As the sovereign AI push picks up steam, several factors will determine how it plays out.
Establishing successful sovereign AI ecosystems will be time-consuming and incredibly expensive. While less complex in some important ways than building semiconductor fabs, these projects require more than securing local subsidies.
Hyperscalers and other big tech firms may continue to invest in localized operations. This could fragment their ecosystems and R&D globally, though their scale will remain a significant advantage.
New AI workloads and fragmentation created by sovereignty could enable AI challengers to reach hyperscale. These challengers will need to recognize the power of the current hyperscaler ecosystem and prioritize business opportunities that capitalize on their competitive advantages, while partnering with big tech companies where possible.
Data center operators and hardware suppliers will enjoy a short-term windfall as companies and governments splurge on computing capacity. Nvidia, for example, projected $10 billion in revenue from governments’ sovereign AI investments in 2024, up from zero last year. However, data center owners risk overcapacity, similar to telecom networks in the early 2000s. Suppliers of silicon and other hardware may see accelerated growth rates level off long-term.
Lastly, investors have a chance to stake high-value claims in a hot asset class, including new sub-asset classes. For example, secured financing tied to GPUs is becoming a more common form of corporate debt. Successful investors will base bets on a well-defined risk/return profile, deciding between lower-risk investments in “picks and shovels” like GPUs and data centers or higher-risk/higher-reward investments such as LLMs and cloud platforms.