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Venture Capital and Private Equity Propel $1 Trillion Circular Financing in AI Sector

Venture capital and private equity converge, fueling $1 trillion in circular financing among AI giants like OpenAI and NVIDIA, raising systemic risk concerns.

As the boundaries between venture capital and private equity dissolve, a new hybrid investment landscape is emerging, raising alarms about systemic risks in the technology sector. This convergence, along with “circular financing” practices among leading AI companies, is reminiscent of past market bubbles, potentially threatening the broader economy as it continues to grow.

Historically, venture capital (VC) and private equity (PE) occupied distinct niches—VC focused on high-risk, early-stage investments while PE typically acquired established firms with steady cash flows. Recently, however, this division has blurred, particularly in the AI domain. Major players in private equity, private credit, and asset management, including firms like Blackstone and Carlyle, are now extending debt to data center developers, a space traditionally dominated by venture-backed entities. By early 2025, private debt funds had funneled around $450 billion into technology, a notable increase from $350 billion the previous year.

This shift signifies a dramatic transformation in the capital flow within the technology ecosystem. A notable example is Blue Owl Capital’s engagement in Meta’s $29 billion data center project, illustrating how private credit firms are stepping into roles historically occupied by traditional project finance and venture capital.

Compounding these developments, analysts are increasingly concerned about “roundabouting,” where major technology firms invest in and purchase from one another, creating a complex web of interdependencies. For instance, OpenAI has struck deals with NVIDIA and Oracle that together exceed $1 trillion. The intricate financial arrangements include Oracle buying $40 billion worth of NVIDIA GPUs, which OpenAI will lease for $300 billion over five years, while NVIDIA invests $100 billion in OpenAI. This reliance among companies was succinctly captured by Financial Times columnist Bryce Elder, who likened the scenario to a caravan maker selling caravans to a park that only buys its models.

Amidst these dynamics, the venture capital landscape has shifted towards a herd-like mentality, with capital flowing in a synchronized, momentum-driven manner rather than through independent risk assessments. The traditional “spray and pray” approach has evolved, raising concerns that larger funds are increasingly unable to find viable investment opportunities in their targeted markets. This has resulted in an over-concentration of investments among a handful of tech stocks, dubbed the “Magnificent Seven,” which now account for over 50% of the market capitalization of the S&P 500 index. These stocks saw their second-quarter earnings rise by 26%, while the broader index barely moved.

However, beneath the soaring valuations lies a troubling cash flow problem. AI companies are reportedly struggling to generate profits, with significant expenditures outpacing revenues. For example, xAI is spending $1 billion monthly, while projected earnings for the year are just $500 million. Similarly, a forensic analysis found that OpenAI lost $11.5 billion in just one quarter of 2025. A report from Sequoia Capital highlighted a staggering $500 billion gap between projected revenues from AI infrastructure investments and actual earnings.

This alignment of venture capital and private equity has led to opaque financial structures that allow hyperscalers to use sale-leaseback agreements to build data centers without reflecting the debt on their balance sheets. In the case of Meta’s deal, its ownership of the special purpose vehicle (SPV) that constructs the data center complicates how leverage is perceived. As these financial arrangements become more convoluted, the risk of rapid changes in market dynamics increases.

Meanwhile, the depreciation of key assets such as graphics processing units (GPUs) exacerbates concerns. NVIDIA has accelerated its production cycle, releasing new models annually, which reduces the value of existing GPUs rapidly. Analysts from Barclays warned that this depreciation could lead to significant earnings write-offs for major players like Google and Microsoft, further straining financial health.

As financial economist Hyman Minsky described, the current dynamics may reflect “Ponzi finance,” where cash flows from operations are insufficient to meet debt obligations. The cash flow issues are acute in the AI sector, and the lack of alternative economic growth sources raises concerns about the potential impact of a market correction.

The intertwining of the AI sector and national industrial policy complicates the situation further. Recently, OpenAI’s CFO hinted at seeking federal guarantees for GPU purchases, although both the government and the company’s CEO have downplayed the likelihood of such measures. The White House’s AI Action Plan emphasizes federal support for AI innovation and infrastructure, highlighting a growing collaboration between governmental entities and tech firms.

In light of these trends, the current landscape bears similarities to previous economic bubbles, such as the dot-com boom and the housing crisis. Analysts warn that the data center boom, with its overwhelming influence on GDP growth, could lead to a swift downturn without countervailing forces in the economy. Should a tech sector bust occur, the repercussions may be felt across the broader market and household net worth, given the substantial investments tied to AI-related stocks.

The convergence of venture capital and private equity, coupled with complex inter-company financing and ballooning valuations, has created a precarious financial landscape in the AI sector. Without sustainable growth and profitability, the risk of systemic vulnerability looms large, raising the critical question of how these intertwined financial arrangements will withstand a potential market correction in the future.

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Marcus Chen
Written By

At AIPressa, my work focuses on analyzing how artificial intelligence is redefining business strategies and traditional business models. I've covered everything from AI adoption in Fortune 500 companies to disruptive startups that are changing the rules of the game. My approach: understanding the real impact of AI on profitability, operational efficiency, and competitive advantage, beyond corporate hype. When I'm not writing about digital transformation, I'm probably analyzing financial reports or studying AI implementation cases that truly moved the needle in business.

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