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Kindred Ventures is heavily investing in AI infrastructure based on its projection of a massive compute shortage. It estimates demand will hit 80-100 gigawatts by 2030, while supply will only reach 40 gigawatts, creating a 60-gigawatt gap that presents a major investment opportunity for companies solving this bottleneck.

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The anticipated scarcity of AI inference compute is forcing a new VC playbook. Firms predict they will need to broker "special deals" between their own portfolio companies to secure capacity for startups. This transforms the VC value-add from providing cloud credits to acting as a strategic dealmaker for compute, a critical and scarce resource.

AI's massive compute needs are creating critical bottlenecks in the energy supply itself, not just in GPU availability. Power generation infrastructure suppliers like GE Vernova have backlogs spanning years, indicating the next competitive front for AI dominance is securing raw gigawatts of power.

The AI revolution isn't just about software. For the first time in years, venture capital is flowing into hardware like specialized semis and even into energy generation, because power is the core bottleneck for all AI progress.

The primary bottleneck for scaling AI over the next decade may be the difficulty of bringing gigawatt-scale power online to support data centers. Smart money is already focused on this challenge, which is more complex than silicon supply.

Despite massive infrastructure investments, Greg Brockman believes demand for AI will consistently outstrip supply, leading to a long-term state of "compute scarcity." As AI tackles bigger problems like curing diseases, the appetite for computation will prove effectively infinite, making it a chronically scarce resource.

The focus in AI has evolved from rapid software capability gains to the physical constraints of its adoption. The demand for compute power is expected to significantly outstrip supply, making infrastructure—not algorithms—the defining bottleneck for future growth.

While model performance gains headlines, the true strategic priority and bottleneck for AI leaders is the 'main quest' of securing compute. This involves raising massive capital and striking huge deals for chips and infrastructure. The primary competitive vector has shifted to a capital war for capacity.

Sarah Friar reveals the extreme scarcity of AI compute, stating it's virtually impossible to acquire more for 2026 and very limited for 2027. This forces OpenAI to make capital-intensive bets on data centers now, like their Michigan facility, which won't yield compute until late 2027, just to secure future supply.

While chip fabrication is complex, the most binding constraint for AI compute providers is physical infrastructure. The entire industry's growth is bottlenecked by the availability of powered data center buildings, a problem projected to persist for at least another 15-18 months.

A VC from Emergence Capital argues the industry is in a "massive compute shortage" driven by compute-intensive reasoning models. This hardware constraint is forcing a strategic shift in investment theses, with VCs now actively seeking companies that make intelligence more efficient at every level, from chips to algorithms.

VC Firm Kindred Ventures Bets on a 60-Gigawatt AI Compute Gap by 2030 | RiffOn