Major AI labs plan and purchase GPUs on multi-year timelines. This means NVIDIA's current stellar earnings reports reflect long-term capital commitments, not necessarily current consumer usage, potentially masking a slowdown in services like ChatGPT.

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The strongest evidence that corporate AI spending is generating real ROI is that major tech companies are not just re-ordering NVIDIA's chips, but accelerating those orders quarter over quarter. This sustained, growing demand from repeat customers validates the AI trend as a durable boom.

NVIDIA's financing of customers who buy its GPUs is a strategic move to accelerate the creation of AGI, their ultimate market. It also serves a defensive purpose: ensuring the massive capital expenditure cycle doesn't halt, as a market downturn could derail the entire AI infrastructure buildout that their business relies on.

The world's most profitable companies view AI as the most critical technology of the next decade. This strategic belief fuels their willingness to sustain massive investments and stick with them, even when the ultimate return on that spending is highly uncertain. This conviction provides a durable floor for the AI capital expenditure cycle.

Despite bubble fears, Nvidia’s record earnings signal a virtuous cycle. The real long-term growth is not just from model training but from the coming explosion in inference demand required for AI agents, robotics, and multimodal AI integrated into every device and application.

Current AI investment patterns mirror the "round-tripping" seen in the late '90s tech bubble. For example, NVIDIA invests billions in a startup like OpenAI, which then uses that capital to purchase NVIDIA chips. This creates an illusion of demand and inflated valuations, masking the lack of real, external customer revenue.

NVIDIA’s business model relies on planned obsolescence. Its AI chips become obsolete every 2-3 years as new versions are released, forcing Big Tech customers into a constant, multi-billion dollar upgrade cycle for what are effectively "perishable" assets.

The debate on whether AI can reach $1T in revenue is misguided; it's already reality. Core services from hyperscalers like TikTok, Meta, and Google have recently shifted from CPUs to AI on GPUs. Their entire revenue base is now AI-driven, meaning future growth is purely incremental.

Jensen Huang counters accusations of inflating revenue by investing in customers. He clarifies the investment in OpenAI is a separate, opportunistic financial bet, while chip sales are driven by market demand and funded independently by OpenAI's own capital raising—not by NVIDIA's investment.

While spending on AI infrastructure has exceeded expectations, the development and adoption of enterprise-level AI applications have significantly lagged. Progress is visible, but it's far behind where analysts predicted it would be, creating a disconnect between the foundational layer and end-user value.

Companies like CoreWeave collateralize massive loans with NVIDIA GPUs to fund their build-out. This creates a critical timeline problem: the industry must generate highly profitable AI workloads before the GPUs, which have a limited lifespan and depreciate quickly, wear out. The business model fails if valuable applications don't scale fast enough.