We have been tracking AI from its silicon stage to data centers. Now comes the moment of truth we've been waiting for—does any of this actually generate revenue? | The uncomfortable question facing AI investors is whether companies can convert hardware spending into sustainable business revenue. The answer determines the winners. |
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| | The $723 Billion Reality Check | Up from a staggering $595.7 billion in 2024, global public cloud spending has reached $723.4 billion in 2025, highlighting the cloud's significance as a delivery channel for enterprise AI. By 2028, approximately 75% of AI servers will be cloud-based, making its growth a direct proxy for AI monetization. | However, companies often prefer renting instead of owning because meeting the required power of 100 kW per rack (expected to reach 1000 kW by 2029) for high-density AI racks can be challenging. | Retrofitting does not work with AI infrastructure. To address power, cooling, and capital constraints, cloud platforms resell compute as a service, essentially turning upfront capital expenditures into monthly operating expenses. |
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| | The Pricing That Reveals Everything | Cloud pricing provides a window into the AI monetization process. | Take the AWS p5.48xlarge GPU instance: | | Customers are encouraged into committed usage because consistent revenue beats volatile demand. | Even in model pricing, output tokens cost almost 8 times more than input tokens: | Google Gemini Flash: $0.15/M input tokens, $0.60/M output tokens. OpenAI GPT-5.2: $1.75/M input tokens, $14.00/M output tokens.
| Generated value decides the margin—not consumed compute. |
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| | The Death of Per-Seat Software | Enterprise software pricing is undergoing a structural shift. | Vendors charging per employee per month for decades are being replaced by AI agents. This breaks the traditional model. | Close to two-thirds of enterprises are expected to prefer usage- or results-based pricing by the end of 2026. Vendors are responding with hybrid models combining a base platform fee with variable usage- and results-based charges, projecting AI spend as labor substitution and capturing consistent revenue. |
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| | The Productivity Numbers That Matter | Board-level metrics show that measurable returns matter more than hype. | Microsoft Copilot studies reveal: | 29% quicker task completion. 70% of users reported higher productivity. 14 minutes saved per user per day.
| Organizations adopting AI report 3x higher revenue per employee, with advanced usage improving productivity by 37%. These figures signal the end of experimentation and the necessity for AI budgets to be justified with hard data. |
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| | The Adoption Gap Nobody Wants to Admit | Strong metrics do not equal full deployment. Only one-fourth of enterprises move 40% of AI pilots into production. Gartner notes that after proof-of-concept, 30% of generative AI projects fail, and at least 40% of agentic AI projects are expected to be canceled by 2027 due to governance issues. | 70% of tech leaders lack full visibility into AI utilization. ~80% of employees use AI tools without management approval. Only 13% of IT leaders confirm proper AI governance.
| The EU AI Act comes into effect in August 2026, causing many global firms to slow approvals. Between experimentation and production, most AI projects are buried. |
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| | Where Money Concentrates | Large platforms spend more. Hyperscalers control GPU allocation, power access, and billing; enterprise platforms control data, permissions, and workflows. Bundling gives incumbents a competitive edge, while smaller solutions struggle to prove ROI. | Specialized GPU clouds can generate up to $20 billion by focusing on high-performance workloads—owning a real constraint is key. |
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| | The Global Divide | AI adoption is uneven: | | Countries like the UAE and Singapore, with early digital infrastructure and national training programs, lead adoption. The gap signals future demand, not immediate revenue. |
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| | Your Investment Cheat Sheet | The Core Truth: Before 2026 ends, AI will transition from counting GPUs to utilization and pricing. Cloud platforms turn scarce hardware into recurring revenue, with monetization centered around outcomes. | Key Signals to Watch: | Conversion Rate – Cloud spending to assessable revenue. Production Deployment – Pilots reaching production. Pricing Model Shift – Vendors moving from seat-based to usage- or outcome-based pricing.
| Winners: | Hyperscalers like AWS, Azure, and GCP. Enterprise platforms with AI integration and bundling advantage. Specialized GPU clouds owning real constraints. Outcome-based pricing vendors.
| Losers: | Point solution AI tools lacking security or ROI proof. Per-seat pricing vendors. Companies selling tools without measurable outcomes.
| Red Flags: | High pilot counts, low production conversion. Persisting governance issues. Regulatory delays from the EU AI Act.
| Bullish Signals: | Momentum gains in reserved capacity bookings. Higher production deployment rates. Maturing governance frameworks. Scaling adoption of outcome-based pricing.
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| | The Bottom Line | From the AI supply chain, we learn where hardware bottlenecks focus value. Through deployment, we now understand software monetization's role in determining success. | AI capability is important, but the key signal is conversion—how much cloud spending turns into assessable revenue, how many pilots reach production, and how effectively vendors price results over compute. Selling tools without measurable outcomes won't generate consistent revenue. Real winners control distribution alongside billing. | Remember: monetization decides who stays. |
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| | | | | Important disclosures: This newsletter is provided for informational purposes only and does not constitute investment advice. All investments involve risk, including possible loss of principal. Please consult with your financial advisor before making investment decisions. |
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