FuturProof #240: Differing Economic Realities of AI
Most AI organizations cannot be foundations focused on improving the world. OpenAI was one of the few that started as a non-profit, but even it pivoted to a for-profit model—proof that investors have a limited appetite for ventures without a clear path to returns.
As a result, AI startups need a “come to Jesus” moment: they must scrutinize the long-term economics of their business models and figure out how they’ll contend with big tech incumbents rolling out their own AI products and services.
Ultimately, the gap between startups and large companies in AI has less to do with who builds the better AI model, and more to do with who can profitably bring that model to market faster and get network effects.
Data
Google uses billions of daily search queries to train AI essentially for free, while startups pay high fees to license or clean datasets.
The global demand for AI computing is outpacing supply by a factor of 10, making data acquisition even more costly for smaller players.
Companies like OpenAI have reportedly spent up to 80% of their raised capital on data and compute resources—while many tech giants have data and computing available for free or with low opportunity cost.
Startups are not only competing with tech giants but depend on many of them as customers and investees for access to data, infrastructure, and capital.
Distribution
Tech giants can instantly push AI features to existing user bases; Google reaches billions via Search and Android.
Startups must spend heavily on marketing, partnerships, and brand-building to gain traction.
Seamless integration leads to faster adoption; big tech sees nearly immediate ROI, while startups may wait months or years for profitable user volumes.
Big companies can absorb short-term AI losses by offsetting them with profits from other lines of business (e.g., ads, and cloud services).
Infrastructure
AI-related cloud costs jumped 30% in 2024, according to Datanami, straining the budgets of smaller firms.
OpenAI’s annual cloud spending for ChatGPT could approach $4B, while companies like Microsoft or Amazon can leverage in-house data centers at a fraction of that cost.
The Startup Edge
Smaller teams can pivot fast, develop niche solutions, and bring specialized products to market before big tech notices.
Startups can partner with cloud providers or larger companies for discounted computing and data access, lowering overall costs.
Speed and deep innovation can unlock loyal customers in sectors that big tech overlooks.
Bottom Line
Even if two companies build the same AI offerings, big tech can outspend, outscale, and out-distribute them—having a clearer path to profitability where most startups are hemorrhaging cash. Still, speed and specialized innovation allow smaller players to stand out—if they can manage costs and quickly find their niche.
As an example, despite Google being the company that introduced the Transformer architecture in 2017—paving the way for breakthroughs like GPT-3 and ChatGPT—many had written them off in the race against OpenAI. However, it’s too early to make that call, as the economics of building sustainable AI products and services still heavily favor tech giants.
Given how important data, distribution, and infrastructure are in profitably building and running AI products and services, AI may be one of the technologies where big tech has an insurmountable advantage over startups. I think about this unique dynamic daily as we make investment decisions: where the sheer speed and innovation, which is typically enough to compete, may not be enough for startups to muscle their way into building a real competitor to the big tech companies.
Disclaimers and Sources:
Not any type of advice. Conflicts of interest may exist. For informational purposes only. Not an offering or solicitation. Always perform independent research and due diligence.
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Sources: Datanami, Data Center Dynamics, Andreessen Horowitz (a16z), The Information, Moesif, Shaip, Precedence Research, Exploding Topics, Ascendix Tech, Google, Suitebriar Blog, and WebFX.