TL;DR
- Strategic Partnership: Apple agreed to pay Google $1 billion annually to power Siri with Gemini AI models.
- Commoditization Bet: Apple believes foundational AI models will become commodities, making massive proprietary investments unnecessary.
- Financial Reversal: This deal reverses the traditional payment flow, as Google currently pays Apple $20 billion annually for Safari search placement.
- Optionality Strategy: Apple maintains internal model development while using Private Cloud Compute to enable easy provider switching.
Google pays Apple $20 billion annually to stay out of search. This month, Apple reversed the flow to some extend, agreeing to pay Google $1 billion annually for AI.
Apple agreed to have Google Gemini power Siri and other Apple Intelligence products. While Google maintains its massive payment to be Safari’s default search engine, this new partnership reverses the financial flow and signals a strategic conviction inside Apple: that spending billions on proprietary AI models makes no sense when foundational models will become commodities within years.
The Partnership’s Strategic Logic
Behind this reversal lies a calculated assessment of the AI landscape. Apple’s choice for AI models came down to three hyperscaler-backed options: Google, Microsoft-backed OpenAI, or Amazon-backed Anthropic.
Google won the contract partly on price. Apple will run the Gemini model on its own Private Cloud Compute servers, maintaining control over infrastructure while outsourcing the model itself.
“Apple still has a team working on its own internal models that it could take advantage of in the future. But some Apple leaders hold the view that large language models will become commodities in the years to come and that spending a fortune now on its own models doesn’t make sense,” — Aaron Tilley, The Information.
If that thesis proves correct, competitors pouring billions into proprietary development will find themselves owning expensive infrastructure that delivers limited competitive advantage. However, if models consolidate into an oligopoly rather than commoditizing, Apple’s dependence on Google creates strategic vulnerability.
Promo
The Private Cloud Compute architecture positions Apple to switch model providers without rebuilding infrastructure. By controlling deployment infrastructure while treating the model as replaceable, Apple creates optionality that competitors building vertically integrated AI stacks lack.
Apple’s Contrarian Approach
This calculated restraint diverges sharply from industry norms. Competitors like OpenAI, Meta, and Google have invested substantial resources into developing LLMs.
Meta has invested $14 billion in Scale AI. Meanwhile, hundreds of billions are flowing into AI infrastructure buildout by hyperscalers.
Market signals suggest Apple’s commodity thesis may have merit. Many LLM developers are currently losing money despite price wars. DeepSeek R1 and other Chinese models are priced far lower than OpenAI’s offerings, forcing Western providers into unsustainable pricing. Many companies are starting to report diminishing returns from scaling AI models.
The substantial price differential between Chinese and Western models indicates potential margin collapse across the industry. If models become commodities, locking in fixed-price contracts now protects against having to build expensive infrastructure later while competitors write down billions in stranded assets.
Apple’s approach reflects its hardware-first business model. Unlike hyperscalers that need proprietary AI to sell cloud services, Apple profits from device sales and services.
The Stakes
The implications extend beyond Apple’s balance sheet. Wall Street started signaling in November 2025 that Apple’s conservative AI spending could prove advantageous.
If Apple is right about commoditization, tech giants spending billions on infrastructure face potential value destruction. If models instead consolidate into an oligopoly, Apple’s dependence on Google creates vulnerability.
Competition policy adds another dimension. The deal concentrates power between two companies already dominant in mobile ecosystems, with Google gaining distribution to billions of Apple devices while Apple gains pricing leverage through partnership optionality, having demonstrated willingness to switch providers based on cost.
If models commoditize, the Apple-Google partnership represents efficient resource allocation. Apple avoids duplicative investment while maintaining competitive leverage through credible threat of switching providers. If models consolidate into oligopoly, the same partnership entrenches dominant platforms and raises barriers to entry.
What Comes Next
Testing this thesis requires monitoring two key variables. Google’s pricing advantage faces competitive pressure from rivals who could force price increases. Meanwhile, Apple’s internal model team continues producing alternatives that could replace or supplement Gemini.
Apple is building its own models based on Gemini that will power a more advanced version of Siri, suggesting the company is hedging its commodity bet with internal capabilities.
This dual-track approach of paying for Gemini while maintaining internal model development indicates Apple recognizes uncertainty in its commodity thesis.
This creates strategic optionality: if commoditization occurs, Apple has low-cost access through partnerships; if consolidation prevails, Apple maintains the technical capability to reduce dependence on external providers.
The wager tests whether in AI’s next chapter, valuable models will be those priced as commodities, or whether Apple has underestimated the competitive moat proprietary models can provide.
