Contrary to fueling hype, public offerings from companies like OpenAI would introduce real financial data into the market. This transparency could ground the "AI bubble" conversation in actual performance metrics, clarifying the significant information gap that currently exists for investors.
Google's key advantage in AI is its unparalleled access to users' historical data across its ecosystem. By connecting this personal context to its Gemini model, it creates a deeply personalized experience that competitors starting with a "blank conversation" cannot easily replicate.
While training has been the focus, user experience and revenue happen at inference. OpenAI's massive deal with chip startup Cerebrus is for faster inference, showing that response time is a critical competitive vector that determines if AI becomes utility infrastructure or remains a novelty.
Microsoft is not solely reliant on its OpenAI partnership. It actively integrates competitor models, such as Anthropic's, into its Copilot products to handle specific workloads where they perform better, like complex Excel tasks. This pragmatic "best tool for the job" approach diversifies its AI capabilities.
The primary competitive vector for consumer AI is shifting from raw model intelligence to accessing a user's unique data (emails, photos, desktop files). Recent product launches from Google, Anthropic, and OpenAI are all strategic moves to capture this valuable personal context, which acts as a powerful moat.
While Google has online data and Apple has on-device data, OpenAI lacks a direct feed into a user's physical interactions. Developing hardware, like an AirPod-style device, is a strategic move to capture this missing "personal context" of real-world experiences, opening a new competitive front.
