Exclusive: Zuckerberg on Meta's AI Push
THE SO WHAT
Ultra-low API pricing as Meta’s core AI monetization lever is a margin play on everyone building on top of their models—cheap inference now, ecosystem lock-in later. If you’re choosing a model provider, price alone is a trap; model-switching costs and long-term dependency need to be in your architecture review this quarter.
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