Sources: Amazon is weighing using OpenAI's and its own Nova models to cut costs after Anthropic raised prices for using its models in Amazon products
THE SO WHAT
Model providers are discovering pricing power — Anthropic raising rates is enough to push Amazon to rebalance between Nova and OpenAI. If you’re building on third-party LLMs, treat vendor mix and switching paths as a core part of your cost structure, not a future optimization.
READ THE SOURCE
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