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OpenRouter

OpenRouter is a unified API platform that gives developers access to many leading AI models through one endpoint, making it easier to compare providers, manage fallbacks, and route traffic without rebuilding integrations each time. Teams can use it to prototype faster, optimize model cost and quality, and keep application logic more portable across model vendors. It is especially useful for startups, AI product teams, developers, and experiment-heavy builders who want flexibility when working with multiple frontier and open models. What makes OpenRouter stand out is its model marketplace approach combined with practical routing and compatibility features, letting users treat model access as an interchangeable layer instead of getting locked into one provider from the start.

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