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Challenge yourself with this quiz on integrating Large Language Models (LLMs) into production-ready applications! Explore key concepts in the Model Context Protocol (MCP), API design patterns, prompt pipelines, token management, rate limiting, and error handling. Learn how APIs connect LLMs with external data sources, orchestrate workflows, and enable scalable, secure deployment. Perfect for developers and ML engineers aiming to build practical, real-world solutions powered by LLMs.
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