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Organizations are increasingly using multiple largelanguagemodels (LLMs) when building generativeAI applications. Although an individual LLM can be highly capable, it might not optimally address a wide range of use cases or meet diverse performance requirements.
For MCP implementation, you need a scalable infrastructure to host these servers and an infrastructure to host the largelanguagemodel (LLM), which will perform actions with the tools implemented by the MCP server. You ask the agent to Book a 5-day trip to Europe in January and we like warm weather.
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Whether youre using Amazon Q , Amazon Bedrock , or other AI tools in your workflow, AWS MCP Servers complement and enhance these capabilities with deep AWS specific knowledge to help you build better solutions faster. With specialties in GenerativeAI and SaaS, she loves helping her customers succeed in their business.
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