Abstract: Background: Context sharing between artificial intelligence (AI) models is a critical requirement for developing adaptive and collaborative systems. Traditional methods, such as knowledge graphs and middleware, often struggle with scalability and real-time adaptability in heterogeneous environments. The Model Context Protocol (MCP) has emerged as a standardization layer to maximize context interoperability and improve multi-model interactions. This paper evaluates the application of MCP in standardizing context sharing to address...
Key Word: Model Context Protocol (MCP); AI models; context sharing; artificial intelligence; multi-agent systems; standardization; interoperability; real-time processing; ethical AI; AI ecosystems
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