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Generative AI
Cloud
Testing
Artificial intelligence
Security
May 26, 2025
At its core, MCP is an open protocol that defines how AI assistants (any LLM-based agent) can interact with structured data, tools, APIs, and contextual prompts in a standardized, decoupled manner.
MCP treats these resources as modular entities:
These are served to the model via a lightweight HTTP-based interface, allowing the model to “see” and invoke these components as part of a single interaction loop.
Tools
Model Controlled – Functions invoked by the model e.g. search, send message etc.
Resources
Application Controlled – Data Exposed to the application e.g. Files, database records etc.
Prompts
User Controlled – Predefined instructions for AI interactions
CTO for Data & AI, Sogeti
Interoperability: One protocol for all LLMs and tools
Modularity: Easy to swap in/out tools, prompts, or data sources
Security & auditing: Enterprise-ready design for controlled execution
Composability: Lets models chain multiple tools together logically
Future-proofing: Aligns with the trend toward autonomous, multi-agent systems
MCP is more than just a protocol—it’s a signal that AI is entering its actionable era. As teams across the globe begin building agents that do more than just talk, MCP is becoming the backbone that makes that possible.
Our Agentic Framework that operationalizes the agentic model by breaking it into three core stages:
The Model Context Protocol (MCP) marks a fundemental advancement in the evolution of AI from passive assistants to autonomous, action-oriented agents. By standardizing how models interact with tools, data, and prompts, MCP empowers developers and enterprises to build scalable, secure, and interoperable agentic systems. As adoption accelerates across platforms and frameworks, MCP is not just enabling smarter AI—it’s laying the groundwork for a new way of digital transformation where intelligent agents can reason, act, and collaborate across complex ecosystems with unprecedented flexibility.
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