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Jim Liddle
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MCP: A strategic foundation for enterprise-ready AI agents

Opinion
Jun 11, 20255 mins
APIsDevelopment ToolsGenerative AI

Why ÍæÅ¼½ã½ãs should pay attention to the infrastructure behind intelligent autonomy.

Credit: Getty

As AI transitions from experimental deployment to enterprise-critical infrastructure, ÍæÅ¼½ã½ãs and IT leaders are being asked to guide their organizations through a rapidly evolving technology landscape. One of the most significant trends is the rise of AI agents — systems capable of making decisions and performing complex, multi-step tasks with minimal human oversight. Recent data shows that report their organization is actively using AI agents, with another 21% stating they are planning to implement agentic AI systems within the next 24 months. 

But as promising as these systems are, they face an all too familiar roadblock: integration. AI agents, like many emerging technologies before them, often operate in isolation from the core systems where business data and operational logic live. Without standardized integration, these agents are difficult to scale, expensive to maintain and limited in business impact. Gartner even predicts that through 2026, organizations will abandon due to a lack of AI-ready data. 

Enter the model context protocol (MCP) — an open, vendor-agnostic standard that enables secure, two-way connections between AI agents and enterprise systems. For IT leaders, MCP is more than a technical innovation; it’s a strategic shift in how IT infrastructure can support intelligent, autonomous operations. 

Beyond APIs: Why a protocol like MCP matters

Historically, integrating new platforms into enterprise systems has required building custom application programming interfaces (APIs), connectors and middleware. This approach may work in limited pilots, but it becomes untenable as organizations scale AI across departments and functions. 

MCP eliminates the need for bespoke integrations by offering a standardized interface that allows AI agents to: 

  • Access structured and unstructured data across storage, applications and services 
  • Interact with tools and APIs to perform meaningful actions 
  • Adapt to changing business contexts in real time  

In essence, MCP acts as a universal translator, bridging the gap between autonomous AI systems and the complexity of enterprise IT environments. 

Achieving ROI: From AI pilots to scalable impact 

For IT leaders under pressure to deliver measurable results from AI investments, MCP offers a clear path forward. By unifying how AI systems access enterprise data and tools, organizations can significantly reduce integration overhead, accelerate deployment timelines and maximize reuse of existing infrastructure. 

MCP also supports a “build once, integrate everywhere” philosophy, enabling internal development teams to focus on innovation rather than point-to-point plumbing. This standardization minimizes technical debt, improves system resilience and lowers total cost of ownership across AI initiatives. 

Enterprise IT strategies must also balance innovation with control — and MCP addresses this balance head-on. It includes native support for explicit user consent and data access auditing, clear permission models and secure execution environments with enforced boundaries. This means IT teams can enable advanced AI capabilities without compromising data governance, compliance or cybersecurity mandates. In highly regulated industries, this can be the difference between piloting AI and scaling it with confidence. 

Strategic use cases across the enterprise 

Looking at real-world applications, MCP unlocks a wide range of agent-driven applications that align with core IT and business priorities: 

  • Contract intelligence. Legal and procurement teams can deploy agents that monitor file repositories, extract key clauses, flag inconsistencies and update contract databases – reducing review time and improving compliance. 
  • Research synthesis. R&D organizations can use agents that scan internal studies, identify patterns and generate structured knowledge summaries – turning raw data into actionable insights. 
  • Project coordination in AEC. Architecture, engineering and construction firms can rely on agents to manage document versioning, flag code violations and automate reporting — enhancing collaboration and reducing errors across complex projects. 

These examples reflect a broader truth, that with MCP IT leaders can empower business units to build and iterate on intelligent workflows while maintaining centralized control over architecture and data policy. 

Getting started: A practical path to adoption 

Adopting MCP doesn’t require a complete overhaul of your IT stack. IT professionals can initiate adoption through: 

  •  Implementations for commonly used systems (e.g., file storage, collaboration platforms, databases) 
  • Sandbox environments to evaluate agent capabilities securely and incrementally 
  • Custom connectors developed internally or through open-source resources for legacy or proprietary systems 

This phased approach aligns with enterprise IT change management practices, allowing teams to prototype, pilot and scale with minimal disruption. 

However, when adopting MCP, it is best to do so through a hybrid cloud platform. Why? Hybrid cloud architecture enables seamless access to data and applications across on-premises and cloud environments, while, as mentioned, MCP ensures standardized, secure and scalable integration with those assets. Together, they provide the infrastructure needed for AI agents to operate across diverse systems without compromising governance, performance or data residency requirements. This combination positions enterprises to innovate confidently while maintaining operational resilience and compliance — ensuring the most successful and efficient agentic AI deployment across the enterprise. 

As agentic AI becomes the backbone of modern business operations, the difference between success and stagnation lies in how well your systems connect, collaborate and provide standardized access to the data required. The model context protocol isn’t just another technical standard — it’s shaping up to be the catalyst for the interoperable agentic enterprise.

This article is published as part of the Foundry Expert Contributor Network.
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Jim Liddle
Contributor

is the chief innovation officer of data intelligence and AI at . He joined Nasuni from Storage Made Easy in 2022, where he was CEO, chairman and co-founder, before being acquired by Nasuni. Prior to Storage Made Easy, Jim was European sales and operations director for GigaSpaces since joining the company in 2006, to help expand its European operations. Before GigaSpaces, Jim served as general manager Europe for Versata, a NASDAQ-listed business process and rules management company. During his six years at Versata, Jim worked in technical, product management and product marketing roles. Jim attended Brunel University London and has over 25 years¡¯ experience in storage, big data, middleware and cloud technologies for high growth technology companies.