Mirantis Expands MCP AdaptiveOps to Help Enterprises Operationalize Agentic AI

Mirantis Expands MCP AdaptiveOps to Help Enterprises Operationalize Agentic AI

The News

Mirantis announced the launch of MCP AdaptiveOps Services, a new set of consulting and engineering offerings designed to help enterprises design, build, and operate Model Context Protocol (MCP)–based agentic infrastructure. Building on its MCP AdaptiveOps framework introduced earlier in 2025, Mirantis aims to help teams move MCP from experimentation into production while navigating a rapidly evolving standards and tooling ecosystem.

Analysis

MCP Moves from Experimentation Toward Enterprise Operations

The Mirantis announcement reflects a broader inflection point that we have been tracking: MCP is shifting from early experimentation into an operational concern for platform and application teams. As MCP governance transitions into the open-source community, adoption is accelerating, but so is uncertainty. Developers face a fragmented landscape of registries, gateways, LLM routers, and emerging best practices, all evolving faster than most enterprises can safely absorb.

Our application development research shows that while interest in agentic AI is high, production readiness remains low. Less than half of organizations experimenting with AI agents report having a clear operational model for governance, observability, and lifecycle management. Mirantis is positioning MCP AdaptiveOps as a stabilizing layer, one that helps enterprises build around open standards and flexible architectures, rather than betting prematurely on any single implementation detail.

This signals that MCP is no longer just a developer curiosity. It is becoming an infrastructure concern that requires platform-level thinking.

What MCP AdaptiveOps Services Mean for Application and Platform Teams

Mirantis’ services portfolio targets a critical gap: many teams understand why they want agentic systems but lack the operational scaffolding to build them responsibly. The services span the full maturity curve, from short readiness assessments to multi-month platform design and implementation efforts.

For developers, this matters because MCP-based systems introduce new complexity that traditional DevOps practices were not designed to handle. MCP servers sit at the intersection of AI models, tools, APIs, identity, and governance. Building them ad hoc often results in brittle architectures that are difficult to secure, audit, or evolve.

By focusing on reusable MCP server templates, standardized workflows, and production-ready operating models, Mirantis is emphasizing repeatability over one-off builds. That approach aligns with how platform engineering teams increasingly think about AI infrastructure: not as a single application, but as a shared internal service that multiple teams will consume.

The inclusion of services around multi-tenancy, observability, and LLM integration suggests Mirantis is treating agentic platforms as first-class infrastructure, similar to Kubernetes platforms in earlier cloud-native waves.

Agentic AI Lacks a Proven Operating Model

Across enterprise environments, the biggest barrier to agentic AI adoption is not model capability; it is operational risk. We consistently see concerns around identity, policy enforcement, auditability, and long-term maintainability slow or stall agentic initiatives.

MCP introduces promise through standardization, but standards alone do not solve enterprise realities. Teams still need guidance on how to manage versioning, enforce access controls, observe agent behavior, and align AI systems with internal risk frameworks. Mirantis’ inclusion of an AI Risk & Compliance Operating Model offering acknowledges that agentic systems will be held to the same scrutiny as other mission-critical platforms.

This mirrors patterns we’ve seen before. Kubernetes adoption only accelerated once enterprises had reliable operating models, reference architectures, and ecosystem expertise. MCP appears to be entering a similar phase where success depends less on raw innovation and more on disciplined execution.

Developer Behavior Going Forward

As MCP matures, developers may begin shifting from building bespoke agent integrations toward consuming standardized MCP services provided by internal platforms. That transition would allow application teams to focus on agent logic and user value, while platform teams manage governance, observability, and lifecycle concerns.

Mirantis’ AdaptiveOps services may encourage organizations to treat MCP infrastructure as a shared foundation rather than an experimental side project. Developers could see clearer guardrails around how agents interact with tools, data, and models, thus reducing the risk of rework as standards evolve. While results will vary by organization, this approach may shorten the path from proof-of-concept to production by giving teams a clearer operational blueprint.

Looking Ahead

The agentic AI ecosystem is still early, but it is maturing quickly. As MCP adoption accelerates under open-source governance, enterprises will need operating models that can absorb change without constant re-architecture. The next phase of adoption will favor teams that build around open standards, modular designs, and platform-level abstractions.

Mirantis’ expansion of MCP AdaptiveOps into formal services positions the company as an enabler of this transition, from experimental MCP deployments to sustainable, enterprise-grade agentic platforms. Whether MCP follows the same trajectory as Kubernetes will depend on how well the ecosystem converges on shared practices. What is clear is that agentic AI is becoming an operational problem, and enterprises are beginning to seek partners that can help them navigate that shift with discipline rather than hype.

Authors

  • Paul Nashawaty

    Paul Nashawaty, Practice Leader and Lead Principal Analyst, specializes in application modernization across build, release and operations. With a wealth of expertise in digital transformation initiatives spanning front-end and back-end systems, he also possesses comprehensive knowledge of the underlying infrastructure ecosystem crucial for supporting modernization endeavors. With over 25 years of experience, Paul has a proven track record in implementing effective go-to-market strategies, including the identification of new market channels, the growth and cultivation of partner ecosystems, and the successful execution of strategic plans resulting in positive business outcomes for his clients.

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  • With over 15 years of hands-on experience in operations roles across legal, financial, and technology sectors, Sam Weston brings deep expertise in the systems that power modern enterprises such as ERP, CRM, HCM, CX, and beyond. Her career has spanned the full spectrum of enterprise applications, from optimizing business processes and managing platforms to leading digital transformation initiatives.

    Sam has transitioned her expertise into the analyst arena, focusing on enterprise applications and the evolving role they play in business productivity and transformation. She provides independent insights that bridge technology capabilities with business outcomes, helping organizations and vendors alike navigate a changing enterprise software landscape.

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