The enterprise MCP platform
We apply the Model Context Protocol to accelerate your existing AI initiatives, so you can move with speed and confidence.

We partner with leaders who know context is the key to AI success
Fortune 500 financial services firm
Doubled Cursor acceptance rates in less than three months
Global 2000 software category leader
Regained control of shadow AI with a secure MCP gateway
Fortune 500 technology company
Curated a centrally managed registry of hosted + local MCP servers
Ignite employee productivity through AI adoption
Apply MCP to connect your AI agents to your data and meet every enterprise requirement
Oversight
Define what users can access and get a handle on Shadow AI in your enterprise
Control
Deploy and run servers in a consistent form with centralized management
Compliance
Ensure your MCP platform meets all your regulatory requirements
Efficiency
Filter useless tool metadata out of your context window to save tokens & costs
Stacklok’s platform for enterprise grade MCP
Leverage individual components or deploy the full platform with speed and control
Registry
Curate a catalog of trusted servers your teams can quickly discover and deploy
Runtime
Deploy, run and manage MCP servers in a Kubernetes cluster with security guardrails
Gateway
Provide a single endpoint to safely and efficiently access all your tools
Portal
Give admins full control and knowledge workers frictionless access to context
Enterprises trust Stacklok
Enterprises with thousands of developers depend on Stacklok to connect their agents to the right context and multiply return on their AI investments.
Your data in your environment
Skip SaaS, and run all your local and remote servers from your private cloud, with the advanced security measures you need
Built on trusted technology
Lean on an operational framework designed to bridge enterprise systems and agentic systems. This is MCP for grown-ups
Open source momentum
Stacklok’s platform is a hardened distribution of our popular ToolHive project. ToolHive is Apache 2 licensed and built in the open, with the community
Get started
for Enterprise
Start by curating a registry of trusted MCP servers for your enterprise
for Individuals
Dive into the ToolHive repo and docs, and then engage directly with our team.
Frequently asked questions
Stacklok’s Model Context Protocol platform is trusted by leaders across industries to put MCP into production.
A Model Context Protocol (MCP) platform provides the infrastructure, tooling, and governance needed to connect large language models and AI agents to real-world tools, APIs, and data sources in a secure and standardized way. MCP platforms make it possible for AI agents to safely access systems behind your corporate firewall with control of permissions, identity, and execution boundaries.
Model Context Protocol solves the problem of safely giving AI models access to external tools and systems. Without MCP, teams often rely on custom integrations, ad hoc prompt logic, or hardcoded credentials, which creates security risks and operational complexity. MCP standardizes how models request, receive, and use context so AI agents can act reliably in production environments.
Organizations should adopt a Model Context Protocol platform when they move from experimentation to production AI systems. MCP platforms become critical once AI agents need consistent access to tools, require security controls, or must operate reliably across teams and environments.
Building MCP integrations yourself typically requires custom infrastructure, manual security controls, and ongoing maintenance. Stacklok abstracts this complexity by providing a managed MCP platform with standardized connectors, policy enforcement, and visibility into how AI agents access your data and systems.
Stacklok enforces security for Model Context Protocol by managing authentication, authorization, and policy controls for AI tool access. This ensures AI agents only interact with approved systems, operate within defined permissions, and can be audited and monitored in production.
Stacklok is designed for teams building AI-powered applications, agents, or developer platforms that need secure access to tools and services. Common users include platform engineering teams, AI infrastructure teams, security teams, and organizations deploying AI agents in production environments.