
Allan Wilson
President - Team Alert
"I was really impressed with how much they cared about our product."
Your APIs exist. Your AI agents exist. They just can't talk to each other yet. Plug your internal systems into Claude, Cursor, and every AI agent your team relies on – or that your customers use. Your agents find the data, run the task and deliver the result – on their own.
See the companies that trusted Boldare to get it done.











Your agent stops mid-task and waits for a human to paste the missing dataYour agent stops mid-task and waits for a human to paste the missing data
Every new tool connection is a custom build – expensive, slow, hard to maintain
Your demo worked. Your production workflow doesn't
Your platform is invisible to AI agents – including your customers'
Your team copy-pastes data into prompts to make the agent useful
You're paying for AI tooling. The manual work stays
Your customers ask if your product works with their AI agents. It doesn't
Your agent queries your systems directly and keeps going
One MCP server connects your stack to every current and future AI agent
Your AI runs end-to-end on real data, in real conditions
Your API is MCP-ready – any agent can reach it securely
Your agents find, process and act on data without human intervention
The work your team used to do manually gets done automatically
Your platform speaks AI – your customers' agents work with it out of the box
Pick the step that fits where you are right now – or work through all three.
API landscape review
A full map of your existing APIs, internal tools and data sources. We identify which systems are MCP-ready and which need preparation before integration.
Architecture blueprint
A documented MCP server architecture designed for your stack – including tool definitions, data flow and security boundaries.
OAuth & authentication assessment
An evaluation of your authentication requirements and how they map to MCP's security model. No surprises mid-build.
Build estimate
A clear scope, timeline and cost estimate for your MCP implementation. A decision-ready output your team can take to stakeholders.
MCP server development
A production-ready MCP server built for your stack, tested with MCP Farmer and documented for your team to maintain and extend independently.
Tool definitions
Every action your AI agents need – reading data, updating records, triggering workflows – defined as MCP tools and connected to your systems.
Authentication & security
Secure access layer built to your requirements. OAuth support included in Pro tier.
Testing & validation
Your MCP server validated with MCP Farmer before it goes anywhere near a production agent. No surprises at go-live.
Deployment & handoff
Production deployment with full documentation. Your team knows exactly how it works and how to extend it.
Not sure which tier fits your stack? → Ask AI to help you choose
Server monitoring & incident response
Continuous monitoring of your MCP server health. Issues flagged and resolved before they reach your users or your agents.
Tool definition updates
As your APIs evolve, your MCP tools evolve with them. New endpoints, changed data structures, deprecated methods – all kept in sync.
New API connections
Add new systems to your MCP server as your stack grows. No new build required – your existing server extends.
Quarterly server audit
Every tool tested, every connection verified, every edge case documented. You get a written report with findings and recommendations.
Security & authentication updates
OAuth tokens, access scopes and security boundaries reviewed and updated as your requirements change.
Documentation maintenance
Documentation updated with every change. Your team always knows what the server does, what it connects to and how to work with it.
Production case studies, community write-ups, technical deep-dives. Everything here is about MCP that actually runs – not MCP that's on someone's roadmap.
Here's what clients say about working with us.
A 30-minute call with our MCP engineers. We'll map your stack, identify the right entry point and tell you exactly what's worth building – before you commit to anything.
A team that uses MCP daily catches edge cases a team that only reads the docs never will. Boldare runs its own MCP server in production. It handles real requests, every day.
Anyone can read the MCP specification. Fewer teams have built validation tooling around it. Boldare built MCP Farmer – an open-source MCP audit tool on NPM – because we needed it ourselves before we could trust a server in production.
An honest partner tells you when a simpler approach is the better call. Boldare has built AI integrations across enough real workflows to know where MCP adds value – and where it doesn't.
Connecting an API to MCP is the easy part. Writing tool definitions that agents use correctly – with the right parameters, the right error handling, the right scope – is where most implementations fall short.
An MCP server needs to evolve as your stack evolves. Boldare documents every server it builds and offers maintenance retainers – so you're never dependent on tribal knowledge that walks out the door.
From what MCP actually is to how long it takes to build one and what happens after handoff – the questions we hear most from CTOs and platform engineers, answered straight.
MCP (Model Context Protocol) is an open standard published by Anthropic that lets AI agents connect to external systems – APIs, databases, internal tools – in a structured, consistent way. An MCP server sits between your systems and any AI agent that needs to reach them. The agent calls a tool defined on the server, the server executes the action against your API, and returns the result. Without MCP, every AI integration is a custom build. With MCP, you build the connection once and every compatible agent can use it.
© 2026 Boldare. All rights reserved.
Boldare S.A. z siedzibą w Gliwicach, przy ul. Zwycięstwa 52, zarejestrowana w Sądzie Rejonowym w Gliwicach, X Wydział Gospodarczy Krajowego Rejestru Sądowego pod nr KRS 0000914518, NIP 6312698829, REGON 38958555. Wysokość kapitału zakładowego i wpłaconego 100 000,00 zł.