Softment

AI Development

MCP Server Development

We build MCP servers that expose safe tool catalogs to AI clients: structured schemas, auth and RBAC alignment, audit logs, and deployment hardening for production use.

TimelineTypical: 2–6 weeks (scope-dependent)
Starting at€2k
Security-first AI integrations • Evals + logging + guardrails included

Overview

What this service is

We design an MCP tool surface that’s safe by default: explicit capabilities, constrained inputs, and validation so AI clients can’t call arbitrary actions.

Authentication and permissions are aligned to your user model so tools respect RBAC boundaries and produce audit-friendly logs.

We deliver deployment-ready infrastructure with rate limits, secrets isolation, monitoring, and change management so MCP stays stable as tool catalogs evolve.

Benefits

What you get

Safer AI tool access

Constrained tools reduce the risk of unintended actions and data exposure.

Faster integration of new capabilities

Add new tools via schemas and versioned contracts without breaking clients.

Audit-ready operations

Tool calls are logged with context so teams can trace and debug behaviour.

Better governance posture

RBAC alignment and allowlists make approvals and policies easier to enforce.

Production hardening

Rate limits, monitoring, and rollout controls keep MCP stable under growth.

Features

What we deliver

Tool catalog design

Define tool boundaries, schemas, and versions aligned to real workflows and permissions.

Schema validation

Strict input validation and output shaping to make tool use predictable and debuggable.

Auth + RBAC mapping

Integrate with your identity model so tool access is permission-aware and auditable.

Rate limiting and abuse controls

Throttle and protect endpoints to prevent misuse and cost spikes in production.

Observability

Logs, traces, and dashboards for tool usage, failures, and latency across the stack.

Deployment hardening

Secrets isolation, environment separation, and change management for safe operations.

Process

How we work

1
2–5 days

Tool surface definition

We define tools, schemas, permissions, and versioning strategy for safe capabilities.

2
1–3 weeks

Server implementation

We build MCP endpoints, validation, auth integration, and core observability hooks.

3
3–8 days

Hardening

We add rate limits, secrets isolation, monitoring, and rollback-friendly releases.

4
1–3 days

Handoff

We document tool schemas, operational playbooks, and safe expansion patterns.

Tech Stack

Technologies we use

Core

MCP tooling + schemasRBAC-aligned authAPI validationAudit logs + tracing

Tools

Rate limitingSecure deployment patterns

Use Cases

Who this is for

AI copilots for internal tools

Expose controlled actions for dashboards, admin tools, and operations workflows.

CRM automation via safe tools

Let AI clients update CRM records only through validated, allowlisted actions.

Knowledge and search tooling

Expose retrieval and document tools that respect access rules and log usage.

Multi-system orchestration

Coordinate actions across multiple internal services through a stable tool catalog.

Governed AI rollouts

Introduce AI actions behind explicit approvals and audit trails for safer adoption.

FAQ

Frequently asked questions

No. MCP complements APIs by providing a governed tool layer for AI clients. The underlying APIs remain your source of truth.

Yes. We align tool permissions to your RBAC model so access is consistent with your platform security rules.

We use strict schemas, validation, allowlists, approvals for sensitive actions, and rate limits—with audit logs for tracing behaviour.

Yes. We implement secrets isolation, monitoring, and environment separation with operational runbooks.

Yes. Tool catalogs are versioned so you can add capabilities without breaking existing clients.

Ready to start?

Need safe tool access for AI clients?

Share the systems you want to expose—we’ll design an MCP server with secure tooling and a phased rollout plan.

Security-first tool boundaries.