OTC Pricing MCP Server
Click on "Install Server".
Wait a few minutes for the server to deploy. Once ready, it will show a "Started" state.
In the chat, type
@followed by the MCP server name and your instructions, e.g., "@OTC Pricing MCP ServerFind cheapest ECS with 4 vCPUs and 8GB RAM in eu-de"
That's it! The server will respond to your query, and you can continue using it as needed.
Here is a step-by-step guide with screenshots.
OTC Pricing MCP Server
An open-source Model Context Protocol (MCP) server for the Open Telekom Cloud (OTC) Price Calculator API.
Expose OTC pricing data to Claude and other LLM clients with full observability (structured logging, Prometheus metrics, health checks).
Status: v0.1.3 — STDIO + SSE transports, Kubernetes deployment, full observability
What is MCP?
Model Context Protocol is a standard that enables LLM applications (like Claude) to interact with external tools and data sources. This server supports two transports:
Transport | How it works | Best for |
STDIO | Claude launches the server as a subprocess; communication is over stdin/stdout | Local Claude Desktop, CLI tools |
SSE | Server-Sent Events over HTTP — Claude connects to a URL | Remote/hosted deployments, web clients |
This server gives Claude access to OTC pricing data and the user-manual / API-reference documentation through 9 specialized tools, on whichever transport you prefer.
Related MCP server: aws-mcp
What Can You Do With This?
Example Use Cases:
Ask Claude: "Find the cheapest ECS instance with 4 CPUs and 8GB RAM in eu-de"
Claude calls
find_compute_flavortool → gets pricing data → answers youAsk: "Compare PAYG vs 12-month reserved pricing for S3 storage"
Claude calls
compare_billing_modelstool → does the analysis → shows savings
Quick Start
1. Install
Requirements: Python 3.12+
# Clone the repository
git clone https://github.com/seaser0/otc-pricing-mcp.git
cd otc-pricing-mcp
# Install dependencies
uv sync
# Run the server
python -m otc_pricing_mcpWhat You'll See:
{"event": "mcp_server_starting", "transports": ["stdio", "sse"], "port": 8080, ...}
{"event": "mcp_server_ready", "status": "accepting_connections", ...}The server now listens for MCP connections on both stdin/stdout and http://localhost:8080/sse.
2. Connect Your MCP Client
Option A — STDIO (local, Claude Desktop)
{
"mcpServers": {
"otc-pricing": {
"command": "python",
"args": ["-m", "otc_pricing_mcp"],
"env": {
"LOG_LEVEL": "INFO",
"METRICS_PORT": "8080"
}
}
}
}Option B — SSE (remote, Kubernetes)
Point any MCP client that supports SSE transport at the hosted endpoint:
{
"mcpServers": {
"otc-pricing": {
"url": "https://mcp-otc-pricing.example.com/sse"
}
}
}Or test locally while running the server:
# In a second terminal:
curl -N http://localhost:8080/sse
# event: endpoint
# data: /messages/?session_id=<uuid>3. Start Using Tools
Once connected, Claude can call any of the 7 available tools. See the Tools Reference section below.
Tools Reference
The server exposes 7 MCP tools for different pricing queries:
1. list_services
Purpose: Get all available OTC services
Input: None
Output: List of service names and metadata
Example Claude usage:
"What OTC services are available for pricing?"2. list_regions
Purpose: Get available OTC regions
Input: None
Output: List of region codes (eu-de, eu-nl, eu-ch2, etc.)
Example Claude usage:
"What regions does OTC support?"3. get_service_schema
Purpose: Get filterable/returnable columns for a service
Input:
service(string): Service name (e.g., "ecs", "evs", "obs", "s3", "rds")
Output: Schema with filterable and returnable column names
Example Claude usage:
"What columns can I filter on for ECS pricing?"4. query_pricing
Purpose: Query pricing data with flexible filtering
Input:
services(array): List of service names (e.g., ["ecs", "evs"])region(string, optional): Filter by region (e.g., "eu-de")max_results(integer, optional): Max results to return (default: 5000)
Output: Pricing rows matching the filter
Example Claude usage:
"Show me ECS and EVS pricing in the eu-de region"5. find_compute_flavor
Purpose: Find compute (ECS) instances by vCPU/RAM/OS
Input:
v_cpu(integer): Number of virtual CPUsram_gb(number): RAM in GiBos(string, optional): Operating system (Linux, Windows, etc.)region(string, optional): Region (default: eu-de)
Output: Matching ECS instance types with pricing
Example Claude usage:
"Find a Linux ECS instance with 4 CPUs and 16GB RAM in eu-nl"6. estimate_monthly_cost
Purpose: Calculate monthly cost for multiple resources
Input:
items(array): Resources with:id(string): Product ID (e.g., "OTC_S3M1_LI")quantity(number, optional): How many units (default: 1)hours_per_month(number, optional): Usage hours (default: 730)
Output: Itemized costs with monthly total
Example Claude usage:
"Calculate monthly cost for 100GB S3 storage and an ECS instance"7. compare_billing_models
Purpose: Compare PAYG vs Reserved Instance pricing
Input:
product_id(string): Product ID (e.g., "OTC_S3M1_LI")quantity(number, optional): Quantity (default: 1)hours_per_month(number, optional): Usage hours (default: 730)
Output: Cost comparison for PAYG, 12mo, 24mo, 36mo reserved
Example Claude usage:
"Compare PAYG vs 12/24/36 month reserved pricing for ECS"8. search_otc_docs
Purpose: Full-text search across the indexed OTC user manual and API reference
Input:
query(string): Search terms (BM25-ranked, AND of tokens)scope(string, optional):public|swiss|both(default:both)service(string, optional): Restrict to one service repo (e.g.elastic-cloud-server)top_k(integer, optional): 1-50, default 5
Output: Ranked list of {url, title, h2, h3, snippet, service, cloud, upstream_commit} hits.
The index ships with the package and is rebuilt weekly from the upstream
opentelekomcloud-docs/<service> Sphinx/RST repos (Apache-2.0); the runtime
never touches the Anubis-gated docs.otc.t-systems.com HTML.
Example Claude usage:
"Find the OTC docs page that explains S3-flavor ECS specifications"9. get_otc_doc_section
Purpose: Fetch the body of one indexed documentation page (or one of its sections) as Markdown
Input:
url(string): Canonical URL as returned bysearch_otc_docs(with or without#anchor)section(string, optional): H2/H3 heading filter (case-insensitive substring)
Output: {url, title, sections: [{h2, h3, anchor, body}, ...], matched, ...}
Example Claude usage:
"Show me the EVS Disk Types and Performance section"Configuration
Environment Variables
Control the server behavior with environment variables:
Variable | Default | Description |
|
| Logging level: |
|
| Port for metrics/health endpoints |
|
| Bind address for the HTTP server (set to |
|
| OTC API endpoint |
| (auto) | Override path to the docs FTS5 index (default: bundled |
Example:
LOG_LEVEL=DEBUG METRICS_PORT=9090 python -m otc_pricing_mcpObservability: Metrics & Logs
This server is built with production-grade observability so you can debug issues and monitor performance.
Structured Logging (JSON)
Every action is logged as JSON, making logs machine-readable for aggregation and analysis.
Start the server with DEBUG logging:
LOG_LEVEL=DEBUG python -m otc_pricing_mcp 2>&1You'll see JSON logs like:
{"timestamp": "2026-05-06T18:00:00.123456Z", "event": "tool_invocation_start", "tool": "query_pricing", "request_id": "550e8400-e29b-41d4-a716-446655440000", "arguments": {"services": ["ecs"]}}
{"timestamp": "2026-05-06T18:00:00.234567Z", "event": "upstream_request_start", "service": "ecs", "request_id": "550e8400-e29b-41d4-a716-446655440000"}
{"timestamp": "2026-05-06T18:00:00.345678Z", "event": "upstream_request_success", "service": "ecs", "request_id": "550e8400-e29b-41d4-a716-446655440000", "status_code": 200, "duration_seconds": 0.111, "attempt": 1, "items_returned": 42}
{"timestamp": "2026-05-06T18:00:00.456789Z", "event": "tool_invocation_success", "tool": "query_pricing", "request_id": "550e8400-e29b-41d4-a716-446655440000", "duration_seconds": 0.333}Key fields in every log:
timestamp: When the event happened (ISO 8601)event: What happened (tool_invocation_start, upstream_request_success, etc.)request_id: Unique ID for this request (same across all related logs)Custom fields depending on the event
Logs are printed to stderr, so redirect to a file or log aggregator:
python -m otc_pricing_mcp 2>/var/log/otc-pricing-mcp.logPipe to jq for pretty printing:
python -m otc_pricing_mcp 2>&1 | jq .HTTP Endpoints (port 8080)
The uvicorn server exposes all endpoints on port 8080:
Path | Method | Description |
| GET | MCP SSE transport — connect your MCP client here |
| POST | MCP SSE message handler (used internally by the client) |
| GET | Liveness probe — always 200 if the process is up |
| GET | Readiness probe — 200 when OTC API is reachable, 503 otherwise |
| GET | Prometheus metrics in text exposition format |
Health Checks:
# Liveness check (always 200 if process is up)
curl http://localhost:8080/healthz
# {"status": "ok", "service": "otc-pricing-mcp"}
# Readiness check (verifies OTC API is reachable)
curl http://localhost:8080/readyz
# {"status": "ready", "upstream": "ok", "api_response_time": 0.042}Prometheus Metrics:
curl http://localhost:8080/metricsReturns Prometheus format metrics:
# HELP otc_pricing_mcp_requests_total Total MCP tool requests (success and failure)
# TYPE otc_pricing_mcp_requests_total counter
otc_pricing_mcp_requests_total{status="success",tool="query_pricing"} 5.0
otc_pricing_mcp_requests_total{status="error",tool="query_pricing"} 1.0
# HELP otc_pricing_mcp_request_duration_seconds MCP tool request duration in seconds
# TYPE otc_pricing_mcp_request_duration_seconds histogram
otc_pricing_mcp_request_duration_seconds_bucket{le="0.005",tool="query_pricing"} 0.0
otc_pricing_mcp_request_duration_seconds_bucket{le="0.01",tool="query_pricing"} 1.0
...
# HELP otc_pricing_mcp_upstream_requests_total Total upstream OTC API requests (success and failure)
# TYPE otc_pricing_mcp_upstream_requests_total counter
otc_pricing_mcp_upstream_requests_total{service="ecs",status="success"} 10.0
otc_pricing_mcp_upstream_requests_total{service="ecs",status="error"} 2.0
...Available Metrics:
otc_pricing_mcp_requests_total{tool, status}: Count of tool invocationsotc_pricing_mcp_request_duration_seconds{tool}: Tool execution timeotc_pricing_mcp_upstream_requests_total{service, status}: Count of API callsotc_pricing_mcp_upstream_duration_seconds{service}: API call latency
Using Prometheus:
Add to your prometheus.yml:
scrape_configs:
- job_name: 'otc-pricing-mcp'
static_configs:
- targets: ['localhost:8080']Then query in Prometheus:
rate(otc_pricing_mcp_requests_total[5m]) # Requests per second
histogram_quantile(0.95, otc_pricing_mcp_request_duration_seconds_bucket) # p95 latencyDebugging Guide
Problem: Slow API Calls
Check the logs:
LOG_LEVEL=DEBUG python -m otc_pricing_mcp 2>&1 | jq 'select(.event == "upstream_request_success") | {service, duration_seconds}'Check metrics:
curl http://localhost:8080/metrics | grep upstream_duration_secondsProblem: Tool Fails
Look for error logs:
LOG_LEVEL=DEBUG python -m otc_pricing_mcp 2>&1 | jq 'select(.event == "tool_invocation_error")'Example error log:
{
"event": "tool_invocation_error",
"tool": "query_pricing",
"request_id": "550e8400-e29b-41d4-a716-446655440000",
"error": "list index out of range",
"error_type": "IndexError",
"duration_seconds": 0.001,
"exc_info": true
}Problem: OTC API Unreachable
Check readiness endpoint:
curl -v http://localhost:8080/readyz
# HTTP/1.1 503 Service Unavailable
# {"status": "not_ready", "upstream": "unreachable", "error": "..."}Check metrics:
curl http://localhost:8080/metrics | grep upstream_requests_total
# Will show increased error countsProblem: Need Full Request Trace
Use request_id to trace a request:
# Get the request_id from any log
LOG_LEVEL=DEBUG python -m otc_pricing_mcp 2>&1 | jq 'select(.request_id == "550e8400-e29b-41d4-a716-446655440000")'This shows all logs for that request in order:
tool_invocation_start
upstream_request_start
upstream_request_success (with items_returned)
tool_invocation_success
Running Locally (Development)
Setup
# Clone repo
git clone https://github.com/seaser0/otc-pricing-mcp.git
cd otc-pricing-mcp
# Install with dev dependencies
uv sync
# Run tests
uv run pytest tests/ -v
# Check code quality
uv run ruff check src/
uv run mypy src/ --strictRun in Development Mode
# With debug logging
LOG_LEVEL=DEBUG python -m otc_pricing_mcp
# In another terminal, test the endpoints
curl http://localhost:8080/healthz | jq .
curl http://localhost:8080/metricsRunning in Production (Docker)
Build Image
docker build -t otc-pricing-mcp:latest .Run Container
docker run \
--name otc-pricing-mcp \
-e LOG_LEVEL=INFO \
-e METRICS_PORT=8080 \
-p 8080:8080 \
otc-pricing-mcp:latestKubernetes Deployment
See deploy/kubernetes/ for the full manifest set (Deployment, Service, Ingress, NetworkPolicy, ServiceMonitor, PodDisruptionBudget).
When self-hosting on Kubernetes, connect remote clients to your ingress hostname:
https://mcp-otc-pricing.example.com/sseKey features:
Non-root user, read-only root filesystem
Resource limits (100m–500m CPU, 128Mi–512Mi RAM)
Liveness probe: GET /healthz on port 8080
Readiness probe: GET /readyz on port 8080
NetworkPolicy: ingress from nginx controller only, egress to DNS + OTC API
ServiceMonitor for Prometheus scraping
Managed by ArgoCD with
selfHeal: trueandprune: true
Architecture
Request Flow
Claude Client
│
├─ STDIO transport (local) ──┐
│ stdin/stdout │
│ ▼
└─ SSE transport (remote) MCP Server (server.py)
GET /sse - List tools
POST /messages/ - Route tool calls
- Log invocations
- Record metrics
│
▼
HTTP Client (client.py)
- Build request
- Retry logic
- Parse response
│
▼
OTC Price Calculator APIBoth transports share the same MCP Server instance and run concurrently in the same asyncio event loop.
Component Overview
Component | Purpose |
| Entry point — runs STDIO + uvicorn SSE concurrently |
| MCP server, routes tool calls, logs invocations |
| HTTP client for OTC API, retry logic, API logging |
| Tool implementations (discovery, pricing, estimation) |
| Starlette app — SSE transport + health/metrics routes |
| Logging, Prometheus metrics, request context |
| Data models (validated with Pydantic) |
| Price parsing and formatting |
Enhancement Ideas (Future Development)
Stories 0–9 are complete. The following are post-v1.0 enhancements:
Enhancement Ideas
Caching
Cache pricing data for N seconds to reduce API load
Redis or in-memory cache option
Cache invalidation strategy
Advanced Querying
More filtering options (e.g., price range, commitment period)
Sorting by price, CPU, RAM
Aggregations (min/max/avg pricing per service)
Cost Analysis Tools
Historical pricing trends
Cost anomaly detection
Recommendation engine (right-sizing)
Multi-Cloud Support
AWS pricing API integration
Azure pricing API integration
Cost comparison across clouds
User Preferences
Save favorite services/regions
Custom pricing alerts
Budget tracking per project
Better Error Recovery
Exponential backoff with jitter (vs fixed exponential)
Circuit breaker pattern
Fallback to cached data on API failure
Performance Optimizations
Query result pagination
Database caching layer
Streaming responses for large datasets
Observability Enhancements
Distributed tracing (OpenTelemetry)
Custom business metrics (cost calculated, queries per service)
Log aggregation integration (Loki, ELK)
Alert rules (Prometheus Alertmanager)
Testing Improvements
Load testing (k6, Locust)
Chaos testing (failure scenarios)
Contract testing with OTC API
API Stability
API versioning (v1, v2)
Deprecation policies
Backward compatibility guarantees
Contributing
We welcome contributions! See CONTRIBUTING.md for:
Development setup
Code style (ruff, mypy --strict)
Testing requirements (53+ tests with coverage)
Security scanning (bandit, cyclonedx-bom)
Commit message conventions
Quick PR Checklist:
Tests pass:
uv run pytest tests/Linting passes:
uv run ruff check src/Type checking passes:
uv run mypy src/ --strictSecurity scan passes:
uv run bandit -r src/Meaningful commit message
License
Apache License 2.0 — see LICENSE file.
Copyright: seaser0 (s34s3r@gmail.com)
Getting Help
Questions or Issues?
Check the Debugging Guide above
Open a GitHub Issue: https://github.com/seaser0/otc-pricing-mcp/issues
Check logs with:
LOG_LEVEL=DEBUG python -m otc_pricing_mcp 2>&1 | jq .
Want to Report a Security Issue? See SECURITY.md for responsible disclosure.
Project Status
Story | Feature | Status |
0 | Project setup, API client, data models | ✅ Done |
1 | Catalog discovery tools | ✅ Done |
2 | Pricing query tools | ✅ Done |
3 | Multi-service fan-out | ✅ Done |
4 | Comprehensive testing | ✅ Done |
5 | Security & container hardening | ✅ Done |
6 | CI/CD pipeline (GHCR image, PyPI, SBOM, GitHub Release) | ✅ Done |
7 | Observability (structured logging, Prometheus metrics, health probes) | ✅ Done |
8 | ArgoCD deployment (Kubernetes, SSE transport, remote endpoint) | ✅ Done |
9 | Open source documentation (README, server.json, community docs) | ✅ Done |
Architecture Decisions
See docs/ directory for detailed documentation:
docs/ci-cd.md— CI/CD workflow detailsdocs/deployment.md— Deployment guidedocs/security.md— Security features and considerations
Built with ❤️ by seaser0
Last updated: 2026-05-07
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