mcp-backpressure
Backpressure and concurrency control middleware for FastMCP. Prevents server overload from LLM tool-call storms with configurable limits and JSON-RPC errors.
mcp-backpressure
Backpressure and concurrency control middleware for FastMCP MCP servers.
Problem: LLMs can generate hundreds of parallel tool calls, causing resource exhaustion, server crashes, and no structured feedback for clients to retry.
Solution: Middleware that limits concurrent executions, queues excess requests with timeout, and returns structured JSON-RPC overload errors.
Quickstart
from fastmcp import FastMCP
from mcp_backpressure import BackpressureMiddleware
mcp = FastMCP("MyServer")
mcp.add_middleware(BackpressureMiddleware(
max_concurrent=5, # Max parallel executions
queue_size=10, # Bounded queue for waiting requests
queue_timeout=30.0, # Queue wait timeout (seconds)
))
Installation
pip install mcp-backpressure
Features
- Concurrency limiting: Semaphore-based control of parallel executions
- Bounded queue: Optional FIFO queue with configurable size
- Queue timeout: Automatic timeout for queued requests with cleanup
- Structured errors: JSON-RPC compliant overload errors with detailed metrics
- Metrics: Real-time counters for active, queued, and rejected requests
- Callback hook: Optional notification on each overload event
- Zero dependencies: Only requires FastMCP and Python 3.10+
Usage
Basic Configuration
from mcp_backpressure import BackpressureMiddleware
mcp.add_middleware(BackpressureMiddleware(
max_concurrent=5, # Required: max parallel tool executions
queue_size=10, # Optional: bounded queue (0 = no queue)
queue_timeout=30.0, # Optional: seconds to wait in queue
overload_error_code=-32001, # Optional: JSON-RPC error code
on_overload=callback, # Optional: called on each overload
))
Parameters
| Parameter | Type | Default | Description |
|---|---|---|---|
max_concurrent | int | required | Maximum number of concurrent tool executions. Must be >= 1. |
queue_size | int | 0 | Maximum queue size for waiting requests. Set to 0 to reject immediately when limit reached. |
queue_timeout | float | 30.0 | Maximum time (seconds) a request can wait in queue before timing out. Must be > 0. |
overload_error_code | int | -32001 | JSON-RPC error code returned when server is overloaded. |
on_overload | Callable | None | Optional callback (error: OverloadError) -> None invoked on each overload. |
Error Handling
When the server is overloaded, requests are rejected with a structured JSON-RPC error:
{
"code": -32001,
"message": "SERVER_OVERLOADED",
"data": {
"reason": "queue_full",
"active": 5,
"queued": 10,
"max_concurrent": 5,
"queue_size": 10,
"queue_timeout_ms": 30000,
"retry_after_ms": 1000
}
}
Overload Reasons
| Reason | Description |
|---|---|
concurrency_limit | All execution slots full and no queue configured (queue_size=0) |
queue_full | All execution slots and queue slots are full |
queue_timeout | Request waited in queue longer than queue_timeout |
Metrics
Get real-time metrics from the middleware:
metrics = middleware.get_metrics() # Synchronous
print(f"Active: {metrics.active}")
print(f"Queued: {metrics.queued}")
print(f"Total rejected: {metrics.total_rejected}")
print(f"Rejected (concurrency): {metrics.rejected_concurrency_limit}")
print(f"Rejected (queue full): {metrics.rejected_queue_full}")
print(f"Rejected (timeout): {metrics.rejected_queue_timeout}")
For async contexts, use await middleware.get_metrics_async().
Callback Hook
Register a callback to be notified of each overload event:
def on_overload(error: OverloadError):
print(f"OVERLOAD: {error.reason} (active={error.active})")
# Log to monitoring system, update metrics, etc.
middleware = BackpressureMiddleware(
max_concurrent=5,
queue_size=10,
on_overload=on_overload,
)
Examples
Simple Server
See examples/simple_server.py for a minimal FastMCP server with backpressure.
Load Simulation
Run examples/load_simulation.py to see backpressure behavior under heavy concurrent load:
python examples/load_simulation.py
This simulates 30 concurrent requests against a server limited to 5 concurrent executions with a queue of 10, demonstrating how the middleware handles overload.
How It Works
The middleware provides two-level limiting:
- Semaphore (max_concurrent): Controls active executions
- Bounded queue (queue_size): Holds waiting requests with timeout
Request flow:
- If execution slot available → execute immediately
- If execution slots full and queue not full → wait in queue with timeout
- If queue full → reject with
queue_full - If timeout in queue → reject with
queue_timeout
Invariants (guaranteed under all conditions):
active <= max_concurrentALWAYSqueued <= queue_sizeALWAYS- Cancellation correctly frees slots and decrements counters
- Queue timeout removes item from queue
Development
Running Tests
python -m pytest tests/ -v
Linting
ruff check src/ tests/
Design Rationale
This library emerged from python-sdk #1698 (closed as "not planned"). Key design decisions:
- Global limits only (v0.1): Per-client and per-tool limits deferred to v0.2+
- Simple counters: No Prometheus/OTEL dependencies by default
- JSON-RPC errors: Follows MCP protocol conventions
- Monotonic time: Queue timeouts use
time.monotonic()for reliability
License
MIT
Contributing
Contributions welcome! Please open an issue before submitting PRs.
Changelog
See CHANGELOG.md
Похожие серверы
Scout Monitoring MCP
спонсорPut performance and error data directly in the hands of your AI assistant.
Alpha Vantage MCP Server
спонсорAccess financial market data: realtime & historical stock, ETF, options, forex, crypto, commodities, fundamentals, technical indicators, & more
MasterGo Magic MCP
Connects MasterGo design tools with AI models, allowing them to retrieve DSL data directly from design files.
NeuroDev MCP Server
A powerful Model Context Protocol (MCP) server that supercharges your Python development workflow with AI-powered code review, intelligent test generation, and comprehensive test execution.
Network Monitor MCP Server
A server for real-time network packet monitoring and security analysis.
Sapiom
One API key gives agents access to 80+ tools: web search, deep search, browser automation, screenshots, 400+ LLM models, image generation, text-to-speech, sound effects, and phone verification. Pay-per-use with spend governance built in.
Process Manager MCP
Manage system processes (start, stop, restart, monitor) via an MCP interface with automatic cleanup.
Scout Monitoring MCP
Scout's official MCP pipes error, trace and metric data from production to your AI agent
MAXential Thinking MCP
Gives Claude explicit tools for reasoning: adding thoughts, branching to explore alternatives, revising earlier thinking, and navigating thought history. 11 focused tools designed for how Claude actually thinks
Interactive Feedback MCP
Provides interactive user feedback and command execution for AI-assisted development.
MCP HAR Server
Parses HAR (HTTP Archive) files and displays requests in a simplified format for AI assistants.
Make
Execute make targets from any Makefile in a safe and controlled environment.