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simpy

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Process-based discrete-event simulation framework in Python. Use this skill when building simulations of systems with processes, queues, resources, and time-bas

About this skill

SimPy - Discrete-Event Simulation

Overview

SimPy is a process-based discrete-event simulation framework based on standard Python. Use SimPy to model systems where entities (customers, vehicles, packets, etc.) interact with each other and compete for shared resources (servers, machines, bandwidth, etc.) over time.

Core capabilities:

  • Process modeling using Python generator functions
  • Shared resource management (servers, containers, stores)
  • Event-driven scheduling and synchronization
  • Real-time simulations synchronized with wall-clock time
  • Comprehensive monitoring and data collection

When to Use This Skill

Use the SimPy skill when:

  1. Modeling discrete-event systems - Systems where events occur at irregular intervals
  2. Resource contention - Entities compete for limited resources (servers, machines, staff)
  3. Queue analysis - Studying waiting lines, service times, and throughput
  4. Process optimization - Analyzing manufacturing, logistics, or service processes
  5. Network simulation - Packet routing, bandwidth allocation, latency analysis
  6. Capacity planning - Determining optimal resource levels for desired performance
  7. System validation - Testing system behavior before implementation

Not suitable for:

  • Continuous simulations with fixed time steps (consider SciPy ODE solvers)
  • Independent processes without resource sharing
  • Pure mathematical optimization (consider SciPy optimize)

Quick Start

Basic Simulation Structure

import simpy

def process(env, name):
    """A simple process that waits and prints."""
    print(f'{name} starting at {env.now}')
    yield env.timeout(5)
    print(f'{name} finishing at {env.now}')

# Create environment
env = simpy.Environment()

# Start processes
env.process(process(env, 'Process 1'))
env.process(process(env, 'Process 2'))

# Run simulation
env.run(until=10)

Resource Usage Pattern

import simpy

def customer(env, name, resource):
    """Customer requests resource, uses it, then releases."""
    with resource.request() as req:
        yield req  # Wait for resource
        print(f'{name} got resource at {env.now}')
        yield env.timeout(3)  # Use resource
        print(f'{name} released resource at {env.now}')

env = simpy.Environment()
server = simpy.Resource(env, capacity=1)

env.process(customer(env, 'Customer 1', server))
env.process(customer(env, 'Customer 2', server))
env.run()

Core Concepts

1. Environment

The simulation environment manages time and schedules events.

import simpy

# Standard environment (runs as fast as possible)
env = simpy.Environment(initial_time=0)

# Real-time environment (synchronized with wall-clock)
import simpy.rt
env_rt = simpy.rt.RealtimeEnvironment(factor=1.0)

# Run simulation
env.run(until=100)  # Run until time 100
env.run()  # Run until no events remain

2. Processes

Processes are defined using Python generator functions (functions with yield statements).

def my_process(env, param1, param2):
    """Process that yields events to pause execution."""
    print(f'Starting at {env.now}')

    # Wait for time to pass
    yield env.timeout(5)

    print(f'Resumed at {env.now}')

    # Wait for another event
    yield env.timeout(3)

    print(f'Done at {env.now}')
    return 'result'

# Start the process
env.process(my_process(env, 'value1', 'value2'))

3. Events

Events are the fundamental mechanism for process synchronization. Processes yield events and resume when those events are triggered.

Common event types:

  • env.timeout(delay) - Wait for time to pass
  • resource.request() - Request a resource
  • env.event() - Create a custom event
  • env.process(func()) - Process as an event
  • event1 & event2 - Wait for all events (AllOf)
  • event1 | event2 - Wait for any event (AnyOf)

Resources

SimPy provides several resource types for different scenarios. For comprehensive details, see references/resources.md.

Resource Types Summary

Resource Type Use Case
Resource Limited capacity (servers, machines)
PriorityResource Priority-based queuing
PreemptiveResource High-priority can interrupt low-priority
Container Bulk materials (fuel, water)
Store Python object storage (FIFO)
FilterStore Selective item retrieval
PriorityStore Priority-ordered items

Quick Reference

import simpy

env = simpy.Environment()

# Basic resource (e.g., servers)
resource = simpy.Resource(env, capacity=2)

# Priority resource
priority_resource = simpy.PriorityResource(env, capacity=1)

# Container (e.g., fuel tank)
fuel_tank = simpy.Container(env, capacity=100, init=50)

# Store (e.g., warehouse)
warehouse = simpy.Store(env, capacity=10)

Common Simulation Patterns

Pattern 1: Customer-Server Queue

import simpy
import random

def customer(env, name, server):
    arrival = env.now
    with server.request() as req:
        yield req
        wait = env.now - arrival
        print(f'{name} waited {wait:.2f}, served at {env.now}')
        yield env.timeout(random.uniform(2, 4))

def customer_generator(env, server):
    i = 0
    while True:
        yield env.timeout(random.uniform(1, 3))
        i += 1
        env.process(customer(env, f'Customer {i}', server))

env = simpy.Environment()
server = simpy.Resource(env, capacity=2)
env.process(customer_generator(env, server))
env.run(until=20)

Pattern 2: Producer-Consumer

import simpy

def producer(env, store):
    item_id = 0
    while True:
        yield env.timeout(2)
        item = f'Item {item_id}'
        yield store.put(item)
        print(f'Produced {item} at {env.now}')
        item_id += 1

def consumer(env, store):
    while True:
        item = yield store.get()
        print(f'Consumed {item} at {env.now}')
        yield env.timeout(3)

env = simpy.Environment()
store = simpy.Store(env, capacity=10)
env.process(producer(env, store))
env.process(consumer(env, store))
env.run(until=20)

Pattern 3: Parallel Task Execution

import simpy

def task(env, name, duration):
    print(f'{name} starting at {env.now}')
    yield env.timeout(duration)
    print(f'{name} done at {env.now}')
    return f'{name} result'

def coordinator(env):
    # Start tasks in parallel
    task1 = env.process(task(env, 'Task 1', 5))
    task2 = env.process(task(env, 'Task 2', 3))
    task3 = env.process(task(env, 'Task 3', 4))

    # Wait for all to complete
    results = yield task1 & task2 & task3
    print(f'All done at {env.now}')

env = simpy.Environment()
env.process(coordinator(env))
env.run()

Workflow Guide

Step 1: Define the System

Identify:

  • Entities: What moves through the system? (customers, parts, packets)
  • Resources: What are the constraints? (servers, machines, bandwidth)
  • Processes: What are the activities? (arrival, service, departure)
  • Metrics: What to measure? (wait times, utilization, throughput)

Step 2: Implement Process Functions

Create generator functions for each process type:

def entity_process(env, name, resources, parameters):
    # Arrival logic
    arrival_time = env.now

    # Request resources
    with resource.request() as req:
        yield req

        # Service logic
        service_time = calculate_service_time(parameters)
        yield env.timeout(service_time)

    # Departure logic
    collect_statistics(env.now - arrival_time)

Step 3: Set Up Monitoring

Use monitoring utilities to collect data. See references/monitoring.md for comprehensive techniques.

from scripts.resource_monitor import ResourceMonitor

# Create and monitor resource
resource = simpy.Resource(env, capacity=2)
monitor = ResourceMonitor(env, resource, "Server")

# After simulation
monitor.report()

Step 4: Run and Analyze

# Run simulation
env.run(until=simulation_time)

#

Install simpy in Claude Code & Claude Desktop

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Bundled files

references/events.mdreferences/monitoring.mdreferences/process-interaction.mdreferences/real-time.mdreferences/resources.mdscripts/basic_simulation_template.pyscripts/resource_monitor.py

FAQ

What does the simpy skill do?

Process-based discrete-event simulation framework in Python. Use this skill when building simulations of systems with processes, queues, resources, and time-based events such as manufacturing systems, service operations, network traffic, logistics, or any system where entities interact with shared resources over time.

How do I install the simpy skill?

Copy the skill folder into ~/.claude/skills (the Claude Code tab above does this in one command), or install it as a plugin.

Does the simpy skill run scripts?

Yes, this skill bundles executable scripts. Review the source before installing.

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