PackageData AnalysisScientific Packages

simpy

SimPy

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.

This page mirrors an upstream repository entry. It does not mean the skill is already part of the SCI Skills curated catalog.

Raw path
scientific-skills/simpy
Allowed tools
-
Repository version
2.31.0
Synced at
March 27, 2026

About this skill

About this skill

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.

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