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cke solver for mm1 queues

Project description

A Continuous Kolmogorov Equation (CKE) solver for M/M/1 queueing systems.

pypi python license

Overview

mm1cke provides a fast and accurate solver for the transient behavior of M/M/1 queues using the continuous Kolmogorov equations (CKE). It is designed for researchers and practitioners in operations research, queueing theory, and performance analysis.

Features

  • Transient analysis of M/M/1 queues

  • Vectorized and efficient implementation

  • Outputs results as Polars DataFrames

  • Easy integration with scientific Python stack

Installation

Install with pip:

pip install mm1cke

Requirements

  • Python >= 3.11

  • simpy >= 4.1, < 5

  • matplotlib >= 3.10, < 4

  • polars >= 1.30, < 4

  • rich >= 14

  • scipy >= 1.15

  • seaborn >= 0.13

  • pydantic >= 2.11

Usage Example

from mm1cke import TransientCase, solve_transient

case = TransientCase(L_0=9, λ=0.88, μ=1, ls_max=500, time_step=0.5)
probs_df = solve_transient(case)
print(probs_df)

# Calculate performance measures (mean and coefficient of variation)
from mm1cke.utils import calculate_performance_measures
plot_df = calculate_performance_measures(probs_df)
print(plot_df)

# Plotting (optional)
import seaborn as sns
import matplotlib.pyplot as plt
ax = sns.lineplot(plot_df, x="t", y="e_l_s")
plt.show()

API Reference

  • mm1cke.TransientCase: Configuration for a transient M/M/1 queue case.

  • mm1cke.solve_transient(case: TransientCase) -> polars.DataFrame: Solves the transient CKE for the given case.

  • mm1cke.utils.calculate_performance_measures(probs_df: polars.DataFrame): Computes mean and coefficient of variation of the queue length over time.

License

MIT License. See LICENSE file for details.

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