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A Python library designed to help users design classical- and quantum-driven solutions for the Maximum Independent Set (MIS) problem.

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Maximum independent set

The Maximum Independent Set problem (MIS) is a standard and widespread graph problem in scheduling, network theory, error correction, and even in the quantum sector as part of more general optimization algorithms (e.g., QUBO formulations) or as a benchmark on quantum annealers or neutral atom devices.

There is currently no known polynomial-time algorithm for general graphs running on classical (non-quantum) devices, which means that, in practice, finding an exact solution for large graphs is generally not possible due to time and hardware limitations. For this reason, most applications of MIS must satisfy themselves with finding approximate solutions. As it turns out, in some cases, even finding approximate solutions is considered hard. For these reasons, there is high interest in solving MIS on quantum devices.

The maximum-independent-set library provides the means to achieve this: it compiles an MIS into a form suited for execution on existing analog quantum hardware, such as the commercial QPUs produced by Pasqal. It is designed for scientists and engineers working on optimization problems—no quantum computing knowledge required and no quantum computer needed for testing.

This library lets users treat the solver as a black box: feed in a graph of interest, get back an optimal (or near-optimal) independent set. For more advanced users, it offers tools to fine-tune algorithmic strategies, leverage quantum hardware via the Pasqal cloud, or even experiment with custom quantum sequences and processing pipelines.

Users setting their first steps into quantum computing will learn how to implement the core algorithm in a few simple steps and run it using the Pasqal Neutral Atom QPU. More experienced users will find this library to provide the right environment to explore new ideas - both in terms of methodologies and data domain - while always interacting with a simple and intuitive QPU interface.

This library is actively used to solve real-world projects. We have applied it to optimize the layout and costs of 5G network deployments, schedule satellite missions with Thales, and improve charging network planning for electric vehicles with EDF. These case studies highlight how quantum-based MIS solutions can tackle complex challenges across telecom, aerospace and energy sectors.

Installation

Using hatch, uv or any pyproject-compatible Python manager

Edit file pyproject.toml to add the line

  "maximum-independent-set"

to the list of dependencies.

Using pip or pipx

To install the pipy package using pip or pipx

  1. Create a venv if that's not done yet
$ python -m venv venv
  1. Enter the venv
$ . venv/bin/activate
  1. Install the package
$ pip install maximum-independent-set
# or
$ pipx install maximum-independent-set

QuickStart

from mis import MISSolver, MISInstance, BackendConfig, SolverConfig
import networkx as nx

# Generate a simple graph (here, a triangle)
graph = nx.Graph()
graph.add_edges_from([(0, 1), (0, 2)])
instance = MISInstance(graph)

# Use a default quantum backend.
config = SolverConfig(backend=BackendConfig())
solver = MISSolver(instance, config)

# Solve the MIS problem.
results = solver.solve()

# Show the results.
print("MIS solutions:", results)
results[0].draw()

Documentation

Documentation

Tutorials.

Full API documentation.

Getting in touch

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