Skip to content

ANR-MAMUT/MAMUT-routing-lib

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

43 Commits
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

MAMUT-routing-lib

Modern Python library for CVRP, VRPTW and time-dependent (TDVRPTW/TDVRP) benchmark models, validation, BKS management, and snapshot retrieval.

SWH

MAMUT project context

This repository is part of the MAMUT project (ANR-22-CE22-0016), an academic research project aiming to advance the state of the art in combinatorial optimization for logistics and transportation problems.

Scope

mamut_routing_lib is a standalone Python contract/runtime layer to work with the routing benchmarks curated in the MAMUT-routing repository. It is inspired by projects like VRPLIB and is intended as a general-purpose library for working with CVRP and VRPTW benchmark instances, both historical and newly generated as well as their associated BKS and metadata.

It provides:

  • historical VRPTW benchmark models
  • generated CVRP and VRPTW benchmark models
  • time-dependent (TDVRPTW/TDVRP) benchmark models with arrival-time-function sidecars and an exact, epsilon-free Duration checker (mamut_routing_lib.td)
  • local benchmark discovery and JSON I/O
  • solution checking
  • BKS creation and replacement logic
  • optional remote snapshot archive retrieval

The time-dependent layer is the pricing authority of KAYROS, the MAMUT time-dependent VRP solver: KAYROS finds routes, this library's checker defines and validates their cost.

This repository does not own site generation, publication-history generation, migration pipelines, or solver integrations. It is a pure contract and runtime library for benchmark data management intended to be used by researchers and practitioners alike, both inside and outside the MAMUT project.

Installation

pip install mamut-routing-lib

or, using the modern uv Python package manager:

uv add mamut-routing-lib

Local Loading

from pathlib import Path

from mamut_routing_lib import discover_benchmark_instances

items = discover_benchmark_instances(
    benchmarks_root=Path("/path/to/benchmarks"),
)

Remote Snapshot Retrieval

The optional remote module consumes release manifests and release assets published by a benchmark repository such as MAMUT-routing.

Default environment variables:

  • MAMUT_ROUTING_RELEASE_REPO
  • MAMUT_ROUTING_GITHUB_TOKEN
  • MAMUT_ROUTING_ROOT
  • MAMUT_ROUTING_BENCHMARKS_ROOT

Command-line interface

A mamut-routing CLI is available with the optional cli extra:

pip install "mamut-routing-lib[cli]"
# or with uv
uv add "mamut-routing-lib[cli]"

It exposes local benchmark commands by default, plus a remote command group backed by the remote retrieval module:

# List archives available in the latest release of the configured repo
mamut-routing remote --repo ANR-MAMUT/MAMUT-routing list

# Filter by problem-type/benchmark-name
mamut-routing remote list --problem-type CVRP --benchmark-name Mamut2026

# Download (and extract) one or more archives into --benchmarks-dir
mamut-routing --benchmarks-dir ./benchmarks remote \
    fetch CVRP-Mamut2026-snapshot-2026-05-22-28f9199.zip

# Or fetch by filter:
mamut-routing remote fetch --problem-type CVRP --benchmark-name Mamut2026

# Verify local zip checksums against the remote manifest
mamut-routing --benchmarks-dir ./benchmarks remote verify

# Print the parsed manifest as JSON
mamut-routing remote manifest | jq .snapshot_id

Release archives are published at the problem-family level, for example CVRP-Mamut2026 or VRPTW-Sintef2008. Extracted archives are placed in a directory named after the archive stem, containing the archived benchmarks/... tree.

The --benchmarks-dir flag is also read from MAMUT_ROUTING_BENCHMARKS_ROOT or MAMUT_ROUTING_ROOT. Remote flags --repo, --token, and --tag are read from MAMUT_ROUTING_RELEASE_REPO and MAMUT_ROUTING_GITHUB_TOKEN where applicable.

Solving with PyVRP

An optional [pyvrp] extra wraps PyVRP's HGS metaheuristic so users can solve CVRP and VRPTW instances directly from the library.

# Python API only
pip install "mamut-routing-lib[pyvrp]"

# Both the CLI (mamut-routing solve) and the API
pip install "mamut-routing-lib[cli,pyvrp]"

Python:

from mamut_routing_lib import load_benchmark_instance, ObjectiveFunction
from mamut_routing_lib.solvers.pyvrp import solve_instance, solve_and_update_bks

instance = load_benchmark_instance("path/to/instance.vrp.json")
result = solve_instance(instance, time_limit_s=30, seed=42)
print(result.solver_is_feasible, result.solver_cost, result.route_count)

# Or solve-and-write-BKS in one call
result, update = solve_and_update_bks(
    instance,
    instance_path="path/to/instance.vrp.json",
    time_limit_s=30,
    seed=42,
    objective_function=ObjectiveFunction.HIERARCHICAL_VEHICLE_COST,
)
print(update.action if update else "infeasible")

CLI (requires [cli,pyvrp]):

# Inspect what's locally available before solving
mamut-routing --benchmarks-dir ./benchmarks list \
    --problem-type CVRP --benchmark-name Mamut2026

# Include source file paths in the table when needed
mamut-routing --benchmarks-dir ./benchmarks list --show-path

# Pipe the matching paths into solve
mamut-routing --benchmarks-dir ./benchmarks list \
    --problem-type CVRP --paths-only \
    | xargs -r mamut-routing solve --time-limit-s 30

# Solve specific instances
mamut-routing solve path/to/inst1.vrp.json path/to/inst2.vrp.json \
    --time-limit-s 30 --seed 42

# Or discover under --benchmarks-dir and filter
mamut-routing --benchmarks-dir ./benchmarks solve \
    --problem-type VRPTW --benchmark-name Mamut2026 \
    --objective hierarchical_vehicle_cost \
    --time-limit-s 60

Development

# Install editable with CLI extras and test deps
uv pip install -e ".[cli]"
uv pip install pytest

# Hermetic offline test suite (no network)
pytest -v tests/

# Opt-in real-network smoke test (downloads ~1.6 MB from the public MAMUT-routing release)
MAMUT_ROUTING_TEST_NETWORK=1 pytest -v tests/test_remote_network.py

Archival and reproducibility

MAMUT-routing-lib is archived by Software Heritage; the badge above tracks the archive status of the GitHub origin:

For academic referencing, use Software Heritage identifiers (SWHIDs) to cite the exact archived revision or release tag rather than the moving repository origin — e.g. the precise version of the validation rules, the Duration checker, or the BKS replacement logic used in an experiment.

About

Modern Python library for CVRP and VRPTW benchmark models, validation, BKS management, and snapshot retrieval.

Resources

License

Stars

0 stars

Watchers

0 watching

Forks

Packages

 
 
 

Contributors

Languages