Skip to main content

A Python wrapper for the HGS-CVRP solver

Project description

PyHygese

Build Status codecov

This package is under active development. It can introduce breaking changes anytime. Please use it at your own risk.

A solver for the Capacitated Vehicle Routing Problem (CVRP)

This package provides a simple Python wrapper for the Hybrid Genetic Search solver for Capacitated Vehicle Routing Problems (HGS-CVRP).

The installation requires gcc, make, and cmake to build. On Windows, for example, you can install them by scoop install gcc make cmake using Scoop. Then, install the PyHygese package:

pip install hygese

CVRP Example (random)

import numpy as np 
from hygese import AlgorithmParameters, Solver

n = 20
x = (np.random.rand(n) * 1000)
y = (np.random.rand(n) * 1000)

# Solver initialization
ap = AlgorithmParameters(timeLimit=3.2)  # seconds
hgs_solver = Solver(parameters=ap, verbose=True)

# data preparation
data = dict()
data['x_coordinates'] = x
data['y_coordinates'] = y

# You may also supply distance_matrix instead of coordinates, or in addition to coordinates
# If you supply distance_matrix, it will be used for cost calculation.
# The additional coordinates will be helpful in speeding up the algorithm.
# data['distance_matrix'] = dist_mtx

data['service_times'] = np.zeros(n)
demands = np.ones(n)
demands[0] = 0 # depot demand = 0
data['demands'] = demands
data['vehicle_capacity'] = np.ceil(n/3).astype(int)
data['num_vehicles'] = 3
data['depot'] = 0

result = hgs_solver.solve_cvrp(data)
print(result.cost)
print(result.routes)

NOTE: The result.routes above does not include the depot. All vehicles start from the depot and return to the depot.

another CVRP example

# A CVRP from https://developers.google.com/optimization/routing/cvrp
from hygese import AlgorithmParameters, Solver
import numpy as np 

data = dict()
data['distance_matrix'] = [
    [0, 548, 776, 696, 582, 274, 502, 194, 308, 194, 536, 502, 388, 354, 468, 776, 662],
    [548, 0, 684, 308, 194, 502, 730, 354, 696, 742, 1084, 594, 480, 674, 1016, 868, 1210],
    [776, 684, 0, 992, 878, 502, 274, 810, 468, 742, 400, 1278, 1164, 1130, 788, 1552, 754],
    [696, 308, 992, 0, 114, 650, 878, 502, 844, 890, 1232, 514, 628, 822, 1164, 560, 1358],
    [582, 194, 878, 114, 0, 536, 764, 388, 730, 776, 1118, 400, 514, 708, 1050, 674, 1244],
    [274, 502, 502, 650, 536, 0, 228, 308, 194, 240, 582, 776, 662, 628, 514, 1050, 708],
    [502, 730, 274, 878, 764, 228, 0, 536, 194, 468, 354, 1004, 890, 856, 514, 1278, 480],
    [194, 354, 810, 502, 388, 308, 536, 0, 342, 388, 730, 468, 354, 320, 662, 742, 856],
    [308, 696, 468, 844, 730, 194, 194, 342, 0, 274, 388, 810, 696, 662, 320, 1084, 514],
    [194, 742, 742, 890, 776, 240, 468, 388, 274, 0, 342, 536, 422, 388, 274, 810, 468],
    [536, 1084, 400, 1232, 1118, 582, 354, 730, 388, 342, 0, 878, 764, 730, 388, 1152, 354],
    [502, 594, 1278, 514, 400, 776, 1004, 468, 810, 536, 878, 0, 114, 308, 650, 274, 844],
    [388, 480, 1164, 628, 514, 662, 890, 354, 696, 422, 764, 114, 0, 194, 536, 388, 730],
    [354, 674, 1130, 822, 708, 628, 856, 320, 662, 388, 730, 308, 194, 0, 342, 422, 536],
    [468, 1016, 788, 1164, 1050, 514, 514, 662, 320, 274, 388, 650, 536, 342, 0, 764, 194],
    [776, 868, 1552, 560, 674, 1050, 1278, 742, 1084, 810, 1152, 274, 388, 422, 764, 0, 798],
    [662, 1210, 754, 1358, 1244, 708, 480, 856, 514, 468, 354, 844, 730, 536, 194, 798, 0]
]
data['num_vehicles'] = 4
data['depot'] = 0
data['demands'] = [0, 1, 1, 2, 4, 2, 4, 8, 8, 1, 2, 1, 2, 4, 4, 8, 8]
data['vehicle_capacity'] = 15  # different from OR-Tools: homogeneous capacity
data['service_times'] = np.zeros(len(data['demands']))

# Solver initialization
ap = AlgorithmParameters(timeLimit=3.2)  # seconds
hgs_solver = Solver(parameters=ap, verbose=True)

# Solve
result = hgs_solver.solve_cvrp(data)
print(result.cost)
print(result.routes)

TSP example

# A TSP example from https://developers.google.com/optimization/routing/tsp
from hygese import AlgorithmParameters, Solver

data = dict()
data['distance_matrix'] = [
    [0, 2451, 713, 1018, 1631, 1374, 2408, 213, 2571, 875, 1420, 2145, 1972],
    [2451, 0, 1745, 1524, 831, 1240, 959, 2596, 403, 1589, 1374, 357, 579],
    [713, 1745, 0, 355, 920, 803, 1737, 851, 1858, 262, 940, 1453, 1260],
    [1018, 1524, 355, 0, 700, 862, 1395, 1123, 1584, 466, 1056, 1280, 987],
    [1631, 831, 920, 700, 0, 663, 1021, 1769, 949, 796, 879, 586, 371],
    [1374, 1240, 803, 862, 663, 0, 1681, 1551, 1765, 547, 225, 887, 999],
    [2408, 959, 1737, 1395, 1021, 1681, 0, 2493, 678, 1724, 1891, 1114, 701],
    [213, 2596, 851, 1123, 1769, 1551, 2493, 0, 2699, 1038, 1605, 2300, 2099],
    [2571, 403, 1858, 1584, 949, 1765, 678, 2699, 0, 1744, 1645, 653, 600],
    [875, 1589, 262, 466, 796, 547, 1724, 1038, 1744, 0, 679, 1272, 1162],
    [1420, 1374, 940, 1056, 879, 225, 1891, 1605, 1645, 679, 0, 1017, 1200],
    [2145, 357, 1453, 1280, 586, 887, 1114, 2300, 653, 1272, 1017, 0, 504],
    [1972, 579, 1260, 987, 371, 999, 701, 2099, 600, 1162, 1200, 504, 0],
] 

# Solver initialization
ap = AlgorithmParameters(timeLimit=0.8)  # seconds
hgs_solver = Solver(parameters=ap, verbose=True)

# Solve
result = hgs_solver.solve_tsp(data)
print(result.cost)
print(result.routes)

Algorithm Parameters

Configurable algorithm parameters are defined in the AlgorithmParameters dataclass with default values:

@dataclass
class AlgorithmParameters:
    nbGranular: int = 20
    mu: int = 25
    lambda_: int = 40
    nbElite: int = 4
    nbClose: int = 5
    targetFeasible: float = 0.2
    seed: int = 1
    nbIter: int = 20000
    timeLimit: float = 0.0
    useSwapStar: bool = True

Others

A Julia wrapper is available: Hygese.jl

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

hygese-0.0.0.7.tar.gz (63.6 kB view details)

Uploaded Source

File details

Details for the file hygese-0.0.0.7.tar.gz.

File metadata

  • Download URL: hygese-0.0.0.7.tar.gz
  • Upload date:
  • Size: 63.6 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/4.0.0 CPython/3.9.12

File hashes

Hashes for hygese-0.0.0.7.tar.gz
Algorithm Hash digest
SHA256 02c0310668a0ac20c102ad8856b215bf8d302eca8c454c9f0ae56218cbccb49a
MD5 6294278bbc05e8be6b22ef513ee69620
BLAKE2b-256 8fc8743c7547c149411c50c52833b3125192e3d898cd1e6f2294e168972648ca

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page