pyVolutionary stands as a versatile Python library dedicated to metaheuristic algorithms within the realm of evolutionary computation. Engineered for ease of use, flexibility, and speed, it exhibits robustness and efficiency, having undergone rigorous testing on large-scale problem instances. The primary objectives encompass the implementation of both classical and cutting-edge nature-inspired algorithms. The library is conceived as a user-friendly resource facilitating rapid access to optimization algorithms for researchers, fostering the dissemination of optimization knowledge to a broad audience without financial barriers.
Nature-inspired algorithms constitute a widely embraced tool for addressing optimization challenges. Over the course of their evolution, a plethora of variants have emerged (paper 1, paper 2), showcasing their adaptability and versatility across diverse domains and applications. Noteworthy advancements have been achieved through hybridization, modification, and adaptation of these algorithms. However, the implementation of nature-inspired algorithms can often pose a formidable challenge, characterized by complexity and tedium. pyVolutionary is specifically crafted to surmount this challenge, offering a streamlined and expedited approach to leveraging these algorithms without the need for arduous, time-consuming implementations from scratch.
The list of algorithms currently implemented in pyVolutionary can be consulted in the Algorithms section, where you can also find the corresponding references to the scientific papers as well as the corresponding demo for each algorithm.
A number of practical examples are provided in the Practical examples section.
The library is continuously updated with new algorithms and problems, and contributions are welcome.
pyVolutionary is available on PyPI, and can be installed via pip:
pip install pyvolutionary
Once installed, pyVolutionary can be imported into your Python scripts as follows:
import pyvolutionary
Now, you can access the algorithms and problems included in the library. With pyVolutionary, you can solve both
continuous and discrete optimization problems. It is also possible to solve mixed problems, i.e., problems with both
continuous and discrete variables. In order to do so, you need to define a Task
class, which inherits from the
Task
class of the library. The list of variables in the problem must be specified in the constructor of the class
inheriting from Task
. The following table describes the types of variables currently implemented in the library.
Variable type | Class name | Description | Example |
---|---|---|---|
Continuous | ContinuousVariable |
A continuous variable | ContinuousVariable(name="x0", lower_bound=-100.0, upper_bound=100.0) |
Continuous (set) | ContinuousMultiVariable |
A set of continuous variables | ContinuousMultiVariable(name="x0", lower_bounds=[-100.0, -200.0], upper_bounds=[100.0, 50.0]) |
Discrete | DiscreteVariable |
A discrete variable | DiscreteVariable(choices=["scale", "auto", 0.01, 0.1, 0.5, 1.0], name="gamma") |
Discrete (set) | DiscreteMultiVariable |
A set of discrete variables | DiscreteMultiVariable(choices=[[0.1, 10, 100], ["scale", "auto", 0.01, 0.1, 0.5, 1.0]], name="params") |
Permutation | PermutationVariable |
A permutation of the specified choices | PermutationVariable(items=[[60, 200], [180, 200], [80, 180]], name="routes") |
Binary | BinaryVariable |
A type of variable used for problems where the data are binary | BinaryVariable(name="x", n_vars=10) |
Multi-objective | MultiObjectiveVariable |
A type of variable used for multi-objective problems | MultiObjectiveVariable(name="x", lower_bounds=(-10, -10), upper_bounds=(10, 10)) |
An example of a custom Task
class is the following:
from pyvolutionary import ContinuousVariable, Task
class Sphere(Task):
def objective_function(self, x: list[float]) -> float:
x1, x2 = x
f1 = x1 - 2 * x2 + 3
f2 = 2 * x1 + x2 - 8
return f1 ** 2 + f2 ** 2
# Define the task with the bounds and the configuration of the optimizer
task = Sphere(
variables=[
ContinuousVariable(name="x1", lower_bound=-100.0, upper_bound=100.0),
ContinuousVariable(name="x2", lower_bound=-100.0, upper_bound=100.0),
],
)
You can pass the minmax
parameter to the Task
class to specify whether you want to minimize or maximize the function.
Therefore, if you want to maximize the function, you can write:
from pyvolutionary import ContinuousVariable, Task
class Sphere(Task):
def objective_function(self, x: list[float]) -> float:
x1, x2 = x
f1 = x1 - 2 * x2 + 3
f2 = 2 * x1 + x2 - 8
return -(f1 ** 2 + f2 ** 2)
task = Sphere(
variables=[
ContinuousVariable(name="x1", lower_bound=-100.0, upper_bound=100.0),
ContinuousVariable(name="x2", lower_bound=-100.0, upper_bound=100.0),
],
minmax="max",
)
By default, the minmax
parameter is set to min
. If necessary (e.g., in the implementation of the objective function),
additional data can be injected into the Task
class by using the data
parameter of the constructor. This data can
be accessed by using the data
attribute of the Task
class (see combinatorial example below).
Finally, you can also specify the seed of the random number generator by using the seed
parameter of the definition
of the Task
:
from pyvolutionary import ContinuousVariable, Task
class Sphere(Task):
def objective_function(self, x: list[float]) -> float:
x1, x2 = x
f1 = x1 - 2 * x2 + 3
f2 = 2 * x1 + x2 - 8
return -(f1 ** 2 + f2 ** 2)
task = Sphere(
variables=[
ContinuousVariable(name="x1", lower_bound=-100.0, upper_bound=100.0),
ContinuousVariable(name="x2", lower_bound=-100.0, upper_bound=100.0),
],
minmax="max",
seed=42,
)
For example, let us inspect how you can solve the continuous sphere problem with the Particle Swarm Optimization algorithm.
from pyvolutionary import ContinuousMultiVariable, ParticleSwarmOptimization, ParticleSwarmOptimizationConfig, Task
# Define the problem, you can replace the following class with your custom problem to optimize
class Sphere(Task):
def objective_function(self, x: list[float]) -> float:
x1, x2 = x
f1 = x1 - 2 * x2 + 3
f2 = 2 * x1 + x2 - 8
return f1 ** 2 + f2 ** 2
# Define the task with the bounds and the configuration of the optimizer
task = Sphere(
variables=[ContinuousMultiVariable(name="x", lower_bounds=[-100.0, -100.0], upper_bound=[100.0, 100.0])],
)
configuration = ParticleSwarmOptimizationConfig(
population_size=200,
fitness_error=10e-4,
max_cycles=400,
c1=0.1,
c2=0.1,
w=[0.35, 1],
)
optimization_result = ParticleSwarmOptimization(configuration).optimize(task)
You can also specify the mode of the solver by using the mode
argument of the optimize
method.
For instance, if you want to run the Particle Swarm Optimization algorithm in parallel with threads, you can write:
optimization_result = ParticleSwarmOptimization(configuration).optimize(task, mode="thread")
The possible values of the mode
parameter are:
serial
: the algorithm is run in serial mode;process
: the algorithm is run in parallel with processes;thread
: the algorithm is run in parallel with threads.
In case of process
and thread
modes, you can also specify the number of processes or threads to use by using the
n_jobs
argument of the optimize
method:
optimization_result = ParticleSwarmOptimization(configuration).optimize(task, mode="thread", jobs=4)
The optimization result is a dictionary containing the following keys:
evolution
: a list of the agents found at each generationrates
: a list of the fitness values of the agents found at each generationbest_solution
: the best agent found by the algorithm
Explicitly, the evolution
key contains a list of Population
, i.e. a dictionary which agents
key contains a list of
Agent
. The latter is a dictionary composed by the following basic keys:
position
: the position of the agentfitness
: the fitness value of the agentcost
: the cost of the agent
from pydantic import BaseModel
class Agent(BaseModel):
position: list[float]
cost: float
fitness: float
These are the basic information, but each algorithm can add more information to the agent, such as the velocity in the case of PSO.
A typical problem involving discrete variables is the optimization of the hyperparameters of a Machine Learning model, such as a Support Vector Classifier (SVC). You can use pyVolutionary to accomplish this task. In the following, we provide an example using the Particle Swarm Optimization (PSO) as the optimizer.
from typing import Any
from sklearn.svm import SVC
from sklearn.model_selection import train_test_split
from sklearn.preprocessing import StandardScaler
from sklearn import datasets, metrics
from pyvolutionary import (
best_agent,
ContinuousVariable,
DiscreteVariable,
ParticleSwarmOptimization,
ParticleSwarmOptimizationConfig,
Task,
)
# Load the data set; In this example, the breast cancer dataset is loaded.
X, y = datasets.load_breast_cancer(return_X_y=True)
# Create training and test split
X_train, X_test, y_train, y_test = train_test_split(X, y, test_size=0.3, random_state=1, stratify=y)
sc = StandardScaler()
X_train_std = sc.fit_transform(X_train)
X_test_std = sc.transform(X_test)
class SvmOptimizedProblem(Task):
def objective_function(self, x: list[Any]):
x_transformed = self.transform_solution(x)
C, kernel = x_transformed["C"], x_transformed["kernel"]
degree, gamma = x_transformed["degree"], x_transformed["gamma"]
svc = SVC(C=C, kernel=kernel, degree=degree, gamma=gamma, probability=True, random_state=1)
svc.fit(X_train_std, y_train)
y_predict = svc.predict(X_test_std)
return metrics.accuracy_score(y_test, y_predict)
task = SvmOptimizedProblem(
variables=[
ContinuousVariable(lower_bound=0.01, upper_bound=1000., name="C"),
DiscreteVariable(choices=["linear", "poly", "rbf", "sigmoid"], name="kernel"),
DiscreteVariable(choices=[*range(1, 6)], name="degree"),
DiscreteVariable(choices=["scale", "auto", 0.01, 0.05, 0.1, 0.5, 1.0], name="gamma"),
],
minmax="max",
)
configuration = ParticleSwarmOptimizationConfig(
population_size=200,
fitness_error=10e-4,
max_cycles=100,
c1=0.1,
c2=0.1,
w=[0.35, 1],
)
result = ParticleSwarmOptimization(configuration).optimize(task)
best = best_agent(result.evolution[-1].agents, task.minmax)
print(f"Best parameters: {task.transform_solution(best.position)}")
print(f"Best accuracy: {best.cost}")
You can replace the PSO with any other algorithm implemented in the library.
Within the framework of pyVolutionary for addressing the Traveling Salesman Problem (TSP), a solution is a plausible route signifying a tour that encompasses visiting all cities precisely once and returning to the initial city. Typically, this solution is articulated as a permutation of the cities, wherein each city features exactly once in the permutation.
As an illustration, consider a TSP scenario involving 5 cities denoted as A, B, C, D, and E. A potential solution might be denoted by the permutation [A, B, D, E, C], illustrating the order in which the cities are visited. This interpretation indicates that the tour initiates at city A, proceeds to city B, then D, E, and ultimately C before looping back to city A.
The following code snippet illustrates how to solve the TSP with the Virus Colony Search Optimization algorithm.
from typing import Any
import numpy as np
from pyvolutionary import (
best_agent,
Task,
PermutationVariable,
VirusColonySearchOptimization,
VirusColonySearchOptimizationConfig,
)
from pyvolutionary.helpers import distance
class TspProblem(Task):
def objective_function(self, x: list[Any]) -> float:
x_transformed = self.transform_solution(x)
routes = x_transformed["routes"]
city_pos = self.data["city_positions"]
n_routes = len(routes)
return np.sum([distance(
city_pos[route], city_pos[routes[(idx + 1) % n_routes]]
) for idx, route in enumerate(routes)])
city_positions = [
[60, 200], [180, 200], [80, 180], [140, 180], [20, 160],
[100, 160], [200, 160], [140, 140], [40, 120], [100, 120],
[180, 100], [60, 80], [120, 80], [180, 60], [20, 40],
[100, 40], [200, 40], [20, 20], [60, 20], [160, 20]
]
task = TspProblem(
variables=[PermutationVariable(name="routes", items=list(range(0, len(city_positions))))],
data={"city_positions": city_positions},
)
configuration = VirusColonySearchOptimizationConfig(
population_size=10,
fitness_error=0.01,
max_cycles=100,
lamda=0.1,
sigma=2.5,
)
result = VirusColonySearchOptimization(configuration).optimize(task)
best = best_agent(result.evolution[-1].agents, task.minmax)
print(f"Best real scheduling: {task.transform_solution(best.position)}")
print(f"Best fitness: {best.cost}")
pyVolutionary also supports multi-objective problems. A multi-objective problem is a problem with more than one
objective function. All the objective functions are then "mixed" together by means of a weight vector. The latter has
to be specified within the configuration of the Task
class. The following problem is an example of a multi-objective
problem solved by pyVolutionary with the Forest Optimization Algorithm (the latter can be replaced with any other
algorithm implemented in the library):
import numpy as np
from pyvolutionary import Task, MultiObjectiveVariable, ForestOptimizationAlgorithm, ForestOptimizationAlgorithmConfig
class MultiObjectiveBenchmark(Task):
# Link: https://en.wikipedia.org/wiki/Test_functions_for_optimization
def objective_function(self, solution):
def booth(x, y):
return (x + 2 * y - 7) ** 2 + (2 * x + y - 5) ** 2
def bukin(x, y):
return 100 * np.sqrt(np.abs(y - 0.01 * x ** 2)) + 0.01 * np.abs(x + 10)
def matyas(x, y):
return 0.26 * (x ** 2 + y ** 2) - 0.48 * x * y
return [booth(solution[0], solution[1]), bukin(solution[0], solution[1]), matyas(solution[0], solution[1])]
# Define the task with the bounds and the configuration of the optimizer
task = MultiObjectiveBenchmark(
variables=[MultiObjectiveVariable(name="x", lower_bounds=(-10, -10), upper_bounds=(10, 10))],
objective_weights=[0.4, 0.1, 0.5],
)
configuration = ForestOptimizationAlgorithmConfig(
population_size=200,
fitness_error=10e-4,
max_cycles=400,
lifetime=5,
area_limit=50,
local_seeding_changes=1,
global_seeding_changes=2,
transfer_rate=0.5,
)
optimization_result = ForestOptimizationAlgorithm(configuration).optimize(task)
pyVolutionary also supports constrained problems. They are implemented as usual, but the objective function has to specify the constraints, thus returning the cost of the constrained solution. Here is an example of a constrained problem solved by pyVolutionary with the Ant Lion Optimization algorithm (the latter can be replaced with any other algorithm implemented in the library):
import numpy as np
from pyvolutionary import Task, ContinuousMultiVariable, AntLionOptimization, AntLionOptimizationConfig
## Link: https://onlinelibrary.wiley.com/doi/pdf/10.1002/9781119136507.app2
class ConstrainedBenchmark(Task):
def objective_function(self, solution):
def g1(x):
return 2 * x[0] + 2 * x[1] + x[9] + x[10] - 10
def g2(x):
return 2 * x[0] + 2 * x[2] + x[9] + x[10] - 10
def g3(x):
return 2 * x[1] + 2 * x[2] + x[10] + x[11] - 10
def g4(x):
return -8 * x[0] + x[9]
def g5(x):
return -8 * x[1] + x[10]
def g6(x):
return -8 * x[2] + x[11]
def g7(x):
return -2 * x[3] - x[4] + x[9]
def g8(x):
return -2 * x[5] - x[6] + x[10]
def g9(x):
return -2 * x[7] - x[8] + x[11]
def violate(value):
return 0 if value <= 0 else value
fx = 5 * np.sum(solution[:4]) - 5 * np.sum(solution[:4] ** 2) - np.sum(solution[4:])
fx += violate(g1(solution)) ** 2 + violate(g2(solution)) + violate(g3(solution)) + (
2 * violate(g4(solution)) + violate(g5(solution)) + violate(g6(solution))
) + violate(g7(solution)) + violate(g8(solution)) + violate(g9(solution))
return fx
# Define the task with the bounds and the configuration of the optimizer
lower_bounds = [0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0]
upper_bounds = [1, 1, 1, 1, 1, 1, 1, 1, 1, 100, 100, 100, 1]
task = ConstrainedBenchmark(
variables=([ContinuousMultiVariable(name="x", lower_bounds=lower_bounds, upper_bounds=upper_bounds)])
)
configuration = AntLionOptimizationConfig(population_size=200, fitness_error=10e-4, max_cycles=400)
optimization_result = AntLionOptimization(configuration).optimize(task)
A multi-objective constrained problem can be also managed by pyVolutionary. In this case, the objective function
must return a list of costs, and the constraints must be specified in the objective function of the Task
class as well.
pyVolutionary is designed to be easily extensible. You can add your own algorithms and problems to the library by following the instructions below.
To add a new algorithm, you need to create a new class that inherits from the OptimizationAbstract
class. The new
class must implement the optimization_step
method, where you can implement your new metaheuristic algorithm.
The constructor of the new class must accept a config
parameter, which is a Pydantic model extending the BaseOptimizationConfig
class. This class contains the parameters of the algorithm, such as the population size, the number of generations, etc.
from pydantic import BaseModel
class BaseOptimizationConfig(BaseModel):
population_size: int
fitness_error: float | None = None
max_cycles: int
The examples listed in the following section can be used as a reference for the implementation of a new algorithm.
Once you created your new classes, you can run the algorithm by calling the optimize
method, which takes as input a
Task
object and returns a dictionary as above described.
pyVolutionary provides a set of utilities to facilitate the use of the library.
pyVolutionary provides a HyperTuner
class to perform hyperparameter tuning of a model, by means of the algorithms
implemented in the library. The class can be used to replace the GridSearchCV
of
scikit-learn:
from opfunu.cec_based.cec2017 import F52017
from pyvolutionary import ContinuousMultiVariable, Task, BiogeographyBasedOptimization, HyperTuner
f1 = F52017(30, f_bias=0)
class Problem(Task):
# Link: https://en.wikipedia.org/wiki/Test_functions_for_optimization
def objective_function(self, solution):
return f1.evaluate(solution)
# Define the task with the bounds and the configuration of the optimizer
task = Problem(
variables=[ContinuousMultiVariable(name="x", lower_bounds=f1.lb, upper_bounds=f1.ub)],
)
params_bbo_grid = {
"max_cycles": [10, 20, 30, 40],
"population_size": [50, 100, 150],
"n_elites": [3, 4, 5, 6],
"p_m": [0.01, 0.02, 0.05]
}
model = BiogeographyBasedOptimization()
tuner = HyperTuner(model, params_bbo_grid)
tuner.execute(task=task)
print(f"Best row {tuner.best_row}")
print(f"Best score {tuner.best_score}")
print(f"Best parameters {tuner.best_parameters}")
best_result = tuner.resolve()
print(f"Best solution after tuning {best_result.best_solution}")
tuner.export_results("csv")
tuner.export_results("dataframe")
tuner.export_results("json")
pyVolutionary provides a Multitask
class to perform multitasking optimization. The class can become very precious
when you need to optimize multiple tasks with multiple algorithms in parallel. In case, for instance, of multiple tasks
with the same algorithm, you can use the Multitask
class to run the optimization in parallel. Furthermore, the
Multitask
class can be used to run multiple tasks with different algorithms in parallel. Here is an example of how
to use the Multitask
class:
from opfunu.cec_based.cec2017 import F52017, F102017, F292017
from pyvolutionary import (
ContinuousMultiVariable,
Task,
NuclearReactionOptimization,
Multitask,
NuclearReactionOptimizationConfig,
MountainGazelleOptimization,
MountainGazelleOptimizationConfig,
GrasshopperOptimization,
GrasshopperOptimizationConfig,
GizaPyramidConstructionOptimization,
GizaPyramidConstructionOptimizationConfig,
)
f1 = F52017(30, f_bias=0)
f2 = F102017(30, f_bias=0)
f3 = F292017(30, f_bias=0)
class Problem1(Task):
def objective_function(self, solution):
return f1.evaluate(solution)
class Problem2(Task):
def objective_function(self, solution):
return f3.evaluate(solution)
class Problem3(Task):
def objective_function(self, solution):
return f1.evaluate(solution)
task1 = Problem1(
variables=[ContinuousMultiVariable(name="x", lower_bounds=f1.lb, upper_bounds=f1.ub)],
)
task2 = Problem2(
variables=[ContinuousMultiVariable(name="x", lower_bounds=f2.lb, upper_bounds=f2.ub)],
)
task3 = Problem3(
variables=[ContinuousMultiVariable(name="x", lower_bounds=f3.lb, upper_bounds=f3.ub)],
)
model1 = NuclearReactionOptimization(
config=NuclearReactionOptimizationConfig(max_cycles=10000, population_size=50)
)
model2 = MountainGazelleOptimization(
config=MountainGazelleOptimizationConfig(max_cycles=10000, population_size=50)
)
model3 = GrasshopperOptimization(
config=GrasshopperOptimizationConfig(max_cycles=10000, population_size=50, c_min=0.00004, c_max=2.0,)
)
model4 = GizaPyramidConstructionOptimization(
config=GizaPyramidConstructionOptimizationConfig(
max_cycles=10000, population_size=50, theta=14, friction=[1, 10], prob_substitution=0.5,
)
)
multitask = Multitask(
algorithms=(model1, model2, model3, model4), tasks=(task1, task2, task3), modes=("thread", ), n_workers=4
)
multitask.execute(n_trials=2, n_jobs=2, debug=True)
multitask.export_results("csv")
multitask.export_results("dataframe")
multitask.export_results("json")
The characteristics of an agent can be extracted by using two functions:
agent_trend
: it returns the trend of the agent at each iterationagent_position
: it returns the position of the agent at each iteration
agent_trend(optimization_result: OptimizationResult, idx: int, iters: list[int] | None = None) -> list[float]
agent_position(optimization_result: OptimizationResult, idx: int, iters: list[int] | None = None) -> list[list[float]]
where:
optimization_result
: the result from the optimization algorithmidx
: the index of the agent to consideriters
: a list of the iterations to consider. IfNone
, all the iterations are considered.
The two methods return a list of the cost or location in the space search, respectively, of the considered agent at each of the specified iterations.
Specifically for the best agent, you can use two functions in order to locate its position in the space search and to extract the trend of its cost, at each iteration:
best_agent_trend(optimization_result: OptimizationResult, iters: list[int] | None = None) -> list[float]
best_agent_position(optimization_result: OptimizationResult, iters: list[int] | None = None) -> list[list[float]]
The following algorithms are currently implemented in pyVolutionary:
Algorithm | Class | Year | Paper | Example |
---|---|---|---|---|
African Vulture Optimization | AfricanVultureOptimization |
2022 | paper | example |
Ant Colony Optimization | AntColonyOptimization |
2008 | paper | example |
Ant Lion Optimization | AntLionOptimization |
2015 | paper | example |
Aquila Optimization | AquilaOptimization |
2021 | paper | example |
Archimede Optimization | ArchimedeOptimization |
2021 | paper | example |
Artificial Bee Colony Optimization | BeeColonyOptimization |
2007 | paper | example |
Bacterial Foraging Optimization | BacterialForagingOptimization |
2002 | paper | example |
Bat Optimization | BatOptimization |
2010 | paper | example |
Battle Royale Optimization | BattleRoyaleOptimization |
2021 | paper | example |
Biogeography-Based Optimization | BiogeographyBasedOptimization |
2008 | paper | example |
Brain Storm Optimization (Original) | BrainStormOptimization |
2011 | paper | example |
Brain Storm Optimization (Improved) | ImprovedBrainStormOptimization |
2017 | paper | example |
Brown-Bear Optimization | BrownBearOptimization |
2023 | paper | example |
Camel Caravan Optimization | CamelCaravanOptimization |
2016 | paper | example |
Cat Swarm Optimization | CatSwarmOptimization |
2006 | paper | example |
Chaos Game Optimization | ChaosGameOptimization |
2021 | paper | example |
Chernobyl Disaster Optimization | ChernobylDisasterOptimization |
2023 | paper | example |
Coati Optimization | CoatiOptimization |
2023 | paper | example |
Coral Reef Optimization | CoralReefOptimization |
2014 | paper | example |
Coyotes Optimization | CoyotesOptimization |
2018 | paper | example |
Coronavirus Herd Immunity Optimization | CoronavirusHerdImmunityOptimization |
2021 | paper | example |
Cuckoo Search Optimization | CuckooSearchOptimization |
2009 | paper | example |
Dragonfly Optimization | DragonflyOptimization |
2016 | paper | example |
Dwarf Mongoose Optimization | DwarfMongooseOptimization |
2022 | paper | example |
Earthworms Optimization | EarthwormsOptimization |
2015 | paper | example |
Egret Swarm Optimization | EgretSwarmOptimization |
2022 | paper | example |
Electromagnetic Field Optimization | ElectromagneticFieldOptimization |
2016 | paper | example |
Elephant Herd Optimization | ElephantHerdOptimization |
2015 | paper | example |
Energy Valley Optimization | EnergyValleyOptimization |
2023 | paper | example |
Fick's Law Optimization | FicksLawOptimization |
2023 | paper | example |
Firefly Swarm Optimization | FireflySwarmOptimization |
2009 | paper | example |
Fire Hawk Optimization | FireHawkOptimization |
2022 | paper | example |
Fireworks Optimization | FireworksOptimization |
2010 | paper | example |
Fish School Search Optimization | FishSchoolSearchOptimization |
2008 | paper | example |
Flower Pollination Algorithm Optimization | FlowerPollinationAlgorithmOptimization |
2012 | paper | example |
Forensic Based Investigation Optimization | ForensicBasedInvestigationOptimization |
2020 | paper | example |
Forest Optimization Algorithm | ForestOptimizationAlgorithm |
2014 | paper | example |
Fox Optimization | FoxOptimization |
2023 | paper | example |
Gaining Sharing Knowledge-based Algorithm Optimization | GainingSharingKnowledgeOptimization |
2020 | paper | example |
Genetic Algorithm Optimization | GeneticAlgorithmOptimization |
1989 | paper | example |
Germinal Center Optimization | GerminalCenterOptimization |
2018 | paper | example |
Giant Trevally Optimization | GiantTrevallyOptimization |
2022 | paper | example |
Giza Pyramid Construction Optimization | GizaPyramidConstructionOptimization |
2021 | paper | example |
Golden Jackal Optimization | GoldenJackalOptimization |
2022 | paper | example |
Grasshopper Optimization Algorithm | GrasshopperOptimization |
2017 | paper | example |
Grey Wolf Optimization | GreyWolfOptimization |
2014 | paper | example |
Harmony Search Optimization | HarmonySearchOptimization |
2001 | paper | example |
Heap Based Optimization | HeapBasedOptimization |
2020 | paper | example |
Henry Gas Solubility Optimization | HenryGasSolubilityOptimization |
2019 | paper | example |
Hunger Games Search Optimization | HungerGamesSearchOptimization |
2021 | paper | example |
Imperialist Competitive Optimization | ImperialistCompetitiveOptimization |
2013 | paper | example |
Invasive Weed Optimization | InvasiveWeedOptimization |
2006 | paper | example |
Krill Herd Optimization | KrillHerdOptimization |
2012 | paper | example |
Levy Flight Jaya Swarm Optimization | LeviFlightJayaSwarmOptimization |
2021 | paper | example |
Marine Predators Optimization | MarinePredatorsOptimization |
2020 | paper | example |
Monarch Butterfly Optimization | MonarchButterflyOptimization |
2019 | paper | example |
Moth-Flame Optimization | MothFlameOptimization |
2015 | paper | example |
Mountain Gazelle Optimization | MountainGazelleOptimization |
2022 | paper | example |
Multi-verse Optimization | MultiverseOptimization |
2016 | paper | example |
Nuclear Reaction Optimization | NuclearReactionOptimization |
2019 | paper | example |
Osprey Optimization | OspreyOptimization |
2023 | paper | example |
Particle Swarm Optimization | ParticleSwarmOptimization |
1995 | paper | example |
Pathfinder Algorithm Optimization | PathfinderAlgorithmOptimization |
2019 | paper | example |
Pelican Optimization | PelicanOptimization |
2022 | paper | example |
Runge Kutta Optimization | RungeKuttaOptimization |
2021 | paper | example |
Salp Swarm Optimization | SalpSwarmOptimization |
2017 | paper | example |
Seagull Optimization | SeagullOptimization |
2019 | paper | example |
Serval Optimization | ServalOptimization |
2022 | paper | example |
Siberian Tiger Optimization | SiberianTigerOptimization |
2022 | paper | example |
Sine Cosine Algorithm | SineCosineAlgorithmOptimization |
2016 | paper | example |
(Q-learning embedded) Sine Cosine Algorithm | QleSineCosineAlgorithmOptimization |
2016 | paper | example |
Spotted Hyena Optimization | SpottedHyenaOptimization |
2017 | paper | example |
Success History Intelligent Optimization | SuccessHistoryIntelligentOptimization |
2022 | paper | example |
Swarm Hill Climbing Optimization | SwarmHillClimbingOptimization |
1993 | paper | example |
Tasmanian Devil Optimization | TasmanianDevilOptimization |
2022 | paper | example |
Tuna Swarm Optimization | TunaSwarmOptimization |
2021 | paper | example |
Virus Colony Search Optimization | VirusColonySearchOptimization |
2016 | paper | example |
Walrus Optimization | WalrusOptimization |
2022 | paper | example |
War Strategy Optimization | WarStrategyOptimization |
2022 | paper | example |
Water Cycle Optimization | WaterCycleOptimization |
2012 | paper | example |
Whales Optimization | WhalesOptimization |
2016 | paper | example |
Wildebeest Herd Optimization | WildebeestHerdOptimization |
2019 | paper | example |
Wind Driven Optimization | WindDrivenOptimization |
2013 | paper | example |
Zebra Optimization | ZebraOptimization |
2022 | paper | example |
The following examples show how to use pyVolutionary to solve some practical problems.
Problem | Example |
---|---|
Employee Rostering Problem | example |
Healthcare Workflow Optimization Problem | example |
Job Shop Scheduling Problem | example |
Location Optimization Problem | example |
Maintenance Scheduling Problem | example |
Production Optimization Problem | example |
Shortest Path Problem | example |
Supply Chain Problem | example |