MCP HubMCP Hub
Retour aux compétences

pymoo

K-Dense-AI
Mis à jour Today
26,534
2,743
26,534
Voir sur GitHub
Designaidesign

À propos

La compétence pymoo permet l'optimisation multi-objectif en Python en utilisant des algorithmes tels que NSGA-II et MOEA/D pour trouver des solutions Pareto-optimales pour des problèmes de conception technique avec des objectifs conflictuels. Elle offre la gestion de contraintes, des problèmes de référence (ZDT, DTLZ) et des opérateurs génétiques personnalisables. Utilisez cette compétence lorsque vous devez résoudre des problèmes d'optimisation nécessitant une analyse de compromis entre plusieurs objectifs concurrents.

Installation rapide

Claude Code

Recommandé
Principal
npx skills add K-Dense-AI/claude-scientific-skills -a claude-code
Commande PluginAlternatif
/plugin add https://github.com/K-Dense-AI/claude-scientific-skills
Git CloneAlternatif
git clone https://github.com/K-Dense-AI/claude-scientific-skills.git ~/.claude/skills/pymoo

Copiez et collez cette commande dans Claude Code pour installer cette compétence

Documentation

Pymoo - Multi-Objective Optimization in Python

Overview

Pymoo is a comprehensive Python framework for optimization with emphasis on multi-objective problems. Solve single and multi-objective optimization using state-of-the-art algorithms (NSGA-II/III, MOEA/D, SPEA2), benchmark problems (ZDT, DTLZ), customizable genetic operators, and multi-criteria decision making methods. Excels at finding trade-off solutions (Pareto fronts) for problems with conflicting objectives. Current stable release: pymoo 0.6.1.6 (November 2025).

Installation

uv pip install pymoo

For reproducible environments, pin a version: uv pip install "pymoo==0.6.1.6".

Dependencies: NumPy (2.x compatible since 0.6.1.3), SciPy, matplotlib (visualization). Autograd is optional for gradient-based features (since 0.6.1.3).

Documentation: https://pymoo.org/ — LLM-friendly index: https://pymoo.org/llms.txt

When to Use This Skill

This skill should be used when:

  • Solving optimization problems with one or multiple objectives
  • Finding Pareto-optimal solutions and analyzing trade-offs
  • Implementing evolutionary algorithms (GA, DE, PSO, NSGA-II/III)
  • Working with constrained optimization problems
  • Benchmarking algorithms on standard test problems (ZDT, DTLZ, WFG)
  • Customizing genetic operators (crossover, mutation, selection)
  • Visualizing high-dimensional optimization results
  • Making decisions from multiple competing solutions
  • Handling binary, discrete, continuous, or mixed-variable problems

Core Concepts

The Unified Interface

Pymoo uses a consistent minimize() function for all optimization tasks:

from pymoo.optimize import minimize

result = minimize(
    problem,        # What to optimize
    algorithm,      # How to optimize
    termination,    # When to stop
    seed=1,
    verbose=True
)

Result object contains:

  • result.X: Decision variables of optimal solution(s)
  • result.F: Objective values of optimal solution(s)
  • result.G: Constraint violations (if constrained)
  • result.algorithm: Algorithm object with history

Problem Definition Styles

Pymoo supports three problem definition styles:

  • Problem: Vectorized — _evaluate receives a batch of solutions (matrix)
  • ElementwiseProblem: One solution per call — recommended for custom problems and parallel evaluation
  • FunctionalProblem: Define objectives and constraints as separate functions without subclassing

Problem Types

Single-objective: One objective to minimize/maximize Multi-objective: 2-3 conflicting objectives → Pareto front Many-objective: 4+ objectives → High-dimensional Pareto front Constrained: Objectives + inequality/equality constraints Mixed-variable: Continuous, integer, binary, and categorical variables in one problem Dynamic: Time-varying objectives or constraints

Quick Start Workflows

Workflow 1: Single-Objective Optimization

When: Optimizing one objective function

Steps:

  1. Define or select problem
  2. Choose single-objective algorithm (GA, DE, PSO, CMA-ES)
  3. Configure termination criteria
  4. Run optimization
  5. Extract best solution

Example:

from pymoo.algorithms.soo.nonconvex.ga import GA
from pymoo.problems import get_problem
from pymoo.optimize import minimize

# Built-in problem
problem = get_problem("rastrigin", n_var=10)

# Configure Genetic Algorithm
algorithm = GA(
    pop_size=100,
    eliminate_duplicates=True
)

# Optimize
result = minimize(
    problem,
    algorithm,
    ('n_gen', 200),
    seed=1,
    verbose=True
)

print(f"Best solution: {result.X}")
print(f"Best objective: {result.F[0]}")

See: scripts/single_objective_example.py for complete example

Workflow 2: Multi-Objective Optimization (2-3 objectives)

When: Optimizing 2-3 conflicting objectives, need Pareto front

Algorithm choice: NSGA-II (standard for bi/tri-objective)

Steps:

  1. Define multi-objective problem
  2. Configure NSGA-II
  3. Run optimization to obtain Pareto front
  4. Visualize trade-offs
  5. Apply decision making (optional)

Example:

from pymoo.algorithms.moo.nsga2 import NSGA2
from pymoo.problems import get_problem
from pymoo.optimize import minimize
from pymoo.visualization.scatter import Scatter

# Bi-objective benchmark problem
problem = get_problem("zdt1")

# NSGA-II algorithm
algorithm = NSGA2(pop_size=100)

# Optimize
result = minimize(problem, algorithm, ('n_gen', 200), seed=1)

# Visualize Pareto front
plot = Scatter()
plot.add(result.F, label="Obtained Front")
plot.add(problem.pareto_front(), label="True Front", alpha=0.3)
plot.show()

print(f"Found {len(result.F)} Pareto-optimal solutions")

See: scripts/multi_objective_example.py for complete example

Workflow 3: Many-Objective Optimization (4+ objectives)

When: Optimizing 4 or more objectives

Algorithm choice: NSGA-III (designed for many objectives)

Key difference: Must provide reference directions for population guidance

Steps:

  1. Define many-objective problem
  2. Generate reference directions
  3. Configure NSGA-III with reference directions
  4. Run optimization
  5. Visualize using Parallel Coordinate Plot

Example:

from pymoo.algorithms.moo.nsga3 import NSGA3
from pymoo.problems import get_problem
from pymoo.optimize import minimize
from pymoo.util.ref_dirs import get_reference_directions
from pymoo.visualization.pcp import PCP

# Many-objective problem (5 objectives)
problem = get_problem("dtlz2", n_obj=5)

# Generate reference directions (required for NSGA-III)
ref_dirs = get_reference_directions("das-dennis", n_obj=5, n_partitions=12)

# Configure NSGA-III
algorithm = NSGA3(ref_dirs=ref_dirs)

# Optimize
result = minimize(problem, algorithm, ('n_gen', 300), seed=1)

# Visualize with Parallel Coordinates
plot = PCP(labels=[f"f{i+1}" for i in range(5)])
plot.add(result.F, alpha=0.3)
plot.show()

See: scripts/many_objective_example.py for complete example

Workflow 4: Custom Problem Definition

When: Solving domain-specific optimization problem

Steps:

  1. Extend ElementwiseProblem class
  2. Define __init__ with problem dimensions and bounds
  3. Implement _evaluate method for objectives (and constraints)
  4. Use with any algorithm

Unconstrained example:

from pymoo.core.problem import ElementwiseProblem
import numpy as np

class MyProblem(ElementwiseProblem):
    def __init__(self):
        super().__init__(
            n_var=2,              # Number of variables
            n_obj=2,              # Number of objectives
            xl=np.array([0, 0]),  # Lower bounds
            xu=np.array([5, 5])   # Upper bounds
        )

    def _evaluate(self, x, out, *args, **kwargs):
        # Define objectives
        f1 = x[0]**2 + x[1]**2
        f2 = (x[0]-1)**2 + (x[1]-1)**2

        out["F"] = [f1, f2]

Constrained example:

class ConstrainedProblem(ElementwiseProblem):
    def __init__(self):
        super().__init__(
            n_var=2,
            n_obj=2,
            n_ieq_constr=2,        # Inequality constraints
            n_eq_constr=1,         # Equality constraints
            xl=np.array([0, 0]),
            xu=np.array([5, 5])
        )

    def _evaluate(self, x, out, *args, **kwargs):
        # Objectives
        out["F"] = [f1, f2]

        # Inequality constraints (g <= 0)
        out["G"] = [g1, g2]

        # Equality constraints (h = 0)
        out["H"] = [h1]

Constraint formulation rules:

  • Inequality: Express as g(x) <= 0 (feasible when ≤ 0)
  • Equality: Express as h(x) = 0 (feasible when = 0)
  • Convert g(x) >= b to -(g(x) - b) <= 0

See: scripts/custom_problem_example.py for complete examples

Workflow 5: Constraint Handling

When: Problem has feasibility constraints

Approach options:

1. Feasibility First (Default - Recommended)

from pymoo.algorithms.moo.nsga2 import NSGA2

# Works automatically with constrained problems
algorithm = NSGA2(pop_size=100)
result = minimize(problem, algorithm, termination)

# Check feasibility
feasible = result.CV[:, 0] == 0  # CV = constraint violation
print(f"Feasible solutions: {np.sum(feasible)}")

2. Penalty Method

from pymoo.constraints.as_penalty import ConstraintsAsPenalty

# Wrap problem to convert constraints to penalties
problem_penalized = ConstraintsAsPenalty(problem, penalty=1e6)

3. Constraint as Objective

from pymoo.constraints.as_obj import ConstraintsAsObjective

# Treat constraint violation as additional objective
problem_with_cv = ConstraintsAsObjective(problem)

4. Specialized Algorithms

from pymoo.algorithms.soo.nonconvex.sres import SRES

# SRES has built-in constraint handling
algorithm = SRES()

See: references/constraints_mcdm.md for comprehensive constraint handling guide

Workflow 6: Decision Making from Pareto Front

When: Have Pareto front, need to select preferred solution(s)

Steps:

  1. Run multi-objective optimization
  2. Normalize objectives to [0, 1]
  3. Define preference weights
  4. Apply MCDM method
  5. Visualize selected solution

Example using Pseudo-Weights:

from pymoo.mcdm.pseudo_weights import PseudoWeights
import numpy as np

# After obtaining result from multi-objective optimization
# Normalize objectives
F_norm = (result.F - result.F.min(axis=0)) / (result.F.max(axis=0) - result.F.min(axis=0))

# Define preferences (must sum to 1)
weights = np.array([0.3, 0.7])  # 30% f1, 70% f2

# Apply decision making
dm = PseudoWeights(weights)
selected_idx = dm.do(F_norm)

# Get selected solution
best_solution = result.X[selected_idx]
best_objectives = result.F[selected_idx]

print(f"Selected solution: {best_solution}")
print(f"Objective values: {best_objectives}")

Other MCDM methods:

  • Compromise Programming: Select closest to ideal point
  • Knee Point: Find balanced trade-off solutions
  • Hypervolume Contribution: Select most diverse subset

See:

  • scripts/decision_making_example.py for complete example
  • references/constraints_mcdm.md for detailed MCDM methods

Workflow 7: Visualization

Choose visualization based on number of objectives:

2 objectives: Scatter Plot

from pymoo.visualization.scatter import Scatter

plot = Scatter(title="Bi-objective Results")
plot.add(result.F, color="blue", alpha=0.7)
plot.show()

3 objectives: 3D Scatter

plot = Scatter(title="Tri-objective Results")
plot.add(result.F)  # Automatically renders in 3D
plot.show()

4+ objectives: Parallel Coordinate Plot

from pymoo.visualization.pcp import PCP

plot = PCP(
    labels=[f"f{i+1}" for i in range(n_obj)],
    normalize_each_axis=True
)
plot.add(result.F, alpha=0.3)
plot.show()

Solution comparison: Petal Diagram

from pymoo.visualization.petal import Petal

plot = Petal(
    bounds=[result.F.min(axis=0), result.F.max(axis=0)],
    labels=["Cost", "Weight", "Efficiency"]
)
plot.add(solution_A, label="Design A")
plot.add(solution_B, label="Design B")
plot.show()

See: references/visualization.md for all visualization types and usage

Workflow 8: Parallel Evaluation

When: Each _evaluate call is expensive (simulations, ML models, external solvers)

Approach: Pass an elementwise_runner to ElementwiseProblem using StarmapParallelization or JoblibParallelization.

Example (thread pool):

from multiprocessing.pool import ThreadPool
from pymoo.algorithms.soo.nonconvex.ga import GA
from pymoo.core.problem import ElementwiseProblem
from pymoo.optimize import minimize
from pymoo.parallelization.starmap import StarmapParallelization

class MyProblem(ElementwiseProblem):
    def __init__(self, elementwise_runner=None, **kwargs):
        super().__init__(
            n_var=10, n_obj=1, xl=-5, xu=5,
            elementwise_runner=elementwise_runner, **kwargs,
        )

    def _evaluate(self, x, out, *args, **kwargs):
        out["F"] = (x ** 2).sum()  # Replace with expensive evaluation

pool = ThreadPool(4)
runner = StarmapParallelization(pool.starmap)
problem = MyProblem(elementwise_runner=runner)

result = minimize(problem, GA(), ("n_gen", 50), seed=1)
pool.close()

See: references/parallelization.md for process pools, joblib, and pickling notes

Workflow 9: Mixed-Variable Optimization

When: Decision variables include continuous, integer, binary, and/or categorical types

Approach: Define a vars dict with typed variables; use MixedVariableGA (SOO) or add MOO survival.

Example:

from pymoo.core.problem import ElementwiseProblem
from pymoo.core.variable import Real, Integer, Choice, Binary
from pymoo.core.mixed import MixedVariableGA
from pymoo.optimize import minimize

class MixedProblem(ElementwiseProblem):
    def __init__(self, **kwargs):
        vars = {
            "b": Binary(),
            "x": Choice(options=["nothing", "multiply"]),
            "y": Integer(bounds=(0, 2)),
            "z": Real(bounds=(0, 5)),
        }
        super().__init__(vars=vars, n_obj=1, **kwargs)

    def _evaluate(self, X, out, *args, **kwargs):
        b, x, z, y = X["b"], X["x"], X["z"], X["y"]
        f = z + y
        if b:
            f = 100 * f
        if x == "multiply":
            f = 10 * f
        out["F"] = f

algorithm = MixedVariableGA(pop_size=20)
result = minimize(MixedProblem(), algorithm, ("n_evals", 1000), seed=1)

For multi-objective mixed-variable problems, use MixedVariableGA(pop_size=20, survival=RankAndCrowdingSurvival()). For single-objective mixed search, pymoo also wraps Optuna via pymoo.algorithms.soo.nonconvex.optuna.Optuna.

See: references/algorithms.md for MixedVariableGA and Optuna details

Algorithm Selection Guide

Single-Objective Problems

AlgorithmBest ForKey Features
GAGeneral-purposeFlexible, customizable operators
DEContinuous optimizationGood global search
PSOSmooth landscapesFast convergence
CMA-ESDifficult/noisy problemsSelf-adapting

Multi-Objective Problems (2-3 objectives)

AlgorithmBest ForKey Features
NSGA-IIStandard benchmarkFast, reliable, well-tested
SPEA2Archive-based MOOStrength-based fitness, external archive
R-NSGA-IIPreference regionsReference point guidance
MOEA/DDecomposable problemsScalarization approach

Many-Objective Problems (4+ objectives)

AlgorithmBest ForKey Features
NSGA-III4-15 objectivesReference direction-based
RVEAAdaptive searchReference vector evolution
AGE-MOEAComplex landscapesAdaptive geometry

Constrained Problems

ApproachAlgorithmWhen to Use
Feasibility-firstAny algorithmLarge feasible region
SpecializedSRES, ISRESHeavy constraints
PenaltyGA + penaltyAlgorithm compatibility

See: references/algorithms.md for comprehensive algorithm reference

Benchmark Problems

Quick problem access:

from pymoo.problems import get_problem

# Single-objective
problem = get_problem("rastrigin", n_var=10)
problem = get_problem("rosenbrock", n_var=10)

# Multi-objective
problem = get_problem("zdt1")        # Convex front
problem = get_problem("zdt2")        # Non-convex front
problem = get_problem("zdt3")        # Disconnected front

# Many-objective
problem = get_problem("dtlz2", n_obj=5, n_var=12)
problem = get_problem("dtlz7", n_obj=4)

See: references/problems.md for complete test problem reference

Genetic Operator Customization

Standard operator configuration:

from pymoo.algorithms.soo.nonconvex.ga import GA
from pymoo.operators.crossover.sbx import SBX
from pymoo.operators.mutation.pm import PM

algorithm = GA(
    pop_size=100,
    crossover=SBX(prob=0.9, eta=15),
    mutation=PM(eta=20),
    eliminate_duplicates=True
)

Operator selection by variable type:

Continuous variables:

  • Crossover: SBX (Simulated Binary Crossover)
  • Mutation: PM (Polynomial Mutation)

Binary variables:

  • Crossover: TwoPointCrossover, UniformCrossover
  • Mutation: BitflipMutation

Permutations (TSP, scheduling):

  • Crossover: OrderCrossover (OX)
  • Mutation: InversionMutation

See: references/operators.md for comprehensive operator reference

Performance and Troubleshooting

Common issues and solutions:

Problem: Algorithm not converging

  • Increase population size
  • Increase number of generations
  • Check if problem is multimodal (try different algorithms)
  • Verify constraints are correctly formulated

Problem: Poor Pareto front distribution

  • For NSGA-III: Adjust reference directions
  • Increase population size
  • Check for duplicate elimination
  • Verify problem scaling

Problem: Few feasible solutions

  • Use constraint-as-objective approach
  • Apply repair operators
  • Try SRES/ISRES for constrained problems
  • Check constraint formulation (should be g <= 0)

Problem: High computational cost

  • Reduce population size
  • Decrease number of generations
  • Use simpler operators
  • Enable parallel evaluation via elementwise_runner (see Workflow 8)

Best practices:

  1. Normalize objectives when scales differ significantly
  2. Set random seed for reproducibility
  3. Save history to analyze convergence: save_history=True
  4. Visualize results to understand solution quality
  5. Compare with true Pareto front when available
  6. Use appropriate termination criteria (generations, evaluations, tolerance)
  7. Tune operator parameters for problem characteristics

Resources

This skill includes comprehensive reference documentation and executable examples:

references/

Detailed documentation for in-depth understanding:

  • algorithms.md: Complete algorithm reference with parameters, usage, and selection guidelines
  • problems.md: Benchmark test problems (ZDT, DTLZ, WFG) with characteristics
  • operators.md: Genetic operators (sampling, selection, crossover, mutation) with configuration
  • visualization.md: All visualization types with examples and selection guide
  • constraints_mcdm.md: Constraint handling techniques and multi-criteria decision making methods
  • parallelization.md: Parallel evaluation with StarmapParallelization and JoblibParallelization

Search patterns for references:

  • Algorithm details: grep -r "NSGA-II\|NSGA-III\|MOEA/D" references/
  • Constraint methods: grep -r "Feasibility First\|Penalty\|Repair" references/
  • Visualization types: grep -r "Scatter\|PCP\|Petal" references/

scripts/

Executable examples demonstrating common workflows:

  • single_objective_example.py: Basic single-objective optimization with GA
  • multi_objective_example.py: Multi-objective optimization with NSGA-II, visualization
  • many_objective_example.py: Many-objective optimization with NSGA-III, reference directions
  • custom_problem_example.py: Defining custom problems (constrained and unconstrained)
  • decision_making_example.py: Multi-criteria decision making with different preferences

Run examples:

python3 scripts/single_objective_example.py
python3 scripts/multi_objective_example.py
python3 scripts/many_objective_example.py
python3 scripts/custom_problem_example.py
python3 scripts/decision_making_example.py

Additional Notes

Common patterns:

  • Use ElementwiseProblem for custom problems (or FunctionalProblem for function-based definitions)
  • Use vars dict with typed variables for mixed-variable problems
  • Constraints formulated as g(x) <= 0 and h(x) = 0
  • Reference directions required for NSGA-III
  • Normalize objectives before MCDM
  • Use appropriate termination: ('n_gen', N) or get_termination("f_tol", tol=0.001)

Dépôt GitHub

K-Dense-AI/claude-scientific-skills
Chemin: skills/pymoo
0
agent-skillsai-scientistbioinformaticschemoinformaticsclaudeclaude-skills

Compétences associées

executing-plans

Design

Utilisez la compétence executing-plans lorsque vous disposez d'un plan de mise en œuvre complet à exécuter par lots contrôlés avec des points de contrôle de revue. Elle charge et examine le plan de manière critique, puis exécute les tâches par petits lots (3 tâches par défaut) tout en rapportant la progression entre chaque lot pour une revue par l'architecte. Cela garantit une mise en œuvre systématique avec des points de contrôle de qualité intégrés.

Voir la compétence

requesting-code-review

Design

Cette compétence délègue un sous-agent réviseur de code pour analyser les modifications apportées au code par rapport aux exigences avant de poursuivre. Elle doit être utilisée après avoir terminé des tâches, implémenté des fonctionnalités majeures, ou avant une fusion vers la branche principale. La revue aide à détecter précocement les problèmes en comparant l'implémentation actuelle avec le plan initial.

Voir la compétence

connect-mcp-server

Design

Cette compétence fournit un guide complet permettant aux développeurs de connecter des serveurs MCP à Claude Code via les transports HTTP, stdio ou SSE. Elle couvre l'installation, la configuration, l'authentification et la sécurité pour intégrer des services externes tels que GitHub, Notion et des API personnalisées. Utilisez-la lors de la configuration d'intégrations MCP, de la configuration d'outils externes ou du travail avec le Protocole de Contexte de Modèle de Claude.

Voir la compétence

web-cli-teleport

Design

Cette compétence aide les développeurs à choisir entre les interfaces Web et CLI de Claude Code en fonction de l'analyse des tâches, puis permet une téléportation transparente des sessions entre ces environnements. Elle optimise le flux de travail en gérant l'état et le contexte de la session lors du passage entre le web, la CLI ou le mobile. Utilisez-la pour des projets complexes nécessitant différents outils à diverses étapes.

Voir la compétence