A simple and lightweight genetic algorithm for optimization of any machine learning model

Overview

geneticml

Actions Status PyPI License

This package contains a simple and lightweight genetic algorithm for optimization of any machine learning model.

Installation

Use pip to install the package from PyPI:

pip install geneticml

Usage

This package provides a easy way to create estimators and perform the optimization with genetic algorithms. The example below describe in details how to create a simulation with genetic algorithms using evolutionary approach to train a sklearn.neural_network.MLPClassifier. A full list of examples could be found here.

from geneticml.optimizers import GeneticOptimizer
from geneticml.strategy import EvolutionaryStrategy
from geneticml.algorithms import EstimatorBuilder
from metrics import metric_accuracy
from sklearn.neural_network import MLPClassifier
from sklearn.datasets import load_iris

# Creates a custom fit method
def fit(model, x, y):
    return model.fit(x, y)

# Creates a custom predict method
def predict(model, x):
    return model.predict(x)

if __name__ == "__main__":

    seed = 11412

    # Creates an estimator
    estimator = EstimatorBuilder()\
        .of(model_type=MLPClassifier)\
        .fit_with(func=fit)\
        .predict_with(func=predict)\
        .build()

    # Defines a strategy for the optimization
    strategy = EvolutionaryStrategy(
        estimator_type=estimator,
        parameters=parameters,
        retain=0.4,
        random_select=0.1,
        mutate_chance=0.2,
        max_children=2,
        random_state=seed
    )

    # Creates the optimizer
    optimizer = GeneticOptimizer(strategy=strategy)

    # Loads the data
    data = load_iris()

    # Defines the metric
    metric = metric_accuracy
    greater_is_better = True

    # Create the simulation using the optimizer and the strategy
    models = optimizer.simulate(
        data=data.data, 
        target=data.target,
        generations=generations,
        population=population,
        evaluation_function=metric,
        greater_is_better=greater_is_better,
        verbose=True
    )

The estimator is the way you define an algorithm or a class that will be used for model instantiation

estimator = EstimatorBuilder().of(model_type=MLPClassifier).fit_with(func=fit).predict_with(func=predict).build()

You need to speficy a custom fit and predict functions. These functions need to use the same signature than the below ones. This happens because the algorithm is generic and needs to know how to perform the fit and predict functions for the models.

# Creates a custom fit method
def fit(model, x, y):
    return model.fit(x, y)

# Creates a custom predict method
def predict(model, x):
    return model.predict(x)

Custom strategy

You can create custom strategies for the optimizers by extending the geneticml.strategy.BaseStrategy and implementing the execute(...) function.

class MyCustomStrategy(BaseStrategy):
    def __init__(self, estimator_type: Type[BaseEstimator]) -> None:
        super().__init__(estimator_type)

    def execute(self, population: List[Type[T]]) -> List[T]:
        return population

The custom strategies will allow you to create optimization strategies to archive your goals. We currently have the evolutionary strategy but you can define your own :)

Custom optimizer

You can create custom optimizers by extending the geneticml.optimizers.BaseOptimizer and implementing the simulate(...) function.

class MyCustomOptimizer(BaseOptimizer):
    def __init__(self, strategy: Type[BaseStrategy]) -> None:
        super().__init__(strategy)

    def simulate(self, data, target, verbose: bool = True) -> List[T]:
        """
        Generate a network with the genetic algorithm.

        Parameters:
            data (?): The data used to train the algorithm
            target (?): The targets used to train the algorithm
            verbose (bool): True if should verbose or False if not

        Returns:
            (List[BaseEstimator]): A list with the final population sorted by their loss
        """
        estimators = self._strategy.create_population()
        for x in estimators:
            x.fit(data, target)
            y_pred = x.predict(target)
        pass 

Custom optimizers will let you define how you want your algorithm to optimize the selected strategy. You can also combine custom strategies and optimizers to archive your desire objective.

Testing

The following are the steps to create a virtual environment into a folder named "venv" and install the requirements.

# Create virtualenv
python3 -m venv venv
# activate virtualenv
source venv/bin/activate
# update packages
pip install --upgrade pip setuptools wheel
# install requirements
python setup.py install

Tests can be run with python setup.py test when the virtualenv is active.

Contributing

All contributions, bug reports, bug fixes, documentation improvements, enhancements, and ideas are welcome.

A detailed overview on how to contribute can be found in the contributing guide. There is also an overview on GitHub.

If you are simply looking to start working with the geneticml codebase, navigate to the GitHub "issues" tab and start looking through interesting issues. Or maybe through using geneticml you have an idea of your own or are looking for something in the documentation and thinking ‘this can be improved’...you can do something about it!

Feel free to ask questions on the mailing the contributors.

Changelog

1.0.3 - Included pytorch example

1.0.2 - Minor fixes on naming

1.0.1 - README fixes

1.0.0 - First release

You might also like...
Python Extreme Learning Machine (ELM) is a machine learning technique used for classification/regression tasks.

Python Extreme Learning Machine (ELM) Python Extreme Learning Machine (ELM) is a machine learning technique used for classification/regression tasks.

Vowpal Wabbit is a machine learning system which pushes the frontier of machine learning with techniques
Vowpal Wabbit is a machine learning system which pushes the frontier of machine learning with techniques

Vowpal Wabbit is a machine learning system which pushes the frontier of machine learning with techniques such as online, hashing, allreduce, reductions, learning2search, active, and interactive learning.

CD) in machine learning projectsImplementing continuous integration & delivery (CI/CD) in machine learning projects

CML with cloud compute This repository contains a sample project using CML with Terraform (via the cml-runner function) to launch an AWS EC2 instance

High performance, easy-to-use, and scalable machine learning (ML) package, including linear model (LR), factorization machines (FM), and field-aware factorization machines (FFM) for Python and CLI interface.
High performance, easy-to-use, and scalable machine learning (ML) package, including linear model (LR), factorization machines (FM), and field-aware factorization machines (FFM) for Python and CLI interface.

What is xLearn? xLearn is a high performance, easy-to-use, and scalable machine learning package that contains linear model (LR), factorization machin

Model Validation Toolkit is a collection of tools to assist with validating machine learning models prior to deploying them to production and monitoring them after deployment to production.

Model Validation Toolkit is a collection of tools to assist with validating machine learning models prior to deploying them to production and monitoring them after deployment to production.

Iris-Heroku - Putting a Machine Learning Model into Production with Flask and Heroku
Iris-Heroku - Putting a Machine Learning Model into Production with Flask and Heroku

Puesta en Producción de un modelo de aprendizaje automático con Flask y Heroku L

DeepSpeed is a deep learning optimization library that makes distributed training easy, efficient, and effective.

DeepSpeed is a deep learning optimization library that makes distributed training easy, efficient, and effective. 10x Larger Models 10x Faster Trainin

Machine Learning Model to predict the payment date of an invoice when it gets created in the system.

Payment-Date-Prediction Machine Learning Model to predict the payment date of an invoice when it gets created in the system.

Python package for machine learning for healthcare using a OMOP common data model

This library was developed in order to facilitate rapid prototyping in Python of predictive machine-learning models using longitudinal medical data from an OMOP CDM-standard database.

Comments
  • feature/data_sampling

    feature/data_sampling

    We added support to run your own data sampling (e.g., imblearn.SMOTE) and use the genetic algorithms to find the best set parameters for them. Also, you can find the best set of parameters for your machine learning model at same time that find the best minority class size that maximizes the model score

    opened by albarsil 0
Releases(1.0.8)
Owner
Allan Barcelos
Allan Barcelos
Classification based on Fuzzy Logic(C-Means).

CMeans_fuzzy Classification based on Fuzzy Logic(C-Means). Table of Contents About The Project Fuzzy CMeans Algorithm Built With Getting Started Insta

Armin Zolfaghari Daryani 3 Feb 08, 2022
Estudos e projetos feitos com PySpark.

PySpark (Spark com Python) PySpark é uma biblioteca Spark escrita em Python, e seu objetivo é permitir a análise interativa dos dados em um ambiente d

Karinne Cristina 54 Nov 06, 2022
Machine Learning Techniques using python.

👋 Hi, I’m Fahad from TEXAS TECH. 👀 I’m interested in Optimization / Machine Learning/ Statistics 🌱 I’m currently learning Machine Learning and Stat

FAHAD MOSTAFA 1 Jan 19, 2022
Datetimes for Humans™

Maya: Datetimes for Humans™ Datetimes are very frustrating to work with in Python, especially when dealing with different locales on different systems

Timo Furrer 3.4k Dec 28, 2022
Forecasting prices using Facebook/Meta's Prophet model

CryptoForecasting using Machine and Deep learning (Part 1) CryptoForecasting using Machine Learning The main aspect of predicting the stock-related da

1 Nov 27, 2021
AutoOED: Automated Optimal Experiment Design Platform

AutoOED is an optimal experiment design platform powered with automated machine learning to accelerate the discovery of optimal solutions. Our platform solves multi-objective optimization problems an

Yunsheng Tian 107 Jan 03, 2023
A framework for building (and incrementally growing) graph-based data structures used in hierarchical or DAG-structured clustering and nearest neighbor search

A framework for building (and incrementally growing) graph-based data structures used in hierarchical or DAG-structured clustering and nearest neighbor search

Nicholas Monath 31 Nov 03, 2022
CVXPY is a Python-embedded modeling language for convex optimization problems.

CVXPY The CVXPY documentation is at cvxpy.org. We are building a CVXPY community on Discord. Join the conversation! For issues and long-form discussio

4.3k Jan 08, 2023
We have a dataset of user performances. The project is to develop a machine learning model that will predict the salaries of baseball players.

Salary-Prediction-with-Machine-Learning 1. Business Problem Can a machine learning project be implemented to estimate the salaries of baseball players

Ayşe Nur Türkaslan 9 Oct 14, 2022
CyLP is a Python interface to COIN-OR’s Linear and mixed-integer program solvers (CLP, CBC, and CGL)

CyLP CyLP is a Python interface to COIN-OR’s Linear and mixed-integer program solvers (CLP, CBC, and CGL). CyLP’s unique feature is that you can use i

COIN-OR Foundation 161 Dec 14, 2022
Laporan Proyek Machine Learning - Azhar Rizki Zulma

Laporan Proyek Machine Learning - Azhar Rizki Zulma Project Overview Domain proyek yang dipilih dalam proyek machine learning ini adalah mengenai hibu

Azhar Rizki Zulma 6 Mar 12, 2022
Client - 🔥 A tool for visualizing and tracking your machine learning experiments

Weights and Biases Use W&B to build better models faster. Track and visualize all the pieces of your machine learning pipeline, from datasets to produ

Weights & Biases 5.2k Jan 03, 2023
A library of sklearn compatible categorical variable encoders

Categorical Encoding Methods A set of scikit-learn-style transformers for encoding categorical variables into numeric by means of different techniques

2.1k Jan 07, 2023
pure-predict: Machine learning prediction in pure Python

pure-predict speeds up and slims down machine learning prediction applications. It is a foundational tool for serverless inference or small batch prediction with popular machine learning frameworks l

Ibotta 84 Dec 29, 2022
Bayesian Modeling and Computation in Python

Bayesian Modeling and Computation in Python Open access and Code This repository contains the open access version of the text and the code examples in

Bayesian Modeling and Computation in Python 339 Jan 02, 2023
jaxfg - Factor graph-based nonlinear optimization library for JAX.

Factor graphs + nonlinear optimization in JAX

Brent Yi 134 Dec 21, 2022
Case studies with Bayesian methods

Case studies with Bayesian methods

Baze Petrushev 8 Nov 26, 2022
A simple machine learning package to cluster keywords in higher-level groups.

Simple Keyword Clusterer A simple machine learning package to cluster keywords in higher-level groups. Example: "Senior Frontend Engineer" -- "Fronte

Andrea D'Agostino 10 Dec 18, 2022
Simple structured learning framework for python

PyStruct PyStruct aims at being an easy-to-use structured learning and prediction library. Currently it implements only max-margin methods and a perce

pystruct 666 Jan 03, 2023
Fit interpretable models. Explain blackbox machine learning.

InterpretML - Alpha Release In the beginning machines learned in darkness, and data scientists struggled in the void to explain them. Let there be lig

InterpretML 5.2k Jan 09, 2023