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

Overview

geneticml

Actions Status CodeQL 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...
A very simple tool for situations where optimization with onnx-simplifier would exceed the Protocol Buffers upper file size limit of 2GB, or simply to separate onnx files to any size you want.
A very simple tool for situations where optimization with onnx-simplifier would exceed the Protocol Buffers upper file size limit of 2GB, or simply to separate onnx files to any size you want.

sne4onnx A very simple tool for situations where optimization with onnx-simplifier would exceed the Protocol Buffers upper file size limit of 2GB, or

library for nonlinear optimization, wrapping many algorithms for global and local, constrained or unconstrained, optimization

NLopt is a library for nonlinear local and global optimization, for functions with and without gradient information. It is designed as a simple, unifi

A Lightweight Hyperparameter Optimization Tool 🚀
A Lightweight Hyperparameter Optimization Tool 🚀

Lightweight Hyperparameter Optimization 🚀 The mle-hyperopt package provides a simple and intuitive API for hyperparameter optimization of your Machin

A Genetic Programming platform for Python with TensorFlow for wicked-fast CPU and GPU support.

Karoo GP Karoo GP is an evolutionary algorithm, a genetic programming application suite written in Python which supports both symbolic regression and

Simulate genealogical trees and genomic sequence data using population genetic models

msprime msprime is a population genetics simulator based on tskit. Msprime can simulate random ancestral histories for a sample of individuals (consis

MBPO (paper: When to trust your model: Model-based policy optimization) in offline RL settings

offline-MBPO This repository contains the code of a version of model-based RL algorithm MBPO, which is modified to perform in offline RL settings Pape

RoMA: Robust Model Adaptation for Offline Model-based Optimization

RoMA: Robust Model Adaptation for Offline Model-based Optimization Implementation of RoMA: Robust Model Adaptation for Offline Model-based Optimizatio

Ever felt tired after preprocessing the dataset, and not wanting to write any code further to train your model? Ever encountered a situation where you wanted to record the hyperparameters of the trained model and able to retrieve it afterward? Models Playground is here to help you do that. Models playground allows you to train your models right from the browser.
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
Lead Data Scientist, Conference Speaker, Startup Mentor and AI Consultant
Allan Barcelos
Code for "Universal inference meets random projections: a scalable test for log-concavity"

How to use this repository This repository contains code to replicate the results of "Universal inference meets random projections: a scalable test fo

Robin Dunn 0 Nov 21, 2021
Laplace Redux -- Effortless Bayesian Deep Learning

Laplace Redux - Effortless Bayesian Deep Learning This repository contains the code to run the experiments for the paper Laplace Redux - Effortless Ba

Runa Eschenhagen 28 Dec 07, 2022
This is the implementation of "SELF SUPERVISED REPRESENTATION LEARNING WITH DEEP CLUSTERING FOR ACOUSTIC UNIT DISCOVERY FROM RAW SPEECH" submitted to ICASSP 2022

CPC_DeepCluster This is the implementation of "SELF SUPERVISED REPRESENTATION LEARNING WITH DEEP CLUSTERING FOR ACOUSTIC UNIT DISCOVERY FROM RAW SPEEC

LEAP Lab 2 Sep 15, 2022
DeepHyper: Scalable Asynchronous Neural Architecture and Hyperparameter Search for Deep Neural Networks

What is DeepHyper? DeepHyper is a software package that uses learning, optimization, and parallel computing to automate the design and development of

DeepHyper Team 214 Jan 08, 2023
Adds timm pretrained backbone to pytorch's FasterRcnn model

Operating Systems Lab (ETCS-352) Experiments for Operating Systems Lab (ETCS-352) performed by me in 2021 at uni. All codes are written by me except t

Mriganka Nath 12 Dec 03, 2022
Pre-trained NFNets with 99% of the accuracy of the official paper

NFNet Pytorch Implementation This repo contains pretrained NFNet models F0-F6 with high ImageNet accuracy from the paper High-Performance Large-Scale

Benjamin Schmidt 133 Dec 09, 2022
Cluster-GCN: An Efficient Algorithm for Training Deep and Large Graph Convolutional Networks

Cluster-GCN: An Efficient Algorithm for Training Deep and Large Graph Convolutional Networks This repository contains a TensorFlow implementation of "

Jingwei Zheng 5 Jan 08, 2023
Continuous Conditional Random Field Convolution for Point Cloud Segmentation

CRFConv This repository is the implementation of "Continuous Conditional Random Field Convolution for Point Cloud Segmentation" 1. Setup 1) Building c

Fei Yang 8 Dec 08, 2022
Self-Learning - Books Papers, Courses & more I have to learn soon

Self-Learning This repository is intended to be used for personal use, all rights reserved to respective owners, please cite original authors and ask

Achint Chaudhary 968 Jan 02, 2022
The Balloon Learning Environment - flying stratospheric balloons with deep reinforcement learning.

Balloon Learning Environment Docs The Balloon Learning Environment (BLE) is a simulator for stratospheric balloons. It is designed as a benchmark envi

Google 87 Dec 25, 2022
Awesome Human Pose Estimation

Human Pose Estimation Related Publication

Zhe Wang 1.2k Dec 26, 2022
Captcha-tensorflow - Image Captcha Solving Using TensorFlow and CNN Model. Accuracy 90%+

Captcha Solving Using TensorFlow Introduction Solve captcha using TensorFlow. Learn CNN and TensorFlow by a practical project. Follow the steps, run t

Jackon Yang 869 Jan 06, 2023
Training PSPNet in Tensorflow. Reproduce the performance from the paper.

Training Reproduce of PSPNet. (Updated 2021/04/09. Authors of PSPNet have provided a Pytorch implementation for PSPNet and their new work with support

Li Xuhong 126 Jul 13, 2022
torchsummaryDynamic: support real FLOPs calculation of dynamic network or user-custom PyTorch ops

torchsummaryDynamic Improved tool of torchsummaryX. torchsummaryDynamic support real FLOPs calculation of dynamic network or user-custom PyTorch ops.

Bohong Chen 1 Jan 07, 2022
Codebase for "ProtoAttend: Attention-Based Prototypical Learning."

Codebase for "ProtoAttend: Attention-Based Prototypical Learning." Authors: Sercan O. Arik and Tomas Pfister Paper: Sercan O. Arik and Tomas Pfister,

47 2 May 17, 2022
Precomputed Real-Time Texture Synthesis with Markovian Generative Adversarial Networks

MGANs Training & Testing code (torch), pre-trained models and supplementary materials for "Precomputed Real-Time Texture Synthesis with Markovian Gene

290 Nov 15, 2022
A python-image-classification web application project, written in Python and served through the Flask Microframework

A python-image-classification web application project, written in Python and served through the Flask Microframework. This Project implements the VGG16 covolutional neural network, through Keras and

Gerald Maduabuchi 19 Dec 12, 2022
Rafael Project- Classifying rockets to different types using data science algorithms.

Rocket-Classify Rafael Project- Classifying rockets to different types using data science algorithms. In this project we received data base with data

Hadassah Engel 5 Sep 18, 2021
This repo provides a demo for the CVPR 2021 paper "A Fourier-based Framework for Domain Generalization" on the PACS dataset.

FACT This repo provides a demo for the CVPR 2021 paper "A Fourier-based Framework for Domain Generalization" on the PACS dataset. To cite, please use:

105 Dec 17, 2022
Unofficial Implementation of MLP-Mixer, Image Classification Model

MLP-Mixer Unoffical Implementation of MLP-Mixer, easy to use with terminal. Train and test easly. https://arxiv.org/abs/2105.01601 MLP-Mixer is an arc

Oğuzhan Ercan 6 Dec 05, 2022