Ecosyste.ms: Awesome
An open API service indexing awesome lists of open source software.
https://github.com/modAL-python/modAL
A modular active learning framework for Python
https://github.com/modAL-python/modAL
active-learning active-learning-module bayesian-optimization machine-learning machine-learning-algorithms machine-learning-api machine-learning-library python scikit-learn
Last synced: about 1 month ago
JSON representation
A modular active learning framework for Python
- Host: GitHub
- URL: https://github.com/modAL-python/modAL
- Owner: modAL-python
- License: mit
- Created: 2017-11-14T14:01:15.000Z (about 7 years ago)
- Default Branch: master
- Last Pushed: 2024-02-26T15:38:11.000Z (10 months ago)
- Last Synced: 2024-10-29T15:17:22.346Z (about 1 month ago)
- Topics: active-learning, active-learning-module, bayesian-optimization, machine-learning, machine-learning-algorithms, machine-learning-api, machine-learning-library, python, scikit-learn
- Language: Python
- Homepage: https://modAL-python.github.io/
- Size: 9.13 MB
- Stars: 2,215
- Watchers: 44
- Forks: 324
- Open Issues: 104
-
Metadata Files:
- Readme: README.md
- Contributing: CONTRIBUTING.md
- License: LICENSE
Awesome Lists containing this project
- awesome - modAL - A modular active learning framework for Python3 (Python)
- awesome-python-machine-learning - modAL - modAL is an active learning framework for Python3, designed with modularity, flexibility and extensibility in mind. (Uncategorized / Uncategorized)
- awesome-open-data-centric-ai - modAL - python/modAL?style=social) | <a href="https://github.com/modAL-python/modAL/blob/main/LICENSE"><img src="https://img.shields.io/github/license/modAL-python/modAL" height="15"/></a> | (Active learning)
- awesome-machine-learning-resources - **[Library - python/modAL?style=social) (Table of Contents)
- awesome-production-machine-learning - modAL - python/modAL.svg?style=social) - modAL is an active learning framework designed with modularity, flexibility and extensibility in mind. (Data Labelling and Synthesis)
- awesome-datascience - modAL
- awesome-active-learning - modAL - learn) | Tivadar Danka | Keep updating | (3.3 AL in AI Fields - 人工智能背景中的主动学习 / **Tutorials - 教程**)
- StarryDivineSky - modAL-python/modAL - learn,允许你快速创建主动学习工作流程,并提供几乎完全的自由度。此外,你可以轻松地用自定义解决方案替换部分组件,方便你轻松设计新算法。主动学习通过智能地查询你对信息量最大的实例进行标注,来提高分类性能。modAL 提供了一组工具来处理这类问题,它允许你将 scikit-learn 或 Keras 模型无缝集成到你的算法中,并轻松定制你的自定义查询策略和不确定性度量。 (其他_机器学习与深度学习)
README
Modular Active Learning framework for Python3
[![travis-ci-master](https://travis-ci.org/modAL-python/modAL.svg?branch=master)](https://travis-ci.org/modAL-python/modAL) [![codecov-master](https://codecov.io/gh/modAL-python/modAL/branch/master/graph/badge.svg)](https://codecov.io/gh/modAL-python/modAL) [![readthedocs](https://readthedocs.org/projects/modal-python/badge/?version=latest)](http://modal-python.readthedocs.io/en/latest/?badge=latest)
## Page contents
- [Introduction](#introduction)
- [Active learning from bird's-eye view](#active-learning)
- [modAL in action](#modAL-in-action)
- [From zero to one in a few lines of code](#initialization)
- [Replacing parts quickly](#replacing-parts)
- [Replacing parts with your own solutions](#replacing-parts-with-your-own-solutions)
- [An example with active regression](#active-regression)
- [Additional examples](#additional-examples)
- [Installation](#installation)
- [Documentation](#documentation)
- [Citing](#citing)
- [About the developer](#about-the-developer)# Introduction
modAL is an active learning framework for Python3, designed with *modularity, flexibility* and *extensibility* in mind. Built on top of scikit-learn, it allows you to rapidly create active learning workflows with nearly complete freedom. What is more, you can easily replace parts with your custom built solutions, allowing you to design novel algorithms with ease.# Active learning from bird's-eye view
With the recent explosion of available data, you have can have millions of unlabelled examples with a high cost to obtain labels. For instance, when trying to predict the sentiment of tweets, obtaining a training set can require immense manual labour. But worry not, active learning comes to the rescue! In general, AL is a framework allowing you to increase classification performance by intelligently querying you to label the most informative instances. To give an example, suppose that you have the following data and classifier with shaded regions signifying the classification probability.
Suppose that you can query the label of an unlabelled instance, but it costs you a lot. Which one would you choose? By querying an instance in the uncertain region, surely you obtain more information than querying by random. Active learning gives you a set of tools to handle problems like this. In general, an active learning workflow looks like the following.
The key components of any workflow are the **model** you choose, the **uncertainty** measure you use and the **query** strategy you apply to request labels. With modAL, instead of choosing from a small set of built-in components, you have the freedom to seamlessly integrate scikit-learn or Keras models into your algorithm and easily tailor your custom query strategies and uncertainty measures.
# modAL in action
Let's see what modAL can do for you!## From zero to one in a few lines of code
Active learning with a scikit-learn classifier, for instance RandomForestClassifier, can be as simple as the following.
```python
from modAL.models import ActiveLearner
from sklearn.ensemble import RandomForestClassifier# initializing the learner
learner = ActiveLearner(
estimator=RandomForestClassifier(),
X_training=X_training, y_training=y_training
)# query for labels
query_idx, query_inst = learner.query(X_pool)# ...obtaining new labels from the Oracle...
# supply label for queried instance
learner.teach(X_pool[query_idx], y_new)
```## Replacing parts quickly
If you would like to use different uncertainty measures and query strategies than the default uncertainty sampling, you can either replace them with several built-in strategies or you can design your own by following a few very simple design principles. For instance, replacing the default uncertainty measure to classification entropy looks the following.
```python
from modAL.models import ActiveLearner
from modAL.uncertainty import entropy_sampling
from sklearn.ensemble import RandomForestClassifierlearner = ActiveLearner(
estimator=RandomForestClassifier(),
query_strategy=entropy_sampling,
X_training=X_training, y_training=y_training
)
```## Replacing parts with your own solutions
modAL was designed to make it easy for you to implement your own query strategy. For example, implementing and using a simple random sampling strategy is as easy as the following.
```python
import numpy as npdef random_sampling(classifier, X_pool):
n_samples = len(X_pool)
query_idx = np.random.choice(range(n_samples))
return query_idx, X_pool[query_idx]learner = ActiveLearner(
estimator=RandomForestClassifier(),
query_strategy=random_sampling,
X_training=X_training, y_training=y_training
)
```
For more details on how to implement your custom strategies, visit the page [Extending modAL](https://modal-python.readthedocs.io/en/latest/content/overview/Extending-modAL.html)!## An example with active regression
To see modAL in *real* action, let's consider an active regression problem with Gaussian Processes! In this example, we shall try to learn the *noisy sine* function:
```python
import numpy as npX = np.random.choice(np.linspace(0, 20, 10000), size=200, replace=False).reshape(-1, 1)
y = np.sin(X) + np.random.normal(scale=0.3, size=X.shape)
```
For active learning, we shall define a custom query strategy tailored to Gaussian processes. In a nutshell, a *query stategy* in modAL is a function taking (at least) two arguments (an estimator object and a pool of examples), outputting the index of the queried instance. In our case, the arguments are ```regressor``` and ```X```.
```python
def GP_regression_std(regressor, X):
_, std = regressor.predict(X, return_std=True)
return np.argmax(std)
```
After setting up the query strategy and the data, the active learner can be initialized.
```python
from modAL.models import ActiveLearner
from sklearn.gaussian_process import GaussianProcessRegressor
from sklearn.gaussian_process.kernels import WhiteKernel, RBFn_initial = 5
initial_idx = np.random.choice(range(len(X)), size=n_initial, replace=False)
X_training, y_training = X[initial_idx], y[initial_idx]kernel = RBF(length_scale=1.0, length_scale_bounds=(1e-2, 1e3)) \
+ WhiteKernel(noise_level=1, noise_level_bounds=(1e-10, 1e+1))regressor = ActiveLearner(
estimator=GaussianProcessRegressor(kernel=kernel),
query_strategy=GP_regression_std,
X_training=X_training.reshape(-1, 1), y_training=y_training.reshape(-1, 1)
)
```
The initial regressor is not very accurate.
The blue band enveloping the regressor represents the standard deviation of the Gaussian process at the given point. Now we are ready to do active learning!
```python
# active learning
n_queries = 10
for idx in range(n_queries):
query_idx, query_instance = regressor.query(X)
regressor.teach(X[query_idx].reshape(1, -1), y[query_idx].reshape(1, -1))
```
After a few queries, we can see that the prediction is much improved.
## Additional examples
Including this, many examples are available:
- [Pool-based sampling](https://modal-python.readthedocs.io/en/latest/content/examples/pool-based_sampling.html)
- [Stream-based sampling](https://modal-python.readthedocs.io/en/latest/content/examples/stream-based_sampling.html)
- [Active regression](https://modal-python.readthedocs.io/en/latest/content/examples/active_regression.html)
- [Ensemble regression](https://modal-python.readthedocs.io/en/latest/content/examples/ensemble_regression.html)
- [Bayesian optimization](https://modal-python.readthedocs.io/en/latest/content/examples/bayesian_optimization.html)
- [Query by committee](https://modal-python.readthedocs.io/en/latest/content/examples/query_by_committee.html)
- [Bootstrapping and bagging](https://modal-python.readthedocs.io/en/latest/content/examples/bootstrapping_and_bagging.html)
- [Keras integration](https://modal-python.readthedocs.io/en/latest/content/examples/Keras_integration.html)# Installation
modAL requires
- Python >= 3.5
- NumPy >= 1.13
- SciPy >= 0.18
- scikit-learn >= 0.18You can install modAL directly with pip:
```
pip install modAL-python
```
Alternatively, you can install modAL directly from source:
```
pip install git+https://github.com/modAL-python/modAL.git
```# Documentation
You can find the documentation of modAL at [https://modAL-python.github.io](https://modAL-python.github.io), where several tutorials and working examples are available, along with a complete API reference. For running the examples, Matplotlib >= 2.0 is recommended.# Citing
If you use modAL in your projects, you can cite it as
```
@article{modAL2018,
title={mod{AL}: {A} modular active learning framework for {P}ython},
author={Tivadar Danka and Peter Horvath},
url={https://github.com/modAL-python/modAL},
note={available on arXiv at \url{https://arxiv.org/abs/1805.00979}}
}
```# About the developer
modAL is developed by me, [Tivadar Danka](https://www.tivadardanka.com) (aka [cosmic-cortex](https://github.com/cosmic-cortex) in GitHub). I have a PhD in pure mathematics, but I fell in love with biology and machine learning right after I finished my PhD. I have changed fields and now I work in the [Bioimage Analysis and Machine Learning Group of Peter Horvath](http://group.szbk.u-szeged.hu/sysbiol/horvath-peter-lab-index.html), where I am working to develop active learning strategies for intelligent sample analysis in biology. During my work I realized that in Python, creating and prototyping active learning workflows can be made really easy and fast with scikit-learn, so I ended up developing a general framework for this. The result is modAL :) If you have any questions, requests or suggestions, you can contact me at [email protected]! I hope you'll find modAL useful!