Go to file
zsk 39d8c0e3e8
Update flaml/automl.py
Co-authored-by: Chi Wang <wang.chi@microsoft.com>
2022-08-21 08:35:44 -04:00
.devcontainer use relative url in doc (#620) 2022-07-01 13:28:16 -07:00
.github VW version requirement and documentation on config_constraints vs metric_constraints (#686) 2022-08-15 20:16:11 -07:00
docs Finish the Multiple Choice Classification (#367) 2022-01-02 20:12:34 -05:00
flaml Update flaml/automl.py 2022-08-21 08:35:44 -04:00
notebook LightGBM notebook update (#690) 2022-08-20 07:43:06 -07:00
test use_best_model for catboost (#679) 2022-08-20 18:38:56 -07:00
website LightGBM notebook update (#690) 2022-08-20 07:43:06 -07:00
.coveragerc code coverage (#79) 2021-04-26 20:04:57 -04:00
.flake8 v0.1.0 2020-12-04 09:40:27 -08:00
.gitignore adding evaluation (#495) 2022-03-25 17:00:08 -04:00
.pre-commit-config.yaml Updated hooks (#609) 2022-06-25 13:46:28 -04:00
CITATION.cff citation file (#364) 2022-01-04 15:13:14 -08:00
CODE_OF_CONDUCT.md v0.1.0 2020-12-04 09:40:27 -08:00
Dockerfile ignore engine 2022-07-21 14:48:21 -04:00
LICENSE add NOTICE file (#91) 2021-05-24 14:35:08 -04:00
NOTICE.md Finish the Multiple Choice Classification (#367) 2022-01-02 20:12:34 -05:00
README.md Documentation on search space and parallel/sequential tuning (#675) 2022-08-12 01:17:31 -04:00
SECURITY.md Finish the Multiple Choice Classification (#367) 2022-01-02 20:12:34 -05:00
pytest.ini Finish the Multiple Choice Classification (#367) 2022-01-02 20:12:34 -05:00
setup.py VW version requirement and documentation on config_constraints vs metric_constraints (#686) 2022-08-15 20:16:11 -07:00

README.md

PyPI version Conda version Build Python Version Downloads Join the chat at https://gitter.im/FLAMLer/community

A Fast Library for Automated Machine Learning & Tuning


🔥 Update (2022/08): We will give a hands-on tutorial on FLAML at KDD 2022 on 08/16/2022.

What is FLAML

FLAML is a lightweight Python library that finds accurate machine learning models automatically, efficiently and economically. It frees users from selecting learners and hyperparameters for each learner. It can also be used to tune generic hyperparameters for MLOps workflows, pipelines, mathematical/statistical models, algorithms, computing experiments, software configurations and so on.

  1. For common machine learning tasks like classification and regression, it quickly finds quality models for user-provided data with low computational resources. It supports both classifcal machine learning models and deep neural networks.
  2. It is easy to customize or extend. Users can find their desired customizability from a smooth range: minimal customization (computational resource budget), medium customization (e.g., scikit-style learner, search space and metric), or full customization (arbitrary training and evaluation code).
  3. It supports fast automatic tuning, capable of handling complex constraints/guidance/early stopping. FLAML is powered by a new, cost-effective hyperparameter optimization and learner selection method invented by Microsoft Research.

FLAML has a .NET implementation in ML.NET, an open-source, cross-platform machine learning framework for .NET. In ML.NET, you can use FLAML via low-code solutions like Model Builder Visual Studio extension and the cross-platform ML.NET CLI. Alternatively, you can use the ML.NET AutoML API for a code-first experience.

Installation

Python

FLAML requires Python version >= 3.7. It can be installed from pip:

pip install flaml

To run the notebook examples, install flaml with the [notebook] option:

pip install flaml[notebook]

.NET

Use the following guides to get started with FLAML in .NET:

Quickstart

from flaml import AutoML
automl = AutoML()
automl.fit(X_train, y_train, task="classification")
  • You can restrict the learners and use FLAML as a fast hyperparameter tuning tool for XGBoost, LightGBM, Random Forest etc. or a customized learner.
automl.fit(X_train, y_train, task="classification", estimator_list=["lgbm"])
from flaml import tune
tune.run(evaluation_function, config={}, low_cost_partial_config={}, time_budget_s=3600)
  • Zero-shot AutoML allows using the existing training API from lightgbm, xgboost etc. while getting the benefit of AutoML in choosing high-performance hyperparameter configurations per task.
from flaml.default import LGBMRegressor
# Use LGBMRegressor in the same way as you use lightgbm.LGBMRegressor.
estimator = LGBMRegressor()
# The hyperparameters are automatically set according to the training data.
estimator.fit(X_train, y_train)

Documentation

You can find a detailed documentation about FLAML here where you can find the API documentation, use cases and examples.

In addition, you can find:

Contributing

This project welcomes contributions and suggestions. Most contributions require you to agree to a Contributor License Agreement (CLA) declaring that you have the right to, and actually do, grant us the rights to use your contribution. For details, visit https://cla.opensource.microsoft.com.

If you are new to GitHub here is a detailed help source on getting involved with development on GitHub.

When you submit a pull request, a CLA bot will automatically determine whether you need to provide a CLA and decorate the PR appropriately (e.g., status check, comment). Simply follow the instructions provided by the bot. You will only need to do this once across all repos using our CLA.

This project has adopted the Microsoft Open Source Code of Conduct. For more information see the Code of Conduct FAQ or contact opencode@microsoft.com with any additional questions or comments.