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 is fast and economical. The simple and lightweight design makes it easy to extend, such as adding customized learners or metrics. FLAML is powered by a new, cost-effective hyperparameter optimization and learner selection method invented by Microsoft Research. FLAML leverages the structure of the search space to choose a search order optimized for both cost and error. For example, the system tends to propose cheap configurations at the beginning stage of the search, but quickly moves to configurations with high model complexity and large sample size when needed in the later stage of the search. For another example, it favors cheap learners in the beginning but penalizes them later if the error improvement is slow. The cost-bounded search and cost-based prioritization make a big difference in the search efficiency under budget constraints.
FLAML has a .NET implementation as well from ML.NET Model Builder. This ML.NET blog describes the improvement brought by FLAML.
FLAML requires Python version >= 3.6. It can be installed from pip:
pip install flaml
To run the notebook example
,
install flaml with the [notebook] option:
pip install flaml[notebook]
- With three lines of code, you can start using this economical and fast AutoML engine as a scikit-learn style estimator.
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"])
- You can also run generic ray-tune style hyperparameter tuning for a custom function.
from flaml import tune
tune.run(train_with_config, config={…}, low_cost_partial_config={…}, time_budget_s=3600)
- For common machine learning tasks like classification and regression, find quality models with small computational resources.
- Users can choose their desired customizability: minimal customization (computational resource budget), medium customization (e.g., scikit-style learner, search space and metric), full customization (arbitrary training and evaluation code).
- Allow human guidance in hyperparameter tuning to respect prior on certain subspaces but also able to explore other subspaces. Read more about the hyperparameter optimization methods in FLAML here. They can be used beyond the AutoML context. And they can be used in distributed HPO frameworks such as ray tune or nni.
- Support online AutoML: automatic hyperparameter tuning for online learning algorithms. Read more about the online AutoML method in FLAML here.
- A basic classification example.
from flaml import AutoML
from sklearn.datasets import load_iris
# Initialize an AutoML instance
automl = AutoML()
# Specify automl goal and constraint
automl_settings = {
"time_budget": 10, # in seconds
"metric": 'accuracy',
"task": 'classification',
"log_file_name": "test/iris.log",
}
X_train, y_train = load_iris(return_X_y=True)
# Train with labeled input data
automl.fit(X_train=X_train, y_train=y_train,
**automl_settings)
# Predict
print(automl.predict_proba(X_train))
# Export the best model
print(automl.model)
- A basic regression example.
from flaml import AutoML
from sklearn.datasets import fetch_california_housing
# Initialize an AutoML instance
automl = AutoML()
# Specify automl goal and constraint
automl_settings = {
"time_budget": 10, # in seconds
"metric": 'r2',
"task": 'regression',
"log_file_name": "test/california.log",
}
X_train, y_train = fetch_california_housing(return_X_y=True)
# Train with labeled input data
automl.fit(X_train=X_train, y_train=y_train,
**automl_settings)
# Predict
print(automl.predict(X_train))
# Export the best model
print(automl.model)
- Time series forecasting.
# pip install flaml[ts_forecast]
import numpy as np
from flaml import AutoML
X_train = np.arange('2014-01', '2021-01', dtype='datetime64[M]')
y_train = np.random.random(size=72)
automl = AutoML()
automl.fit(X_train=X_train[:72], # a single column of timestamp
y_train=y_train, # value for each timestamp
period=12, # time horizon to forecast, e.g., 12 months
task='ts_forecast', time_budget=15, # time budget in seconds
log_file_name="test/ts_forecast.log",
)
print(automl.predict(X_train[72:]))
- Learning to rank.
from sklearn.datasets import fetch_openml
from flaml import AutoML
X_train, y_train = fetch_openml(name="credit-g", return_X_y=True, as_frame=False)
y_train = y_train.cat.codes
# not a real learning to rank dataaset
groups = [200] * 4 + [100] * 2 # group counts
automl = AutoML()
automl.fit(
X_train, y_train, groups=groups,
task='rank', time_budget=10, # in seconds
)
More examples can be found in notebooks.
Please find the API documentation here.
Please find demo and tutorials of FLAML here.
For more technical details, please check our papers.
- FLAML: A Fast and Lightweight AutoML Library. Chi Wang, Qingyun Wu, Markus Weimer, Erkang Zhu. MLSys 2021.
@inproceedings{wang2021flaml,
title={FLAML: A Fast and Lightweight AutoML Library},
author={Chi Wang and Qingyun Wu and Markus Weimer and Erkang Zhu},
year={2021},
booktitle={MLSys},
}
- Frugal Optimization for Cost-related Hyperparameters. Qingyun Wu, Chi Wang, Silu Huang. AAAI 2021.
- Economical Hyperparameter Optimization With Blended Search Strategy. Chi Wang, Qingyun Wu, Silu Huang, Amin Saied. ICLR 2021.
- ChaCha for Online AutoML. Qingyun Wu, Chi Wang, John Langford, Paul Mineiro and Marco Rossi. ICML 2021.
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.
git clone https://github.com/microsoft/FLAML.git
pip install -e .[test,notebook]
We provide a simple Dockerfile.
docker build git://github.com/microsoft/FLAML -t flaml-dev
docker run -it flaml-dev
If you use vscode, you can open the FLAML folder in a Container. We have provided the configuration in .devcontainer.
Run pre-commit install
to install pre-commit into your git hooks. Before you commit, run
pre-commit run
to check if you meet the pre-commit requirements. If you use Windows (without WSL) and can't commit after installing pre-commit, you can run pre-commit uninstall
to uninstall the hook. In WSL or Linux this is supposed to work.
Any code you commit should not decrease coverage. To run all unit tests:
coverage run -m pytest test
Then you can see the coverage report by
coverage report -m
or coverage html
.
If all the tests are passed, please also test run notebook/flaml_automl to make sure your commit does not break the notebook example.
- Chi Wang
- Qingyun Wu
Contributors (alphabetical order): Amir Aghaei, Vijay Aski, Sebastien Bubeck, Surajit Chaudhuri, Nadiia Chepurko, Ofer Dekel, Alex Deng, Anshuman Dutt, Nicolo Fusi, Jianfeng Gao, Johannes Gehrke, Niklas Gustafsson, Silu Huang, Dongwoo Kim, Christian Konig, John Langford, Menghao Li, Mingqin Li, Zhe Liu, Naveen Gaur, Paul Mineiro, Vivek Narasayya, Jake Radzikowski, Marco Rossi, Amin Saied, Neil Tenenholtz, Olga Vrousgou, Markus Weimer, Yue Wang, Qingyun Wu, Qiufeng Yin, Haozhe Zhang, Minjia Zhang, XiaoYun Zhang, Eric Zhu, and open-source contributors.