The fast_hdbscan
library provides a simple implementation of the HDBSCAN clustering algorithm designed specifically
for high performance on multicore machine with low dimensional data (2D to about 20D). The algorithm runs in parallel and can make
effective use of as many cores as you wish to throw at a problem. It is thus ideal for large SMP systems, and even
modern multicore laptops.
This library provides a
re-implementation of a subset of the HDBSCAN algorithm that is compatible with the
hdbscan library for data that is Euclidean and
low dimensional. The primary advantages of this library over the standard hdbscan
library are:
- this library can easily use all available cores to speed up computation;
- this library has much faster implementations of tree condensing and cluster extraction;
- this library is much simpler and more approachable for extending or using components from;
- this library is built on numba and has less issues with binaries and compilation.
This library does not support all the features and input formats available in the hdbscan library.
The fast_hdbscan
library follows the hdbscan
library in using the sklearn API. You can use the fast_hdbscan
class HDBSCAN
exactly as you would that of the hdbscan
library with the caveat that fast_hdbscan
only
supports a subset of the parameters and options of hdbscan
. Nonetheless, if you have low-dimensional
Euclidean data (e.g. the output of UMAP), you can use this library as a straightforward drop in replacement for
hdbscan
:
import fast_hdbscan
from sklearn.datasets import make_blobs
data, _ = make_blobs(1000)
clusterer = fast_hdbscan.HDBSCAN(min_cluster_size=10)
cluster_labels = clusterer.fit_predict(data)
fast_hdbscan requires:
- numba
- numpy
- scikit-learn
fast_hdbscan can be installed via pip:
pip install fast_hdbscan
To manually install this package:
wget https://github.com/TutteInstitute/fast_hdbscan/archive/main.zip
unzip main.zip
rm main.zip
cd fast_hdbscan-main
python setup.py install
The algorithm used here is an adaptation of the algorithms described in the papers:
McInnes L, Healy J. Accelerated Hierarchical Density Based Clustering In: 2017 IEEE International Conference on Data Mining Workshops (ICDMW), IEEE, pp 33-42. 2017 [pdf]
R. Campello, D. Moulavi, and J. Sander, Density-Based Clustering Based on Hierarchical Density Estimates In: Advances in Knowledge Discovery and Data Mining, Springer, pp 160-172. 2013
fast_hdbscan is BSD (2-clause) licensed. See the LICENSE file for details.
Contributions are more than welcome! If you have ideas for features of projects please get in touch. Everything from code to notebooks to examples and documentation are all equally valuable so please don't feel you can't contribute. To contribute please fork the project make your changes and submit a pull request. We will do our best to work through any issues with you and get your code merged in.