Clustered Learning of Approximate Manifolds
Project description
CLAM: Clustered Learning of Approximate Manifolds (v0.15.0)
CLAM is a Rust/Python library for learning approximate manifolds from data. It is designed to be fast, memory-efficient, easy to use, and scalable for big data applications.
CLAM provides utilities for fast search (CAKES) and anomaly detection (CHAODA).
As of writing this document, the project is still in a pre-1.0 state. This means that the API is not yet stable and breaking changes may occur frequently.
Installation
> python3 -m pip install "abd_clam==0.15.0"
Usage
from abd_clam.search import CAKES
from abd_clam.utils import synthetic_data
# Get the data.
data, _ = synthetic_data.bullseye()
# data is a numpy.ndarray in this case but it could just as easily be a
# numpy.memmap if your data do fit in RAM. We used numpy memmaps for the
# research, though they impose file-IO costs.
model = CAKES(data, 'euclidean')
# The CAKES class provides the functionality described in our
# [CHESS paper](https://arxiv.org/abs/1908.08551).
model.build(max_depth=50)
# Build the search tree to depth of 50.
# This method can be called again with a higher depth, if needed.
query, radius, k = data[0], 0.5, 10
rnn_results = model.rnn_search(query, radius)
# This is how we perform ranged nearest neighbors search with radius 0.5 around
# the query.
knn_results = model.knn_search(query, k)
# This is how we perform k-nearest neighbors search for the 10 nearest neighbors
# of the query.
# The results are returned as a dictionary whose keys are indices into the data
# array and whose values are the distance to the query.
License
Citation
TODO
Project details
Release history Release notifications | RSS feed
Download files
Download the file for your platform. If you're not sure which to choose, learn more about installing packages.
Source Distribution
abd_clam-0.15.0.tar.gz
(37.0 kB
view hashes)
Built Distribution
abd_clam-0.15.0-py3-none-any.whl
(46.0 kB
view hashes)
Close
Hashes for abd_clam-0.15.0-py3-none-any.whl
Algorithm | Hash digest | |
---|---|---|
SHA256 | 0d72458f81a1d0b94418f431cdc5bf5b9afa7780b0f9203b93d02963dfe5b3b2 |
|
MD5 | fe222307f2aa0d8f6ffa249d9ebaa5f7 |
|
BLAKE2b-256 | 3af4483737c5eaa6084157f83c8dda0c31c8bb90823d9bb16a7b2ea312c5fbc7 |