Benchmarks of approximate nearest neighbor libraries in Python
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Updated
Oct 29, 2024 - Python
Benchmarks of approximate nearest neighbor libraries in Python
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An easy-to-use Python library for processing and manipulating 3D point clouds and meshes.
Nearest Neighbor Search with Neighborhood Graph and Tree for High-dimensional Data
TensorFlow Similarity is a python package focused on making similarity learning quick and easy.
RAFT contains fundamental widely-used algorithms and primitives for machine learning and information retrieval. The algorithms are CUDA-accelerated and form building blocks for more easily writing high performance applications.
Python implementation of KNN and DTW classification algorithm
High performance nearest neighbor data structures (KDTree and BallTree) and algorithms for Julia.
Anomaly detection using LoOP: Local Outlier Probabilities, a local density based outlier detection method providing an outlier score in the range of [0,1].
A scalable nearest neighbor search library in Apache Spark
cuVS - a library for vector search and clustering on the GPU
Performance-portable geometric search library
Fast Near-Duplicate Image Search and Delete using pHash, t-SNE and KDTree.
Improving Generalization via Scalable Neighborhood Component Analysis
The code repository for the paper: Peijie et al., Neighborhood-Enhanced Supervised Contrastive Learning for Collaborative Filtering. IEEE TKDE, 2023.
Performance evaluation of nearest neighbor search using Vespa, Elasticsearch and Open Distro for Elasticsearch K-NN
A lightweight and efficient Python Morton encoder with support for geo-hashing
kNN-based next-basket recommendation
PostgreSQL extension for spatial indexing on a sphere
Compressing Representations for Self-Supervised Learning
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