A high-performance distributed deep learning system targeting large-scale and automated distributed training.
-
Updated
Apr 21, 2025 - Python
A high-performance distributed deep learning system targeting large-scale and automated distributed training.
Implements "Clustering a Million Faces by Identity"
A fast, accurate, and modularized dimensionality reduction approach based on diffusion harmonics and graph layouts. Escalates to millions of samples on a personal laptop. Adds high-dimensional big data intrinsic structure to your clustering and data visualization workflow.
Simple and efficient Python package for modeling d-dimensional Bravais lattices in solid state physics.
A numerical library for High-Dimensional option Pricing problems, including Fourier transform methods, Monte Carlo methods and the Deep Galerkin method
[TMLR' 24] High-dimensional Bayesian Optimization via Covariance Matrix Adaptation Strategy
DynSyn: Dynamical Synergistic Representation for Efficient Learning and Control in Overactuated Embodied Systems
Bayesian optimization with Standard Gaussian Processes on high dimensional benchmarks
KNRScore is a Python package for computing K-Nearest-Rank Similarity, a metric that quantifies local structural similarity between two maps or embeddings.
Video Input Generative Adversarial Imitation Learning
[AAAI' 25] BOIDS: High-dimensional Bayesian Optimization via Incumbent-guided Direction Lines and Subspace Embeddings
Locally Sensitive Hashing based embedding for High Dimensional Multivariate Time Series
A q-quantile estimator for high-dimensional distributions
Lossless conversion algorithm for converting Cortical Learning Algorithm binary vectors to Modular Composite Representation vectors. Implements Integer Sparse Distributed Memory.
A Bayesian multiscale deep learning framework for flows in random media
Add a description, image, and links to the high-dimensional topic page so that developers can more easily learn about it.
To associate your repository with the high-dimensional topic, visit your repo's landing page and select "manage topics."