A Flexible and Powerful Parameter Server for large-scale machine learning
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Updated
Oct 13, 2025 - Java
A Flexible and Powerful Parameter Server for large-scale machine learning
A high-performance distributed deep learning system targeting large-scale and automated distributed training.
Octree/Quadtree/N-dimensional linear tree
Implements "Clustering a Million Faces by Identity"
Open and explore HDF5 files in JupyterLab. Can handle very large (TB) sized files, and datasets of any dimensionality
Time-HD-Lib: A Library for High-Dimensional Time Series Forecasting
Deprecated in favour of TopoMetry: https://github.com/davisidarta/topometry
Simple and efficient Python package for modeling d-dimensional Bravais lattices in solid state physics.
DynSyn: Dynamical Synergistic Representation for Efficient Learning and Control in Overactuated Embodied Systems
A numerical library for High-Dimensional option Pricing problems, including Fourier transform methods, Monte Carlo methods and the Deep Galerkin method
Particle Swarm Optimization Visualization
Bayesian optimization with Standard Gaussian Processes on high dimensional benchmarks
Numerical illustration of a novel analysis framework for consensus-based optimization (CBO) and numerical experiments demonstrating the practicability of the method
[TMLR' 24] High-dimensional Bayesian Optimization via Covariance Matrix Adaptation Strategy
DataHigh: A graphical user interface for visualizing and interacting with high-dimensional neural activity
BioMM: Biological-informed Multi-stage Machine learning framework for phenotype prediction using omics data
Controlled Invariant Sets in Two Moves
Regularization Paths for Huber Loss Regression and Quantile Regression Penalized by Lasso or Elastic-Net
Implementation of the FNETS methodology proposed in Barigozzi, Cho and Owens (2024) for network estimation and forecasting of high-dimensional time series
KNRScore is a Python package for computing K-Nearest-Rank Similarity, a metric that quantifies local structural similarity between two maps or embeddings.
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