SSN2

Stream network modeler

An R package that enables spatial statistical modeling and prediction on stream networks using a range of techniques.

SSN2: Spatial Modeling on Stream Networks in R

GitHub

16 stars
6 watching
3 forks
Language: R
last commit: 14 days ago
Linked from 1 awesome list


Backlinks from these awesome lists:

Related projects:

Repository Description Stars
usepa/wntr A tool for simulating and analyzing water distribution networks under disaster scenarios. 318
stocnet/goldfish Software package for statistical modeling of dynamic network data 61
stevedoyle2/pynastran An interface library to Nastran file formats, allowing users to read and manipulate model geometry and results data. 396
schochastics/levelnet An R package to analyze two-mode networks and extract their binary backbone. 9
stanfordnlp/treelstm An implementation of a neural network architecture for modeling complex sentence structures and relationships. 875
randl/shufflenetv2-pytorch An implementation of a lightweight convolutional neural network architecture for mobile devices 191
synsense/rockpool A Python library for building and deploying signal processing applications with spiking neural networks on various hardware platforms. 52
sambaranban/fscnmf Provides code and data support for FSCNMF, a network representation technique. 2
matthewjdenny/ccas Provides tools for modeling and analyzing communication network data using statistical models. 5
zjhuang22/maskscoring_rcnn An open source implementation of Mask Scoring R-CNN for instance segmentation tasks. 1,900
bindsnet/bindsnet A software package for simulating spiking neural networks using PyTorch. 1,507
sctyner/geomnet A R package for creating and visualizing networks using ggplot2 and other visualization tools 97
rozap/spacesaving An algorithm to estimate distinct elements in an unbounded stream using bounded space 2
bcgov/fasstr An R package to analyze and visualize streamflow data. 55
mwtoews/surface-water-network A Python package to create and analyze surface water networks 29