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Application for analysis and modelling of volumetric medical imaging data
Python repo for Better Code, Better Science
dMRI, rs-fMRI and T1 processing of russ poldrack
Python package to parcellate the human brain using the Lausanne multi-scale cortical atlas and the thalamic nuclei atlas developed in the Connectomics and MIAL labs respectively
Real-time facial emotion detection from video input
A quarto notebook introducing Stan in Python (and maybe R).
LLM Council works together to answer your hardest questions
The tools of the Human Connectome Project (HCP) adapted for working with non-HCP datasets
This repository contains a python package that includes useful tools for image processing.
Recipes for cognitive modeling using Stan [work in progress]
Tools for serving and storing data from online experiments.
Demo and tutorial for PCNtoolkit routines
Python version of the Connectome-based Predictive Modelling framework
Reliable, minimal and scalable library for pretraining foundation and world models
Sky-T1: Train your own O1 preview model within $450
The Medical Image Analysis Laboratory Super-Resolution ToolKit (MIALSRTK) consists of a set of C++ and Python processing and workflow tools necessary to perform motion-robust super-resolution fetal…
nwycomp / NeuroDynamics-Collapse-Validation-
Forked from dhay-star/NeuroDynamics-Collapse-Validation-Convolutional Neural Network trained for age prediction using a large (n=11,729) set of MRI scans from a highly diversified cohort spanning different studies, scanners, ages, ethnicities and geogra…
Review the challenges and potential of ARM-based Apple Silicon macOS for brain imaging research
