bcaffo / brisk
Brain R Image Science Kit
☆30Updated 8 years ago
Alternatives and similar repositories for brisk:
Users that are interested in brisk are comparing it to the libraries listed below
- Repository for working on the Reproducibility project☆12Updated 8 years ago
- Code used to compare sentiments of various sermons☆24Updated 12 years ago
- Statistical computations for visualisation☆69Updated 8 years ago
- Simulate regression models☆43Updated 9 months ago
- Week 13 of 2016☆8Updated 8 years ago
- p-checker: The one-for-all p-value analyzer. R-Index, p-curve, and more in one online app.☆11Updated 4 months ago
- An R package to streamline the training, fine-tuning and predicting processes for deep learning based on 'darch' and 'deepnet'.☆45Updated 9 years ago
- Links to slides for talks at the 2016 Joint Statistical Meetings in Chicago☆79Updated 2 years ago
- XR-style Interface to Python (from "Extending R")☆17Updated 10 months ago
- My older Jekyll blog, based on the So Simple theme☆24Updated 7 years ago
- Tools to make MTurk tasks easy to run from R☆19Updated 12 years ago
- Define Stan models using glmer-style (lme4) formulas☆55Updated 10 years ago
- R with Array Hash Tables☆16Updated 9 years ago
- Materials for Nathan and Garrett's tutorial R for Big Data☆17Updated 8 years ago
- Exploring data related to relative usage of R vs. python☆68Updated 9 years ago
- ☆39Updated 8 years ago
- Divide and Recombine☆68Updated 8 years ago
- A computer vision library for R☆51Updated 7 years ago
- A self-paced version of an introductory R workshop taught at SPSP 2018. Will probably take 4-10 hours to work through, depending on exper…☆26Updated 6 years ago
- A set of function that I use somewhat regularly☆10Updated 8 years ago
- Code and Slides for "Whose Scat Is That? An 'Easily Digestible' Introduction to Predictive Modeling in R and the caret Package"☆16Updated 8 years ago
- ggplot2 + d3 = r2d3☆184Updated 12 years ago
- A demonstration of Bayesian approaches to linear model regularization☆17Updated 8 years ago
- R code to accompany Henrik Brink, Joseph W. Richards, and Mark Fetherolf's book "Real-World Machine Learning"☆60Updated 2 years ago
- Course materials for the SSI 2016 course "Intro to Data Science in Python"☆30Updated 8 years ago
- ☆36Updated 5 years ago
- A companion book for the Coursera Regression Models class☆55Updated 5 years ago
- exploratory data analysis using random forests☆69Updated 7 years ago
- Slides and code for the 2016 useR! tutorial "Never Tell Me the Odds! Machine Learning with Class Imbalances"☆39Updated 8 years ago
- R tools for combining data sets.☆55Updated 4 years ago