Apress / intro-to-deep-learning-using-rView external linksLinks
Source code for 'Introduction to Deep Learning Using R' by Taweh Beysolow II
☆25Jul 6, 2017Updated 8 years ago
Alternatives and similar repositories for intro-to-deep-learning-using-r
Users that are interested in intro-to-deep-learning-using-r are comparing it to the libraries listed below
Sorting:
- Source code for 'Beginning Data Science in R' by Thomas Mailund☆10Apr 28, 2017Updated 8 years ago
- Slides and homework for model based inference☆13Sep 26, 2017Updated 8 years ago
- R Package for Automated Speech Recognition☆10Aug 10, 2015Updated 10 years ago
- Text as Data Material for WashU Course☆15Nov 7, 2017Updated 8 years ago
- Structural Topic Modeling of the Facebook posts of NC State Senators☆13Mar 17, 2017Updated 8 years ago
- Discussion for Stan for economists☆10Mar 29, 2016Updated 9 years ago
- An R package that returns tidy data from the World Prison Brief website.☆17Feb 14, 2021Updated 4 years ago
- Source code for 'Introduction to Python for Engineers and Scientists' by Sandeep Nagar☆14Dec 4, 2017Updated 8 years ago
- R package for user friendly Facebook scraping☆10Jul 6, 2017Updated 8 years ago
- Material for a 3 day workshop on computational text analysis for humanists and social scientists☆34May 25, 2017Updated 8 years ago
- Accessing the Facebook Marketing API using httr in R, for demographic researchers☆21Nov 8, 2017Updated 8 years ago
- Source Code for 'Data Science Solutions with Python' by Tshepo Chris Nokeri☆13Oct 14, 2021Updated 4 years ago
- Code, data and slides for the UTokyo "text as data" course (June 3-4, 2017)☆11Jun 5, 2017Updated 8 years ago
- R package for machine learning technique to fit flexible, interpretable functional forms for continuous and binary outcomes.☆23Aug 24, 2020Updated 5 years ago
- Source Code for 'Practical Machine Learning for Streaming Data with Python' by Sayan Putatunda☆15Apr 10, 2021Updated 4 years ago
- ☆13Oct 7, 2019Updated 6 years ago
- Presentation for the NYU Data Lab December 2015☆14Dec 2, 2015Updated 10 years ago
- ☆10Nov 14, 2017Updated 8 years ago
- "Exploratory Data Analysis using Random Forests"☆18Feb 12, 2016Updated 10 years ago
- ☆77Aug 25, 2025Updated 5 months ago
- The official class webpage for Statistics 422/722 taught at Wharton in the Spring of 2017☆17Feb 27, 2017Updated 8 years ago
- Optimal pruning for imbalance minimization in causal inference☆18Sep 7, 2020Updated 5 years ago
- Tutorial on writing efficient R code, including timing and profiling your code, as well as fast linear algebra☆17Sep 28, 2022Updated 3 years ago
- Source code for 'Beginning Power BI' by Dan Clark☆25Dec 12, 2018Updated 7 years ago
- R library for accessing data from everypolitician.org☆20Apr 24, 2018Updated 7 years ago
- Syllabus and material for a semester-long course on text analysis for the social science and humanities.☆31Oct 3, 2017Updated 8 years ago
- Short tour of parallel and foreach packages, and how to think about scaling data analyses☆75Aug 23, 2020Updated 5 years ago
- Supplementary and replication materials for paper "Examining a Most Likely Case for Strong Campaign Effects: Hitler's Speeches and the Ri…☆14Jun 6, 2018Updated 7 years ago
- An R package extends R to process tera-scale datasets in parallel and out of core automatically.☆17Aug 16, 2017Updated 8 years ago
- Dissemination of harmonization code and data for SDI Health surveys☆10Mar 2, 2019Updated 6 years ago
- Course Materials for Introduction to Machine Learning, Rex W. Douglass 2018☆19Jul 20, 2018Updated 7 years ago
- Teaching materials for handling large datasets in R☆76Mar 8, 2018Updated 7 years ago
- Course materials for Sta 101 - Spring 2016 semester at Duke University☆38Jun 30, 2016Updated 9 years ago
- Tutorial for the 2018 PolNet Workshop, "Introduction to Network Analysis Using R". To follow along with the workshop, clone or download, …☆11Jun 5, 2018Updated 7 years ago
- Notes on public version control for political scientists.☆45Jul 30, 2018Updated 7 years ago
- Training materials for the intro and advanced R course☆11Oct 31, 2017Updated 8 years ago
- Stanford's Math Camp for 2018☆38Sep 25, 2018Updated 7 years ago
- SuperLearner guide: fitting models, ensembling, prediction, hyperparameters, parallelization, timing, feature selection, etc.☆37Apr 17, 2019Updated 6 years ago
- Source code for 'Machine Learning Using R' by Karthik Ramasubramanian and Abhishek Singh☆42Nov 17, 2019Updated 6 years ago