Eryk Walczak

My Blog about Data Science

Skip to content
  • Home
  • About

Preview of a scientific notebook in fnirsr

Posted on 2017-02-19 by Eryk Walczak

Here’s a demonstration of using the notebook within the fnirsr package:

More information about R Notebooks can be found in the RStudio’s blog post.

This entry was posted in Neuroscience, Tutorial and tagged fNIRS, R. Bookmark the permalink.

Post navigation

← Sending serial triggers from PsychoPy to ETG-4000 fNIRS
fnirsr – Fixing bugs, Travis CI, and detrending →
Proudly powered by WordPress | Theme: Just Write by Ryan Cowles.

Recent Tweets

Tweets by eryk_walczak

Recent Posts

  • PostcodesioR 0.1.1 is on CRAN
  • Extracting pitch track from audio files into a data frame
  • Automatic splitting of audio files on silence in Python
  • Book Review – Sound Analysis and Synthesis with R
  • Spectrograms in R – a gallery

Recent Comments

  • Extracting pitch track from audio files into a data frame | Eryk Walczak on Automatic pitch extraction from speech recordings
  • Automatic splitting of audio files on silence in Python | Eryk Walczak on Automatic pitch extraction from speech recordings
  • ejwalczak on Enabling MATLAB in Jupyter notebooks on Linux
  • Preeti J Pillai on Enabling MATLAB in Jupyter notebooks on Linux
  • ejwalczak on Enabling MATLAB in Jupyter notebooks on Linux

Archives

  • August 2019
  • February 2019
  • November 2018
  • September 2018
  • April 2018
  • March 2018
  • January 2018
  • November 2017
  • July 2017
  • June 2017
  • April 2017
  • February 2017
  • January 2017
  • December 2016
  • November 2016
  • September 2016
  • July 2016
  • May 2016
  • April 2016
  • March 2016
  • January 2016
  • December 2015
  • November 2015
  • September 2015
  • July 2015
  • June 2015
  • May 2015

RSS R-bloggers.com

  • Market Basket Analysis in R
  • A Curious Fact on the Diamonds Dataset
  • {hagr} Linnaean Classification
  • rOpenSci News Digest, April 2021
  • Microsoft365R 2.1.0 with Outlook support now on CRAN

Categories

  • Book review
  • Data visualisation
  • Machine Learning
  • Neuroscience
  • R package
  • Signal processing
  • Tutorial