Mike K Smith | Using rmarkdown and parameterised reports | RStudio
My brain is lazy, shallow and easily distracted. Learn how I use notebooks to keep my present-self organised, my future-self up to speed with what I was thinking months ago, and also how I use parameterised reports to share results for both quantitative and non-quantitative audiences across multiple endpoints. I can update and render outputs for a variety of outputs from a single markdown notebook or report. I’ll show you how I organise my work using the Tidyverse, use child documents with parameterisation and also how this is served out to my colleagues via RStudio Connect.
About Mike K Smith:
I have 25 years experience of working in the Pharmaceutical industry (Pfizer), with more than 15 years working on modelling and simulation projects. I am a keen advocate of smarter drug development with a particular interest in Bayesian methods, dose-response, reproducible research and knowledge management. My particular expertise is in the use of simulation methodology to predict drug outcomes, find efficient trial designs, assess decision criteria and evaluate analysis methodologies. My current role at Pfizer is as specialist in computation and modeling solutions - evaluating and deploying new tools and training colleagues. I am an RStudio certified tidyverse trainer
rmarkdown
rstudio
tidyverse
RStudio
Data Science
Machine Learning
Python
Stats
Tidyverse
Data Visualization
Data Viz
Ggplot
Technology
Coding
Connect
Server Pro
Shiny
Rmarkdown
Package Manager
CRAN
Interoperability
Serious Data Science
Dplyr
Ggplot2
Tibble
Readr
Stringr
Tidyr
Purrr
Github
Data Wrangling
Tidy Data
Odbc
Rayshader
Plumber
Blogdown
Gt
Lazy Evaluation
Tidymodels
Statistics
Debugging
Programming Education
Forcats
Rstats
Open Source
Oss
Reticulate
Mike Smith