converting repeated processes to shiny applications for reproducibility, reporting, and scalability
Published 1 year ago • 258 plays • Length 18:40Download video MP4
Download video MP3
Similar videos
-
26:17
how open source and r:shiny is improving processes in pharma
-
25:49
john coene: scaling shiny: experiences from building a large application in pharma
-
18:53
damian rodziewicz | scaling shiny to thousands of users | rstudio
-
19:00
how open source and r shiny are transforming pharma
-
17:26
scaling up and deploying shiny and text mining for national health decisions
-
13:48
a shiny app for r package risk assessment
-
19:36
scaling r shiny app infrastructure - leverage frontend, extract computations, & use database
-
2:36:18
how to build shiny testing architecture
-
22:41
how to make production ready shiny applications
-
52:35
r in pharma: shinytest2
-
29:09
nicola rennie: finding #rstats resources with shiny and github actions
-
9:53
dominik krzemiński | appsilon's guide to working with open source shiny | rstudio
-
21:33
dr. carson sievert | reproducible shiny apps with shinymeta | rstudio (2020)
-
19:29
setting a reproducible r shiny project environment
-
9:47
r/pharma 2022 day 2: charlie wright. analysis & visualization of large-scale drug combos w/ shiny
-
0:42
integrating shiny into your web app | ds4b 101-r
-
2:42:55
building production-quality shiny applications
-
11:11
r/pharma 2021 day 2. ardalan mishani. democratizing shiny app development: datapipeline framework