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<!DOCTYPE html>
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<head>
<title>Reproduciblity, DfE Data Science Week 2020</title>
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class: center, middle, inverse
# 🔄 Reproducibility in R: three things
DfE Data Science Week, 2020-01-22
<i class="fab fa-twitter "></i> [mattdray](https://twitter.com/mattdray)
<i class="fab fa-github "></i> [matt-dray](https://github.com/matt-dray)
<i class="fas fa-globe "></i> [rostrum.blog](https://www.rostrum.blog/)
???
* What reproducibility is, why you need it, some practical things you can do
* Focus is on R, but transferable
* You might be doing a bunch of this stuff already
* But hopefully you'll hear about something new
---
class: middle
tl;dr 😴
* make your work reproducible
* unless you hate everyone
* especially yourself
???
* Reproducibility benefits anyone who wants to use your code or recreate work that's been done
* If you don't care about anyone else: it will still benefit you, specifically
* Let's say you're returning to some work after a period away, or a new publication is due
---
class: inverse, middle, center
# 'Reproducible'
???
* We should probably define 'reproducible'
* Turns out there's more than one definition
---
class: middle, center
![](img/turing-way-reproducibility.jpg)
From [The Turing Way](https://the-turing-way.netlify.com/introduction/introduction) by The Alan Turing Institute
???
* I think we care about reproducing outputs we've aready created (to prove that we can reliably recreate the outcome) and updating with fresh data (like the next quarter's data)
* But I'm going to refer to 'reproducible' throughout
---
class: middle
Can I recreate what you did:
* from scratch?
--
* on a different machine?
--
* in the future?
--
* without you present?
???
* A simpler way of thinking about it might be to answer these questions
* We should know all the preparatory steps
* Maybe I don't have the same packages, maybe I'm using another OS
* Dependency changes break things
* What if you leave the department?
---
class: center, middle
<img src='img/trex-my-machine.gif' width=100%>
You want to avoid saying this
???
* You should be confident that it can run _where_ it needs to run, _when_ it needs to run
---
class: middle
Reproducibility can help:
* reduce errors
--
* improve trust
--
* help you share
--
* speed up work
???
* You know it can be re-run to give the same results
* Others can see the steps taken and can recreate it themselves
* Everything you need in one folder/repo; all instructions in the box
* You're not building over old work and obfuscating and complicating things
---
class: middle, center
<img src='img/rap_v4_hex.png' width='50%'>
[Reproducible Analytical Pipelines](https://ukgovdatascience.github.io/rap-website/) (RAP)
???
* There's a grassroots movement to enact all this stuff in government already
* Visit the website (link in slide)
* Join #rap-collaboration on govdatascience.slack.com
* DfE are already active: speak to Cameron R or Laura S
---
class: middle, inverse
# Three things
???
* I promised three things
* I hope everyone learns something new, even if small
* The things are roughly in order of how you might progress on your reproducibility journey
---
class: middle
1. Centralise everything
1. Report with code
1. Manage workflows
???
* These are very broad -- what do they mean?
* Let's go through one by one
* I'll be focusing on R, but I think the points are transferable and Python analogues are available
---
class: inverse, middle
# 0\. Code everything
Haha, suckers, I zero-indexed my list!
???
* Before you do anything, switch to code from point-and-click
* I'll be picking on Excel a little bit
* Excel isn't _always_ bad
* It's just easier to be reproducible with code
---
class: middle, center
<img src='img/slack-q.png' width=100%>
<img src='img/slack-a.png' width=100%>
???
* We want to move away from workflows where we have lots of workbooks with multiple sheets
* Move away from pointing and clicking
* Move away from forgetting to drag formulae across the right cells
* Move toward coded analysis to provide a recipe for the workflow
* Move toward better documentation
---
class: middle, center
<img src='img/blueball.gif' width=100%>
Scene from an Excel-based workflow
???
* Question everything; baulk at phrases like 'this is how we did it last year'
* Excel workflows might start simple, but can get clogged up very easily
* They don't encourage documentation
* They're 'data up front, code in the background', but we want the opposite
---
class: middle
Some resources:
* [Spreadsheet horror stories](http://www.eusprig.org/horror-stories.htm) by EuSpRiG
* [Excel vs R: a brief intro](https://www.jessesadler.com/post/excel-vs-r/) by Jesse Sadler
* [Arguments on switching from Excel to R](https://community.rstudio.com/t/pre-teaching-r-whats-your-best-argument-for-switching-to-r-from-excel/3182) from the RStudio Community
???
* EuSpRiG: European Spreadsheet Risks Interest Group
---
class: inverse, middle
# 1. Centralise everything
???
* 'Centralise' your code, data, documentation, etc
* As in put the code and any other needed files in one place
* Consider generalising and sharing functions
---
class: middle
🗂 Use [R Projects](https://support.rstudio.com/hc/en-us/articles/200526207-Using-Projects) to:
* put code, data and docs in one place
* so everything you need is together
* to make your analysis shareable
???
* Code your workflow with comments and documentation
* Use a project-oriented workflow
* You can easily pass the Project folder as a single unit
* Filepaths are relative to the the project, not your machine
---
class: middle, center
<img src='img/rstudio-project.png' width=80%>
These slides are in an R Project
???
* All the files are need are in one place
* All file paths are relative
* I can recreate this from scratch at any time
* Others can download it and recreate it or build on it
* From RStudio: File > New project
* Doesn't have to be RStudio; just need to have everything you need in one place
---
class: middle
📦 Write packages to:
* avoid repeating yourself
* generalise and centralise your functions
* share your work
Get started with:
* the [{usethis} workflow](https://www.hvitfeldt.me/blog/usethis-workflow-for-package-development/) by Emil Hvitfeldt
* the [R Packages book](http://r-pkgs.had.co.nz/) by Hadley Wickham
???
* Write, test and debug your frequently-used functions just once
* The whole organisation and beyond can use the same functions
* Put this under version control so you can always refer to older versions of your package
---
class: middle
Two quick RStudio tips:
* [Don't save and restore the Project workspace](https://r4ds.had.co.nz/workflow-projects.html)
<img src='img/rstudio-workspace.png' width=70%>
* Do restart all the time (Cmd/Ctrl+Shift+F10)
???
* Always be running your Project as though you're running it from scratch
* Each time you startup, start afresh
* Always be restarting RStudio to clear all objects
* That'll prevent you relying on objects that exist in your workspace that you may have made on the fly
---
class: inverse, middle
# 2. Report with code
???
* So you've written analytical code to read and manipulate data
* But you're still copy-pasting into documents
* This could go wrong: What if you meant to copy value x into three different places, but you missed one?
* What if the data changes? Do you need to re-run everything from scratch and begin copy-pasting again?
---
class: middle
⬇️ Use [R Markdown](https://rmarkdown.rstudio.com/) to:
* put code in your reports
* update outputs instantly when code changes
* complete the reproducible data-to-output workflow
???
* From code chunks or inline
* New data? No problem. Re-run the code and the correct outputs are generated.
---
class: middle, center
<img src='img/example-rmd.jpg' width=100%>
???
* Quick overview of an RStudio window
* Left: an R Markdown script (.Rmd)
* Right: viewer output after rendering the .Rmd ('knitting')
* Code gets turned into output
---
class: middle
Declare a variable
```r
yr <- format(Sys.Date(), "%Y")
```
Use it in R Markdown
```r
> The year is `r yr`.
```
Rendered output
> The year is 2020.
???
* You can write whole 'chunks' of code and also render them inline
* Here's how an inline render might look
---
class: middle
Use R Markdown for lots of output types:
* [{xaringan}](https://slides.yihui.org/xaringan/#1) for slides
* [{bookdown}](https://bookdown.org/) for books
* [{blogdown}](https://bookdown.org/yihui/blogdown/) for blogs
* [{flexdashboard}](https://rmarkdown.rstudio.com/flexdashboard/index.html) for dashboards
* [{pagedown}](https://pagedown.rbind.io/) for paged HTML documents
* [{thesisdown}](https://github.com/ismayc/thesisdown) for theses
* [{govdown}](https://ukgovdatascience.github.io/govdown/) for websites with GOV.UK design
Check out the [R Markdown book](https://bookdown.org/yihui/rmarkdown/)
???
* {govdown} created by our very own Duncan G at GDS
---
class: inverse, middle
# 3. Manage workflows
???
* You've got reproducible steps from ingestion to outputs, but this may involve lots of files, functions and objects
* You need to manage the workflow itself, i.e. the dependencies between all the files, functions and objects
* This might be something you haven't thought of before
* You might be familiar with Make
* This is an R-specific implementation of that approach
---
class: middle
🦆 {drake} by [Will Landau](https://twitter.com/wmlandau)
* makes your analysis pipeline reproducible
* remembers your workflow for you
* re-runs only what needs to be re-run
Learn more:
* on the [website](https://docs.ropensci.org/drake/)
* in the [user manual](https://books.ropensci.org/drake/)
* from this [recorded rOpenSci call](https://ropensci.org/commcalls/2019-09-24/)
???
* You can't remember all the parts of your large analysis and how they fit together
* Do you have to re-run everything from scratch if you change something about the analysis?
* {drake} is a brain that remembers all the relationships and the order in which things need to be run
* It only re-runs what needs to be re-run, saving you time and brainpower
---
class: middle
.pull-left[<img src='img/drake-tweet.jpeg' height=450>]
A complicated workflow by [Frederik Aust](https://twitter.com/FrederikAust/status/1205103780938833921?s=20)
Each point is an object, function or data set
Can you remember all of this?
???
* Here's a complicated workflow with lots of inputs
* Many objects (circles) and functions (triangles)
* If something changes, {drake} re-runs only what needs updating
* Saves computation and time
---
class: middle
{drake} example adapted from [Kirill Müller](https://krlmlr.github.io/drake-pitch/#1)
```r
library(drake)
library(tidyverse)
# Create your own functions
create_plot <- function(data) {
ggplot(data, aes(x = Petal.Width, fill = Species)) +
geom_histogram()
}
# Create a workflow 'plan'
*plan <- drake_plan(
raw_data = readxl::read_xlsx(file_in("raw-data.xlsx")),
data = raw_data %>% mutate(Species = forcats::fct_inorder(Species)),
hist = create_plot(data),
fit = lm(Sepal.Width ~ Petal.Width + Species, data),
report = rmarkdown::render(
knitr_in("report.Rmd"),
output_file = file_out("report.pdf"),
quiet = TRUE
)
)
```
???
* this is a very simplified example of how you set up a {drake} workflow
* Load packages, create your functions if required
* Wrap workflow steps in `drake_plan()`
---
class: middle
The plan is a dataframe of targets and commands
```r
plan
## # A tibble: 5 x 2
## target command
## <chr> <expr>
## 1 raw_data readxl::read_xlsx(file_in("raw-data.xlsx")) …
## 2 data raw_data %>% mutate(Species = forcats::fct_inorder(Sp…
## 3 hist create_plot(data) …
## 4 fit lm(Sepal.Width ~ Petal.Width + Species, data) …
## 5 report rmarkdown::render(knitr_in("report.Rmd"), output_file…
```
???
* So the steps have been recorded (in order)
* We have targets (objects) and commands (functions that produce the targets)
* Like a recipe
* They'll be executed in order
* {drake} is aware of which targets are dependent on each other
---
class: middle
Make the plan to generate the targets
```r
make(plan)
## target raw_data
## target data
## target fit
## target hist
## target report
```
???
* `make()` executes everything in order
* It prints the targets that have been created
* If you change something, it will only recreate targets that are dependent on that change
* So next time you `make()`, only those targets will be recreated
* Everything else is stored in a special .drake/ cache ({drake}'s 'brain' for your project)
* You can access these objects with `loadd()` and `readd()` if you need them
---
class: middle
Update the 'data' target and {drake} will:
* re-run out-of-date downstream targets (black)
* leave everything upstream alone
<img src='img/drake-viz.png' width=800%>
???
* Here's a {drake} visualisation to show the dependencies in the simple example
* Imagine we updated the data target so everything downstream is out of date
* Re-running `make()` now will regenerate everything in black
---
class: inverse, middle
# It doesn't end here
???
* It's impossible to cover everything adequately here
* There's some great free materials out there
---
class: middle
Also consider:
* [{renv}](https://rstudio.github.io/renv/articles/renv.html) for [dependency management](https://ukgovdatascience.github.io/rap-website/article-dependency-and-reproducibility.html)
* [{here}](https://here.r-lib.org/) for [relative file paths](https://github.com/jennybc/here_here)
* [Git and GitHub](https://speakerdeck.com/alicebartlett/git-for-humans) for version control
* [Docker](https://ropenscilabs.github.io/r-docker-tutorial/) to fully contain files/code/environment
???
* Dependency managers make sure breaking changes to packages don't affect you
* users/matt/project/data/ doesn't exist on your machine; you need relative paths like project/data/
* Version control lets you roll back changes and experiment safely
* Docker takes the idea of a project folder and makes it even better; it contains the package versions and operating environment (i.e. R version) you need to create everything from scratch
---
class: middle
Some things to look at:
* [Reproducible Analytical Pipelines](https://ukgovdatascience.github.io/rap-website/) (RAP) and the #rap-collaboration channel [on Slack](https://govdatascience.slack.com)
* [Putting the R into reproducible research](https://annakrystalli.me/talks/r-in-repro-research-dc.html#1) by Anna Krystalli
* [The Turing Way](https://the-turing-way.netlify.com/introduction/introduction.html) by The Alan Turing Institute
* [R for Reproducible Scientific Analysis](https://swcarpentry.github.io/r-novice-gapminder/) from Software Carpentry
---
class: middle
I've written about reproducibility-related things:
* [Build an R package with {usethis}](https://www.rostrum.blog/2019/11/01/usethis/)
* [Git going: Git and GitHub](https://www.rostrum.blog/2019/10/21/git-github/)
* [Can {drake} RAP?](https://www.rostrum.blog/2019/07/23/can-drake-rap/)
* [A GitHub repo template for R analysis](https://www.rostrum.blog/2019/06/11/r-repo-template/)
* [Knitting Club: R Markdown for beginners](https://www.rostrum.blog/2018/09/24/knitting-club/)
---
class: inverse, middle
# Reproducibility in R: three things
1. Centralise everything
2. Report with code
3. Manage workflows
<i class="fab fa-twitter "></i> [mattdray](https://twitter.com/mattdray)
<i class="fab fa-github "></i> [matt-dray](https://github.com/matt-dray)
<i class="fas fa-globe "></i> [rostrum.blog](https://www.rostrum.blog/)
</textarea>
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