--- output: github_document --- ```{r setup, include = FALSE} knitr::opts_chunk$set( collapse = TRUE, comment = "#>", echo = FALSE, warning = FALSE, message = FALSE, cache = TRUE ) png_path <- file.path("images", "static", "png") svg_path <- file.path("images", "static", "svg") if (!dir.exists(png_path)) dir.create(png_path, recursive = TRUE) if (!dir.exists(svg_path)) dir.create(svg_path, recursive = TRUE) ``` [gganimate]: https://github.com/thomasp85/gganimate#README [dplyr-two-table]: https://dplyr.tidyverse.org/articles/two-table.html [r4ds-set-ops]: http://r4ds.had.co.nz/relation-data.html#set-operations # Tidy Animated Verbs Garrick Aden-Buie -- [@grrrck](https://twitter.com/grrrck) -- [garrickadenbuie.com](https://www.garrickadenbuie.com). Set operations contributed by [Tyler Grant Smith](https://github.com/TylerGrantSmith). [![Binder](http://mybinder.org/badge.svg)](https://mybinder.org/v2/gh/gadenbuie/tidy-animated-verbs/master?urlpath=rstudio) [![CC0](https://img.shields.io/badge/license_(images)_-CC0-green.svg)](https://creativecommons.org/publicdomain/zero/1.0/) [![MIT](https://img.shields.io/badge/license_(code)_-MIT-green.svg)](https://opensource.org/licenses/MIT) - Mutating Joins: [`inner_join()`](#inner-join), [`left_join()`](#left-join), [`right_join()`](#right-join), [`full_join()`](#full-join) - Filtering Joins: [`semi_join()`](#semi-join), [`anti_join()`](#anti-join) - Set Operations: [`union()`](#union), [`union_all()`](#union-all), [`intersect()`](#intersect), [`setdiff()`](#setdiff) - Learn more about - [Relational Data](#relational-data) - [gganimate](#gganimate) Please feel free to use these images for teaching or learning about action verbs from the [tidyverse](https://tidyverse.org). You can directly download the [original animations](images/) or static images in [svg](images/static/svg/) or [png](images/static/png/) formats, or you can use the [scripts](R/) to recreate the images locally. Currently, the animations cover the [dplyr two-table verbs][dplyr-two-table] and I'd like to expand the animations to include more verbs from the tidyverse. [Suggestions are welcome!](https://github.com/gadenbuie/tidy-animated-verbs/issues) ## Mutating Joins ```{r intial-dfs} source("R/00_base_join.R") df_names <- data_frame( .x = c(1.5, 4.5), .y = 0.25, value = c("x", "y"), size = 12, color = "black" ) g <- plot_data(initial_join_dfs) + geom_text(data = df_names, family = "Fira Mono", size = 24) save_static_plot(g, "original-dfs") ``` ```{r echo=TRUE} x y ``` ### Inner Join > All rows from `x` where there are matching values in `y`, and all columns from `x` and `y`. ```{r inner-join} source("R/inner_join.R") ``` ![](images/inner-join.gif) ```{r echo=TRUE} inner_join(x, y, by = "id") ``` ### Left Join > All rows from `x`, and all columns from `x` and `y`. Rows in `x` with no match in `y` will have `NA` values in the new columns. ```{r left-join} source("R/left_join.R") ``` ![](images/left-join.gif) ```{r echo=TRUE} left_join(x, y, by = "id") ``` ### Left Join (Extra Rows in y) > ... If there are multiple matches between `x` and `y`, all combinations of the matches are returned. ```{r left-join-extra} source("R/left_join_extra.R") ``` ![](images/left-join-extra.gif) ```{r echo=TRUE} y_extra # has multiple rows with the key from `x` left_join(x, y_extra, by = "id") ``` ### Right Join > All rows from y, and all columns from `x` and `y`. Rows in `y` with no match in `x` will have `NA` values in the new columns. ```{r right-join} source("R/right_join.R") ``` ![](images/right-join.gif) ```{r echo=TRUE} right_join(x, y, by = "id") ``` ### Full Join > All rows and all columns from both `x` and `y`. Where there are not matching values, returns `NA` for the one missing. ```{r full-join} source("R/full_join.R") ``` ![](images/full-join.gif) ```{r echo=TRUE} full_join(x, y, by = "id") ``` ## Filtering Joins ### Semi Join > All rows from `x` where there are matching values in `y`, keeping just columns from `x`. ```{r semi-join} source("R/semi_join.R") ``` ![](images/semi-join.gif) ```{r echo=TRUE} semi_join(x, y, by = "id") ``` ### Anti Join > All rows from `x` where there are not matching values in `y`, keeping just columns from `x`. ```{r anti-join} source("R/anti_join.R") ``` ![](images/anti-join.gif) ```{r echo=TRUE} anti_join(x, y, by = "id") ``` ## Set Operations ```{r intial-dfs-so} source("R/00_base_set.R") df_names <- data_frame( .x = c(2.5, 5.5), .y = 0.25, value = c("x", "y"), size = 12, color = "black" ) g <- plot_data_set(initial_set_dfs, "", NULL, NULL) + geom_text(data = df_names, family = "Fira Mono", size = 24) save_static_plot(g, "original-dfs-set-ops") ``` ```{r remove-set-ops-ids} x <- x %>% select(-id) y <- y %>% select(-id) ``` ```{r echo=TRUE} x y ``` ### Union > All unique rows from `x` and `y`. ```{r union} source("R/union.R") <> ``` ![](images/union.gif) ```{r echo=TRUE} union(x, y) ``` ![](images/union-rev.gif) ```{r echo=TRUE} union(y, x) ``` ### Union All > All rows from `x` and `y`, keeping duplicates. ```{r union-all} source("R/union_all.R") <> ``` ![](images/union-all.gif) ```{r echo=TRUE} union_all(x, y) ``` ### Intersection > Common rows in both `x` and `y`, keeping just unique rows. ```{r intersect} source("R/intersect.R") <> ``` ![](images/intersect.gif) ```{r echo=TRUE} intersect(x, y) ``` ### Set Difference > All rows from `x` which are not also rows in `y`, keeping just unique rows. ```{r setdiff} source("R/setdiff.R") <> ``` ![](images/setdiff.gif) ```{r echo=TRUE} setdiff(x, y) ``` ![](images/setdiff-rev.gif) ```{r echo=TRUE} setdiff(y, x) ``` ## Learn More ### Relational Data The [Relational Data](http://r4ds.had.co.nz/relation-data.html) chapter of the [R for Data Science](http://r4ds.had.co.nz/) book by Garrett Grolemund and Hadley Wickham is an excellent resource for learning more about relational data. The [dplyr two-table verbs vignette][dplyr-two-table] and Jenny Bryan's [Cheatsheet for dplyr join functions](http://stat545.com/bit001_dplyr-cheatsheet.html) are also great resources. ### gganimate The animations were made possible by the newly re-written [gganimate] package by [Thomas Lin Pedersen](https://github.com/thomasp85) (original by [Dave Robinson](https://github.com/dgrtwo)). The [package readme][gganimate] provides an excellent (and quick) introduction to gganimte.