| @@ -17,7 +17,12 @@ knitr::opts_chunk$set( | |||
| [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 | |||
| [r4ds]: http://r4ds.had.co.nz/ | |||
| [r4ds-relational]: http://r4ds.had.co.nz/relational-data.html | |||
| [r4ds-set-ops]: http://r4ds.had.co.nz/relational-data.html#set-operations | |||
| [r4ds-tidy-data]: http://r4ds.had.co.nz/tidy-data.html#tidy-data-1 | |||
| [tidyverse]: https://tidyverse.org | |||
| [tidyr]: https://tidyr.tidyverse.org | |||
| # Tidy Animated Verbs | |||
| @@ -27,19 +32,23 @@ Garrick Aden-Buie -- [@grrrck](https://twitter.com/grrrck) -- [garrickade | |||
| [_-CC0-green.svg)](https://creativecommons.org/publicdomain/zero/1.0/) | |||
| [_-MIT-green.svg)](https://opensource.org/licenses/MIT) | |||
| - Mutating Joins: [`inner_join()`](#inner-join), [`left_join()`](#left-join), | |||
| - [**Mutating Joins**](#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) | |||
| - [**Filtering Joins**](#filtering-joins) — [`semi_join()`](#semi-join), [`anti_join()`](#anti-join) | |||
| - Set Operations: [`union()`](#union), [`union_all()`](#union-all), [`intersect()`](#intersect), [`setdiff()`](#setdiff) | |||
| - [**Set Operations**](#set-operations) — [`union()`](#union), [`union_all()`](#union-all), [`intersect()`](#intersect), [`setdiff()`](#setdiff) | |||
| - Tidy Data: [`spread()` and `gather()`](#spread-and-gather) | |||
| - [**Tidy Data**](#tidy-data) — [`spread()` and `gather()`](#spread-and-gather) | |||
| - Learn more about | |||
| - [Using the animations and images](#usage) | |||
| - [Relational Data](#relational-data) | |||
| - [gganimate](#gganimate) | |||
| ## Background | |||
| ### Usage | |||
| 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. | |||
| @@ -47,8 +56,28 @@ You can directly download the [original animations](images/) or static images in | |||
| 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) | |||
| ### Relational Data | |||
| The [Relational Data][r4ds-relational] chapter of the | |||
| [R for Data Science][r4ds] 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. | |||
| ## Mutating Joins | |||
| > A mutating join allows you to combine variables from two tables. It first matches observations by their keys, then copies across variables from one table to the other. | |||
| > [R for Data Science: Mutating joins](http://r4ds.had.co.nz/relational-data.html#mutating-joins) | |||
| ```{r intial-dfs} | |||
| source("R/00_base_join.R") | |||
| df_names <- data_frame( | |||
| @@ -144,6 +173,11 @@ full_join(x, y, by = "id") | |||
| ## Filtering Joins | |||
| > Filtering joins match observations in the same way as mutating joins, but affect the observations, not the variables. | |||
| > ... Semi-joins are useful for matching filtered summary tables back to the original rows. | |||
| > ... Anti-joins are useful for diagnosing join mismatches. | |||
| > [R for Data Science: Filtering Joins](http://r4ds.had.co.nz/relational-data.html#filtering-joins) | |||
| ### Semi Join | |||
| > All rows from `x` where there are matching values in `y`, keeping just columns from `x`. | |||
| @@ -174,6 +208,11 @@ anti_join(x, y, by = "id") | |||
| ## Set Operations | |||
| > Set operations are occasionally useful when you want to break a single complex filter into simpler pieces. | |||
| > All these operations work with a complete row, comparing the values of every variable. | |||
| > These expect the x and y inputs to have the same variables, and treat the observations like sets. | |||
| > [R for Data Science: Set operations](http://r4ds.had.co.nz/relational-data.html#set-operations) | |||
| ```{r intial-dfs-so} | |||
| source("R/00_base_set.R") | |||
| df_names <- data_frame( | |||
| @@ -277,6 +316,14 @@ setdiff(y, x) | |||
| ## Tidy Data | |||
| [Tidy data][r4ds-tidy-data] follows the following three rules: | |||
| 1. Each variable has its own column. | |||
| 1. Each observation has its own row. | |||
| 1. Each value has its own cell. | |||
| Many of the tools in the [tidyverse] expect data to be formatted as a tidy dataset and the [tidyr] package provides functions to help you organize your data into tidy data. | |||
| ```{r tidyr-wide-long} | |||
| source("R/tidyr_spread_gather.R") | |||
| @@ -297,15 +344,22 @@ save_static_plot(cowplot::plot_grid(plotlist = tidy_plots, axis = "t"), "origina | |||
|  | |||
| ```{r echo=TRUE} | |||
| wide | |||
| long | |||
| ``` | |||
| ### Spread and Gather | |||
| `spread(data, key, value)` | |||
| > Spread a key-value pair across multiple columns. | |||
| > Spread a key-value pair across multiple columns. | |||
| > Use it when an a column contains observations from multiple variables. | |||
| `gather(data, key = "key", value = "value", ...)` | |||
| > Gather takes multiple columns and collapses into key-value pairs, duplicating all other columns as needed. You use `gather()` when you notice that you have columns that are not variables. | |||
| > Gather takes multiple columns and collapses into key-value pairs, duplicating all other columns as needed. | |||
| > You use `gather()` when you notice that your column names are not names of variables, but *values* of a variable. | |||
|  | |||
| @@ -313,22 +367,3 @@ save_static_plot(cowplot::plot_grid(plotlist = tidy_plots, axis = "t"), "origina | |||
| gather(wide, key, val, x:z) | |||
| spread(long, key, val) | |||
| ``` | |||
| ## 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. | |||
| @@ -12,23 +12,30 @@ Smith](https://github.com/TylerGrantSmith). | |||
| [_-CC0-green.svg)](https://creativecommons.org/publicdomain/zero/1.0/) | |||
| [_-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) | |||
| - [**Mutating Joins**](#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) | |||
| - [**Filtering Joins**](#filtering-joins) — | |||
| [`semi_join()`](#semi-join), [`anti_join()`](#anti-join) | |||
| - Set Operations: [`union()`](#union), [`union_all()`](#union-all), | |||
| [`intersect()`](#intersect), [`setdiff()`](#setdiff) | |||
| - [**Set Operations**](#set-operations) — [`union()`](#union), | |||
| [`union_all()`](#union-all), [`intersect()`](#intersect), | |||
| [`setdiff()`](#setdiff) | |||
| - Tidy Data: [`spread()` and `gather()`](#spread-and-gather) | |||
| - [**Tidy Data**](#tidy-data) — [`spread()` and | |||
| `gather()`](#spread-and-gather) | |||
| - Learn more about | |||
| - [Using the animations and images](#usage) | |||
| - [Relational Data](#relational-data) | |||
| - [gganimate](#gganimate) | |||
| ## Background | |||
| ### Usage | |||
| 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 | |||
| @@ -41,8 +48,36 @@ to expand the animations to include more verbs from the tidyverse. | |||
| [Suggestions are | |||
| welcome\!](https://github.com/gadenbuie/tidy-animated-verbs/issues) | |||
| ### Relational Data | |||
| The [Relational Data](http://r4ds.had.co.nz/relational-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](https://dplyr.tidyverse.org/articles/two-table.html) 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](https://github.com/thomasp85/gganimate#README) package by | |||
| [Thomas Lin Pedersen](https://github.com/thomasp85) (original by [Dave | |||
| Robinson](https://github.com/dgrtwo)). The [package | |||
| readme](https://github.com/thomasp85/gganimate#README) provides an | |||
| excellent (and quick) introduction to gganimte. | |||
| ## Mutating Joins | |||
| > A mutating join allows you to combine variables from two tables. It | |||
| > first matches observations by their keys, then copies across variables | |||
| > from one table to the other. | |||
| > [R for Data Science: Mutating | |||
| > joins](http://r4ds.had.co.nz/relational-data.html#mutating-joins) | |||
| <img src="images/static/png/original-dfs.png" width="480px" /> | |||
| ``` r | |||
| @@ -158,6 +193,13 @@ full_join(x, y, by = "id") | |||
| ## Filtering Joins | |||
| > Filtering joins match observations in the same way as mutating joins, | |||
| > but affect the observations, not the variables. … Semi-joins are | |||
| > useful for matching filtered summary tables back to the original rows. | |||
| > … Anti-joins are useful for diagnosing join mismatches. | |||
| > [R for Data Science: Filtering | |||
| > Joins](http://r4ds.had.co.nz/relational-data.html#filtering-joins) | |||
| ### Semi Join | |||
| > All rows from `x` where there are matching values in `y`, keeping just | |||
| @@ -191,6 +233,14 @@ anti_join(x, y, by = "id") | |||
| ## Set Operations | |||
| > Set operations are occasionally useful when you want to break a single | |||
| > complex filter into simpler pieces. All these operations work with a | |||
| > complete row, comparing the values of every variable. These expect the | |||
| > x and y inputs to have the same variables, and treat the observations | |||
| > like sets. | |||
| > [R for Data Science: Set | |||
| > operations](http://r4ds.had.co.nz/relational-data.html#set-operations) | |||
| <img src="images/static/png/original-dfs-set-ops.png" width="480px" /> | |||
| ``` r | |||
| @@ -299,19 +349,52 @@ setdiff(y, x) | |||
| ## Tidy Data | |||
| [Tidy data](http://r4ds.had.co.nz/tidy-data.html#tidy-data-1) follows | |||
| the following three rules: | |||
| 1. Each variable has its own column. | |||
| 2. Each observation has its own row. | |||
| 3. Each value has its own cell. | |||
| Many of the tools in the [tidyverse](https://tidyverse.org) expect data | |||
| to be formatted as a tidy dataset and the | |||
| [tidyr](https://tidyr.tidyverse.org) package provides functions to help | |||
| you organize your data into tidy data. | |||
|  | |||
| ``` r | |||
| wide | |||
| #> # A tibble: 2 x 4 | |||
| #> id x y z | |||
| #> <int> <chr> <chr> <chr> | |||
| #> 1 1 a c e | |||
| #> 2 2 b d f | |||
| long | |||
| #> # A tibble: 6 x 3 | |||
| #> id key val | |||
| #> <int> <chr> <chr> | |||
| #> 1 1 x a | |||
| #> 2 2 x b | |||
| #> 3 1 y c | |||
| #> 4 2 y d | |||
| #> 5 1 z e | |||
| #> 6 2 z f | |||
| ``` | |||
| ### Spread and Gather | |||
| `spread(data, key, value)` | |||
| > Spread a key-value pair across multiple columns. | |||
| > Spread a key-value pair across multiple columns. Use it when an a | |||
| > column contains observations from multiple variables. | |||
| `gather(data, key = "key", value = "value", ...)` | |||
| > Gather takes multiple columns and collapses into key-value pairs, | |||
| > duplicating all other columns as needed. You use `gather()` when you | |||
| > notice that you have columns that are not variables. | |||
| > notice that your column names are not names of variables, but *values* | |||
| > of a variable. | |||
|  | |||
| @@ -333,27 +416,3 @@ spread(long, key, val) | |||
| #> 1 1 a c e | |||
| #> 2 2 b d f | |||
| ``` | |||
| ## 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](https://dplyr.tidyverse.org/articles/two-table.html) 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](https://github.com/thomasp85/gganimate#README) package by | |||
| [Thomas Lin Pedersen](https://github.com/thomasp85) (original by [Dave | |||
| Robinson](https://github.com/dgrtwo)). The [package | |||
| readme](https://github.com/thomasp85/gganimate#README) provides an | |||
| excellent (and quick) introduction to gganimte. | |||