I am not able to understand exactly how this code works. I have found it on a tutorial guide:

Data manipulation in R - Steph Locke

on page 133 an example that I am able to understand only partially.

```
library(tidyverse)
library(nycflights13)
flights %>%
group_by(month, carrier) %>%
summarise(n=n()) %>% ##sum of items;
group_by(month) %>%
mutate(prop=scales::percent(n/sum(n)), n=NULL) %>%
spread(month, prop)
flights %>%
group_by(month, carrier) %>% ## This is grouping by months and within the months by carrier;
summarise(n=n()) %>% ## It is summing the items, giving for each month and each carrier the sum of items;
```

At this point there in another `group_by()`

, it looks like a nested to `group_by(month, carrier)`

Then:

```
mutate(prop=scales::percent(n/sum(n)), n=NULL) %>% ## Calculates the percentage of items over the total and store them in "prop"
```

Last line it creates the matrix, putting in the columns `month`

and inside the value obtained from `prop`

I would like to understand better what is doing exactly the second `group_by(month) %>%`

Thank you in advance for every reply.

`spread`

is just doing reshaping to wide format and not creating a matrix. The second group by is just updating the group attribute to a single column which is not really needed as by default`summarise`

uses`drop_last`

i..e the`carrier`

is not in the group attribute after the first summarise. You can remove the second group_by