A slightly changed example from the R help for do():

```
by_cyl <- group_by(mtcars, cyl)
models <- by_cyl %>% do(mod = lm(mpg ~ disp, data = .))
coefficients<-models %>% do(data.frame(coef = coef(.$mod)[[1]]))
```

In the dataframe *coefficients*, there is the first coefficient of the linear model for each *cyl* group. My question is how can I produce a dataframe that contains not only a column with the coefficients, but also a column with the grouping variable.

===== Edit: I extend the example to try to make more clear my problem

Let's suppose that I want to extract the coefficients of the model and some prediction. I can do this:

```
by_cyl <- group_by(mtcars, cyl)
getpars <- function(df){
fit <- lm(mpg ~ disp, data = df)
data.frame(intercept=coef(fit)[1],slope=coef(fit)[2])
}
getprediction <- function(df){
fit <- lm(mpg ~ disp, data = df)
x <- df$disp
y <- predict(fit, data.frame(disp= x), type = "response")
data.frame(x,y)
}
pars <- by_cyl %>% do(getpars(.))
prediction <- by_cyl %>% do(getprediction(.))
```

The problem is that the code is redundant because I am fitting the model two times. My idea was to build a function that returns a list with all the information:

```
getAll <- function(df){
results<-list()
fit <- lm(mpg ~ disp, data = df)
x <- df$disp
y <- predict(fit, data.frame(disp= x), type = "response")
results$pars <- data.frame(intercept=coef(fit)[1],slope=coef(fit)[2])
results$prediction <- data.frame(x,y)
results
}
```

The problem is that I don't know how to use do() with the function getAll to obtain for example just a dataframe with the parameters (like the dataframe pars).

`summarise`

instead of the second`do`

. summarise(models, coef = coef(summary(mod))[[1]],group=cyl)1more comment