I am running multiple models on multiple sections of my data set, similar to (but with many more models)

```
library(tidyverse)
d1 <- mtcars %>%
group_by(cyl) %>%
do(mod_linear = lm(mpg ~ disp + hp, data = ., x = TRUE))
d1
# Source: local data frame [3 x 3]
# Groups: <by row>
#
# # A tibble: 3 x 3
# cyl mod_linear
# * <dbl> <list>
# 1 4. <S3: lm>
# 2 6. <S3: lm>
# 3 8. <S3: lm>
```

I then tidy this tibble and save my parameter estimates using `tidy()`

in the broom package.

I also want to calculate the standard deviation of the predictors (stored in models above as I set `x = TRUE`

) to create and then compare re-scaled parameters. I can do the former of these using

```
d1 %>%
# group_by(cyl) %>%
do(term = colnames(.$mod$x),
pred_sd = apply(X = .$mod$x, MARGIN = 2, FUN = sd)) %>%
unnest()
# # A tibble: 9 x 2
# term pred_sd
# <chr> <dbl>
# 1 (Intercept) 0.00000
# 2 disp 26.87159
# 3 hp 20.93453
# 4 (Intercept) 0.00000
# 5 disp 41.56246
# 6 hp 24.26049
# 7 (Intercept) 0.00000
# 8 disp 67.77132
# 9 hp 50.97689
```

However, the result is not a grouped tibble so I end up loosing the `cyl`

column to tell me which terms belong to which model. How can avoid this loss? - Adding in `group_by`

again seems to throw an error.

n.b. I want avoid using purrr for at least for the first part (fitting the models) as I run different types of models and then need to reshape the results (`d1`

), and I like the progress bar with `do`

.

n.b. I want to work with the `$x`

component of the models rather than the raw data as they have the data on correct scale (I am experimenting with different transformations of the predictors)