26

I have a list() of dataframes. I want to apply dplyr's filter() to all of them.

Example code of what I have tried so far...

require(dplyr)
list.DFs <- list(df1,df2)
lapply(
  X = list.DFS,
  FUN = filter(Gold.fish.count=="Total")
)

But this gives an error: Object 'Gold.fish.count' not found.

1
  • 3
    Could also try SE for this, something like lapply(list.DFS, dplyr::filter_, "Gold.fish.count=='Total'") or just do the whole thing in base R lapply(list.DFS, subset, Gold.fish.count=='Total') Commented Mar 19, 2017 at 7:47

2 Answers 2

38

Using purrr

library(purrr)
map(list.DFs, ~filter(.x, Gold.fish.count == "Total"))

Obviously, you can do exactly the same with lapply:

lapply(list.DFs, function(x) filter(x, Gold.fish.count == "Total"))
5
  • Both this answer and David Arenburg's show me in the console the filtered datasets. But in neither case is the filtered data frame saved to a variable. But this does answer the question as asked.
    – Username
    Commented Mar 19, 2017 at 17:04
  • 1
    to save to a variable, just place variable <- at the beginning of the line
    – yeedle
    Commented Mar 19, 2017 at 17:07
  • 1
    I meant saving each changed dataframe to the variable in which it is stored.
    – Username
    Commented Mar 19, 2017 at 17:07
  • 4
    I'm not sure what you mean. If you want the filtered dataframes to be stored in a list assigned to the same variable, just overwrite the original list variable.
    – yeedle
    Commented Mar 19, 2017 at 17:11
  • I've added a response which might address the point in the first comment above. It adds the second part which I think @Username is looking for: to drop the data frames from the list where the condition is not met.
    – Bradford
    Commented Aug 4, 2022 at 21:14
1

Without having example data it's hard to identify exactly what you're after (check out how to use dput function in future). But some variation of the following might help:

indices <- sapply(list.DFs, function(x) x$Gold.fish.count == "Total")
list.DFs[indices]

The first line creates a list of logicals (True/False) where your condition is met. These logicals are then used to subset your original list of data frames.

If Gold.fish.count is a column that contains "Total" for every row then you can use an indexing variation:

indices <- sapply(list.DFs, function(x) x$Gold.fish.count[1] == "Total")
list.DFs[indices]

(Notice the additional [1].)

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