I have over a 1000 objects (z) in R, each containing three dataframes (df1, df2, df3) with different structures.




I created a list of these objects (list1 thus contains z1 thru z1000) and tried to use lapply to extract one type of dataframe (df2) for all objects, and then merge them to one single dataframe.


For a single object it would look like this:

df15<- z15$df2 # I transferred the index of z to the extracted df

I tried some code with lapply, ignoring the transfer of the index (I can create another list for that). However I don’t know what function I should use.

List2 <- lapply(list1, function(x))

I try to avoid using a loop because there's so many and vectorization is so much quicker. I have the idea I'm looking at it from the wrong angle.

Subsequent merging can be done as follows:

merged <- do.call(rbind, list2)

Thanks for any suggestions.

  • 3
    Clarification: df1, df2, df3 have different structures but structures (number, name of columns) of all df1s in the 1000 z_n lists are identical? – vaettchen Jan 13 at 9:02
  • df15<- z15$df2 line is confusing. Why do you want to assign df2 type over df15? Don't you want to merge all df2 types together in one dataframe? – MKR Jan 13 at 11:05
  • 1
    df15 should read newdf15. The reason of transferring the id of the original file is because it allows me to trace back the origin of the data. Using pattern I can still merge with similar but not identical names – maurice vergeer Jan 13 at 12:07

It sounds like you want to pull out all the df1s and rbind them together then do the same for the other dataframes. You can use purrr::map_dfr to extract a column from each element of the list and rowbind them together.


dummy_df <- list(
  df1 = iris,
  df2 = cars,
  df3 = CO2)

list1 <- list(
  z1 = dummy_df,
  z2 = dummy_df,
  z3 = dummy_df)

df1 <- map_dfr(list1, 'df1')
df2 <- map_dfr(list1, 'df2')
df3 <- map_dfr(list1, 'df3')

If you wanted to do it in base R, you can use lapply.

df1 <- lapply(list1, function(x) x$df1)
df1_merged <- do.call(rbind, df1)
  • Good solution. I would have preferred bind_rows from dplyr to better speed. – MKR Jan 13 at 12:33

Try this:

lapply(list1, "[[", "df2")

or if you want to rbind them together:

do.call("rbind", lapply(list1, "[[", "df2"))

The row names in the resulting data frame will identify the origin of each row.

No packages are used.


We can use this input to test the code above. BOD is a built-in data frame:

z <- list(df1 = BOD, df2 = BOD, df3 = BOD)
list1 <- list(z1 = z, z2 = z)
  • Thanks for your code. I get the error message: "Error in FUN(X[[i]], ...) : subscript out of bounds" – maurice vergeer Jan 14 at 9:01
  • The code shown does not produce such error message with the input shown reproducibly in the Note but without a reproducible example one can't know what you have done. – G. Grothendieck Jan 14 at 13:56
  • Thanks, my original list was faulty. My mistake. That's why it did produced the error. Thanks for your contribution! – maurice vergeer Jan 15 at 3:06

One option could be using lapply to extract data.frame and then use bind_rows from dplyr.

## The data
df1 <- data.frame(id = c(1:10), name = c(LETTERS[1:10]), stringsAsFactors = FALSE)
df2 <- data.frame(id = 11:20, name = LETTERS[11:20], stringsAsFactors = FALSE)
df3 <- data.frame(id = 21:30, name = LETTERS[15:24], stringsAsFactors = FALSE)
df4 <- data.frame(id = 121:130, name = LETTERS[15:24], stringsAsFactors = FALSE)

z1 <- list(df1 = df1, df2 = df2, df3 = df3)
z2 <- list(df1 = df1, df2 = df2, df3 = df3)
z3 <- list(df1 = df1, df2 = df2, df3 = df3)
z4 <- list(df1 = df1, df2 = df2, df3 = df4) #DFs can contain different data

# z <- list(z1, z2, z3, z4)
# Dynamically populate list z with many list object
z <- as.list(mget(paste("z",1:4,sep="")))

df1_all <- bind_rows(lapply(z, function(x) x$df1))
df2_all <- bind_rows(lapply(z, function(x) x$df2))
df3_all <- bind_rows(lapply(z, function(x) x$df3))

## Result for df3_all
> tail(df3_all)
##    id name
## 35 125    S
## 36 126    T
## 37 127    U
## 38 128    V
## 39 129    W
## 40 130    X
  • Thnaks for your code. I get an error "Error in x$df1 : $ operator is invalid for atomic vectors" Is there a way to fix this? – maurice vergeer Jan 14 at 8:48
  • @mauricevergeer You can get that error if you don't pass list to lapply function. Are you using code posted in this answer? – MKR Jan 14 at 8:53
  • yes, I used the above suggested code. To make sure I used "as.list" to create the list. – maurice vergeer Jan 14 at 9:14
  • @mauricevergeer please share str(z) from your code. – MKR Jan 14 at 9:23
  • 1
    OK, my list was incorrect, made up of character: $ : chr "df84". I tried your way to create the list and that works. :-) SO I was able to create the merged dataframes for a limited number of objects. My final question is how I can create such a list not for four objects but for +1000 objects? Thanks for your input – maurice vergeer Jan 14 at 9:57

THere's also data.table::rbindlist, which is likely faster than do.call(rbind, lapply(...)) or dplyr::bind_rows

rbindlist(lapply(list1, "[[", "df2"))
  • Thanks, I'll try it. Not yet tried data.table in general, but read some very positive reviews about it. – maurice vergeer Jan 15 at 3:08

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