# How do I make a list of data frames?

How do I make a list of data frames and how do I access each of those data frames from the list?

For example, how can I put these data frames in a list ?

``````d1 <- data.frame(y1 = c(1, 2, 3),
y2 = c(4, 5, 6))
d2 <- data.frame(y1 = c(3, 2, 1),
y2 = c(6, 5, 4))
``````
• This is in a couple answers, but it's worth having a visible comment here too: use `=` not `<-` inside `data.frame()`. By using `<-` you create `y1` and `y2` in your global environment and your data frame isn't what you want it to be. – Gregor Thomas Feb 20 '15 at 17:21
• Look at that mess of code with no spaces and `<-`s inside data.frame(). What a newb I was. – Ben Jul 24 '15 at 14:47
• Not anymore. I just edited your question to fix the code formatting. Feel free to revert if you feel nostalgic. – Claus Wilke Dec 11 '17 at 1:32

## 8 Answers

This isn't related to your question, but you want to use `=` and not `<-` within the function call. If you use `<-`, you'll end up creating variables `y1` and `y2` in whatever environment you're working in:

``````d1 <- data.frame(y1 <- c(1, 2, 3), y2 <- c(4, 5, 6))
y1
#  1 2 3
y2
#  4 5 6
``````

This won't have the seemingly desired effect of creating column names in the data frame:

``````d1
#   y1....c.1..2..3. y2....c.4..5..6.
# 1                1                4
# 2                2                5
# 3                3                6
``````

The `=` operator, on the other hand, will associate your vectors with arguments to `data.frame`.

As for your question, making a list of data frames is easy:

``````d1 <- data.frame(y1 = c(1, 2, 3), y2 = c(4, 5, 6))
d2 <- data.frame(y1 = c(3, 2, 1), y2 = c(6, 5, 4))
my.list <- list(d1, d2)
``````

You access the data frames just like you would access any other list element:

``````my.list[]
#   y1 y2
# 1  1  4
# 2  2  5
# 3  3  6
``````

The other answers show you how to make a list of data.frames when you already have a bunch of data.frames, e.g., `d1`, `d2`, .... Having sequentially named data frames is a problem, and putting them in a list is a good fix, but best practice is to avoid having a bunch of data.frames not in a list in the first place.

The other answers give plenty of detail of how to assign data frames to list elements, access them, etc. We'll cover that a little here too, but the Main Point is to say don't wait until you have a bunch of a `data.frames` to add them to a list. Start with the list.

The rest of the this answer will cover some common cases where you might be tempted to create sequential variables, and show you how to go straight to lists. If you're new to lists in R, you might want to also read What's the difference between `[[` and `[` in accessing elements of a list?.

## Lists from the start

Don't ever create `d1` `d2` `d3`, ..., `dn` in the first place. Create a list `d` with `n` elements.

### Reading multiple files into a list of data frames

This is done pretty easily when reading in files. Maybe you've got files `data1.csv, data2.csv, ...` in a directory. Your goal is a list of data.frames called `mydata`. The first thing you need is a vector with all the file names. You can construct this with paste (e.g., `my_files = paste0("data", 1:5, ".csv")`), but it's probably easier to use `list.files` to grab all the appropriate files: `my_files <- list.files(pattern = "\\.csv\$")`. You can use regular expressions to match the files, read more about regular expressions in other questions if you need help there. This way you can grab all CSV files even if they don't follow a nice naming scheme. Or you can use a fancier regex pattern if you need to pick certain CSV files out from a bunch of them.

At this point, most R beginners will use a `for` loop, and there's nothing wrong with that, it works just fine.

``````my_data <- list()
for (i in seq_along(my_files)) {
my_data[[i]] <- read.csv(file = my_files[i])
}
``````

A more R-like way to do it is with `lapply`, which is a shortcut for the above

``````my_data <- lapply(my_files, read.csv)
``````

Of course, substitute other data import function for `read.csv` as appropriate. `readr::read_csv` or `data.table::fread` will be faster, or you may also need a different function for a different file type.

Either way, it's handy to name the list elements to match the files

``````names(my_data) <- gsub("\\.csv\$", "", my_files)
# or, if you prefer the consistent syntax of stringr
names(my_data) <- stringr::str_replace(my_files, pattern = ".csv", replacement = "")
``````

### Splitting a data frame into a list of data frames

This is super-easy, the base function `split()` does it for you. You can split by a column (or columns) of the data, or by anything else you want

``````mt_list = split(mtcars, f = mtcars\$cyl)
# This gives a list of three data frames, one for each value of cyl
``````

This is also a nice way to break a data frame into pieces for cross-validation. Maybe you want to split `mtcars` into training, test, and validation pieces.

``````groups = sample(c("train", "test", "validate"),
size = nrow(mtcars), replace = TRUE)
mt_split = split(mtcars, f = groups)
# and mt_split has appropriate names already!
``````

### Simulating a list of data frames

Maybe you're simulating data, something like this:

``````my_sim_data = data.frame(x = rnorm(50), y = rnorm(50))
``````

But who does only one simulation? You want to do this 100 times, 1000 times, more! But you don't want 10,000 data frames in your workspace. Use `replicate` and put them in a list:

``````sim_list = replicate(n = 10,
expr = {data.frame(x = rnorm(50), y = rnorm(50))},
simplify = F)
``````

In this case especially, you should also consider whether you really need separate data frames, or would a single data frame with a "group" column work just as well? Using `data.table` or `dplyr` it's quite easy to do things "by group" to a data frame.

### I didn't put my data in a list :( I will next time, but what can I do now?

If they're an odd assortment (which is unusual), you can simply assign them:

``````mylist <- list()
mylist[] <- mtcars
mylist[] <- data.frame(a = rnorm(50), b = runif(50))
...
``````

If you have data frames named in a pattern, e.g., `df1`, `df2`, `df3`, and you want them in a list, you can `get` them if you can write a regular expression to match the names. Something like

``````df_list = mget(ls(pattern = "df[0-9]"))
# this would match any object with "df" followed by a digit in its name
# you can test what objects will be got by just running the
ls(pattern = "df[0-9]")
# part and adjusting the pattern until it gets the right objects.
``````

Generally, `mget` is used to get multiple objects and return them in a named list. Its counterpart `get` is used to get a single object and return it (not in a list).

### Combining a list of data frames into a single data frame

A common task is combining a list of data frames into one big data frame. If you want to stack them on top of each other, you would use `rbind` for a pair of them, but for a list of data frames here are three good choices:

``````# base option - slower but not extra dependencies
big_data = do.call(what = rbind, args = df_list)

# data table and dplyr have nice functions for this that
#  - are much faster
#  - add id columns to identify the source
#  - fill in missing values if some data frames have more columns than others
# see their help pages for details
big_data = data.table::rbindlist(df_list)
big_data = dplyr::bind_rows(df_list)
``````

(Similarly using `cbind` or `dplyr::bind_cols` for columns.)

To merge (join) a list of data frames, you can see these answers. Often, the idea is to use `Reduce` with `merge` (or some other joining function) to get them together.

## Why put the data in a list?

Put similar data in lists because you want to do similar things to each data frame, and functions like `lapply`, `sapply` `do.call`, the `purrr` package, and the old `plyr` `l*ply` functions make it easy to do that. Examples of people easily doing things with lists are all over SO.

Even if you use a lowly for loop, it's much easier to loop over the elements of a list than it is to construct variable names with `paste` and access the objects with `get`. Easier to debug, too.

Think of scalability. If you really only need three variables, it's fine to use `d1`, `d2`, `d3`. But then if it turns out you really need 6, that's a lot more typing. And next time, when you need 10 or 20, you find yourself copying and pasting lines of code, maybe using find/replace to change `d14` to `d15`, and you're thinking this isn't how programming should be. If you use a list, the difference between 3 cases, 30 cases, and 300 cases is at most one line of code---no change at all if your number of cases is automatically detected by, e.g., how many `.csv` files are in your directory.

You can name the elements of a list, in case you want to use something other than numeric indices to access your data frames (and you can use both, this isn't an XOR choice).

Overall, using lists will lead you to write cleaner, easier-to-read code, which will result in fewer bugs and less confusion.

• Which book do you recommend that covers working with lists? – Derelict Jan 14 '16 at 16:45
• I recommend reading questions and answers on Stack Overflow that are tagged with both `r` and `list`. – Gregor Thomas Feb 9 '16 at 17:31
• @Gregor I'd like to add that we can to avoid name the list elements to match the files just simply by assigning the `my_data <- NULL` rather than `my_data <- list()'! :) – Daniel Mar 6 '17 at 23:13
• It's possible, but `my_data <- list()` makes it clear you are creating a list, which is good! Clear code is a good thing. I don't see any advantage to using `my_data <- NULL` instead. – Gregor Thomas Mar 6 '17 at 23:17
• I agree, about what you said, but like I said, doing so you can escape the stage of naming the files. `names(my_data) <- gsub("\\.csv\$", "", my_files)` ;) <br> But I Do respect your advises as I am learning a lot from them as newbie and I do really appreciate it :) – Daniel Mar 6 '17 at 23:22

You can also access specific columns and values in each list element with `[` and `[[`. Here are a couple of examples. First, we can access only the first column of each data frame in the list with `lapply(ldf, "[", 1)`, where `1` signifies the column number.

``````ldf <- list(d1 = d1, d2 = d2)  ## create a named list of your data frames
lapply(ldf, "[", 1)
# \$d1
#   y1
# 1  1
# 2  2
# 3  3
#
# \$d2
#   y1
# 1  3
# 2  2
# 3  1
``````

Similarly, we can access the first value in the second column with

``````lapply(ldf, "[", 1, 2)
# \$d1
#  4
#
# \$d2
#  6
``````

Then we can also access the column values directly, as a vector, with `[[`

``````lapply(ldf, "[[", 1)
# \$d1
#  1 2 3
#
# \$d2
#  3 2 1
``````

If you have a large number of sequentially named data frames you can create a list of the desired subset of data frames like this:

``````d1 <- data.frame(y1=c(1,2,3), y2=c(4,5,6))
d2 <- data.frame(y1=c(3,2,1), y2=c(6,5,4))
d3 <- data.frame(y1=c(6,5,4), y2=c(3,2,1))
d4 <- data.frame(y1=c(9,9,9), y2=c(8,8,8))

my.list <- list(d1, d2, d3, d4)
my.list

my.list2 <- lapply(paste('d', seq(2,4,1), sep=''), get)
my.list2
``````

where `my.list2` returns a list containing the 2nd, 3rd and 4th data frames.

``````[]
y1 y2
1  3  6
2  2  5
3  1  4

[]
y1 y2
1  6  3
2  5  2
3  4  1

[]
y1 y2
1  9  8
2  9  8
3  9  8
``````

Note, however, that the data frames in the above list are no longer named. If you want to create a list containing a subset of data frames and want to preserve their names you can try this:

``````list.function <-  function() {

d1 <- data.frame(y1=c(1,2,3), y2=c(4,5,6))
d2 <- data.frame(y1=c(3,2,1), y2=c(6,5,4))
d3 <- data.frame(y1=c(6,5,4), y2=c(3,2,1))
d4 <- data.frame(y1=c(9,9,9), y2=c(8,8,8))

sapply(paste('d', seq(2,4,1), sep=''), get, environment(), simplify = FALSE)
}

my.list3 <- list.function()
my.list3
``````

which returns:

``````> my.list3
\$d2
y1 y2
1  3  6
2  2  5
3  1  4

\$d3
y1 y2
1  6  3
2  5  2
3  4  1

\$d4
y1 y2
1  9  8
2  9  8
3  9  8

> str(my.list3)
List of 3
\$ d2:'data.frame':     3 obs. of  2 variables:
..\$ y1: num [1:3] 3 2 1
..\$ y2: num [1:3] 6 5 4
\$ d3:'data.frame':     3 obs. of  2 variables:
..\$ y1: num [1:3] 6 5 4
..\$ y2: num [1:3] 3 2 1
\$ d4:'data.frame':     3 obs. of  2 variables:
..\$ y1: num [1:3] 9 9 9
..\$ y2: num [1:3] 8 8 8

> my.list3[]
y1 y2
1  3  6
2  2  5
3  1  4

> my.list3\$d4
y1 y2
1  9  8
2  9  8
3  9  8
``````
• Instead of `lapply(foo, get)`, just use `mget(foo)` – Gregor Thomas Nov 21 '17 at 18:32

Taking as a given you have a "large" number of data.frames with similar names (here d# where # is some positive integer), the following is a slight improvement of @mark-miller's method. It is more terse and returns a named list of data.frames, where each name in the list is the name of the corresponding original data.frame.

The key is using `mget` together with `ls`. If the data frames d1 and d2 provided in the question were the only objects with names d# in the environment, then

``````my.list <- mget(ls(pattern="^d[0-9]+"))
``````

which would return

``````my.list
\$d1
y1 y2
1  1  4
2  2  5
3  3  6

\$d2
y1 y2
1  3  6
2  2  5
3  1  4
``````

This method takes advantage of the pattern argument in `ls`, which allows us to use regular expressions to do a finer parsing of the names of objects in the environment. An alternative to the regex `"^d[0-9]+\$"` is `"^d\\d+\$"`.

As @gregor points out, it is a better overall to set up your data construction process so that the data.frames are put into named lists at the start.

data

``````d1 <- data.frame(y1 = c(1,2,3),y2 = c(4,5,6))
d2 <- data.frame(y1 = c(3,2,1),y2 = c(6,5,4))
``````

This may be a little late but going back to your example I thought I would extend the answer just a tad.

`````` D1 <- data.frame(Y1=c(1,2,3), Y2=c(4,5,6))
D2 <- data.frame(Y1=c(3,2,1), Y2=c(6,5,4))
D3 <- data.frame(Y1=c(6,5,4), Y2=c(3,2,1))
D4 <- data.frame(Y1=c(9,9,9), Y2=c(8,8,8))
``````

Then you make your list easily:

``````mylist <- list(D1,D2,D3,D4)
``````

Now you have a list but instead of accessing the list the old way such as

``````mylist[] # to access 'd1'
``````

you can use this function to obtain & assign the dataframe of your choice.

``````GETDF_FROMLIST <- function(DF_LIST, ITEM_LOC){
DF_SELECTED <- DF_LIST[[ITEM_LOC]]
return(DF_SELECTED)
}
``````

Now get the one you want.

``````D1 <- GETDF_FROMLIST(mylist, 1)
D2 <- GETDF_FROMLIST(mylist, 2)
D3 <- GETDF_FROMLIST(mylist, 3)
D4 <- GETDF_FROMLIST(mylist, 4)
``````

Hope that extra bit helps.

Cheers!

• Yes I know but for some reason when I copied and pasted, everything went to caps. :( In any event the code in lower case works. – ML_for_now Jun 23 '14 at 15:47
• I'm curious why you would prefer `GETDF_FROMLIST(mylist, 1)` to `mylist[]`? If you prefer function syntax you could even do `"[["(mylist, 1)` without defining a custom function. – Gregor Thomas Jan 5 '16 at 17:29
• You could also simplify your function definition, the entire body of the function could just be `return(DF_LIST[[ITEM_LOC]])`, no need to assign an intermediate variable. – Gregor Thomas Jan 5 '16 at 17:30

I consider myself a complete newbie, but I think I have an extremely simple answer to one of the original subquestions that has not been stated here: accessing the data frames, or parts of it.

Let's start by creating the list with data frames as was stated above:

``````d1 <- data.frame(y1 = c(1, 2, 3), y2 = c(4, 5, 6))

d2 <- data.frame(y1 = c(3, 2, 1), y2 = c(6, 5, 4))

my.list <- list(d1, d2)
``````

Then, if you want to access a specific value in one of the data frames, you can do so by using the double brackets sequentially. The first set gets you into the data frame, and the second set gets you to the specific coordinates:

``````my.list[][[3,2]]

 6
``````

Very simple ! Here is my suggestion :

If you want to select dataframes in your workspace, try this :

``````Filter(function(x) is.data.frame(get(x)) , ls())
``````

or

``````ls()[sapply(ls(), function(x) is.data.frame(get(x)))]
``````

all these will give the same result.

You can change `is.data.frame` to check other types of variables like `is.function`