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Assume that I have several dataframes in a workspace in R and I want a list of the names of the columns in all the dataframes.

I thought the following would work. But it does not. Try it in your own workspace.


Why does it not work? ls() creates a list of all the dataframes and then names function should be applied to each dataframe. That is my simple question for now.

Coming next: I want to determine all the columns that have a name with the letters "date" in them so that I can the apply the following function to each of those columns no matter what dataframe they are in.

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4 Answers 4

up vote 5 down vote accepted

It doesn't work because ls() returns the names of the objects in our workspace, not the objects themselves.

You probably want something like the following:

lapply(ls(), function(x) if( <- get(x))) names(o))

This will have NULL elements for any objects that are not data frames, but presumably you can work around that.

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thanks for explaining the need for the "get" function. Your one line got me what I was looking for. I adapted it using the suggestion of Chase. I made the whole line. lapply(ls(), function(x) grep("date|started",if( <- get(x))) names(o),,value=TRUE)). That way it displays the names of variables that have "date" or "started" in them. – Farrel Mar 28 '11 at 12:56
Assignment inside an if statement. shudder – hadley Mar 28 '11 at 13:01

The first part of your question can be answered with allNames <- lapply(ls(), function(x) names(get(x))). Using one of the regex functions to determine the columns of interest should also be pretty straight forward with something like lapply(allNames, function(x) grepl("date", x)). I'm running out of steam as to how to take those first two bits and update the columns, but maybe this will get you and others down the right path.

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Here is another solution with a simple example to accomplish both of your objectives. You can modify it quite easily to suit your situation. Let me know if you have questions.

# create a set of dummy data frames
df1 = data.frame(x = rnorm(100), y = rnorm(100))
df2 = data.frame(x = rnorm(100), z = rnorm(100))
ch1 = c('a', 'b', 'c')

# get all objects
all.obj = sapply(ls(), get)

# get data frames
dfrs = all.obj[sapply(all.obj,]

# get data frames containing 'x' as column name
dfrs2 = dfrs[lapply(dfrs, function(df) {'x' %in% names(df)}) == 'TRUE']

# replace x with square of x in all these data frames
dfrs3 = lapply(dfrs2, function(df) {df$x = df$x^2; df})
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There is no need for all the ; at the end of your lines of R code. – Gavin Simpson Mar 28 '11 at 9:12
nice work (+!)! The one downside to this approach is that it creates copies of the original objects and modifies those, not the original df1 and df2. You could run into memory issues with the extra copies of objects floating around in real world applications. – Chase Mar 28 '11 at 12:57
True. How would you suggest using lapply to modify the original objects inside the scope of the function? Do you think ->> is the way to go? – Ramnath Mar 28 '11 at 15:35
@ Gavin. I am aware that there is no need for the semi-colons. I keep it just in case the lines get muddled up and I need to cut paste the code in R console. – Ramnath Mar 28 '11 at 15:37
f <- function(){
lo <- ls(envir=.GlobalEnv)
lo <- lo[sapply(lo,function(x) eval(substitute(class(X)=="data.frame",
    res <- lapply(lo,function(x) eval(substitute(names(X),list(
    names(res) <- lo
} else res <- NULL


ls.names <- function(){
  res <- lapply(mapply(,ls(pos=1)),
                function(x) if(class(xe<-eval(x))=="data.frame") names(xe))
  res <- res[!unlist(lapply(res,is.null))]


eapply(env=.GlobalEnv,function(x) if( names(x))
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