# How to check if two data frames are equal [duplicate]

Say I have large datasets in R and I just want to know whether two of them they are the same. I use this often when I'm experimenting different algorithms to achieve the same result. For example, say we have the following datasets:

``````df1 <- data.frame(num = 1:5, let = letters[1:5])
df2 <- df1
df3 <- data.frame(num = c(1:5, NA), let = letters[1:6])
df4 <- df3
``````

So this is what I do to compare them:

``````table(x == y, useNA = 'ifany')
``````

Which works great when the datasets have no NAs:

``````> table(df1 == df2, useNA = 'ifany')
TRUE
10
``````

But not so much when they have NAs:

``````> table(df3 == df4, useNA = 'ifany')
TRUE <NA>
11    1
``````

In the example, it's easy to dismiss the `NA` as not a problem since we know that both dataframes are equal. The problem is that `NA == <anything>` yields `NA`, so whenever one of the datasets has an `NA`, it doesn't matter what the other one has on that same position, the result is always going to be `NA`.

So using `table()` to compare datasets doesn't seem ideal to me. How can I better check if two data frames are identical?

P.S.: Note this is not a duplicate of R - comparing several datasets, Comparing 2 datasets in R or Compare datasets in R

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## marked as duplicate by Waldir Leoncio, Frank, Thomas, plannapus, Ferdinand.kraftOct 6 '13 at 19:42

`identical(df1,df2)` – Metrics Oct 1 '13 at 15:08
@Frank, I believe the solutions are common and the problems are roughly the same (let's not get into semantics about the difference between a matrix and a data frame). However, to help future searches, I believe both Qs should be kept. BTW, your link targets this same page, here's the URL to that other question: stackoverflow.com/questions/11767851/… – Waldir Leoncio Oct 1 '13 at 17:53
Oh, oops. Thanks for getting the right link. I don't think there's anything wrong with having dupes, but it might be better to link them together (if/when they actually are dupes), based on what I've browsed on meta and the blog. Just a thought. – Frank Oct 1 '13 at 18:08
Yeah, I meant that we could mark this as a dupe, just because it came later. You have an answer, so I figured you wouldn't mind. If you agree, you could flag it for closure as a dupe or I could start a vote. (None have been started.) – Frank Oct 1 '13 at 18:37
@Frank: all right, I'll do it. It's harakiri time! – Waldir Leoncio Oct 1 '13 at 19:11

Look up all.equal. It has some riders but it might work for you.

``````all.equal(df3,df4)
# [1] TRUE
all.equal(df2,df1)
# [1] TRUE
``````
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I just got to know this function and will further test it to see if it really works for this particular task, but so far, so good. Thanks! – Waldir Leoncio Oct 1 '13 at 14:55
It's important to note that if the items being compared are NOT equal, then `all.equal` will not return `FALSE`. Instead, you have to use `isTRUE( all.equal(df2,df1) )` to get a `TRUE/FALSE` output from `all.equal` – Ricardo Saporta Oct 1 '13 at 16:41
@RicardoSaporta, you're right, but in that case I believe it is better to just go ahead and use `identical()`, as @Metrics suggested above. The thing about `all.equal()` is that returns a vector "describing the differences between target and current", which can be good or bad depending on what kind of output you're looking for. – Waldir Leoncio Oct 1 '13 at 18:07

As Metrics pointed out, one could also use `identical()` to compare the datasets. The difference between this approach and that of Codoremifa is that `identical()` will just yield `TRUE` of `FALSE`, depending whether the objects being compared are identical or not, whereas `all.equal()` will either return `TRUE` or hints about the differences between the objects. For instance, consider the following:

``````> identical(df1, df3)
[1] FALSE

> all.equal(df1, df3)
[1] "Attributes: < Component 2: Numeric: lengths (5, 6) differ >"
[2] "Component 1: Numeric: lengths (5, 6) differ"
[3] "Component 2: Lengths: 5, 6"
[4] "Component 2: Attributes: < Component 2: Lengths (5, 6) differ (string compare on first 5) >"
[5] "Component 2: Lengths (5, 6) differ (string compare on first 5)"
``````

Moreover, from what I've tested `identical()` seems to run much faster than `all.equal()`.

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