Stack Overflow is a community of 4.7 million programmers, just like you, helping each other.

Join them; it only takes a minute:

Sign up
Join the Stack Overflow community to:
  1. Ask programming questions
  2. Answer and help your peers
  3. Get recognized for your expertise

Given data like this


How do I go about removing the -999.000 data in all of the columns

I know this works per column

DF2<-DF[!(DF$C1==-999.000 | DF$C2==-999.000 | DF$C3==-999.000),]

But I'd like to avoid referencing each column. I am thinking there is an easy way to reference all of the columns in a particular data frame aka:




but obviously these do not work

And out of curiosity, bonus points if you can me why I need that last comma before the ending square bracket as in:

share|improve this question
To remark on an answer- I can have multiple -999 values in a given row – Vinterwoo Jun 11 '12 at 4:20
up vote 6 down vote accepted

The following may work


or if you can have multiple -999 on a row



share|improve this answer
loving the any function as well. Thanks! – Vinterwoo Jun 11 '12 at 5:12

Based on your code, I'll assume that you want to remove all rows that contain -999.

DF2 <- DF[rowSums(DF == -999) == 0, ]

As for your bonus question: A data frame is a list of vectors, all of which have the same length. If we think of the vectors as columns, then a data frame can be thought of as a matrix where the columns might have different types (numeric, character, etc). R allows you to refer to elements of a data frame much the same way you refer to elements of a matrix; by using row and column indices. So DF[i, j] refers to the ith element in the jth vector of DF, which you can think of as the ith row and jth column. So if you want to retain only some of the rows of the data frame and all columns, you can use a matrix-like notation: DF[row.indices, ].

share|improve this answer

To address your "bonus" question, if we go to the documentation for ? we will find:

Data frames can be indexed in several modes. When [ and [[ are used with a single index (x[i] or x[[i]]), they index the data frame as if it were a list. In this usage a drop argument is ignored, with a warning.

and also:

When [ and [[ are used with two indices (x[i, j] and x[[i, j]]) they act like indexing a matrix: [[ can only be used to select one element. Note that for each selected column, xj say, typically (if it is not matrix-like), the resulting column will be xj[i], and hence rely on the corresponding [ method, see the examples section.

So you need the comma to ensure that R knows you are referring to a row, not a column.

share|improve this answer

I don't understand if your target is to remove all the rows that contain at least one NA, if this is what you are looking for, then this could be a possible answer:

DF[DF==-999] <- NA
   ID C1 C2 C3
1  A  3  3  5
3  C  4  3  3
4  D  4  4  6
share|improve this answer

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.