# How to delete rows in multiple columns by unique number?

Given data like this

``````C1<-c(3,-999.000,4,4,5)
C2<-c(3,7,3,4,5)
C3<-c(5,4,3,6,-999.000)
DF<-data.frame(ID=c("A","B","C","D","E"),C1=C1,C2=C2,C3=C3)
``````

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:

``````DF3<-DF[!(DF[,]==-999.000),]
``````

or

``````DF3<-DF[!(DF[,(2:4)]==-999.000),]
``````

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:

``````==-999.000),]
``````
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To remark on an answer- I can have multiple -999 values in a given row –  Vinterwoo Jun 11 '12 at 4:20

The following may work

``````DF[!apply(DF==-999,1,sum),]
``````

or if you can have multiple -999 on a row

``````DF[!(apply(DF==-999,1,sum)>0),]
``````

or

``````DF[!apply(DF==-999,1,any),]
``````
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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 `i`th element in the `j`th vector of DF, which you can think of as the `i`th row and `j`th 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, ]`.

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To address your "bonus" question, if we go to the documentation for `?Extract.data.frame` 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.

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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
na.omit(DF)
ID C1 C2 C3
1  A  3  3  5
3  C  4  3  3
4  D  4  4  6
``````
-