```
indx <- rowSums(student1==student1[,1])!=ncol(student1)
student1[indx,]
```

To get row numbers,

```
which(indx)
# named integer(0) #none of the rows meet the condition
```

In your example, the columns are identical, So, if I change:

```
student1[3,3] <- 804015
indx <- rowSums(student1==student1[,1])!=ncol(student1)
student1[indx,]
#nstudentid1 nstudentid2 nstudentid3
#3 80501005 80501005 804015
```

### Explanation

`student1==student1[,1]`

It is checking whether the dataset is equal to the first column. Basically, what it is doing is we are checking whether te first column is equal to each of the columns of the dataset. Output we get is:

```
nstudentid1 nstudentid2 nstudentid3
1 TRUE TRUE TRUE
2 TRUE TRUE TRUE
3 TRUE TRUE TRUE
4 TRUE TRUE TRUE
5 TRUE TRUE TRUE
6 TRUE TRUE TRUE
```

Suppose, if I change one of the elements. `student1[3,3] <- 804015`

, the output would be:

```
nstudentid1 nstudentid2 nstudentid3
1 TRUE TRUE TRUE
2 TRUE TRUE TRUE
3 TRUE TRUE FALSE
4 TRUE TRUE TRUE
5 TRUE TRUE TRUE
6 TRUE TRUE TRUE
```

Doing `rowSums(student1==student1[,1])`

gives

```
1 2 3 4 5 6
3 3 2 3 3 3
```

here, the third row/element has less number of identical entries. Equating that to number of columns of dataset. `rowSums(student1==student1[,1])!=ncol(student1)`

gives

```
1 2 3 4 5 6
FALSE FALSE TRUE FALSE FALSE FALSE
```

Also, you could try:

```
indx1 <- unique(which(student1!=student1[,1],arr.ind=TRUE)[,1])
student1[indx1,]
#nstudentid1 nstudentid2 nstudentid3
#3 80501005 80501005 804015
```