I have read in a large data file into R using the following command

```
data <- as.data.set(spss.system.file(paste(path, file, sep = '/')))
```

The data set contains columns which should not belong, and contain only blanks. This issue has to do with R creating new variables based on the variable labels attached to the SPSS file (Source).

Unfortunately, I have not been able to determine the options necessary to resolve the problem. I have tried all of: foreign::read.spss, memisc:spss.system.file, and Hemisc::spss.get, with no luck.

Instead, I would like to read in the entire data set (with ghost columns) and remove unnecessary variables manually. Since the ghost columns contain only blank spaces, I would like to remove any variables from my data.table where the number of unique observations is equal to one.

My data are large, so they are stored in data.table format. I would like to determine an easy way to check the number of unique observations in each column, and drop columns which contain only one unique observation.

```
require(data.table)
### Create a data.table
dt <- data.table(a = 1:10,
b = letters[1:10],
c = rep(1, times = 10))
### Create a comparable data.frame
df <- data.frame(dt)
### Expected result
unique(dt$a)
### Expected result
length(unique(dt$a))
```

However, I wish to calculate the number of obs for a large data file, so referencing each column by name is not desired. I am not a fan of eval(parse()).

```
### I want to determine the number of unique obs in
# each variable, for a large list of vars
lapply(names(df), function(x) {
length(unique(df[, x]))
})
### Unexpected result
length(unique(dt[, 'a', with = F])) # Returns 1
```

It seems to me the problem is that

```
dt[, 'a', with = F]
```

returns an object of class "data.table". It makes sense that the length of this object is 1, since it is a data.table containing 1 variable. We know that data.frames are really just lists of variables, and so in this case the length of the list is just 1.

Here's pseudo code for how I would remedy the solution, using the data.frame way:

```
for (x in names(data)) {
unique.obs <- length(unique(data[, x]))
if (unique.obs == 1) {
data[, x] <- NULL
}
}
```

Any insight as to how I may more efficiently ask for the number of unique observations by column in a data.table would be much appreciated. Alternatively, if you can recommend how to drop observations if there is only one unique observation within a data.table would be even better.