I have this issue when I run this chunk of code

```
text_lda <- LDA(text_dtm, k = 2, method = "VEM", control = NULL)
```

I have the next mistake **"Each row of the input matrix needs to contain at least one non-zero entry"**

Then I tried to solve this with these lines

```
row_total = apply(text_dtm, 1, sum)
empty.rows <- text_dtm[rowTotals == 0, ]$dimnames[1][[1]]
```

But I got the next issue

cannot allocate vector of size 3890.8 GB

This is the size of my DTM:

```
DocumentTermMatrix documents: 1968850, terms: 265238
Non-/sparse entries: 29766814/522184069486
Sparsity : 100%
Maximal term length: 4000
Weighting : term frequency (tf)
```

`apply`

converts your sparse matrix to a dense matrix , hence memory errors. You could see if there is a sparse matrix`rowSums`

method instead of`apply`

– user20650 Jan 17 '20 at 22:13