I have the initial dataframe with the following structure (parameters in ETH1-ETH3 are thought up just for the example to show that each alarm has different set of ETH1-ETH3 parameters and can contain zeros):

```
| Site | Date | Alarm | ETH1 | ETH2 | ETH 3|
| AR21 | 25-01-19 | AL1 | 1 | 0 | 3 |
| AR22 | 25-01-19 | AL2 | 0 | 0 | 1 |
| AR23 | 26-01-19 | AL1 | 1 | 1 | 0 |
| AR21 | 26-01-19 | AL2 | 0 | 1 | 0 |
```

I'm applying a groupby method and as a result I want to see how many times each ETH1-ETH3 parameter happend for each site for each alarm during the date.

```
cols = ['Site', 'Date', 'Alarm']
df.groupby(cols)[['ETH1', 'ETH2', 'ETH3']].count()
```

This actually gives me the result that all alarms in all site per each day have "2" in all ETH1-ETH3 columns even if the particular site on this alarm had 0 at the column.

When I apply sum() I see, that those sites that had 0s in columns still have zeros. But why count() includes zeros in count?

How to achieve the output that if column has 0 it doesnt count, and count only occurences in columns that are greater than 0?