Having a dataframe like the one below:

```
import pandas as pd
import numpy as np
df = pd.DataFrame(
{'Beverage': ['Beer', 'Wine', 'Whisky'],
'G1_1': [11, 5.1, 2.8],
'G1_2': [6, 4, 0],
'G1_3': [0, 2, 0],
'G2_1': [0, 4.1, 0.8],
'G2_2': [0, 6, 0.1],
'G2_3': [0, 9.4, 0],
}
)
group1 = ['G1_1', 'G1_2', 'G1_3']
df
Beverage G1_1 G1_2 G1_3 G2_1 G2_2 G2_3
0 Beer 11.0 6 0 0 0 0
1 Wine 5.1 4 2 4.1 6.0 9.4
2 Whisky 2.8 0 0 0.8 0.1 0.0
```

if we want to select all rows for which `group1`

samples have at least 2 non-zero values, one possible solution is to convert zero values to `NaN`

and then use pandas `DF.dropna`

for the filtering. For example:

```
df.replace({0: np.nan}).dropna(axis=0, thresh=2, subset=group1)
df
Beverage G1_1 G1_2 G1_3 G2_1 G2_2 G2_3
0 Beer 11.0 6 NaN NaN NaN NaN
1 Wine 5.1 4 2 4.1 6.0 9.4
```

the above dropped the `Whisky`

row because there were less than two samples in `group1`

with non-zero values.

How would it be possible to apply a similar filter, but instead of filtering for zeros, apply some particular condition, for example, that at least 2 samples in `group1`

have values `>5`

? (in this case only the `Beer`

line should be printed)

Edit:

also, are there more efficient ways to accomplish the same? I'm asking this because I'll have to apply the filter to a really big dataframe.