You could use np.where. If `cond`

is a boolean array, and `A`

and `B`

are arrays, then

```
C = np.where(cond, A, B)
```

defines C to be equal to `A`

where `cond`

is True, and `B`

where `cond`

is False.

```
import numpy as np
import pandas as pd
a = [['10', '1.2', '4.2'], ['15', '70', '0.03'], ['8', '5', '0']]
df = pd.DataFrame(a, columns=['one', 'two', 'three'])
df['que'] = np.where((df['one'] >= df['two']) & (df['one'] <= df['three'])
, df['one'], np.nan)
```

yields

```
one two three que
0 10 1.2 4.2 10
1 15 70 0.03 NaN
2 8 5 0 NaN
```

If you have more than one condition, then you could use np.select instead.
For example, if you wish `df['que']`

to equal `df['two']`

when `df['one'] < df['two']`

, then

```
conditions = [
(df['one'] >= df['two']) & (df['one'] <= df['three']),
df['one'] < df['two']]
choices = [df['one'], df['two']]
df['que'] = np.select(conditions, choices, default=np.nan)
```

yields

```
one two three que
0 10 1.2 4.2 10
1 15 70 0.03 70
2 8 5 0 NaN
```

If we can assume that `df['one'] >= df['two']`

when `df['one'] < df['two']`

is
False, then the conditions and choices could be simplified to

```
conditions = [
df['one'] < df['two'],
df['one'] <= df['three']]
choices = [df['two'], df['one']]
```

(The assumption may not be true if `df['one']`

or `df['two']`

contain NaNs.)

Note that

```
a = [['10', '1.2', '4.2'], ['15', '70', '0.03'], ['8', '5', '0']]
df = pd.DataFrame(a, columns=['one', 'two', 'three'])
```

defines a DataFrame with string values. Since they look numeric, you might be better off converting those strings to floats:

```
df2 = df.astype(float)
```

This changes the results, however, since strings compare character-by-character, while floats are compared numerically.

```
In [61]: '10' <= '4.2'
Out[61]: True
In [62]: 10 <= 4.2
Out[62]: False
```