You shall use a regular expression :
trim_function = lambda x : re.findall("^\s*(.*?)\s*$",str(x))
To explain a bit :
^ represents the beginning of the string, and
$ is the end of your string ; so that your expression will find exactly 1 match.
\s represents any whitespace character. So
\s* is any sequence (even empty) of whitespaces.
.*? is any sequence of any character. I could not explain precisely why, but the
? sign let this experrsion be less greedy than
\s* so that the whitespaces will be counted outside the parenthesis.
Finally, the parethesis
(...) means that you are interseted in the substring(s) inside of them : the expression trimmed.
re.findall provides a list of matching substrings, we have to select the first element.
Now, for a DataFrame :
df = pd.DataFrame([' 164', '164', '164 ', ' 164 '])
For a Series
df = pd.Series([' 164', '164', '164 ', ' 164 '])
For an Index
df = pd.Index([' 164', '164', '164 ', ' 164 '])
edit : Forgot : if you don't want to remove spaces at the end of each string, simply use the pattern