The inplace
parameter:
df.dropna(axis='index', how='all', inplace=True)
in Pandas
and in general means:
1. Pandas creates a copy of the original data
2. ... does some computation on it
3. ... assigns the results to the original data.
4. ... deletes the copy.
As you can read in the rest of my answer's further below, we still can have good reason to use this parameter i.e. the inplace operations
, but we should avoid it if we can, as it generate more issues, as:
1. Your code will be harder to debug (Actually SettingwithCopyWarning stands for warning you to this possible problem)
2. Conflict with method chaining
So there is even case when we should use it yet?
Definitely yes. If we use pandas or any tool for handeling huge dataset, we can easily face the situation, where some big data can consume our entire memory.
To avoid this unwanted effect we can use some technics like method chaining:
(
wine.rename(columns={"color_intensity": "ci"})
.assign(color_filter=lambda x: np.where((x.hue > 1) & (x.ci > 7), 1, 0))
.query("alcohol > 14 and color_filter == 1")
.sort_values("alcohol", ascending=False)
.reset_index(drop=True)
.loc[:, ["alcohol", "ci", "hue"]]
)
which make our code more compact (though harder to interpret and debug too) and consumes less memory as the chained methods works with the other method's returned values, thus resulting in only one copy of the input data. We can see clearly, that we will have 2 x original data memory consumption after this operations.
Or we can use inplace
parameter (though harder to interpret and debug too) our memory consumption will be 2 x original data, but our memory consumption after this operation remains 1 x original data, which if somebody whenever worked with huge datasets exactly knows can be a big benefit.
Final conclusion:
Avoid using inplace
parameter unless you don't work with huge data and be aware of its possible issues in case of still using of it.
inplace=True
returnsNone
inplace=False
returns a copy of the object with the operation performed. The docs are pretty clear on this, is there something that is confusing with a specific part? SpeficallyIf True, do operation inplace and return None.
self = self.merge(new_df, how='left', on='column2'
I am not sure that it is possible to reassign selfinplace
argument. It returns a DataFrame, so no issue reassigning.inplace
action can be a little faster since you don't actually have to return a copy of the result. But that's about it. There are way more reasons not to use it.