I'm confused about the rules Pandas uses when deciding that a selection from a dataframe is a copy of the original dataframe, or a view on the original.

If I have, for example,

df = pd.DataFrame(np.random.randn(8,8), columns=list('ABCDEFGH'), index=range(1,9))

I understand that a query returns a copy so that something like

foo = df.query('2 < index <= 5')
foo.loc[:,'E'] = 40

will have no effect on the original dataframe, df. I also understand that scalar or named slices return a view, so that assignments to these, such as

df.iloc[3] = 70

or

df.ix[1,'B':'E'] = 222

will change df. But I'm lost when it comes to more complicated cases. For example,

df[df.C <= df.B]  = 7654321

changes df, but

df[df.C <= df.B].ix[:,'B':'E']

does not.

Is there a simple rule that Pandas is using that I'm just missing? What's going on in these specific cases; and in particular, how do I change all values (or a subset of values) in a dataframe that satisfy a particular query (as I'm attempting to do in the last example above)?


Note: This is not the same as this question; and I have read the documentation, but am not enlightened by it. I've also read through the "Related" questions on this topic, but I'm still missing the simple rule Pandas is using, and how I'd apply it to — for example — modify the values (or a subset of values) in a dataframe that satisfy a particular query.

up vote 72 down vote accepted

Here's the rules, subsequent override:

  • All operations generate a copy

  • If inplace=True is provided, it will modify in-place; only some operations support this

  • An indexer that sets, e.g. .loc/.ix/.iloc/.iat/.at will set inplace.

  • An indexer that gets on a single-dtyped object is almost always a view (depending on the memory layout it may not be that's why this is not reliable). This is mainly for efficiency. (the example from above is for .query; this will always return a copy as its evaluated by numexpr)

  • An indexer that gets on a multiple-dtyped object is always a copy.

Your example of chained indexing

df[df.C <= df.B].ix[:,'B':'E']

is not guaranteed to work (and thus you shoulld never do this).

Instead do:

df.ix[df.C <= df.B, 'B':'E']

as this is faster and will always work

The chained indexing is 2 separate python operations and thus cannot be reliably intercepted by pandas (you will oftentimes get a SettingWithCopyWarning, but that is not 100% detectable either). The dev docs, which you pointed, offer a much more full explanation.

  • 2
    pandas relies on numpy to determine whether a view is generated. In a single dtype case (which could be a 1-d for a series, a 2-d for a frame, etc). numpy may generate a view; it depends on what you are slicing; sometimes you can get a view and sometimes you can't. pandas doesn't rely on this fact at all as its not always obvious whether a view is generated. but this doesn't matter as loc doesn't rely on this when setting. However, when chain indexing this is very important (and thus why chain indexing is bad) – Jeff Apr 25 '14 at 15:49
  • 2
    Many thanks Jeff, your reply is most useful. What is your source/reference on this topic? – Kamixave Aug 19 '14 at 12:46
  • 68
    My source is that I wrote the code and the docs. – Jeff Aug 19 '14 at 12:50
  • 4
    Then first, thanks for your great work! And second, if you have enough time I think it would be great to add a paragraph similar to your main reply in the doc. – Kamixave Aug 19 '14 at 13:00
  • 2
    certainly would a take a pull-request to add/revise the docs. go for it. – Jeff Aug 19 '14 at 13:06

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