Suppose I have some Pandas dataframe df that has a column called "HEIGHT", among many other columns.

If I issue list(df["HEIGHT"]), then this will give me a list of the items in that column in the exact order in which they were in the dataframe, i.e. ordered by the index of the dataframe.

Is that always the case? The df["HEIGHT"] command will return a Series and list() will convert it to a list. But are these operations always order-preserving? Interestingly in the [book1 by the Pandas author (!), from my reading so far, it is unclear to me, when these elementary operations preserve order; is order perhaps always preserved, or is there some simple rule to know when order should be preserved?

  • have you tried df['HEIGHT'].tolist() ? – MattR Oct 11 at 16:26
up vote 1 down vote accepted

The order of elements in a pandas Series (i.e., a column in a pandas DataFrame) will not change unless you do something that makes it change. And the order of a python list is guaranteed to reflect insertion order (SO thread).

So yes, df[0].tolist() (slightly faster than list(df[0])) should always yield a Python list of elements in the same order as the elements in df[0].

  • 1
    Accepted your answer because of the nice info that tolist is faster. Why though - because it is not a Python built-in function, but a specialized function of the pandas DataFrame class? – l7ll7 Oct 11 at 16:43
  • @l7ll7 Yes, in general, when working with data structure libraries like pandas or numpy, you should use their interfaces rather than python equivalents for better performance. – swhat Oct 11 at 16:52

Order will always be preserved. When you use the list function, you provide it an iterator, and construct a list by iterating over it. For more information on iterators, you might want to read PEP 234 on iterators.

The iteration order is determined by the iterator you provide it. Iterators for a series are provided by pd.Series.__iter__() (the standard way to access an iterator for an object, which is searched for by the list method and similar). For more information on iteration and indexing in Pandas, consider reading the relevant API reference section and the much more in-depth indexing documentation.

  • +1 For the super pristine explanation regarding iterators. I would accepted both answer, but since I couldn't I also courtesy-upvoted a few others of your answers ;) – l7ll7 Oct 11 at 16:44

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