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I want to transform a numpy int64 array

Zed           49
Kassadin      39
Cassiopeia    34
RekSai        33
Nidalee       30
Name: value, dtype: int64

into a list like this:

[(Zed, 49), (Kassadin, 39), (Cassiopeia, 34), (RekSai, 33), (Nidalee, 30)]

Till now I've tried:

l = l.tolist()

l.T

and

[row for row in l.T]

but the output looks like this:

[49, 39, 34, 33, 30]

  • 3
    That's a Pandas series, not a NumPy array. – user2357112 supports Monica Oct 21 at 6:45
  • What is data type of l?? Is it a dictionary? – cerofrais Oct 21 at 6:45
  • I just did it but it still giving me the same result deleting the names – Kev Oct 21 at 6:46
  • @cerofrais l is dtype:int64 – Kev Oct 21 at 6:47
  • @cerofrais I created it with this code l = ban15_sp_eu.value.value_counts()[:5] – Kev Oct 21 at 6:47
3

One possible solution is list comprehenstion:

L = [(k, v) for k, v in series.items()]

Or convert values to DataFrame anf then to list ot tuples:

L = list(map(tuple, series.reset_index().values.tolist()))

Or to MultiIndex:

L = series.to_frame('a').set_index('a', append=True).index.tolist()

print (L)
[('Zed', 49), ('Kassadin', 39), ('Cassiopeia', 34), ('RekSai', 33), ('Nidalee', 30)]

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