137

I'm somewhat new to pandas. I have a pandas data frame that is 1 row by 23 columns.

I want to convert this into a series? I'm wondering what the most pythonic way to do this is?

I've tried pd.Series(myResults) but it complains ValueError: cannot copy sequence with size 23 to array axis with dimension 1. It's not smart enough to realize it's still a "vector" in math terms.

Thanks!

7 Answers 7

89

You can transpose the single-row dataframe (which still results in a dataframe) and then squeeze the results into a series (the inverse of to_frame).

df = pd.DataFrame([list(range(5))], columns=["a{}".format(i) for i in range(5)])

>>> df.squeeze(axis=0)
a0    0
a1    1
a2    2
a3    3
a4    4
Name: 0, dtype: int64

Note: To accommodate the point raised by @IanS (even though it is not in the OP's question), test for the dataframe's size. I am assuming that df is a dataframe, but the edge cases are an empty dataframe, a dataframe of shape (1, 1), and a dataframe with more than one row in which case the use should implement their desired functionality.

if df.empty:
    # Empty dataframe, so convert to empty Series.
    result = pd.Series()
elif df.shape == (1, 1)
    # DataFrame with one value, so convert to series with appropriate index.
    result = pd.Series(df.iat[0, 0], index=df.columns)
elif len(df) == 1:
    # Convert to series per OP's question.
    result = df.T.squeeze()
else:
    # Dataframe with multiple rows.  Implement desired behavior.
    pass

This can also be simplified along the lines of the answer provided by @themachinist.

if len(df) > 1:
    # Dataframe with multiple rows.  Implement desired behavior.
    pass
else:
    result = pd.Series() if df.empty else df.iloc[0, :]
6
  • 13
    Note that I ran into a small issue using squeeze. For a dataframe of shape (1, 1) it will return, not a series of length 1, but a numpy scalar. This led to a hard-to-catch bug when using squeeze on objects of unknown length (e.g. with groupby).
    – IanS
    Jan 12, 2017 at 14:54
  • 2
    "Thank you! df.squeeze() worked when df.iloc[:,0] & df.ix[:,0] both produced too many indexes error"
    – Afflatus
    Feb 25, 2017 at 18:06
  • 4
    And why is the inverse of to_frame not to_series or pd.Series(df) ...?
    – jhin
    Apr 11, 2018 at 14:14
  • 5
    You don't need .T
    – elgehelge
    Oct 24, 2018 at 14:22
  • 3
    @IanS pass the argument df.squeeze(axis=0) or df.squeeze(axis=1) (depending on the axis you want to conserve) to avoid that Oct 29, 2020 at 12:46
80

It's not smart enough to realize it's still a "vector" in math terms.

Say rather that it's smart enough to recognize a difference in dimensionality. :-)

I think the simplest thing you can do is select that row positionally using iloc, which gives you a Series with the columns as the new index and the values as the values:

>>> df = pd.DataFrame([list(range(5))], columns=["a{}".format(i) for i in range(5)])
>>> df
   a0  a1  a2  a3  a4
0   0   1   2   3   4
>>> df.iloc[0]
a0    0
a1    1
a2    2
a3    3
a4    4
Name: 0, dtype: int64
>>> type(_)
<class 'pandas.core.series.Series'>
4
  • 2
    Or, another way: df.T
    – ako
    Oct 20, 2015 at 21:35
  • 16
    @ako: df.T doesn't produce a Series, though, just a transposed DataFrame.
    – DSM
    Oct 20, 2015 at 21:38
  • 1
    @DSM. That's true, df.T.iloc[0] Sep 14, 2020 at 13:32
  • 1
    The only problem with using df.iloc is that if you have an empty df, this will raise an IndexError. To avoid that, after transposing your df, use the df.squeeze method. Ref. to pandas.pydata.org/pandas-docs/stable/reference/api/… Oct 29, 2020 at 12:42
37

You can retrieve the series through slicing your dataframe using one of these two methods:

http://pandas.pydata.org/pandas-docs/stable/generated/pandas.DataFrame.iloc.html http://pandas.pydata.org/pandas-docs/stable/generated/pandas.DataFrame.loc.html

import pandas as pd
import numpy as np
df = pd.DataFrame(data=np.random.randn(1,8))

series1=df.iloc[0,:]
type(series1)
pandas.core.series.Series
0
9

You can also use stack()

df= DataFrame([list(range(5))], columns = [“a{}”.format(I) for I in range(5)])

After u run df, then run:

df.stack()

You obtain your dataframe in series

1
  • stack() is the only solution robust enough not to return a single element instead of the expected single column...
    – mirekphd
    Aug 29, 2021 at 10:05
6

If you have a one column dataframe df, you can convert it to a series:

df.iloc[:,0]  # pandas Series

Since you have a one row dataframe df, you can transpose it so you're in the previous case:

df.T.iloc[:,0]
6

Another way -

Suppose myResult is the dataFrame that contains your data in the form of 1 col and 23 rows

# label your columns by passing a list of names
myResult.columns = ['firstCol']

# fetch the column in this way, which will return you a series
myResult = myResult['firstCol']

print(type(myResult))

In similar fashion, you can get series from Dataframe with multiple columns.

1
data = pd.DataFrame({"a":[1,2,3,34],"b":[5,6,7,8]})
new_data = pd.melt(data)
new_data.set_index("variable", inplace=True)

This gives a dataframe with index as column name of data and all data are present in "values" column

1
  • 6
    Welcome to Stack Overflow! How does this answer the question? Your code doesn't return a Series like the question asks
    – Gricey
    Oct 17, 2019 at 6:28

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