# Convert pandas data frame to series

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!

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, :]
``````
• 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
• "Thank you! df.squeeze() worked when df.iloc[:,0] & df.ix[:,0] both produced too many indexes error" Feb 25, 2017 at 18:06
• And why is the inverse of `to_frame` not `to_series` or `pd.Series(df)` ...?
– jhin
Apr 11, 2018 at 14:14
• You don't need `.T` Oct 24, 2018 at 14:22
• @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

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
a0    0
a1    1
a2    2
a3    3
a4    4
Name: 0, dtype: int64
>>> type(_)
<class 'pandas.core.series.Series'>
``````
• Or, another way: `df.T`
– ako
Oct 20, 2015 at 21:35
• @ako: `df.T` doesn't produce a Series, though, just a transposed DataFrame.
– DSM
Oct 20, 2015 at 21:38
• @DSM. That's true, df.T.iloc Sep 14, 2020 at 13:32
• 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

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

``````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
``````

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

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

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]
``````

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.

``````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

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