I have constructed a condition that extracts exactly one row from my dataframe:

d2 = df[(df['l_ext']==l_ext) & (df['item']==item) & (df['wn']==wn) & (df['wd']==1)]

Now I would like to take a value from a particular column:

val = d2['col_name']

But as a result, I get a dataframe that contains one row and one column (i.e., one cell). It is not what I need. I need one value (one float number). How can I do it in pandas?

  • 2
    If you tried some of these answers but ended up with a SettingWithCopyWarning, you can take a look at this post for an explanation of the warning and possible workarounds/solutions.
    – cs95
    Jan 22, 2019 at 23:52
  • 5
    df['col'].iloc[0] is faster than df.iloc[0]['col']
    – Vipul
    Mar 12, 2022 at 11:12

19 Answers 19


If you have a DataFrame with only one row, then access the first (only) row as a Series using iloc, and then the value using the column name:

In [3]: sub_df
          A         B
2 -0.133653 -0.030854

In [4]: sub_df.iloc[0]
A   -0.133653
B   -0.030854
Name: 2, dtype: float64

In [5]: sub_df.iloc[0]['A']
Out[5]: -0.13365288513107493
  • 83
    Note that this solution returns a Series, not a value! Feb 6, 2017 at 12:12
  • 5
    @mLstudent33 It is iloc for the call to the row, and then the column name is given
    – Liz
    Apr 22, 2021 at 13:43

These are fast access methods for scalars:

In [15]: df = pandas.DataFrame(numpy.random.randn(5, 3), columns=list('ABC'))

In [16]: df
          A         B         C
0 -0.074172 -0.090626  0.038272
1 -0.128545  0.762088 -0.714816
2  0.201498 -0.734963  0.558397
3  1.563307 -1.186415  0.848246
4  0.205171  0.962514  0.037709

In [17]: df.iat[0, 0]
Out[17]: -0.074171888537611502

In [18]: df.at[0, 'A']
Out[18]: -0.074171888537611502
  • 21
    I like this answer a lot. But whereas you can do .iloc[-1]['A'] you cannot do at[-1,'A'] to get the last row entry
    – hartmut
    Jan 16, 2018 at 9:25
  • 9
    this should be the answer because we don't copy in memory an useless line to get only one element inside.
    – bormat
    Jun 21, 2018 at 17:54
  • 9
    @hartmut You can always just do at[df.index[-1],'A']
    – cs95
    Jan 22, 2019 at 23:51
  • 3
    I like this answer the best. You can also refer to named indexes, which makes your code more readable: df.at['my_row_name', 'my_column_name']
    – LunkRat
    Apr 30, 2022 at 20:14

You can turn your 1x1 dataframe into a NumPy array, then access the first and only value of that array:

val = d2['col_name'].values[0]
  • 19
    I think this is the best answer since it does not return a pandas.series, and it's the simplest. Jun 30, 2019 at 23:33
  • 2
    As of now, this works in pandas as well, no need to have advantage over methods available in pandas, it is a method available in pandas.
    – Joey
    Oct 27, 2020 at 1:46

It doesn't need to be complicated:

val = df.loc[df.wd==1, 'col_name'].values[0]

Most answers are using iloc which is good for selection by position.

If you need selection-by-label, loc would be more convenient.

For getting a value explicitly (equiv to deprecated df.get_value('a','A'))

# This is also equivalent to df1.at['a','A']
In [55]: df1.loc['a', 'A']
Out[55]: 0.13200317033032932

I needed the value of one cell, selected by column and index names. This solution worked for me:


  • 2
    This create a slice, which can be memory consuming
    – VMAtm
    Feb 23, 2022 at 13:57

It looks like changes after pandas 10.1 or 13.1.

I upgraded from 10.1 to 13.1. Before, iloc is not available.

Now with 13.1, iloc[0]['label'] gets a single value array rather than a scalar.

Like this:

lastprice = stock.iloc[-1]['Close']


2014-02-26 118.2
name:Close, dtype: float64

The quickest and easiest options I have found are the following. 501 represents the row index.

df.at[501, 'column_name']
df.get_value(501, 'column_name')
  • 13
    get_value is deprecated now(v0.21.0 RC1 (October 13, 2017))reference is here .get_value and .set_value on Series, DataFrame, Panel, SparseSeries, and SparseDataFrame are deprecated in favor of using .iat[] or .at[] accessors (GH15269) Oct 24, 2017 at 2:46

In later versions, you can fix it by simply doing:

val = float(d2['col_name'].iloc[0])

Index([u'Country', u'Country Code', u'Indicator Name', u'Indicator Code', u'1960', u'1961', u'1962', u'1963', u'1964', u'1965', u'1966', u'1967', u'1968', u'1969', u'1970', u'1971', u'1972', u'1973', u'1974', u'1975', u'1976', u'1977', u'1978', u'1979', u'1980', u'1981', u'1982', u'1983', u'1984', u'1985', u'1986', u'1987', u'1988', u'1989', u'1990', u'1991', u'1992', u'1993', u'1994', u'1995', u'1996', u'1997', u'1998', u'1999', u'2000', u'2001', u'2002', u'2003', u'2004', u'2005', u'2006', u'2007', u'2008', u'2009', u'2010', u'2011', u'2012', u'2013', u'2014', u'2015', u'2016'], dtype='object')

df_gdp[df_gdp["Country Code"] == "USA"]["1996"].values[0]



I am not sure if this is a good practice, but I noticed I can also get just the value by casting the series as float.



3 0.042679

Name: Unemployment_rate, dtype: float64



  • 2
    Does that work with a multi-element series as well?
    – Praxiteles
    Apr 19, 2019 at 15:21

I've run across this when using dataframes with MultiIndexes and found squeeze useful.

From the documentation:

Squeeze 1 dimensional axis objects into scalars.

Series or DataFrames with a single element are squeezed to a scalar. DataFrames with a single column or a single row are squeezed to a Series. Otherwise the object is unchanged.

# Example for a dataframe with MultiIndex
> import pandas as pd

> df = pd.DataFrame(
                        [1, 2, 3],
                        [4, 5, 6],
                        [7, 8, 9]
                    index=pd.MultiIndex.from_tuples( [('i', 1), ('ii', 2), ('iii', 3)] ),
                    columns=pd.MultiIndex.from_tuples( [('A', 'a'), ('B', 'b'), ('C', 'c')] )

> df
       A  B  C
       a  b  c
i   1  1  2  3
ii  2  4  5  6
iii 3  7  8  9

> df.loc['ii', 'B']
2  5

> df.loc['ii', 'B'].squeeze()

Note that while df.at[] also works (if you aren't needing to use conditionals) you then still AFAIK need to specify all levels of the MultiIndex.


> df.at[('ii', 2), ('B', 'b')]

I have a dataframe with a six-level index and two-level columns, so only having to specify the outer level is quite helpful.


For pandas 0.10, where iloc is unavailable, filter a DF and get the first row data for the column VALUE:

df_filt = df[df['C1'] == C1val & df['C2'] == C2val]
result = df_filt.get_value(df_filt.index[0],'VALUE')

If there is more than one row filtered, obtain the first row value. There will be an exception if the filter results in an empty data frame.

  • 4
    get_value is deprecated now(v0.21.0 RC1 (October 13, 2017)) reference is here .get_value and .set_value on Series, DataFrame, Panel, SparseSeries, and SparseDataFrame are deprecated in favor of using .iat[] or .at[] accessors (GH15269) Oct 24, 2017 at 3:06
  • 1
    But iat or at cannot get the value based on the column name.
    – sivabudh
    Oct 18, 2019 at 9:03

Converting it to integer worked for me but if you need float it is also simple:


for float:

  • But the question says "I need one value (one float number).". Aug 21, 2022 at 19:28
  • added float version too. Thx for pointing it out Mar 31 at 7:40

If a single row was filtered from a dataframe, one way to get a scalar value from a single cell is squeeze() (or item()):

df = pd.DataFrame({'A':range(5), 'B': range(5)})
d2 = df[df['A'].le(5) & df['B'].eq(3)]
val = d2['A'].squeeze()                 # 3

val = d2['A'].item()                    # 3

In fact, item() may be called on the index, so item + at combo could work.

msk = df['A'].le(5) & df['B'].eq(3)
val = df.at[df.index[msk].item(), 'B']  # 3

In fact, the latter method is much faster than any other method listed here to get a single cell value.

df = pd.DataFrame({'A':range(10000), 'B': range(10000)})
msk = df['A'].le(5) & df['B'].eq(3)

%timeit df.at[df.index[msk].item(), 'A']
# 31.4 µs ± 5.83 µs per loop (mean ± std. dev. of 7 runs, 10,000 loops each)
%timeit df.loc[msk, 'A'].squeeze()
# 143 µs ± 8.99 µs per loop (mean ± std. dev. of 7 runs, 10,000 loops each)
%timeit df.loc[msk, 'A'].item()
# 125 µs ± 1.56 µs per loop (mean ± std. dev. of 7 runs, 10,000 loops each)
%timeit df.loc[msk, 'A'].iat[0]
# 125 µs ± 1.96 µs per loop (mean ± std. dev. of 7 runs, 10,000 loops each)
%timeit df[msk]['A'].values[0]
# 189 µs ± 8.67 µs per loop (mean ± std. dev. of 7 runs, 10,000 loops each)

Using .item() returns a scalar (not a Series), and it only works if there is a single element selected. It's much safer than .values[0] which will return the first element regardless of how many are selected.

>>> df = pd.DataFrame({'a': [1,2,2], 'b': [4,5,6]})
>>> df[df['a'] == 1]['a']  # Returns a Series
0    1
Name: a, dtype: int64
>>> df[df['a'] == 1]['a'].item()
>>> df2 = df[df['a'] == 2]
>>> df2['b']
1    5
2    6
Name: b, dtype: int64
>>> df2['b'].values[0]
>>> df2['b'].item()
Traceback (most recent call last):
  File "<stdin>", line 1, in <module>
  File "/usr/lib/python3/dist-packages/pandas/core/base.py", line 331, in item
    raise ValueError("can only convert an array of size 1 to a Python scalar")
ValueError: can only convert an array of size 1 to a Python scalar
  • 1
    This is the best answer as it does inform user about multiple matches (if any) - through raising an exception Dec 15, 2022 at 16:44

Display the data from a certain cell in pandas dataframe

Using dataframe.iloc,

Dataframe.iloc should be used when given index is the actual index made when the pandas dataframe is created.

Avoid using dataframe.iloc on custom indices.


Using dataframe.loc,

Use dataframe.loc if you're using a custom index it can also be used instead of iloc too even the dataframe contains default indices.


You can get the values like this:

df[(df['column1']==any_value) & (df['column2']==any_value) & (df['column']==any_value)]['column_with_values_to_get']

And you can add (df['columnx']==any_value) as much as you want


To get the full row's value as JSON (instead of a Serie):

row = df.iloc[0]

Use the to_json method like below:

  • 5
    How is json involved in this question?
    – Teepeemm
    May 22, 2021 at 14:58
  • Re "Serie": Do you mean "Series"? Aug 21, 2022 at 19:27

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