289

I have constructed a condition that extract exactly one row from my data frame:

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 data frame 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?

  • 1
    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 at 23:52

10 Answers 10

349

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
Out[3]:
          A         B
2 -0.133653 -0.030854

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

In [5]: sub_df.iloc[0]['A']
Out[5]: -0.13365288513107493
  • 1
    @Sophologist looking at this, I have no idea. The question is a little strangely worded, but it reads like the first half is immaterial to the latter. (at is a really nice answer, though I find it strange it's like ix :) ) – Andy Hayden Oct 31 '16 at 21:45
  • 7
    @Sophologist I agree that its ridiculous that this is required. It also does not work when you try to pass the conditionals inline; my_df.loc[my_df['Col1'] == foo]['Col2'] still returns an object of type <class 'pandas.core.series.Series'> – user5359531 Nov 18 '16 at 3:54
  • 10
    Note that this solution returns a Series, not a value! – Atte Juvonen Feb 6 '17 at 12:12
  • @AtteJuvonen That depends if you have duplicates in your index/columns (note at/iat raises an exception with duplicate columns, will file an issue). – Andy Hayden Feb 6 '17 at 19:30
173

These are fast access for scalars

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

In [16]: df
Out[16]: 
          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
  • 7
    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 '18 at 9:25
  • 2
    this should be the answer because we don't copy in memory an useless line to get only one element inside. – bormat Jun 21 '18 at 17:54
  • 3
    @hartmut You can always just do at[df.index[-1],'A'] – cs95 Jan 22 at 23:51
56

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]
  • 5
    Please improve the quality of your answer with a little bit more explanation. – Franck Gamess Jun 25 '18 at 20:08
  • Edit your initial answer with this prior to create a comment. Thanks – Franck Gamess Jun 28 '18 at 5:35
  • 2
    I prefer this method and use it frequently. Used to use .get_values()[0] as well. – aaronpenne Jul 12 '18 at 20:41
  • 1
    I think this is the best answer since it does not return a pandas.series, and it's the simplest. – Sean McCarthy Jun 30 at 23:33
24

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
15

It looks like changes after pandas 10.1/13.1

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']

Output:

date
2014-02-26 118.2
name:Close, dtype: float64
  • I think this should only be the case for Series with duplicate entries... in fact, I don't see this, could you give a small example to demonstrate this? – Andy Hayden Oct 7 '14 at 16:09
  • i used pandas 13.x, both iloc[][] or iloc[,] output a scalar. just the iloc not working with negative index, like -1 – timeislove Oct 10 '14 at 6:49
  • If you can give a toy example demonstrating this in the answer it'd be really helpful! – Andy Hayden Oct 10 '14 at 7:04
13

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

original_conversion_frequency.loc[1,:].values[0]

5

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

e.g.

rate

3 0.042679

Name: Unemployment_rate, dtype: float64

float(rate)

0.0426789

  • Does that work with a multi-element series as well? – Praxiteles Apr 19 at 15:21
5

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

df.at[501,'column_name']
df.get_value(501,'column_name')
  • 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) – Shihe Zhang Oct 24 '17 at 2:46
3

For pandas 0.10, where iloc is unavalable, 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 then 1 row filtered, obtain the first row value. There will be an exception if the filter result in empty data frame.

  • 3
    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) – Shihe Zhang Oct 24 '17 at 3:06
  • But iat or at cannot get the value based on the column name. – sivabudh Oct 18 at 9:03
-4
df_gdp.columns

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]

8100000000000.0

  • 4
    Is this an answer or a question? – Vega Oct 10 '18 at 19:08
  • 4
    Welcome to Stack Overflow! Thank you for the code snippet, which might provide some limited, immediate help. A proper explanation would greatly improve its long-term value by describing why this is a good solution to the problem, and would make it more useful to future readers with other similar questions. Please edit your answer to add some explanation, including the assumptions you've made. – sepehr Oct 26 '18 at 21:53

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