7

I have a pandas Dataframe and a pandas Series that looks like below.

df0 = pd.DataFrame({'col1':['a','b','c','d'],'col2':['b','c','e','f'],'col3':['d','f','g','a']})

  col1 col2 col3
0    a    b    d
1    b    c    f
2    c    e    g
3    d    f    a

df1 = pd.Series(['b','g','g'], index=['col1','col2','col3'])

col1    b
col2    g
col3    g
dtype: object

As you can see, the columns of df0 and the indices of df1 are the same. For each index of df1, I want to know if the value at that index exists in the corresponding column of df0. So, df1.col1 is b and we need to look for b only in df0.col1 and check if it exists.

Desired output:

array([True, False, True])

Is there a way to do this without using a loop? Maybe a method native to numpy or pandas?

1
  • Could use something like melt to convert both data frames from wide to long, and then join them on col and value?
    – TMBailey
    Sep 18 at 6:32
5

Pandas' pandas.DataFrame.eq method is probably the simplest.

df0.eq(df1).any()

col1     True
col2    False
col3     True
dtype: bool
3
  • this is great -- automatically handles the broadcasting and reindexing
    – tdy
    Sep 18 at 8:12
  • 1
    @tdy yes I was surprised no one proposed it before ;) +1
    – mozway
    Sep 18 at 8:13
  • Good! +1 Could add to_numpy() to convert the series to a numpy array as in the desired output.
    – SeaBean
    Sep 18 at 8:26
2

Using numpy

You can broadcast df1 to check against df0:

np.any(df1[None, :] == df0, axis=0)
# col1     True
# col2    False
# col3     True
# dtype: bool

Note that this assumes df1.index and df0.columns have the same order. If not, reindex first:

np.any(df1.reindex(df0.columns)[None, :] == df0, axis=0)

Using pandas

Use apply to check whether a given df1 value isin the corresponding col of df0:

df0.apply(lambda col: col.isin([df1[col.name]])).any()
# col1     True
# col2    False
# col3     True
# dtype: bool
0

You can use apply instead of loop.

Try this:

df0 = pd.DataFrame({'col1':['a','b','c','d'],'col2':['b','c','e','f'],'col3':['d','f','g','a']})
df1 = pd.Series(['b','g','g'], index=['col1','col2','col3'])

df0.apply(lambda x : df1[x.name] in x.values) # for example x <-> 'col1' check this -> 'b' in ['a','b','c','d']
# col1     True    <-> 'b' in ['a','b','c','d']
# col2    False    <-> 'g' in ['b','c','e','f']
# col3     True    <-> 'g' in ['d','f','g','a']
# dtype: bool


df0.apply(lambda x : df1[x.name] in x.values).tolist()
# [True, False, True]
0
import pandas as pd
array=[]
df0 = pd.DataFrame({'col1':['a','b','c','d'],'col2':['b','c','e','f'],'col3':['d','f','g','a']})
df1 = pd.Series(['b','g','g'], index=['col1','col2','col3'])
for i in range(1,4):
    col = 'col'+str(i)
    array.append(df0[col].str.contains(df1[col]).any())
print(array)
0

You can make use of broadcasting:

(df0 == df1).any().values

It also works with NumPy ndarrays:

assert (df0.columns == df1.columns).all()

(df0.values == df1.values).any(axis=0)

Output:

array([ True, False,  True])
5
  • 1
    This is virtually the same as @StevenS' answer. Or should I propose df0.__eq__(df1).any()? :p
    – mozway
    Sep 18 at 8:58
  • 1
    I personally think this doesn't have an added value here, if all the syntax variants were proposed for each answer this would be unbearable (I am just saying this as your answered much later than the other answer). Eventually you could add a comment in (or edit) the other answer
    – mozway
    Sep 18 at 9:07
  • eq and == are different functions and you can get different results with parameters in eq. Plus I explain that you use broadcasting here. Sep 18 at 9:13
  • Could you explain how ‘eq’ and ‘==‘ are different? Also, for the numpy case, why does it work without ‘[None,:]’? Sorry, these are really basic questions.
    – NewbieAF
    Sep 18 at 21:44
  • You can change the axis parameter in eq and get different results df0.eq(df1, axis='rows'). It works without [None,:] because of broadcasting (it does it automatically). Sep 19 at 17:00
-1

If you'd like a quick one liner using list comprehension:

[df1[i] in df0[i].unique() for i in df1.index]

And if it needs to be an array:

np.array([df1[i] in df0[i].unique() for i in df1.index])

The output is:

array([ True, False, True])

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