7

I have a dataframe and a list:

df = pd.DataFrame({'id':[1,2,3,4,5,6,7,8], 
    'char':[['a','b'],['a','b','c'],['a','c'],['b','c'],[],['c','a','d'],['c','d'],['a']]})

names = ['a','c']

I want to get rows only if both a and c both are present in char column.(order doesn't matter here)

Expected Output:

       char  id                                                                                                                      
1  [a, b, c]   2                                                                                                                      
2     [a, c]   3                                                                                                                      
5  [c, a, d]   6   

My Efforts

true_indices = []
for idx, row in df.iterrows():
    if all(name in row['char'] for name in names):
        true_indices.append(idx)


ids = df[df.index.isin(true_indices)]

Which is giving me correct output but it is too slow for large dataset so I am looking for more efficient solution.

4

You could iterate over the rows in df.char and keep those where name is a subset:

names = set(['a','c'])
m = [name.issubset(i) for i in df.char.values.tolist()]

print(df[m])

id       char
1   2  [a, b, c]
2   3     [a, c]
5   6  [c, a, d]
  • 1
    This one is faster than rest. Thanks :-) – AkshayNevrekar Apr 18 at 12:23
6

Use pd.DataFrame.apply:

df[df['char'].apply(lambda x: set(names).issubset(x))]

Output:

   id       char
1   2  [a, b, c]
2   3     [a, c]
5   6  [c, a, d]
2

Try this.

df['char']=df['char'].apply(lambda x: x if ("a"in x and "c" in x) else np.nan)
print(df.dropna())

output:

   id       char
1   2  [a, b, c]
2   3     [a, c]
5   6  [c, a, d]
2

Use list comprehension with issubset:

mask = [set(names).issubset(x) for x in df['char']]
df = df[mask]
print (df)
   id       char
1   2  [a, b, c]
2   3     [a, c]
5   6  [c, a, d]

Another solution with Series.map:

df = df[df['char'].map(set(names).issubset)]
print (df)
   id       char
1   2  [a, b, c]
2   3     [a, c]
5   6  [c, a, d]

Performance Depends of number of rows and number of matched values:

df = pd.concat([df] * 10000, ignore_index=True)

In [270]: %timeit df[df['char'].apply(lambda x: set(names).issubset(x))]
45.9 ms ± 2.26 ms per loop (mean ± std. dev. of 7 runs, 10 loops each)

In [271]: %%timeit
     ...: names = set(['a','c'])
     ...: [names.issubset(set(row)) for _,row in df.char.iteritems()]
     ...: 
46.7 ms ± 5.51 ms per loop (mean ± std. dev. of 7 runs, 10 loops each)


In [272]: %%timeit
     ...: df[[set(names).issubset(x) for x in df['char']]]
     ...: 
45.6 ms ± 1.26 ms per loop (mean ± std. dev. of 7 runs, 10 loops each)

In [273]: %%timeit
     ...: df[df['char'].map(set(names).issubset)]
     ...: 
18.3 ms ± 2.96 ms per loop (mean ± std. dev. of 7 runs, 100 loops each)

In [274]: %%timeit
     ...: n = set(names)
     ...: df[df['char'].map(n.issubset)]
     ...: 
16.6 ms ± 278 µs per loop (mean ± std. dev. of 7 runs, 100 loops each)

In [279]: %%timeit
     ...: names = set(['a','c'])
     ...: m = [name.issubset(i) for i in df.char.values.tolist()]
     ...: 
19.2 ms ± 317 µs per loop (mean ± std. dev. of 7 runs, 100 loops each)
  • 2
    working with lists seems a little faster – yatu Apr 18 at 12:15
  • @yatu - hmm, for me not, but real data seems different %%timeit names = set(['a','c']) m = [name.issubset(i) for i in df.char.values.tolist()] 19.2 ms ± 317 µs per loop (mean ± std. dev. of 7 runs, 100 loops each) – jezrael Apr 18 at 12:32

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