I have two lists which contain terms in strings format. Those terms belong to two categories: fruits and vehicles. I am trying to display a dataframe only containing pairs of terms from conflicting categories. What would be the best approach to do that? Below is an example of my list and a dataframe. Any help would be greatly appreciated!


         col 1                 
  ['apple', 'truck' ]
  ['truck', 'orange']
  ['pear',  'motorcycle']
  ['pear', 'orange' ]
  ['apple', 'pear'  ]
  ['truck', 'car'   ]

  vehicles = ['car', 'truck', 'motorcycle']
  fruits = ['apple', 'orange', 'pear']

  desired output:

        col 2

  ['apple', 'truck' ]
  ['pear', 'motorcycle']
  ['truck', 'orange']

Create DataFrame from lists column, test membership by DataFrame.isin, then invert masks by ~, check at least one True per row with DataFrame.any for both lists and last chain conditions by bitwise AND - & with filtering by boolean indexing:

df1 = pd.DataFrame(df['col 1'].values.tolist())
df = df[(~df1.isin(vehicles)).any(axis=1) & (~df1.isin(fruits)).any(axis=1)]
print (df)
                col 1
0      [apple, truck]
1     [truck, orange]
2  [pear, motorcycle]

Another solution with intersection of sets chained by and (because scalars) and cast to bool - empty sets are converted to False:

def func(x):
    s = set(x)
    v = set(vehicles)
    f = set(fruits)
    return bool((s & v) and (s & f))

df = df[df['col 1'].apply(func)]
print (df)
                col 1
0      [apple, truck]
1     [truck, orange]
2  [pear, motorcycle]

May be np.isin could be useful for you!

super_set = np.array([vehicles,fruits])

def f(x):
    return all(np.isin(super_set,x).sum(axis=1))


0   [apple, truck]
1   [truck, orange]
2   [pear, motorcycle]

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