In Python generally, membership of a hashable collection is best tested via `set`

. We know this because the use of hashing gives us O(1) lookup complexity versus O(n) for `list`

or `np.ndarray`

.

In Pandas, I often have to check for membership in very large collections. I presumed that the same would apply, i.e. checking each item of a series for membership in a `set`

is more efficient than using `list`

or `np.ndarray`

. However, this doesn't seem to be the case:

```
import numpy as np
import pandas as pd
np.random.seed(0)
x_set = {i for i in range(100000)}
x_arr = np.array(list(x_set))
x_list = list(x_set)
arr = np.random.randint(0, 20000, 10000)
ser = pd.Series(arr)
lst = arr.tolist()
%timeit ser.isin(x_set) # 8.9 ms
%timeit ser.isin(x_arr) # 2.17 ms
%timeit ser.isin(x_list) # 7.79 ms
%timeit np.in1d(arr, x_arr) # 5.02 ms
%timeit [i in x_set for i in lst] # 1.1 ms
%timeit [i in x_set for i in ser.values] # 4.61 ms
```

Versions used for testing:

```
np.__version__ # '1.14.3'
pd.__version__ # '0.23.0'
sys.version # '3.6.5'
```

The source code for `pd.Series.isin`

, I believe, utilises `numpy.in1d`

, which presumably means a large overhead for `set`

to `np.ndarray`

conversion.

Negating the cost of constructing the inputs, the implications for Pandas:

- If you know your elements of
`x_list`

or`x_arr`

are unique, don't bother converting to`x_set`

. This will be costly (both conversion and membership tests) for use with Pandas. - Using list comprehensions are the only way to benefit from O(1) set lookup.

My questions are:

- Is my analysis above correct? This seems like an obvious, yet undocumented, result of how
`pd.Series.isin`

has been implemented. - Is there a workaround, without using a list comprehension or
`pd.Series.apply`

, which*does*utilise O(1) set lookup? Or is this an unavoidable design choice and/or corollary of having NumPy as the backbone of Pandas?

**Update**: On an older setup (Pandas / NumPy versions) I see `x_set`

outperform `x_arr`

with `pd.Series.isin`

. So an additional question: has anything fundamentally changed from old to new to cause performance with `set`

to worsen?

```
%timeit ser.isin(x_set) # 10.5 ms
%timeit ser.isin(x_arr) # 15.2 ms
%timeit ser.isin(x_list) # 9.61 ms
%timeit np.in1d(arr, x_arr) # 4.15 ms
%timeit [i in x_set for i in lst] # 1.15 ms
%timeit [i in x_set for i in ser.values] # 2.8 ms
pd.__version__ # '0.19.2'
np.__version__ # '1.11.3'
sys.version # '3.6.0'
```

`in1d`

is only used for Series of size greater than 1000000.`np.unique`

in there, so calling`set`

yourself does not make a difference.`myvalues`

is so small that it doesn't matter, then the O(1) lookup is irrelevant. When`myvalues`

is big enough that the O(1) lookup still isn't enough... well that's where the unique + merge sort kicks in. It's ingenious imo.`ser.apply(x_set.__contains__)`

. It's strange, as I thought there was a pandas internal dict-like datastructure that could be used in cases like this (khash?).`x_idx = pd.RangeIndex(100000); %timeit ser.isin(x_idx)`

but maddeningly it is slower than all your methods. It seems intuition doesn't work here.5more comments