Say, we build a df:

```
import pandas as pd
import random as randy
import numpy as np
df_size = int(1e6)
df = pd.DataFrame({'first': randy.sample(np.repeat([np.NaN,'Cat','Dog','Bear','Fish'],df_size),df_size),
'second': randy.sample(np.repeat([np.NaN,np.NaN,'Cat','Dog'],df_size),df_size),
'value': range(df_size)},
index=randy.sample(pd.date_range('2013-02-01 09:00:00.000000',periods=1e6,freq='U'),df_size)).sort_index()
```

And it looks like this:

```
first second value
2013-02-01 09:00:00 Fish Cat 95409
2013-02-01 09:00:00.000001 Dog Dog 323089
2013-02-01 09:00:00.000002 Fish Cat 785925
2013-02-01 09:00:00.000003 Dog Cat 866171
2013-02-01 09:00:00.000004 nan nan 665702
2013-02-01 09:00:00.000005 Cat nan 104257
2013-02-01 09:00:00.000006 nan nan 152926
2013-02-01 09:00:00.000007 Bear Cat 707747
```

What I'd like is for each value in the 'second' column, I'd like the last 'value' of the first.

```
first second value new_value
2013-02-01 09:00:00 Fish Cat 95409 NaN
2013-02-01 09:00:00.000001 Dog Dog 323089 323089
2013-02-01 09:00:00.000002 Fish Cat 785925 NaN
2013-02-01 09:00:00.000003 Dog Cat 866171 NaN
2013-02-01 09:00:00.000004 nan nan 665702 NaN
2013-02-01 09:00:00.000005 Cat nan 104257 NaN
2013-02-01 09:00:00.000006 nan nan 152926 NaN
2013-02-01 09:00:00.000007 Bear Cat 707747 104257
```

Perhaps, that isn't the absolute best example, but at the bottom, when 'second' is 'Cat', I'd like the most recent value when 'first' was 'Cat'

The real dataset has 1000+ categories so looping through symbol and doing an asof() seems prohibitively expensive. I've never had any luck with passing strings in Cython, but I suppose mapping symbols to ints and do a brute force loop would work -- I was hoping for something more pythonic. (That's still reasonably fast)

A reference, and somewhat fragile Cython hack would be:

```
%%cython
import numpy as np
import sys
cimport cython
cimport numpy as np
ctypedef np.double_t DTYPE_t
def last_of(np.ndarray[DTYPE_t, ndim=1] some_values,np.ndarray[long, ndim=1] first_sym,np.ndarray[long, ndim=1] second_sym):
cdef long val_len = some_values.shape[0], sym1_len = first_sym.shape[0], sym2_len = second_sym.shape[0], i = 0
assert(sym1_len==sym2_len)
assert(val_len==sym1_len)
cdef int enum_space_size = max(first_sym)+1
cdef np.ndarray[DTYPE_t, ndim=1] last_values = np.zeros(enum_space_size, dtype=np.double) * np.NaN
cdef np.ndarray[DTYPE_t, ndim=1] res = np.zeros(val_len, dtype=np.double) * np.NaN
for i in range(0,val_len):
if first_sym[i]>=0:
last_values[first_sym[i]] = some_values[i]
if second_sym[i]<0 or second_sym[i]>=enum_space_size:
res[i] = np.NaN
else:
res[i] = last_values[second_sym[i]]
return res
```

And then some dict replace nonsense:

```
syms= unique(df['first'].values)
enum_dict = dict(zip(syms,range(0,len(syms))))
enum_dict['nan'] = -1
df['enum_first'] = df['first'].replace(enum_dict)
df['enum_second'] = df['second'].replace(enum_dict)
df['last_value'] = last_of(df.value.values*1.0,df.enum_first.values.astype(int64),df.enum_second.values.astype(int64))
```

This has the problem that if the 'second' column has any values not in the first, you've got a problem. (I'm not sure of a fast way to fix this...say if you added 'donkey' to the second)

The cythonic stupid version per 10 million rows is ~ 21 sec for the whole mess, but only ~2 for the cython portion. (Which could be made a decent amount faster)

@HYRY -- I think this is a pretty solid solution; on a DF with 10 million rows, on my laptop, this takes about 30 seconds for me.

Given that I don't know of a simple way to handle when the second list has entries not in the first besides a pretty expensive isin, I think HYRY's python version is pretty good.