Suppose I have two tables `A`

and `B`

.

Table `A`

has a multi-level index `(a, b)`

and one column (ts).
`b`

determines univocally ts.

```
A = pd.DataFrame(
[('a', 'x', 4),
('a', 'y', 6),
('a', 'z', 5),
('b', 'x', 4),
('b', 'z', 5),
('c', 'y', 6)],
columns=['a', 'b', 'ts']).set_index(['a', 'b'])
AA = A.reset_index()
```

Table `B`

is another one-column (ts) table with non-unique index (`a`

).
The ts's are sorted "inside" each group, i.e., `B.ix[x]`

is sorted for each x.
Moreover, there is *always* a value in `B.ix[x]`

that is greater than or equal to
the values in `A`

.

```
B = pd.DataFrame(
dict(a=list('aaaaabbcccccc'),
ts=[1, 2, 4, 5, 7, 7, 8, 1, 2, 4, 5, 8, 9])).set_index('a')
```

The semantics in this is that `B`

contains observations of occurrences of an event of type indicated by the index.

I would like to find from `B`

the timestamp of the first occurrence of each event type after the timestamp specified in `A`

for each value of `b`

. In other words, I would like to get a table with the same shape of `A`

, that instead of ts contains the "minimum value occurring after ts" as specified by table `B`

.

So, my goal would be:

```
C:
('a', 'x') 4
('a', 'y') 7
('a', 'z') 5
('b', 'x') 7
('b', 'z') 7
('c', 'y') 8
```

I have some working code, but is terribly slow.

```
C = AA.apply(lambda row: (
row[0],
row[1],
B.ix[row[0]].irow(np.searchsorted(B.ts[row[0]], row[2]))), axis=1).set_index(['a', 'b'])
```

Profiling shows the culprit is obviously `B.ix[row[0]].irow(np.searchsorted(B.ts[row[0]], row[2])))`

. However, standard solutions using merge/join would take too much RAM in the long run.

Consider that now I have 1000 `a`

's, assume constant the average number of b's per a (probably 100-200), and consider that the number of observations per a is probably in the order of 300. In production I will have 1000 more `a`

's.

`1,000,000 x 200 x 300 = 60,000,000,000`

rows

may be a bit too much to keep in RAM, especially considering that the data I need is perfectly described by a C like the one I discussed above.

How would I improve the performance?

`np.searchsorted(B.ts[row[0]], row[2]))`

Figure out how to pre-sort the data, and it'll go much faster. – PearsonArtPhoto Dec 17 '12 at 17:10