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I have two DataFrames, and I would like to perform some operation using both of them as input.


DataFrame A: The x1,y1,x2,y2 correspond to the coordinates of a rectangle

+---+----+----------+----------+----------+----------+
|   | ID |    x1    |    y1    |    x2    |    y2    |
+---+----+----------+----------+----------+----------+
| 0 |  0 | 332833.5 | 502144.0 | 333214.5 | 502460.5 |
| 1 |  1 | 333537.5 | 502144.0 | 333918.5 | 502460.5 |
| 2 |  2 | 334945.5 | 502144.0 | 335326.5 | 502352.0 |
| 3 |  3 | 335713.5 | 502144.0 | 336094.5 | 502352.0 |
| 4 |  4 | 336417.5 | 502144.0 | 336798.5 | 502416.0 |
...
+---+----+----------+----------+----------+----------+

DataFrame B:

+---+-------------+-------------+--+--+
|   | min_matchID | max_matchID |  |  |
+---+-------------+-------------+--+--+
| 0 |           0 |           1 |  |  |
| 1 |           2 |           2 |  |  |
| 2 |           3 |           5 |  |  |
| 3 |           6 |           7 |  |  |
| 4 |           8 |           8 |  |  |
...
+---+-------------+-------------+--+--+

For each row of entry in B with an ID between min_matchID and max_matchID, I would like to:

  • query the corresponding collection of x1,y1,x2,y2 in A (whose IDs fall into range(min_matchID, max_matchID+1))
  • and construct a MultiPolygon class instance (as in python package shapely), e.g.
MultiPolygon([box(332833.5, 502144.0, 333214.5, 502460.5), box(333537.5, 502144.0, 333918.5, 502460.5)])

A brute force for loop is obvious, but it's just too slow. I wonder if there's a vectorized way to do it?

  • Have you profiled your code to see where the slowdown is? I suspect instantiating the MultiPolygon is more costly than you think. – Andrew Guy Mar 15 at 0:30
  • @AndrewGuy My %lprun shows that MultiPolygon instantiation is actually quite down the Pareto, taking ~5% of the total run time. 70% of the run time is consumed by the query (I am using df.iterrows() and df.query()). – XiUpsilon Mar 15 at 1:10
  • As a stylistic tip to make the code much clearer, I would have called A 'pts' and B 'ids'. (Then I would have renamed B's columns to simply min and max. ids['min'] ... ids['max'] is short, clear and self-explanatory. – smci Mar 17 at 2:17
  • @smci thank you very much for the suggestion. That's a great idea. But since there's already a detailed answer that uses the current notation I will not update it to avoid confusion for other readers. – XiUpsilon Mar 18 at 6:21
1

First you can use Index.repeat to repeat rows based on your min_matchID and max_matchID.

import pandas as pd
import numpy as np
from shapely.geometry import MultiPolygon,box
# generate test data
A = pd.DataFrame({'ID':range(0,10000),'x1':range(10000,20000),'y1': range(50000, 60000)
                 ,'x2': range(10000, 20000), 'y2': range(50000, 60000)})
B = pd.DataFrame({'min_matchID':np.random.randint(0,10000,size=(10000))})
B['max_matchID'] = B['min_matchID'] + np.random.randint(0,10,size=(10000))

# start 
B = B.reset_index()
idx = B.index.repeat(B.max_matchID - B.min_matchID + 1)
B = B.reindex(idx).reset_index(drop=True)
B['ID'] =  B['min_matchID'] + idx.to_series().groupby(idx).cumcount().values
print(B)

       index  min_matchID  max_matchID    ID
0          0         6889         6891  6889
1          0         6889         6891  6890
2          0         6889         6891  6891
3          1         8299         8307  8299
4          1         8299         8307  8300
5          1         8299         8307  8301
6          1         8299         8307  8302
7          1         8299         8307  8303
...      ...          ...          ...   ...
54740   9998         4278         4282  4282
54741   9999         3061         3067  3061
54742   9999         3061         3067  3062
54743   9999         3061         3067  3063
54744   9999         3061         3067  3064
54745   9999         3061         3067  3065
54746   9999         3061         3067  3066
54747   9999         3061         3067  3067

Then you can try pd.merge() to combine coordinates.

result = pd.merge(B,A,on='ID',how='left')
print(result)
       index  min_matchID  max_matchID    ID       x1       y1       x2       y2
0          0         6889         6891  6889  16889.0  56889.0  16889.0  56889.0
1          0         6889         6891  6890  16890.0  56890.0  16890.0  56890.0
2          0         6889         6891  6891  16891.0  56891.0  16891.0  56891.0
3          1         8299         8307  8299  18299.0  58299.0  18299.0  58299.0
4          1         8299         8307  8300  18300.0  58300.0  18300.0  58300.0
5          1         8299         8307  8301  18301.0  58301.0  18301.0  58301.0
6          1         8299         8307  8302  18302.0  58302.0  18302.0  58302.0
7          1         8299         8307  8303  18303.0  58303.0  18303.0  58303.0
...      ...          ...          ...   ...      ...      ...      ...      ...
54740   9998         4278         4282  4282  14282.0  54282.0  14282.0  54282.0
54741   9999         3061         3067  3061  13061.0  53061.0  13061.0  53061.0
54742   9999         3061         3067  3062  13062.0  53062.0  13062.0  53062.0
54743   9999         3061         3067  3063  13063.0  53063.0  13063.0  53063.0
54744   9999         3061         3067  3064  13064.0  53064.0  13064.0  53064.0
54745   9999         3061         3067  3065  13065.0  53065.0  13065.0  53065.0
54746   9999         3061         3067  3066  13066.0  53066.0  13066.0  53066.0
54747   9999         3061         3067  3067  13067.0  53067.0  13067.0  53067.0

Finally you can group by index to achieve it.

result = result.groupby('index').apply(lambda x:MultiPolygon([box(x1,y1,x2,y2) for x1,y1,x2,y2 in zip(x.x1,x.y1,x.x2,x.y2)]))
  • Thank you very much for this effort! merge does seem to be a great idea~ There's only one caveat - I probably should've made it more clear in my post - that the min_matchID and max_matchID is referring to a range (from min_matchID to max_matchID). So there might be more than 2 rows of A that need to be aggregated. – XiUpsilon Mar 15 at 17:36
  • @XiUpsilon I've edited the answers according to your new questions. – giser_yugang Mar 16 at 6:39
  • Great! This solves my problem. Thanks~ – XiUpsilon Mar 18 at 6:17

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