I have a MultiIndex DataFrame on which I am selecting interesting cross-sections. The code works, but is slow on large datasets which makes me think I'm doing something wrong. Essentially I have been concatenating multiple cross-sections into a new DataFrame, and I am looking for a better way.
import pandas as pd import numpy as np import itertools # setup dataset event = ['event0', 'event1', 'event2'] node = ['n0', 'n1', 'n2', 'n3'] config = ['a', 'b'] data =  for x in itertools.product(*[event, node, config]): data.append([x, x, x, np.random.randn()]) df = pd.DataFrame(data, columns=['event', 'node', 'config', 'value']) dfi = df.set_index(['event', 'node']) print dfi.head(n=12)
which looks like:
config value event node event0 n0 a 1.256259 n0 b 0.612465 n1 a 1.593518 n1 b -0.747131 n2 a 0.719973 n2 b 1.063480 n3 a -0.943120 n3 b 2.021804 event1 n0 a -1.427104 n0 b -0.440886 n1 a 0.168212 n1 b -1.084987
I do some analysis which gives me a list of indexes that I care about:
# Find interesting (event,node) g = df.groupby(['event', 'node'])['value'] gmin = g.min() idxs = gmin[(gmin<-1.2)].index print idxs #idxs = [(u'event1', u'n0'), (u'event1', u'n2'), (u'event2', u'n0')]
And the clumsy cross-sections
Now I just care about the interesting event, node combinations. This is the part which is slow on real data sets. Each
.xs might take 100ms, but they add up:
df2 = pd.concat([dfi.xs(idx) for idx in idxs]) print df2
Which gives the value for every configuration of the interesting (event, node) cross section:
config value event node event1 n0 a -1.427104 n0 b -0.440886 n2 a 0.273871 n2 b -1.224801 event2 n0 a -1.297496 n0 b -1.087568
- A similar question recommends a Panel. I have not been able to figure out the right indexes to make this work.