I want to calculate quantiles/percentiles on a Pandas Dataframe. However, the function is extremely slow. I repeated it with Numpy and I found that calculating it in Pandas takes almost 10 000 times longer!
Does anybody know why this is the case? Should I rather calculate it using Numpy and then create a new DataFrame instead of using Pandas?
See my code below:
import time import pandas as pd import numpy as np q = np.array([0.1,0.4,0.6,0.9]) data = np.random.randn(10000, 4) df = pd.DataFrame(data, columns=['a', 'b', 'c', 'd']) time1 = time.time() pandas_quantiles = df.quantile(q, axis=1) time2 = time.time() print 'Pandas took %0.3f ms' % ((time2-time1)*1000.0) time1 = time.time() numpy_quantiles = np.percentile(data, q*100, axis=1) time2 = time.time() print 'Numpy took %0.3f ms' % ((time2-time1)*1000.0) print (pandas_quantiles.values == numpy_quantiles).all() # Output: # Pandas took 15337.531 ms # Numpy took 1.653 ms # True