I plotted a box plot in Bokeh and another in matplotlib. Plotting in Bokeh was about 100 times slower for the same data. Why does Bokeh take so long? Here is the code, I ran this in Jupyter notebook:

```
import pandas as pd
import numpy as np
import matplotlib.pyplot as plt
import matplotlib as mpl
from bokeh.charts import BoxPlot, output_notebook, show
from time import time
%matplotlib inline
# Generate data
N = 100000
x1 = 2 + np.random.randn(N)
y1 = ['a'] * N
x2 = -2 + np.random.randn(N)
y2 = ['b'] * N
X = list(x1) + list(x2)
Y = y1 + y2
data = pd.DataFrame()
data['Vals'] = X
data['Class'] = Y
df = data.apply(np.random.permutation)
# Time the bokeh plot
start_time = time()
p = BoxPlot(data, values='Vals', label='Class',\
title="MPG Summary (grouped by CYL, ORIGIN)")
output_notebook()
show(p)
end_time = time()
print("Total time taken for Bokeh is {0}".format(end_time - start_time))
# time the matplotlib plot
start_time = time()
data.boxplot(column='Vals', by='Class', sym = 'o')
end_time = time()
print("Total time taken for matplotlib is {0}".format(end_time - start_time))
```

The print statements produce the following outputs:

Total time taken for Bokeh is 11.8056321144104

Total time taken for matplotlib is 0.1586170196533203

`bokeh`

is written purely in Python?`matplotlib`

is built on top of`numpy`

, which is significantly faster. – roganjosh Mar 9 '17 at 15:41