-
Book Overview & Buying
-
Table Of Contents
-
Feedback & Rating

Practical Data Analysis
By :

In data analysis, we often perform processing tasks which are computationally expensive. In these cases we will need multiprocessing tools that enable us to improve the performance. Multiprocessing in IPython is a big enough topic to have its own chapter. In this section, we only show how we can run a map
function into parallel processes with the Pool
object in Wakari.
The
Pool
class is the easiest way to run a parallel process into a Wakari IPython Notebook. In this case, we will create a function that will be applied to each element on a numpy array by using the map_async
method, which is a variant of the map
method that delivers the result asynchronously.
In the following screenshot, we can see the result of the map_async
function of the Pool
object. With the get
method, we will get the result when it arrives:
You can find the multiprocessing module documentation at http://docs.python.org/2/library/multiprocessing.html.
Change the font size
Change margin width
Change background colour