I am analyzing a DataFrame and getting timing counts which I want to put into specific buckets (0-10 seconds, 10-30 seconds, etc).
Here is a simplified example:
import pandas as pd filter_values = [0, 10, 20, 30] # Bucket Values for pd.cut #Sample Times df1 = pd.DataFrame([1, 3, 8, 20], columns = ['filtercol']) #Use cut to get counts for each bucket out = pd.cut(df1.filtercol, bins = filter_values) counts = pd.value_counts(out) print counts
The above prints:
(0, 10] 3 (10, 20] 1 dtype: int64
You will notice it does not show any values for (20, 30]. This is a problem because I want to put this into my output as zero. I can handle it using the following code:
bucket1=bucket2=bucket3=0 if '(0, 10]' in counts: bucket1=counts['(0, 10]'] if '(10, 20]' in counts: bucket2=counts['(10, 30]'] if '(20, 30]' in counts: bucket3=counts['(30, 60]'] print bucket1, bucket2, bucket3
But I want a simpler cleaner approach where I can use:
print counts['(0, 10]'], counts['(10, 30]'], counts['(30, 60]']
Ideally where the print is based on the values in filter_values so they are only in one place in the code. Yes I know I can change the print to use filter_values...
Lastly when using cut is there a way to specify infinity so the last bucket is all values greater than say 60?