Skip to content

Repackage Bit.ly's data_hacks histogram for convenient script use.

License

Notifications You must be signed in to change notification settings

Kobold/text_histogram

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

16 Commits
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

text_histogram

PyPI version Number of PyPI downloads

Histograms are great for exploring data, but numpy and matplotlib are heavy and overkill for quick analysis. They also can't be easily used on remote servers over ssh. Don't even get me started on installing them.

Bit.ly's data_hacks histogram.py is great but difficult to use from python code directly (it requires an optparse.OptionParser to pass histogram options). This is histogram.py repackaged for convenient script use.

>>> from text_histogram import histogram
>>> import random
>>> histogram([random.gauss(50, 20) for _ in xrange(100)])
# NumSamples = 100; Min = 1.42; Max = 87.36
# Mean = 51.848095; Variance = 332.055832; SD = 18.222399; Median 53.239251
# each ∎ represents a count of 1
    1.4221 -    10.0159 [     3]: ∎∎∎
   10.0159 -    18.6098 [     3]: ∎∎∎
   18.6098 -    27.2036 [     6]: ∎∎∎∎∎∎
   27.2036 -    35.7974 [     4]: ∎∎∎∎
   35.7974 -    44.3913 [    17]: ∎∎∎∎∎∎∎∎∎∎∎∎∎∎∎∎∎
   44.3913 -    52.9851 [    16]: ∎∎∎∎∎∎∎∎∎∎∎∎∎∎∎∎
   52.9851 -    61.5789 [    17]: ∎∎∎∎∎∎∎∎∎∎∎∎∎∎∎∎∎
   61.5789 -    70.1728 [    20]: ∎∎∎∎∎∎∎∎∎∎∎∎∎∎∎∎∎∎∎∎
   70.1728 -    78.7666 [     8]: ∎∎∎∎∎∎∎∎
   78.7666 -    87.3604 [     6]: ∎∎∎∎∎∎

Installation

$ pip install text_histogram

Source: https://github.com/Kobold/text_histogram

About

Repackage Bit.ly's data_hacks histogram for convenient script use.

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages