The leading use-case for the staircase package is for the creation and analysis of step functions.

Pretty exciting huh.

But don't hit the close button on the browser just yet. Let us convince you that much of the world around you can be modelled as step functions.

For example, the number of users viewing this page over time can be modelled as a step function. The value of the function increases by 1 every time a user arrives at the page, and decreases by 1 every time a user leaves the page. Let's say we have this data in vector format (i.e. tuple, list, numpy array, pandas series). Specifically, assume arrive and leave are vectors of times, expressed as minutes past midnight, for all page views occuring yesterday. Creating the corresponding step function is simple. To achieve it we use the Stairs class:

>>> import staircase as sc

>>> views = sc.Stairs()
>>> views.layer(arrive,leave)

We can visualise the function with the plot function:

>>> views.plot()

pageviews example

We can find the total time in minutes the page was viewed:

>>> views.clip(0,1440).integral()

We can find the average number of viewers:

>>> views.clip(0,1440).mean()

We can find the average number of viewers, per hour of the day, and plot:

>>> views.slice(pd.interval_range(0, periods=24, freq=60)).mean().plot()

mean page views per hour

We can find the maximum concurrent views:

>>> views.clip(0,1440).max()

We can create histogram data showing relative frequency of concurrent viewers (and plot it):

>>> views.clip(0,1440).hist()

concurrent viewers histogram

Plotting is based on matplotlib and it requires relatively little effort to take the previous chart and improve the aesthetics:

concurrent viewers histogram (aesthetic)

There is plenty more analysis that could be done. The staircase package provides a rich variety of arithmetic operations, relational operations, logical operations, statistical operations, for use with Stairs, in addition to functions for univariate analysis, aggregations and compatibility with pandas.Timestamp.


staircase can be installed from PyPI:

python -m pip install staircase

or also with conda:

conda install -c conda-forge staircase


The complete guide to using staircase can be found at


There are many ways in which contributions can be made - the first and foremost being using staircase and giving feedback.

Bug reports, feature requests and ideas can be submitted via the Github issue tracker.

Additionally, bug fixes. enhancements, and improvements to the code and documentation are also appreciated and can be done via pull requests.
Take a look at the current issues and if there is one you would like to work on please leave a comment to that effect.

See this beginner's guide to contributing, or Pandas' guide to contributing, to learn more about the process.