bl b3017c025f Generalize seasonality representation (Python) 8 rokov pred
..
fbprophet b3017c025f Generalize seasonality representation (Python) 8 rokov pred
stan e33e7c4b37 Make stan code windows-compatible. (#96) 8 rokov pred
LICENSE 9977a97266 Copy of LICENSE in python repo 8 rokov pred
MANIFEST.in 1a57d19148 Allow to build models in-place. (#100) 8 rokov pred
README e51b42b336 Initial commit 8 rokov pred
setup.py efe8299c0a Modify setup.py so pip install completes succesfully (#231) 8 rokov pred

README

Prophet: Automatic Forecasting Procedure
========================================

Prophet is a procedure for forecasting time series data. It is based on an additive model where non-linear trends are fit with yearly and weekly seasonality, plus holidays. It works best with daily periodicity data with at least one year of historical data. Prophet is robust to missing data, shifts in the trend, and large outliers.

Prophet is `open source software `_ released by Facebook's `Core Data Science team `_.

Full documentation and examples available at the homepage: https://facebookincubator.github.io/prophet/

Important links
---------------

- HTML documentation: https://facebookincubator.github.io/prophet/docs/quick_start.html
- Issue tracker: https://github.com/facebookincubator/prophet/issues
- Source code repository: https://github.com/facebookincubator/prophet
- Implementation of Prophet in R: https://cran.r-project.org/package=prophet


Other forecasting packages
--------------------------

- Rob Hyndman's `forecast package `_
- `Statsmodels `_


Installation
------------

::

$ pip install fbprophet


Note: Installation requires PyStan, which has its `own installation instructions `_. On Windows, PyStan requires a compiler so you'll need to `follow the instructions`_. The key step is installing a recent `C++ compiler `_.

Example usage
-------------

::

>>> from fbprophet import Prophet
>>> m = Prophet()
>>> m.fit(df) # df is a pandas.DataFrame with 'y' and 'ds' columns
>>> future = m.make_future_dataframe(periods=365)
>>> m.predict(future)