Analyzing and modeling weekly calendar distributions using latent components
Project description
Latent Calendar
Analyze and model data on a weekly calendar
Installation
Install from PyPI:
pip install latent-calendar
Or install directly from GitHub for the latest functionality.
Features
- Integrated automatically into
pandas
withcal
attribute on DataFrames and Series - Compatible with
scikit-learn
pipelines and transformers - Transform and visualize data on a weekly calendar
- Model weekly calendar data with a mixture of calendars
- Create lower dimensional representations of calendar data
Documentation
Find more examples and documentation here.
Project details
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