A library for processing sports features over a dataframe containing sports data.
Project description
sports-features
A library for processing sports features over a dataframe containing sports data.
Dependencies :globe_with_meridians:
Python 3.11.6:
- openskill
- pandas
- feature-engine
- tqdm
- scikit-learn
- geopy
- numpy
- pytest-is-running
- joblib
- timeseries-features
- textfeats
- scipy
- image-features
- requests-cache
Raison D'être :thought_balloon:
sportsfeatures aims to process features relevant to predicting aspects of sporting games.
Architecture :triangular_ruler:
sportsfeatures is a functional library, meaning that each phase of feature extraction gets put through a different function until the final output. It contains some caching when the processing is heavy (such as skill processing). The features its computes are as follows:
- Process the player and teams skill levels using OpenSkill. This is an ELO like rating system giving a probability of win and loss.
- Compute the offensive efficiency of each team/player.
- Compute the time series values of the numeric features for each team/player over the various windows provided. This includes lag, count, sum, mean, median, var, std, min, max, skew, kurt, sem, rank.
- Compute the datetime features for any datetime columns.
- Remove the lookahead features.
Installation :inbox_tray:
This is a python package hosted on pypi, so to install simply run the following command:
pip install sportsfeatures
or install using this local repository:
python setup.py install --old-and-unmanageable
Usage example :eyes:
The use of sportsfeatures is entirely through code due to it being a library. It attempts to hide most of its complexity from the user, so it only has a few functions of relevance in its outward API.
Generating Features
To generate features:
import datetime
import pandas as pd
from sportsfeatures.process import process
from sportsfeatures.identifier import Identifier
from sportsfeatures.entity_type import EntityType
df = ... # Your sports data
identifiers = [
Identifier(EntityType.TEAM, "teams/0/id", ["teams/0/kicks"], "teams/0"),
Identifier(EntityType.TEAM, "teams/1/id", ["teams/1/kicks"], "teams/1"),
]
df = process(df, identifiers, [datetime.timedelta(days=365), None], "dt")
This will produce a dataframe that contains the new sports related features.
License :memo:
The project is available under the MIT License.
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