A Python library for optimal data imputation.
Project description
Qolmat - The Tool for Data Imputation
Qolmat provides a convenient way to estimate optimal data imputation techniques by leveraging scikit-learn-compatible algorithms. Users can compare various methods based on different evaluation metrics.
🔗 Requirements
Python 3.8+
🛠 Installation
Qolmat can be installed in different ways:
$ pip install qolmat # installation via `pip`
$ pip install qolmat[tensorflow] # if you need tensorflow
$ pip install git+https://github.com/Quantmetry/qolmat # or directly from the github repository
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