Data science, Data manipulation and Machine learning package.

Overview

duality-header

duality

Data science, Data manipulation and Machine learning package. Use permitted according to the terms of use and conditions set by the attached license.

Example of use

Visit https://github.com/dkundih/dualityDemonstrationRepo in order to see the demonstration of use in practical examples.

Installation

# using pip
pip install duality

Import

# for Python environment
import duality

For whom is duality made for?

duality is a Python package for Data science and Machine learning, designed to aid researchers and engineers to meet their goals with small effort.

Why duality?

duality disrupts the monotone world of data and gives it meaning.

Is duality free to use?

duality is completely free of charge for both personal and commercial use, but only under the conditions stated in the license. Developing such a complex module isn't easy and takes a lot of time and knowledge in several fields of science such as statistics, programming and domain knowledge, so any donation at https://patreon.com/dkundih or https://www.buymeacoffee.com/dkundih in order to keep duality free is more than welcome.

Who stands behind duality?

The module itself, it's maintenance, updates and stability, logo, videos, promotional materials and everything associated with duality are done by David Kundih from Croatia.

See also:

David Kundih GitHub https://github.com/dkundih

David Kundih PyPi https://pypi.org/user/dkundih

David Kundih ResearchGate https://www.researchgate.net/profile/David-Kundih

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