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A Canvas component to find outliers and common instances in a dataset

Project description

CanvasFamiliarity

A component that displays how familiar certain data points are within a dataset. This is useful for finding outliers and common instances. The familiarity metric is based on a column prefixed familiarity_, which must contain a number that indicates the familiarity value.

Installation

pip install canvas_familiarity

Usage

To learn how to use Canvas, see the documentation.

Development

To learn about how to build Canvas from source and how to contribute to the framework, please look at CONTRIBUTING.md and the development documentation.

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