BodduSriPavan-111/diemsim

A Python Library Implementing Dimension Insensitive Euclidean Metric (DIEM)

38
/ 100
Emerging

This library helps data scientists and machine learning engineers accurately compare complex, multi-dimensional data points, like embeddings or feature vectors, even when their dimensions vary significantly. It takes in two numerical vectors and outputs a single DIEM score, indicating their similarity. This is for professionals working with high-dimensional data, needing more robust comparison metrics than standard Euclidean distance or Cosine similarity.

No commits in the last 6 months. Available on PyPI.

Use this if you need a highly accurate and computationally efficient way to measure the similarity between complex, multi-dimensional data points where traditional metrics might fall short.

Not ideal if your data is low-dimensional, or if you primarily need a simple, interpretable distance metric where speed is not a critical factor.

data-science machine-learning vector-comparison similarity-measurement high-dimensional-data
Stale 6m
Maintenance 2 / 25
Adoption 4 / 25
Maturity 24 / 25
Community 8 / 25

How are scores calculated?

Stars

8

Forks

1

Language

Jupyter Notebook

License

MIT

Last pushed

Sep 01, 2025

Commits (30d)

0

Dependencies

1

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