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DeepMapper enables a simple pipeline to process non-image data as images to analyse any high dimensional data using CNNs or various DL algorithms and systemically collect and interpret results

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pyDeepMapper

This package provides the implementation of tansel/DeepMapper

Installation

python3 -m pip -q install git+https://github.com/tansel/pyDeepMapper.git#egg=pyDeepMapper

Overview

DeepMapper enables a simple pipeline to process non-image data as images to analyse any high dimensional data using CNNs or various DL algorithms and systemically collect and interpret results

Jupyter Notebooks

As GitHub doesn't like uploading large data, the data is available from authors in pickle form. Please contact authors to receive data before the data is commited to a public data repository.

References

[1] Tansel Ersavas, Martin A. Smith, John S. Mattick et al. Novel applications of Convolutional Neural Networks in the age of Transformers, 19 January 2024, PREPRINT (Version 1) available at Research Square [https://doi.org/10.21203/rs.3.rs-3868861/v1]

[3] Narine Kokhlikyan et. al. (2020). Captum: A unified and generic model interpretability library for PyTorch. https://github.com/pytorch/captum

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DeepMapper enables a simple pipeline to process non-image data as images to analyse any high dimensional data using CNNs or various DL algorithms and systemically collect and interpret results

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