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Official Tensorflow Implementation of Deep Metric Learning with Chance Constraints (Chance Constrained Programming for Deep Metric Learning)

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ccp-dml

Official Tensorflow Implementation of Deep Metric Learning with Chance Constraints (Chance Constrained Programming for Deep Metric Learning)

quick info

Implements many dml methods and provides a benchmarking framework.

A detailed guide will be prepared soon.

requirements:

tensorflow >= 2.8

yaml, numpy, PIL, sklearn, scipy, matplotlib, imageio, pprint

instructions:

(1) put custom config files in ./metric_learning/configs

(2) run >python trainModel.py command with arguments

(2.1) dataset can be passes as an argument

(2.2) dataset is downloaded automatically

(3) different configurations can be experimented by changing related .yaml files

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Official Tensorflow Implementation of Deep Metric Learning with Chance Constraints (Chance Constrained Programming for Deep Metric Learning)

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