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More elaborate documentation for TFMA #129

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WoutRuyters opened this issue May 18, 2021 · 0 comments
Open

More elaborate documentation for TFMA #129

WoutRuyters opened this issue May 18, 2021 · 0 comments

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@WoutRuyters
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WoutRuyters commented May 18, 2021

System information

  • Have I written custom code (as opposed to using a stock example script
    provided in TensorFlow Model Analysis)
    : No
  • OS Platform and Distribution (e.g., Linux Ubuntu 16.04): Linux-4.9.0-4-amd64-x86_64-with-Ubuntu-18.04-bionic
  • TensorFlow Model Analysis installed from (source or binary): source
  • TensorFlow Model Analysis version (use command below): 0.29.0
  • Python version: 3.6.9
  • Jupyter Notebook version: 6.2.0

Describe the problem

I have been trying to apply TensorFlow Model Analysis to a model of mine in which the dataset exists of images. I have found however that the documentation is (in my opinion) quite lacking in quite a few parts of tfma.x
I have also found that most example notebooks use text data, I started by following along this example here. But the problem is that my image data doesn't get decoded before being evaluated, resulting in problems. Are there different tools I should be using when working with images when I want to evaluate my models to prevent this from happening?

So in general I would like a few more example notebooks using tfma and evaluating model fairness on an image dataset and would like to see the tfma documentation be expanded since this is lacking in quite a few parts.

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