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Hyperoptimize over tmaps #126

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ndiamant opened this issue Feb 10, 2020 · 0 comments
Open

Hyperoptimize over tmaps #126

ndiamant opened this issue Feb 10, 2020 · 0 comments
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enhancement New feature or request

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@ndiamant
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What
Optimize which augmentations, sizes, and covariates to use to minimize loss.
Specify

  • covariates, any subset of which can be used
  • necessary tmaps, all of which must be used
  • choice tmaps, one of which must be used

Why
We don't have a clean way of optimizing over augmentations / shapes / covariates

How
Helper functions in hyperparameters.py that allow you to specify the above.

Acceptance Criteria
Easy to understand/use optimization over input tmaps

@ndiamant ndiamant added the enhancement New feature or request label Feb 10, 2020
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