(Re)quantize existing QKeras model with model_quantize#19
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thesps wants to merge 1 commit intogoogle:masterfrom
Open
(Re)quantize existing QKeras model with model_quantize#19thesps wants to merge 1 commit intogoogle:masterfrom
thesps wants to merge 1 commit intogoogle:masterfrom
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Contributor
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Hello @thesps, thank you for the PR! Could you also add file to demonstrate your usage and tests? I want more information to review this PR. |
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Contributor
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Hello @thesps, thank you for the PR! Could you also add file to demonstrate your usage and tests? I want more information to review this PR. |
Contributor
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Hi, there are conflicts in utils.py. Please solve if you want to proceed. thanks! |
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Add to
model_quantizethe capability to accept an existingqkerasmodel and return a model with a differentquantizer_config.This could be used, for example, to train at higher precision then initialize a lower precision model with
transfer_weights=Trueto speedup convergence of the lower precision model.