- 06 Jun, 2016 4 commits
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Davis King authored
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Davis King authored
of the parameter vectors.
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Davis E. King authored
save_jpeg: Use TRUE instead of true
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AbdealiJK authored
In some verisons on jpeg, TRUE is an enum, and so `true` fails because it is not of the enum's type. Now, all the libjpeg calls use TRUE/FALSE. Fixes https://github.com/davisking/dlib/issues/129
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- 05 Jun, 2016 1 commit
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Davis King authored
learning rate.
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- 01 Jun, 2016 5 commits
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Davis King authored
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Davis King authored
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Davis King authored
shenanigans in a separate process.
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Davis King authored
just dlib exceptions.
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Davis King authored
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- 31 May, 2016 3 commits
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Davis King authored
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Davis King authored
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Davis King authored
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- 30 May, 2016 10 commits
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Davis King authored
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Davis King authored
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Davis King authored
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Davis King authored
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Davis King authored
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Davis King authored
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Davis E. King authored
Concat layer
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Davis King authored
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Davis E. King authored
Added getter for trainer::train_one_step_calls
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Fm authored
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- 29 May, 2016 1 commit
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Fm authored
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- 27 May, 2016 3 commits
- 26 May, 2016 5 commits
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Evgeniy Fominov authored
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Fm authored
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Fm authored
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https://github.com/davisking/dlibFm authored
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Davis King authored
dimensions of its inputs rather than always outputting a tensor that has the dimensions of its immediate predecessors.
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- 24 May, 2016 4 commits
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Davis King authored
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Davis King authored
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Davis King authored
find_max_box_constrained(). Now the bounds can be empty for some variables.
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Davis King authored
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- 23 May, 2016 4 commits
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Davis King authored
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Davis King authored
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Davis King authored
caused by num_computational_layers being wrong when tax layers were placed as the first layer. These visit functions being wrong also caused multi-GPU support to not work on such networks.
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Davis King authored
std::async() since std::async creates new threads with each invocation, which in turn causes objects with thread_local storage duration to be reconstructed each time. This is problematic because CUDA context objects for cublas and cudnn get reconstructed over and over, slowing things down and generally using more resources than should be used.
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