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45 lines
1.4 KiB
Python
45 lines
1.4 KiB
Python
from __future__ import absolute_import
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from __future__ import division
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from __future__ import print_function
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from __future__ import unicode_literals
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from caffe2.python import core, schema
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from caffe2.python.layers.layers import InstantiationContext
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from caffe2.python.layers.tags import Tags
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import itertools
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def generate_predict_net(model):
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predict_net = core.Net('predict_net')
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for layer in model.layers:
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if Tags.TRAIN_ONLY not in layer.tags:
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layer.add_operators(
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predict_net, context=InstantiationContext.PREDICTION)
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return predict_net
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def generate_training_nets(model):
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train_net = core.Net('train_net')
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train_init_net = model.create_init_net('train_init_net')
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loss = model.loss
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for layer in model.layers:
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layer.add_operators(train_net, train_init_net)
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grad_map = train_net.AddGradientOperators(loss.field_blobs())
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for param, optimizer in model.param_to_optim.items():
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if not optimizer:
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optimizer = model.default_optimizer
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optimizer(train_net, train_init_net, param, grad_map[str(param)])
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trainer_schema = schema.Struct(
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*itertools.chain(
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model.trainer_extra_schema.get_children(),
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model.input_feature_schema.get_children(),
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)
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)
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train_net.set_input_record(trainer_schema)
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return train_init_net, train_net
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