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185 lines
6.6 KiB
Python
185 lines
6.6 KiB
Python
## @package predictor_exporter
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# Module caffe2.python.predictor.predictor_exporter
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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.proto import caffe2_pb2
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from caffe2.proto import metanet_pb2
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from caffe2.python import workspace, core
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from caffe2.python.predictor_constants import predictor_constants
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import caffe2.python.predictor.serde as serde
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import caffe2.python.predictor.predictor_py_utils as utils
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import collections
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class PredictorExportMeta(collections.namedtuple(
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'PredictorExportMeta',
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'predict_net, parameters, inputs, outputs, shapes, name, extra_init_net')):
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"""
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Metadata to be used for serializaing a net.
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parameters, inputs, outputs could be either BlobReference or blob's names
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predict_net can be either core.Net, NetDef, PlanDef or object
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Override the named tuple to provide optional name parameter.
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name will be used to identify multiple prediction nets.
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"""
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def __new__(
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cls,
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predict_net,
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parameters,
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inputs,
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outputs,
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shapes=None,
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name="",
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extra_init_net=None
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):
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inputs = map(str, inputs)
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outputs = map(str, outputs)
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parameters = map(str, parameters)
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shapes = shapes or {}
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if isinstance(predict_net, (core.Net, core.Plan)):
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predict_net = predict_net.Proto()
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assert isinstance(predict_net, (caffe2_pb2.NetDef, caffe2_pb2.PlanDef))
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return super(PredictorExportMeta, cls).__new__(
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cls, predict_net, parameters, inputs, outputs, shapes, name,
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extra_init_net)
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def inputs_name(self):
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return utils.get_comp_name(predictor_constants.INPUTS_BLOB_TYPE,
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self.name)
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def outputs_name(self):
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return utils.get_comp_name(predictor_constants.OUTPUTS_BLOB_TYPE,
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self.name)
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def parameters_name(self):
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return utils.get_comp_name(predictor_constants.PARAMETERS_BLOB_TYPE,
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self.name)
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def global_init_name(self):
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return utils.get_comp_name(predictor_constants.GLOBAL_INIT_NET_TYPE,
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self.name)
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def predict_init_name(self):
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return utils.get_comp_name(predictor_constants.PREDICT_INIT_NET_TYPE,
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self.name)
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def predict_net_name(self):
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return utils.get_comp_name(predictor_constants.PREDICT_NET_TYPE,
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self.name)
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def train_init_plan_name(self):
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return utils.get_comp_name(predictor_constants.TRAIN_INIT_PLAN_TYPE,
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self.name)
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def train_plan_name(self):
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return utils.get_comp_name(predictor_constants.TRAIN_PLAN_TYPE,
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self.name)
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def prepare_prediction_net(filename, db_type):
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'''
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Helper function which loads all required blobs from the db
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and returns prediction net ready to be used
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'''
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metanet_def = load_from_db(filename, db_type)
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global_init_net = utils.GetNet(
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metanet_def, predictor_constants.GLOBAL_INIT_NET_TYPE)
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workspace.RunNetOnce(global_init_net)
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predict_init_net = utils.GetNet(
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metanet_def, predictor_constants.PREDICT_INIT_NET_TYPE)
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workspace.RunNetOnce(predict_init_net)
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predict_net = core.Net(
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utils.GetNet(metanet_def, predictor_constants.PREDICT_NET_TYPE))
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workspace.CreateNet(predict_net)
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return predict_net
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def _global_init_net(predictor_export_meta):
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net = core.Net("global-init")
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net.Load(
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[predictor_constants.PREDICTOR_DBREADER],
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predictor_export_meta.parameters)
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net.Proto().external_input.extend([predictor_constants.PREDICTOR_DBREADER])
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net.Proto().external_output.extend(predictor_export_meta.parameters)
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return net.Proto()
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def get_meta_net_def(predictor_export_meta, ws=None):
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"""
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"""
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ws = ws or workspace.C.Workspace.current
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# Predict net is the core network that we use.
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meta_net_def = metanet_pb2.MetaNetDef()
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utils.AddNet(meta_net_def, predictor_export_meta.predict_init_name(),
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utils.create_predict_init_net(ws, predictor_export_meta))
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utils.AddNet(meta_net_def, predictor_export_meta.global_init_name(),
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_global_init_net(predictor_export_meta))
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utils.AddNet(meta_net_def, predictor_export_meta.predict_net_name(),
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utils.create_predict_net(predictor_export_meta))
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utils.AddBlobs(meta_net_def, predictor_export_meta.parameters_name(),
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predictor_export_meta.parameters)
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utils.AddBlobs(meta_net_def, predictor_export_meta.inputs_name(),
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predictor_export_meta.inputs)
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utils.AddBlobs(meta_net_def, predictor_export_meta.outputs_name(),
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predictor_export_meta.outputs)
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return meta_net_def
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def set_model_info(meta_net_def, project_str, model_class_str, version):
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assert isinstance(meta_net_def, metanet_pb2.MetaNetDef)
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meta_net_def.modelInfo.project = project_str
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meta_net_def.modelInfo.modelClass = model_class_str
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meta_net_def.modelInfo.version = version
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def save_to_db(db_type, db_destination, predictor_export_meta):
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meta_net_def = get_meta_net_def(predictor_export_meta)
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workspace.FeedBlob(predictor_constants.META_NET_DEF,
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serde.serialize_protobuf_struct(meta_net_def))
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blobs_to_save = [predictor_constants.META_NET_DEF] + \
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predictor_export_meta.parameters
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op = core.CreateOperator(
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"Save",
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blobs_to_save, [],
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absolute_path=True,
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db=db_destination, db_type=db_type)
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workspace.RunOperatorOnce(op)
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def load_from_db(filename, db_type):
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# global_init_net in meta_net_def will load parameters from
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# predictor_constants.PREDICTOR_DBREADER
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create_db = core.CreateOperator(
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'CreateDB', [],
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[core.BlobReference(predictor_constants.PREDICTOR_DBREADER)],
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db=filename, db_type=db_type)
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assert workspace.RunOperatorOnce(create_db), (
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'Failed to create db {}'.format(filename))
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# predictor_constants.META_NET_DEF is always stored before the parameters
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load_meta_net_def = core.CreateOperator(
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'Load',
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[core.BlobReference(predictor_constants.PREDICTOR_DBREADER)],
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[core.BlobReference(predictor_constants.META_NET_DEF)])
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assert workspace.RunOperatorOnce(load_meta_net_def)
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meta_net_def = serde.deserialize_protobuf_struct(
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str(workspace.FetchBlob(predictor_constants.META_NET_DEF)),
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metanet_pb2.MetaNetDef)
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return meta_net_def
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