def main():

    args = doParsing()
    print(args)

    # Read training configuration (config file is in common for dataset creation and training hyperparameters)
    configParams = ConfigParams(args.configFile)

    # Select train device
    trainDevice = selectTrainDevice(args.useGpu)

    # Load DataProvider
    dataProvider = DatasetTFReader(
        datasetDir=args.datasetDir,
        datasetMetadata=DatasetMetadata().initFromJson(os.path.join(args.datasetDir, "metadata.json")),
        configParams=configParams)

    # Load base model graph (fine tuning training)
    baseTFModel = None
    try:
        baseTFModel = TensorflowModel(os.path.join(args.baseModelDir, "graph.pb"))
    except Exception as e:
        print("Warning: no base model provided or impossible to read,"
              " this works only for custom model created from scratch")
        baseTFModel = TensorflowModel()

    # Append classifier for fine tuning training
    trainingModel = ModelFactory.create(config=configParams, tfmodel=baseTFModel,
                                        dataProvider=dataProvider, trainDevice=trainDevice)

    # Run training
    trainProcess = TrainProcess(config=configParams, trainingModel=trainingModel,
                                dataProvider=dataProvider, outputDir=args.checkpointOutputDir,
                                tensorboardDir=args.tensorboardDir)
    trainProcess.runTrain()

    # Freeze graph (graphdef plus parameters),
    # this includes in the graph only the layers needed to provide the output_node_names
    freeze_graph(input_graph=args.checkpointOutputDir + "/model_graph.pb", input_saver="", input_binary=True,
                 input_checkpoint=args.checkpointOutputDir + "/model", output_node_names=configParams.outputName,
                 restore_op_name="save/restore_all", filename_tensor_name="save/Const:0",
                 output_graph=args.modelOutputDir + "/graph.pb", clear_devices=True, initializer_nodes="")
Beispiel #2
0
def create_product():
    data = request.json
    factory = ModelFactory()

    product_id = factory.create(Product,
                                seller=data['seller'],
                                name=data['name'])

    for color in data['option']['color']:
        for size in data['option']['size']:
            factory.create(ProductOption,
                           product_id=product_id,
                           color=color,
                           size=size)
    for seq, image in enumerate(data['images']):
        factory.create(ProductImage,
                       product_id=product_id,
                       seq=int(seq),
                       path=image['path'],
                       url=image['url'])
    factory.create(ProductPrice, product_id=product_id, price=data['price'])

    return jsonify(status=201, message='Created')