def download_model(model_name, logger=None):
    dir_path = os.path.dirname(os.path.realpath(__file__))
    model_path = os.path.join(dir_path, 'model')
    if logger is not None:
        logger.info('Downloading model %s... into path %s' %
                    (model_name, model_path))
    return modelzoo.download_model(args.model, os.path.join(dir_path, 'model'))
Ejemplo n.º 2
0
def load_pretrained_resnext_to_unext101_64_4d(
        ctx,
        need_download=False,
        fine_tune=False,
        migrate_input_norm=True,
        migration_list='layer_migration_list.csv'):

    # Note: fine-tune here is wheather tune pre-trained part

    if need_download:
        zoo.download_model('imagenet1k-resnext-101-64x4d')

    unext_param_list = []
    resnext_params_list = []
    with open(migration_list, newline='') as csvfile:
        list_reader = csv.reader(csvfile, delimiter=',')
        for row in list_reader:
            unext_param_list.append(row[0])
            resnext_params_list.append(row[1])

    if not migrate_input_norm:
        unext_param_list = unext_param_list[4:len(unext_param_list)]
        resnext_params_list = resnext_params_list[4:len(resnext_params_list)]

    migration_dict = dict(zip(unext_param_list, resnext_params_list))
    #print(unext_param_list)
    #print(resnext_params_list)
    #print(migration_dict)

    #sym, arg_params, aux_params = mx.model.load_checkpoint('imagenet1k-resnext-101-64x4d', 0)
    model = unext.unext101_64x4d()
    model_params = model.collect_params()
    migration_params = mx.ndarray.load(
        'imagenet1k-resnext-101-64x4d-0000.params')

    for key in migration_dict:
        model_params[key]._load_init(migration_params[migration_dict[key]],
                                     ctx)

    if not fine_tune:
        for param in unext_param_list:
            model_params[param].grad_req = 'null'
#         for param in model_params.values():
#             param.grad_req = 'null'

    return model
Ejemplo n.º 3
0
def load_pretrained_resnext101_64_4d(ctx,
                                     need_download = True):
    if need_download:
        zoo.download_model('imagenet1k-resnext-101-64x4d')
        
    symbol_path = 'imagenet1k-resnext-101-64x4d-symbol.json'
    param_path = 'imagenet1k-resnext-101-64x4d-0000.params'
    sym = mx.sym.load(symbol_path)
    inter = sym.get_internals()
#     print(inter)
    new_sym = inter['flatten0_output']

    inputsym = mx.sym.var('data', dtype=mx.base.mx_real_t)
    model = mx.gluon.nn.SymbolBlock(outputs=new_sym, inputs=inputsym)
    model.collect_params().load(param_path, ctx=ctx, allow_missing=False, ignore_extra=True)
    
    return model