示例#1
0
def generate_samples(args, cc):
    print("generating samples")
    batch_size = 100

    mixture_source = args.mixture_source
    output_dir = args.output_dir
    sample_size = args.sample_size

    dataloader = cc.create_instance(cc.settings['dataloader']['dataset_name'])
    network_factory = cc.create_instance(cc.settings['network']['name'],
                                         dataloader.n_input_neurons)

    population = Population(individuals=[], default_fitness=0)
    mixture_definition = read_settings(
        os.path.join(mixture_source, 'mixture.yml'))
    for source, weight in mixture_definition.items():
        path = os.path.join(mixture_source, source)
        generator = network_factory.create_generator()
        generator.net.load_state_dict(torch.load(path))
        generator.net.eval()
        population.individuals.append(
            Individual(genome=generator, fitness=0, source=source))

    dataset = MixedGeneratorDataset(
        population, mixture_definition, sample_size * batch_size,
        cc.settings['trainer']['mixture_generator_samples_mode'])
    os.makedirs(output_dir, exist_ok=True)
    LipizzanerMaster().save_samples(dataset, output_dir, dataloader,
                                    sample_size, batch_size)
示例#2
0
def calc_score(args, cc):
    score_calc = ScoreCalculatorFactory.create()
    cc.settings['general']['distribution']['client_id'] = 0
    dataloader = cc.create_instance(cc.settings['dataloader']['dataset_name'])
    network_factory = cc.create_instance(cc.settings['network']['name'],
                                         dataloader.n_input_neurons)

    device = torch.device('cuda' if torch.cuda.is_available() else 'cpu')
    generator = network_factory.create_generator()
    generator.net.load_state_dict(
        torch.load(args.generator_file, map_location=device))
    generator.net.eval()
    individual = Individual(genome=generator, fitness=0, source='local')

    dataset = MixedGeneratorDataset(
        Population(individuals=[individual],
                   default_fitness=0), {'local': 1.0}, 50000,
        cc.settings['trainer']['mixture_generator_samples_mode'])

    output_dir = os.path.join(cc.output_dir, 'score')
    os.makedirs(output_dir, exist_ok=True)
    LipizzanerMaster().save_samples(dataset, output_dir, dataloader)
    inc = score_calc.calculate(dataset)
    _logger.info('Generator loaded from \'{}\' yielded a score of {}'.format(
        args.generator_file, inc))
示例#3
0
def calc_inception_score(args, cc):
    inception_cal = InceptionCalculator(cuda=True)
    dataloader = cc.create_instance(cc.settings['dataloader']['dataset_name'])
    network_factory = cc.create_instance(cc.settings['network']['name'],
                                         dataloader.n_input_neurons)

    generator = network_factory.create_generator()
    generator.net.load_state_dict(torch.load(args.inception_file))
    generator.net.eval()
    individual = Individual(genome=generator, fitness=0, source='local')

    dataset = MixedGeneratorDataset(
        Population(individuals=[individual], default_fitness=0),
        {'local': 1.0}, 50000)

    output_dir = os.path.join(cc.output_dir, 'inception_score')
    os.makedirs(output_dir, exist_ok=True)
    LipizzanerMaster().save_samples(dataset, output_dir, dataloader)
    inc = inception_cal.calculate(dataset)
    _logger.info(
        'Generator loaded from \'{}\' yielded an inception score of {}'.format(
            args.inception_file, inc))
if __name__ == '__main__':
    os.environ['TORCH_MODEL_ZOO'] = os.path.join(os.getcwd(), 'output/.models')

    parser = create_parser()
    args = parser.parse_args(args=sys.argv[1:])

    if 'cuda_device' in args and args.cuda_device:
        print('Enforcing usage of CUDA device {}'.format(args.cuda_device))
        os.environ['CUDA_VISIBLE_DEVICES'] = str(args.cuda_device)

    if args.task == 'train':
        if args.distributed:
            if args.master:
                initialize_settings(args)
                LipizzanerMaster().run()
            elif args.client:
                LipizzanerClient().run()
        else:
            cc = initialize_settings(args)
            lipizzaner = Lipizzaner()
            lipizzaner.run(cc.settings['trainer']['n_iterations'])

    elif args.task == 'score':
        cc = initialize_settings(args)
        calc_score(args, cc)

    elif args.task == 'generate':
        cc = initialize_settings(args)
        generate_samples(args, cc)
    else: