Esempio n. 1
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    def __call__(self, model):
        paddleslim = try_import('paddleslim')
        from paddleslim.analysis import dygraph_flops as flops
        input_spec = [{
            "image":
            paddle.ones(shape=[1, 3, 640, 640], dtype='float32'),
            "im_shape":
            paddle.full([1, 2], 640, dtype='float32'),
            "scale_factor":
            paddle.ones(shape=[1, 2], dtype='float32')
        }]
        if self.print_params:
            print_prune_params(model)

        ori_flops = flops(model, input_spec) / 1000
        logger.info("FLOPs before pruning: {}GFLOPs".format(ori_flops))
        if self.criterion == 'fpgm':
            pruner = paddleslim.dygraph.FPGMFilterPruner(model, input_spec)
        elif self.criterion == 'l1_norm':
            pruner = paddleslim.dygraph.L1NormFilterPruner(model, input_spec)

        logger.info("pruned params: {}".format(self.pruned_params))
        pruned_ratios = [float(n) for n in self.pruned_ratios]
        ratios = {}
        for i, param in enumerate(self.pruned_params):
            ratios[param] = pruned_ratios[i]
        pruner.prune_vars(ratios, [0])
        pruned_flops = flops(model, input_spec) / 1000
        logger.info("FLOPs after pruning: {}GFLOPs; pruned ratio: {}".format(
            pruned_flops, (ori_flops - pruned_flops) / ori_flops))

        return model
Esempio n. 2
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def _prune_model(pruner, config, model):
    from paddleslim.analysis import dygraph_flops as flops
    logger.info("FLOPs before pruning: {}GFLOPs".format(
        flops(model, [1] + config["Global"]["image_shape"]) / 1e9))
    model.eval()

    params = []
    for sublayer in model.sublayers():
        for param in sublayer.parameters(include_sublayers=False):
            if isinstance(sublayer, paddle.nn.Conv2D):
                params.append(param.name)
    ratios = {}
    for param in params:
        ratios[param] = config["Slim"]["prune"]["pruned_ratio"]
    plan = pruner.prune_vars(ratios, [0])

    logger.info("FLOPs after pruning: {}GFLOPs; pruned ratio: {}".format(
        flops(model, [1] + config["Global"]["image_shape"]) / 1e9,
        plan.pruned_flops))

    for param in model.parameters():
        if "conv2d" in param.name:
            logger.info("{}\t{}".format(param.name, param.shape))

    model.train()
Esempio n. 3
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def main():
    cfg = load_config(FLAGS.config)

    if 'architecture' in cfg:
        main_arch = cfg.architecture
    else:
        raise ValueError("'architecture' not specified in config file.")

    merge_config(FLAGS.opt)

    # Use CPU for exporting inference model instead of GPU
    place = fluid.CPUPlace()
    exe = fluid.Executor(place)

    model = create(main_arch)

    startup_prog = fluid.Program()
    infer_prog = fluid.Program()
    with fluid.program_guard(infer_prog, startup_prog):
        with fluid.unique_name.guard():
            inputs_def = cfg['TestReader']['inputs_def']
            inputs_def['use_dataloader'] = False
            feed_vars, _ = model.build_inputs(**inputs_def)
            test_fetches = model.test(feed_vars)
    infer_prog = infer_prog.clone(True)

    pruned_params = FLAGS.pruned_params
    assert (
        FLAGS.pruned_params is not None
    ), "FLAGS.pruned_params is empty!!! Please set it by '--pruned_params' option."
    pruned_params = FLAGS.pruned_params.strip().split(",")
    logger.info("pruned params: {}".format(pruned_params))
    pruned_ratios = [float(n) for n in FLAGS.pruned_ratios.strip().split(",")]
    logger.info("pruned ratios: {}".format(pruned_ratios))
    assert (len(pruned_params) == len(pruned_ratios)
            ), "The length of pruned params and pruned ratios should be equal."
    assert (pruned_ratios > [0] * len(pruned_ratios) and
            pruned_ratios < [1] * len(pruned_ratios)
            ), "The elements of pruned ratios should be in range (0, 1)."

    base_flops = flops(infer_prog)
    pruner = Pruner()
    infer_prog, _, _ = pruner.prune(
        infer_prog,
        fluid.global_scope(),
        params=pruned_params,
        ratios=pruned_ratios,
        place=place,
        only_graph=True)
    pruned_flops = flops(infer_prog)
    logger.info("pruned FLOPS: {}".format(
        float(base_flops - pruned_flops) / base_flops))

    exe.run(startup_prog)
    checkpoint.load_checkpoint(exe, infer_prog, cfg.weights)

    save_infer_model(FLAGS, exe, feed_vars, test_fetches, infer_prog)
Esempio n. 4
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    def test_prune(self):
        main_program = fluid.Program()
        startup_program = fluid.Program()
        #   X       X              O       X              O
        # conv1-->conv2-->sum1-->conv3-->conv4-->sum2-->conv5-->conv6
        #     |            ^ |                    ^
        #     |____________| |____________________|
        #
        # X: prune output channels
        # O: prune input channels
        with fluid.program_guard(main_program, startup_program):
            input = fluid.data(name="image", shape=[None, 3, 16, 16])
            conv1 = conv_bn_layer(input, 8, 3, "conv1")
            conv2 = conv_bn_layer(conv1, 8, 3, "conv2")
            sum1 = conv1 + conv2
            conv3 = conv_bn_layer(sum1, 8, 3, "conv3")
            conv4 = conv_bn_layer(conv3, 8, 3, "conv4")
            sum2 = conv4 + sum1
            conv5 = conv_bn_layer(sum2, 8, 3, "conv5")
            conv6 = conv_bn_layer(conv5, 8, 3, "conv6")

        shapes = {}
        for param in main_program.global_block().all_parameters():
            shapes[param.name] = param.shape

        place = fluid.CPUPlace()
        exe = fluid.Executor(place)
        scope = fluid.Scope()
        exe.run(startup_program, scope=scope)

        pruned_flops = 0.5
        pruner = AutoPruner(main_program,
                            scope,
                            place,
                            params=["conv4_weights"],
                            init_ratios=[0.5],
                            pruned_flops=0.5,
                            pruned_latency=None,
                            server_addr=("", 0),
                            init_temperature=100,
                            reduce_rate=0.85,
                            max_try_number=300,
                            max_client_num=10,
                            search_steps=2,
                            max_ratios=[0.9],
                            min_ratios=[0],
                            key="auto_pruner")

        base_flops = flops(main_program)
        program = pruner.prune(main_program)
        self.assertTrue(flops(program) <= base_flops * (1 - pruned_flops))
        pruner.reward(1)

        program = pruner.prune(main_program)
        self.assertTrue(flops(program) <= base_flops * (1 - pruned_flops))
        pruner.reward(1)
Esempio n. 5
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    def runTest(self):
        x_shape = (1, 3, 32, 32)
        y_shape = (1, 3, 16, 16)
        net = Net2()
        x = np.random.uniform(-1, 1, x_shape).astype('float32')
        y = np.random.uniform(-1, 1, y_shape).astype('float32')

        inputs = [paddle.to_tensor(x), paddle.to_tensor(y)]
        FLOPs1 = flops(net, inputs)
        shapes = [x_shape, y_shape]
        FLOPs2 = flops(net, shapes, dtypes=["float32", "float32"])
        self.assertTrue(FLOPs1 == FLOPs2)
Esempio n. 6
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    def get_ratios_by_sensitivity(self,
                                  pruned_flops,
                                  align=None,
                                  dims=[0],
                                  skip_vars=[]):
        """
         Get a group of ratios by sensitivities.
         Args:
             pruned_flops(float): The excepted rate of FLOPs to be pruned. It should be in range (0, 1).
             align(int, optional): Round the size of each pruned dimension to multiple of 'align' if 'align' is not None. Default: None.
             dims(list, optional): The dims to be pruned on. [0] means pruning channels of output for convolution. Default: [0].
             skip_vars(list, optional): The names of tensors whose sensitivity won't be computed. "None" means skip nothing. Default: None.

        Returns:
            tuple: A tuple with format ``(ratios, pruned_flops)`` . "ratios" is a dict whose key is name of tensor and value is ratio to be pruned. "pruned_flops" is the ratio of total pruned FLOPs in the model.
        """
        base_flops = flops(self.model, self.inputs)

        _logger.debug("Base FLOPs: {}".format(base_flops))
        low = 0.
        up = 1.0
        history = set()
        while low < up:
            loss = (low + up) / 2
            ratios = self._get_ratios_by_loss(self._status.sensitivies,
                                              loss,
                                              skip_vars=skip_vars)
            _logger.debug("pruning ratios: {}".format(ratios))
            if align is not None:
                ratios = self._round_to(ratios, dims=dims, factor=align)
            plan = self.prune_vars(ratios, axis=dims)
            c_flops = flops(self.model, self.inputs)
            _logger.debug("FLOPs after pruning: {}".format(c_flops))
            c_pruned_flops = (base_flops - c_flops) / base_flops
            plan.restore(self.model)
            _logger.debug(
                "Seaching ratios, pruned FLOPs: {}".format(c_pruned_flops))
            key = str(round(c_pruned_flops, 4))
            if key in history:
                return ratios, c_pruned_flops
            history.add(key)
            if c_pruned_flops < pruned_flops:
                low = loss
            elif c_pruned_flops > pruned_flops:
                up = loss
            else:
                return ratios, c_pruned_flops
        return ratios, c_pruned_flops
Esempio n. 7
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    def _flops(self, loader):
        self.model.eval()
        try:
            import paddleslim
        except Exception as e:
            logger.warning(
                'Unable to calculate flops, please install paddleslim, for example: `pip install paddleslim`'
            )
            return

        from paddleslim.analysis import dygraph_flops as flops
        input_data = None
        for data in loader:
            input_data = data
            break

        input_spec = [{
            "image":
            input_data['image'][0].unsqueeze(0),
            "im_shape":
            input_data['im_shape'][0].unsqueeze(0),
            "scale_factor":
            input_data['scale_factor'][0].unsqueeze(0)
        }]
        flops = flops(self.model, input_spec) / (1000**3)
        logger.info(" Model FLOPs : {:.6f}G. (image shape is {})".format(
            flops, input_data['image'][0].unsqueeze(0).shape))
Esempio n. 8
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 def test_prune(self):
     main_program = fluid.Program()
     startup_program = fluid.Program()
     with fluid.program_guard(main_program, startup_program):
         input = fluid.data(name="image", shape=[None, 3, 16, 16])
         conv1 = conv_bn_layer(input, 8, 3, "conv1")
         conv2 = conv_bn_layer(conv1, 8, 3, "conv2")
         sum1 = conv1 + conv2
         conv3 = conv_bn_layer(sum1, 8, 3, "conv3")
         conv4 = conv_bn_layer(conv3, 8, 3, "conv4")
         sum2 = conv4 + sum1
         conv5 = conv_bn_layer(sum2, 8, 3, "conv5")
         conv6 = conv_bn_layer(conv5, 8, 3, "conv6")
     self.assertTrue(792576 == flops(main_program))
Esempio n. 9
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    def runTest(self):
        x_shape = (1, 3, 32, 32)
        y_shape = (1, 3, 16, 16)
        net = Net1()
        x = np.random.uniform(-1, 1, x_shape).astype('float32')
        y = np.random.uniform(-1, 1, y_shape).astype('float32')

        inputs = {
            "x": paddle.to_tensor(x),
            "y": paddle.to_tensor(y),
            "z": "test"
        }
        FLOPs = flops(net, [inputs])
        self.assertTrue(FLOPs == 59184)
Esempio n. 10
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    def compute_constraint(self, program):
        if self.ctype == 'flops':
            model_status = flops(program)
        elif self.ctype == 'latency':
            assert os.path.exists(
                self.table_file
            ), "latency constraint must have latency table, please check whether table file exist!"
            model_latency = TableLatencyEvaluator(self.table_file)
            model_status = model_latency.latency(program, only_conv=True)
        else:
            raise NotImplementedError(
                "{} constraint is NOT support!!! Now PaddleSlim support flops constraint and latency constraint"
                .format(self.ctype))

        return model_status
Esempio n. 11
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    def test_nas(self):

        factory = SearchSpaceFactory()
        config0 = {'input_size': 224, 'output_size': 7, 'block_num': 5}
        config1 = {'input_size': 7, 'output_size': 1, 'block_num': 2}
        configs = [('MobileNetV2Space', config0), ('ResNetSpace', config1)]

        space = factory.get_search_space([('MobileNetV2Space', config0)])
        origin_arch = space.token2arch()[0]

        main_program = fluid.Program()
        s_program = fluid.Program()
        with fluid.program_guard(main_program, s_program):
            input = fluid.data(name="input",
                               shape=[None, 3, 224, 224],
                               dtype="float32")
            origin_arch(input)
        base_flops = flops(main_program)

        search_steps = 3
        sa_nas = SANAS(configs,
                       search_steps=search_steps,
                       server_addr=("", 0),
                       is_server=True)

        for i in range(search_steps):
            archs = sa_nas.next_archs()
            main_program = fluid.Program()
            s_program = fluid.Program()
            with fluid.program_guard(main_program, s_program):
                input = fluid.data(name="input",
                                   shape=[None, 3, 224, 224],
                                   dtype="float32")
                archs[0](input)
            sa_nas.reward(1)
            self.assertTrue(flops(main_program) < base_flops)
Esempio n. 12
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def main():
    env = os.environ
    cfg = load_config(FLAGS.config)
    merge_config(FLAGS.opt)
    check_config(cfg)
    # check if set use_gpu=True in paddlepaddle cpu version
    check_gpu(cfg.use_gpu)
    check_version()

    main_arch = cfg.architecture

    if cfg.use_gpu:
        devices_num = fluid.core.get_cuda_device_count()
    else:
        devices_num = int(os.environ.get('CPU_NUM', 1))

    if 'FLAGS_selected_gpus' in env:
        device_id = int(env['FLAGS_selected_gpus'])
    else:
        device_id = 0
    place = fluid.CUDAPlace(device_id) if cfg.use_gpu else fluid.CPUPlace()
    exe = fluid.Executor(place)

    # build program
    model = create(main_arch)
    inputs_def = cfg['TrainReader']['inputs_def']
    train_feed_vars, train_loader = model.build_inputs(**inputs_def)
    train_fetches = model.train(train_feed_vars)
    loss = train_fetches['loss']

    start_iter = 0
    train_reader = create_reader(cfg.TrainReader,
                                 (cfg.max_iters - start_iter) * devices_num,
                                 cfg)
    # When iterable mode, set set_sample_list_generator(train_reader, place)
    train_loader.set_sample_list_generator(train_reader)

    eval_prog = fluid.Program()
    with fluid.program_guard(eval_prog, fluid.default_startup_program()):
        with fluid.unique_name.guard():
            model = create(main_arch)
            inputs_def = cfg['EvalReader']['inputs_def']
            test_feed_vars, eval_loader = model.build_inputs(**inputs_def)
            fetches = model.eval(test_feed_vars)
    eval_prog = eval_prog.clone(True)

    eval_reader = create_reader(cfg.EvalReader)
    # When iterable mode, set set_sample_list_generator(eval_reader, place)
    eval_loader.set_sample_list_generator(eval_reader)

    teacher_cfg = load_config(FLAGS.teacher_config)
    merge_config(FLAGS.opt)
    teacher_arch = teacher_cfg.architecture
    teacher_program = fluid.Program()
    teacher_startup_program = fluid.Program()

    with fluid.program_guard(teacher_program, teacher_startup_program):
        with fluid.unique_name.guard():
            teacher_feed_vars = OrderedDict()
            for name, var in train_feed_vars.items():
                teacher_feed_vars[name] = teacher_program.global_block(
                )._clone_variable(var, force_persistable=False)
            model = create(teacher_arch)
            train_fetches = model.train(teacher_feed_vars)
            teacher_loss = train_fetches['loss']

    exe.run(teacher_startup_program)
    assert FLAGS.teacher_pretrained, "teacher_pretrained should be set"
    checkpoint.load_params(exe, teacher_program, FLAGS.teacher_pretrained)
    teacher_program = teacher_program.clone(for_test=True)

    target_number = len(model.yolo_head.anchor_masks)

    data_name_map = {
        'image': 'image',
        'gt_bbox': 'gt_bbox',
        'gt_class': 'gt_class',
        'gt_score': 'gt_score'
    }
    for i in range(target_number):
        data_name_map['target{}'.format(i)] = 'target{}'.format(i)

    merge(teacher_program, fluid.default_main_program(), data_name_map, place)

    output_names = [
        [
            'strided_slice_0.tmp_0', 'strided_slice_1.tmp_0',
            'strided_slice_2.tmp_0', 'strided_slice_3.tmp_0',
            'strided_slice_4.tmp_0', 'transpose_0.tmp_0'
        ],
        [
            'strided_slice_5.tmp_0', 'strided_slice_6.tmp_0',
            'strided_slice_7.tmp_0', 'strided_slice_8.tmp_0',
            'strided_slice_9.tmp_0', 'transpose_2.tmp_0'
        ],
        [
            'strided_slice_10.tmp_0', 'strided_slice_11.tmp_0',
            'strided_slice_12.tmp_0', 'strided_slice_13.tmp_0',
            'strided_slice_14.tmp_0', 'transpose_4.tmp_0'
        ],
    ]

    yolo_output_names = []
    for i in range(target_number):
        yolo_output_names.extend(output_names[i])

    assert cfg.use_fine_grained_loss, \
        "Only support use_fine_grained_loss=True, Please set it in config file or '-o use_fine_grained_loss=true'"
    distill_loss = split_distill(yolo_output_names, 1000, target_number)
    loss = distill_loss + loss
    lr_builder = create('LearningRate')
    optim_builder = create('OptimizerBuilder')
    lr = lr_builder()
    opt = optim_builder(lr)
    opt.minimize(loss)

    exe.run(fluid.default_startup_program())
    checkpoint.load_params(exe, fluid.default_main_program(),
                           cfg.pretrain_weights)


    assert FLAGS.pruned_params is not None, \
        "FLAGS.pruned_params is empty!!! Please set it by '--pruned_params' option."
    pruned_params = FLAGS.pruned_params.strip().split(",")
    logger.info("pruned params: {}".format(pruned_params))
    pruned_ratios = [float(n) for n in FLAGS.pruned_ratios.strip().split(",")]
    logger.info("pruned ratios: {}".format(pruned_ratios))
    assert len(pruned_params) == len(pruned_ratios), \
        "The length of pruned params and pruned ratios should be equal."
    assert pruned_ratios > [0] * len(pruned_ratios) and pruned_ratios < [1] * len(pruned_ratios), \
        "The elements of pruned ratios should be in range (0, 1)."

    assert FLAGS.prune_criterion in ['l1_norm', 'geometry_median'], \
            "unsupported prune criterion {}".format(FLAGS.prune_criterion)
    pruner = Pruner(criterion=FLAGS.prune_criterion)
    distill_prog = pruner.prune(fluid.default_main_program(),
                                fluid.global_scope(),
                                params=pruned_params,
                                ratios=pruned_ratios,
                                place=place,
                                only_graph=False)[0]

    base_flops = flops(eval_prog)
    eval_prog = pruner.prune(eval_prog,
                             fluid.global_scope(),
                             params=pruned_params,
                             ratios=pruned_ratios,
                             place=place,
                             only_graph=True)[0]
    pruned_flops = flops(eval_prog)
    logger.info("FLOPs -{}; total FLOPs: {}; pruned FLOPs: {}".format(
        float(base_flops - pruned_flops) / base_flops, base_flops,
        pruned_flops))

    build_strategy = fluid.BuildStrategy()
    build_strategy.fuse_all_reduce_ops = False
    build_strategy.fuse_all_optimizer_ops = False
    build_strategy.fuse_elewise_add_act_ops = True
    # only enable sync_bn in multi GPU devices
    sync_bn = getattr(model.backbone, 'norm_type', None) == 'sync_bn'
    build_strategy.sync_batch_norm = sync_bn and devices_num > 1 \
        and cfg.use_gpu

    exec_strategy = fluid.ExecutionStrategy()
    # iteration number when CompiledProgram tries to drop local execution scopes.
    # Set it to be 1 to save memory usages, so that unused variables in
    # local execution scopes can be deleted after each iteration.
    exec_strategy.num_iteration_per_drop_scope = 1

    parallel_main = fluid.CompiledProgram(distill_prog).with_data_parallel(
        loss_name=loss.name,
        build_strategy=build_strategy,
        exec_strategy=exec_strategy)
    compiled_eval_prog = fluid.CompiledProgram(eval_prog)

    # parse eval fetches
    extra_keys = []
    if cfg.metric == 'COCO':
        extra_keys = ['im_info', 'im_id', 'im_shape']
    if cfg.metric == 'VOC':
        extra_keys = ['gt_bbox', 'gt_class', 'is_difficult']
    eval_keys, eval_values, eval_cls = parse_fetches(fetches, eval_prog,
                                                     extra_keys)

    # whether output bbox is normalized in model output layer
    is_bbox_normalized = False
    if hasattr(model, 'is_bbox_normalized') and \
            callable(model.is_bbox_normalized):
        is_bbox_normalized = model.is_bbox_normalized()
    map_type = cfg.map_type if 'map_type' in cfg else '11point'
    best_box_ap_list = [0.0, 0]  #[map, iter]
    cfg_name = os.path.basename(FLAGS.config).split('.')[0]
    save_dir = os.path.join(cfg.save_dir, cfg_name)

    train_loader.start()
    for step_id in range(start_iter, cfg.max_iters):
        teacher_loss_np, distill_loss_np, loss_np, lr_np = exe.run(
            parallel_main,
            fetch_list=[
                'teacher_' + teacher_loss.name, distill_loss.name, loss.name,
                lr.name
            ])
        if step_id % cfg.log_iter == 0:
            logger.info(
                "step {} lr {:.6f}, loss {:.6f}, distill_loss {:.6f}, teacher_loss {:.6f}"
                .format(step_id, lr_np[0], loss_np[0], distill_loss_np[0],
                        teacher_loss_np[0]))
        if step_id % cfg.snapshot_iter == 0 and step_id != 0 or step_id == cfg.max_iters - 1:
            save_name = str(
                step_id) if step_id != cfg.max_iters - 1 else "model_final"
            checkpoint.save(exe, distill_prog,
                            os.path.join(save_dir, save_name))
            # eval
            results = eval_run(exe, compiled_eval_prog, eval_loader, eval_keys,
                               eval_values, eval_cls, cfg)
            resolution = None
            box_ap_stats = eval_results(results, cfg.metric, cfg.num_classes,
                                        resolution, is_bbox_normalized,
                                        FLAGS.output_eval, map_type,
                                        cfg['EvalReader']['dataset'])

            if box_ap_stats[0] > best_box_ap_list[0]:
                best_box_ap_list[0] = box_ap_stats[0]
                best_box_ap_list[1] = step_id
                checkpoint.save(exe, distill_prog,
                                os.path.join("./", "best_model"))
            logger.info("Best test box ap: {}, in step: {}".format(
                best_box_ap_list[0], best_box_ap_list[1]))
    train_loader.reset()
def search_mobilenetv2_block(config, args, image_size):
    image_shape = [3, image_size, image_size]
    if args.is_server:
        sa_nas = SANAS(config,
                       server_addr=(args.server_address, args.port),
                       search_steps=args.search_steps,
                       is_server=True)
    else:
        sa_nas = SANAS(config,
                       server_addr=(args.server_address, args.port),
                       search_steps=args.search_steps,
                       is_server=False)

    for step in range(args.search_steps):
        archs = sa_nas.next_archs()[0]

        train_program = fluid.Program()
        test_program = fluid.Program()
        startup_program = fluid.Program()
        with fluid.program_guard(train_program, startup_program):
            train_loader, data, label = create_data_loader(image_shape)
            data = conv_bn_layer(input=data,
                                 num_filters=32,
                                 filter_size=3,
                                 stride=2,
                                 padding='SAME',
                                 act='relu6',
                                 name='mobilenetv2_conv1')
            data = archs(data)[0]
            data = conv_bn_layer(input=data,
                                 num_filters=1280,
                                 filter_size=1,
                                 stride=1,
                                 padding='SAME',
                                 act='relu6',
                                 name='mobilenetv2_last_conv')
            data = fluid.layers.pool2d(input=data,
                                       pool_size=7,
                                       pool_stride=1,
                                       pool_type='avg',
                                       global_pooling=True,
                                       name='mobilenetv2_last_pool')
            output = fluid.layers.fc(
                input=data,
                size=args.class_dim,
                param_attr=ParamAttr(name='mobilenetv2_fc_weights'),
                bias_attr=ParamAttr(name='mobilenetv2_fc_offset'))

            softmax_out = fluid.layers.softmax(input=output, use_cudnn=False)
            cost = fluid.layers.cross_entropy(input=softmax_out, label=label)
            avg_cost = fluid.layers.mean(cost)
            acc_top1 = fluid.layers.accuracy(input=softmax_out,
                                             label=label,
                                             k=1)
            acc_top5 = fluid.layers.accuracy(input=softmax_out,
                                             label=label,
                                             k=5)
            test_program = train_program.clone(for_test=True)

            optimizer = fluid.optimizer.Momentum(
                learning_rate=0.1,
                momentum=0.9,
                regularization=fluid.regularizer.L2Decay(1e-4))
            optimizer.minimize(avg_cost)

        current_flops = flops(train_program)
        print('step: {}, current_flops: {}'.format(step, current_flops))
        if current_flops > int(321208544):
            continue

        place = fluid.CUDAPlace(0) if args.use_gpu else fluid.CPUPlace()
        exe = fluid.Executor(place)
        exe.run(startup_program)

        if args.data == 'cifar10':
            train_reader = paddle.fluid.io.batch(paddle.reader.shuffle(
                paddle.dataset.cifar.train10(cycle=False), buf_size=1024),
                                                 batch_size=args.batch_size,
                                                 drop_last=True)

            test_reader = paddle.fluid.io.batch(
                paddle.dataset.cifar.test10(cycle=False),
                batch_size=args.batch_size,
                drop_last=False)
        elif args.data == 'imagenet':
            train_reader = paddle.fluid.io.batch(imagenet_reader.train(),
                                                 batch_size=args.batch_size,
                                                 drop_last=True)
            test_reader = paddle.fluid.io.batch(imagenet_reader.val(),
                                                batch_size=args.batch_size,
                                                drop_last=False)

        test_loader, _, _ = create_data_loader(image_shape)
        train_loader.set_sample_list_generator(
            train_reader,
            places=fluid.cuda_places() if args.use_gpu else fluid.cpu_places())
        test_loader.set_sample_list_generator(test_reader, places=place)

        build_strategy = fluid.BuildStrategy()
        train_compiled_program = fluid.CompiledProgram(
            train_program).with_data_parallel(loss_name=avg_cost.name,
                                              build_strategy=build_strategy)
        for epoch_id in range(args.retain_epoch):
            for batch_id, data in enumerate(train_loader()):
                fetches = [avg_cost.name]
                s_time = time.time()
                outs = exe.run(train_compiled_program,
                               feed=data,
                               fetch_list=fetches)[0]
                batch_time = time.time() - s_time
                if batch_id % 10 == 0:
                    _logger.info(
                        'TRAIN: steps: {}, epoch: {}, batch: {}, cost: {}, batch_time: {}ms'
                        .format(step, epoch_id, batch_id, outs[0], batch_time))

        reward = []
        for batch_id, data in enumerate(test_loader()):
            test_fetches = [avg_cost.name, acc_top1.name, acc_top5.name]
            batch_reward = exe.run(test_program,
                                   feed=data,
                                   fetch_list=test_fetches)
            reward_avg = np.mean(np.array(batch_reward), axis=1)
            reward.append(reward_avg)

            _logger.info(
                'TEST: step: {}, batch: {}, avg_cost: {}, acc_top1: {}, acc_top5: {}'
                .format(step, batch_id, batch_reward[0], batch_reward[1],
                        batch_reward[2]))

        finally_reward = np.mean(np.array(reward), axis=0)
        _logger.info(
            'FINAL TEST: avg_cost: {}, acc_top1: {}, acc_top5: {}'.format(
                finally_reward[0], finally_reward[1], finally_reward[2]))

        sa_nas.reward(float(finally_reward[1]))
Esempio n. 14
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def main():
    """
    Main evaluate function
    """
    cfg = load_config(FLAGS.config)
    merge_config(FLAGS.opt)
    check_config(cfg)
    # check if set use_gpu=True in paddlepaddle cpu version
    check_gpu(cfg.use_gpu)
    # check if paddlepaddle version is satisfied
    check_version()

    main_arch = cfg.architecture

    multi_scale_test = getattr(cfg, 'MultiScaleTEST', None)

    # define executor
    place = fluid.CUDAPlace(0) if cfg.use_gpu else fluid.CPUPlace()
    exe = fluid.Executor(place)

    # build program
    model = create(main_arch)
    startup_prog = fluid.Program()
    eval_prog = fluid.Program()
    with fluid.program_guard(eval_prog, startup_prog):
        with fluid.unique_name.guard():
            inputs_def = cfg['EvalReader']['inputs_def']
            feed_vars, loader = model.build_inputs(**inputs_def)
            if multi_scale_test is None:
                fetches = model.eval(feed_vars)
            else:
                fetches = model.eval(feed_vars, multi_scale_test)
    eval_prog = eval_prog.clone(True)

    exe.run(startup_prog)
    reader = create_reader(cfg.EvalReader)
    # When iterable mode, set set_sample_list_generator(reader, place)
    loader.set_sample_list_generator(reader)

    dataset = cfg['EvalReader']['dataset']

    # eval already exists json file
    if FLAGS.json_eval:
        logger.info(
            "In json_eval mode, PaddleDetection will evaluate json files in "
            "output_eval directly. And proposal.json, bbox.json and mask.json "
            "will be detected by default.")
        json_eval_results(
            cfg.metric, json_directory=FLAGS.output_eval, dataset=dataset)
        return

    pruned_params = FLAGS.pruned_params
    assert (
        FLAGS.pruned_params is not None
    ), "FLAGS.pruned_params is empty!!! Please set it by '--pruned_params' option."
    pruned_params = FLAGS.pruned_params.strip().split(",")
    logger.info("pruned params: {}".format(pruned_params))
    pruned_ratios = [float(n) for n in FLAGS.pruned_ratios.strip().split(",")]
    logger.info("pruned ratios: {}".format(pruned_ratios))
    assert (len(pruned_params) == len(pruned_ratios)
            ), "The length of pruned params and pruned ratios should be equal."
    assert (pruned_ratios > [0] * len(pruned_ratios) and
            pruned_ratios < [1] * len(pruned_ratios)
            ), "The elements of pruned ratios should be in range (0, 1)."

    base_flops = flops(eval_prog)
    pruner = Pruner()
    eval_prog, _, _ = pruner.prune(
        eval_prog,
        fluid.global_scope(),
        params=pruned_params,
        ratios=pruned_ratios,
        place=place,
        only_graph=False)
    pruned_flops = flops(eval_prog)
    logger.info("pruned FLOPS: {}".format(
        float(base_flops - pruned_flops) / base_flops))

    compile_program = fluid.CompiledProgram(eval_prog).with_data_parallel()

    assert cfg.metric != 'OID', "eval process of OID dataset \
                          is not supported."

    if cfg.metric == "WIDERFACE":
        raise ValueError("metric type {} does not support in tools/eval.py, "
                         "please use tools/face_eval.py".format(cfg.metric))
    assert cfg.metric in ['COCO', 'VOC'], \
            "unknown metric type {}".format(cfg.metric)
    extra_keys = []

    if cfg.metric == 'COCO':
        extra_keys = ['im_info', 'im_id', 'im_shape']
    if cfg.metric == 'VOC':
        extra_keys = ['gt_bbox', 'gt_class', 'is_difficult']

    keys, values, cls = parse_fetches(fetches, eval_prog, extra_keys)

    # whether output bbox is normalized in model output layer
    is_bbox_normalized = False
    if hasattr(model, 'is_bbox_normalized') and \
            callable(model.is_bbox_normalized):
        is_bbox_normalized = model.is_bbox_normalized()

    sub_eval_prog = None
    sub_keys = None
    sub_values = None
    # build sub-program
    if 'Mask' in main_arch and multi_scale_test:
        sub_eval_prog = fluid.Program()
        with fluid.program_guard(sub_eval_prog, startup_prog):
            with fluid.unique_name.guard():
                inputs_def = cfg['EvalReader']['inputs_def']
                inputs_def['mask_branch'] = True
                feed_vars, eval_loader = model.build_inputs(**inputs_def)
                sub_fetches = model.eval(
                    feed_vars, multi_scale_test, mask_branch=True)
                assert cfg.metric == 'COCO'
                extra_keys = ['im_id', 'im_shape']
        sub_keys, sub_values, _ = parse_fetches(sub_fetches, sub_eval_prog,
                                                extra_keys)
        sub_eval_prog = sub_eval_prog.clone(True)

    # load model
    if 'weights' in cfg:
        checkpoint.load_checkpoint(exe, eval_prog, cfg.weights)

    resolution = None
    if 'Mask' in cfg.architecture:
        resolution = model.mask_head.resolution

    results = eval_run(
        exe,
        compile_program,
        loader,
        keys,
        values,
        cls,
        cfg,
        sub_eval_prog,
        sub_keys,
        sub_values,
        resolution=resolution)

    # if map_type not set, use default 11point, only use in VOC eval
    map_type = cfg.map_type if 'map_type' in cfg else '11point'
    eval_results(
        results,
        cfg.metric,
        cfg.num_classes,
        resolution,
        is_bbox_normalized,
        FLAGS.output_eval,
        map_type,
        dataset=dataset)
Esempio n. 15
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def main():
    env = os.environ
    FLAGS.dist = 'PADDLE_TRAINER_ID' in env and 'PADDLE_TRAINERS_NUM' in env
    if FLAGS.dist:
        trainer_id = int(env['PADDLE_TRAINER_ID'])
        import random
        local_seed = (99 + trainer_id)
        random.seed(local_seed)
        np.random.seed(local_seed)

    cfg = load_config(FLAGS.config)
    merge_config(FLAGS.opt)
    check_config(cfg)
    # check if set use_gpu=True in paddlepaddle cpu version
    check_gpu(cfg.use_gpu)
    # check if paddlepaddle version is satisfied
    check_version()

    main_arch = cfg.architecture

    if cfg.use_gpu:
        devices_num = fluid.core.get_cuda_device_count()
    else:
        devices_num = int(os.environ.get('CPU_NUM', 1))

    if 'FLAGS_selected_gpus' in env:
        device_id = int(env['FLAGS_selected_gpus'])
    else:
        device_id = 0
    place = fluid.CUDAPlace(device_id) if cfg.use_gpu else fluid.CPUPlace()
    exe = fluid.Executor(place)

    lr_builder = create('LearningRate')
    optim_builder = create('OptimizerBuilder')

    # build program
    startup_prog = fluid.Program()
    train_prog = fluid.Program()
    with fluid.program_guard(train_prog, startup_prog):
        with fluid.unique_name.guard():
            model = create(main_arch)
            if FLAGS.fp16:
                assert (getattr(model.backbone, 'norm_type', None)
                        != 'affine_channel'), \
                    '--fp16 currently does not support affine channel, ' \
                    ' please modify backbone settings to use batch norm'

            with mixed_precision_context(FLAGS.loss_scale, FLAGS.fp16) as ctx:
                inputs_def = cfg['TrainReader']['inputs_def']
                feed_vars, train_loader = model.build_inputs(**inputs_def)
                train_fetches = model.train(feed_vars)
                loss = train_fetches['loss']
                if FLAGS.fp16:
                    loss *= ctx.get_loss_scale_var()
                lr = lr_builder()
                optimizer = optim_builder(lr)
                optimizer.minimize(loss)
                if FLAGS.fp16:
                    loss /= ctx.get_loss_scale_var()

    # parse train fetches
    train_keys, train_values, _ = parse_fetches(train_fetches)
    train_values.append(lr)

    if FLAGS.print_params:
        param_delimit_str = '-' * 20 + "All parameters in current graph" + '-' * 20
        print(param_delimit_str)
        for block in train_prog.blocks:
            for param in block.all_parameters():
                print("parameter name: {}\tshape: {}".format(param.name,
                                                             param.shape))
        print('-' * len(param_delimit_str))
        return

    if FLAGS.eval:
        eval_prog = fluid.Program()
        with fluid.program_guard(eval_prog, startup_prog):
            with fluid.unique_name.guard():
                model = create(main_arch)
                inputs_def = cfg['EvalReader']['inputs_def']
                feed_vars, eval_loader = model.build_inputs(**inputs_def)
                fetches = model.eval(feed_vars)
        eval_prog = eval_prog.clone(True)

        eval_reader = create_reader(cfg.EvalReader)
        eval_loader.set_sample_list_generator(eval_reader, place)

        # parse eval fetches
        extra_keys = []
        if cfg.metric == 'COCO':
            extra_keys = ['im_info', 'im_id', 'im_shape']
        if cfg.metric == 'VOC':
            extra_keys = ['gt_bbox', 'gt_class', 'is_difficult']
        if cfg.metric == 'WIDERFACE':
            extra_keys = ['im_id', 'im_shape', 'gt_bbox']
        eval_keys, eval_values, eval_cls = parse_fetches(fetches, eval_prog,
                                                         extra_keys)

    # compile program for multi-devices
    build_strategy = fluid.BuildStrategy()
    build_strategy.fuse_all_optimizer_ops = False
    build_strategy.fuse_elewise_add_act_ops = True
    # only enable sync_bn in multi GPU devices
    sync_bn = getattr(model.backbone, 'norm_type', None) == 'sync_bn'
    build_strategy.sync_batch_norm = sync_bn and devices_num > 1 \
        and cfg.use_gpu

    exec_strategy = fluid.ExecutionStrategy()
    # iteration number when CompiledProgram tries to drop local execution scopes.
    # Set it to be 1 to save memory usages, so that unused variables in
    # local execution scopes can be deleted after each iteration.
    exec_strategy.num_iteration_per_drop_scope = 1
    if FLAGS.dist:
        dist_utils.prepare_for_multi_process(exe, build_strategy, startup_prog,
                                             train_prog)
        exec_strategy.num_threads = 1

    exe.run(startup_prog)

    fuse_bn = getattr(model.backbone, 'norm_type', None) == 'affine_channel'

    start_iter = 0
    if cfg.pretrain_weights:
        checkpoint.load_params(exe, train_prog, cfg.pretrain_weights)

    pruned_params = FLAGS.pruned_params
    assert FLAGS.pruned_params is not None, \
        "FLAGS.pruned_params is empty!!! Please set it by '--pruned_params' option."
    pruned_params = FLAGS.pruned_params.strip().split(",")
    logger.info("pruned params: {}".format(pruned_params))
    pruned_ratios = [float(n) for n in FLAGS.pruned_ratios.strip().split(",")]
    logger.info("pruned ratios: {}".format(pruned_ratios))
    assert len(pruned_params) == len(pruned_ratios), \
        "The length of pruned params and pruned ratios should be equal."
    assert (pruned_ratios > [0] * len(pruned_ratios) and
            pruned_ratios < [1] * len(pruned_ratios)
            ), "The elements of pruned ratios should be in range (0, 1)."

    assert FLAGS.prune_criterion in ['l1_norm', 'geometry_median'], \
            "unsupported prune criterion {}".format(FLAGS.prune_criterion)
    pruner = Pruner(criterion=FLAGS.prune_criterion)
    train_prog = pruner.prune(
        train_prog,
        fluid.global_scope(),
        params=pruned_params,
        ratios=pruned_ratios,
        place=place,
        only_graph=False)[0]

    compiled_train_prog = fluid.CompiledProgram(train_prog).with_data_parallel(
        loss_name=loss.name,
        build_strategy=build_strategy,
        exec_strategy=exec_strategy)

    if FLAGS.eval:

        base_flops = flops(eval_prog)
        eval_prog = pruner.prune(
            eval_prog,
            fluid.global_scope(),
            params=pruned_params,
            ratios=pruned_ratios,
            place=place,
            only_graph=True)[0]
        pruned_flops = flops(eval_prog)
        logger.info("FLOPs -{}; total FLOPs: {}; pruned FLOPs: {}".format(
            float(base_flops - pruned_flops) / base_flops, base_flops,
            pruned_flops))
        compiled_eval_prog = fluid.compiler.CompiledProgram(eval_prog)

    if FLAGS.resume_checkpoint:
        checkpoint.load_checkpoint(exe, train_prog, FLAGS.resume_checkpoint)
        start_iter = checkpoint.global_step()

    train_reader = create_reader(cfg.TrainReader, (cfg.max_iters - start_iter) *
                                 devices_num, cfg)
    train_loader.set_sample_list_generator(train_reader, place)

    # whether output bbox is normalized in model output layer
    is_bbox_normalized = False
    if hasattr(model, 'is_bbox_normalized') and \
            callable(model.is_bbox_normalized):
        is_bbox_normalized = model.is_bbox_normalized()

    # if map_type not set, use default 11point, only use in VOC eval
    map_type = cfg.map_type if 'map_type' in cfg else '11point'

    train_stats = TrainingStats(cfg.log_smooth_window, train_keys)
    train_loader.start()
    start_time = time.time()
    end_time = time.time()

    cfg_name = os.path.basename(FLAGS.config).split('.')[0]
    save_dir = os.path.join(cfg.save_dir, cfg_name)
    time_stat = deque(maxlen=cfg.log_smooth_window)
    best_box_ap_list = [0.0, 0]  #[map, iter]

    # use tb-paddle to log data
    if FLAGS.use_tb:
        from tb_paddle import SummaryWriter
        tb_writer = SummaryWriter(FLAGS.tb_log_dir)
        tb_loss_step = 0
        tb_mAP_step = 0

    if FLAGS.eval:
        # evaluation
        results = eval_run(exe, compiled_eval_prog, eval_loader, eval_keys,
                           eval_values, eval_cls, cfg)
        resolution = None
        if 'mask' in results[0]:
            resolution = model.mask_head.resolution
        dataset = cfg['EvalReader']['dataset']
        box_ap_stats = eval_results(
            results,
            cfg.metric,
            cfg.num_classes,
            resolution,
            is_bbox_normalized,
            FLAGS.output_eval,
            map_type,
            dataset=dataset)

    for it in range(start_iter, cfg.max_iters):
        start_time = end_time
        end_time = time.time()
        time_stat.append(end_time - start_time)
        time_cost = np.mean(time_stat)
        eta_sec = (cfg.max_iters - it) * time_cost
        eta = str(datetime.timedelta(seconds=int(eta_sec)))
        outs = exe.run(compiled_train_prog, fetch_list=train_values)
        stats = {k: np.array(v).mean() for k, v in zip(train_keys, outs[:-1])}

        # use tb-paddle to log loss
        if FLAGS.use_tb:
            if it % cfg.log_iter == 0:
                for loss_name, loss_value in stats.items():
                    tb_writer.add_scalar(loss_name, loss_value, tb_loss_step)
                tb_loss_step += 1

        train_stats.update(stats)
        logs = train_stats.log()
        if it % cfg.log_iter == 0 and (not FLAGS.dist or trainer_id == 0):
            strs = 'iter: {}, lr: {:.6f}, {}, time: {:.3f}, eta: {}'.format(
                it, np.mean(outs[-1]), logs, time_cost, eta)
            logger.info(strs)

        if (it > 0 and it % cfg.snapshot_iter == 0 or it == cfg.max_iters - 1) \
           and (not FLAGS.dist or trainer_id == 0):
            save_name = str(it) if it != cfg.max_iters - 1 else "model_final"
            checkpoint.save(exe, train_prog, os.path.join(save_dir, save_name))

            if FLAGS.eval:
                # evaluation
                results = eval_run(
                    exe,
                    compiled_eval_prog,
                    eval_loader,
                    eval_keys,
                    eval_values,
                    eval_cls,
                    cfg=cfg)
                resolution = None
                if 'mask' in results[0]:
                    resolution = model.mask_head.resolution
                box_ap_stats = eval_results(
                    results,
                    cfg.metric,
                    cfg.num_classes,
                    resolution,
                    is_bbox_normalized,
                    FLAGS.output_eval,
                    map_type,
                    dataset=dataset)

                # use tb_paddle to log mAP
                if FLAGS.use_tb:
                    tb_writer.add_scalar("mAP", box_ap_stats[0], tb_mAP_step)
                    tb_mAP_step += 1

                if box_ap_stats[0] > best_box_ap_list[0]:
                    best_box_ap_list[0] = box_ap_stats[0]
                    best_box_ap_list[1] = it
                    checkpoint.save(exe, train_prog,
                                    os.path.join(save_dir, "best_model"))
                logger.info("Best test box ap: {}, in iter: {}".format(
                    best_box_ap_list[0], best_box_ap_list[1]))

    train_loader.reset()
def search_mobilenetv2_block(config, args, image_size):
    image_shape = [3, image_size, image_size]
    transform = T.Compose([T.Transpose(), T.Normalize([127.5], [127.5])])
    if args.data == 'cifar10':
        train_dataset = paddle.vision.datasets.Cifar10(mode='train',
                                                       transform=transform,
                                                       backend='cv2')
        val_dataset = paddle.vision.datasets.Cifar10(mode='test',
                                                     transform=transform,
                                                     backend='cv2')

    elif args.data == 'imagenet':
        train_dataset = imagenet_reader.ImageNetDataset(mode='train')
        val_dataset = imagenet_reader.ImageNetDataset(mode='val')

    places = static.cuda_places() if args.use_gpu else static.cpu_places()
    place = places[0]
    if args.is_server:
        sa_nas = SANAS(config,
                       server_addr=(args.server_address, args.port),
                       search_steps=args.search_steps,
                       is_server=True)
    else:
        sa_nas = SANAS(config,
                       server_addr=(args.server_address, args.port),
                       search_steps=args.search_steps,
                       is_server=False)

    for step in range(args.search_steps):
        archs = sa_nas.next_archs()[0]

        train_program = static.Program()
        test_program = static.Program()
        startup_program = static.Program()
        with static.program_guard(train_program, startup_program):
            data_shape = [None] + image_shape
            data = static.data(name='data', shape=data_shape, dtype='float32')
            label = static.data(name='label', shape=[None, 1], dtype='int64')
            if args.data == 'cifar10':
                paddle.assign(paddle.reshape(label, [-1, 1]), label)
            train_loader = paddle.io.DataLoader(train_dataset,
                                                places=places,
                                                feed_list=[data, label],
                                                drop_last=True,
                                                batch_size=args.batch_size,
                                                return_list=False,
                                                shuffle=True,
                                                use_shared_memory=True,
                                                num_workers=4)
            val_loader = paddle.io.DataLoader(val_dataset,
                                              places=place,
                                              feed_list=[data, label],
                                              drop_last=False,
                                              batch_size=args.batch_size,
                                              return_list=False,
                                              shuffle=False)
            data = conv_bn_layer(input=data,
                                 num_filters=32,
                                 filter_size=3,
                                 stride=2,
                                 padding='SAME',
                                 act='relu6',
                                 name='mobilenetv2_conv1')
            data = archs(data)[0]
            data = conv_bn_layer(input=data,
                                 num_filters=1280,
                                 filter_size=1,
                                 stride=1,
                                 padding='SAME',
                                 act='relu6',
                                 name='mobilenetv2_last_conv')
            data = F.adaptive_avg_pool2d(data,
                                         output_size=[1, 1],
                                         name='mobilenetv2_last_pool')
            output = static.nn.fc(
                x=data,
                size=args.class_dim,
                weight_attr=ParamAttr(name='mobilenetv2_fc_weights'),
                bias_attr=ParamAttr(name='mobilenetv2_fc_offset'))

            softmax_out = F.softmax(output)
            cost = F.cross_entropy(softmax_out, label=label)
            avg_cost = paddle.mean(cost)
            acc_top1 = paddle.metric.accuracy(input=softmax_out,
                                              label=label,
                                              k=1)
            acc_top5 = paddle.metric.accuracy(input=softmax_out,
                                              label=label,
                                              k=5)
            test_program = train_program.clone(for_test=True)

            optimizer = paddle.optimizer.Momentum(
                learning_rate=0.1,
                momentum=0.9,
                weight_decay=paddle.regularizer.L2Decay(1e-4))
            optimizer.minimize(avg_cost)

        current_flops = flops(train_program)
        print('step: {}, current_flops: {}'.format(step, current_flops))
        if current_flops > int(321208544):
            continue

        exe = static.Executor(place)
        exe.run(startup_program)

        build_strategy = static.BuildStrategy()
        train_compiled_program = static.CompiledProgram(
            train_program).with_data_parallel(loss_name=avg_cost.name,
                                              build_strategy=build_strategy)
        for epoch_id in range(args.retain_epoch):
            for batch_id, data in enumerate(train_loader()):
                fetches = [avg_cost.name]
                s_time = time.time()
                outs = exe.run(train_compiled_program,
                               feed=data,
                               fetch_list=fetches)[0]
                batch_time = time.time() - s_time
                if batch_id % 10 == 0:
                    _logger.info(
                        'TRAIN: steps: {}, epoch: {}, batch: {}, cost: {}, batch_time: {}ms'
                        .format(step, epoch_id, batch_id, outs[0], batch_time))

        reward = []
        for batch_id, data in enumerate(val_loader()):
            test_fetches = [avg_cost.name, acc_top1.name, acc_top5.name]
            batch_reward = exe.run(test_program,
                                   feed=data,
                                   fetch_list=test_fetches)
            reward_avg = np.mean(np.array(batch_reward), axis=1)
            reward.append(reward_avg)

            _logger.info(
                'TEST: step: {}, batch: {}, avg_cost: {}, acc_top1: {}, acc_top5: {}'
                .format(step, batch_id, batch_reward[0], batch_reward[1],
                        batch_reward[2]))

        finally_reward = np.mean(np.array(reward), axis=0)
        _logger.info(
            'FINAL TEST: avg_cost: {}, acc_top1: {}, acc_top5: {}'.format(
                finally_reward[0], finally_reward[1], finally_reward[2]))

        sa_nas.reward(float(finally_reward[1]))
Esempio n. 17
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        print("Usage: python ./{} <model_dir>".format(
            os.path.basename(__file__)))
        exit(0)

    # input parameters
    model_dir = sys.argv[1]  #whole dir
    timestamp = time.strftime("%Y%m%d-%H%M%S", time.localtime())
    save_model_dir = "".join([model_dir, "/", "saved-", timestamp])
    os.mkdir(save_model_dir)
    if os.path.exists(model_dir + "/model"):
        model_filename = "model"
    elif os.path.exists(model_dir + "/__model__"):
        model_filename = "__model__"
    else:
        print("[ERROR] No model file `model` or `__model__` found")
        exit(0)

    exe = fluid.Executor(fluid.CPUPlace())
    [inference_program, feed_target_names,
     fetch_targets] = fluid.io.load_inference_model(dirname=model_dir,
                                                    executor=exe)

    blocks = inference_program.blocks
    op_num = 0
    for block in blocks:
        op_num += len(block.ops)
        pass
    # print(inference_program.blocks)
    print("FLOPs: {:.6e} {:.3f}Mb  ops: {}".format(
        flops(inference_program),
        get_dir_size(model_dir) / 1024 / 1024, op_num))
Esempio n. 18
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 def runTest(self):
     net = self._net(pretrained=False)
     FLOPs = flops(net, (1, 3, 32, 32))
     self.assertTrue(FLOPs == self._gt)
Esempio n. 19
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def main():
    config = program.load_config(FLAGS.config)
    program.merge_config(FLAGS.opt)
    logger.info(config)

    # check if set use_gpu=True in paddlepaddle cpu version
    use_gpu = config['Global']['use_gpu']
    program.check_gpu(use_gpu)

    alg = config['Global']['algorithm']
    assert alg in ['EAST', 'DB', 'Rosetta', 'CRNN', 'STARNet', 'RARE']
    if alg in ['Rosetta', 'CRNN', 'STARNet', 'RARE']:
        config['Global']['char_ops'] = CharacterOps(config['Global'])

    place = fluid.CUDAPlace(0) if use_gpu else fluid.CPUPlace()
    startup_program = fluid.Program()
    train_program = fluid.Program()
    train_build_outputs = program.build(config,
                                        train_program,
                                        startup_program,
                                        mode='train')
    train_loader = train_build_outputs[0]
    train_fetch_name_list = train_build_outputs[1]
    train_fetch_varname_list = train_build_outputs[2]
    train_opt_loss_name = train_build_outputs[3]

    eval_program = fluid.Program()
    eval_build_outputs = program.build(config,
                                       eval_program,
                                       startup_program,
                                       mode='eval')
    eval_fetch_name_list = eval_build_outputs[1]
    eval_fetch_varname_list = eval_build_outputs[2]
    eval_program = eval_program.clone(for_test=True)

    train_reader = reader_main(config=config, mode="train")
    train_loader.set_sample_list_generator(train_reader, places=place)

    eval_reader = reader_main(config=config, mode="eval")

    exe = fluid.Executor(place)
    exe.run(startup_program)

    # compile program for multi-devices
    init_model(config, train_program, exe)

    sen = load_sensitivities("sensitivities_0.data")
    for i in skip_list:
        if i in sen.keys():
            sen.pop(i)
    back_bone_list = ['conv' + str(x) for x in range(1, 5)]
    for i in back_bone_list:
        for key in list(sen.keys()):
            if i + '_' in key:
                sen.pop(key)
    ratios = get_ratios_by_loss(sen, 0.03)
    logger.info("FLOPs before pruning: {}".format(flops(eval_program)))
    pruner = Pruner(criterion='geometry_median')
    print("ratios: {}".format(ratios))
    pruned_val_program, _, _ = pruner.prune(eval_program,
                                            fluid.global_scope(),
                                            params=ratios.keys(),
                                            ratios=ratios.values(),
                                            place=place,
                                            only_graph=True)

    pruned_program, _, _ = pruner.prune(train_program,
                                        fluid.global_scope(),
                                        params=ratios.keys(),
                                        ratios=ratios.values(),
                                        place=place)
    logger.info("FLOPs after pruning: {}".format(flops(pruned_val_program)))
    train_compile_program = program.create_multi_devices_program(
        pruned_program, train_opt_loss_name)


    train_info_dict = {'compile_program':train_compile_program,\
        'train_program':pruned_program,\
        'reader':train_loader,\
        'fetch_name_list':train_fetch_name_list,\
        'fetch_varname_list':train_fetch_varname_list}

    eval_info_dict = {'program':pruned_val_program,\
        'reader':eval_reader,\
        'fetch_name_list':eval_fetch_name_list,\
        'fetch_varname_list':eval_fetch_varname_list}

    if alg in ['EAST', 'DB']:
        program.train_eval_det_run(config,
                                   exe,
                                   train_info_dict,
                                   eval_info_dict,
                                   is_slim="prune")
    else:
        program.train_eval_rec_run(config, exe, train_info_dict,
                                   eval_info_dict)
Esempio n. 20
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def compress(args):

    train_reader = None
    test_reader = None
    if args.data == "mnist":
        import paddle.dataset.mnist as reader
        train_reader = reader.train()
        val_reader = reader.test()
        class_dim = 10
        image_shape = "1,28,28"
    elif args.data == "imagenet":
        import imagenet_reader as reader
        train_reader = reader.train()
        val_reader = reader.val()
        class_dim = 1000
        image_shape = "3,224,224"
    else:
        raise ValueError("{} is not supported.".format(args.data))

    image_shape = [int(m) for m in image_shape.split(",")]
    assert args.model in model_list, "{} is not in lists: {}".format(
        args.model, model_list)
    image = fluid.layers.data(name='image', shape=image_shape, dtype='float32')
    label = fluid.layers.data(name='label', shape=[1], dtype='int64')
    # model definition
    model = models.__dict__[args.model]()
    out = model.net(input=image, class_dim=class_dim)
    cost = fluid.layers.cross_entropy(input=out, label=label)
    avg_cost = fluid.layers.mean(x=cost)
    acc_top1 = fluid.layers.accuracy(input=out, label=label, k=1)
    acc_top5 = fluid.layers.accuracy(input=out, label=label, k=5)
    val_program = fluid.default_main_program().clone(for_test=True)
    opt = create_optimizer(args)
    opt.minimize(avg_cost)
    place = fluid.CUDAPlace(0) if args.use_gpu else fluid.CPUPlace()
    exe = fluid.Executor(place)
    exe.run(fluid.default_startup_program())

    if args.pretrained_model:

        def if_exist(var):
            return os.path.exists(os.path.join(args.pretrained_model,
                                               var.name))

        fluid.io.load_vars(exe, args.pretrained_model, predicate=if_exist)

    val_reader = paddle.fluid.io.batch(val_reader, batch_size=args.batch_size)
    train_reader = paddle.fluid.io.batch(train_reader,
                                         batch_size=args.batch_size,
                                         drop_last=True)

    train_feeder = feeder = fluid.DataFeeder([image, label], place)
    val_feeder = feeder = fluid.DataFeeder([image, label],
                                           place,
                                           program=val_program)

    def test(epoch, program):
        batch_id = 0
        acc_top1_ns = []
        acc_top5_ns = []
        for data in val_reader():
            start_time = time.time()
            acc_top1_n, acc_top5_n = exe.run(
                program,
                feed=train_feeder.feed(data),
                fetch_list=[acc_top1.name, acc_top5.name])
            end_time = time.time()
            if batch_id % args.log_period == 0:
                _logger.info(
                    "Eval epoch[{}] batch[{}] - acc_top1: {:.3f}; acc_top5: {:.3f}; time: {:.3f}"
                    .format(epoch, batch_id, np.mean(acc_top1_n),
                            np.mean(acc_top5_n), end_time - start_time))
            acc_top1_ns.append(np.mean(acc_top1_n))
            acc_top5_ns.append(np.mean(acc_top5_n))
            batch_id += 1

        _logger.info(
            "Final eval epoch[{}] - acc_top1: {:.3f}; acc_top5: {:.3f}".format(
                epoch, np.mean(np.array(acc_top1_ns)),
                np.mean(np.array(acc_top5_ns))))
        return np.mean(np.array(acc_top1_ns))

    def train(epoch, program):

        build_strategy = fluid.BuildStrategy()
        exec_strategy = fluid.ExecutionStrategy()
        train_program = fluid.compiler.CompiledProgram(
            program).with_data_parallel(loss_name=avg_cost.name,
                                        build_strategy=build_strategy,
                                        exec_strategy=exec_strategy)

        batch_id = 0
        for data in train_reader():
            start_time = time.time()
            loss_n, acc_top1_n, acc_top5_n = exe.run(
                train_program,
                feed=train_feeder.feed(data),
                fetch_list=[avg_cost.name, acc_top1.name, acc_top5.name])
            end_time = time.time()
            loss_n = np.mean(loss_n)
            acc_top1_n = np.mean(acc_top1_n)
            acc_top5_n = np.mean(acc_top5_n)
            if batch_id % args.log_period == 0:
                _logger.info(
                    "epoch[{}]-batch[{}] - loss: {:.3f}; acc_top1: {:.3f}; acc_top5: {:.3f}; time: {:.3f}"
                    .format(epoch, batch_id, loss_n, acc_top1_n, acc_top5_n,
                            end_time - start_time))
            batch_id += 1

    params = []
    for param in fluid.default_main_program().global_block().all_parameters():
        if "_sep_weights" in param.name:
            params.append(param.name)

    def eval_func(program):
        return test(0, program)

    if args.data == "mnist":
        train(0, fluid.default_main_program())

    pruner = SensitivePruner(place, eval_func, checkpoints=args.checkpoints)
    pruned_program, pruned_val_program, iter = pruner.restore()

    if pruned_program is None:
        pruned_program = fluid.default_main_program()
    if pruned_val_program is None:
        pruned_val_program = val_program

    base_flops = flops(val_program)

    start = iter
    end = args.prune_steps
    for iter in range(start, end):
        pruned_program, pruned_val_program = pruner.greedy_prune(
            pruned_program, pruned_val_program, params, 0.03, topk=1)
        current_flops = flops(pruned_val_program)
        print("iter:{}; pruned FLOPS: {}".format(
            iter,
            float(base_flops - current_flops) / base_flops))
        acc = None
        for i in range(args.retrain_epoch):
            train(i, pruned_program)
            acc = test(i, pruned_val_program)
        print("iter:{}; pruned FLOPS: {}; acc: {}".format(
            iter,
            float(base_flops - current_flops) / base_flops, acc))
        pruner.save_checkpoint(pruned_program, pruned_val_program)
Esempio n. 21
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def search_mobilenetv2(config, args, image_size, is_server=True):
    if is_server:
        ### start a server and a client
        sa_nas = SANAS(config,
                       server_addr=(args.server_address, args.port),
                       search_steps=args.search_steps,
                       is_server=True)
    else:
        ### start a client
        sa_nas = SANAS(config,
                       server_addr=(args.server_address, args.port),
                       search_steps=args.search_steps,
                       is_server=False)

    image_shape = [3, image_size, image_size]
    for step in range(args.search_steps):
        archs = sa_nas.next_archs()[0]

        train_program = fluid.Program()
        test_program = fluid.Program()
        startup_program = fluid.Program()
        train_loader, avg_cost, acc_top1, acc_top5 = build_program(
            train_program, startup_program, image_shape, archs, args)

        current_flops = flops(train_program)
        print('step: {}, current_flops: {}'.format(step, current_flops))
        if current_flops > int(321208544):
            continue

        test_loader, test_avg_cost, test_acc_top1, test_acc_top5 = build_program(
            test_program,
            startup_program,
            image_shape,
            archs,
            args,
            is_test=True)
        test_program = test_program.clone(for_test=True)

        place = fluid.CUDAPlace(0) if args.use_gpu else fluid.CPUPlace()
        exe = fluid.Executor(place)
        exe.run(startup_program)

        if args.data == 'cifar10':
            train_reader = paddle.batch(paddle.reader.shuffle(
                paddle.dataset.cifar.train10(cycle=False), buf_size=1024),
                                        batch_size=args.batch_size,
                                        drop_last=True)

            test_reader = paddle.batch(
                paddle.dataset.cifar.test10(cycle=False),
                batch_size=args.batch_size,
                drop_last=False)
        elif args.data == 'imagenet':
            train_reader = paddle.batch(imagenet_reader.train(),
                                        batch_size=args.batch_size,
                                        drop_last=True)
            test_reader = paddle.batch(imagenet_reader.val(),
                                       batch_size=args.batch_size,
                                       drop_last=False)

        train_loader.set_sample_list_generator(
            train_reader,
            places=fluid.cuda_places() if args.use_gpu else fluid.cpu_places())
        test_loader.set_sample_list_generator(test_reader, places=place)

        build_strategy = fluid.BuildStrategy()
        train_compiled_program = fluid.CompiledProgram(
            train_program).with_data_parallel(loss_name=avg_cost.name,
                                              build_strategy=build_strategy)
        for epoch_id in range(args.retain_epoch):
            for batch_id, data in enumerate(train_loader()):
                fetches = [avg_cost.name]
                s_time = time.time()
                outs = exe.run(train_compiled_program,
                               feed=data,
                               fetch_list=fetches)[0]
                batch_time = time.time() - s_time
                if batch_id % 10 == 0:
                    _logger.info(
                        'TRAIN: steps: {}, epoch: {}, batch: {}, cost: {}, batch_time: {}ms'
                        .format(step, epoch_id, batch_id, outs[0], batch_time))

        reward = []
        for batch_id, data in enumerate(test_loader()):
            test_fetches = [
                test_avg_cost.name, test_acc_top1.name, test_acc_top5.name
            ]
            batch_reward = exe.run(test_program,
                                   feed=data,
                                   fetch_list=test_fetches)
            reward_avg = np.mean(np.array(batch_reward), axis=1)
            reward.append(reward_avg)

            _logger.info(
                'TEST: step: {}, batch: {}, avg_cost: {}, acc_top1: {}, acc_top5: {}'
                .format(step, batch_id, batch_reward[0], batch_reward[1],
                        batch_reward[2]))

        finally_reward = np.mean(np.array(reward), axis=0)
        _logger.info(
            'FINAL TEST: avg_cost: {}, acc_top1: {}, acc_top5: {}'.format(
                finally_reward[0], finally_reward[1], finally_reward[2]))

        sa_nas.reward(float(finally_reward[1]))
Esempio n. 22
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def search_mobilenetv2(config, args, image_size, is_server=True):
    image_shape = [3, image_size, image_size]
    if args.data == 'cifar10':
        transform = T.Compose([T.Transpose(), T.Normalize([127.5], [127.5])])
        train_dataset = paddle.vision.datasets.Cifar10(mode='train',
                                                       transform=transform,
                                                       backend='cv2')
        val_dataset = paddle.vision.datasets.Cifar10(mode='test',
                                                     transform=transform,
                                                     backend='cv2')

    elif args.data == 'imagenet':
        train_dataset = imagenet_reader.ImageNetDataset(mode='train')
        val_dataset = imagenet_reader.ImageNetDataset(mode='val')

    places = static.cuda_places() if args.use_gpu else static.cpu_places()
    place = places[0]
    if is_server:
        ### start a server and a client
        sa_nas = SANAS(config,
                       server_addr=(args.server_address, args.port),
                       search_steps=args.search_steps,
                       is_server=True)
    else:
        ### start a client
        sa_nas = SANAS(config,
                       server_addr=(args.server_address, args.port),
                       search_steps=args.search_steps,
                       is_server=False)

    for step in range(args.search_steps):
        archs = sa_nas.next_archs()[0]

        train_program = static.Program()
        test_program = static.Program()
        startup_program = static.Program()
        train_loader, avg_cost, acc_top1, acc_top5 = build_program(
            train_program, startup_program, image_shape, train_dataset, archs,
            args, places)

        current_flops = flops(train_program)
        print('step: {}, current_flops: {}'.format(step, current_flops))
        if current_flops > int(321208544):
            continue

        test_loader, test_avg_cost, test_acc_top1, test_acc_top5 = build_program(
            test_program,
            startup_program,
            image_shape,
            val_dataset,
            archs,
            args,
            place,
            is_test=True)
        test_program = test_program.clone(for_test=True)

        exe = static.Executor(place)
        exe.run(startup_program)

        build_strategy = static.BuildStrategy()
        train_compiled_program = static.CompiledProgram(
            train_program).with_data_parallel(loss_name=avg_cost.name,
                                              build_strategy=build_strategy)
        for epoch_id in range(args.retain_epoch):
            for batch_id, data in enumerate(train_loader()):
                fetches = [avg_cost.name]
                s_time = time.time()
                outs = exe.run(train_compiled_program,
                               feed=data,
                               fetch_list=fetches)[0]
                batch_time = time.time() - s_time
                if batch_id % 10 == 0:
                    _logger.info(
                        'TRAIN: steps: {}, epoch: {}, batch: {}, cost: {}, batch_time: {}ms'
                        .format(step, epoch_id, batch_id, outs[0], batch_time))

        reward = []
        for batch_id, data in enumerate(test_loader()):
            test_fetches = [
                test_avg_cost.name, test_acc_top1.name, test_acc_top5.name
            ]
            batch_reward = exe.run(test_program,
                                   feed=data,
                                   fetch_list=test_fetches)
            reward_avg = np.mean(np.array(batch_reward), axis=1)
            reward.append(reward_avg)

            _logger.info(
                'TEST: step: {}, batch: {}, avg_cost: {}, acc_top1: {}, acc_top5: {}'
                .format(step, batch_id, batch_reward[0], batch_reward[1],
                        batch_reward[2]))

        finally_reward = np.mean(np.array(reward), axis=0)
        _logger.info(
            'FINAL TEST: avg_cost: {}, acc_top1: {}, acc_top5: {}'.format(
                finally_reward[0], finally_reward[1], finally_reward[2]))

        sa_nas.reward(float(finally_reward[1]))
Esempio n. 23
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def train(cfg):
    startup_prog = fluid.Program()
    train_prog = fluid.Program()
    if args.enable_ce:
        startup_prog.random_seed = 1000
        train_prog.random_seed = 1000
    drop_last = True

    dataset = SegDataset(file_list=cfg.DATASET.TRAIN_FILE_LIST,
                         mode=ModelPhase.TRAIN,
                         shuffle=True,
                         data_dir=cfg.DATASET.DATA_DIR)

    def data_generator():
        if args.use_mpio:
            data_gen = dataset.multiprocess_generator(
                num_processes=cfg.DATALOADER.NUM_WORKERS,
                max_queue_size=cfg.DATALOADER.BUF_SIZE)
        else:
            data_gen = dataset.generator()

        batch_data = []
        for b in data_gen:
            batch_data.append(b)
            if len(batch_data) == (cfg.BATCH_SIZE // cfg.NUM_TRAINERS):
                for item in batch_data:
                    yield item[0], item[1], item[2]
                batch_data = []
        # If use sync batch norm strategy, drop last batch if number of samples
        # in batch_data is less then cfg.BATCH_SIZE to avoid NCCL hang issues
        if not cfg.TRAIN.SYNC_BATCH_NORM:
            for item in batch_data:
                yield item[0], item[1], item[2]

    # Get device environment
    # places = fluid.cuda_places() if args.use_gpu else fluid.cpu_places()
    # place = places[0]
    gpu_id = int(os.environ.get('FLAGS_selected_gpus', 0))
    place = fluid.CUDAPlace(gpu_id) if args.use_gpu else fluid.CPUPlace()
    places = fluid.cuda_places() if args.use_gpu else fluid.cpu_places()

    # Get number of GPU
    dev_count = cfg.NUM_TRAINERS if cfg.NUM_TRAINERS > 1 else len(places)
    print_info("#Device count: {}".format(dev_count))

    # Make sure BATCH_SIZE can divided by GPU cards
    assert cfg.BATCH_SIZE % dev_count == 0, (
        'BATCH_SIZE:{} not divisble by number of GPUs:{}'.format(
            cfg.BATCH_SIZE, dev_count))
    # If use multi-gpu training mode, batch data will allocated to each GPU evenly
    batch_size_per_dev = cfg.BATCH_SIZE // dev_count
    print_info("batch_size_per_dev: {}".format(batch_size_per_dev))

    config_info = {'input_size': 769, 'output_size': 1, 'block_num': 7}
    config = ([(cfg.SLIM.NAS_SPACE_NAME, config_info)])
    factory = SearchSpaceFactory()
    space = factory.get_search_space(config)

    port = cfg.SLIM.NAS_PORT
    server_address = (cfg.SLIM.NAS_ADDRESS, port)
    sa_nas = SANAS(config,
                   server_addr=server_address,
                   search_steps=cfg.SLIM.NAS_SEARCH_STEPS,
                   is_server=cfg.SLIM.NAS_IS_SERVER)
    for step in range(cfg.SLIM.NAS_SEARCH_STEPS):
        arch = sa_nas.next_archs()[0]

        start_prog = fluid.Program()
        train_prog = fluid.Program()

        data_loader, avg_loss, lr, pred, grts, masks = build_model(
            train_prog, start_prog, arch=arch, phase=ModelPhase.TRAIN)

        cur_flops = flops(train_prog)
        print('current step:', step, 'flops:', cur_flops)

        data_loader.set_sample_generator(data_generator,
                                         batch_size=batch_size_per_dev,
                                         drop_last=drop_last)

        exe = fluid.Executor(place)
        exe.run(start_prog)

        exec_strategy = fluid.ExecutionStrategy()
        # Clear temporary variables every 100 iteration
        if args.use_gpu:
            exec_strategy.num_threads = fluid.core.get_cuda_device_count()
        exec_strategy.num_iteration_per_drop_scope = 100
        build_strategy = fluid.BuildStrategy()

        if cfg.NUM_TRAINERS > 1 and args.use_gpu:
            dist_utils.prepare_for_multi_process(exe, build_strategy,
                                                 train_prog)
            exec_strategy.num_threads = 1

        if cfg.TRAIN.SYNC_BATCH_NORM and args.use_gpu:
            if dev_count > 1:
                # Apply sync batch norm strategy
                print_info("Sync BatchNorm strategy is effective.")
                build_strategy.sync_batch_norm = True
            else:
                print_info(
                    "Sync BatchNorm strategy will not be effective if GPU device"
                    " count <= 1")
        compiled_train_prog = fluid.CompiledProgram(
            train_prog).with_data_parallel(loss_name=avg_loss.name,
                                           exec_strategy=exec_strategy,
                                           build_strategy=build_strategy)

        # Resume training
        begin_epoch = cfg.SOLVER.BEGIN_EPOCH
        if cfg.TRAIN.RESUME_MODEL_DIR:
            begin_epoch = load_checkpoint(exe, train_prog)
        # Load pretrained model
        elif os.path.exists(cfg.TRAIN.PRETRAINED_MODEL_DIR):
            print_info('Pretrained model dir: ',
                       cfg.TRAIN.PRETRAINED_MODEL_DIR)
            load_vars = []
            load_fail_vars = []

            def var_shape_matched(var, shape):
                """
                Check whehter persitable variable shape is match with current network
                """
                var_exist = os.path.exists(
                    os.path.join(cfg.TRAIN.PRETRAINED_MODEL_DIR, var.name))
                if var_exist:
                    var_shape = parse_shape_from_file(
                        os.path.join(cfg.TRAIN.PRETRAINED_MODEL_DIR, var.name))
                    return var_shape == shape
                return False

            for x in train_prog.list_vars():
                if isinstance(x, fluid.framework.Parameter):
                    shape = tuple(fluid.global_scope().find_var(
                        x.name).get_tensor().shape())
                    if var_shape_matched(x, shape):
                        load_vars.append(x)
                    else:
                        load_fail_vars.append(x)

            fluid.io.load_vars(exe,
                               dirname=cfg.TRAIN.PRETRAINED_MODEL_DIR,
                               vars=load_vars)
            for var in load_vars:
                print_info("Parameter[{}] loaded sucessfully!".format(
                    var.name))
            for var in load_fail_vars:
                print_info(
                    "Parameter[{}] don't exist or shape does not match current network, skip"
                    " to load it.".format(var.name))
            print_info(
                "{}/{} pretrained parameters loaded successfully!".format(
                    len(load_vars),
                    len(load_vars) + len(load_fail_vars)))
        else:
            print_info(
                'Pretrained model dir {} not exists, training from scratch...'.
                format(cfg.TRAIN.PRETRAINED_MODEL_DIR))

        fetch_list = [avg_loss.name, lr.name]

        global_step = 0
        all_step = cfg.DATASET.TRAIN_TOTAL_IMAGES // cfg.BATCH_SIZE
        if cfg.DATASET.TRAIN_TOTAL_IMAGES % cfg.BATCH_SIZE and drop_last != True:
            all_step += 1
        all_step *= (cfg.SOLVER.NUM_EPOCHS - begin_epoch + 1)

        avg_loss = 0.0
        timer = Timer()
        timer.start()
        if begin_epoch > cfg.SOLVER.NUM_EPOCHS:
            raise ValueError(
                ("begin epoch[{}] is larger than cfg.SOLVER.NUM_EPOCHS[{}]"
                 ).format(begin_epoch, cfg.SOLVER.NUM_EPOCHS))

        if args.use_mpio:
            print_info("Use multiprocess reader")
        else:
            print_info("Use multi-thread reader")

        best_miou = 0.0
        for epoch in range(begin_epoch, cfg.SOLVER.NUM_EPOCHS + 1):
            data_loader.start()
            while True:
                try:
                    loss, lr = exe.run(program=compiled_train_prog,
                                       fetch_list=fetch_list,
                                       return_numpy=True)
                    avg_loss += np.mean(np.array(loss))
                    global_step += 1

                    if global_step % args.log_steps == 0 and cfg.TRAINER_ID == 0:
                        avg_loss /= args.log_steps
                        speed = args.log_steps / timer.elapsed_time()
                        print((
                            "epoch={} step={} lr={:.5f} loss={:.4f} step/sec={:.3f} | ETA {}"
                        ).format(epoch, global_step, lr[0], avg_loss, speed,
                                 calculate_eta(all_step - global_step, speed)))

                        sys.stdout.flush()
                        avg_loss = 0.0
                        timer.restart()

                except fluid.core.EOFException:
                    data_loader.reset()
                    break
                except Exception as e:
                    print(e)
            if epoch > cfg.SLIM.NAS_START_EVAL_EPOCH:
                ckpt_dir = save_checkpoint(exe, train_prog,
                                           '{}_tmp'.format(port))
                _, mean_iou, _, mean_acc = evaluate(cfg=cfg,
                                                    arch=arch,
                                                    ckpt_dir=ckpt_dir,
                                                    use_gpu=args.use_gpu,
                                                    use_mpio=args.use_mpio)
                if best_miou < mean_iou:
                    print('search step {}, epoch {} best iou {}'.format(
                        step, epoch, mean_iou))
                    best_miou = mean_iou

        sa_nas.reward(float(best_miou))
Esempio n. 24
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def compress(args):
    train_reader = None
    test_reader = None
    if args.data == "mnist":
        transform = T.Compose([T.Transpose(), T.Normalize([127.5], [127.5])])
        train_dataset = paddle.vision.datasets.MNIST(mode='train',
                                                     backend="cv2",
                                                     transform=transform)
        val_dataset = paddle.vision.datasets.MNIST(mode='test',
                                                   backend="cv2",
                                                   transform=transform)
        class_dim = 10
        image_shape = "1,28,28"
    elif args.data == "imagenet":
        import imagenet_reader as reader
        train_dataset = reader.ImageNetDataset(mode='train')
        val_dataset = reader.ImageNetDataset(mode='val')
        class_dim = 1000
        image_shape = "3,224,224"
    else:
        raise ValueError("{} is not supported.".format(args.data))
    image_shape = [int(m) for m in image_shape.split(",")]
    assert args.model in model_list, "{} is not in lists: {}".format(
        args.model, model_list)
    places = paddle.static.cuda_places(
    ) if args.use_gpu else paddle.static.cpu_places()
    place = places[0]
    exe = paddle.static.Executor(place)
    image = paddle.static.data(name='image',
                               shape=[None] + image_shape,
                               dtype='float32')
    label = paddle.static.data(name='label', shape=[None, 1], dtype='int64')
    batch_size_per_card = int(args.batch_size / len(places))
    train_loader = paddle.io.DataLoader(train_dataset,
                                        places=places,
                                        feed_list=[image, label],
                                        drop_last=True,
                                        batch_size=batch_size_per_card,
                                        shuffle=True,
                                        return_list=False,
                                        use_shared_memory=True,
                                        num_workers=16)
    valid_loader = paddle.io.DataLoader(val_dataset,
                                        places=place,
                                        feed_list=[image, label],
                                        drop_last=False,
                                        return_list=False,
                                        use_shared_memory=True,
                                        batch_size=batch_size_per_card,
                                        shuffle=False)
    step_per_epoch = int(np.ceil(len(train_dataset) * 1. / args.batch_size))

    # model definition
    model = models.__dict__[args.model]()
    out = model.net(input=image, class_dim=class_dim)
    cost = paddle.nn.functional.loss.cross_entropy(input=out, label=label)
    avg_cost = paddle.mean(x=cost)
    acc_top1 = paddle.metric.accuracy(input=out, label=label, k=1)
    acc_top5 = paddle.metric.accuracy(input=out, label=label, k=5)
    val_program = paddle.static.default_main_program().clone(for_test=True)
    opt, learning_rate = create_optimizer(args, step_per_epoch)
    opt.minimize(avg_cost)

    exe.run(paddle.static.default_startup_program())

    if args.pretrained_model:

        def if_exist(var):
            return os.path.exists(os.path.join(args.pretrained_model,
                                               var.name))

        _logger.info("Load pretrained model from {}".format(
            args.pretrained_model))
        paddle.static.load(paddle.static.default_main_program(),
                           args.pretrained_model, exe)

    def test(epoch, program):
        acc_top1_ns = []
        acc_top5_ns = []
        for batch_id, data in enumerate(valid_loader):
            start_time = time.time()
            acc_top1_n, acc_top5_n = exe.run(
                program, feed=data, fetch_list=[acc_top1.name, acc_top5.name])
            end_time = time.time()
            if batch_id % args.log_period == 0:
                _logger.info(
                    "Eval epoch[{}] batch[{}] - acc_top1: {}; acc_top5: {}; time: {}"
                    .format(epoch, batch_id, np.mean(acc_top1_n),
                            np.mean(acc_top5_n), end_time - start_time))
            acc_top1_ns.append(np.mean(acc_top1_n))
            acc_top5_ns.append(np.mean(acc_top5_n))

        _logger.info(
            "Final eval epoch[{}] - acc_top1: {}; acc_top5: {}".format(
                epoch, np.mean(np.array(acc_top1_ns)),
                np.mean(np.array(acc_top5_ns))))

    def train(epoch, program):
        for batch_id, data in enumerate(train_loader):
            start_time = time.time()
            loss_n, acc_top1_n, acc_top5_n = exe.run(
                train_program,
                feed=data,
                fetch_list=[avg_cost.name, acc_top1.name, acc_top5.name])
            end_time = time.time()
            loss_n = np.mean(loss_n)
            acc_top1_n = np.mean(acc_top1_n)
            acc_top5_n = np.mean(acc_top5_n)
            if batch_id % args.log_period == 0:
                _logger.info(
                    "epoch[{}]-batch[{}] lr: {:.6f} - loss: {}; acc_top1: {}; acc_top5: {}; time: {}"
                    .format(epoch, batch_id, learning_rate.get_lr(), loss_n,
                            acc_top1_n, acc_top5_n, end_time - start_time))
            learning_rate.step()
            batch_id += 1

    test(0, val_program)
    params = get_pruned_params(args, paddle.static.default_main_program())
    _logger.info("FLOPs before pruning: {}".format(
        flops(paddle.static.default_main_program())))
    pruner = Pruner(args.criterion)
    pruned_val_program, _, _ = pruner.prune(val_program,
                                            paddle.static.global_scope(),
                                            params=params,
                                            ratios=[args.pruned_ratio] *
                                            len(params),
                                            place=place,
                                            only_graph=True)

    pruned_program, _, _ = pruner.prune(paddle.static.default_main_program(),
                                        paddle.static.global_scope(),
                                        params=params,
                                        ratios=[args.pruned_ratio] *
                                        len(params),
                                        place=place)
    _logger.info("FLOPs after pruning: {}".format(flops(pruned_program)))

    build_strategy = paddle.static.BuildStrategy()
    exec_strategy = paddle.static.ExecutionStrategy()
    train_program = paddle.static.CompiledProgram(
        pruned_program).with_data_parallel(loss_name=avg_cost.name,
                                           build_strategy=build_strategy,
                                           exec_strategy=exec_strategy)

    for i in range(args.num_epochs):
        train(i, train_program)
        if (i + 1) % args.test_period == 0:
            test(i, pruned_val_program)
            save_model(exe, pruned_val_program,
                       os.path.join(args.model_path, str(i)))
        if args.save_inference:
            infer_model_path = os.path.join(args.model_path, "infer_models",
                                            str(i))
            paddle.static.save_inference_model(infer_model_path, [image],
                                               [out],
                                               exe,
                                               program=pruned_val_program)
            _logger.info(
                "Saved inference model into [{}]".format(infer_model_path))
Esempio n. 25
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def main():
    cfg = load_config(FLAGS.config)

    merge_config(FLAGS.opt)
    check_config(cfg)
    # check if set use_gpu=True in paddlepaddle cpu version
    check_gpu(cfg.use_gpu)
    # check if paddlepaddle version is satisfied
    check_version()

    main_arch = cfg.architecture

    dataset = cfg.TestReader['dataset']

    test_images = get_test_images(FLAGS.infer_dir, FLAGS.infer_img)
    dataset.set_images(test_images)

    place = fluid.CUDAPlace(0) if cfg.use_gpu else fluid.CPUPlace()
    exe = fluid.Executor(place)

    model = create(main_arch)

    startup_prog = fluid.Program()
    infer_prog = fluid.Program()
    with fluid.program_guard(infer_prog, startup_prog):
        with fluid.unique_name.guard():
            inputs_def = cfg['TestReader']['inputs_def']
            inputs_def['iterable'] = True
            feed_vars, loader = model.build_inputs(**inputs_def)
            test_fetches = model.test(feed_vars)
    infer_prog = infer_prog.clone(True)

    pruned_params = FLAGS.pruned_params
    assert (
        FLAGS.pruned_params is not None
    ), "FLAGS.pruned_params is empty!!! Please set it by '--pruned_params' option."
    pruned_params = FLAGS.pruned_params.strip().split(",")
    logger.info("pruned params: {}".format(pruned_params))
    pruned_ratios = [float(n) for n in FLAGS.pruned_ratios.strip().split(",")]
    logger.info("pruned ratios: {}".format(pruned_ratios))
    assert (len(pruned_params) == len(pruned_ratios)
            ), "The length of pruned params and pruned ratios should be equal."
    assert (pruned_ratios > [0] * len(pruned_ratios)
            and pruned_ratios < [1] * len(pruned_ratios)
            ), "The elements of pruned ratios should be in range (0, 1)."

    base_flops = flops(infer_prog)
    pruner = Pruner()
    infer_prog, _, _ = pruner.prune(infer_prog,
                                    fluid.global_scope(),
                                    params=pruned_params,
                                    ratios=pruned_ratios,
                                    place=place,
                                    only_graph=True)
    pruned_flops = flops(infer_prog)
    logger.info("pruned FLOPS: {}".format(
        float(base_flops - pruned_flops) / base_flops))
    reader = create_reader(cfg.TestReader, devices_num=1)
    loader.set_sample_list_generator(reader, place)

    exe.run(startup_prog)
    if cfg.weights:
        checkpoint.load_checkpoint(exe, infer_prog, cfg.weights)

    # parse infer fetches
    assert cfg.metric in ['COCO', 'VOC', 'OID', 'WIDERFACE'], \
            "unknown metric type {}".format(cfg.metric)
    extra_keys = []
    if cfg['metric'] in ['COCO', 'OID']:
        extra_keys = ['im_info', 'im_id', 'im_shape']
    if cfg['metric'] == 'VOC' or cfg['metric'] == 'WIDERFACE':
        extra_keys = ['im_id', 'im_shape']
    keys, values, _ = parse_fetches(test_fetches, infer_prog, extra_keys)

    # parse dataset category
    if cfg.metric == 'COCO':
        from ppdet.utils.coco_eval import bbox2out, mask2out, get_category_info
    if cfg.metric == 'OID':
        from ppdet.utils.oid_eval import bbox2out, get_category_info
    if cfg.metric == "VOC":
        from ppdet.utils.voc_eval import bbox2out, get_category_info
    if cfg.metric == "WIDERFACE":
        from ppdet.utils.widerface_eval_utils import bbox2out, get_category_info

    anno_file = dataset.get_anno()
    with_background = dataset.with_background
    use_default_label = dataset.use_default_label

    clsid2catid, catid2name = get_category_info(anno_file, with_background,
                                                use_default_label)

    # whether output bbox is normalized in model output layer
    is_bbox_normalized = False
    if hasattr(model, 'is_bbox_normalized') and \
            callable(model.is_bbox_normalized):
        is_bbox_normalized = model.is_bbox_normalized()

    imid2path = dataset.get_imid2path()
    for iter_id, data in enumerate(loader()):
        outs = exe.run(infer_prog,
                       feed=data,
                       fetch_list=values,
                       return_numpy=False)
        res = {
            k: (np.array(v), v.recursive_sequence_lengths())
            for k, v in zip(keys, outs)
        }
        logger.info('Infer iter {}'.format(iter_id))

        bbox_results = None
        mask_results = None
        if 'bbox' in res:
            bbox_results = bbox2out([res], clsid2catid, is_bbox_normalized)
        if 'mask' in res:
            mask_results = mask2out([res], clsid2catid,
                                    model.mask_head.resolution)

        # visualize result
        im_ids = res['im_id'][0]
        for im_id in im_ids:
            image_path = imid2path[int(im_id)]
            image = Image.open(image_path).convert('RGB')

            image = visualize_results(image, int(im_id), catid2name,
                                      FLAGS.draw_threshold, bbox_results,
                                      mask_results)

            save_name = get_save_image_name(FLAGS.output_dir, image_path)
            logger.info("Detection bbox results save in {}".format(save_name))
            image.save(save_name, quality=95)
Esempio n. 26
0
def main():
    env = os.environ
    FLAGS.dist = 'PADDLE_TRAINER_ID' in env and 'PADDLE_TRAINERS_NUM' in env
    if FLAGS.dist:
        trainer_id = int(env['PADDLE_TRAINER_ID'])
        import random
        local_seed = (99 + trainer_id)
        random.seed(local_seed)
        np.random.seed(local_seed)

    cfg = load_config(FLAGS.config)
    if 'architecture' in cfg:
        main_arch = cfg.architecture
    else:
        raise ValueError("'architecture' not specified in config file.")

    merge_config(FLAGS.opt)

    if 'log_iter' not in cfg:
        cfg.log_iter = 20

    # check if set use_gpu=True in paddlepaddle cpu version
    check_gpu(cfg.use_gpu)
    # check if paddlepaddle version is satisfied
    check_version()

    if cfg.use_gpu:
        devices_num = fluid.core.get_cuda_device_count()
    else:
        devices_num = int(os.environ.get('CPU_NUM', 1))

    if 'FLAGS_selected_gpus' in env:
        device_id = int(env['FLAGS_selected_gpus'])
    else:
        device_id = 0
    place = fluid.CUDAPlace(device_id) if cfg.use_gpu else fluid.CPUPlace()
    exe = fluid.Executor(place)

    lr_builder = create('LearningRate')
    optim_builder = create('OptimizerBuilder')

    # add NAS
    config = ([(cfg.search_space)])
    server_address = (cfg.server_ip, cfg.server_port)
    load_checkpoint = FLAGS.resume_checkpoint if FLAGS.resume_checkpoint else None
    sa_nas = SANAS(config,
                   server_addr=server_address,
                   init_temperature=cfg.init_temperature,
                   reduce_rate=cfg.reduce_rate,
                   search_steps=cfg.search_steps,
                   save_checkpoint=cfg.save_dir,
                   load_checkpoint=load_checkpoint,
                   is_server=cfg.is_server)
    start_iter = 0
    train_reader = create_reader(cfg.TrainReader,
                                 (cfg.max_iters - start_iter) * devices_num,
                                 cfg)
    eval_reader = create_reader(cfg.EvalReader)

    for step in range(cfg.search_steps):
        logger.info('----->>> search step: {} <<<------'.format(step))
        archs = sa_nas.next_archs()[0]

        # build program
        startup_prog = fluid.Program()
        train_prog = fluid.Program()
        with fluid.program_guard(train_prog, startup_prog):
            with fluid.unique_name.guard():
                model = create(main_arch)
                if FLAGS.fp16:
                    assert (getattr(model.backbone, 'norm_type', None)
                            != 'affine_channel'), \
                        '--fp16 currently does not support affine channel, ' \
                        ' please modify backbone settings to use batch norm'

                with mixed_precision_context(FLAGS.loss_scale,
                                             FLAGS.fp16) as ctx:
                    inputs_def = cfg['TrainReader']['inputs_def']
                    feed_vars, train_loader = model.build_inputs(**inputs_def)
                    train_fetches = archs(feed_vars, 'train', cfg)
                    loss = train_fetches['loss']
                    if FLAGS.fp16:
                        loss *= ctx.get_loss_scale_var()
                    lr = lr_builder()
                    optimizer = optim_builder(lr)
                    optimizer.minimize(loss)
                    if FLAGS.fp16:
                        loss /= ctx.get_loss_scale_var()
        current_flops = flops(train_prog)
        logger.info('current steps: {}, flops {}'.format(step, current_flops))
        if current_flops > cfg.max_flops:
            continue

        # parse train fetches
        train_keys, train_values, _ = parse_fetches(train_fetches)
        train_values.append(lr)

        if FLAGS.eval:
            eval_prog = fluid.Program()
            with fluid.program_guard(eval_prog, startup_prog):
                with fluid.unique_name.guard():
                    model = create(main_arch)
                    inputs_def = cfg['EvalReader']['inputs_def']
                    feed_vars, eval_loader = model.build_inputs(**inputs_def)
                    fetches = archs(feed_vars, 'eval', cfg)
            eval_prog = eval_prog.clone(True)

            eval_loader.set_sample_list_generator(eval_reader, place)
            extra_keys = ['im_id', 'im_shape', 'gt_bbox']
            eval_keys, eval_values, eval_cls = parse_fetches(
                fetches, eval_prog, extra_keys)

        # compile program for multi-devices
        build_strategy = fluid.BuildStrategy()
        build_strategy.fuse_all_optimizer_ops = False
        build_strategy.fuse_elewise_add_act_ops = True

        exec_strategy = fluid.ExecutionStrategy()
        # iteration number when CompiledProgram tries to drop local execution scopes.
        # Set it to be 1 to save memory usages, so that unused variables in
        # local execution scopes can be deleted after each iteration.
        exec_strategy.num_iteration_per_drop_scope = 1
        if FLAGS.dist:
            dist_utils.prepare_for_multi_process(exe, build_strategy,
                                                 startup_prog, train_prog)
            exec_strategy.num_threads = 1

        exe.run(startup_prog)
        compiled_train_prog = fluid.CompiledProgram(
            train_prog).with_data_parallel(loss_name=loss.name,
                                           build_strategy=build_strategy,
                                           exec_strategy=exec_strategy)
        if FLAGS.eval:
            compiled_eval_prog = fluid.compiler.CompiledProgram(eval_prog)

        train_loader.set_sample_list_generator(train_reader, place)

        train_stats = TrainingStats(cfg.log_smooth_window, train_keys)
        train_loader.start()
        end_time = time.time()

        cfg_name = os.path.basename(FLAGS.config).split('.')[0]
        save_dir = os.path.join(cfg.save_dir, cfg_name)
        time_stat = deque(maxlen=cfg.log_smooth_window)
        ap = 0
        for it in range(start_iter, cfg.max_iters):
            start_time = end_time
            end_time = time.time()
            time_stat.append(end_time - start_time)
            time_cost = np.mean(time_stat)
            eta_sec = (cfg.max_iters - it) * time_cost
            eta = str(datetime.timedelta(seconds=int(eta_sec)))
            outs = exe.run(compiled_train_prog, fetch_list=train_values)
            stats = {
                k: np.array(v).mean()
                for k, v in zip(train_keys, outs[:-1])
            }

            train_stats.update(stats)
            logs = train_stats.log()
            if it % cfg.log_iter == 0 and (not FLAGS.dist or trainer_id == 0):
                strs = 'iter: {}, lr: {:.6f}, {}, time: {:.3f}, eta: {}'.format(
                    it, np.mean(outs[-1]), logs, time_cost, eta)
                logger.info(strs)

            if (it > 0 and it == cfg.max_iters - 1) and (not FLAGS.dist
                                                         or trainer_id == 0):
                save_name = str(
                    it) if it != cfg.max_iters - 1 else "model_final"
                checkpoint.save(exe, train_prog,
                                os.path.join(save_dir, save_name))
                if FLAGS.eval:
                    # evaluation
                    results = eval_run(exe, compiled_eval_prog, eval_loader,
                                       eval_keys, eval_values, eval_cls)
                    ap = calculate_ap_py(results)

        train_loader.reset()
        eval_loader.reset()
        logger.info('rewards: ap is {}'.format(ap))
        sa_nas.reward(float(ap))
    current_best_tokens = sa_nas.current_info()['best_tokens']
    logger.info("All steps end, the best BlazeFace-NAS structure  is: ")
    sa_nas.tokens2arch(current_best_tokens)
Esempio n. 27
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def compress(args):

    paddle.set_device('gpu' if args.use_gpu else 'cpu')
    train_reader = None
    test_reader = None
    if args.data == "cifar10":

        transform = T.Compose([T.Transpose(), T.Normalize([127.5], [127.5])])

        train_dataset = paddle.vision.datasets.Cifar10(mode="train",
                                                       backend="cv2",
                                                       transform=transform)
        val_dataset = paddle.vision.datasets.Cifar10(mode="test",
                                                     backend="cv2",
                                                     transform=transform)
        class_dim = 10
        image_shape = [3, 32, 32]
        pretrain = False
    elif args.data == "imagenet":

        train_dataset = ImageNetDataset("data/ILSVRC2012",
                                        mode='train',
                                        image_size=224,
                                        resize_short_size=256)

        val_dataset = ImageNetDataset("data/ILSVRC2012",
                                      mode='val',
                                      image_size=224,
                                      resize_short_size=256)

        class_dim = 1000
        image_shape = [3, 224, 224]
        pretrain = True
    else:
        raise ValueError("{} is not supported.".format(args.data))
    assert args.model in model_list, "{} is not in lists: {}".format(
        args.model, model_list)
    inputs = [Input([None] + image_shape, 'float32', name='image')]
    labels = [Input([None, 1], 'int64', name='label')]

    # model definition
    net = models.__dict__[args.model](pretrained=pretrain,
                                      num_classes=class_dim)

    _logger.info("FLOPs before pruning: {}GFLOPs".format(
        flops(net, [1] + image_shape) / 1000))
    net.eval()
    if args.criterion == 'fpgm':
        pruner = paddleslim.dygraph.FPGMFilterPruner(net, [1] + image_shape)
    elif args.criterion == 'l1_norm':
        pruner = paddleslim.dygraph.L1NormFilterPruner(net, [1] + image_shape)

    params = get_pruned_params(args, net)
    ratios = {}
    for param in params:
        ratios[param] = args.pruned_ratio
    plan = pruner.prune_vars(ratios, [0])

    _logger.info("FLOPs after pruning: {}GFLOPs; pruned ratio: {}".format(
        flops(net, [1] + image_shape) / 1000, plan.pruned_flops))

    for param in net.parameters():
        if "conv2d" in param.name:
            print("{}\t{}".format(param.name, param.shape))

    net.train()
    model = paddle.Model(net, inputs, labels)
    steps_per_epoch = int(np.ceil(len(train_dataset) * 1. / args.batch_size))
    opt = create_optimizer(args, net.parameters(), steps_per_epoch)
    model.prepare(opt, paddle.nn.CrossEntropyLoss(),
                  paddle.metric.Accuracy(topk=(1, 5)))
    if args.checkpoint is not None:
        model.load(args.checkpoint)
    model.fit(train_data=train_dataset,
              eval_data=val_dataset,
              epochs=args.num_epochs,
              batch_size=args.batch_size // ParallelEnv().nranks,
              verbose=1,
              save_dir=args.model_path,
              num_workers=8)
Esempio n. 28
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def compress(args):
    class_dim = 1000
    image_shape = "3,224,224"
    image_shape = [int(m) for m in image_shape.split(",")]
    assert args.model in model_list, "{} is not in lists: {}".format(
        args.model, model_list)
    image = fluid.layers.data(name='image', shape=image_shape, dtype='float32')
    label = fluid.layers.data(name='label', shape=[1], dtype='int64')
    # model definition
    model = models.__dict__[args.model]()
    out = model.net(input=image, class_dim=class_dim)
    cost = fluid.layers.cross_entropy(input=out, label=label)
    avg_cost = fluid.layers.mean(x=cost)
    acc_top1 = fluid.layers.accuracy(input=out, label=label, k=1)
    acc_top5 = fluid.layers.accuracy(input=out, label=label, k=5)
    val_program = fluid.default_main_program().clone(for_test=True)
    opt = create_optimizer(args)
    opt.minimize(avg_cost)
    place = fluid.CUDAPlace(0) if args.use_gpu else fluid.CPUPlace()
    exe = fluid.Executor(place)
    exe.run(fluid.default_startup_program())

    if args.pretrained_model:

        def if_exist(var):
            exist = os.path.exists(
                os.path.join(args.pretrained_model, var.name))
            print("exist", exist)
            return exist

        #fluid.io.load_vars(exe, args.pretrained_model, predicate=if_exist)

    val_reader = paddle.fluid.io.batch(reader.val(),
                                       batch_size=args.batch_size)
    train_reader = paddle.fluid.io.batch(reader.train(),
                                         batch_size=args.batch_size,
                                         drop_last=True)

    train_feeder = feeder = fluid.DataFeeder([image, label], place)
    val_feeder = feeder = fluid.DataFeeder([image, label],
                                           place,
                                           program=val_program)

    def test(epoch, program):
        batch_id = 0
        acc_top1_ns = []
        acc_top5_ns = []
        for data in val_reader():
            start_time = time.time()
            acc_top1_n, acc_top5_n = exe.run(
                program,
                feed=train_feeder.feed(data),
                fetch_list=[acc_top1.name, acc_top5.name])
            end_time = time.time()
            print(
                "Eval epoch[{}] batch[{}] - acc_top1: {}; acc_top5: {}; time: {}"
                .format(epoch, batch_id, np.mean(acc_top1_n),
                        np.mean(acc_top5_n), end_time - start_time))
            acc_top1_ns.append(np.mean(acc_top1_n))
            acc_top5_ns.append(np.mean(acc_top5_n))
            batch_id += 1

        print("Final eval epoch[{}] - acc_top1: {}; acc_top5: {}".format(
            epoch, np.mean(np.array(acc_top1_ns)),
            np.mean(np.array(acc_top5_ns))))

    def train(epoch, program):

        build_strategy = fluid.BuildStrategy()
        exec_strategy = fluid.ExecutionStrategy()
        train_program = fluid.compiler.CompiledProgram(
            program).with_data_parallel(loss_name=avg_cost.name,
                                        build_strategy=build_strategy,
                                        exec_strategy=exec_strategy)

        batch_id = 0
        for data in train_reader():
            start_time = time.time()
            loss_n, acc_top1_n, acc_top5_n, lr_n = exe.run(
                train_program,
                feed=train_feeder.feed(data),
                fetch_list=[
                    avg_cost.name, acc_top1.name, acc_top5.name,
                    "learning_rate"
                ])
            end_time = time.time()
            loss_n = np.mean(loss_n)
            acc_top1_n = np.mean(acc_top1_n)
            acc_top5_n = np.mean(acc_top5_n)
            lr_n = np.mean(lr_n)
            print(
                "epoch[{}]-batch[{}] - loss: {}; acc_top1: {}; acc_top5: {};lrn: {}; time: {}"
                .format(epoch, batch_id, loss_n, acc_top1_n, acc_top5_n, lr_n,
                        end_time - start_time))
            batch_id += 1

    params = []
    for param in fluid.default_main_program().global_block().all_parameters():
        #if "_weights" in  param.name and "conv1_weights" not in param.name:
        if "_sep_weights" in param.name:
            params.append(param.name)
    print("fops before pruning: {}".format(flops(
        fluid.default_main_program())))
    pruned_program_iter = fluid.default_main_program()
    pruned_val_program_iter = val_program
    for ratios in ratiolist:
        pruner = Pruner()
        pruned_val_program_iter = pruner.prune(pruned_val_program_iter,
                                               fluid.global_scope(),
                                               params=params,
                                               ratios=ratios,
                                               place=place,
                                               only_graph=True)

        pruned_program_iter = pruner.prune(pruned_program_iter,
                                           fluid.global_scope(),
                                           params=params,
                                           ratios=ratios,
                                           place=place)
        print("fops after pruning: {}".format(flops(pruned_program_iter)))
    """ do not inherit learning rate """
    if (os.path.exists(args.pretrained_model + "/learning_rate")):
        os.remove(args.pretrained_model + "/learning_rate")
    if (os.path.exists(args.pretrained_model + "/@LR_DECAY_COUNTER@")):
        os.remove(args.pretrained_model + "/@LR_DECAY_COUNTER@")
    fluid.io.load_vars(exe,
                       args.pretrained_model,
                       main_program=pruned_program_iter,
                       predicate=if_exist)

    pruned_program = pruned_program_iter
    pruned_val_program = pruned_val_program_iter
    for i in range(args.num_epochs):
        train(i, pruned_program)
        test(i, pruned_val_program)
        save_model(args, exe, pruned_program, pruned_val_program, i)
Esempio n. 29
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def compress(args):
    train_reader = None
    test_reader = None
    if args.data == "mnist":
        import paddle.dataset.mnist as reader
        train_reader = reader.train()
        val_reader = reader.test()
        class_dim = 10
        image_shape = "1,28,28"
    elif args.data == "imagenet":
        import imagenet_reader as reader
        train_reader = reader.train()
        val_reader = reader.val()
        class_dim = 1000
        image_shape = "3,224,224"
    else:
        raise ValueError("{} is not supported.".format(args.data))
    image_shape = [int(m) for m in image_shape.split(",")]
    assert args.model in model_list, "{} is not in lists: {}".format(
        args.model, model_list)
    image = fluid.layers.data(name='image', shape=image_shape, dtype='float32')
    label = fluid.layers.data(name='label', shape=[1], dtype='int64')
    # model definition
    model = models.__dict__[args.model]()
    out = model.net(input=image, class_dim=class_dim)
    cost = fluid.layers.cross_entropy(input=out, label=label)
    avg_cost = fluid.layers.mean(x=cost)
    acc_top1 = fluid.layers.accuracy(input=out, label=label, k=1)
    acc_top5 = fluid.layers.accuracy(input=out, label=label, k=5)
    val_program = fluid.default_main_program().clone(for_test=True)
    opt = create_optimizer(args)
    opt.minimize(avg_cost)
    place = fluid.CUDAPlace(0) if args.use_gpu else fluid.CPUPlace()
    exe = fluid.Executor(place)
    exe.run(fluid.default_startup_program())

    if args.pretrained_model:

        def if_exist(var):
            return os.path.exists(os.path.join(args.pretrained_model,
                                               var.name))

        _logger.info("Load pretrained model from {}".format(
            args.pretrained_model))
        fluid.io.load_vars(exe, args.pretrained_model, predicate=if_exist)

    val_reader = paddle.fluid.io.batch(val_reader, batch_size=args.batch_size)
    train_reader = paddle.fluid.io.batch(train_reader,
                                         batch_size=args.batch_size,
                                         drop_last=True)

    train_feeder = feeder = fluid.DataFeeder([image, label], place)
    val_feeder = feeder = fluid.DataFeeder([image, label],
                                           place,
                                           program=val_program)

    def test(epoch, program):
        batch_id = 0
        acc_top1_ns = []
        acc_top5_ns = []
        for data in val_reader():
            start_time = time.time()
            acc_top1_n, acc_top5_n = exe.run(
                program,
                feed=train_feeder.feed(data),
                fetch_list=[acc_top1.name, acc_top5.name])
            end_time = time.time()
            if batch_id % args.log_period == 0:
                _logger.info(
                    "Eval epoch[{}] batch[{}] - acc_top1: {}; acc_top5: {}; time: {}"
                    .format(epoch, batch_id, np.mean(acc_top1_n),
                            np.mean(acc_top5_n), end_time - start_time))
            acc_top1_ns.append(np.mean(acc_top1_n))
            acc_top5_ns.append(np.mean(acc_top5_n))
            batch_id += 1

        _logger.info(
            "Final eval epoch[{}] - acc_top1: {}; acc_top5: {}".format(
                epoch, np.mean(np.array(acc_top1_ns)),
                np.mean(np.array(acc_top5_ns))))

    def train(epoch, program):

        build_strategy = fluid.BuildStrategy()
        exec_strategy = fluid.ExecutionStrategy()
        train_program = fluid.compiler.CompiledProgram(
            program).with_data_parallel(loss_name=avg_cost.name,
                                        build_strategy=build_strategy,
                                        exec_strategy=exec_strategy)

        batch_id = 0
        for data in train_reader():
            start_time = time.time()
            loss_n, acc_top1_n, acc_top5_n = exe.run(
                train_program,
                feed=train_feeder.feed(data),
                fetch_list=[avg_cost.name, acc_top1.name, acc_top5.name])
            end_time = time.time()
            loss_n = np.mean(loss_n)
            acc_top1_n = np.mean(acc_top1_n)
            acc_top5_n = np.mean(acc_top5_n)
            if batch_id % args.log_period == 0:
                _logger.info(
                    "epoch[{}]-batch[{}] - loss: {}; acc_top1: {}; acc_top5: {}; time: {}"
                    .format(epoch, batch_id, loss_n, acc_top1_n, acc_top5_n,
                            end_time - start_time))
            batch_id += 1

    test(0, val_program)

    params = get_pruned_params(args, fluid.default_main_program())
    _logger.info("FLOPs before pruning: {}".format(
        flops(fluid.default_main_program())))
    pruner = Pruner(args.criterion)
    pruned_val_program, _, _ = pruner.prune(val_program,
                                            fluid.global_scope(),
                                            params=params,
                                            ratios=[args.pruned_ratio] *
                                            len(params),
                                            place=place,
                                            only_graph=True)

    pruned_program, _, _ = pruner.prune(fluid.default_main_program(),
                                        fluid.global_scope(),
                                        params=params,
                                        ratios=[args.pruned_ratio] *
                                        len(params),
                                        place=place)
    _logger.info("FLOPs after pruning: {}".format(flops(pruned_program)))
    for i in range(args.num_epochs):
        train(i, pruned_program)
        if i % args.test_period == 0:
            test(i, pruned_val_program)
            save_model(exe, pruned_val_program,
                       os.path.join(args.model_path, str(i)))
        if args.save_inference:
            infer_model_path = os.path.join(args.model_path, "infer_models",
                                            str(i))
            fluid.io.save_inference_model(infer_model_path, ["image"], [out],
                                          exe, pruned_val_program)
            _logger.info(
                "Saved inference model into [{}]".format(infer_model_path))
Esempio n. 30
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def compress(args):

    train_reader = None
    test_reader = None
    if args.data == "mnist":
        import paddle.dataset.mnist as reader
        train_reader = reader.train()
        val_reader = reader.test()
        class_dim = 10
        image_shape = "1,28,28"
    elif args.data == "imagenet":
        import imagenet_reader as reader
        train_reader = reader.train()
        val_reader = reader.val()
        class_dim = 1000
        image_shape = "3,224,224"
    else:
        raise ValueError("{} is not supported.".format(args.data))

    image_shape = [int(m) for m in image_shape.split(",")]
    assert args.model in model_list, "{} is not in lists: {}".format(
        args.model, model_list)
    image = fluid.layers.data(name='image', shape=image_shape, dtype='float32')
    label = fluid.layers.data(name='label', shape=[1], dtype='int64')
    # model definition
    model = models.__dict__[args.model]()
    out = model.net(input=image, class_dim=class_dim)
    cost = fluid.layers.cross_entropy(input=out, label=label)
    avg_cost = fluid.layers.mean(x=cost)
    acc_top1 = fluid.layers.accuracy(input=out, label=label, k=1)
    acc_top5 = fluid.layers.accuracy(input=out, label=label, k=5)
    val_program = fluid.default_main_program().clone(for_test=True)
    opt = create_optimizer(args)
    opt.minimize(avg_cost)
    place = fluid.CUDAPlace(0) if args.use_gpu else fluid.CPUPlace()
    exe = fluid.Executor(place)
    exe.run(fluid.default_startup_program())

    if args.pretrained_model:

        def if_exist(var):
            return os.path.exists(os.path.join(args.pretrained_model,
                                               var.name))


#        fluid.io.load_vars(exe, args.pretrained_model, predicate=if_exist)

    val_reader = paddle.batch(val_reader, batch_size=args.batch_size)
    train_reader = paddle.batch(train_reader,
                                batch_size=args.batch_size,
                                drop_last=True)

    train_feeder = feeder = fluid.DataFeeder([image, label], place)
    val_feeder = feeder = fluid.DataFeeder([image, label],
                                           place,
                                           program=val_program)

    def test(epoch, program):
        batch_id = 0
        acc_top1_ns = []
        acc_top5_ns = []
        for data in val_reader():
            start_time = time.time()
            acc_top1_n, acc_top5_n = exe.run(
                program,
                feed=train_feeder.feed(data),
                fetch_list=[acc_top1.name, acc_top5.name])
            end_time = time.time()
            if batch_id % args.log_period == 0:
                _logger.info(
                    "Eval epoch[{}] batch[{}] - acc_top1: {}; acc_top5: {}; time: {}"
                    .format(epoch, batch_id, np.mean(acc_top1_n),
                            np.mean(acc_top5_n), end_time - start_time))
            acc_top1_ns.append(np.mean(acc_top1_n))
            acc_top5_ns.append(np.mean(acc_top5_n))
            batch_id += 1

        _logger.info(
            "Final eval epoch[{}] - acc_top1: {}; acc_top5: {}".format(
                epoch, np.mean(np.array(acc_top1_ns)),
                np.mean(np.array(acc_top5_ns))))
        return np.mean(np.array(acc_top1_ns))

    def train(epoch, program):

        build_strategy = fluid.BuildStrategy()
        exec_strategy = fluid.ExecutionStrategy()
        train_program = fluid.compiler.CompiledProgram(
            program).with_data_parallel(loss_name=avg_cost.name,
                                        build_strategy=build_strategy,
                                        exec_strategy=exec_strategy)

        batch_id = 0
        for data in train_reader():
            start_time = time.time()
            loss_n, acc_top1_n, acc_top5_n = exe.run(
                train_program,
                feed=train_feeder.feed(data),
                fetch_list=[avg_cost.name, acc_top1.name, acc_top5.name])
            end_time = time.time()
            loss_n = np.mean(loss_n)
            acc_top1_n = np.mean(acc_top1_n)
            acc_top5_n = np.mean(acc_top5_n)
            if batch_id % args.log_period == 0:
                _logger.info(
                    "epoch[{}]-batch[{}] - loss: {}; acc_top1: {}; acc_top5: {}; time: {}"
                    .format(epoch, batch_id, loss_n, acc_top1_n, acc_top5_n,
                            end_time - start_time))
            batch_id += 1

    params = []
    for param in fluid.default_main_program().global_block().all_parameters():
        if "_sep_weights" in param.name:
            params.append(param.name)

    pruned_program_iter = fluid.default_main_program()
    pruned_val_program_iter = val_program

    for ratios in ratiolist:
        pruner = Pruner()
        pruned_val_program_iter = pruner.prune(pruned_val_program_iter,
                                               fluid.global_scope(),
                                               params=params,
                                               ratios=ratios,
                                               place=place,
                                               only_graph=True)

        pruned_program_iter = pruner.prune(pruned_program_iter,
                                           fluid.global_scope(),
                                           params=params,
                                           ratios=ratios,
                                           place=place)
        print("fops after pruning: {}".format(flops(pruned_program_iter)))
    fluid.io.load_vars(exe,
                       args.pretrained_model,
                       main_program=pruned_program_iter,
                       predicate=if_exist)

    pruner = AutoPruner(pruned_val_program_iter,
                        fluid.global_scope(),
                        place,
                        params=params,
                        init_ratios=[0.1] * len(params),
                        pruned_flops=0.1,
                        pruned_latency=None,
                        server_addr=("", 0),
                        init_temperature=100,
                        reduce_rate=0.85,
                        max_try_times=300,
                        max_client_num=10,
                        search_steps=100,
                        max_ratios=0.2,
                        min_ratios=0.,
                        is_server=True,
                        key="auto_pruner")

    while True:
        pruned_program, pruned_val_program = pruner.prune(
            pruned_program_iter, pruned_val_program_iter)
        for i in range(0):
            train(i, pruned_program)
        score = test(0, pruned_val_program)
        pruner.reward(score)