コード例 #1
0
def main(opt):
    if not os.path.isdir(opt['log.exp_dir']):
        os.makedirs(opt['log.exp_dir'])

    # save opts
    with open(os.path.join(opt['log.exp_dir'], 'opt.json'), 'w') as f:
        json.dump(opt, f)
        f.write('\n')

    trace_file = os.path.join(opt['log.exp_dir'], 'trace.txt')

    # Postprocess arguments
    opt['model.x_dim'] = list(map(int, opt['model.x_dim'].split(',')))
    opt['log.fields'] = opt['log.fields'].split(',')

    np.random.seed(4321)
    torch.manual_seed(1234)
    if opt['data.cuda']:
        torch.cuda.manual_seed(1234)

    if opt['data.trainval']:
        data = data_utils.load(opt, ['trainval'])
        train_loader = data['trainval']
        val_loader = None
    else:
        data = data_utils.load(opt, ['train', 'val'])
        train_loader = data['train']
        val_loader = data['val']

    model = model_utils.load(opt)

    if opt['data.cuda']:
        model.cuda()

    engine = Engine()

    meters = { 'train': { field: tnt.meter.AverageValueMeter() for field in opt['log.fields'] } }

    if val_loader is not None:
        meters['val'] = { field: tnt.meter.AverageValueMeter() for field in opt['log.fields'] }

    def on_start(state):
        if os.path.isfile(trace_file):
            os.remove(trace_file)
        state['scheduler'] = lr_scheduler.StepLR(state['optimizer'], opt['train.decay_every'], gamma=1)
    engine.hooks['on_start'] = on_start

    def on_start_epoch(state):
        for split, split_meters in meters.items():
            for field, meter in split_meters.items():
                meter.reset()
        state['scheduler'].step()
    engine.hooks['on_start_epoch'] = on_start_epoch

    def on_update(state):
        for field, meter in meters['train'].items():
            meter.add(state['output'][field])
    engine.hooks['on_update'] = on_update

    def on_end_epoch(hook_state, state):
        if val_loader is not None:
            if 'best_loss' not in hook_state:
                hook_state['best_loss'] = np.inf
            if 'wait' not in hook_state:
                hook_state['wait'] = 0

        if val_loader is not None:
            model_utils.evaluate(state['model'],
                                 val_loader,
                                 meters['val'],
                                 desc="Epoch {:d} valid".format(state['epoch']))

        meter_vals = log_utils.extract_meter_values(meters)
        print("Epoch {:02d}: {:s}".format(state['epoch'], log_utils.render_meter_values(meter_vals)))
        meter_vals['epoch'] = state['epoch']
        with open(trace_file, 'a') as f:
            json.dump(meter_vals, f)
            f.write('\n')

        if val_loader is not None and False:    # disable this block
            if meter_vals['val']['loss'] < hook_state['best_loss']:
                hook_state['best_loss'] = meter_vals['val']['loss']
                print("==> best model (loss = {:0.6f}), saving model...".format(hook_state['best_loss']))

                state['model'].cpu()
                torch.save(state['model'], os.path.join(opt['log.exp_dir'], 'best_model.pt'))
                if opt['data.cuda']:
                    state['model'].cuda()

                hook_state['wait'] = 0
            else:
                hook_state['wait'] += 1

                if hook_state['wait'] > opt['train.patience']:
                    print("==> patience {:d} exceeded".format(opt['train.patience']))
                    state['stop'] = True
        else:
            state['model'].cpu()
            torch.save(state['model'], os.path.join(opt['log.exp_dir'], 'best_model.pt'))
            if opt['data.cuda']:
                state['model'].cuda()

    engine.hooks['on_end_epoch'] = partial(on_end_epoch, { })

    engine.train(
        model = model,
        loader = train_loader,
        optim_method = getattr(optim, opt['train.optim_method']),
        optim_config = { 'lr': opt['train.learning_rate'],
                         'weight_decay': opt['train.weight_decay'] },
        max_epoch = opt['train.epochs']
    )
コード例 #2
0
def main(opt):
    if not os.path.isdir(opt['log.exp_dir']):
        os.makedirs(opt['log.exp_dir'])

    # save opts
    with open(os.path.join(opt['log.exp_dir'], 'opt.json'), 'w') as f:
        json.dump(opt, f)
        f.write('\n')

    trace_file = os.path.join(opt['log.exp_dir'], 'trace.txt')

    # Postprocess arguments
    opt['model.x_dim'] = list(map(int, opt['model.x_dim'].split(',')))
    opt['log.fields'] = opt['log.fields'].split(',')

    torch.manual_seed(1234)
    if opt['data.cuda']:
        torch.cuda.manual_seed(1234)

    #if opt['data.trainval']:
    #    data = data_utils.load(opt, ['trainval'])
    #    train_loader = data['trainval']
    #    val_loader = None
    #else:
    #    data = data_utils.load(opt, ['train', 'val'])
    #    train_loader = data['train']
    #    val_loader = data['val']
    val_loader = 'HACK'

    # added
    train_way = opt['data.way']
    train_shot = opt['data.shot']
    train_query = opt['data.query']
    train_episodes = opt['data.train_episodes']
    data = PytorchBirdsDataLoader(n_episodes=train_episodes,
                                  n_way=train_way,
                                  n_query=train_query,
                                  n_support=train_shot,
                                  image_dim=(224, 224, 3))
    model = model_utils.load(opt)

    if opt['data.cuda']:
        model.cuda()
        #model.encoder.cuda()

    engine = Engine()

    meters = {
        'train':
        {field: tnt.meter.AverageValueMeter()
         for field in opt['log.fields']}
    }

    if val_loader is not None:
        meters['val'] = {
            field: tnt.meter.AverageValueMeter()
            for field in opt['log.fields']
        }

    def on_start(state):
        if os.path.isfile(trace_file):
            os.remove(trace_file)
        state['scheduler'] = lr_scheduler.StepLR(state['optimizer'],
                                                 opt['train.decay_every'],
                                                 gamma=0.5)

    engine.hooks['on_start'] = on_start

    def on_start_epoch(state):
        state['loader'].mode = 'train'  # added
        for split, split_meters in meters.items():
            for field, meter in split_meters.items():
                meter.reset()
        state['scheduler'].step()

    engine.hooks['on_start_epoch'] = on_start_epoch

    def on_update(state):
        for field, meter in meters['train'].items():
            meter.add(state['output'][field])

    engine.hooks['on_update'] = on_update

    def on_end_epoch(hook_state, state):
        if val_loader is not None:
            if 'best_loss' not in hook_state:
                hook_state['best_loss'] = np.inf
            if 'wait' not in hook_state:
                hook_state['wait'] = 0

        if val_loader is not None:
            state['loader'].mode = 'val'  # added
            model_utils.evaluate(
                state['model'],
                state['loader'],  #val_loader,
                meters['val'],
                desc="Epoch {:d} valid".format(state['epoch']))

        meter_vals = log_utils.extract_meter_values(meters)
        print("Epoch {:02d}: {:s}".format(
            state['epoch'], log_utils.render_meter_values(meter_vals)))
        meter_vals['epoch'] = state['epoch']
        # this prevents cuda bugs
        meter_vals = {
            k: ({kk: float(vv)
                 for kk, vv in v.items()} if isinstance(v, dict) else v)
            for k, v in meter_vals.items()
        }
        with open(trace_file, 'a') as f:
            json.dump(meter_vals, f)
            f.write('\n')

        if val_loader is not None:
            if meter_vals['val']['loss'] < hook_state['best_loss']:
                hook_state['best_loss'] = meter_vals['val']['loss']
                print(
                    "==> best model (loss = {:0.6f}), saving model...".format(
                        hook_state['best_loss']))

                state['model'].cpu()
                # used with inception
                #torch.save(state['model'].encoder.added_layers, os.path.join(opt['log.exp_dir'], 'best_model.t7'))
                torch.save(state['model'],
                           os.path.join(opt['log.exp_dir'], 'best_model.t7'))
                if opt['data.cuda']:
                    state['model'].cuda()

                hook_state['wait'] = 0
            else:
                hook_state['wait'] += 1

                if hook_state['wait'] > opt['train.patience']:
                    print("==> patience {:d} exceeded".format(
                        opt['train.patience']))
                    state['stop'] = True
        else:
            state['model'].cpu()
            # used with inception
            #torch.save(state['model'].encoder.added_layers, os.path.join(opt['log.exp_dir'], 'best_model.t7'))
            torch.save(state['model'],
                       os.path.join(opt['log.exp_dir'], 'best_model.t7'))
            if opt['data.cuda']:
                state['model'].cuda()

    engine.hooks['on_end_epoch'] = partial(on_end_epoch, {})

    engine.train(
        model=model,
        loader=data,  #train_loader,
        optim_method=getattr(optim, opt['train.optim_method']),
        optim_config={
            'lr': opt['train.learning_rate'],
            'weight_decay': opt['train.weight_decay']
        },
        max_epoch=opt['train.epochs'])
コード例 #3
0
def main(opt):
    # 新建日志目录
    if not os.path.isdir(opt['log.exp_dir']):
        os.makedirs(opt['log.exp_dir'])

    # save opts
    with open(os.path.join(opt['log.exp_dir'], 'opt.json'), 'w') as f:
        json.dump(opt, f)
        f.write('\n')

    trace_file = os.path.join(opt['log.exp_dir'], 'trace.txt')

    # Postprocess arguments
    opt['model.x_dim'] = list(map(int, opt['model.x_dim'].split(',')))
    opt['log.fields'] = opt['log.fields'].split(',')

    torch.manual_seed(1234)
    if opt['data.cuda']:
        torch.cuda.manual_seed(1234)

    #??? trainval是什么???
    if opt['data.trainval']:
        data = data_utils.load(opt, ['trainval'])
        train_loader = data['trainval']
        val_loader = None
    else:
        data = data_utils.load(opt, ['train', 'val'])
        train_loader = data['train']
        val_loader = data['val']

    model = model_utils.load(opt)
    #model = torch.load("results/m5_5way5shot/pre.t7")

    if opt['data.cuda']:
        model.cuda()

    engine = Engine()

    meters = {
        'train':
        {field: tnt.meter.AverageValueMeter()
         for field in opt['log.fields']}
    }

    if val_loader is not None:
        meters['val'] = {
            field: tnt.meter.AverageValueMeter()
            for field in opt['log.fields']
        }

    # 看名字知道功能的start函数,配置优化器
    def on_start(state):
        if os.path.isfile(trace_file):
            os.remove(trace_file)
        state['scheduler'] = lr_scheduler.StepLR(state['optimizer'],
                                                 opt['train.decay_every'],
                                                 gamma=0.5)

    engine.hooks['on_start'] = on_start

    # 第一个epoch需要解决的事
    def on_start_epoch(state):
        for split, split_meters in meters.items():
            for field, meter in split_meters.items():
                meter.reset()
        state['scheduler'].step()

    engine.hooks['on_start_epoch'] = on_start_epoch

    # 更新那个算平均的类
    def on_update(state):
        for field, meter in meters['train'].items():
            meter.add(state['output'][field])

    engine.hooks['on_update'] = on_update

    #一个epoch结束时判断训练效果,以及是否结束训练(patience?为什么不用loss的改变?看了实际训练貌似loss变化挺大的)
    title = '%s, %s: %i_%iw_%is' % (opt['model.exp_name'], opt['data.dataset'],
                                    opt['data.way'], opt['data.test_way'],
                                    opt['data.test_shot'])
    lossPic = visual_utils.train_val_loss(title)
    accPic = visual_utils.train_val_acc(title)

    def on_end_epoch(hook_state, state):
        if val_loader is not None:
            if 'best_loss' not in hook_state:
                hook_state['best_loss'] = np.inf
            if 'wait' not in hook_state:
                hook_state['wait'] = 0

        if val_loader is not None:
            model_utils.evaluate(state['model'],
                                 val_loader,
                                 meters['val'],
                                 desc="Epoch {:d} valid".format(
                                     state['epoch']))

        meter_vals = log_utils.extract_meter_values(meters)
        lossPic(state['epoch'], meter_vals['train']['loss'],
                meter_vals['val']['loss'])
        accPic(state['epoch'], meter_vals['train']['acc'],
               meter_vals['val']['acc'])
        print("Epoch {:02d}: {:s}".format(
            state['epoch'], log_utils.render_meter_values(meter_vals)))
        meter_vals['epoch'] = state['epoch']
        with open(trace_file, 'a') as f:
            json.dump(meter_vals, f)
            f.write('\n')

        if val_loader is not None:
            if meter_vals['val']['loss'] < hook_state['best_loss']:
                hook_state['best_loss'] = meter_vals['val']['loss']
                print(
                    "==> best model (loss = {:0.6f}), saving model...".format(
                        hook_state['best_loss']))

                state['model'].cpu()
                torch.save(state['model'],
                           os.path.join(opt['log.exp_dir'], 'best_model.t7'))
                if opt['data.cuda']:
                    state['model'].cuda()

                hook_state['wait'] = 0
            else:
                hook_state['wait'] += 1

                if hook_state['wait'] > opt['train.patience']:
                    print("==> patience {:d} exceeded".format(
                        opt['train.patience']))
                    state['stop'] = True
        else:
            state['model'].cpu()
            torch.save(state['model'],
                       os.path.join(opt['log.exp_dir'], 'best_model.t7'))
            if opt['data.cuda']:
                state['model'].cuda()

    engine.hooks['on_end_epoch'] = partial(on_end_epoch, {})

    engine.train(model=model,
                 loader=train_loader,
                 optim_method=getattr(optim, opt['train.optim_method']),
                 optim_config={
                     'lr': opt['train.learning_rate'],
                     'weight_decay': opt['train.weight_decay']
                 },
                 max_epoch=opt['train.epochs'])
コード例 #4
0
def main(opt):
		
    if not os.path.isdir(opt['log.exp_dir']):
        os.makedirs(opt['log.exp_dir'])

    # save opts
    # 将opts加入文件中
    with open(os.path.join(opt['log.exp_dir'], 'opt.json'), 'w') as f:
        json.dump(opt, f)
        f.write('\n')

    trace_file = os.path.join(opt['log.exp_dir'], 'trace.txt')

    # Postprocess arguments
    opt['model.x_dim'] = list(map(int, opt['model.x_dim'].split(',')))
    opt['log.fields'] = opt['log.fields'].split(',')

    torch.manual_seed(1234)
    if opt['data.cuda']:
        torch.cuda.manual_seed(1234)
    
	  # 加载数据
    if opt['data.trainval']:
        # load Omniglot dataset
        data = data_utils.load(opt, ['trainval'])
        train_loader = data['trainval']
        val_loader = None
    else:
        data = data_utils.load(opt, ['train', 'val'])
        train_loader = data['train']
        val_loader = data['val']
    
    # 使用模型相关参数加载模型
    model = model_utils.load(opt)

    if opt['data.cuda']:
        model.cuda()

    engine = Engine()
    
    # torchnet.meter评估方法性能,这里用的平均值
    # 先建立一个每个指标及其对应评价值的字典
    meters = { 'train': { field: tnt.meter.AverageValueMeter() for field in opt['log.fields'] } }
    
    if val_loader is not None:
        meters['val'] = { field: tnt.meter.AverageValueMeter() for field in opt['log.fields'] }
    
    def on_start(state):
        if os.path.isfile(trace_file):
            os.remove(trace_file)
        # 定义学习率衰减机制
        state['scheduler'] = lr_scheduler.StepLR(state['optimizer'], opt['train.decay_every'], gamma=0.5)
    # 将上面的函数赋给匿名函数engine.hooks
    engine.hooks['on_start'] = on_start
    
    # 每个epoch开始时
    def on_start_epoch(state):
        for split, split_meters in meters.items():
            for field, meter in split_meters.items():
                # 重置评价指标
						meter.reset()

        # 调用optimizer的step()函数进行回传
			state['scheduler'].step()
    
		# 用匿名函数包装
    engine.hooks['on_start_epoch'] = on_start_epoch

    # 更新评价指标
    def on_update(state):
        # 对于所有训练指标,更新每个训练指标的值
        for field, meter in meters['train'].items():
            meter.add(state['output'][field])
    engine.hooks['on_update'] = on_update

    # 在每个epoch结束时,给出这个epoch的评价值
    def on_end_epoch(hook_state, state):
        if val_loader is not None:
            if 'best_loss' not in hook_state:
                hook_state['best_loss'] = np.inf
            if 'wait' not in hook_state:
                hook_state['wait'] = 0

        if val_loader is not None:
				# 使用val评价模型
            model_utils.evaluate(state['model'],
                                 val_loader,
                                 meters['val'],
                                 desc="Epoch {:d} valid".format(state['epoch']))

        meter_vals = log_utils.extract_meter_values(meters)
        print("Epoch {:02d}: {:s}".format(state['epoch'], log_utils.render_meter_values(meter_vals)))
        meter_vals['epoch'] = state['epoch']
        with open(trace_file, 'a') as f:
            json.dump(meter_vals, f)
            f.write('\n')
			
			# 更新目前最好的loss
        if val_loader is not None:
            if meter_vals['val']['loss'] < hook_state['best_loss']:
                hook_state['best_loss'] = meter_vals['val']['loss']
                print("==> best model (loss = {:0.6f}), saving model...".format(hook_state['best_loss']))

                state['model'].cpu()
                torch.save(state['model'], os.path.join(opt['log.exp_dir'], 'best_model.pt'))
                if opt['data.cuda']:
                    state['model'].cuda()

                hook_state['wait'] = 0
           
				# early stop 
				else:
                hook_state['wait'] += 1

                if hook_state['wait'] > opt['train.patience']:
                    print("==> patience {:d} exceeded".format(opt['train.patience']))
                    state['stop'] = True