Example #1
0
def build_config(args, build_params):
    build_params.gpu = args.gpu
    build_params.logdir = args.log
    build_params.dataset.name = args.dataset
    build_params.dataset.flip = utils.str2bool(args.flip)
    build_params.dataset.crop = utils.str2bool(args.crop)
    build_params.training.log_steps = int(args.log_steps)
    build_params.training.idx = args.idx
    build_params.training.epochs = int(args.epochs)
    build_params.training.batch_size = int(args.batch)
    build_params.training.steps = int(args.steps)
    build_params.training.log = utils.str2bool(args.t_log)
    build_params.training.whiten = args.whiten
    build_params.model.name = args.model
    build_params.model.pool = args.pool
    build_params.model.layer_num = int(args.layer_num)
    build_params.model.in_norm = utils.str2bool(args.in_norm)
    build_params.model.in_norm_fn = args.in_norm_fn
    build_params.model.fm_norm = args.fm_norm
    build_params.model.out_norm = utils.str2bool(args.out_norm)
    build_params.model.norm_scale = utils.str2bool(args.norm_scale)
    build_params.model.bn_relu = utils.str2bool(args.bn_relu)
    build_params.model.resnet = args.resnet
    build_params.routing.temper = float(args.temper)
    build_params.routing.iter_num = int(args.iter_num)
    build_params.caps.atoms = int(args.atoms)
    build_params.caps.pre_atoms = int(args.pre_atoms)
    build_params.recons.balance_factor = float(args.balance_factor)
    build_params.recons.threshold = float(args.activate_threshold)
    build_params.recons.conv = utils.str2bool(args.recons_conv)
    build_params.recons.share = utils.str2bool(args.recons_share)
    return build_params
Example #2
0
def build_config(args, build_params):
    build_params.logdir = args.log
    build_params.dataset.name = args.dataset
    build_params.dataset.flip = utils.str2bool(args.flip)
    build_params.dataset.crop = utils.str2bool(args.crop)
    build_params.training.batch_size = int(args.batch)
    build_params.training.epochs = int(args.epochs)
    build_params.training.lr = float(args.lr)
    build_params.training.idx = args.idx
    build_params.training.save_frequency = args.save
    build_params.model.arch = args.arch
    build_params.model.type = args.type
    build_params.normalize.method = args.method
    build_params.normalize.m = int(args.m)
    build_params.normalize.iter = int(args.iter)
    build_params.normalize.affine = utils.str2bool(args.affine)
    return build_params
Example #3
0
def build_config(args):
    config.dataset.name = args.dataset
    config.dataset.flip = utils.str2bool(args.flip)
    config.dataset.crop = utils.str2bool(args.crop)
    config.logdir = args.log
    config.training.log_steps = int(args.log_steps)
    config.training.idx = args.idx
    config.training.epochs = int(args.epochs)
    config.training.lr = float(args.lr)
    config.training.batch_size = int(args.batch)
    config.training.steps = int(args.steps)
    config.training.log = utils.str2bool(args.t_log)
    config.model.name = args.model
    config.model.layer_num = int(args.layer_num)
    config.normalize.type = args.normalize
    config.normalize.m = int(args.dbn_m)
    config.normalize.iter = int(args.iter)
    config.normalize.affine = utils.str2bool(args.dbn_affine)
Example #4
0
def build_parse(height, width, channel, image_standardization=True, flip=True, crop=True, brightness=False, contrast=False):
    image_standardization = utils.str2bool(image_standardization)
    flip = utils.str2bool(flip)
    crop = utils.str2bool(crop)
    brightness = utils.str2bool(brightness)
    contrast = utils.str2bool(contrast)

    def parse(image, label):
        image = tf.cast(image, tf.float32)
        if image_standardization:
            image = tf.image.per_image_standardization(image)
        else:
            image = tf.divide(image, 255.)
        if flip:
            image = tf.image.random_flip_left_right(image)
        if crop:
            image = tf.image.resize_with_crop_or_pad(image, height+8, width+8)
            image = tf.image.random_crop(image, [height, width, channel])
        if brightness:
            image = tf.image.random_brightness(image, max_delta=63)
        if contrast:
            image = tf.image.random_contrast(image, lower=0.2, upper=1.8)
        return image, label
    return parse
Example #5
0
        description='OP Benchmark of PaddlePaddle')

    # positional
    parser.add_argument(
        "benchmark_script",
        type=str,
        help="The full path to operator's benchmark script file. If the task "
        "the speed and GPU is used, nvprof will be used to get the GPU kernel time."
    )

    # rest from the operator benchmark program
    parser.add_argument('benchmark_script_args', nargs=argparse.REMAINDER)
    args = parser.parse_args()
    benchmark_args_dict = _args_list_to_dict(args.benchmark_script_args)
    task = benchmark_args_dict.get("task", "speed")
    use_gpu = utils.str2bool(benchmark_args_dict.get("use_gpu", "False"))
    profiler = benchmark_args_dict.get("profiler", "none")
    repeat = benchmark_args_dict.get("repeat", "1")

    utils.check_commit()

    if use_gpu and task == "speed" and profiler == "none":
        total_gpu_time = launch(args.benchmark_script,
                                args.benchmark_script_args,
                                with_nvprof=True)
        args.benchmark_script_args.append(" --gpu_time ")
        args.benchmark_script_args.append(str(total_gpu_time))

    launch(args.benchmark_script,
           args.benchmark_script_args,
           with_nvprof=False)
Example #6
0
import numpy as np
from keras.utils import to_categorical
import copy
from common.utils import eligibility_traces, default_config, make_env, RunningMeanStd, str2bool, discount_rewards
from common.ppo_independant import PPOPolicyNetwork, ValueNetwork

render = False
normalize_inputs = True

config = default_config()
LAMBDA = float(config['agent']['lambda'])
lr_actor = float(config['agent']['lr_actor'])
meta_skip_etrace = str2bool(config['agent']['meta_skip_etrace'])
communication_round = int(config['agent']['fen_communication_round'])
env=make_env(config, normalize_inputs)
env.toggle_compute_neighbors()

n_agent=env.n_agent
T = env.T
GAMMA = env.GAMMA
n_episode = env.n_episode
max_steps = env.max_steps
n_actions = env.n_actions
n_signal = env.n_signal
max_u = env.max_u

i_episode = 0
meta_Pi=[]
meta_V=[]
for i in range(n_agent):
    meta_Pi.append(PPOPolicyNetwork(num_features=env.input_size+2, num_actions=n_signal,layer_size=128,epsilon=0.1,learning_rate=lr_actor))
Example #7
0
File: views.py Project: yinkh/Oasis
 def update(self, request, *args, **kwargs):
     friend = self.get_object()
     try:
         if 'remark' in request.data:
             # A->B 只有A有修改备注权限
             if request.user == friend.from_user:
                 friend.remark = request.data['remark']
                 friend.save()
                 return success_response('设置备注成功')
             else:
                 return error_response(3, '无此权限')
         elif 'is_block' in request.data:
             # A->B 只有A有拉黑权限
             if request.user == friend.from_user:
                 is_block = str2bool(request.data['is_block'])
                 if is_block is not None:
                     friend.is_block = is_block
                     friend.save()
                     if is_block:
                         # 在融云上同步拉黑
                         friend.from_user.operate_black_list(
                             friend.to_user.id, 'add')
                         return success_response('拉黑用户成功')
                     else:
                         # 在融云上同步取消拉黑
                         friend.from_user.operate_black_list(
                             friend.to_user.id, 'remove')
                         return success_response('取消拉黑成功')
                 else:
                     return error_response(4, '参数错误(请输入合法布尔值)')
             else:
                 return error_response(3, '无此权限')
         elif 'state' in request.data:
             # A->B 只有B有接受/拒绝请求权限
             if request.user == friend.to_user:
                 if friend.state == FriendState.Pending:
                     if isdigit(request.data['state']):
                         state = int(request.data['state'])
                         # 接受请求
                         if state == FriendState.Agree:
                             friend.state = state
                             friend.agree_time = timezone.now()
                             friend.save()
                             # 反向设置B->A
                             friend_from, is_created = self.get_queryset(
                             ).get_or_create(from_user=friend.to_user,
                                             to_user=friend.from_user)
                             friend_from.state = state
                             friend_from.agree_time = timezone.now()
                             friend_from.remark = friend.from_user.get_full_name(
                             )
                             friend_from.save()
                             # TODO 向用户A推送B通过了他的好友请求
                             try:
                                 jpush.audience(
                                     friend.from_user.id, '请求通过',
                                     '用户{}通过了你的好友请求'.format(
                                         request.user.get_full_name()),
                                     {'operation': 'friend_pass'})
                             except PushError as e:
                                 logging.error('{} {}'.format(
                                     e.code, e.message))
                             return success_response('添加好友成功')
                         # 拒绝请求
                         elif state == FriendState.Reject:
                             friend.state = state
                             friend.save()
                             return success_response('拒绝请求成功')
                         else:
                             return error_response(4, '参数错误')
                     else:
                         return error_response(4, '参数错误(state为数字)')
                 else:
                     return error_response(5, '不可再次处理该请求')
             else:
                 return error_response(3, '无此权限')
         else:
             return error_response(4, '参数错误')
     except Exception as e:
         import traceback
         traceback.print_exc()
         return error_response(1, str(e))