Beispiel #1
0
 def __init__(self,
              *loaders,
              path='.',
              shuffle=False,
              device=None,
              bs=None):
     "Accepts any number of `DataLoader` and a device"
     self.path = path
     device = ifnone(device, default_device())
     self.device = device
     self.c = None
     bs = ifnone(bs, min([dl.bs for dl in loaders]))
     for i, dl in enumerate(loaders):  # ensure all dls have the same bs
         dl.bs = bs
         dl.shuffle_fn = self.shuffle_fn
         if self.c is None and hasattr(dl, "c"): self.c = dl.c
         if i == 0: self.dataset = dl.dataset
         dl.to(device=device)
     self.shuffle = shuffle
     if not self.shuffle: self.rng = np.arange(len(self.dataset)).tolist()
     self.loaders = loaders
     self.count = 0
     self.fake_l = _FakeLoader(self, False, 0, 0, 0) if version.parse(
         fastai.__version__) >= version.parse("2.1") else _FakeLoader(
             self, False, 0, 0)
     if sum([len(dl.dataset) for dl in loaders]) > 0:
         self._get_idxs()  # Do not apply on an empty dataset
Beispiel #2
0
 def __init__(self, *dls, device=None):
     "Accepts any number of `DataLoaders` and a device"
     device = ifnone(device, default_device())
     self.device = device
     self.c = []
     bs = 0
     for dl in dls:  # ensure all dls have the same bs
         if bs == 0: bsi = dl.bs
         else: dl.bs = bsi
         dl.shuffle_fn = self.shuffle_fn
         if self.c == [] and hasattr(dl, "c"): self.c = dl.c
         dl.to(device=device)
     self.dls = dls
     self.count = 0
     self.fake_l = _FakeLoader(self, False, 0, 0, 0) if version.parse(
         fastai.__version__) >= version.parse("2.1") else _FakeLoader(
             self, False, 0, 0)
     self._get_idxs()
 def __init__(self, dl, rank, world_size):
     store_attr()
     self.bs,self.device,self.num_workers,self.drop_last,self.dataset,self.offs,fake = \
         attrgetter('bs','device','num_workers','drop_last','dataset','offs','fake_l')(dl)
     self.fake_l = _FakeLoader(self,
                               fake.pin_memory,
                               fake.num_workers,
                               fake.timeout,
                               persistent_workers=fake.persistent_workers)
     self.SERIAL_EXEC = xmp.MpSerialExecutor()
Beispiel #4
0
 def __init__(self,dl,rank,world_size, seed=42):
     store_attr()
     self.bs,self.device,self.num_workers, \
     self.drop_last,self.dataset,self.offs,fake, self.shuffle = \
         attrgetter('bs','device','num_workers',
                    'drop_last','dataset','offs','fake_l', 'shuffle')(dl)
     self.fake_l = _FakeLoader(self, fake.pin_memory, fake.num_workers, fake.timeout,
                               persistent_workers=fake.persistent_workers)
     self.epoch = 0
     random.seed(self.seed)
     # setting inner dl rng
     self.dl.rng = random.Random(random.randint(0,2**32-1))
     self.reset_rng()
 def __init__(self, dl, rank, world_size):
     store_attr('dl,rank,world_size')
     self.bs, self.device, self.drop_last, self.dataset = dl.bs, dl.device, dl.drop_last, dl.dataset
     self.fake_l = _FakeLoader(self, dl.fake_l.pin_memory, dl.fake_l.num_workers, dl.fake_l.timeout)