provider.py 1.1 KB
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import io, os
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import random
import numpy as np
from paddle.trainer.PyDataProvider2 import *

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def initHook(settings, height, width, color, num_class, **kwargs):
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    settings.height = height
    settings.width = width
    settings.color = color
    settings.num_class = num_class
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    if settings.color:
        settings.data_size = settings.height * settings.width * 3
    else:
        settings.data_size = settings.height * settings.width
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    settings.is_infer = kwargs.get('is_infer', False)
    if settings.is_infer:
        settings.slots = [dense_vector(settings.data_size)]
    else:
        settings.slots = [dense_vector(settings.data_size), integer_value(1)]
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@provider(
    init_hook=initHook, min_pool_size=-1, cache=CacheType.CACHE_PASS_IN_MEM)
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def process(settings, file_list):
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    for i in xrange(1024):
        img = np.random.rand(1, settings.data_size).reshape(-1, 1).flatten()
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        if settings.is_infer:
            yield img.astype('float32')
        else:
            lab = random.randint(0, settings.num_class - 1)
            yield img.astype('float32'), int(lab)