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3
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train
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11,820
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0
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9
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train
mnist
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11,885
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0.05
0.333333
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8
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train
mnist
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11,898
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310.png
0.016667
0.166667
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7
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train
mnist
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11,921
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312.png
0.028571
0.142857
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3
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train
mnist
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11,934
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313.png
0
0
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9
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train
mnist