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iterations: 51500 training error: 0.058811920716862136
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iterations: 51700 training error: 0.08048396583287984
iterations: 51800 training error: 0.05728632243207643
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iterations: 52200 training error: 0.06715872912125875
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iterations: 53000 training error: 0.055578250529747165
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iterations: 56400 training error: 0.06056894493269603
{ error: 0.04986755973973099, iterations: 56448 }
train time: 81162ms
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Avarage error: 0.16778696662021272
