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iterations: 84900 training error: 0.10418838842518893
iterations: 85000 training error: 0.10415949442065585
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iterations: 87600 training error: 0.10348348832401212
iterations: 87700 training error: 0.10346033434432975
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iterations: 90000 training error: 0.10298550165862434
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iterations: 91000 training error: 0.1028093385389608
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iterations: 91200 training error: 0.10277571145647774
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iterations: 91500 training error: 0.10272606848283965
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iterations: 92000 training error: 0.10264500254253445
iterations: 92100 training error: 0.10262896481836724
iterations: 92200 training error: 0.10261296072155175
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iterations: 92400 training error: 0.1025809973740727
iterations: 92500 training error: 0.10256500438543638
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iterations: 92800 training error: 0.1025167062102986
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iterations: 93000 training error: 0.10248390367504383
iterations: 93100 training error: 0.10246717303327642
iterations: 93200 training error: 0.10245012375840244
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iterations: 93400 training error: 0.10241462257161327
iterations: 93500 training error: 0.10239584646469797
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iterations: 94000 training error: 0.10227663045424672
iterations: 94100 training error: 0.10224163922344962
iterations: 94200 training error: 0.10219887874170448
iterations: 94300 training error: 0.10214565185162587
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iterations: 95000 training error: 0.10162855875704717
iterations: 95100 training error: 0.10155753911487728
iterations: 95200 training error: 0.10148470433989887
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iterations: 95500 training error: 0.10124964216458571
iterations: 95600 training error: 0.10116466394809773
iterations: 95700 training error: 0.1010760507510581
iterations: 95800 training error: 0.10098369402520974
iterations: 95900 training error: 0.10088749963723946
iterations: 96000 training error: 0.10078734838152673
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iterations: 96200 training error: 0.10057438031578245
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iterations: 96600 training error: 0.10009071391561046
iterations: 96700 training error: 0.0999576980043562
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iterations: 97000 training error: 0.09954129114279185
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iterations: 97800 training error: 0.09853521539598079
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iterations: 99700 training error: 0.09733751370286799
iterations: 99800 training error: 0.09730555506794197
iterations: 99900 training error: 0.09727604646813962
{ error: 0.09724914094045384, iterations: 100000 }
train time: 319638ms
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Avarage error: 0.1949084453008216
