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iterations: 92800 training error: 0.10220208737780904
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iterations: 96000 training error: 0.10167569633685396
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iterations: 99900 training error: 0.10106220893937637
{ error: 0.10104704645466897, iterations: 100000 }
train time: 430021ms
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