EPOCH[1/500] TRAIN -- ACCURACY: 62.69803168506961 -- LOSS: 0.6624311407407125 TEST -- ACCURACY: 73.96280400572246 -- LOSS: 0.6172887682914734 Saving model... EPOCH[2/500] TRAIN -- ACCURACY: 74.3638982237158 -- LOSS: 0.5936953876957749 TEST -- ACCURACY: 76.10872675250357 -- LOSS: 0.5708171779459174 Saving model... EPOCH[3/500] TRAIN -- ACCURACY: 75.46807489198272 -- LOSS: 0.5524059497948849 TEST -- ACCURACY: 78.2546494992847 -- LOSS: 0.5351311374794353 Saving model... EPOCH[4/500] TRAIN -- ACCURACY: 77.38838214114259 -- LOSS: 0.5271992782751719 TEST -- ACCURACY: 76.82403433476395 -- LOSS: 0.5192257870327343 EPOCH[5/500] TRAIN -- ACCURACY: 79.30868939030245 -- LOSS: 0.5024957440116189 TEST -- ACCURACY: 79.39914163090128 -- LOSS: 0.494049763137644 Saving model... 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