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epoch:1 | train loss: 0.659353| val loss:0.355818
epoch:2 | train loss: 0.379560| val loss:0.336601
epoch:3 | train loss: 0.360014| val loss:0.337481
epoch:4 | train loss: 0.353732| val loss:0.330916
epoch:5 | train loss: 0.343498| val loss:0.318045
epoch:6 | train loss: 0.342021| val loss:0.309289
epoch:7 | train loss: 0.330073| val loss:0.315518
epoch:8 | train loss: 0.328744| val loss:0.304951
epoch:9 | train loss: 0.326979| val loss:0.302935
epoch:10 | train loss: 0.327625| val loss:0.311880
epoch:11 | train loss: 0.322385| val loss:0.318002
epoch:12 | train loss: 0.322487| val loss:0.308603
epoch:13 | train loss: 0.319543| val loss:0.313652
epoch:14 | train loss: 0.314324| val loss:0.303604
epoch:15 | train loss: 0.316477| val loss:0.308364
epoch:16 | train loss: 0.312415| val loss:0.290300
epoch:17 | train loss: 0.313030| val loss:0.296362
epoch:18 | train loss: 0.302767| val loss:0.281411
epoch:19 | train loss: 0.297996| val loss:0.276422
epoch:20 | train loss: 0.292721| val loss:0.270597
epoch:21 | train loss: 0.287772| val loss:0.276429
epoch:22 | train loss: 0.287506| val loss:0.270554
epoch:23 | train loss: 0.286993| val loss:0.273639
epoch:24 | train loss: 0.285547| val loss:0.271218
epoch:25 | train loss: 0.285892| val loss:0.277612
epoch:26 | train loss: 0.286343| val loss:0.270284
epoch:27 | train loss: 0.278807| val loss:0.265969
epoch:28 | train loss: 0.278536| val loss:0.264193
epoch:29 | train loss: 0.277754| val loss:0.267877
epoch:30 | train loss: 0.278287| val loss:0.257871
epoch:31 | train loss: 0.278076| val loss:0.261866
epoch:32 | train loss: 0.277034| val loss:0.264333
epoch:33 | train loss: 0.276749| val loss:0.256850
epoch:34 | train loss: 0.273939| val loss:0.264236
epoch:35 | train loss: 0.270010| val loss:0.254147
epoch:36 | train loss: 0.270675| val loss:0.257376
epoch:37 | train loss: 0.269905| val loss:0.249629
epoch:38 | train loss: 0.268528| val loss:0.249117
epoch:39 | train loss: 0.263994| val loss:0.253219
epoch:40 | train loss: 0.263165| val loss:0.243530
epoch:41 | train loss: 0.262179| val loss:0.246350
epoch:42 | train loss: 0.259575| val loss:0.250404
epoch:43 | train loss: 0.257380| val loss:0.244548
epoch:44 | train loss: 0.258117| val loss:0.239700
epoch:45 | train loss: 0.254222| val loss:0.239686
epoch:46 | train loss: 0.255694| val loss:0.241587
epoch:47 | train loss: 0.255297| val loss:0.234885
epoch:48 | train loss: 0.253991| val loss:0.235712
epoch:49 | train loss: 0.252947| val loss:0.240120
epoch:50 | train loss: 0.251726| val loss:0.239394
epoch:51 | train loss: 0.254272| val loss:0.231276
epoch:52 | train loss: 0.248021| val loss:0.229727
epoch:53 | train loss: 0.250817| val loss:0.240116
epoch:54 | train loss: 0.250969| val loss:0.235071
epoch:55 | train loss: 0.251136| val loss:0.229484
epoch:56 | train loss: 0.250149| val loss:0.235370
epoch:57 | train loss: 0.250263| val loss:0.238077
epoch:58 | train loss: 0.248953| val loss:0.234726
epoch:59 | train loss: 0.247822| val loss:0.228961
epoch:60 | train loss: 0.249429| val loss:0.237768
epoch:61 | train loss: 0.249338| val loss:0.230133
epoch:62 | train loss: 0.246245| val loss:0.236109
epoch:63 | train loss: 0.247392| val loss:0.225294
epoch:64 | train loss: 0.247370| val loss:0.234974
epoch:65 | train loss: 0.249296| val loss:0.225926
epoch:66 | train loss: 0.246302| val loss:0.239385
epoch:67 | train loss: 0.247664| val loss:0.229676
epoch:68 | train loss: 0.247953| val loss:0.227948
epoch:69 | train loss: 0.246622| val loss:0.225484
epoch:70 | train loss: 0.247660| val loss:0.231293
epoch:71 | train loss: 0.245647| val loss:0.223172
epoch:72 | train loss: 0.247173| val loss:0.228613
epoch:73 | train loss: 0.243723| val loss:0.225264
epoch:74 | train loss: 0.243370| val loss:0.229390
epoch:75 | train loss: 0.244038| val loss:0.230898
epoch:76 | train loss: 0.241556| val loss:0.235870
epoch:77 | train loss: 0.242988| val loss:0.226150
epoch:78 | train loss: 0.244417| val loss:0.228759
epoch:79 | train loss: 0.243972| val loss:0.217948
epoch:80 | train loss: 0.239576| val loss:0.231753
epoch:81 | train loss: 0.243748| val loss:0.230888
epoch:82 | train loss: 0.243075| val loss:0.230474
epoch:83 | train loss: 0.241672| val loss:0.227740
epoch:84 | train loss: 0.242734| val loss:0.230110
epoch:85 | train loss: 0.242205| val loss:0.219620
epoch:86 | train loss: 0.238689| val loss:0.235551
epoch:87 | train loss: 0.240462| val loss:0.223594
epoch:88 | train loss: 0.244118| val loss:0.231774
epoch:89 | train loss: 0.240681| val loss:0.226581
epoch:90 | train loss: 0.242420| val loss:0.226464
epoch:91 | train loss: 0.241493| val loss:0.218111
epoch:92 | train loss: 0.239726| val loss:0.221051
epoch:93 | train loss: 0.239809| val loss:0.228154
epoch:94 | train loss: 0.237395| val loss:0.224990
epoch:95 | train loss: 0.239933| val loss:0.218838
epoch:96 | train loss: 0.235498| val loss:0.217593
epoch:97 | train loss: 0.237823| val loss:0.226078
epoch:98 | train loss: 0.240463| val loss:0.232098
epoch:99 | train loss: 0.238473| val loss:0.222257
epoch:100 | train loss: 0.238966| val loss:0.229976
epoch:101 | train loss: 0.235291| val loss:0.222929
epoch:102 | train loss: 0.238717| val loss:0.227207
epoch:103 | train loss: 0.238795| val loss:0.222334
epoch:104 | train loss: 0.237319| val loss:0.222248
epoch:105 | train loss: 0.236249| val loss:0.226772
epoch:106 | train loss: 0.237971| val loss:0.225989
epoch:107 | train loss: 0.234663| val loss:0.232063
epoch:108 | train loss: 0.236710| val loss:0.219253
epoch:109 | train loss: 0.236234| val loss:0.224807
epoch:110 | train loss: 0.237602| val loss:0.223487
epoch:111 | train loss: 0.236180| val loss:0.213734
epoch:112 | train loss: 0.239879| val loss:0.210121
epoch:113 | train loss: 0.235684| val loss:0.224036
epoch:114 | train loss: 0.234420| val loss:0.223465
epoch:115 | train loss: 0.234688| val loss:0.222226
epoch:116 | train loss: 0.235818| val loss:0.223312
epoch:117 | train loss: 0.234624| val loss:0.221088
epoch:118 | train loss: 0.233215| val loss:0.214469
epoch:119 | train loss: 0.233959| val loss:0.214379
epoch:120 | train loss: 0.235038| val loss:0.210937
epoch:121 | train loss: 0.235481| val loss:0.220183
epoch:122 | train loss: 0.233267| val loss:0.220654
epoch:123 | train loss: 0.236573| val loss:0.216056
epoch:124 | train loss: 0.234130| val loss:0.222543
epoch:125 | train loss: 0.233813| val loss:0.229511
epoch:126 | train loss: 0.234134| val loss:0.224092
epoch:127 | train loss: 0.233606| val loss:0.219488
epoch:128 | train loss: 0.234023| val loss:0.222463
epoch:129 | train loss: 0.234523| val loss:0.215116
epoch:130 | train loss: 0.232398| val loss:0.224712
epoch:131 | train loss: 0.233042| val loss:0.216971
epoch:132 | train loss: 0.232878| val loss:0.224484
epoch:133 | train loss: 0.232601| val loss:0.210846
epoch:134 | train loss: 0.231321| val loss:0.217411
epoch:135 | train loss: 0.232594| val loss:0.214662
epoch:136 | train loss: 0.234962| val loss:0.214603
epoch:137 | train loss: 0.231685| val loss:0.216934
epoch:138 | train loss: 0.231281| val loss:0.217942
epoch:139 | train loss: 0.232656| val loss:0.220023
epoch:140 | train loss: 0.233381| val loss:0.212136
epoch:141 | train loss: 0.232488| val loss:0.217264
epoch:142 | train loss: 0.231148| val loss:0.218314
epoch:143 | train loss: 0.230091| val loss:0.223589
epoch:144 | train loss: 0.231258| val loss:0.214245
epoch:145 | train loss: 0.229427| val loss:0.214421
epoch:146 | train loss: 0.229705| val loss:0.220125
epoch:147 | train loss: 0.231345| val loss:0.213081
epoch:148 | train loss: 0.228898| val loss:0.221582
epoch:149 | train loss: 0.231109| val loss:0.222914
epoch:150 | train loss: 0.229950| val loss:0.224043
epoch:151 | train loss: 0.230071| val loss:0.217913
epoch:152 | train loss: 0.229861| val loss:0.220090
epoch:153 | train loss: 0.230162| val loss:0.216930
epoch:154 | train loss: 0.228385| val loss:0.215864
epoch:155 | train loss: 0.231245| val loss:0.217656
epoch:156 | train loss: 0.228570| val loss:0.219783
epoch:157 | train loss: 0.229660| val loss:0.217678
epoch:158 | train loss: 0.230630| val loss:0.216407
epoch:159 | train loss: 0.228266| val loss:0.218058
epoch:160 | train loss: 0.228382| val loss:0.206792
epoch:161 | train loss: 0.227711| val loss:0.211880
epoch:162 | train loss: 0.227405| val loss:0.218198
epoch:163 | train loss: 0.226196| val loss:0.213239
epoch:164 | train loss: 0.229976| val loss:0.216048
epoch:165 | train loss: 0.227958| val loss:0.219688
epoch:166 | train loss: 0.227917| val loss:0.220629
epoch:167 | train loss: 0.227126| val loss:0.211880
epoch:168 | train loss: 0.228034| val loss:0.211901
epoch:169 | train loss: 0.228319| val loss:0.211180
epoch:170 | train loss: 0.226931| val loss:0.215358
epoch:171 | train loss: 0.227558| val loss:0.213439
epoch:172 | train loss: 0.228305| val loss:0.217448
epoch:173 | train loss: 0.228703| val loss:0.215015
epoch:174 | train loss: 0.225538| val loss:0.213956
epoch:175 | train loss: 0.228447| val loss:0.215207
epoch:176 | train loss: 0.228749| val loss:0.210477
epoch:177 | train loss: 0.228787| val loss:0.211628
epoch:178 | train loss: 0.224391| val loss:0.207305
epoch:179 | train loss: 0.226877| val loss:0.211681
epoch:180 | train loss: 0.227981| val loss:0.210217
epoch:181 | train loss: 0.225280| val loss:0.218997
epoch:182 | train loss: 0.225678| val loss:0.208952
epoch:183 | train loss: 0.226395| val loss:0.213331
epoch:184 | train loss: 0.226718| val loss:0.212506
epoch:185 | train loss: 0.223723| val loss:0.220132
epoch:186 | train loss: 0.226528| val loss:0.219759
epoch:187 | train loss: 0.226844| val loss:0.207918
epoch:188 | train loss: 0.225662| val loss:0.210347
epoch:189 | train loss: 0.225261| val loss:0.215371
epoch:190 | train loss: 0.226270| val loss:0.214320
epoch:191 | train loss: 0.226080| val loss:0.218934
epoch:192 | train loss: 0.223847| val loss:0.222154
epoch:193 | train loss: 0.226758| val loss:0.219606
epoch:194 | train loss: 0.225799| val loss:0.218324
epoch:195 | train loss: 0.227003| val loss:0.212236
epoch:196 | train loss: 0.226925| val loss:0.218735
epoch:197 | train loss: 0.226269| val loss:0.217272
epoch:198 | train loss: 0.225159| val loss:0.207292
epoch:199 | train loss: 0.226340| val loss:0.212169
epoch:200 | train loss: 0.224247| val loss:0.207367
epoch:201 | train loss: 0.224239| val loss:0.210831
epoch:202 | train loss: 0.224671| val loss:0.211030
epoch:203 | train loss: 0.224128| val loss:0.206789
epoch:204 | train loss: 0.225435| val loss:0.212358
epoch:205 | train loss: 0.223309| val loss:0.209309
epoch:206 | train loss: 0.225137| val loss:0.207557
epoch:207 | train loss: 0.223830| val loss:0.214585
epoch:208 | train loss: 0.224760| val loss:0.217934
epoch:209 | train loss: 0.223916| val loss:0.215010
epoch:210 | train loss: 0.226536| val loss:0.215988
epoch:211 | train loss: 0.223937| val loss:0.215221
epoch:212 | train loss: 0.223648| val loss:0.209092
epoch:213 | train loss: 0.227009| val loss:0.211983
epoch:214 | train loss: 0.224591| val loss:0.210942
epoch:215 | train loss: 0.223562| val loss:0.216697
epoch:216 | train loss: 0.223818| val loss:0.210141
epoch:217 | train loss: 0.226224| val loss:0.211365
epoch:218 | train loss: 0.220372| val loss:0.208716
epoch:219 | train loss: 0.222814| val loss:0.212592
epoch:220 | train loss: 0.223840| val loss:0.211329
epoch:221 | train loss: 0.223514| val loss:0.214958
epoch:222 | train loss: 0.225323| val loss:0.207101
epoch:223 | train loss: 0.224016| val loss:0.211063
epoch:224 | train loss: 0.225863| val loss:0.216101
epoch:225 | train loss: 0.224245| val loss:0.211086
epoch:226 | train loss: 0.225294| val loss:0.211879
epoch:227 | train loss: 0.223716| val loss:0.211270
epoch:228 | train loss: 0.221228| val loss:0.205237
epoch:229 | train loss: 0.221722| val loss:0.213420
epoch:230 | train loss: 0.223523| val loss:0.211266
epoch:231 | train loss: 0.222564| val loss:0.203880
epoch:232 | train loss: 0.221674| val loss:0.213157
epoch:233 | train loss: 0.223098| val loss:0.208417
epoch:234 | train loss: 0.221367| val loss:0.208243
epoch:235 | train loss: 0.224786| val loss:0.208509
epoch:236 | train loss: 0.223054| val loss:0.211209
epoch:237 | train loss: 0.223073| val loss:0.206032
epoch:238 | train loss: 0.224147| val loss:0.214048
epoch:239 | train loss: 0.221911| val loss:0.205702
epoch:240 | train loss: 0.221165| val loss:0.213675
epoch:241 | train loss: 0.222251| val loss:0.205038
epoch:242 | train loss: 0.222373| val loss:0.208294
epoch:243 | train loss: 0.220750| val loss:0.203581
epoch:244 | train loss: 0.222879| val loss:0.210803
epoch:245 | train loss: 0.222663| val loss:0.211683
epoch:246 | train loss: 0.223486| val loss:0.200976
epoch:247 | train loss: 0.222241| val loss:0.206063
epoch:248 | train loss: 0.222360| val loss:0.214893
epoch:249 | train loss: 0.220775| val loss:0.208754
epoch:250 | train loss: 0.222010| val loss:0.208436
epoch:251 | train loss: 0.220277| val loss:0.215280
epoch:252 | train loss: 0.225278| val loss:0.210985
epoch:253 | train loss: 0.222989| val loss:0.202682
epoch:254 | train loss: 0.220709| val loss:0.212020
epoch:255 | train loss: 0.222197| val loss:0.212297
epoch:256 | train loss: 0.221943| val loss:0.208379
epoch:257 | train loss: 0.221298| val loss:0.213316
epoch:258 | train loss: 0.222466| val loss:0.216201
epoch:259 | train loss: 0.223199| val loss:0.214697
epoch:260 | train loss: 0.222173| val loss:0.209254
epoch:261 | train loss: 0.220418| val loss:0.203289
epoch:262 | train loss: 0.221617| val loss:0.212184
epoch:263 | train loss: 0.222105| val loss:0.207835
epoch:264 | train loss: 0.220999| val loss:0.215660
epoch:265 | train loss: 0.218849| val loss:0.205229
epoch:266 | train loss: 0.219971| val loss:0.212363
epoch:267 | train loss: 0.221442| val loss:0.212205
epoch:268 | train loss: 0.221236| val loss:0.203204
epoch:269 | train loss: 0.221787| val loss:0.201022
epoch:270 | train loss: 0.219685| val loss:0.206076
epoch:271 | train loss: 0.221703| val loss:0.212729
epoch:272 | train loss: 0.221489| val loss:0.205799
epoch:273 | train loss: 0.219561| val loss:0.214397
epoch:274 | train loss: 0.221342| val loss:0.209128
epoch:275 | train loss: 0.220477| val loss:0.207705
epoch:276 | train loss: 0.220303| val loss:0.212378
epoch:277 | train loss: 0.223097| val loss:0.206533
epoch:278 | train loss: 0.221772| val loss:0.212398
epoch:279 | train loss: 0.220524| val loss:0.206244
epoch:280 | train loss: 0.218418| val loss:0.208937
epoch:281 | train loss: 0.220569| val loss:0.207756
epoch:282 | train loss: 0.219722| val loss:0.201814
epoch:283 | train loss: 0.220153| val loss:0.204123
epoch:284 | train loss: 0.221147| val loss:0.215064
epoch:285 | train loss: 0.221569| val loss:0.201651
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epoch:287 | train loss: 0.219920| val loss:0.206114
epoch:288 | train loss: 0.220700| val loss:0.207268
epoch:289 | train loss: 0.220391| val loss:0.198911
epoch:290 | train loss: 0.220848| val loss:0.210432
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epoch:292 | train loss: 0.221466| val loss:0.205852
epoch:293 | train loss: 0.218498| val loss:0.210676
epoch:294 | train loss: 0.219813| val loss:0.207350
epoch:295 | train loss: 0.218317| val loss:0.206385
epoch:296 | train loss: 0.218120| val loss:0.207344
epoch:297 | train loss: 0.220193| val loss:0.199947
epoch:298 | train loss: 0.220193| val loss:0.211673
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epoch:300 | train loss: 0.217163| val loss:0.205039
epoch:301 | train loss: 0.220223| val loss:0.212991
epoch:302 | train loss: 0.219736| val loss:0.211028
epoch:303 | train loss: 0.220635| val loss:0.206084
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epoch:310 | train loss: 0.219796| val loss:0.203359
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epoch:316 | train loss: 0.219385| val loss:0.208535
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epoch:318 | train loss: 0.220635| val loss:0.203274
epoch:319 | train loss: 0.219036| val loss:0.211706
epoch:320 | train loss: 0.218528| val loss:0.202931
epoch:321 | train loss: 0.218220| val loss:0.208234
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epoch:323 | train loss: 0.219296| val loss:0.203396
epoch:324 | train loss: 0.216832| val loss:0.209127
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epoch:326 | train loss: 0.219632| val loss:0.204779
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epoch:1359 | train loss: 0.204094| val loss:0.200633
epoch:1360 | train loss: 0.201493| val loss:0.190717
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epoch:1362 | train loss: 0.203071| val loss:0.197363
epoch:1363 | train loss: 0.202844| val loss:0.194348
epoch:1364 | train loss: 0.202332| val loss:0.186737
epoch:1365 | train loss: 0.201708| val loss:0.195558
epoch:1366 | train loss: 0.204576| val loss:0.192788
epoch:1367 | train loss: 0.203174| val loss:0.196383
epoch:1368 | train loss: 0.203167| val loss:0.193940
epoch:1369 | train loss: 0.203321| val loss:0.200077
epoch:1370 | train loss: 0.202859| val loss:0.193387
epoch:1371 | train loss: 0.204589| val loss:0.195930
epoch:1372 | train loss: 0.203343| val loss:0.199457
epoch:1373 | train loss: 0.204719| val loss:0.193381
epoch:1374 | train loss: 0.202964| val loss:0.192493
epoch:1375 | train loss: 0.202074| val loss:0.191774
epoch:1376 | train loss: 0.203603| val loss:0.195497
epoch:1377 | train loss: 0.204023| val loss:0.195805
epoch:1378 | train loss: 0.203468| val loss:0.195015
epoch:1379 | train loss: 0.202938| val loss:0.192473
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epoch:1381 | train loss: 0.203157| val loss:0.201876
epoch:1382 | train loss: 0.202514| val loss:0.193679
epoch:1383 | train loss: 0.203370| val loss:0.195725
epoch:1384 | train loss: 0.203321| val loss:0.197617
epoch:1385 | train loss: 0.201772| val loss:0.191999
epoch:1386 | train loss: 0.204133| val loss:0.192249
epoch:1387 | train loss: 0.203862| val loss:0.190399
epoch:1388 | train loss: 0.203016| val loss:0.200723
epoch:1389 | train loss: 0.204116| val loss:0.193357
epoch:1390 | train loss: 0.201862| val loss:0.193363
epoch:1391 | train loss: 0.203910| val loss:0.194211
epoch:1392 | train loss: 0.203959| val loss:0.194609
epoch:1393 | train loss: 0.203588| val loss:0.192591
epoch:1394 | train loss: 0.203608| val loss:0.196056
epoch:1395 | train loss: 0.201736| val loss:0.195963
epoch:1396 | train loss: 0.203398| val loss:0.198730
epoch:1397 | train loss: 0.203348| val loss:0.197731
epoch:1398 | train loss: 0.201597| val loss:0.193376
epoch:1399 | train loss: 0.201475| val loss:0.194192
epoch:1400 | train loss: 0.201015| val loss:0.194817
epoch:1401 | train loss: 0.203192| val loss:0.196605
epoch:1402 | train loss: 0.201734| val loss:0.194924
epoch:1403 | train loss: 0.203154| val loss:0.199293
epoch:1404 | train loss: 0.203765| val loss:0.190797
epoch:1405 | train loss: 0.201737| val loss:0.194512
epoch:1406 | train loss: 0.202420| val loss:0.193439
epoch:1407 | train loss: 0.200567| val loss:0.194076
epoch:1408 | train loss: 0.201970| val loss:0.190695
epoch:1409 | train loss: 0.201829| val loss:0.195664
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epoch:1411 | train loss: 0.204476| val loss:0.195215
epoch:1412 | train loss: 0.203077| val loss:0.199454
epoch:1413 | train loss: 0.202578| val loss:0.191927
epoch:1414 | train loss: 0.201459| val loss:0.189983
epoch:1415 | train loss: 0.203292| val loss:0.191874
epoch:1416 | train loss: 0.200841| val loss:0.192877
epoch:1417 | train loss: 0.203184| val loss:0.190841
epoch:1418 | train loss: 0.205106| val loss:0.201426
epoch:1419 | train loss: 0.200670| val loss:0.197777
epoch:1420 | train loss: 0.201639| val loss:0.192157
epoch:1421 | train loss: 0.201607| val loss:0.196955
epoch:1422 | train loss: 0.202532| val loss:0.186668
epoch:1423 | train loss: 0.201964| val loss:0.198640
epoch:1424 | train loss: 0.201833| val loss:0.194243
epoch:1425 | train loss: 0.201158| val loss:0.195694
epoch:1426 | train loss: 0.204001| val loss:0.192618
epoch:1427 | train loss: 0.204263| val loss:0.199572
epoch:1428 | train loss: 0.203521| val loss:0.193107
epoch:1429 | train loss: 0.203972| val loss:0.199244
epoch:1430 | train loss: 0.202293| val loss:0.207017
epoch:1431 | train loss: 0.201722| val loss:0.196753
epoch:1432 | train loss: 0.202746| val loss:0.196763
epoch:1433 | train loss: 0.201965| val loss:0.195234
epoch:1434 | train loss: 0.202482| val loss:0.201148
epoch:1435 | train loss: 0.201740| val loss:0.190007
epoch:1436 | train loss: 0.202695| val loss:0.195059
epoch:1437 | train loss: 0.202983| val loss:0.189806
epoch:1438 | train loss: 0.204399| val loss:0.195561
epoch:1439 | train loss: 0.203092| val loss:0.196085
epoch:1440 | train loss: 0.201413| val loss:0.192365
epoch:1441 | train loss: 0.202460| val loss:0.193892
epoch:1442 | train loss: 0.202569| val loss:0.198467
epoch:1443 | train loss: 0.201168| val loss:0.201115
epoch:1444 | train loss: 0.203003| val loss:0.202918
epoch:1445 | train loss: 0.200936| val loss:0.193298
epoch:1446 | train loss: 0.201428| val loss:0.193871
epoch:1447 | train loss: 0.200742| val loss:0.193456
epoch:1448 | train loss: 0.202471| val loss:0.191137
epoch:1449 | train loss: 0.202115| val loss:0.199204
epoch:1450 | train loss: 0.200694| val loss:0.191933
epoch:1451 | train loss: 0.200832| val loss:0.199775
epoch:1452 | train loss: 0.202911| val loss:0.197485
epoch:1453 | train loss: 0.200883| val loss:0.195984
epoch:1454 | train loss: 0.202338| val loss:0.186704
epoch:1455 | train loss: 0.200935| val loss:0.195417
epoch:1456 | train loss: 0.202451| val loss:0.193369
epoch:1457 | train loss: 0.200738| val loss:0.192176
epoch:1458 | train loss: 0.202083| val loss:0.190694
epoch:1459 | train loss: 0.202260| val loss:0.196842
epoch:1460 | train loss: 0.200077| val loss:0.193048
epoch:1461 | train loss: 0.201689| val loss:0.200758
epoch:1462 | train loss: 0.201651| val loss:0.193701
epoch:1463 | train loss: 0.203024| val loss:0.200105
epoch:1464 | train loss: 0.200325| val loss:0.197712
epoch:1465 | train loss: 0.202845| val loss:0.196690
epoch:1466 | train loss: 0.201437| val loss:0.193635
epoch:1467 | train loss: 0.204094| val loss:0.199249
epoch:1468 | train loss: 0.201572| val loss:0.196302
epoch:1469 | train loss: 0.201392| val loss:0.195769
epoch:1470 | train loss: 0.201976| val loss:0.196009
epoch:1471 | train loss: 0.202823| val loss:0.198577
epoch:1472 | train loss: 0.201936| val loss:0.195261
epoch:1473 | train loss: 0.202408| val loss:0.193830
epoch:1474 | train loss: 0.200924| val loss:0.188498
epoch:1475 | train loss: 0.203428| val loss:0.194304
epoch:1476 | train loss: 0.200365| val loss:0.189317
epoch:1477 | train loss: 0.200788| val loss:0.198411
epoch:1478 | train loss: 0.200592| val loss:0.189944
epoch:1479 | train loss: 0.201318| val loss:0.192853
epoch:1480 | train loss: 0.200361| val loss:0.194768
epoch:1481 | train loss: 0.199744| val loss:0.194018
epoch:1482 | train loss: 0.202325| val loss:0.192354
epoch:1483 | train loss: 0.200784| val loss:0.194814
epoch:1484 | train loss: 0.202391| val loss:0.188862
epoch:1485 | train loss: 0.200507| val loss:0.191395
epoch:1486 | train loss: 0.200529| val loss:0.189926
epoch:1487 | train loss: 0.201278| val loss:0.186882
epoch:1488 | train loss: 0.203681| val loss:0.196815
epoch:1489 | train loss: 0.201108| val loss:0.190628
epoch:1490 | train loss: 0.200866| val loss:0.197889
epoch:1491 | train loss: 0.202496| val loss:0.195811
epoch:1492 | train loss: 0.199772| val loss:0.194443
epoch:1493 | train loss: 0.200500| val loss:0.186901
epoch:1494 | train loss: 0.202155| val loss:0.195334
epoch:1495 | train loss: 0.200612| val loss:0.193344
epoch:1496 | train loss: 0.201328| val loss:0.191139
epoch:1497 | train loss: 0.200899| val loss:0.187703
epoch:1498 | train loss: 0.199624| val loss:0.188716
epoch:1499 | train loss: 0.201218| val loss:0.197366
epoch:1500 | train loss: 0.202339| val loss:0.196045
epoch:1501 | train loss: 0.200984| val loss:0.191744
epoch:1502 | train loss: 0.200818| val loss:0.198461
epoch:1503 | train loss: 0.200576| val loss:0.202795
epoch:1504 | train loss: 0.200961| val loss:0.195557
epoch:1505 | train loss: 0.201137| val loss:0.191369
epoch:1506 | train loss: 0.202448| val loss:0.190703
epoch:1507 | train loss: 0.202645| val loss:0.196590
epoch:1508 | train loss: 0.200880| val loss:0.189077
epoch:1509 | train loss: 0.201376| val loss:0.197178
epoch:1510 | train loss: 0.200546| val loss:0.197578
epoch:1511 | train loss: 0.202449| val loss:0.195886
epoch:1512 | train loss: 0.203513| val loss:0.188580
epoch:1513 | train loss: 0.198864| val loss:0.192616
epoch:1514 | train loss: 0.200593| val loss:0.190274
epoch:1515 | train loss: 0.200203| val loss:0.191756
epoch:1516 | train loss: 0.200600| val loss:0.192984
epoch:1517 | train loss: 0.200211| val loss:0.193409
epoch:1518 | train loss: 0.202796| val loss:0.193335
epoch:1519 | train loss: 0.201613| val loss:0.190893
epoch:1520 | train loss: 0.202058| val loss:0.195610
epoch:1521 | train loss: 0.199559| val loss:0.197628
epoch:1522 | train loss: 0.200310| val loss:0.195887
epoch:1523 | train loss: 0.202061| val loss:0.193052
epoch:1524 | train loss: 0.201922| val loss:0.195381
epoch:1525 | train loss: 0.200070| val loss:0.194405
epoch:1526 | train loss: 0.200320| val loss:0.194586
epoch:1527 | train loss: 0.200766| val loss:0.191434
epoch:1528 | train loss: 0.201247| val loss:0.193195
epoch:1529 | train loss: 0.202030| val loss:0.195198
epoch:1530 | train loss: 0.200040| val loss:0.193340
epoch:1531 | train loss: 0.198750| val loss:0.190741
epoch:1532 | train loss: 0.201438| val loss:0.192671
epoch:1533 | train loss: 0.200065| val loss:0.192637
epoch:1534 | train loss: 0.198941| val loss:0.198190
epoch:1535 | train loss: 0.202309| val loss:0.191691
epoch:1536 | train loss: 0.200160| val loss:0.190169
epoch:1537 | train loss: 0.200883| val loss:0.193292
epoch:1538 | train loss: 0.200664| val loss:0.190362
epoch:1539 | train loss: 0.199261| val loss:0.194202
epoch:1540 | train loss: 0.199599| val loss:0.195828
epoch:1541 | train loss: 0.199770| val loss:0.191859
epoch:1542 | train loss: 0.200639| val loss:0.199260
epoch:1543 | train loss: 0.199924| val loss:0.196921
epoch:1544 | train loss: 0.202155| val loss:0.194221
epoch:1545 | train loss: 0.199705| val loss:0.195627
epoch:1546 | train loss: 0.200467| val loss:0.199901
epoch:1547 | train loss: 0.201356| val loss:0.192366
epoch:1548 | train loss: 0.200617| val loss:0.189801
epoch:1549 | train loss: 0.201330| val loss:0.195190
epoch:1550 | train loss: 0.199819| val loss:0.196333
epoch:1551 | train loss: 0.201218| val loss:0.196204
epoch:1552 | train loss: 0.200105| val loss:0.199086
epoch:1553 | train loss: 0.200053| val loss:0.189636
epoch:1554 | train loss: 0.199931| val loss:0.183812
epoch:1555 | train loss: 0.199304| val loss:0.192308
epoch:1556 | train loss: 0.200223| val loss:0.195970
epoch:1557 | train loss: 0.201489| val loss:0.188374
epoch:1558 | train loss: 0.199793| val loss:0.193833
epoch:1559 | train loss: 0.199701| val loss:0.193561
epoch:1560 | train loss: 0.198899| val loss:0.188953
epoch:1561 | train loss: 0.199639| val loss:0.186627
epoch:1562 | train loss: 0.201592| val loss:0.192096
epoch:1563 | train loss: 0.199323| val loss:0.193749
epoch:1564 | train loss: 0.198408| val loss:0.193490
epoch:1565 | train loss: 0.198681| val loss:0.190408
epoch:1566 | train loss: 0.202638| val loss:0.192632
epoch:1567 | train loss: 0.199932| val loss:0.194809
epoch:1568 | train loss: 0.199603| val loss:0.190711
epoch:1569 | train loss: 0.198981| val loss:0.198489
epoch:1570 | train loss: 0.198634| val loss:0.193805
epoch:1571 | train loss: 0.200580| val loss:0.197112
epoch:1572 | train loss: 0.200135| val loss:0.187298
epoch:1573 | train loss: 0.199523| val loss:0.198394
epoch:1574 | train loss: 0.199697| val loss:0.189719
epoch:1575 | train loss: 0.199473| val loss:0.199311
epoch:1576 | train loss: 0.200723| val loss:0.187605
epoch:1577 | train loss: 0.200951| val loss:0.195884
epoch:1578 | train loss: 0.199139| val loss:0.194248
epoch:1579 | train loss: 0.200227| val loss:0.196468
epoch:1580 | train loss: 0.199862| val loss:0.196978
epoch:1581 | train loss: 0.198803| val loss:0.192217
epoch:1582 | train loss: 0.200718| val loss:0.189446
epoch:1583 | train loss: 0.199295| val loss:0.193346
epoch:1584 | train loss: 0.198920| val loss:0.196411
epoch:1585 | train loss: 0.200621| val loss:0.190045
epoch:1586 | train loss: 0.200290| val loss:0.191686
epoch:1587 | train loss: 0.200102| val loss:0.193830
epoch:1588 | train loss: 0.199902| val loss:0.193982
epoch:1589 | train loss: 0.200781| val loss:0.196982
epoch:1590 | train loss: 0.199002| val loss:0.193058