Qwen3-32B-3d-1M-100K-0.2-reverse-plus-mul-sub-99-64D-1L-8H-256I

This model is a fine-tuned version of Qwen/Qwen3-32B on an unknown dataset. It achieves the following results on the evaluation set:

  • Loss: 1.4288

Model description

More information needed

Intended uses & limitations

More information needed

Training and evaluation data

More information needed

Training procedure

Training hyperparameters

The following hyperparameters were used during training:

  • learning_rate: 0.001
  • train_batch_size: 128
  • eval_batch_size: 128
  • seed: 42
  • optimizer: Use OptimizerNames.ADAMW_TORCH with betas=(0.9,0.999) and epsilon=1e-08 and optimizer_args=No additional optimizer arguments
  • lr_scheduler_type: cosine
  • lr_scheduler_warmup_ratio: 0.05
  • num_epochs: 5

Training results

Training Loss Epoch Step Validation Loss
No log 0 0 3.0047
1.9503 0.0640 500 1.9140
1.7743 0.1280 1000 1.7494
1.6086 0.1920 1500 1.6030
1.5192 0.2560 2000 1.5150
1.4865 0.3200 2500 1.4851
1.4739 0.3840 3000 1.4736
1.4662 0.4480 3500 1.4637
1.4575 0.5120 4000 1.4570
1.4515 0.5760 4500 1.4556
1.4497 0.6400 5000 1.4531
1.4498 0.7040 5500 1.4510
1.4446 0.7680 6000 1.4465
1.443 0.8319 6500 1.4437
1.4394 0.8959 7000 1.4416
1.4414 0.9599 7500 1.4424
1.4401 1.0239 8000 1.4410
1.4419 1.0879 8500 1.4401
1.4379 1.1519 9000 1.4382
1.4366 1.2159 9500 1.4382
1.4369 1.2799 10000 1.4387
1.4375 1.3439 10500 1.4374
1.4356 1.4079 11000 1.4375
1.4375 1.4719 11500 1.4362
1.4343 1.5359 12000 1.4364
1.4335 1.5999 12500 1.4358
1.436 1.6639 13000 1.4360
1.4342 1.7279 13500 1.4351
1.433 1.7919 14000 1.4346
1.4351 1.8559 14500 1.4343
1.4331 1.9199 15000 1.4337
1.4316 1.9839 15500 1.4333
1.4342 2.0479 16000 1.4334
1.4334 2.1119 16500 1.4333
1.4321 2.1759 17000 1.4325
1.4326 2.2399 17500 1.4323
1.4323 2.3039 18000 1.4320
1.4312 2.3678 18500 1.4315
1.4328 2.4318 19000 1.4317
1.4309 2.4958 19500 1.4330
1.4312 2.5598 20000 1.4313
1.4296 2.6238 20500 1.4311
1.4305 2.6878 21000 1.4309
1.4294 2.7518 21500 1.4308
1.4297 2.8158 22000 1.4306
1.4313 2.8798 22500 1.4304
1.4305 2.9438 23000 1.4302
1.4307 3.0078 23500 1.4304
1.4314 3.0718 24000 1.4304
1.4291 3.1358 24500 1.4305
1.4311 3.1998 25000 1.4298
1.4293 3.2638 25500 1.4299
1.4292 3.3278 26000 1.4297
1.4289 3.3918 26500 1.4295
1.4294 3.4558 27000 1.4294
1.4305 3.5198 27500 1.4293
1.4278 3.5838 28000 1.4293
1.4297 3.6478 28500 1.4293
1.4283 3.7118 29000 1.4292
1.4289 3.7758 29500 1.4291
1.4285 3.8398 30000 1.4291
1.4307 3.9038 30500 1.4290
1.4298 3.9677 31000 1.4290
1.4303 4.0317 31500 1.4290
1.4301 4.0957 32000 1.4290
1.4277 4.1597 32500 1.4289
1.4276 4.2237 33000 1.4289
1.4278 4.2877 33500 1.4289
1.4284 4.3517 34000 1.4289
1.4284 4.4157 34500 1.4288
1.4292 4.4797 35000 1.4288
1.4292 4.5437 35500 1.4288
1.4291 4.6077 36000 1.4288
1.428 4.6717 36500 1.4288
1.4283 4.7357 37000 1.4288
1.4281 4.7997 37500 1.4288
1.4297 4.8637 38000 1.4288
1.4295 4.9277 38500 1.4288
1.4279 4.9917 39000 1.4288

Framework versions

  • Transformers 4.57.1
  • Pytorch 2.9.0+cu128
  • Datasets 4.5.0
  • Tokenizers 0.22.1
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