Update README.md
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README.md
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@@ -4,25 +4,46 @@ license: mit
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- Model is directly from pytorch. Refer to the python file. To reuse, use .load_state_dict() from the .pth file. Good luck.
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Training steps:
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- step 0: train loss 4.2221, val loss 4.2306
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- step 500: train loss 1.7526, val loss 1.9053
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- step 1000: train loss 1.3949, val loss 1.6050
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- step 1500: train loss 1.2625, val loss 1.5219
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- step 2000: train loss 1.1860, val loss 1.5046
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- step 2500: train loss 1.1254, val loss 1.4972
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- step 3000: train loss 1.0694, val loss 1.4849
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- step 3500: train loss 1.0211, val loss 1.5048
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- step 4000: train loss 0.9643, val loss 1.5160
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- step 4500: train loss 0.9121, val loss 1.5396
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- step 5000: train loss 0.8673, val loss 1.5552
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- step 5500: train loss 0.8052, val loss 1.5988
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- step 6000: train loss 0.7611, val loss 1.6231
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- step 6500: train loss 0.7087, val loss 1.6706
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- step 7000: train loss 0.6644, val loss 1.7000
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- step 7500: train loss 0.6187, val loss 1.7484
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- step 8000: train loss 0.5818, val loss 1.7882
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- step 8500: train loss 0.5350, val loss 1.8304
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- step 9000: train loss 0.4973, val loss 1.8688
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- step 9500: train loss 0.4638, val loss 1.9050
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- step 9999: train loss 0.4333, val loss 1.9475
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---
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- Model is directly from pytorch. Refer to the python file. To reuse, use .load_state_dict() from the .pth file. Good luck.
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Training steps:
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+
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- step 0: train loss 4.2221, val loss 4.2306
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+
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- step 500: train loss 1.7526, val loss 1.9053
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+
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- step 1000: train loss 1.3949, val loss 1.6050
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- step 1500: train loss 1.2625, val loss 1.5219
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- step 2000: train loss 1.1860, val loss 1.5046
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- step 2500: train loss 1.1254, val loss 1.4972
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+
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- step 3000: train loss 1.0694, val loss 1.4849
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| 21 |
+
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| 22 |
- step 3500: train loss 1.0211, val loss 1.5048
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| 23 |
+
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- step 4000: train loss 0.9643, val loss 1.5160
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+
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- step 4500: train loss 0.9121, val loss 1.5396
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+
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- step 5000: train loss 0.8673, val loss 1.5552
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+
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- step 5500: train loss 0.8052, val loss 1.5988
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- step 6000: train loss 0.7611, val loss 1.6231
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+
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- step 6500: train loss 0.7087, val loss 1.6706
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+
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- step 7000: train loss 0.6644, val loss 1.7000
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- step 7500: train loss 0.6187, val loss 1.7484
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+
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- step 8000: train loss 0.5818, val loss 1.7882
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+
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- step 8500: train loss 0.5350, val loss 1.8304
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+
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- step 9000: train loss 0.4973, val loss 1.8688
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+
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- step 9500: train loss 0.4638, val loss 1.9050
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+
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- step 9999: train loss 0.4333, val loss 1.9475
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---
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