| nohup: ignoring input |
| Starting run with config: mario/grid_search_path_gemma.yaml |
| Rodando |
| π¦₯ Unsloth: Will patch your computer to enable 2x faster free finetuning. |
| π¦₯ Unsloth Zoo will now patch everything to make training faster! |
| Loaded 17071 levels from evaluation dataset |
| Starting grid search... |
|
|
| ===== Processing Split: str_window_vertical_newline ===== |
|
|
| ===== Processing Subset: path_snake ===== |
|
Generating str_window split: 0%| | 0/17071 [00:00<?, ? examples/s]
Generating str_window split: 100%|ββββββββββ| 17071/17071 [00:00<00:00, 350502.32 examples/s] |
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Generating str_window_bar split: 100%|ββββββββββ| 17071/17071 [00:00<00:00, 529107.65 examples/s] |
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Generating str_window_newline split: 100%|ββββββββββ| 17071/17071 [00:00<00:00, 541201.54 examples/s] |
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Generating str_window_vertical split: 100%|ββββββββββ| 17071/17071 [00:00<00:00, 648447.85 examples/s] |
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Generating str_window_vertical_newline split: 100%|ββββββββββ| 17071/17071 [00:00<00:00, 557301.36 examples/s] |
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Generating str_window_single split: 94%|ββββββββββ| 16000/17071 [00:00<00:00, 154160.91 examples/s]
Generating str_window_single split: 100%|ββββββββββ| 17071/17071 [00:00<00:00, 160098.75 examples/s] |
|
Generating str_window_single_vertical split: 0%| | 0/17071 [00:00<?, ? examples/s]
Generating str_window_single_vertical split: 100%|ββββββββββ| 17071/17071 [00:00<00:00, 188130.01 examples/s] |
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Generating str_window_single_newline split: 100%|ββββββββββ| 17071/17071 [00:00<00:00, 262379.35 examples/s] |
|
Generating str_window_single_vertical_newline split: 0%| | 0/17071 [00:00<?, ? examples/s]
Generating str_window_single_vertical_newline split: 100%|ββββββββββ| 17071/17071 [00:00<00:00, 391369.03 examples/s] |
| Dataset Loaded for str_window_vertical_newline - Subset: path_snake |
|
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Unsloth: Standardizing formats (num_proc=224): 78%|ββββββββ | 13271/17071 [00:00<00:00, 27819.40 examples/s]
Unsloth: Standardizing formats (num_proc=224): 98%|ββββββββββ| 16691/17071 [00:00<00:00, 26843.17 examples/s]
Unsloth: Standardizing formats (num_proc=224): 100%|ββββββββββ| 17071/17071 [00:00<00:00, 19670.93 examples/s] |
| |
| --- Processing Model Family: gemma3 --- |
| |
| - Model: unsloth/gemma-3-12b-it-bnb-4bit |
| - LoRA Pair: r=128, alpha=128 |
| - Other Params: {'num_train_epochs': 1, 'train_on_responses_only': True} |
| Run Name: mario_sft_dataset_numbers_v2.1_str_window_vertical_newline-gemma-3-12b-it--resp-r128-a128-e1-1353 |
| ==((====))== Unsloth 2025.4.7: Fast Gemma3 patching. Transformers: 4.51.3. |
| \\ /| NVIDIA H100 80GB HBM3. Num GPUs = 1. Max memory: 79.189 GB. Platform: Linux. |
| O^O/ \_/ \ Torch: 2.6.0+cu124. CUDA: 9.0. CUDA Toolkit: 12.4. Triton: 3.2.0 |
| \ / Bfloat16 = TRUE. FA [Xformers = 0.0.29.post3. FA2 = False] |
| "-____-" Free license: http://github.com/unslothai/unsloth |
| Unsloth: Fast downloading is enabled - ignore downloading bars which are red colored! |
|
Fetching 2 files: 0%| | 0/2 [00:00<?, ?it/s]
Fetching 2 files: 50%|βββββ | 1/2 [02:55<02:55, 175.30s/it]
Fetching 2 files: 100%|ββββββββββ| 2/2 [02:55<00:00, 87.65s/it] |
|
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Loading checkpoint shards: 100%|ββββββββββ| 2/2 [00:04<00:00, 2.05s/it] |
| Using a slow image processor as `use_fast` is unset and a slow processor was saved with this model. `use_fast=True` will be the default behavior in v4.52, even if the model was saved with a slow processor. This will result in minor differences in outputs. You'll still be able to use a slow processor with `use_fast=False`. |
| Unsloth: Making `model.base_model.model.language_model.model` require gradients |
|
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Unsloth: Standardizing formats (num_proc=224): 86%|βββββββββ | 14639/17071 [00:00<00:00, 24729.83 examples/s]
Unsloth: Standardizing formats (num_proc=224): 100%|ββββββββββ| 17071/17071 [00:01<00:00, 16692.68 examples/s] |
| GEMMA3 DEBUG - Standardized dataset first item: {'conversations': [{'content': 'I want a level that has 0 special enemies, 0 powerups, 0 goombas, 1 koopas, 30 ground blocks, 2 pipes, hard difficulty, overworld level, 14 breakable blocks, 0 coins, 4 hard blocks, 0 coin blocks, high elevation', 'role': 'user'}, {'content': 'XXP-------------\n-------------PXX\nXXP-------------\n-------------PXX\nXXPP------------\n----------PP--XX\nXX---P----------\n----------PP<[XX\nXX]>P-----------\n-----------PP-XX\nXXP-------------\n-------------PXX\n---PPP----------\n---------PP-----\n----SPP---------\n----------PS----\n----SPPP--------\n-------P--------\n---------P------\n------PS--------\n--------SP------\n------PS--------\n----------PP----\n---P------------\n--------R---P---\n---PP-----------\n-----S---PP-----\n-------PPPS-----\n-----SP--S------\n------S--PS-----\n-----SP--S------\n--------PP------\n--------PP------\n------P---------\n----------P-----\n-----P----------\n---------P------\n-------P--------\n-------PP-------\n---------PP-----\nXX--P-----------\n------------PPXX\nXXPPPP----------\n---------PP--P--\n----#P----------\n-------PPPP#----\n[[[[[[[(PP------\n-------P)]]]]]]]\n----#PPPP-------\n---------PP#----', 'role': 'assistant'}]} |
|
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Map: 100%|ββββββββββ| 17071/17071 [00:00<00:00, 34765.78 examples/s] |
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Unsloth: Tokenizing ["text"] (num_proc=224): 100%|ββββββββββ| 17071/17071 [01:20<00:00, 221.53 examples/s]
Unsloth: Tokenizing ["text"] (num_proc=224): 100%|ββββββββββ| 17071/17071 [01:20<00:00, 212.84 examples/s] |
|
Map (num_proc=224): 0%| | 0/17071 [00:00<?, ? examples/s]
Map (num_proc=224): 0%| | 77/17071 [00:00<00:22, 750.71 examples/s]
Map (num_proc=224): 4%|β | 693/17071 [00:00<00:05, 3082.99 examples/s]
Map (num_proc=224): 7%|β | 1155/17071 [00:00<00:06, 2429.45 examples/s]
Map (num_proc=224): 9%|β | 1540/17071 [00:00<00:06, 2488.19 examples/s]
Map (num_proc=224): 12%|ββ | 2079/17071 [00:00<00:04, 3213.31 examples/s]
Map (num_proc=224): 23%|βββ | 3998/17071 [00:00<00:01, 7465.46 examples/s]
Map (num_proc=224): 33%|ββββ | 5595/17071 [00:00<00:01, 9776.45 examples/s]
Map (num_proc=224): 44%|βββββ | 7495/17071 [00:01<00:00, 12213.39 examples/s]
Map (num_proc=224): 52%|ββββββ | 8939/17071 [00:01<00:00, 12594.39 examples/s]
Map (num_proc=224): 66%|βββββββ | 11219/17071 [00:01<00:00, 14947.49 examples/s]
Map (num_proc=224): 96%|ββββββββββ| 16387/17071 [00:01<00:00, 25213.56 examples/s]
Map (num_proc=224): 100%|ββββββββββ| 17071/17071 [00:01<00:00, 11096.96 examples/s] |
| ==((====))== Unsloth - 2x faster free finetuning | Num GPUs used = 1 |
| \\ /| Num examples = 17,071 | Num Epochs = 1 | Total steps = 2,134 |
| O^O/ \_/ \ Batch size per device = 2 | Gradient accumulation steps = 4 |
| \ / Data Parallel GPUs = 1 | Total batch size (2 x 4 x 1) = 8 |
| "-____-" Trainable parameters = 523,763,712/12,000,000,000 (4.36% trained) |
| Starting training for run: mario_sft_dataset_numbers_v2.1_str_window_vertical_newline-gemma-3-12b-it--resp-r128-a128-e1-1353 |
|
0%| | 0/2134 [00:00<?, ?it/s]`use_cache=True` is incompatible with gradient checkpointing. Setting `use_cache=False`. |
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3%|β | 67/2134 [07:52<1:28:46, 2.58s/it]
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3%|β | 68/2134 [07:55<1:32:33, 2.69s/it]
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3%|β | 69/2134 [07:58<1:37:02, 2.82s/it]
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3%|β | 70/2134 [08:01<1:41:45, 2.96s/it]
3%|β | 70/2134 [08:01<1:41:45, 2.96s/it]
3%|β | 71/2134 [08:05<1:44:46, 3.05s/it]
3%|β | 71/2134 [08:05<1:44:46, 3.05s/it]
3%|β | 72/2134 [08:08<1:46:27, 3.10s/it]
3%|β | 72/2134 [08:08<1:46:27, 3.10s/it]
3%|β | 73/2134 [08:11<1:47:52, 3.14s/it]
3%|β | 73/2134 [08:11<1:47:52, 3.14s/it]
3%|β | 74/2134 [08:14<1:47:27, 3.13s/it]
3%|β | 74/2134 [08:14<1:47:27, 3.13s/it]
4%|β | 75/2134 [08:38<5:18:47, 9.29s/it]
4%|β | 75/2134 [08:38<5:18:47, 9.29s/it]
4%|β | 76/2134 [08:41<4:11:57, 7.35s/it]
4%|β | 76/2134 [08:41<4:11:57, 7.35s/it]
4%|β | 77/2134 [08:44<3:26:45, 6.03s/it]
4%|β | 77/2134 [08:44<3:26:45, 6.03s/it]
4%|β | 78/2134 [08:47<2:55:19, 5.12s/it]
Unsloth: Will smartly offload gradients to save VRAM! |
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4%|β | 78/2134 [08:47<2:55:19, 5.12s/it]
4%|β | 79/2134 [08:50<2:32:59, 4.47s/it]
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4%|β | 83/2134 [08:59<1:38:26, 2.88s/it]
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4%|β | 84/2134 [09:02<1:31:35, 2.68s/it]
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4%|β | 86/2134 [09:08<1:37:30, 2.86s/it]
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4%|β | 87/2134 [09:11<1:40:48, 2.95s/it]
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4%|β | 88/2134 [09:14<1:40:39, 2.95s/it]
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7%|β | 153/2134 [19:30<2:34:50, 4.69s/it]
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7%|β | 154/2134 [19:33<2:18:30, 4.20s/it]
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7%|β | 155/2134 [19:36<2:07:27, 3.86s/it]
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7%|β | 156/2134 [19:39<1:59:25, 3.62s/it]
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7%|β | 156/2134 [19:39<1:59:25, 3.62s/it]
7%|β | 157/2134 [19:42<1:54:10, 3.46s/it]
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7%|β | 159/2134 [19:48<1:49:40, 3.33s/it]
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7%|β | 160/2134 [19:51<1:46:53, 3.25s/it]
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8%|β | 161/2134 [19:54<1:45:12, 3.20s/it]
8%|β | 161/2134 [19:54<1:45:12, 3.20s/it]
8%|β | 162/2134 [19:57<1:43:43, 3.16s/it]
8%|β | 162/2134 [19:57<1:43:43, 3.16s/it]
8%|β | 163/2134 [20:00<1:42:43, 3.13s/it]
8%|β | 163/2134 [20:00<1:42:43, 3.13s/it]
8%|β | 164/2134 [20:04<1:42:31, 3.12s/it]
8%|β | 164/2134 [20:04<1:42:31, 3.12s/it]
8%|β | 165/2134 [20:07<1:42:02, 3.11s/it]
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8%|β | 166/2134 [20:10<1:42:21, 3.12s/it]
8%|β | 166/2134 [20:10<1:42:21, 3.12s/it]
8%|β | 167/2134 [20:13<1:42:01, 3.11s/it]
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8%|β | 168/2134 [20:16<1:42:29, 3.13s/it]
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8%|β | 169/2134 [20:19<1:41:52, 3.11s/it]
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8%|β | 170/2134 [20:22<1:41:53, 3.11s/it]
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8%|β | 171/2134 [20:25<1:41:55, 3.12s/it]
8%|β | 171/2134 [20:25<1:41:55, 3.12s/it]
8%|β | 172/2134 [20:28<1:41:26, 3.10s/it]
8%|β | 172/2134 [20:28<1:41:26, 3.10s/it]
8%|β | 173/2134 [20:32<1:41:30, 3.11s/it]
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8%|β | 174/2134 [20:35<1:41:08, 3.10s/it]
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8%|β | 175/2134 [26:36<60:11:44, 110.62s/it]
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8%|β | 176/2134 [26:39<42:37:37, 78.37s/it]
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8%|β | 177/2134 [26:42<30:19:51, 55.80s/it]
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8%|β | 178/2134 [26:45<21:43:44, 39.99s/it]
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8%|β | 179/2134 [26:49<15:42:32, 28.93s/it]
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8%|β | 180/2134 [26:52<11:29:30, 21.17s/it]
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8%|β | 181/2134 [26:55<8:32:41, 15.75s/it]
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9%|β | 182/2134 [26:58<6:28:38, 11.95s/it]
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9%|β | 183/2134 [27:01<5:02:06, 9.29s/it]
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9%|β | 186/2134 [27:10<2:49:19, 5.22s/it]
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9%|β | 187/2134 [27:13<2:28:34, 4.58s/it]
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9%|β | 188/2134 [27:16<2:14:17, 4.14s/it]
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9%|β | 189/2134 [27:20<2:04:17, 3.83s/it]
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9%|β | 190/2134 [27:23<1:57:00, 3.61s/it]
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9%|β | 191/2134 [27:26<1:52:01, 3.46s/it]
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9%|β | 192/2134 [27:29<1:48:53, 3.36s/it]
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9%|β | 196/2134 [27:41<1:42:46, 3.18s/it]
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9%|β | 200/2134 [34:03<61:07:53, 113.79s/it]
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10%|β | 204/2134 [34:15<15:55:17, 29.70s/it]
10%|β | 204/2134 [34:15<15:55:17, 29.70s/it]
10%|β | 205/2134 [34:19<11:40:27, 21.79s/it]
10%|β | 205/2134 [34:19<11:40:27, 21.79s/it]
10%|β | 206/2134 [34:22<8:40:04, 16.19s/it]
10%|β | 206/2134 [34:22<8:40:04, 16.19s/it]
10%|β | 207/2134 [34:25<6:34:41, 12.29s/it]
10%|β | 207/2134 [34:25<6:34:41, 12.29s/it]
10%|β | 208/2134 [34:28<5:05:58, 9.53s/it]
10%|β | 208/2134 [34:28<5:05:58, 9.53s/it]
10%|β | 209/2134 [34:31<4:03:57, 7.60s/it]
10%|β | 209/2134 [34:31<4:03:57, 7.60s/it] |