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+ task: detect
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+ mode: train
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+ model: yolov8s.pt
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+ data: /kaggle/working/final-dataset-v3/data.yaml
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+ epochs: 100
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+ time: null
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+ optimizer: auto
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+ verbose: true
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+ save_dir: runs/detect/train3
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90
+ 89, 0.95241, 0.6669, 1.1237, 0.88986, 0.77767, 0.86456, 0.59163, 1.1742, 0.77401, 1.3242, 0.001288, 0.001288, 0.001288
91
+ 90, 0.94762, 0.66755, 1.1223, 0.88864, 0.77938, 0.86485, 0.59219, 1.1729, 0.77322, 1.3237, 0.001189, 0.001189, 0.001189
92
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93
+ 92, 0.88109, 0.53778, 1.0757, 0.88578, 0.78198, 0.86527, 0.59243, 1.1707, 0.76985, 1.3224, 0.000991, 0.000991, 0.000991
94
+ 93, 0.86763, 0.52398, 1.063, 0.88472, 0.78372, 0.86594, 0.59286, 1.1694, 0.76828, 1.3219, 0.000892, 0.000892, 0.000892
95
+ 94, 0.86585, 0.51918, 1.0608, 0.88222, 0.78721, 0.86605, 0.59361, 1.1681, 0.76626, 1.3213, 0.000793, 0.000793, 0.000793
96
+ 95, 0.84881, 0.51258, 1.0554, 0.88295, 0.78743, 0.86639, 0.59435, 1.1673, 0.76446, 1.3213, 0.000694, 0.000694, 0.000694
97
+ 96, 0.84208, 0.49878, 1.0497, 0.88412, 0.78786, 0.86654, 0.59512, 1.1663, 0.76261, 1.3213, 0.000595, 0.000595, 0.000595
98
+ 97, 0.83414, 0.49491, 1.0486, 0.88499, 0.78712, 0.8663, 0.59562, 1.1654, 0.76155, 1.3211, 0.000496, 0.000496, 0.000496
99
+ 98, 0.83347, 0.48978, 1.0446, 0.88319, 0.78777, 0.86606, 0.59636, 1.1646, 0.75983, 1.3212, 0.000397, 0.000397, 0.000397
100
+ 99, 0.82706, 0.49023, 1.0422, 0.88205, 0.78975, 0.86608, 0.59636, 1.1635, 0.75897, 1.3212, 0.000298, 0.000298, 0.000298
101
+ 100, 0.82993, 0.49554, 1.0407, 0.88321, 0.78907, 0.8658, 0.59681, 1.163, 0.75812, 1.3215, 0.000199, 0.000199, 0.000199
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