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--- |
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license: cc-by-2.0 |
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datasets: |
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- yahma/alpaca-cleaned |
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language: |
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- el |
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- aa |
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metrics: |
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- Josh98/nl2bash_m |
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base_model: |
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- AIDC-AI/Marco-o1 |
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pipeline_tag: fill-mask |
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library_name: fastai |
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tags: |
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- art |
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--- |
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💪💪 [New update version Try here](https://play.eslgaming.com/player/myinfos/20511613/) |
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Feature : |
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. Auto Farm |
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. AFK Auto Fish |
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. inf money |
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. Fully Auto Missions |
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. Auto Quest |
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. Instant Kill |
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. Bring |
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. Collect Item |
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. Open Chest |
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. Bypass Level |
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. Instant Level |
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& More! |
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The stain normalizer has a native Tensorflow transform and can be directly applied to a tf.data.Dataset: |
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# Map the stain normalizer transformation |
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# to a tf.data.Dataset |
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dataset = dataset.map(normalizer.tf_to_tf) |
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Alternatively, the model can be used to generate predictions for whole-slide images processed through Slideflow in an end-to-end Project. To use the model to generate predictions on data processed with Slideflow, simply pass the model to the Project.predict() function: |
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