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README.md
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# Model Architecture
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The model architecture is Deberta V3 Base
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Context length is 512 tokens
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# Training (details)
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- 500k Wikepedia articles, curated using Wikipedia-API: https://pypi.org/project/Wikipedia-API/
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## Training steps:
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- Randomly sample 1 million Common Crawl data; label them using Google Cloud API
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- Predict these 1 million samples using the first model
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- Google’s labels and first model’s prediction agree on about 500k samples
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- Split these 500k samples 80%/20%. Train the final model on the 80%, and evaluate on the 20%
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# How To Use This Model
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The model takes one or several paragraphs of text as input.
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Example input:
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q Directions
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1. Mix 2 flours and baking powder together
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3. Heat frying pan on medium
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4. Pour batter into pan and then put blueberries on top before flipping
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5. Top with desired toppings!
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## Output
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The model outputs one of the 26 domain classes as the predicted domain for each input sample.
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Example output:
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Food_and_Drink
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# Evaluation Benchmarks
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Accuracy on 500 human annotated samples
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# Model Architecture
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The model architecture is Deberta V3 Base
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Context length is 512 tokens
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# Training (details)
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- 500k Wikepedia articles, curated using Wikipedia-API: https://pypi.org/project/Wikipedia-API/
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## Training steps:
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Model was trained in multiple rounds using Wikipedia and Common Crawl data, labeled by a combination of pseudo labels and Google Cloud API.
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# How To Use This Model
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The model takes one or several paragraphs of text as input.
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Example input:
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```
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q Directions
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1. Mix 2 flours and baking powder together
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3. Heat frying pan on medium
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4. Pour batter into pan and then put blueberries on top before flipping
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5. Top with desired toppings!
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```
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## Output
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The model outputs one of the 26 domain classes as the predicted domain for each input sample.
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Example output:
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```
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Food_and_Drink
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```
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# Evaluation Benchmarks
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Accuracy on 500 human annotated samples
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