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README.md
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# Language Identifier
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---
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## OVERVIEW
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This project is a Flask web application that identifies the language of input text. It uses a machine learning model trained on text data to make predictions. The user inputs text into a form on the web app, and the app returns the predicted language.
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## SPECIFICATIONS
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- The data used for training is taken from Kaggle. It has 22 different languages.
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- The text in the dataset has tokenization, non alphanumeric characters removal and vectorization applied to it.
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- The model used for training has 4 layers with 27M params which is enough for getting high accuracy. Complex architectures couldn’t be used because of not sufficient GPUs.
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- Techniques like early stopping, learning rate decay and weight decay are used while training to get the most accurate results.
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- The metrics used for evaluation is accuracy, 97.89% of which is achieved.
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- I usually use Pytorch but this time I used Tensorflow because converting tokens into tensors crashed the GPU constantly.
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- The project uses Flask, a lightweight web framework for Python, to create the web application.
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- The input text is preprocessed before being fed into the model for prediction.
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## USAGE
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```python
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def predict_language(text, model, cv, le):
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cleaned_text = clean_text(text)
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text_vectorized = cv.transform([cleaned_text])
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prediction = model.predict(text_vectorized)
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predicted_label = le.inverse_transform([np.argmax(prediction)])[0] # Get the first element of the list
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return predicted_label
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sentence = 'random text'
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predicted_label = predict_language(sentence, model, cv, le)
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print(predicted_label)
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