--- pipeline_tag: token-classification tags: - code license: apache-2.0 datasets: - Alex123321/english_cefr_dataset language: - en metrics: - accuracy library_name: transformers --- # Model Card: BERT-based CEFR Classifier ## Overview This repository contains a model trained to predict Common European Framework of Reference (CEFR) levels for a given text using a BERT-based model architecture. The model was fine-tuned on the CEFR dataset, and the `bert-base-...` pre-trained model was used as the base. ## Model Details - Model architecture: BERT (base model: `bert-base-...`) - Task: CEFR level prediction for text classification - Training dataset: CEFR dataset - Fine-tuning: Epochs, Loss, Accuracy, etc. ## Performance The model's performance during training is summarized below: | Epoch | Training Loss | Validation Loss | Accuracy | |-------|---------------|-----------------|----------| | 1 | 1.491800 | 1.319211 | 0.420690 | | 2 | 1.238600 | 0.864768 | 0.700447 | | 3 | 0.813200 | 0.538081 | 0.815057 | Additional metrics: - Training Loss: 1.1851 - Training Runtime: 7465.51 seconds - Training Samples per Second: 7.633 - Total Floating Point Operations: 1.499392196785152e+16 ## Usage 1. Install the required libraries by running `pip install transformers`. 2. Load the trained model and use it for CEFR level prediction. from transformers import pipeline # Load the model model_name = "AbdulSami/bert-base-cased-cefr" classifier = pipeline("text-classification", model=model_name) # Text for prediction text = "This is a sample text for CEFR classification." # Predict CEFR level predictions = classifier(text) # Print the predictions print(predictions)