--- license: gpl-3.0 datasets: - medalpaca/medical_meadow_medical_flashcards pipeline_tag: question-answering --- # Model Description This is a fine-tuned version of the Minerva model, trained on the [Medical Meadow Flashcard Dataset](https://huggingface.co/datasets/medalpaca/medical_meadow_medical_flashcards) for question answering. The model was developed by the Sapienza NLP Team in collaboration with Future Artificial Intelligence Research (FAIR) and CINECA; specifically, I used the version with 350 million parameters due to computational limits, though versions with 1 billion and 3 billion parameters also exist. For more details, please refer to their repositories: [Sapienza NLP on Hugging Face](https://huggingface.co/sapienzanlp) and [Minerva LLMs](https://nlp.uniroma1.it/minerva/).
# Issues and possible Solutions - In the original fine-tuned version, my model tended to generate answers that continued unnecessarily, leading to repeated sentences and a degradation in quality over time. Parameters like '*max_length*' or '*max_new_tokens*' were ineffective as they merely stopped the generation at a specified point without properly concluding the sentence. To address this issue, I redefined the stopping criteria to terminate the generation at the first period ('.'), as demonstrated in the code below: - ```python class newStoppingCriteria(StoppingCriteria): def __init__(self, stop_word): self.stop_word = stop_word def __call__(self, input_ids, scores, **kwargs): decoded_text = tokenizer.decode(input_ids[0], skip_special_tokens=True) return self.stop_word in decoded_text criteria = newStoppingCriteria(stop_word = ".") stoppingCriteriaList = StoppingCriteriaList([criteria]) ```
- Since the preprocessed text was formatted as "BoS token - Question - EoS token - BoS token - Answer - EoS token," the model generated answers that included the question as well. To resolve this, I implemented a method to remove the question from the generated text, leaving only the answer: - ```python outputText = tokenizer.decode(output_ids[0], skip_special_tokens = True) inputText = tokenizer.decode(inputEncoding.input_ids[0], skip_special_tokens = True) answer = outputText[len(inputText):].strip() ```
# Use Example ```python question = 'What causes Wernicke encephalopathy?' inputEncoding = tokenizer(question, return_tensors = 'pt').to('cuda') output_ids = model.generate( inputEncoding.input_ids, max_length = 128, do_sample = True, temperature = 0.7, top_p = 0.97, top_k = 2, pad_token_id = tokenizer.eos_token_id, repetition_penalty = 1.2, stopping_criteria = stoppingCriteriaList ) outputText = tokenizer.decode(output_ids[0], skip_special_tokens = True) inputText = tokenizer.decode(inputEncoding.input_ids[0], skip_special_tokens = True) answer = outputText[len(inputText):].strip() # Generated Answer: Wernicke encephalopathy is caused by a defect in the Wern-Herxheimer reaction, which leads to an accumulation of acid and alkaline phosphatase activity. # Effective Answer: The underlying pathophysiologic cause of Wernicke encephalopathy is thiamine (B1) deficiency. ```
# Training Information The model was fine-tuned for 3 epochs using the parameters specified in its original repository: ```python trainingArgs = TrainingArguments( output_dir = "MedicalFlashcardsMinerva", evaluation_strategy = "steps", save_strategy = "steps", learning_rate = 2e-4, per_device_train_batch_size = 6, per_device_eval_batch_size = 6, gradient_accumulation_steps = 8, num_train_epochs = 3, lr_scheduler_type = "cosine", warmup_ratio = 0.1, adam_beta1 = 0.9, adam_beta2 = 0.95, adam_epsilon = 1e-8, weight_decay = 0.01, logging_steps = 100, report_to = "none", ) ```