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---
title: web-md-llama2-7b-3000
tags:
- healthcare
- NLP
- dialogues
- LLM
- fine-tuned
license: unknown
datasets:
- Kabatubare/medical-guanaco-3000
---
# Medical3000 Model Card
This is a model card for web-md-llama2-7b-3000 , a fine-tuned version of Llama-2-7B, specifically aimed at medical dialogues.
Covered areas:
General Medicine: Basic medical advice, symptoms, general treatments.
Cardiology: Questions related to heart diseases, blood circulation.
Neurology: Topics around brain health, neurological disorders.
Gastroenterology: Issues related to the digestive system.
Oncology: Questions about different types of cancers, treatments.
Endocrinology: Topics related to hormones, diabetes, thyroid.
Orthopedics: Bone health, joint issues.
Pediatrics: Child health, vaccinations, growth and development.
Mental Health: Depression, anxiety, stress, and other mental health issues.
Women's Health: Pregnancy, menstrual health, menopause.
## Model Details
### Base Model
- **Name**: Llama-2-7B
### Fine-tuned Model
- **Name**: web-md-llama2-7b-3000
- **Fine-tuned on**: Kabatubare/medical-guanaco-3000
- **Description**: This model is fine-tuned to specialize in medical dialogues and healthcare applications.
### Architecture and Training Parameters
#### Architecture
- **LoRA Attention Dimension**: 64
- **LoRA Alpha Parameter**: 16
- **LoRA Dropout**: 0.1
- **Precision**: 4-bit (bitsandbytes)
- **Quantization Type**: nf4
#### Training Parameters
- **Epochs**: 3
- **Batch Size**: 4
- **Gradient Accumulation Steps**: 1
- **Max Gradient Norm**: 0.3
- **Learning Rate**: 3e-4
- **Weight Decay**: 0.001
- **Optimizer**: paged_adamw_32bit
- **LR Scheduler**: cosine
- **Warmup Ratio**: 0.03
- **Logging Steps**: 25
## Datasets
###
### Fine-tuning Dataset
- **Name**: Kabatubare/medical-guanaco-3000
- **Description**: This is a reduced and balanced dataset curated from a larger medical dialogue dataset using derived from 24,000 WebMD question and answer dialogue sessions . It aims to cover a broad range of medical topics and is suitable for training healthcare chatbots and conducting medical NLP research.
## Usage
```python
from transformers import AutoModelForCausalLM, AutoTokenizer
tokenizer = AutoTokenizer.from_pretrained("Yo!Medical3000")
model = AutoModelForCausalLM.from_pretrained("Yo!Medical3000")
# Use the model for inference