pip install streamlit transformers import streamlit as st from transformers import pipeline # Load the medical diagnosis model from Hugging Face Transformers diagnosis_model = pipeline("text-classification", model="your-medical-diagnosis-model-name") def main(): st.title("Medical Diagnosis Assistant") # Text input for user to enter symptoms symptoms = st.text_area("Enter symptoms (separated by commas):") if st.button("Diagnose"): if symptoms: # Perform medical diagnosis diagnosis_result = diagnose(symptoms) st.success(f"Diagnosis: {diagnosis_result}") else: st.warning("Please enter symptoms for diagnosis.") def diagnose(symptoms): # Call the Hugging Face model for medical diagnosis result = diagnosis_model(symptoms) # Extract the predicted label label = result[0]["label"] return label if __name__ == "__main__": main() import streamlit as st from transformers import pipeline # Load the medical diagnosis model from Hugging Face Transformers diagnosis_model = pipeline("text-classification", model="your-medical-diagnosis-model-name") def main(): st.title("Medical Diagnosis Assistant") # Text input for user to enter symptoms symptoms = st.text_area("Enter symptoms (separated by commas):") if st.button("Diagnose"): if symptoms: # Perform medical diagnosis diagnosis_result = diagnose(symptoms) st.success(f"Diagnosis: {diagnosis_result}") else: st.warning("Please enter symptoms for diagnosis.") def diagnose(symptoms): # Call the Hugging Face model for medical diagnosis result = diagnosis_model(symptoms) # Extract the predicted label label = result[0]["label"] return label if __name__ == "__main__": main() import streamlit as st from transformers import pipeline # Load the medical diagnosis model from Hugging Face Transformers diagnosis_model = pipeline("text-classification", model="your-medical-diagnosis-model-name") def main(): st.title("Medical Diagnosis Assistant") # Text input for user to enter symptoms symptoms = st.text_area("Enter symptoms (separated by commas):") if st.button("Diagnose"): if symptoms: # Perform medical diagnosis diagnosis_result = diagnose(symptoms) st.success(f"Diagnosis: {diagnosis_result}") else: st.warning("Please enter symptoms for diagnosis.") def diagnose(symptoms): # Call the Hugging Face model for medical diagnosis result = diagnosis_model(symptoms) # Extract the predicted label label = result[0]["label"] return label if __name__ == "__main__": main() streamlit run medical_diagnosis_app.py