import re import uuid import pandas as pd import streamlit as st import re import matplotlib.pyplot as plt import subprocess import sys import io from utils.default_values import get_system_prompt, get_guidelines_dict from utils.epfl_meditron_utils import get_llm_response from utils.openai_utils import get_available_engines, get_search_query_type_options from sklearn.metrics import confusion_matrix, ConfusionMatrixDisplay from sklearn.metrics import classification_report DATA_FOLDER = "data/" POC_VERSION = "0.1.0" MAX_QUESTIONS = 10 AVAILABLE_LANGUAGES = ["DE", "EN", "FR"] st.set_page_config(page_title='Medgate Whisper PoC', page_icon='public/medgate.png') # Azure apparently truncates message if longer than 200, see MAX_SYSTEM_MESSAGE_TOKENS = 200 def format_question(q): res = q # Remove numerical prefixes, if any, e.g. '1. [...]' if re.match(r'^[0-9].\s', q): res = res[3:] # Replace doc reference by doc name if len(st.session_state["citations"]) > 0: for source_ref in re.findall(r'\[doc[0-9]+\]', res): citation_number = int(re.findall(r'[0-9]+', source_ref)[0]) citation_index = citation_number - 1 if citation_number > 0 else 0 citation = st.session_state["citations"][citation_index] source_title = citation["title"] res = res.replace(source_ref, '[' + source_title + ']') return res.strip() def get_text_from_row(text): res = str(text) if res == "nan": return "" return res def get_questions_from_df(df, lang, test_scenario_name): questions = [] for i, row in df.iterrows(): questions.append({ "question": row[lang + ": Fragen"], "answer": get_text_from_row(row[test_scenario_name]), "question_id": uuid.uuid4() }) return questions def get_questions(df, lead_symptom, lang, test_scenario_name): print(str(st.session_state["lead_symptom"]) + " -> " + lead_symptom) print(str(st.session_state["scenario_name"]) + " -> " + test_scenario_name) if st.session_state["lead_symptom"] != lead_symptom or st.session_state["scenario_name"] != test_scenario_name: st.session_state["lead_symptom"] = lead_symptom st.session_state["scenario_name"] = test_scenario_name symptom_col_name = st.session_state["language"] + ": Symptome" df_questions = df[(df[symptom_col_name] == lead_symptom)] st.session_state["questions"] = get_questions_from_df(df_questions, lang, test_scenario_name) return st.session_state["questions"] def display_streamlit_sidebar(): st.sidebar.title("Local LLM PoC " + str(POC_VERSION)) st.sidebar.write('**Parameters**') form = st.sidebar.form("config_form", clear_on_submit=True) model_repo_id = form.text_input(label="Repo", value=st.session_state["model_repo_id"]) model_filename = form.text_input(label="File name", value=st.session_state["model_filename"]) model_type = form.text_input(label="Model type", value=st.session_state["model_type"]) gpu_layers = form.slider('GPU Layers', min_value=0, max_value=100, value=st.session_state['gpu_layers'], step=1) system_prompt = "" #form.text_area(label='System prompt', # value=st.session_state["system_prompt"]) temperature = form.slider('Temperature (0 = deterministic, 1 = more freedom)', min_value=0.0, max_value=1.0, value=st.session_state['temperature'], step=0.1) top_p = form.slider('top_p (0 = focused, 1 = broader answer range)', min_value=0.0, max_value=1.0, value=st.session_state['top_p'], step=0.1) form.write('Best practice is to only modify temperature or top_p, not both') submitted = form.form_submit_button("Start session") if submitted and not st.session_state['session_started']: print('Parameters updated...') restart_session() st.session_state['session_started'] = True st.session_state["model_repo_id"] = model_repo_id st.session_state["model_filename"] = model_filename st.session_state["model_type"] = model_type st.session_state['gpu_layers'] = gpu_layers st.session_state["questions"] = [] st.session_state["lead_symptom"] = None st.session_state["scenario_name"] = None st.session_state["system_prompt"] = system_prompt st.session_state['session_started'] = True st.session_state["session_started"] = True st.session_state["temperature"] = temperature st.session_state["top_p"] = top_p st.rerun() def to_str(text): res = str(text) if res == "nan": return " " return " " + res def set_df_prompts(path, sheet_name): df_prompts = pd.read_excel(path, sheet_name, header=None) for i in range(3, df_prompts.shape[0]): df_prompts.iloc[2] += df_prompts.iloc[i].apply(to_str) df_prompts = df_prompts.T df_prompts = df_prompts[[0, 1, 2]] df_prompts[0] = df_prompts[0].astype(str) df_prompts[1] = df_prompts[1].astype(str) df_prompts[2] = df_prompts[2].astype(str) df_prompts.columns = ["Questionnaire", "Used Guideline", "Prompt"] df_prompts = df_prompts[1:] st.session_state["df_prompts"] = df_prompts def handle_nbq_click(c): question_without_source = re.sub(r'\[.*\]', '', c) question_without_source = question_without_source.strip() st.session_state['doctor_question'] = question_without_source def get_doctor_question_value(): if 'doctor_question' in st.session_state: return st.session_state['doctor_question'] return '' def update_chat_history(dr_question, patient_reply): print("update_chat_history" + str(dr_question) + " - " + str(patient_reply) + '...\n') if dr_question is not None: dr_msg = { "role": "Doctor", "content": dr_question } st.session_state["chat_history_array"].append(dr_msg) if patient_reply is not None: patient_msg = { "role": "Patient", "content": patient_reply } st.session_state["chat_history_array"].append(patient_msg) return st.session_state["chat_history_array"] def get_chat_history_string(chat_history): res = '' for i in chat_history: if i["role"] == "Doctor": res += '**Doctor**: ' + str(i["content"].strip()) + " \n " elif i["role"] == "Patient": res += '**Patient**: ' + str(i["content"].strip()) + " \n\n " else: raise Exception('Unknown role: ' + str(i["role"])) return res def restart_session(): print("Resetting params...") st.session_state["emg_class_enabled"] = False st.session_state["enable_llm_summary"] = False st.session_state["num_variants"] = 3 st.session_state["lang_index"] = 0 st.session_state["llm_message"] = "" st.session_state["llm_messages"] = [] st.session_state["triage_prompt_variants"] = ['''You are a telemedicine triage agent that decides between the following: Emergency: Patient health is at risk if he doesn't speak to a Doctor urgently Telecare: Patient can likely be treated remotely General Practitioner: Patient should visit a GP for an ad-real consultation''', '''You are a Doctor assistant that decides if a medical case can likely be treated remotely by a Doctor or not. The remote Doctor can write prescriptions and request the patient to provide a picture. Provide the triage recommendation first, and then explain your reasoning respecting the format given below: Treat remotely: Treat ad-real: ''', '''You are a medical triage agent working for the telemedicine Company Medgate based in Switzerland. You decide if a case can be treated remotely or not, knowing that the remote Doctor can write prescriptions and request pictures. Provide the triage recommendation first, and then explain your reasoning respecting the format given below: Treat remotely: Treat ad-real: '''] st.session_state['nbqs'] = [] st.session_state['citations'] = {} st.session_state['past_messages'] = [] st.session_state["last_request"] = None st.session_state["last_proposal"] = None st.session_state['doctor_question'] = '' st.session_state['patient_reply'] = '' st.session_state['chat_history_array'] = [] st.session_state['chat_history'] = '' st.session_state['feed_summary'] = '' st.session_state['summary'] = '' st.session_state["selected_guidelines"] = ["General"] st.session_state["guidelines_dict"] = get_guidelines_dict() st.session_state["triage_recommendation"] = '' st.session_state["session_events"] = [] def init_session_state(): print('init_session_state()') st.session_state['session_started'] = False st.session_state['guidelines_ignored'] = False st.session_state['model_index'] = 1 st.session_state["model_repo_id"] = "TheBloke/meditron-7B-GGUF" st.session_state["model_filename"] = "meditron-7b.Q5_K_S.gguf" st.session_state["model_type"] = "llama" st.session_state['gpu_layers'] = 1 default_gender_index = 0 st.session_state['gender'] = get_genders()[default_gender_index] st.session_state['gender_index'] = default_gender_index st.session_state['age'] = 30 st.session_state['patient_medical_info'] = '' default_search_query = 0 st.session_state['search_query_type'] = get_search_query_type_options()[default_search_query] st.session_state['search_query_type_index'] = default_search_query st.session_state['engine'] = get_available_engines()[0] st.session_state['temperature'] = 0.0 st.session_state['top_p'] = 1.0 st.session_state['feed_chat_transcript'] = '' st.session_state["llm_model"] = True st.session_state["hugging_face_models"] = True st.session_state["local_models"] = True restart_session() st.session_state['system_prompt'] = get_system_prompt() st.session_state['system_prompt_after_on_change'] = get_system_prompt() st.session_state["summary"] = '' def get_genders(): return ['Male', 'Female'] def display_session_overview(): st.subheader('History of LLM queries') st.write(st.session_state["llm_messages"]) st.subheader("Session costs overview") df_session_overview = pd.DataFrame.from_dict(st.session_state["session_events"]) st.write(df_session_overview) if "prompt_tokens" in df_session_overview: prompt_tokens = df_session_overview["prompt_tokens"].sum() st.write("Prompt tokens: " + str(prompt_tokens)) prompt_cost = df_session_overview["prompt_cost_chf"].sum() st.write("Prompt CHF: " + str(prompt_cost)) completion_tokens = df_session_overview["completion_tokens"].sum() st.write("Completion tokens: " + str(completion_tokens)) completion_cost = df_session_overview["completion_cost_chf"].sum() st.write("Completion CHF: " + str(completion_cost)) completion_cost = df_session_overview["total_cost_chf"].sum() st.write("Total costs CHF: " + str(completion_cost)) total_time = df_session_overview["response_time"].sum() st.write("Total compute time (ms): " + str(total_time)) def remove_question(question_id): st.session_state["questions"] = [value for value in st.session_state["questions"] if str(value["question_id"]) != str(question_id)] st.rerun() def get_prompt_from_lead_symptom(df_config, df_prompt, lead_symptom, lang, fallback=True): de_lead_symptom = lead_symptom if lang != "DE": df_lead_symptom = df_config[df_config[lang + ": Symptome"] == lead_symptom] de_lead_symptom = df_lead_symptom["DE: Symptome"].iloc[0] print("DE lead symptom: " + de_lead_symptom) for i, row in df_prompt.iterrows(): if de_lead_symptom in row["Questionnaire"]: return row["Prompt"] warning_text = "No guidelines found for lead symptom " + lead_symptom + " (" + de_lead_symptom + ")" if fallback: st.toast(warning_text + ", using generic prompt", icon='🚨') return st.session_state["system_prompt"] st.toast(warning_text, icon='🚨') return "" def get_scenarios(df): return [v for v in df.columns.values if v.startswith('TLC') or v.startswith('GP')] def get_gender_age_from_test_scenario(test_scenario): try: result = re.search(r"([FM])(\d+)", test_scenario) res_age = int(result.group(2)) gender = result.group(1) res_gender = None if gender == "M": res_gender = "Male" elif gender == "F": res_gender = "Female" else: raise Exception('Unexpected gender') return res_gender, res_age except: st.error("Unable to extract name, gender; using 30M as default") return "Male", 30 def get_freetext_to_reco(reco_freetext_cased, emg_class_enabled=False): reco_freetext = "" if reco_freetext_cased: reco_freetext = reco_freetext_cased.lower() if reco_freetext.startswith('treat remotely') or reco_freetext.startswith('telecare'): return 'TELECARE' if reco_freetext.startswith('treat ad-real') or reco_freetext.startswith('gp') \ or reco_freetext.startswith('general practitioner'): return 'GP' if reco_freetext.startswith('emergency') or reco_freetext.startswith('emg') \ or reco_freetext.startswith('urgent'): if emg_class_enabled: return 'EMERGENCY' return 'GP' if "gp" in reco_freetext or 'general practitioner' in reco_freetext \ or "nicht über tele" in reco_freetext or 'durch einen arzt erford' in reco_freetext \ or "persönliche untersuchung erfordert" in reco_freetext: return 'GP' if ("telecare" in reco_freetext or 'telemed' in reco_freetext or 'can be treated remotely' in reco_freetext): return 'TELECARE' if ('emergency' in reco_freetext or 'urgent' in reco_freetext or 'not be treated remotely' in reco_freetext or "nicht tele" in reco_freetext): return 'GP' warning_msg = 'Cannot extract reco from LLM text: ' + reco_freetext st.toast(warning_msg) print(warning_msg) return 'TRIAGE_IMPOSSIBLE' def get_structured_reco(row, index, emg_class_enabled): freetext_reco_col_name = "llm_reco_freetext_" + str(index) freetext_reco = row[freetext_reco_col_name].lower() return get_freetext_to_reco(freetext_reco, emg_class_enabled) def add_expected_dispo(row, emg_class_enabled): disposition = row["disposition"] if disposition == "GP" or disposition == "TELECARE": return disposition if disposition == "EMERGENCY": if emg_class_enabled: return "EMERGENCY" return "GP" raise Exception("Missing disposition for row " + str(row.name) + " with summary " + row["case_summary"]) def get_test_scenarios(df): res = [] for col in df.columns.values: if str(col).startswith('GP') or str(col).startswith('TLC'): res.append(col) return res def get_transcript(df, test_scenario, lang): transcript = "" for i, row in df.iterrows(): transcript += "\nDoctor: " + row[lang + ": Fragen"] transcript += ", Patient: " + str(row[test_scenario]) return transcript def get_expected_from_scenario(test_scenario): reco = test_scenario.split('_')[0] if reco == "GP": return "GP" elif reco == "TLC": return "TELECARE" else: raise Exception('Unexpected reco: ' + reco) def plot_report(title, expected, predicted, display_labels): st.markdown('#### ' + title) conf_matrix = confusion_matrix(expected, predicted, labels=display_labels) conf_matrix_plot = ConfusionMatrixDisplay(confusion_matrix=conf_matrix, display_labels=display_labels) conf_matrix_plot.plot() st.pyplot(plt.gcf()) report = classification_report(expected, predicted, output_dict=True) df_report = pd.DataFrame(report).transpose() st.write(df_report) df_rp = df_report df_rp = df_rp.drop('support', axis=1) df_rp = df_rp.drop(['accuracy', 'macro avg', 'weighted avg']) try: ax = df_rp.plot(kind="bar", legend=True) for container in ax.containers: ax.bar_label(container, fontsize=7) plt.xticks(rotation=45) plt.legend(loc=(1.04, 0)) st.pyplot(plt.gcf()) except Exception as e: # Out of bounds pass def get_complete_prompt(generic_prompt, guidelines_prompt): complete_prompt = "" if generic_prompt: complete_prompt += generic_prompt if generic_prompt and guidelines_prompt: complete_prompt += ".\n\n" if guidelines_prompt: complete_prompt += guidelines_prompt return complete_prompt def run_command(args): """Run command, transfer stdout/stderr back into Streamlit and manage error""" cmd = ' '.join(args) result = subprocess.run(cmd, capture_output=True, text=True) print(result) def get_diarized_f_path(audio_f_name): # TODO p2: Quick hack, cleaner with os or regexes base_name = audio_f_name.split('.')[0] return DATA_FOLDER + base_name + ".txt" def display_llm_output(): st.header("LLM") form = st.form('llm') llm_message = form.text_area('Message', value=st.session_state["llm_message"]) api_submitted = form.form_submit_button('Submit') if api_submitted: llm_response = get_llm_response( st.session_state["model_repo_id"], st.session_state["model_filename"], st.session_state["model_type"], st.session_state["gpu_layers"], llm_message) st.write(llm_response) st.write('Done displaying LLM response') def main(): print('Running Local LLM PoC Streamlit app...') session_inactive_info = st.empty() if "session_started" not in st.session_state or not st.session_state["session_started"]: init_session_state() display_streamlit_sidebar() else: display_streamlit_sidebar() session_inactive_info.empty() display_llm_output() display_session_overview() if __name__ == '__main__': main()