# Basic example for doing model-in-the-loop dynamic adversarial data collection # using Gradio Blocks. import json import os import threading import time import uuid from concurrent.futures import ThreadPoolExecutor from pathlib import Path from typing import List from urllib.parse import parse_qs import gradio as gr from dotenv import load_dotenv from huggingface_hub import Repository from langchain import ConversationChain from langchain.chains.conversation.memory import ConversationBufferMemory from langchain.llms import HuggingFaceHub from langchain.prompts import load_prompt from utils import force_git_push def generate_respone(chatbot: ConversationChain, input: str) -> str: """Generates a response for a `langchain` chatbot.""" return chatbot.predict(input=input) def generate_responses(chatbots: List[ConversationChain], inputs: List[str]) -> List[str]: """Generates parallel responses for a list of `langchain` chatbots.""" results = [] with ThreadPoolExecutor(max_workers=100) as executor: for result in executor.map(generate_respone, chatbots, inputs): results.append(result) return results # These variables are for storing the MTurk HITs in a Hugging Face dataset. if Path(".env").is_file(): load_dotenv(".env") DATASET_REPO_URL = os.getenv("DATASET_REPO_URL") FORCE_PUSH = os.getenv("FORCE_PUSH") HF_TOKEN = os.getenv("HF_TOKEN") PROMPT_TEMPLATES = Path("prompt_templates") DATA_FILENAME = "data.jsonl" DATA_FILE = os.path.join("data", DATA_FILENAME) repo = Repository( local_dir="data", clone_from=DATASET_REPO_URL, use_auth_token=HF_TOKEN ) TOTAL_CNT = 3 # How many user inputs per HIT # This function pushes the HIT data written in data.jsonl to our Hugging Face # dataset every minute. Adjust the frequency to suit your needs. PUSH_FREQUENCY = 60 def asynchronous_push(f_stop): if repo.is_repo_clean(): print("Repo currently clean. Ignoring push_to_hub") else: repo.git_add(auto_lfs_track=True) repo.git_commit("Auto commit by space") if FORCE_PUSH == "yes": force_git_push(repo) else: repo.git_push() if not f_stop.is_set(): # call again in 60 seconds threading.Timer(PUSH_FREQUENCY, asynchronous_push, [f_stop]).start() f_stop = threading.Event() asynchronous_push(f_stop) # Now let's run the app! prompt = load_prompt(PROMPT_TEMPLATES / "openai_chatgpt.json") # TODO: update this list with better, instruction-trained models MODEL_IDS = ["google/flan-t5-xl", "bigscience/T0_3B", "EleutherAI/gpt-j-6B"] chatbots = [] for model_id in MODEL_IDS: chatbots.append(ConversationChain( llm=HuggingFaceHub( repo_id=model_id, model_kwargs={"temperature": 1}, huggingfacehub_api_token=HF_TOKEN, ), prompt=prompt, verbose=False, memory=ConversationBufferMemory(ai_prefix="Assistant"), )) model_id2model = {chatbot.llm.repo_id: chatbot for chatbot in chatbots} demo = gr.Blocks() with demo: dummy = gr.Textbox(visible=False) # dummy for passing assignmentId # We keep track of state as a JSON state_dict = { "conversation_id": str(uuid.uuid4()), "assignmentId": "", "cnt": 0, "data": [], "past_user_inputs": [], "generated_responses": [], } for idx in range(len(chatbots)): state_dict[f"response_{idx+1}"] = "" state = gr.JSON(state_dict, visible=False) gr.Markdown("# Talk to the assistant") state_display = gr.Markdown(f"Your messages: 0/{TOTAL_CNT}") # Generate model prediction def _predict(txt, state): start = time.time() responses = generate_responses(chatbots, [txt] * len(chatbots)) print(f"Time taken to generate {len(chatbots)} responses : {time.time() - start:.2f} seconds") response2model_id = {} for chatbot, response in zip(chatbots, responses): response2model_id[response] = chatbot.llm.repo_id state["cnt"] += 1 new_state_md = f"Inputs remaining in HIT: {state['cnt']}/{TOTAL_CNT}" metadata = {"cnt": state["cnt"], "text": txt} for idx, response in enumerate(responses): metadata[f"response_{idx + 1}"] = response metadata["response2model_id"] = response2model_id state["data"].append(metadata) state["past_user_inputs"].append(txt) past_conversation_string = "
".join(["
".join(["Human 😃: " + user_input, "Assistant 🤖: " + model_response]) for user_input, model_response in zip(state["past_user_inputs"], state["generated_responses"] + [""])]) return gr.update(visible=False), gr.update(visible=True), gr.update(visible=True, choices=responses, interactive=True, value=responses[0]), gr.update(value=past_conversation_string), state, gr.update(visible=False), gr.update(visible=False), gr.update(visible=False), new_state_md, dummy def _select_response(selected_response, state, dummy): done = state["cnt"] == TOTAL_CNT state["generated_responses"].append(selected_response) state["data"][-1]["selected_response"] = selected_response state["data"][-1]["selected_model"] = state["data"][-1]["response2model_id"][selected_response] if state["cnt"] == TOTAL_CNT: # Write the HIT data to our local dataset because the worker has # submitted everything now. with open(DATA_FILE, "a") as jsonlfile: json_data_with_assignment_id =\ [json.dumps(dict({"assignmentId": state["assignmentId"], "conversation_id": state["conversation_id"]}, **datum)) for datum in state["data"]] jsonlfile.write("\n".join(json_data_with_assignment_id) + "\n") toggle_example_submit = gr.update(visible=not done) past_conversation_string = "
".join(["
".join(["😃: " + user_input, "🤖: " + model_response]) for user_input, model_response in zip(state["past_user_inputs"], state["generated_responses"])]) query = parse_qs(dummy[1:]) if "assignmentId" in query and query["assignmentId"][0] != "ASSIGNMENT_ID_NOT_AVAILABLE": # It seems that someone is using this app on mturk. We need to # store the assignmentId in the state before submit_hit_button # is clicked. We can do this here in _predict. We need to save the # assignmentId so that the turker can get credit for their HIT. state["assignmentId"] = query["assignmentId"][0] toggle_final_submit = gr.update(visible=done) toggle_final_submit_preview = gr.update(visible=False) else: toggle_final_submit_preview = gr.update(visible=done) toggle_final_submit = gr.update(visible=False) if done: # Wipe the memory completely because we will be starting a new hit soon. for chatbot in chatbots: chatbot.memory = ConversationBufferMemory(ai_prefix="Assistant") else: # Sync all of the model's memories with the conversation path that # was actually taken. for chatbot in chatbots: chatbot.memory = model_id2model[state["data"][-1]["response2model_id"][selected_response]].memory text_input = gr.update(visible=False) if done else gr.update(visible=True) return gr.update(visible=False), gr.update(visible=True), text_input, gr.update(visible=False), state, gr.update(value=past_conversation_string), toggle_example_submit, toggle_final_submit, toggle_final_submit_preview, # Input fields past_conversation = gr.Markdown() text_input = gr.Textbox(placeholder="Enter a statement", show_label=False) select_response = gr.Radio(choices=[None, None], visible=False, label="Choose the most helpful and honest response") select_response_button = gr.Button("Select Response", visible=False) with gr.Column() as example_submit: submit_ex_button = gr.Button("Submit") with gr.Column(visible=False) as final_submit: submit_hit_button = gr.Button("Submit HIT") with gr.Column(visible=False) as final_submit_preview: submit_hit_button_preview = gr.Button("Submit Work (preview mode; no MTurk HIT credit, but your examples will still be stored)") # Button event handlers get_window_location_search_js = """ function(text_input, label_input, state, dummy) { return [text_input, label_input, state, window.location.search]; } """ select_response_button.click( _select_response, inputs=[select_response, state, dummy], outputs=[select_response, example_submit, text_input, select_response_button, state, past_conversation, example_submit, final_submit, final_submit_preview], _js=get_window_location_search_js, ) submit_ex_button.click( _predict, inputs=[text_input, state], outputs=[text_input, select_response_button, select_response, past_conversation, state, example_submit, final_submit, final_submit_preview, state_display, dummy], _js=get_window_location_search_js, ) post_hit_js = """ function(state) { // If there is an assignmentId, then the submitter is on mturk // and has accepted the HIT. So, we need to submit their HIT. const form = document.createElement('form'); form.action = 'https://workersandbox.mturk.com/mturk/externalSubmit'; form.method = 'post'; for (const key in state) { const hiddenField = document.createElement('input'); hiddenField.type = 'hidden'; hiddenField.name = key; hiddenField.value = state[key]; form.appendChild(hiddenField); }; document.body.appendChild(form); form.submit(); return state; } """ submit_hit_button.click( lambda state: state, inputs=[state], outputs=[state], _js=post_hit_js, ) refresh_app_js = """ function(state) { // The following line here loads the app again so the user can // enter in another preview-mode "HIT". window.location.href = window.location.href; return state; } """ submit_hit_button_preview.click( lambda state: state, inputs=[state], outputs=[state], _js=refresh_app_js, ) demo.launch()