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import gradio as gr |
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import pandas as pd |
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import random |
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from datasets import load_dataset, Dataset, DatasetDict |
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from huggingface_hub import HfApi, login |
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import os |
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from datetime import datetime |
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hf_api = HfApi() |
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HF_TOKEN = os.getenv('HF_TOKEN') |
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login(token=HF_TOKEN) |
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dataset_1 = load_dataset("HumanLLMs/LlamaPair")["train"] |
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dataset_2 = load_dataset("HumanLLMs/QwenPair")["train"] |
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dataset_3 = load_dataset("HumanLLMs/MistralPair")["train"] |
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df_log = pd.DataFrame(columns=["instruction", "selected_model", "pair", "submission_time"]) |
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def get_random_row(): |
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selected_dataset = random.choice([dataset_1, dataset_2, dataset_3]) |
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pair_name = ("LlamaPair" if selected_dataset == dataset_1 |
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else "QwenPair" if selected_dataset == dataset_2 |
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else "MistralPair") |
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row = selected_dataset[random.randint(0, len(selected_dataset) - 1)] |
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instruction = row["instruction"] |
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response_human = row["response_human_like_model"] |
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response_official = row["response_offical_instruct_model"] |
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responses = [("Human-like Model", response_human), |
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("Official Model", response_official)] |
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random.shuffle(responses) |
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return (instruction, responses[0][1], responses[1][1], |
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responses[0][0], responses[1][0], pair_name) |
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def format_response_html(response): |
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return f''' |
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<div style="border: 1px solid white; background-color: black; |
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padding: 10px; margin: 5px;"> |
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<strong style="color: white;">Answer:</strong> |
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<div style="color: white;">{response}</div> |
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</div> |
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''' |
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def submit_choice(selected_response, instruction, label_1, label_2, pair_name): |
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try: |
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df_log = pd.DataFrame(load_dataset("HumanLLMs/log")["train"]) |
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except: |
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df_log = pd.DataFrame(columns=["instruction", "selected_model", |
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"pair", "submission_time"]) |
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selected_model = label_1 if selected_response == "Answer 1" else label_2 |
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submission_time = datetime.now().strftime('%Y-%m-%d %H:%M:%S') |
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new_entry = pd.DataFrame({ |
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"instruction": [instruction], |
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"selected_model": [selected_model], |
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"pair": [pair_name], |
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"submission_time": [submission_time] |
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}) |
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df_log = pd.concat([df_log, new_entry], ignore_index=True) |
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df_log.to_csv("annotations_log.csv", index=False) |
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log = Dataset.from_pandas(df_log) |
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log.push_to_hub("HumanLLMs/log") |
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new_instruction, new_response_1, new_response_2, new_label_1, new_label_2, new_pair_name = get_random_row() |
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return ( |
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f"### Question:\n{new_instruction}", |
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format_response_html(new_response_1), |
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format_response_html(new_response_2), |
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new_label_1, |
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new_label_2, |
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new_pair_name, |
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"Your choice has been recorded. A new question is loaded!" |
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) |
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def create_interface(): |
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instruction, response_1, response_2, label_1, label_2, pair_name = get_random_row() |
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with gr.Blocks(theme=gr.themes.Default()) as demo: |
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gr.Markdown("# Human-Likeness Voting System") |
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gr.Markdown("![image/png](https://cdn-uploads.huggingface.co/production/uploads/63da3d7ae697e5898cb86854/6vL52mOW6IqZu8DFlAZ4C.png)") |
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gr.Markdown("This interface has been created to compare the performance of the human-like LLMs developed by our team with the models on which they were trained. The results of this study will be presented in a paper. Please ensure that your responses are fair and accurate when casting your vote and selecting the appropriate answer. We thank you for your contributions on behalf of the research team.") |
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gr.Markdown("## Instructions") |
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gr.Markdown( |
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""" |
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1. First, read the provided question carefully. |
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2. Second, read both responses carefully. |
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3. Finally, select the model that best resembles a human in terms of response quality.""" |
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) |
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current_instruction = gr.State(instruction) |
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label_1_state = gr.State(label_1) |
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label_2_state = gr.State(label_2) |
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pair_name_state = gr.State(pair_name) |
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question_display = gr.Markdown(value=f"### Question:\n{instruction}") |
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with gr.Row(): |
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with gr.Column(): |
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response_1_display = gr.HTML(format_response_html(response_1)) |
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with gr.Column(): |
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response_2_display = gr.HTML(format_response_html(response_2)) |
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with gr.Row(): |
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selected_response = gr.Radio( |
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["Answer 1", "Answer 2"], |
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label="Which answer is better?", |
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interactive=True |
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) |
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submit_btn = gr.Button("Submit Choice") |
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status_output = gr.Textbox( |
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interactive=False, |
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label="Status", |
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value="Select an answer and click Submit" |
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) |
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submit_btn.click( |
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fn=submit_choice, |
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inputs=[ |
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selected_response, |
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current_instruction, |
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label_1_state, |
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label_2_state, |
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pair_name_state |
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], |
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outputs=[ |
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question_display, |
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response_1_display, |
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response_2_display, |
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label_1_state, |
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label_2_state, |
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pair_name_state, |
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status_output |
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] |
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) |
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return demo |
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if __name__ == "__main__": |
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interface = create_interface() |
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interface.launch(share=True) |
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