import gradio as gr # type: ignore import pandas as pd from sotopia_space.constants import MODEL_OPTIONS # from sotopia_space.utils import apply_length_penalty LP_MODE = "v2" original_df, ablation_df = None, None LP_original_dfs = {} DEFAULT_LP = 0.5 available_models = [] # to be filled in later original_df, ablation_df = None, None # def slider_change_main(length_penalty): # global original_df, ablation_df, LP_MODE # adjusted_df = apply_length_penalty(original_df, ablation_df, length_penalty, mode=LP_MODE, LP_original_dfs=LP_original_dfs) # adjusted_df = adjusted_df[["Model", "Overall Elo", "Task-Avg Elo", "# battles", "Length"]] # adjusted_df = adjusted_df.sort_values(by="Overall Elo", ascending=False) # # adjusted_df = add_winrates(adjusted_df, LP=length_penalty) # # adjusted_df = adjusted_df.drop(columns=["Length"]) # adjusted_df.insert(0, "Rank", range(1, 1 + len(adjusted_df))) # return adjusted_df # def slider_change_full(length_penalty, show_winrate): # global original_df, ablation_df, LP_MODE # adjusted_df = apply_length_penalty(original_df, ablation_df, length_penalty, mode=LP_MODE, LP_original_dfs=LP_original_dfs) # # sort the model by the "Task-Avg Elo" column # adjusted_df = adjusted_df.sort_values(by="Overall Elo", ascending=False) # adjusted_df.drop(columns=["Overall Elo", "Task-Avg Elo", "# battles", "Length"], inplace=True) # if show_winrate == "none": # adjusted_df.insert(0, "Rank", range(1, 1 + len(adjusted_df))) # return adjusted_df # elif show_winrate == "gpt-3.5": # adjusted_df = add_winrates_tasks(adjusted_df, ref="gpt-3.5", LP=length_penalty) # elif show_winrate == "gpt-4": # adjusted_df = add_winrates_tasks(adjusted_df, ref="gpt-4", LP=length_penalty) # adjusted_df.insert(0, "Rank", range(1, 1 + len(adjusted_df))) # return adjusted_df def benchmark_table(): global original_df, ablation_df global LP_original_dfs, LP_MODE # gr.Markdown(f"**Version**: sotopia (v1.01; 2024.04.22) | **# Examples**: 7200 | **# Models**: {len(MODEL_OPTIONS)} | **# Comparisons**: x", elem_classes="markdown-text") with gr.TabItem("BARTScore on 100 samples", elem_id="od-benchmark-tab-table-ablation", id=0, elem_classes="subtab"): # original_df, ablation_df = skip_empty_original_df, skip_empty_ablation_df original_df = pd.read_json('data_dir/bartscore_100_results.jsonl', lines=True) # default_main_df = apply_length_penalty(original_df, ablation_df, length_penalty=DEFAULT_LP, mode=LP_MODE, LP_original_dfs=LP_original_dfs) # original_df = original_df.sort_values(by="GOAL [0, 10]", ascending=False) # add a Rank column to the first columnn (starting from 1) # original_df.insert(0, "Rank", range(1, 1 + len(original_df))) with gr.Row(): with gr.Column(scale=4): gr.Markdown("Models are evaluated using BARTScore") # with gr.Column(scale=1): # length_penlty_slider = gr.Slider(minimum=0.1, maximum=1, step=0.1, value=DEFAULT_LP, label="Length Penalty", elem_id="length-penalty-slider") # checkbox_skip_empty = gr.Checkbox(label="Skip empty results", value=False, elem_id="skip-empty-checkbox", scale=2) TYPES = ["number", "markdown", "number"] leaderboard_table = gr.components.Dataframe( value=original_df, datatype=TYPES, # max_rows=None, height=1000, elem_id="leaderboard-table", interactive=False, visible=True, min_width=60, ) # return leaderboard_table #length_penlty_slider.change(fn=slider_change_main, inputs=[length_penlty_slider], outputs=[leaderboard_table])