Spaces:
Running
on
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Running
on
Zero
""" | |
Live monitor of the website statistics and leaderboard. | |
Dependency: | |
sudo apt install pkg-config libicu-dev | |
pip install pytz gradio gdown plotly polyglot pyicu pycld2 tabulate | |
""" | |
import argparse | |
import ast | |
import pickle | |
import os | |
import threading | |
import time | |
import gradio as gr | |
import numpy as np | |
import pandas as pd | |
basic_component_values = [None] * 6 | |
leader_component_values = [None] * 5 | |
# def make_leaderboard_md(elo_results): | |
# leaderboard_md = f""" | |
# # π Chatbot Arena Leaderboard | |
# | [Blog](https://lmsys.org/blog/2023-05-03-arena/) | [GitHub](https://github.com/lm-sys/FastChat) | [Paper](https://arxiv.org/abs/2306.05685) | [Dataset](https://github.com/lm-sys/FastChat/blob/main/docs/dataset_release.md) | [Twitter](https://twitter.com/lmsysorg) | [Discord](https://discord.gg/HSWAKCrnFx) | | |
# This leaderboard is based on the following three benchmarks. | |
# - [Chatbot Arena](https://lmsys.org/blog/2023-05-03-arena/) - a crowdsourced, randomized battle platform. We use 100K+ user votes to compute Elo ratings. | |
# - [MT-Bench](https://arxiv.org/abs/2306.05685) - a set of challenging multi-turn questions. We use GPT-4 to grade the model responses. | |
# - [MMLU](https://arxiv.org/abs/2009.03300) (5-shot) - a test to measure a model's multitask accuracy on 57 tasks. | |
# π» Code: The Arena Elo ratings are computed by this [notebook]({notebook_url}). The MT-bench scores (single-answer grading on a scale of 10) are computed by [fastchat.llm_judge](https://github.com/lm-sys/FastChat/tree/main/fastchat/llm_judge). The MMLU scores are mostly computed by [InstructEval](https://github.com/declare-lab/instruct-eval). Higher values are better for all benchmarks. Empty cells mean not available. Last updated: November, 2023. | |
# """ | |
# return leaderboard_md | |
def make_leaderboard_md(elo_results): | |
leaderboard_md = f""" | |
# π GenAI-Arena Leaderboard | |
| [Code](https://huggingface.co/spaces/TIGER-Lab/GenAI-Arena/tree/main) | [Dataset](https://huggingface.co/datasets/TIGER-Lab/GenAI-Bench) | [Twitter](https://twitter.com/TianleLI123/status/1757245259149422752) | | |
""" | |
return leaderboard_md | |
def make_leaderboard_md_live(elo_results): | |
leaderboard_md = f""" | |
# Leaderboard | |
Last updated: {elo_results["last_updated_datetime"]} | |
{elo_results["leaderboard_table"]} | |
""" | |
return leaderboard_md | |
def model_hyperlink(model_name, link): | |
return f'<a target="_blank" href="{link}" style="color: var(--link-text-color); text-decoration: underline;text-decoration-style: dotted;">{model_name}</a>' | |
def load_leaderboard_table_csv(filename, add_hyperlink=True): | |
df = pd.read_csv(filename) | |
for col in df.columns: | |
if "Arena Elo rating" in col: | |
df[col] = df[col].apply(lambda x: int(x) if x != "-" else np.nan) | |
elif col == "MMLU": | |
df[col] = df[col].apply(lambda x: round(x * 100, 1) if x != "-" else np.nan) | |
elif col == "MT-bench (win rate %)": | |
df[col] = df[col].apply(lambda x: round(x, 1) if x != "-" else np.nan) | |
elif col == "MT-bench (score)": | |
df[col] = df[col].apply(lambda x: round(x, 2) if x != "-" else np.nan) | |
if add_hyperlink and col == "Model": | |
df[col] = df.apply(lambda row: model_hyperlink(row[col], row["Link"]), axis=1) | |
return df | |
def build_basic_stats_tab(): | |
empty = "Loading ..." | |
basic_component_values[:] = [empty, None, empty, empty, empty, empty] | |
md0 = gr.Markdown(empty) | |
gr.Markdown("#### Figure 1: Number of model calls and votes") | |
plot_1 = gr.Plot(show_label=False) | |
with gr.Row(): | |
with gr.Column(): | |
md1 = gr.Markdown(empty) | |
with gr.Column(): | |
md2 = gr.Markdown(empty) | |
with gr.Row(): | |
with gr.Column(): | |
md3 = gr.Markdown(empty) | |
with gr.Column(): | |
md4 = gr.Markdown(empty) | |
return [md0, plot_1, md1, md2, md3, md4] | |
def get_full_table(anony_arena_df, full_arena_df, model_table_df): | |
values = [] | |
for i in range(len(model_table_df)): | |
row = [] | |
model_key = model_table_df.iloc[i]["key"] | |
model_name = model_table_df.iloc[i]["Model"] | |
# model display name | |
row.append(model_name) | |
if model_key in anony_arena_df.index: | |
idx = anony_arena_df.index.get_loc(model_key) | |
row.append(round(anony_arena_df.iloc[idx]["rating"])) | |
else: | |
row.append(np.nan) | |
if model_key in full_arena_df.index: | |
idx = full_arena_df.index.get_loc(model_key) | |
row.append(round(full_arena_df.iloc[idx]["rating"])) | |
else: | |
row.append(np.nan) | |
# row.append(model_table_df.iloc[i]["MT-bench (score)"]) | |
# row.append(model_table_df.iloc[i]["Num Battles"]) | |
# row.append(model_table_df.iloc[i]["MMLU"]) | |
# Organization | |
row.append(model_table_df.iloc[i]["Organization"]) | |
# license | |
row.append(model_table_df.iloc[i]["License"]) | |
values.append(row) | |
values.sort(key=lambda x: -x[1] if not np.isnan(x[1]) else 1e9) | |
return values | |
def get_arena_table(arena_df, model_table_df): | |
# sort by rating | |
arena_df = arena_df.sort_values(by=["rating"], ascending=False) | |
values = [] | |
for i in range(len(arena_df)): | |
row = [] | |
model_key = arena_df.index[i] | |
model_name = model_table_df[model_table_df["key"] == model_key]["Model"].values[ | |
0 | |
] | |
# rank | |
row.append(i + 1) | |
# model display name | |
row.append(model_name) | |
# elo rating | |
row.append(round(arena_df.iloc[i]["rating"])) | |
upper_diff = round(arena_df.iloc[i]["rating_q975"] - arena_df.iloc[i]["rating"]) | |
lower_diff = round(arena_df.iloc[i]["rating"] - arena_df.iloc[i]["rating_q025"]) | |
row.append(f"+{upper_diff}/-{lower_diff}") | |
# num battles | |
print(arena_df.iloc[i]) | |
row.append(round(arena_df.iloc[i]["num_battles"])) | |
# Organization | |
row.append( | |
model_table_df[model_table_df["key"] == model_key]["Organization"].values[0] | |
) | |
# license | |
row.append( | |
model_table_df[model_table_df["key"] == model_key]["License"].values[0] | |
) | |
values.append(row) | |
return values | |
def make_arena_leaderboard_md(elo_results): | |
arena_df = elo_results["leaderboard_table_df"] | |
last_updated = elo_results["last_updated_datetime"] | |
total_votes = sum(arena_df["num_battles"]) // 2 | |
total_models = len(arena_df) | |
leaderboard_md = f""" | |
Total #models: **{total_models}**(anonymous). Total #votes: **{total_votes}**. Last updated: {last_updated}. | |
(Note: Only anonymous votes are considered here. Check the full leaderboard for all votes.) | |
Contribute the votes π³οΈ at [GenAI-Arena](https://huggingface.co/spaces/TIGER-Lab/GenAI-Arena)! | |
If you want to see more models, please help us [add them](https://huggingface.co/spaces/TIGER-Lab/GenAI-Arena/tree/main?tab=readme-ov-file#-contributing-). | |
""" | |
return leaderboard_md | |
def make_full_leaderboard_md(elo_results): | |
arena_df = elo_results["leaderboard_table_df"] | |
last_updated = elo_results["last_updated_datetime"] | |
total_votes = sum(arena_df["num_battles"]) // 2 | |
total_models = len(arena_df) | |
leaderboard_md = f""" | |
Total #models: **{total_models}**(full:anonymous+open). Total #votes: **{total_votes}**. Last updated: {last_updated}. | |
Contribute your vote π³οΈ at [vision-arena](https://huggingface.co/spaces/WildVision/vision-arena)! | |
""" | |
return leaderboard_md | |
def build_leaderboard_tab(elo_results_file, leaderboard_table_file, show_plot=True): | |
if elo_results_file is None: # Do live update | |
md = "Loading ..." | |
p1 = p2 = p3 = p4 = None | |
else: | |
with open(elo_results_file, "rb") as fin: | |
elo_results = pickle.load(fin) | |
anony_elo_results = elo_results["anony"] | |
full_elo_results = elo_results["full"] | |
anony_arena_df = anony_elo_results["leaderboard_table_df"] | |
full_arena_df = full_elo_results["leaderboard_table_df"] | |
p1 = anony_elo_results["win_fraction_heatmap"] | |
p2 = anony_elo_results["battle_count_heatmap"] | |
p3 = anony_elo_results["bootstrap_elo_rating"] | |
p4 = anony_elo_results["average_win_rate_bar"] | |
md = make_leaderboard_md(anony_elo_results) | |
md_1 = gr.Markdown(md, elem_id="leaderboard_markdown") | |
if leaderboard_table_file: | |
model_table_df = load_leaderboard_table_csv(leaderboard_table_file) | |
with gr.Tabs() as tabs: | |
# arena table | |
arena_table_vals = get_arena_table(anony_arena_df, model_table_df) | |
with gr.Tab("Arena Elo", id=0): | |
md = make_arena_leaderboard_md(anony_elo_results) | |
gr.Markdown(md, elem_id="leaderboard_markdown") | |
gr.Dataframe( | |
headers=[ | |
"Rank", | |
"π€ Model", | |
"β Arena Elo", | |
"π 95% CI", | |
"π³οΈ Votes", | |
"Organization", | |
"License", | |
], | |
datatype=[ | |
"str", | |
"markdown", | |
"number", | |
"str", | |
"number", | |
"str", | |
"str", | |
], | |
value=arena_table_vals, | |
elem_id="arena_leaderboard_dataframe", | |
height=700, | |
column_widths=[50, 200, 100, 100, 100, 150, 150], | |
wrap=True, | |
) | |
with gr.Tab("Full Leaderboard", id=1): | |
md = make_full_leaderboard_md(full_elo_results) | |
gr.Markdown(md, elem_id="leaderboard_markdown") | |
full_table_vals = get_full_table(anony_arena_df, full_arena_df, model_table_df) | |
gr.Dataframe( | |
headers=[ | |
"π€ Model", | |
"β Arena Elo (anony)", | |
"β Arena Elo (full)", | |
"Organization", | |
"License", | |
], | |
datatype=["markdown", "number", "number", "str", "str"], | |
value=full_table_vals, | |
elem_id="full_leaderboard_dataframe", | |
column_widths=[200, 100, 100, 100, 150, 150], | |
height=700, | |
wrap=True, | |
) | |
gr.Markdown( | |
""" ## We are still collecting more votes on more models. The ranking will be updated very fruquently. Please stay tuned! | |
""", | |
elem_id="leaderboard_markdown", | |
) | |
if show_plot: | |
win_fraction_heatmap = anony_elo_results["win_fraction_heatmap"] | |
battle_count_heatmap = anony_elo_results["battle_count_heatmap"] | |
bootstrap_elo_rating = anony_elo_results["bootstrap_elo_rating"] | |
average_win_rate_bar = anony_elo_results["average_win_rate_bar"] | |
with gr.Row(): | |
with gr.Column(): | |
gr.Markdown( | |
"#### Figure 1: Fraction of Model A Wins for All Non-tied A vs. B Battles" | |
) | |
plot_1 = gr.Plot(win_fraction_heatmap, show_label=False) | |
with gr.Column(): | |
gr.Markdown( | |
"#### Figure 2: Battle Count for Each Combination of Models (without Ties)" | |
) | |
plot_2 = gr.Plot(battle_count_heatmap, show_label=False) | |
with gr.Row(): | |
with gr.Column(): | |
gr.Markdown( | |
"#### Figure 3: Bootstrap of Elo Estimates (1000 Rounds of Random Sampling)" | |
) | |
plot_3 = gr.Plot(bootstrap_elo_rating, show_label=False) | |
with gr.Column(): | |
gr.Markdown( | |
"#### Figure 4: Average Win Rate Against All Other Models (Assuming Uniform Sampling and No Ties)" | |
) | |
plot_4 = gr.Plot(average_win_rate_bar, show_label=False) | |
else: | |
pass | |
leader_component_values[:] = [md, p1, p2, p3, p4] | |
""" | |
with gr.Row(): | |
with gr.Column(): | |
gr.Markdown( | |
"#### Figure 1: Fraction of Model A Wins for All Non-tied A vs. B Battles" | |
) | |
plot_1 = gr.Plot(p1, show_label=False) | |
with gr.Column(): | |
gr.Markdown( | |
"#### Figure 2: Battle Count for Each Combination of Models (without Ties)" | |
) | |
plot_2 = gr.Plot(p2, show_label=False) | |
with gr.Row(): | |
with gr.Column(): | |
gr.Markdown( | |
"#### Figure 3: Bootstrap of Elo Estimates (1000 Rounds of Random Sampling)" | |
) | |
plot_3 = gr.Plot(p3, show_label=False) | |
with gr.Column(): | |
gr.Markdown( | |
"#### Figure 4: Average Win Rate Against All Other Models (Assuming Uniform Sampling and No Ties)" | |
) | |
plot_4 = gr.Plot(p4, show_label=False) | |
""" | |
from .utils import acknowledgment_md | |
gr.Markdown(acknowledgment_md) | |
# return [md_1, plot_1, plot_2, plot_3, plot_4] | |
return [md_1] |