Tom Aarsen
Rename "Submit" to "Filter"
37c51f7
raw
history blame
No virus
7.52 kB
import os
import gradio as gr
import pandas as pd
import plotly.express as px
from apscheduler.schedulers.background import BackgroundScheduler
from src.assets.text_content import TITLE, INTRODUCTION_TEXT, SINGLE_A100_TEXT, CITATION_BUTTON_LABEL, CITATION_BUTTON_TEXT
from src.utils import restart_space, load_dataset_repo, make_clickable_model, make_clickable_score, num_to_str
from src.assets.css_html_js import custom_css
LLM_PERF_LEADERBOARD_REPO = "optimum/llm-perf-leaderboard"
LLM_PERF_DATASET_REPO = "optimum/llm-perf-dataset"
OPTIMUM_TOKEN = os.environ.get("OPTIMUM_TOKEN", None)
COLUMNS_MAPPING = {
"model": "Model πŸ€—",
"backend.name": "Backend 🏭",
"backend.torch_dtype": "Load Dtype πŸ“₯",
"num_parameters": "#Parameters πŸ“",
"forward.peak_memory(MB)": "Peak Memory (MB) ⬇️",
"generate.throughput(tokens/s)": "Throughput (tokens/s) ⬆️",
"average": "Average Open LLM Score ⬆️",
}
COLUMNS_DATATYPES = ["markdown", "str", "str",
"number", "number", "number", "markdown"]
SORTING_COLUMN = ["Throughput (tokens/s) ⬆️"]
llm_perf_dataset_repo = load_dataset_repo(LLM_PERF_DATASET_REPO, OPTIMUM_TOKEN)
def get_benchmark_df(benchmark="1xA100-80GB"):
if llm_perf_dataset_repo:
llm_perf_dataset_repo.git_pull()
# load
bench_df = pd.read_csv(
f"./llm-perf-dataset/reports/{benchmark}.csv")
scores_df = pd.read_csv(
f"./llm-perf-dataset/reports/additional_data.csv")
bench_df = bench_df.merge(scores_df, on="model", how="left")
return bench_df
def get_benchmark_table(bench_df):
# filter
bench_df = bench_df[list(COLUMNS_MAPPING.keys())]
# rename
bench_df.rename(columns=COLUMNS_MAPPING, inplace=True)
# sort
bench_df.sort_values(by=SORTING_COLUMN, ascending=False, inplace=True)
# transform
bench_df["Model πŸ€—"] = bench_df["Model πŸ€—"].apply(make_clickable_model)
bench_df["Average Open LLM Score ⬆️"] = bench_df["Average Open LLM Score ⬆️"].apply(
make_clickable_score)
bench_df["#Parameters πŸ“"] = bench_df["#Parameters πŸ“"].apply(num_to_str)
return bench_df
def get_benchmark_plot(bench_df):
# untill falcon gets fixed / natively supported
bench_df = bench_df[bench_df["generate.latency(s)"] < 100]
fig = px.scatter(
bench_df, x="generate.latency(s)", y="average",
color='model_type', symbol='backend.name', size='forward.peak_memory(MB)',
custom_data=['model', 'backend.name', 'backend.torch_dtype',
'forward.peak_memory(MB)', 'generate.throughput(tokens/s)'],
symbol_sequence=['triangle-up', 'circle'],
# as many distinct colors as there are model_type,backend.name couples
color_discrete_sequence=px.colors.qualitative.Light24,
)
fig.update_layout(
title={
'text': "Model Score vs. Latency vs. Memory",
'y': 0.95, 'x': 0.5,
'xanchor': 'center',
'yanchor': 'top'
},
xaxis_title="Per 1000 Tokens Latency (s)",
yaxis_title="Average Open LLM Score",
legend_title="Model Type and Backend",
width=1200,
height=600,
# legend=dict(
# orientation="h",
# yanchor="bottom",
# y=-0.35,
# xanchor="center",
# x=0.5
# )
)
fig.update_traces(
hovertemplate="<br>".join([
"Model: %{customdata[0]}",
"Backend: %{customdata[1]}",
"Datatype: %{customdata[2]}",
"Peak Memory (MB): %{customdata[3]}",
"Throughput (tokens/s): %{customdata[4]}",
"Per 1000 Tokens Latency (s): %{y}",
"Average Open LLM Score: %{x}",
])
)
return fig
def filter_query(text, backends, datatypes, threshold, benchmark="1xA100-80GB"):
raw_df = get_benchmark_df(benchmark=benchmark)
filtered_df = raw_df[
raw_df["model"].str.lower().str.contains(text.lower()) &
raw_df["backend.name"].isin(backends) &
raw_df["backend.torch_dtype"].isin(datatypes) &
(raw_df["average"] >= threshold)
]
filtered_table = get_benchmark_table(filtered_df)
filtered_plot = get_benchmark_plot(filtered_df)
return filtered_table, filtered_plot
# Dataframes
single_A100_df = get_benchmark_df(benchmark="1xA100-80GB")
single_A100_table = get_benchmark_table(single_A100_df)
single_A100_plot = get_benchmark_plot(single_A100_df)
# Demo interface
demo = gr.Blocks(css=custom_css)
with demo:
# leaderboard title
gr.HTML(TITLE)
# introduction text
gr.Markdown(INTRODUCTION_TEXT, elem_classes="markdown-text")
# control panel title
gr.HTML("<h2>Control Panel πŸŽ›οΈ</h2>")
# control panel interface
with gr.Row():
search_bar = gr.Textbox(
label="Model πŸ€—",
info="πŸ” Search for a model name",
elem_id="search-bar",
)
backend_checkboxes = gr.CheckboxGroup(
label="Backends 🏭",
choices=["pytorch", "onnxruntime"],
value=["pytorch", "onnxruntime"],
info="β˜‘οΈ Select the backends",
elem_id="backend-checkboxes",
)
datatype_checkboxes = gr.CheckboxGroup(
label="Datatypes πŸ“₯",
choices=["float32", "float16"],
value=["float32", "float16"],
info="β˜‘οΈ Select the load datatypes",
elem_id="datatype-checkboxes",
)
threshold_slider = gr.Slider(
label="Average Open LLM Score πŸ“ˆ",
info="🎚️ Slide to minimum Average Open LLM score",
value=0.0,
elem_id="threshold-slider",
)
with gr.Row():
submit_button = gr.Button(
value="Filter πŸš€",
elem_id="submit-button",
)
# leaderboard tabs
with gr.Tabs(elem_classes="tab-buttons") as tabs:
with gr.TabItem("πŸ–₯️ A100-80GB Leaderboard πŸ†", id=0):
gr.HTML(SINGLE_A100_TEXT)
# Original leaderboard table
single_A100_leaderboard = gr.components.Dataframe(
value=single_A100_table,
datatype=COLUMNS_DATATYPES,
headers=list(COLUMNS_MAPPING.values()),
elem_id="1xA100-table",
)
with gr.TabItem("πŸ–₯️ A100-80GB Plot πŸ“Š", id=1):
# Original leaderboard plot
gr.HTML(SINGLE_A100_TEXT)
# Original leaderboard plot
single_A100_plotly = gr.components.Plot(
value=single_A100_plot,
elem_id="1xA100-plot",
show_label=False,
)
submit_button.click(
filter_query,
[search_bar, backend_checkboxes, datatype_checkboxes, threshold_slider],
[single_A100_leaderboard, single_A100_plotly],
)
with gr.Row():
with gr.Accordion("πŸ“™ Citation", open=False):
citation_button = gr.Textbox(
value=CITATION_BUTTON_TEXT,
label=CITATION_BUTTON_LABEL,
elem_id="citation-button",
).style(show_copy_button=True)
# Restart space every hour
scheduler = BackgroundScheduler()
scheduler.add_job(restart_space, "interval", seconds=3600,
args=[LLM_PERF_LEADERBOARD_REPO, OPTIMUM_TOKEN])
scheduler.start()
# Launch demo
demo.queue(concurrency_count=40).launch()