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import asyncio
import gradio as gr
import pandas as pd
import src.constants as constants
from src.hub import glob, load_json_file
def fetch_result_paths():
path = f"{constants.RESULTS_DATASET_ID}/**/**/*.json"
return glob(path)
def sort_result_paths_per_model(paths):
from collections import defaultdict
d = defaultdict(list)
for path in paths:
model_id, _ = path[len(constants.RESULTS_DATASET_ID) + 1 :].rsplit("/", 1)
d[model_id].append(path)
return {model_id: sorted(paths) for model_id, paths in d.items()}
def update_load_results_component():
return (gr.Button("Load", interactive=True),) * 2
async def load_results_dataframe(model_id, result_paths_per_model=None):
if not model_id or not result_paths_per_model:
return
result_paths = result_paths_per_model[model_id]
results = await asyncio.gather(*[load_json_file(path) for path in result_paths])
data = {"results": {}, "configs": {}}
for result in results:
data["results"].update(result["results"])
data["configs"].update(result["configs"])
model_name = result.get("model_name", "Model")
df = pd.json_normalize([data])
# df.columns = df.columns.str.split(".") # .split return a list instead of a tuple
return df.set_index(pd.Index([model_name])).reset_index()
async def load_results_dataframes(*model_ids, result_paths_per_model=None):
result = await asyncio.gather(
*[load_results_dataframe(model_id, result_paths_per_model) for model_id in model_ids]
)
return result
def concat_results(dfs):
dfs = [df.set_index("index") for df in dfs if "index" in df.columns]
if dfs:
return pd.concat(dfs)
def display_results(task, hide_std_errors, show_only_differences, *dfs):
df = concat_results(dfs)
if df is None:
return None, None
df = df.T.rename_axis(columns=None)
return (
display_tab("results", df, task, hide_std_errors=hide_std_errors),
display_tab("configs", df, task, show_only_differences=show_only_differences),
)
def display_tab(tab, df, task, hide_std_errors=True, show_only_differences=False):
if show_only_differences:
any_difference = df.ne(df.iloc[:, 0], axis=0).any(axis=1)
df = df.style.format(escape="html", na_rep="")
# Hide rows
df.hide(
[
row
for row in df.index
if (
not row.startswith(f"{tab}.")
or row.startswith(f"{tab}.leaderboard.")
or row.endswith(".alias")
or (
not row.startswith(f"{tab}.{task}")
if task != "All"
else row.startswith(f"{tab}.leaderboard_arc_challenge")
)
# Hide std errors
or (hide_std_errors and row.endswith("_stderr,none"))
# Hide non-different rows
or (show_only_differences and not any_difference[row])
)
],
axis="index",
)
# Color metric result cells
idx = pd.IndexSlice
colored_rows = idx[
[
row
for row in df.index
if row.endswith("acc,none") or row.endswith("acc_norm,none") or row.endswith("exact_match,none")
]
] # Apply only on numeric cells, otherwise the background gradient will not work
subset = idx[colored_rows, idx[:]]
df.background_gradient(cmap="PiYG", vmin=0, vmax=1, subset=subset, axis=None)
# Format index values: remove prefix and suffix
start = len(f"{tab}.leaderboard_") if task == "All" else len(f"{tab}.{task} ")
df.format_index(lambda idx: idx[start:].removesuffix(",none"), axis="index")
return df.to_html()
def update_tasks_component():
return (
gr.Radio(
["All"] + list(constants.TASKS.values()),
label="Tasks",
info="Evaluation tasks to be displayed",
value="All",
visible=True,
),
) * 2
def clear_results():
# model_id_1, model_id_2, dataframe_1, dataframe_2, load_results_btn, load_configs_btn, results_task, configs_task
return (
None,
None,
None,
None,
*(gr.Button("Load", interactive=False),) * 2,
*(
gr.Radio(
["All"] + list(constants.TASKS.values()),
label="Tasks",
info="Evaluation tasks to be displayed",
value="All",
visible=False,
),
)
* 2,
)
def display_loading_message_for_results():
return ("<h3 style='text-align: center;'>Loading...</h3>",) * 2
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