davidpomerenke's picture
Upload from GitHub Actions: Get more results, compute average based on all tasks
98c6811 verified
raw
history blame
5.11 kB
import json
import os
import numpy as np
import pandas as pd
import uvicorn
from countries import make_country_table
from fastapi import FastAPI, Request
from fastapi.middleware.cors import CORSMiddleware
from fastapi.middleware.gzip import GZipMiddleware
from fastapi.responses import JSONResponse
from fastapi.staticfiles import StaticFiles
scores = pd.read_json("results.json")
languages = pd.read_json("languages.json")
models = pd.read_json("models.json")
def mean(lst):
return sum(lst) / len(lst) if lst else None
task_metrics = [
"translation_from_bleu",
"translation_to_bleu",
"classification_accuracy",
"mmlu_accuracy",
"arc_accuracy",
"truthfulqa_accuracy",
"mgsm_accuracy",
]
def compute_normalized_average(df, metrics):
"""Compute average of min-max normalized metric columns."""
normalized_df = df[metrics].copy()
for col in metrics:
if col in normalized_df.columns:
col_min = normalized_df[col].min()
col_max = normalized_df[col].max()
if col_max > col_min: # Avoid division by zero
normalized_df[col] = (normalized_df[col] - col_min) / (col_max - col_min)
else:
normalized_df[col] = 0 # If all values are the same, set to 0
return normalized_df.mean(axis=1, skipna=False)
def make_model_table(df, models):
df = (
df.groupby(["model", "task", "metric"])
.agg({"score": "mean", "bcp_47": "nunique"})
.reset_index()
)
df["task_metric"] = df["task"] + "_" + df["metric"]
df = df.drop(columns=["task", "metric"])
df = df.pivot(index="model", columns="task_metric", values="score")
for metric in task_metrics:
if metric not in df.columns:
df[metric] = np.nan
df["average"] = compute_normalized_average(df, task_metrics)
df = df.sort_values(by="average", ascending=False).reset_index()
df = pd.merge(df, models, left_on="model", right_on="id", how="left")
df["rank"] = df.index + 1
df = df[
[
"rank",
"model",
"name",
"provider_name",
"hf_id",
"creation_date",
"size",
"type",
"license",
"cost",
"average",
*task_metrics,
]
]
return df
def make_language_table(df, languages):
df = (
df.groupby(["bcp_47", "task", "metric"])
.agg({"score": "mean", "model": "nunique"})
.reset_index()
)
df["task_metric"] = df["task"] + "_" + df["metric"]
df = df.drop(columns=["task", "metric"])
df = df.pivot(index="bcp_47", columns="task_metric", values="score").reset_index()
for metric in task_metrics:
if metric not in df.columns:
df[metric] = np.nan
df["average"] = compute_normalized_average(df, task_metrics)
df = pd.merge(languages, df, on="bcp_47", how="outer")
df = df.sort_values(by="speakers", ascending=False)
df = df[
[
"bcp_47",
"language_name",
"autonym",
"speakers",
"family",
"average",
"in_benchmark",
*task_metrics,
]
]
return df
app = FastAPI()
app.add_middleware(CORSMiddleware, allow_origins=["*"])
app.add_middleware(GZipMiddleware, minimum_size=1000)
def serialize(df):
return df.replace({np.nan: None}).to_dict(orient="records")
@app.post("/api/data")
async def data(request: Request):
body = await request.body()
data = json.loads(body)
selected_languages = data.get("selectedLanguages", {})
df = scores.groupby(["model", "bcp_47", "task", "metric"]).mean().reset_index()
# lang_results = pd.merge(languages, lang_results, on="bcp_47", how="outer")
language_table = make_language_table(df, languages)
datasets_df = pd.read_json("datasets.json")
if selected_languages:
# the filtering is only applied for the model table and the country data
df = df[df["bcp_47"].isin(lang["bcp_47"] for lang in selected_languages)]
if len(df) == 0:
model_table = pd.DataFrame()
countries = pd.DataFrame()
else:
model_table = make_model_table(df, models)
countries = make_country_table(make_language_table(df, languages))
all_tables = {
"model_table": serialize(model_table),
"language_table": serialize(language_table),
"dataset_table": serialize(datasets_df),
"countries": serialize(countries),
}
return JSONResponse(content=all_tables)
# Only serve static files if build directory exists (production mode)
if os.path.exists("frontend/build"):
app.mount("/", StaticFiles(directory="frontend/build", html=True), name="frontend")
else:
print("πŸ§ͺ Development mode: frontend/build directory not found")
print("🌐 Frontend should be running on http://localhost:3000")
print("πŸ“‘ API available at http://localhost:8000/api/data")
if __name__ == "__main__":
uvicorn.run(app, host="0.0.0.0", port=int(os.environ.get("PORT", 8000)))