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Data loading utilities for the leaderboard.
Loads data from HuggingFace dataset and integrates provider logos.
"""
import json
import os
import pandas as pd
from datasets import load_dataset
def load_provider_logos():
"""
Load provider logos from data/provider_logos.json
Returns:
dict: Provider name -> logo URL mapping
"""
logos_path = os.path.join(
os.path.dirname(__file__), "..", "data", "provider_logos.json"
)
try:
with open(logos_path, "r") as f:
logos = json.load(f)
return logos
except FileNotFoundError:
print(f"Warning: Provider logos file not found at {logos_path}")
return {}
except json.JSONDecodeError as e:
print(f"Warning: Could not parse provider logos JSON: {e}")
return {}
def format_params(param_billions):
"""
Format parameter count for display.
Args:
param_billions: Parameter count in billions (float or None)
Returns:
str: Formatted parameter string (e.g., "72.7B", "Unknown")
"""
if pd.isna(param_billions) or param_billions is None:
return "Unknown"
if param_billions >= 1000:
return f"{param_billions:.0f}B"
elif param_billions >= 100:
return f"{param_billions:.0f}B"
elif param_billions >= 10:
return f"{param_billions:.1f}B"
else:
return f"{param_billions:.2f}B"
def load_leaderboard_data():
"""
Load leaderboard data from HuggingFace dataset.
Returns:
pandas.DataFrame: Complete leaderboard data with:
- All model metadata
- All benchmark scores
- Provider logos
- Formatted parameters
"""
print("Loading leaderboard data from HuggingFace dataset...")
# Load dataset from HF
try:
ds = load_dataset("OpenEvals/leaderboard-data", split="train")
df = ds.to_pandas()
print(f"✓ Loaded {len(df)} models from dataset")
except Exception as e:
print(f"✗ Error loading dataset: {e}")
raise
# Load provider logos
logos = load_provider_logos()
print(f"✓ Loaded {len(logos)} provider logos")
# Add logo URLs to dataframe
df["logo_url"] = df["provider"].map(logos)
# Format parameters for display
df["parameters_display"] = df["parameters_billions"].apply(format_params)
# Sort by model name by default
df = df.sort_values("model_name").reset_index(drop=True)
print(f"✓ Data loaded successfully: {len(df)} models, {df.columns.size} columns")
return df
def get_benchmark_columns():
"""
Get list of all benchmark score column names.
Returns:
list: Column names for benchmark scores
"""
return [
"gsm8k_score",
"mmluPro_score",
"gpqa_score",
"hle_score",
"olmOcr_score",
"sweVerified_score",
"swePro_score",
"aime2026_score",
"terminalBench_score",
"evasionBench_score",
"hmmt2026_score",
]
def get_benchmark_info():
"""
Get metadata about each benchmark.
Returns:
dict: Benchmark key -> metadata mapping
"""
return {
"gsm8k": {
"name": "GSM8K",
"full_name": "Grade School Math 8K",
"category": "math",
"color": "#7c3aed",
"url": "https://huggingface.co/datasets/openai/gsm8k",
},
"mmluPro": {
"name": "MMLU-Pro",
"full_name": "Massive Multi-task Language Understanding Pro",
"category": "knowledge",
"color": "#2563eb",
"url": "https://huggingface.co/datasets/TIGER-Lab/MMLU-Pro",
},
"gpqa": {
"name": "GPQA◆",
"full_name": "PhD-level Expert Questions",
"category": "knowledge",
"color": "#2563eb",
"url": "https://huggingface.co/datasets/Idavidrein/gpqa",
},
"hle": {
"name": "HLE",
"full_name": "Humanity's Last Exam",
"category": "knowledge",
"color": "#2563eb",
"url": "https://lastexam.ai",
},
"olmOcr": {
"name": "olmOCR",
"full_name": "OCR Evaluation Benchmark",
"category": "vision",
"color": "#db2777",
"url": "https://huggingface.co/datasets/allenai/olmOCR-bench",
},
"sweVerified": {
"name": "SWE-V",
"full_name": "SWE-bench Verified",
"category": "coding",
"color": "#059669",
"url": "https://www.swebench.com",
},
"swePro": {
"name": "SWE-Pro",
"full_name": "SWE-bench Pro",
"category": "coding",
"color": "#059669",
"url": "https://scale.com/leaderboard/swe_bench_pro_public",
},
"aime2026": {
"name": "AIME 2026",
"full_name": "American Invitational Mathematics Examination 2026",
"category": "math",
"color": "#7c3aed",
"url": "https://matharena.ai/?comp=aime--aime_2026",
},
"terminalBench": {
"name": "TB 2.0",
"full_name": "Terminal-Bench 2.0",
"category": "agent",
"color": "#0d9488",
"url": "https://www.tbench.ai/leaderboard/terminal-bench/2.0",
},
"evasionBench": {
"name": "EvasionB",
"full_name": "EvasionBench",
"category": "language",
"color": "#ea580c",
"url": "https://huggingface.co/datasets/FutureMa/EvasionBench",
},
"hmmt2026": {
"name": "HMMT",
"full_name": "Harvard-MIT Mathematics Tournament Feb 2026",
"category": "math",
"color": "#7c3aed",
"url": "https://matharena.ai/?comp=hmmt--hmmt_feb_2026",
},
}
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