Junming Yang
[Leaderboard] Support leaderboard dynamic avg score calculation (#193)
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import copy as cp
import json
from collections import defaultdict
from urllib.request import urlopen
import gradio as gr
import numpy as np
import pandas as pd
from meta_data import META_FIELDS, URL
def listinstr(lst, s):
assert isinstance(lst, list)
for item in lst:
if item in s:
return True
return False
def load_results():
data = json.loads(urlopen(URL).read())
return data
def nth_large(val, vals):
return sum([1 for v in vals if v > val]) + 1
def format_timestamp(timestamp):
date = timestamp[:2] + '.' + timestamp[2:4] + '.' + timestamp[4:6]
time = timestamp[6:8] + ':' + timestamp[8:10] + ':' + timestamp[10:12]
return date + ' ' + time
def model_size_flag(sz, FIELDS):
if pd.isna(sz) and 'Unknown' in FIELDS:
return True
if pd.isna(sz):
return False
if '<10B' in FIELDS and sz < 10:
return True
if '10B-20B' in FIELDS and sz >= 10 and sz < 20:
return True
if '20B-40B' in FIELDS and sz >= 20 and sz < 40:
return True
if '>40B' in FIELDS and sz >= 40:
return True
return False
def model_type_flag(line, FIELDS):
if 'OpenSource' in FIELDS and line['OpenSource'] == 'Yes':
return True
if 'API' in FIELDS and line['OpenSource'] == 'No' and line['Verified'] == 'Yes':
return True
if 'Proprietary' in FIELDS and line['OpenSource'] == 'No' and line['Verified'] == 'No':
return True
return False
def BUILD_L1_DF(results, fields):
check_box = {}
check_box['essential'] = ['Method', 'Parameters (B)', 'Language Model', 'Vision Model']
# revise there to set defualt dataset
defualt_dataset = ['MMBench_TEST_EN', 'MMStar', 'MME', 'MMMU_VAL', 'MathVista', 'OCRBench', 'MMVet']
check_box['required'] = ['Avg Score', 'Avg Rank'] + defualt_dataset
check_box['avg'] = ['Avg Score', 'Avg Rank']
check_box['all'] = check_box['avg'] + fields
type_map = defaultdict(lambda: 'number')
type_map['Method'] = 'html'
type_map['Language Model'] = type_map['Vision Model'] = type_map['OpenSource'] = type_map['Verified'] = 'str'
check_box['type_map'] = type_map
res = generate_table(results, fields)
df = pd.DataFrame(res)
df = df.sort_values('Avg Score')
df = df.iloc[::-1]
return df, check_box
def BUILD_L2_DF(results, dataset):
res = defaultdict(list)
fields = list(list(results.values())[0][dataset].keys())
non_overall_fields = [x for x in fields if 'Overall' not in x]
overall_fields = [x for x in fields if 'Overall' in x]
if dataset == 'MME':
non_overall_fields = [x for x in non_overall_fields if not listinstr(['Perception', 'Cognition'], x)]
overall_fields = overall_fields + ['Perception', 'Cognition']
if dataset == 'OCRBench':
non_overall_fields = [x for x in non_overall_fields if not listinstr(['Final Score'], x)]
overall_fields = ['Final Score']
for m in results:
item = results[m]
if dataset not in item:
continue
meta = item['META']
for k in META_FIELDS:
if k == 'Parameters (B)':
param = meta['Parameters']
res[k].append(float(param.replace('B', '')) if param != '' else None)
elif k == 'Method':
name, url = meta['Method']
res[k].append(f'<a href="{url}">{name}</a>')
else:
res[k].append(meta[k])
fields = [x for x in fields]
for d in non_overall_fields:
res[d].append(item[dataset][d])
for d in overall_fields:
res[d].append(item[dataset][d])
df = pd.DataFrame(res)
all_fields = overall_fields + non_overall_fields
# Use the first 5 non-overall fields as required fields
required_fields = overall_fields if len(overall_fields) else non_overall_fields[:5]
if 'Overall' in overall_fields:
df = df.sort_values('Overall')
df = df.iloc[::-1]
check_box = {}
check_box['essential'] = ['Method', 'Parameters (B)', 'Language Model', 'Vision Model']
check_box['required'] = required_fields
check_box['all'] = all_fields
type_map = defaultdict(lambda: 'number')
type_map['Method'] = 'html'
type_map['Language Model'] = type_map['Vision Model'] = type_map['OpenSource'] = type_map['Verified'] = 'str'
check_box['type_map'] = type_map
return df, check_box
def generate_table(results, fields, df=None):
res = defaultdict(list)
for i, m in enumerate(results):
item = results[m]
meta = item['META']
for k in META_FIELDS:
if k == 'Parameters (B)':
param = meta['Parameters']
res[k].append(float(param.replace('B', '')) if param != '' else None)
elif k == 'Method':
name, url = meta['Method']
res[k].append(f'<a href="{url}">{name}</a>')
res['name'].append(name)
else:
res[k].append(meta[k])
scores, ranks = [], []
for d in fields:
key_name = 'Overall' if d != 'OCRBench' else 'Final Score'
res[d].append(item[d][key_name])
if d == 'MME':
scores.append(item[d][key_name] / 28)
elif d == 'OCRBench':
scores.append(item[d][key_name] / 10)
else:
scores.append(item[d][key_name])
ranks.append(nth_large(item[d][key_name], [x[d][key_name] for x in results.values()]))
res['Avg Score'].append(round(np.mean(scores), 1))
res['Avg Rank'].append(round(np.mean(ranks), 2))
if df is None:
return res
else:
res = pd.DataFrame(res)
df.set_index('name', inplace=True)
res.set_index('name', inplace=True)
df.update(res)
df = df.sort_values('Avg Score')
df = df.iloc[::-1]
return df