File size: 12,065 Bytes
3c75092 e280a03 3c75092 |
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60 61 62 63 64 65 66 67 68 69 70 71 72 73 74 75 76 77 78 79 80 81 82 83 84 85 86 87 88 89 90 91 92 93 94 95 96 97 98 99 100 101 102 103 104 105 106 107 108 109 110 111 112 113 114 115 116 117 118 119 120 121 122 123 124 125 126 127 128 129 130 131 132 133 134 135 136 137 138 139 140 141 142 143 144 145 146 147 148 149 150 151 152 153 154 155 156 157 158 159 160 161 162 163 164 165 166 167 168 169 170 171 172 173 174 175 176 177 178 179 180 181 182 183 184 185 186 187 188 189 190 191 192 193 194 195 196 197 198 199 200 201 202 203 204 205 206 207 208 209 210 211 212 213 214 215 216 217 218 219 220 221 222 223 224 225 226 227 228 229 230 231 232 233 234 235 236 237 238 239 |
import json
import pandas as pd
from collections import defaultdict
import gradio as gr
import copy as cp
import numpy as np
def listinstr(lst, s):
assert isinstance(lst, list)
for item in lst:
if item in s:
return True
return False
# CONSTANTS-URL
URL = "http://opencompass.openxlab.space/utils/OpenVLM.json"
VLMEVALKIT_README = 'https://raw.githubusercontent.com/open-compass/VLMEvalKit/main/README.md'
# CONSTANTS-CITATION
CITATION_BUTTON_TEXT = r"""@misc{2023opencompass,
title={OpenCompass: A Universal Evaluation Platform for Foundation Models},
author={OpenCompass Contributors},
howpublished = {\url{https://github.com/open-compass/opencompass}},
year={2023}
}"""
CITATION_BUTTON_LABEL = "Copy the following snippet to cite these results"
# CONSTANTS-TEXT
LEADERBORAD_INTRODUCTION = """# OpenVLM Leaderboard
### Welcome to the OpenVLM Leaderboard! On this leaderboard we share the evaluation results of VLMs obtained by the OpenSource Framework [**VLMEvalKit**](https://github.com/open-compass/VLMEvalKit) 🏆
### Currently, OpenVLM Leaderboard covers {} different VLMs (including GPT-4v, Gemini, QwenVLPlus, LLaVA, etc.) and {} different multi-modal benchmarks.
This leaderboard was last updated: {}.
"""
# CONSTANTS-FIELDS
META_FIELDS = ['Method', 'Parameters (B)', 'Language Model', 'Vision Model', 'OpenSource', 'Verified']
MAIN_FIELDS = ['MMBench_TEST_EN', 'MMBench_TEST_CN', 'CCBench', 'MME', 'SEEDBench_IMG', 'MMVet', 'MMMU_VAL', 'MathVista', 'HallusionBench', 'LLaVABench']
MMBENCH_FIELDS = ['MMBench_TEST_EN', 'MMBench_DEV_EN', 'MMBench_TEST_CN', 'MMBench_DEV_CN', 'CCBench']
MODEL_SIZE = ['<10B', '10B-20B', '20B-40B', '>40B', 'Unknown']
MODEL_TYPE = ['API', 'OpenSource', 'Proprietary']
# The README file for each benchmark
LEADERBOARD_MD = {}
LEADERBOARD_MD['MAIN'] = """
## Main Evaluation Results
- Avg Score: The average score on all VLM Benchmarks (normalized to 0 - 100, the higher the better).
- Avg Rank: The average rank on all VLM Benchmarks (the lower the better).
- The overall evaluation results on 10 VLM benchmarks, sorted by the ascending order of Avg Rank.
"""
LEADERBOARD_MD['SEEDBench_IMG'] = """
## SEEDBench_IMG Scores (Prefetch / ChatGPT Answer Extraction / Official Leaderboard)
- **Overall**: The overall accuracy across all questions with **ChatGPT answer matching**.
- **Overall (prefetch)**: The accuracy when using exact matching for evaluation.
- **Overall (official)**: SEEDBench_IMG acc on the official leaderboard (if applicable).
"""
LEADERBOARD_MD['MMVet'] = """
## MMVet Evaluation Results
- In MMVet Evaluation, we use GPT-4-Turbo (gpt-4-1106-preview) as the judge LLM to assign scores to the VLM outputs. We only perform the evaluation once due to the limited variance among results of multiple evaluation pass originally reported.
- No specific prompt template adopted for **ALL VLMs**.
- We also provide performance on the [**Official Leaderboard**](https://paperswithcode.com/sota/visual-question-answering-on-mm-vet) for models that are applicable. Those results are obtained with GPT-4-0314 evaluator (which has been deperacted for new users).
"""
LEADERBOARD_MD['MMMU_VAL'] = """
## MMMU Validation Evaluation Results
- For MMMU, we support the evaluation of the `dev` (150 samples) and `validation` (900 samples) set. Here we only report the results on the `validation` set.
- **Answer Inference:**
- For models with `interleave_generate` interface (accept interleaved images & texts as inputs), all testing samples can be inferred. **`interleave_generate` is adopted for inference.**
- For models without `interleave_generate` interface, samples with more than one images are skipped (42 out of 1050, directly count as wrong). **`generate` is adopted for inference.**
- **Evaluation**:
- MMMU include two types of questions: **multi-choice questions** & **open-ended QA**.
- For **open-ended QA (62/1050)**, we re-formulate it as multi-choice questions: `{'question': 'QQQ', 'answer': 'AAA'} -> {'question': 'QQQ', 'A': 'AAA', 'B': 'Other Answers', 'answer': 'A'}`, and then adopt the same evaluation paradigm for **multi-choice questions**.
- For **multi-choice questions (988/1050)**, we use **GPT-3.5-Turbo-0613** for matching prediction with options if heuristic matching does not work.
"""
LEADERBOARD_MD['MathVista'] = """
## MMMU TestMini Evaluation Results
- We report the evaluation results on MathVista **TestMini**, which include 1000 test samples.
- We adopt `GPT-4-Turbo (1106)` as the answer extractor when we failed to extract the answer with heuristic matching.
- The performance of **Human (High school)** and **Random Choice** are copied from the official leaderboard.
**Category Definitions:** **FQA:** figure QA, **GPS:** geometry problem solving, **MWP:** math word problem, **TQA:** textbook QA, **VQA:** visual QA, **ALG:** algebraic, **ARI:** arithmetic, **GEO:** geometry, **LOG:** logical , **NUM:** numeric, **SCI:** scientific, **STA:** statistical.
"""
LEADERBOARD_MD['HallusionBench'] = """
[**HallusionBench**](https://github.com/tianyi-lab/HallusionBench) is a benchmark to evaluate hallucination of VLMs. It asks a set of visual questions with one original image and one modified image (the answers for a question can be different, considering the image content).
**Examples in HallusionBench:**
| Original Figure | Modified Figure |
| ------------------------------------------------------------ | ------------------------------------------------------------ |
| ![](http://opencompass.openxlab.space/utils/Hallu0.png) | ![](http://opencompass.openxlab.space/utils/Hallu1.png) |
| **Q1.** Is the right orange circle the same size as the left orange circle? **A1. Yes** | **Q1.** Is the right orange circle the same size as the left orange circle? **A1. No** |
| **Q2.** Is the right orange circle larger than the left orange circle? **A2. No** | **Q2.** Is the right orange circle larger than the left orange circle? **A2. Yes** |
| **Q3.** Is the right orange circle smaller than the left orange circle? **A3. No** | **Q3.** Is the right orange circle smaller than the left orange circle? **A3. No** |
**Metrics**:
>- aAcc: The overall accuracy of **all** atomic questions.
>
>- qAcc: The mean accuracy of unique **questions**. One question can be asked multiple times with different figures, we consider VLM correctly solved a unique question only if it succeeds in all <question, figure> pairs for this unique question.
>- fAcc: The mean accuracy of all **figures**. One figure is associated with multiple questions, we consider VLM correct on a figure only if it succeeds to solve all questions of this figure.
**Evaluation Setting**:
> 1. **No-visual** Questions (questions asked without the associated figure) in HallusionBench are **skipped** during evaluation.
> 2. When we failed to extract Yes / No from the VLM prediction, we adopt **GPT-3.5-Turbo-0613** as the answer extractor.
> 3. We report aAcc, qAcc, and fAcc for all evaluated VLMs.
## HallusionBench Evaluation Results
"""
LEADERBOARD_MD['LLaVABench'] = """
## LLaVABench Evaluation Results
- In LLaVABench Evaluation, we use GPT-4-Turbo (gpt-4-1106-preview) as the judge LLM to assign scores to the VLM outputs. We only perform the evaluation once due to the limited variance among results of multiple evaluation pass originally reported.
- No specific prompt template adopted for **ALL VLMs**.
- We also include the official results (obtained by gpt-4-0314) for applicable models.
"""
from urllib.request import urlopen
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):
return timestamp[:2] + '.' + timestamp[2:4] + '.' + timestamp[4:6] + ' ' + timestamp[6:8] + ':' + timestamp[8:10] + ':' + timestamp[10:12]
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):
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>')
else:
res[k].append(meta[k])
scores, ranks = [], []
for d in fields:
res[d].append(item[d]['Overall'])
if d == 'MME':
scores.append(item[d]['Overall'] / 28)
else:
scores.append(item[d]['Overall'])
ranks.append(nth_large(item[d]['Overall'], [x[d]['Overall'] for x in results.values()]))
res['Avg Score'].append(round(np.mean(scores), 1))
res['Avg Rank'].append(round(np.mean(ranks), 2))
df = pd.DataFrame(res)
df = df.sort_values('Avg Rank')
check_box = {}
check_box['essential'] = ['Method', 'Parameters (B)', 'Language Model', 'Vision Model']
check_box['required'] = ['Avg Score', 'Avg Rank']
check_box['all'] = check_box['required'] + ['OpenSource', 'Verified'] + 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 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']
for m in 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>')
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)
df = df.sort_values('Overall')
df = df.iloc[::-1]
check_box = {}
check_box['essential'] = ['Method', 'Parameters (B)', 'Language Model', 'Vision Model']
check_box['required'] = overall_fields
check_box['all'] = non_overall_fields + overall_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 |