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import json |
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import pandas as pd |
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from collections import defaultdict |
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import gradio as gr |
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import copy as cp |
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import numpy as np |
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from .misc import listinstr |
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URL = "http://opencompass.openxlab.space/utils/OpenVLM.json" |
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VLMEVALKIT_README = 'https://raw.githubusercontent.com/open-compass/VLMEvalKit/main/README.md' |
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CITATION_BUTTON_TEXT = r"""@misc{2023opencompass, |
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title={OpenCompass: A Universal Evaluation Platform for Foundation Models}, |
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author={OpenCompass Contributors}, |
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howpublished = {\url{https://github.com/open-compass/opencompass}}, |
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year={2023} |
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}""" |
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CITATION_BUTTON_LABEL = "Copy the following snippet to cite these results" |
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LEADERBORAD_INTRODUCTION = """# OpenVLM Leaderboard |
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### 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) 🏆 |
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### Currently, OpenVLM Leaderboard covers {} different VLMs (including GPT-4v, Gemini, QwenVLPlus, LLaVA, etc.) and {} different multi-modal benchmarks. |
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This leaderboard was last updated: {}. |
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""" |
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META_FIELDS = ['Method', 'Parameters (B)', 'Language Model', 'Vision Model', 'OpenSource', 'Verified'] |
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MAIN_FIELDS = ['MMBench_TEST_EN', 'MMBench_TEST_CN', 'CCBench', 'MME', 'SEEDBench_IMG', 'MMVet', 'MMMU_VAL', 'MathVista', 'HallusionBench', 'LLaVABench'] |
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MMBENCH_FIELDS = ['MMBench_TEST_EN', 'MMBench_DEV_EN', 'MMBench_TEST_CN', 'MMBench_DEV_CN', 'CCBench'] |
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MODEL_SIZE = ['<10B', '10B-20B', '20B-40B', '>40B', 'Unknown'] |
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MODEL_TYPE = ['API', 'OpenSource', 'Proprietary'] |
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LEADERBOARD_MD = {} |
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LEADERBOARD_MD['MAIN'] = """ |
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## Main Evaluation Results |
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- Avg Score: The average score on all VLM Benchmarks (normalized to 0 - 100, the higher the better). |
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- Avg Rank: The average rank on all VLM Benchmarks (the lower the better). |
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- The overall evaluation results on 10 VLM benchmarks, sorted by the ascending order of Avg Rank. |
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""" |
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LEADERBOARD_MD['SEEDBench_IMG'] = """ |
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## SEEDBench_IMG Scores (Prefetch / ChatGPT Answer Extraction / Official Leaderboard) |
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- **Overall**: The overall accuracy across all questions with **ChatGPT answer matching**. |
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- **Overall (prefetch)**: The accuracy when using exact matching for evaluation. |
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- **Overall (official)**: SEEDBench_IMG acc on the official leaderboard (if applicable). |
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""" |
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LEADERBOARD_MD['MMVet'] = """ |
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## MMVet Evaluation Results |
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- 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. |
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- No specific prompt template adopted for **ALL VLMs**. |
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- 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). |
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""" |
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LEADERBOARD_MD['MMMU_VAL'] = """ |
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## MMMU Validation Evaluation Results |
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- 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. |
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- **Answer Inference:** |
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- For models with `interleave_generate` interface (accept interleaved images & texts as inputs), all testing samples can be inferred. **`interleave_generate` is adopted for inference.** |
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- 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.** |
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- **Evaluation**: |
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- MMMU include two types of questions: **multi-choice questions** & **open-ended QA**. |
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- 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**. |
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- For **multi-choice questions (988/1050)**, we use **GPT-3.5-Turbo-0613** for matching prediction with options if heuristic matching does not work. |
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""" |
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LEADERBOARD_MD['MathVista'] = """ |
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## MMMU TestMini Evaluation Results |
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- We report the evaluation results on MathVista **TestMini**, which include 1000 test samples. |
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- We adopt `GPT-4-Turbo (1106)` as the answer extractor when we failed to extract the answer with heuristic matching. |
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- The performance of **Human (High school)** and **Random Choice** are copied from the official leaderboard. |
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**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. |
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""" |
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LEADERBOARD_MD['HallusionBench'] = """ |
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[**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). |
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**Examples in HallusionBench:** |
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| Original Figure | Modified Figure | |
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| ------------------------------------------------------------ | ------------------------------------------------------------ | |
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| ![](http://opencompass.openxlab.space/utils/Hallu0.png) | ![](http://opencompass.openxlab.space/utils/Hallu1.png) | |
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| **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** | |
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| **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** | |
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| **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** | |
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**Metrics**: |
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>- aAcc: The overall accuracy of **all** atomic questions. |
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> |
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>- 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. |
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>- 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. |
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**Evaluation Setting**: |
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> 1. **No-visual** Questions (questions asked without the associated figure) in HallusionBench are **skipped** during evaluation. |
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> 2. When we failed to extract Yes / No from the VLM prediction, we adopt **GPT-3.5-Turbo-0613** as the answer extractor. |
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> 3. We report aAcc, qAcc, and fAcc for all evaluated VLMs. |
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## HallusionBench Evaluation Results |
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""" |
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LEADERBOARD_MD['LLaVABench'] = """ |
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## LLaVABench Evaluation Results |
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- 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. |
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- No specific prompt template adopted for **ALL VLMs**. |
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- We also include the official results (obtained by gpt-4-0314) for applicable models. |
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""" |
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from urllib.request import urlopen |
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def load_results(): |
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data = json.loads(urlopen(URL).read()) |
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return data |
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def nth_large(val, vals): |
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return sum([1 for v in vals if v > val]) + 1 |
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def format_timestamp(timestamp): |
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return timestamp[:2] + '.' + timestamp[2:4] + '.' + timestamp[4:6] + ' ' + timestamp[6:8] + ':' + timestamp[8:10] + ':' + timestamp[10:12] |
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def model_size_flag(sz, FIELDS): |
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if pd.isna(sz) and 'Unknown' in FIELDS: |
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return True |
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if pd.isna(sz): |
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return False |
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if '<10B' in FIELDS and sz < 10: |
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return True |
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if '10B-20B' in FIELDS and sz >= 10 and sz < 20: |
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return True |
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if '20B-40B' in FIELDS and sz >= 20 and sz < 40: |
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return True |
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if '>40B' in FIELDS and sz >= 40: |
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return True |
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return False |
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def model_type_flag(line, FIELDS): |
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if 'OpenSource' in FIELDS and line['OpenSource'] == 'Yes': |
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return True |
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if 'API' in FIELDS and line['OpenSource'] == 'No' and line['Verified'] == 'Yes': |
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return True |
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if 'Proprietary' in FIELDS and line['OpenSource'] == 'No' and line['Verified'] == 'No': |
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return True |
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return False |
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def BUILD_L1_DF(results, fields): |
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res = defaultdict(list) |
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for i, m in enumerate(results): |
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item = results[m] |
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meta = item['META'] |
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for k in META_FIELDS: |
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if k == 'Parameters (B)': |
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param = meta['Parameters'] |
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res[k].append(float(param.replace('B', '')) if param != '' else None) |
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elif k == 'Method': |
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name, url = meta['Method'] |
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res[k].append(f'<a href="{url}">{name}</a>') |
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else: |
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res[k].append(meta[k]) |
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scores, ranks = [], [] |
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for d in fields: |
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res[d].append(item[d]['Overall']) |
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if d == 'MME': |
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scores.append(item[d]['Overall'] / 28) |
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else: |
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scores.append(item[d]['Overall']) |
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ranks.append(nth_large(item[d]['Overall'], [x[d]['Overall'] for x in results.values()])) |
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res['Avg Score'].append(round(np.mean(scores), 1)) |
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res['Avg Rank'].append(round(np.mean(ranks), 2)) |
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df = pd.DataFrame(res) |
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df = df.sort_values('Avg Rank') |
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check_box = {} |
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check_box['essential'] = ['Method', 'Parameters (B)', 'Language Model', 'Vision Model'] |
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check_box['required'] = ['Avg Score', 'Avg Rank'] |
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check_box['all'] = check_box['required'] + ['OpenSource', 'Verified'] + fields |
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type_map = defaultdict(lambda: 'number') |
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type_map['Method'] = 'html' |
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type_map['Language Model'] = type_map['Vision Model'] = type_map['OpenSource'] = type_map['Verified'] = 'str' |
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check_box['type_map'] = type_map |
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return df, check_box |
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def BUILD_L2_DF(results, dataset): |
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res = defaultdict(list) |
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fields = list(list(results.values())[0][dataset].keys()) |
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non_overall_fields = [x for x in fields if 'Overall' not in x] |
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overall_fields = [x for x in fields if 'Overall' in x] |
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if dataset == 'MME': |
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non_overall_fields = [x for x in non_overall_fields if not listinstr(['Perception', 'Cognition'], x)] |
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overall_fields = overall_fields + ['Perception', 'Cognition'] |
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for m in results: |
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item = results[m] |
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meta = item['META'] |
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for k in META_FIELDS: |
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if k == 'Parameters (B)': |
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param = meta['Parameters'] |
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res[k].append(float(param.replace('B', '')) if param != '' else None) |
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elif k == 'Method': |
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name, url = meta['Method'] |
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res[k].append(f'<a href="{url}">{name}</a>') |
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else: |
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res[k].append(meta[k]) |
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fields = [x for x in fields] |
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for d in non_overall_fields: |
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res[d].append(item[dataset][d]) |
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for d in overall_fields: |
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res[d].append(item[dataset][d]) |
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df = pd.DataFrame(res) |
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df = df.sort_values('Overall') |
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df = df.iloc[::-1] |
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check_box = {} |
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check_box['essential'] = ['Method', 'Parameters (B)', 'Language Model', 'Vision Model'] |
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check_box['required'] = overall_fields |
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check_box['all'] = non_overall_fields + overall_fields |
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type_map = defaultdict(lambda: 'number') |
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type_map['Method'] = 'html' |
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type_map['Language Model'] = type_map['Vision Model'] = type_map['OpenSource'] = type_map['Verified'] = 'str' |
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check_box['type_map'] = type_map |
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return df, check_box |