# Magic Bench: A Comprehensive Text-to-Image Generation Evaluation Dataset ## 📖 Overview Magic Bench is a comprehensive evaluation dataset designed for text-to-image generation models. It contains 377 carefully curated prompts with detailed annotations across multiple dimensions, providing both Chinese and English versions for cross-lingual evaluation. ## 🎯 Dataset Features - **377 evaluation prompts** covering diverse scenarios - **Bilingual support**: Both Chinese and English prompts - **Multi-dimensional annotations**: 9 different evaluation dimensions - **Comprehensive coverage**: Aesthetic design and artistic photography scenarios ## 📊 Dataset Structure The dataset includes the following fields: | Field | Description | |-------|-------------| | `prompt_text_cn`| Chinese version of the prompt | | `prompt_text_en`| English version of the prompt | | `Application Scenario`| The application context | | `Expression Form`| Form of expression annotations | | `Element Composition`| Element combination patterns | | `Entity Description`| Entity description types | ## 🏷️ Annotation Dimensions ### 1. Application Scenario - **Aesthetic design**: Logo design, character design, product design, etc. - **Art** : Photography, artistic creation, etc. - **Entertainment** : Entertainment and personalized content - **Film** : Film and storytelling scenarios - **Functional design** : Efficiency and functional design ### 2. Expression Form - **Pronoun Reference**: Contains pronoun references - **Negation**: Contains negative expressions - **Consistency**: Requires consistent elements ### 3. Element Combination - **Anti-Realism**: Anti-realistic combinations - **Multi-Entity Feature Matching**: Complex multi-entity combinations - **Layout & Typography**: Specific layout requirements ### 4. Entity Description - **Attribute** : Attribute descriptions - **Relation** : Relationship descriptions - **Action/State** : Action or state descriptions - **Quantity** : Quantity specifications ## 📁 Files - `magic_bench_dataset.csv`: Complete dataset - `magic_bench_chinese.csv`: Chinese prompts with labels - `magic_bench_english.csv`: English prompts with labels ## 🚀 Usage ```python import pandas as pd # Load the complete dataset df = pd.read_csv('magic_bench_dataset.csv') # Load Chinese version df_cn = pd.read_csv('magic_bench_chinese.csv') # Load English version df_en = pd.read_csv('magic_bench_english.csv') ``` ## 📈 Statistics - **Total prompts**: 377 - **Aesthetic design prompts**: 95 (25.2%) - **Art prompts**: 80 (21.2%) - **Prompts with style specifications**: 241 (63.9%) - **Prompts requiring aesthetic knowledge**: 131 (34.7%) - **Prompts with atmospheric elements**: 22 (5.8%) ## 🎯 Use Cases 1. **Model Evaluation**: Comprehensive evaluation of text-to-image models 2. **Benchmark Comparison**: Compare different models across various dimensions 3. **Research**: Study model capabilities in different scenarios 4. **Fine-tuning**: Use as training or validation data for model improvement ## 📄 Citation If you use this dataset in your research, please cite: ```bibtex @dataset{magic_bench_377, title={Magic Bench: A Comprehensive Text-to-Image Generation Evaluation Dataset}, author={outongtong}, year={2025}, email={outongtong.ott@bytedance.com}, url={https://huggingface.co/datasets/ByteDance-Seed/MagicBench} } ``` ## 📜 License This dataset is released under the [cc-by-nc-4.0](LICENSE). ## 🤝 Contributing We welcome contributions to improve the dataset. Please feel free to: - Report issues or suggest improvements - Submit pull requests with enhancements - Share your evaluation results using this dataset ## 📞 Contact For questions or collaborations, please contact: outongtong.ott@bytedance.com --- **Keywords**: text-to-image, evaluation, benchmark, dataset, computer vision, AI, machine learning