--- annotations_creators: [] language: en size_categories: - 10K, , , ]` - **`text`**: OCR content - **`description`**: Detailed element description The dataset provides comprehensive annotations of UI elements for machine learning applications. The dataset is stored in FiftyOne format, with a total size of approximately 10.6 GB and 24,978 samples. ## Dataset Creation ### Curation Rationale The motivation behind WaveUI-25k is to provide a high-quality, unified, and richly annotated dataset for advancing the training of AI agents capable of understanding and navigating complex user interfaces. Previous datasets either lacked detailed annotations or suffered from inconsistent labeling, limiting their utility for sophisticated agent training. WaveUI-25k addresses these gaps by harmonizing, cleaning, and enriching data from multiple leading sources. ### Source Data #### Data Collection and Processing - The dataset is a unified compilation of three major sources: WebUI, RoboFlow Website Screenshots, and GroundUI-18K. - Preprocessing steps included schema harmonization, removal of duplicates, filtering out overlapping and low-quality examples, and exclusion of text elements not relevant to the scope. - Additional annotation was performed to add detailed fields such as purpose and expectation, using a combination of programmatic methods and large language models for enrichment. #### Who are the source data producers? - WebUI: Crawled web pages with automatically extracted metadata, produced by academic researchers (Wu et al., 2023). - RoboFlow Website Screenshots: Synthetic screenshots and annotations generated by the Roboflow team. - GroundUI-18K: Annotated images for UI grounding, produced by academic researchers (Zheng et al., 2024). ### Annotations #### Annotation process - The original datasets provided basic annotations (e.g., bounding boxes, element types). - AgentSea’s team further annotated the selected 25k subset, adding fields such as name, description, purpose, and expectation. - Annotation was performed using a combination of manual review, programmatic filtering, and enrichment via large language models. #### Who are the annotators? - AgentSea’s applied AI team, with assistance from automated tools and LLMs for metadata enrichment. #### Personal and Sensitive Information - The dataset does not intentionally include personal, sensitive, or private information. Most data is synthetic or anonymized, and efforts were made to filter out any potentially sensitive content during curation. ## Bias, Risks, and Limitations - The dataset may underrepresent certain UI designs, languages, or domains not well-covered by the source datasets. - Automated annotation and filtering may introduce errors or inconsistencies. - The dataset is not intended for applications involving personal or sensitive data extraction. - There may be biases inherent to the source datasets, such as overrepresentation of certain website genres or UI patterns. ### Recommendations Users should be aware of the above risks and limitations and validate model performance on their specific target domains. Additional annotation or domain adaptation may be necessary for specialized use cases. ## Citation **BibTeX:** ```bibtex @misc{agentsea_waveui25k_2024, title = {WaveUI-25k}, author = {AgentSea}, howpublished = {\url{https://huggingface.co/datasets/agentsea/wave-ui-25k}}, year = {2024} } ``` ## More Information - The dataset is available for download and exploration on Hugging Face. - For further questions, contact AgentSea via their Hugging Face page or LinkedIn. ## Dataset Card Authors - AgentSea Applied AI Team ## Dataset Card Contact - AgentSea (see Hugging Face repository for contact details)