The Advanced Construction Image Dataset suite is one of the most well-known artificial intelligence (AI) dataset resources in the construction engineering domain. It provides construction-specific AI datasets (i.e., object detection, image captioning, and instance segmentation), annotation guidelines, and benchmark analyses to over 700 active users. This project seeks to further support and grow the dataset, broaden the userbase, and increase its open-source contributors. The ecosystem will establish a decentralized, self-sustaining hub that provides datasets, models, algorithms, documentation, and learning materials for the construction domain. It will also foster collaboration among academia, industry, government, and professional societies to accelerate AI innovation in the construction engineering domain. The project conducts an in-depth systematic analysis of the current technological landscape of construction data, evaluates construction-specific gaps in capabilities, and broadly surveys the community to understand potential avenues of future growth for the Advanced Construction Image Dataset. It also evaluates the viability of a hierarchical consortium governance model for the open-source ecosystem, with the goal of ensuring long-term quality, ethical compliance, and contributor engagement. The open-source ecosystem develops a security-by-design framework where artifacts (e.g., datasets, models, applications, and documentation) can be validated and shared across distributed contributors/users under well-defined data quality guidance and privacy compliance. The project pursues community building plan through workshops, competitions, and international collaborations. This award reflects NSF's statutory mission and has been deemed worthy of support through evaluation using the Foundation's intellectual merit and broader impacts review criteria.