WildCity: A Real-World City-Scale Testbed for Rendering, Simulation, and Spatial Intelligence Researchers introduced WildCity, a real-world multimodal dataset collected by autonomous fleets traversing complex urban environments, to advance city-scale spatial intelligence for AI. The dataset includes 18 trajectories averaging 83.7 kilometers each, with challenges like dynamic objects and lighting variations, and provides a reconstruction baseline and closed-loop simulator. WildCity aims to enable AI to perceive, remember, and reason across space at a scale comparable to human cognition. arXiv:2607.06838v1 Announce Type: new Abstract: Humans can navigate an unfamiliar city and gradually form a coherent spatial mental map spanning tens of square kilometers. Can AI build spatial representations at a comparable scale? Although recent foundation models have advanced scene reconstruction and embodied intelligence, scaling to entire cities remains an open challenge, primarily due to the lack of city-scale data. To bridge the gap, we introduce WildCity, a real-world multimodal dataset collected by autonomous fleets traversing complex urban environments. Our dataset includes 18 trajectories, each averaging 83.7 kilometers in length, and preserves the core challenges of in-the-wild perception, e.g., dynamic objects, lighting variations, and imperfect camera poses. We further establish an urban-tailored reconstruction baseline and convert the reconstructed environments into a closed-loop simulator. Beyond the dataset and baseline, we systematically analyze the key challenges on the path to simulation-ready urban digital twins: scalability, extrapolation, and uncertainty. Ultimately, WildCity aims to catalyze progress not only in city-scale rendering, but more broadly in the pursuit of AI that can perceive, remember, and reason across space at a scale comparable to human cognition. Project page: https://han-xiangyu.github.io/Wild-City/