Design, train, and refine large-scale 3D generative models from covering pre-training, post-training, and emerging paradigms in diffusion, flow matching, and multi-modal learning. Bridge the gap between cutting-edge research and product, deploy models in real products used by millions of creators, using human feedback and creative evaluation. Create novel model architectures to make 3D generation faster, higher-quality, and more controllable. Collaborate with infrastructure and systems teams to build scalable training, and data pipelines across GPU clusters and cloud environments. Bring engineering discipline into an fast-paced research environment: elegant code, reproducible experiments, and building software as a team. Share insights and breakthroughs through internal demos, open-source contributions, or technical reports that advance the field of 3D generative AI.