The Multimodal Intelligence Team is building the next generation of foundation models for Apple experiences. We are looking for a research scientist to advance the architectures, pre-training methods, and distillation techniques that make highly capable multimodal models practical across the Apple ecosystem. Our research spans the full foundation-model lifecycle: model architecture, pre-training objectives, data mixtures, optimization, scaling, distillation, and evaluation. A defining challenge of our work is to develop models that combine broad intelligence with the memory, latency, energy, and privacy requirements of on-device deployment. You will have the opportunity to shape new research directions, conduct ambitious experiments at scale, and translate successful ideas into foundation-model technologies that can reach Apple products. Where appropriate, this work may also lead to publications and the open sourcing of selected models, research artifacts, evaluations, or tools. In this role, you will investigate fundamental questions about how multimodal foundation models should be designed, trained, and distilled. You will develop and evaluate new model architectures, pre-training objectives, data strategies, optimization methods, and teacher–student learning techniques. Your work will explore how capabilities developed in large foundation models can be effectively transferred to smaller, more efficient models without treating distillation as an isolated downstream step. A major focus of the role will be the co-development of frontier models and efficient models for Apple silicon and on-device intelligence. This includes designing architectures that distill effectively, studying how teacher and student models should be trained together, and developing distillation methods that preserve reasoning, multimodal understanding, instruction following, and other important capabilities under constrained model capacity. Rather than treating deployment constraints as an afterthought, you will incorporate them into the research process—from early architecture experiments and pre-training through distillation and final model evaluation. You may thrive in this role if you: Want to invent new foundation-model architectures rather than only adapt existing models. Enjoy combining scientific ambition with real compute, memory, latency, and energy constraints. Believe that small and efficient models can be a frontier research problem, not merely a compression exercise. Are comfortable working across model research, data, systems, and hardware boundaries. Care about translating research into private, useful, and deeply integrated intelligent experiences. Want your work to have both product impact and a presence in the broader research community. Potential research directions include: Novel dense, recurrent, state-space, mixture-of-experts, and hybrid foundation-model architectures. Multimodal pre-training across language, images, video, audio, and sensor-derived representations. Compute-optimal model and data scaling, including data mixtures, curricula, tokenization, and training objectives. Architecture and algorithm co-design for memory-efficient and energy-efficient inference on Apple silicon. Offline and on-policy distillation using teacher-generated data, logits, representations, rationales, and other supervision signals.
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Job Type
Full-time
Career Level
Senior