Research Scientist, Wayve Labs
WayveThe Role
We’re looking for Research Scientists to join Wayve Labs and help build the next generation of AI systems for autonomous driving. You’ll work at the intersection of machine learning, simulation, robotics, and real-world deployment, contributing to core innovations that push the boundaries of embodied AI.
Situated within Wayve, we are a high-conviction research team with the strategic patience and backing to prioritise multi-year breakthroughs over incremental gains. We are looking for highly motivated individuals with expertise and passion to push the frontier of embodied AI, including (but not limited to) the following areas:
World & Reward Modeling: Building realistic, diverse simulators that can predict the consequences and costs of actions.
Representation Learning & Spatial Intelligence: Advancing how machines truly understand and navigate dynamic, unstructured 3D environments, from detailed spatial understanding, to efficient long term memory.
Scalable Decision-Making Systems: Designing architectures, reasoning systems, and policy learning algorithms that operate over long contexts, and scale with data and compute.
Cross-Embodiment and Multimodal Learning: Advance embodied learning systems that can flexibly adapt to diverse robotic platforms and multimodal inputs, using vision, language, and active sensors.
Key Responsibilities
Develop World Models and Planners (e.g., diffusion-based, autoregressive, or hybrid approaches) for realistic and consistent simulation
Advance Reinforcement Learning and Reward Modeling, building scalable and safe learning frameworks across real and synthetic data
Develop Geometric Foundation Models for 3D spatial understanding in dynamic, real-world environments.
Enable Cross-Embodiment Robotics, leveraging the power of multimodal foundation models to accelerate robotic learning on diverse platforms.
Conduct empirical research on Scaling laws, Generalisation, and Sim-to-real transfer
Define and evolve Evaluation Frameworks and Benchmarks for long-horizon prediction, scene fidelity, and driving performance
What You’ll Bring
Must-haves:
3+ years of experience developing and deploying ML systems in real-world or production settings
PhD, Master’s degree, or equivalent experience in Machine Learning, Computer Vision, Robotics, or a related field
Deep expertise in one or more core Embodied AI areas, such as:
Foundation models (e.g., transformers, MoE, large-scale training)
Generative world modeling (e.g., diffusion, autoregressive, hybrid approaches)
Reinforcement learning (e.g., offline RL, RLHF, reward modeling)
Spatial AI (e.g., SLAM/SfM, depth estimation, multi-view geometry with multimodal sensors)
Track record of publications at top-tier conferences (e.g., NeurIPS, ICML, ICLR, CVPR, ICCV, CoRL)
Strong programming skills in Python, with experience using frameworks such as PyTorch
A data-centric mindset, with experience working on large-scale datasets and evaluation
Strong problem-solving ability and the ability to collaborate effectively in interdisciplinary teams
Nice-to-haves:
Experience in autonomous driving, robotics, or simulation systems
Familiarity with large-scale training (e.g., FSDP, DeepSpeed, JAX)
Experience with sim-to-real transfer or data-efficient learning
Contributions to open-source ML tools or research infrastructure
What we offer you
Attractive compensation with salary and equity
Immersion in a team of world-class researchers, engineers and entrepreneurs
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