Technical Lead Manager, Physical AI

Scale AI Scale AI · Data AI · San Francisco, CA · AVCV / Robotics EPD

Scale AI is seeking a Technical Lead Manager for their Physical AI team to lead research engineers in developing and evaluating Large-Scale Foundation Models for robots and AVs. The role involves hands-on contributions to model scaling, VLA/world model development, and data strategy, alongside team mentorship and translating research into production-ready features.

What you'd actually do

  1. Model Scaling: Direct research into scaling laws for Physical AI, determining how to best utilize massive datasets for pre-training and fine-tuning generalist policies.
  2. VLA and World model development: Develop novel methods for developing and evaluating models, including new Physical AI industry benchmarks
  3. Hands-on Modeling: Actively write code to implement, train and test SOTA architectures. Conduct research on Physical AI data collection, cross-embodiment training, and policy fine-tuning.
  4. Mentorship: Lead and grow a team of 4-6 elite Physical AI researchers, fostering a culture of high-velocity experimentation and rigorous evaluation.
  5. Paper-to-Product: Translate the latest research from NeurIPS, ICRA, and CVPR into production-ready features for Scale’s Physical AI partners.

Skills

Required

  • PyTorch
  • Transformer architectures
  • Attention mechanisms
  • Self-Supervised Learning
  • Vision-Language Models (VLM)
  • Vision-Language Models (VLA)
  • Diffusion Models
  • Generative World Models
  • Embodied AI
  • imitation learning
  • reinforcement learning (RL)
  • multi-modal sensor fusion
  • large-scale distributed training
  • GPU clusters
  • high-performance data loading
  • leading technical teams
  • research-intensive environment

Nice to have

  • First-author publications at top-tier AI/ML conferences (NeurIPS, CVPR, ICRA, CoRL)
  • Hardware Generalization
  • models that work across different robot types
  • Sim-to-Real
  • high-fidelity simulators
  • Isaac Gym
  • MuJoCo
  • physical domain adaptation

What the JD emphasized

  • Deep Learning Mastery
  • PyTorch
  • Transformer architectures
  • Attention mechanisms
  • Self-Supervised Learning
  • VLM/VLA Experience
  • Diffusion Models
  • Generative World Models
  • Embodied AI
  • imitation learning
  • reinforcement learning (RL)
  • multi-modal sensor fusion
  • Infrastructure
  • large-scale distributed training
  • Leadership
  • leading technical teams or projects in a research-intensive environment

Other signals

  • Foundation Models for Physical AI
  • general AI that can reason and act in the physical world
  • Large-Scale Foundation Models (e.g VLAs, World models)