Distillation Lead

Waabi Waabi · Robotics · San Francisco, CA +3 · Remote · Autonomy & Algorithms

Lead the strategy and execution for model distillation and compression across Waabi's AI stack, focusing on efficient deployment for onboard autonomy and simulation. This involves designing and implementing state-of-the-art pipelines, collaborating with cross-functional teams, defining evaluation frameworks, mentoring engineers, and staying at the cutting edge of research.

What you'd actually do

  1. Define and drive the technical strategy for model distillation and compression across Waabi's AI stack — spanning perception, world models, and planning — with an eye toward both onboard deployment and simulation use-cases.
  2. Design, implement, and scale state-of-the-art distillation and efficiency pipelines, which may include: - Distillation for generative models (diffusion, autoregressive, flow-matching, video models) - Quantization-aware training (QAT) and post-training quantization (PTQ) - Knowledge distillation (feature-level, response-based, and relation-based) - Structured and unstructured pruning and sparsification - Low-rank factorization and efficient architecture design - Speculative decoding and other inference-time efficiency techniques
  3. Collaborate closely with ML Platform, Infrastructure, Onboard, Autonomy, and Simulation teams to integrate compressed models into production pipelines and meet latency, memory, and throughput targets across deployment contexts.
  4. Define rigorous benchmarks and evaluation frameworks to characterize efficiency vs. quality trade-offs across models and hardware targets.
  5. Mentor and guide researchers and engineers working in the distillation and model efficiency space, setting a high technical bar and fostering a culture of rigorous experimentation.

Skills

Required

  • Python
  • PyTorch
  • JAX
  • large-scale distributed training
  • model distillation
  • model compression
  • quantization
  • pruning
  • efficiency pipelines
  • production deployment

Nice to have

  • hardware-aware optimization
  • TensorRT
  • ONNX
  • custom CUDA kernels
  • hardware-specific quantization
  • publications at top-tier ML/CV venues
  • distilling large generative models
  • diffusion models
  • LLMs
  • VLMs
  • video models
  • autonomous vehicles
  • robotics

What the JD emphasized

  • Deep distillation expertise
  • extensive hands-on experience designing and implementing distillation, quantization, pruning, and model compression techniques for large-scale neural networks, with demonstrated impact in production settings
  • Strong research and engineering foundation
  • relevant hands-on experience in model distillation and efficiency is what matters most
  • Technical leadership
  • proven track record of setting technical direction and driving projects from conception to production
  • Cross-functional collaboration
  • experience working closely with infrastructure, platform, and autonomy teams to deploy compressed models under real engineering constraints

Other signals

  • model distillation
  • model compression
  • efficiency pipelines
  • production deployment