Machine Learning Engineer - Multi-Modality Foundation Model na Zoox
Zoox · Foster City, Estados Unidos Da América · Hybrid
- Escritório em Foster City
Description
In this role, you will:
Build, pre-train, and evaluate large-scale multi-modality foundation models from the ground up, successfully aligning diverse data streams (e.g., Vision, LiDAR, Radar, Language, Audio).
Define and execute the ML roadmap for deploying these multi-modality representations to the vehicle.
Architect and implement Knowledge Distillation pipelines to compress large-capacity multi-modal teacher models into highly efficient, production-ready student models.
Build high-quality training and evaluation datasets, applying advanced data-centric techniques to maximize cross-modal representation learning and student model convergence.
Collaborate with downstream perception teams to integrate and validate the performance, robustness, and latency of your models in on-board production systems.
Qualifications:
MS or PhD in Computer Science, Machine Learning, or a related technical field with demonstrated professional experience.
Deep, proven expertise in building and training large-scale multi-modality foundation models (e.g., Vision-Language Models (VLMs), Vision-Audio-Text, or Vision-LiDAR-Radar architectures).
Strong understanding of cross-modal alignment, multi-modal attention mechanisms, and large-scale pre-training techniques.
Proven experience in Knowledge Distillation (KD), model compression, and training highly efficient student models for production environments.
Proficiency in ML frameworks (e.g., PyTorch) and experience building large-scale ML training and evaluation pipelines.
Bonus Qualifications:
Experience in the Autonomous Driving or robotics industry.
Experience with model deployment, optimization, and hardware constraints (e.g., C++ for inference, TensorRT, quantization, pruning).
Publications in top-tier conferences (CVPR, ICCV, NeurIPS, ICLR, ACL) related to multi-modality foundation models, cross-modal learning, or model compression.