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ML Engineer, II - End to End (E2E)

Roles & Responsibilities

  • Bachelor’s degree in Computer Science, Robotics, Electrical Engineering, Machine Learning, or a related field with 4+ years of industry experience, or a Master’s degree with 2+ years of experience.
  • Experience applying ML techniques such as computer vision, imitation learning, or reinforcement learning to robotics, autonomous systems, or complex control environments.
  • Strong programming skills in Python and PyTorch with production-quality ML code experience.
  • Experience training and evaluating ML models using large datasets and scalable compute environments; familiarity with End-to-End architectures (BEV models, Transformers, VLA, or diffusion models).

Requirements:

  • Develop and train End-to-End perception and planning models, including imitation learning and reinforcement learning.
  • Implement production-quality ML code to support model training, evaluation, and inference within the autonomy stack.
  • Analyze model performance, identify failure modes, and propose improvements to increase robustness and generalization across scenarios.
  • Collaborate with simulation, validation, and autonomy engineering teams to test and evaluate End-to-End models across diverse driving environments.

Job description

Meet the Team: 
As a Machine Learning Engineer II – End-to-End, you will help develop and deploy End-to-End models that power both perception and decision-making for autonomous trucks. Working closely with teams across perception, prediction, planning, and safety, you will contribute to End-to-End models that enable safe, efficient, and human-like driving in real-world freight operations. 
 
This role focuses on building, validating, and improving machine learning models and infrastructure that support End-to-End systems within the autonomy stack. 
 
What You’ll Do 

  • Develop and train machine learning models for End-to-End percetion and planning, including approaches such as imitation learning and reinforcement learning. 
  • Implement production-quality ML code to support model training, evaluation, and inference within the autonomy stack. 
  • Analyze model performance, identify failure modes, and propose improvements to increase robustness and generalization across scenarios. 
  • Contribute to model training pipelines and data workflows, curating datasets from simulation, fleet logs, and on-vehicle data. 
  • Collaborate with simulation, validation, and autonomy engineering teams to test and evaluate End-to-End models across diverse driving environments. 
  • Help integrate End-to-End models into simulation and testing workflows, enabling faster iteration and more comprehensive validation. 
  • Support the development of tooling and infrastructure that improve experimentation speed, reproducibility, and model iteration. 
  • Contribute to technical discussions around model architecture and training strategies within the team. 

 
 
 
 
What You’ll Need to Succeed 

  • Bachelor’s degree in Computer Science, Robotics, Electrical Engineering, Machine Learning, or a related technical field with 4+ years of industry experience, or a Master’s degree with 2+ years of experience. 
  • Experience applying machine learning techniques such as computer vision, imitation learning, or reinforcement learning, to robotics, autonomous systems, or complex control environments. 
  • Strong programming skills in Python and PyTorch, with experience writing production-quality ML code. 
  • Experience training and evaluating machine learning models using large datasets and scalable compute environments. 
  • Understanding of ML architectures used in End-to-End systems, such as BEV models, Transformers, VLA, or diffusion models. 
  • Experience debugging model behavior, analyzing performance metrics, and iterating on training pipelines. 
  • Ability to collaborate with cross-functional teams to integrate ML models into larger software systems. 

 
 
Bonus Points! 

  • Experience working in autonomous driving, robotics, or simulation-based training environments. 
  • Experience with reinforcement learning frameworks or distributed training systems (e.g., Ray). 
  • Experience with VLA or Neural Rendering. 
  • Familiarity with vehicle dynamics, motion planning, or multi-agent decision-making systems. 
  • Experience deploying ML models into production or real-world robotics systems. 

 

 

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