Torc Robotics

Senior Machine Learning Engineer - Learned Planning/Reinforcement Learning

Torc Robotics$226K — $271K *
Transportation
5 - 7 years of experience
Job Overview by Ladders

Qualifications

  • Bachelor's degree in Computer Science, Robotics, Electrical Engineering, or related field with 6+ years of experience, or Master's with 3+ years, or PhD with 1+ year.
  • Proficiency in reinforcement learning, imitation learning, or sequence modeling applied to robotics or complex control.
  • Strong Python and PyTorch programming skills, especially for production-quality ML code.
  • Experience with large-scale datasets and distributed computing for model training and evaluation.
  • Familiarity with machine learning architectures relevant to autonomy systems, like transformers and RNNs.
  • Ability to analyze model performance and improve reliability through debugging and performance metrics.
  • Experience collaborating across different teams to integrate ML models into complex systems.

Responsibilities

  • Design and deploy learned behavior models using reinforcement learning and similar approaches.
  • Manage the end-to-end development of machine learning models, from data ingestion to deployment.
  • Write high-quality, production-ready machine learning code for scalable workflows.
  • Evaluate model performance, identify issues, and iterate for robustness and generalization.
  • Enhance training pipelines and infrastructure using large-scale datasets from various sources.
  • Work with simulation and validation teams to test learned models in real-world scenarios.
  • Contribute to technical decision-making and architectural discussions within the team.

Benefits

  • 100% paid medical, dental, and vision premiums for full-time employees.
  • 401K plan with a 6% employer match.
  • Flexible work schedule with generous immediate paid vacation.
  • Company-wide holiday office closures.
  • AD+D and Life Insurance for team members.
Full Job Description
Meet the Team
As a Senior Machine Learning Engineer - Learned Planner / Reinforcement Learning, you will develop and deploy machine learning models that drive decision-making for autonomous trucks. Working closely with teams across perception, prediction, planning, and safety, you will build learned behavior systems that enable safe, efficient, and human-like driving in real-world freight environments.

This role focuses on owning model development and delivery for scoped problem areas, contributing to architecture decisions, and driving improvements in model performance, reliability, and iteration speed within the autonomy stack.

What You'll Do
  • Design, develop, and deploy learned behavior models using approaches such as reinforcement learning, behavior cloning, and imitation learning
  • Own end-to-end model development for scoped problem areas, from data ingestion and training to evaluation and deployment
  • Write production-quality ML code to support scalable training, evaluation, and inference workflows
  • Analyze model performance, identify failure modes, and iterate to improve robustness and generalization across driving scenarios
  • Contribute to training pipelines, data workflows, and infrastructure, including working with large-scale datasets from simulation, fleet logs, and on-vehicle data
  • Collaborate with simulation, validation, and autonomy teams to test and evaluate learned behavior models across diverse environments
  • Support integration of learned planning models into simulation and validation frameworks, enabling faster iteration and improved coverage
  • Contribute to model architecture discussions and technical decision-making within the team
  • Mentor junior engineers on implementation, experimentation, and best practices

What You'll Need to Succeed
  • Bachelor's degree in Computer Science, Robotics, Electrical Engineering, Machine Learning, or related technical field with 6+ years of industry experience, OR Master's degree with 3+ years OR PhD with 1+ years of experience
  • Experience applying reinforcement learning, imitation learning, or sequence modeling to robotics, autonomous systems, or complex control problems
  • Strong programming skills in Python and PyTorch, with experience writing production-quality ML code
  • Experience training, evaluating, and improving models using large-scale datasets and distributed compute environments
  • Solid understanding of ML architectures used in autonomy systems (e.g., transformers, RNNs, graph neural networks, policy networks)
  • Experience debugging model behavior, analyzing performance metrics, and improving model reliability
  • Ability to translate ambiguous problems into structured ML solutions and deliver results independently
  • Experience collaborating cross-functionally to integrate ML models into larger autonomy systems

Bonus Points:
  • Experience in autonomous driving, robotics, or simulation-based training environments
  • Experience with reinforcement learning frameworks or distributed training systems (e.g., Ray)
  • Experience working with simulation environments, scenario generation, or large-scale behavior datasets
  • Familiarity with vehicle dynamics, motion planning, or multi-agent decision-making systems
  • Experience deploying ML models into production or real-world robotics systems
  • Experience with learned planning systems or policy learning in real-world or simulation environments
  • Experience integrating learned behavior models into validation and V&V workflows
  • Background in multi-agent modeling, driver behavior modeling, or long-horizon decision-making systems

Work Location: For this position, we are open to hiring in either the Ann Arbor, MI OR Blacksburg, VA (U.S.) office work locations in a hybrid capacity. We are also open to hiring Remote in the United States

Perks of Being a Full-time Torc'r

Torc cares about our team members and we strive to provide benefits and resources to support their health, work/life balance, and future. Our culture is collaborative, energetic, and team focused. Torc offers:
  • A competitive compensation package that includes a bonus component and stock options
  • 100% paid medical, dental, and vision premiums for full-time employees
  • 401K plan with a 6% employer match
  • Flexibility in schedule and generous paid vacation (available immediately after start date)
  • Company-wide holiday office closures
  • AD+D and Life Insurance

Job ID: 102603

Hiring Range for Job Opening

US Pay Range

$226,400-$271,700 CAD

About Torc Robotics

Torc Robotics is a company that develops autonomous vehicle technology. It was founded in 2005 in Blacksburg, Virginia, and has since become a leader in the field of self-driving vehicles. Torc Robotics has developed autonomous technology for a variety of applications, including military vehicles, mining trucks, and consumer cars. The company has partnerships with major automotive manufacturers, including Daimler Trucks North America and Caterpillar. In 2019, Torc Robotics was acquired by Daimler Trucks North America, and it continues to operate as a subsidiary of the company.
Learn more about Torc Robotics
Size
200 employees
Industry
Founded
2005

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