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Torc RoboticsTR

ML Engineer, II - Birds Eye View (BEV)

Torc Robotics, an independent subsidiary of Daimler Truck AG, is a pioneer in autonomous driving technology, currently focused on commercializing self-driving trucks for long-haul applications in the U.S. Founded in 2005, Torc has extensive experience in developing safety-critical, self-driving solutions.

Torc Robotics

Employee count: 501-1000

CA and US only

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Meet the Team:
As a Machine Learning Engineer II – Scene Model, you will help develop and deploy machine learning models that enable autonomous trucks to understand their surrounding environment. Our team focuses on building multi-modal perception systems in bird’s-eye-view (BEV) that fuse information from LiDAR, cameras, radar, and map inputs to produce a unified representation of the scene.

Working closely with teams across perception, prediction, planning, and platform infrastructure, you will contribute to models that detect objects, understand road structure, and generate spatial temporal representations used by downstream autonomy systems.

This role focuses on developing and improving deep learning models, training pipelines, and data workflows that power scene understanding within the autonomy stack.

What You’ll Do

  • Develop and train machine learning models for scene understanding, including tasks such as object detection, road and lane prediction, semantic voxel grid classification, occupancy prediction, and map understanding in bird’s-eye-view (BEV) space.
  • Implement production-quality ML code to support model training, evaluation, and inference within the perception stack.
  • Analyze model performance, identify failure modes, and propose improvements to increase robustness across diverse driving environments and conditions.
  • Identify and interpret objects, lanes, obstacles, and weather conditions in the driving environment.
  • Apply data science techniques to analyze model performance, understand data distributions, and identify corner cases.
  • Contribute to multi-modal perception systems, combining signals from LiDAR, cameras, radar, and map sources into unified scene representations.
  • Work with large-scale datasets from simulation, fleet logs, and on-vehicle data to curate training data and improve model performance.
  • Collaborate with data, deployment, and infrastructure teams to evaluate perception models and ensure reliable performance in real-world driving scenarios.
  • Help integrate perception models into the autonomy stack and testing pipelines, enabling faster experimentation and iteration.
  • Contribute to tooling and infrastructure that improves training efficiency, experiment tracking, and reproducibility.
  • Participate in technical discussions around model architectures, sensor fusion strategies, and training approaches 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.
  • Strong understanding of computer-vision, and machine learning basics.
  • Experience applying machine learning techniques such as imitation learning, reinforcement learning, or sequence modeling 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 autonomy systems, such as transformers, graph neural networks, or sequence 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.
  • Good technical communication skills, written and verbal.
  • A positive team-player mindset.

Bonus Points!

  • PhD in machine learning or data science.
  • Experience working in autonomous driving, robotics, or simulation-based training environments.
  • Experience with distributed training frameworks or large-scale ML infrastructure (e.g., Ray, Anyscale).
  • Experience working with simulation environments 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 multi-modal sensor fusion, including LiDAR, cameras, radar, or map inputs.
  • Experience working with BEV representations, occupancy grids, or 3D scene representations.

About the job

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Posted on

Job type

Full Time

Experience level

Education

Bachelor degree
Postgraduate degree

Experience

2 years minimum

Location requirements

Hiring timezones

United States +/- 0 hours, and 1 other timezone

About Torc Robotics

Learn more about Torc Robotics and their company culture.

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What began in 2005 as Torc Technologies, a venture by a group of Virginia Tech graduate students, has evolved into a leading name in autonomous vehicle technology. The mission from the outset was to continue their collegiate work on autonomous vehicle software, initially focusing on Tele-Operated Robotic Controls (TORC) and developing Level 4 autonomous technology. A significant early milestone came in 2007 when Torc, in partnership with Virginia Tech, secured third place in the DARPA Urban Challenge. This achievement involved their Ford Escape, 'Odin,' autonomously navigating 60 miles of urban and off-road environments.

The company's journey continued with impactful projects, including a 2010 partnership with Virginia Tech for the National Federation of the Blind's Blind Driver Challenge, which earned them the National Instruments' 2010 Application of the Year. This project saw a blind driver independently operate Torc's modified Ford Escape on the Daytona Speedway in 2011. Torc's expertise also extended to defense, developing autonomous solutions like the Ground Unmanned Support Surrogate (GUSS) to assist military personnel. Over the years, Torc has been involved in various defense and heavy equipment applications, and participated in the DARPA Robotics Challenge. A pivotal moment arrived in March 2019 when Daimler AG, through Daimler Trucks North America, acquired a majority stake in Torc Robotics. This partnership shifted Torc's primary focus to commercializing autonomous trucks for long-haul applications in the United States. Torc is now an independent subsidiary of Daimler Truck AG. The company has since expanded its operations, opening an engineering office in Austin, Texas, and a Technology and Development Center in Stuttgart, Germany in 2022, as well as facilities in Albuquerque, New Mexico, and Montreal, Canada. Torc continues to advance its 'physical AI,' enabling self-driving trucks to perceive, understand, and act in the real world, with a commercial launch targeted for 2027.

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