Torc Robotics
Senior, ML Engineer – Road & Lane Detection
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Senior, ML Engineer – Road & Lane Detection
role at
Torc Robotics .
About the Company A leader in autonomous driving since 2007, Torc has spent over a decade commercializing our solutions with experienced partners. Now a part of the Daimler family, we are focused solely on developing software for automated trucks to transform how the world moves freight.
Meet the Team Torc’s Model Development Organization is hiring a Senior ML engineer to develop our next generation of Road‑Lane BEV and image‑space models. Your work will span training, validation, data science, architectural design, and deployment collaboration, while mentoring junior team members.
What You’ll Do Develop and Optimize Computer Vision Algorithms
Training monocular and multimodal Road Model Detection models.
Comprehending objects, lanes, obstacles, and weather conditions within the driving environment.
Enhance perception systems to process multimodal sensor data (camera, LiDAR, radar) effectively.
Utilizing data science techniques to analyze model performance, data distributions, and identify corner cases.
Contribute to BEV Self‑Driving Architectures
Design and implement deep learning models for Road Model inference in BEV frameworks.
Integrate BEV representations into end‑to‑end planning and control pipelines.
Use SD maps as priors for enhanced performance.
Data Management and Processing
Develop efficient pipelines for large‑scale data processing and annotation (pseudo‑labeling) of sensor data.
Implement data augmentation, synthetic data generation, and domain adaptation strategies to improve model robustness.
Model Deployment and Optimization
Deploy machine learning models on edge devices, ensuring real‑time performance and resource efficiency.
Optimize inference pipelines for embedded and automotive‑grade hardware platforms.
Cross‑functional Collaboration
Collaborate with robotics, software, and hardware engineering teams to ensure seamless integration of perception systems.
Work with product and operations teams to define performance metrics and improve system reliability.
Research and Innovation
Stay updated with the latest advancements in computer vision, Road Lane monocular and BEV models, and autonomous driving technologies.
Translate scientific research into production‑grade machine learning pipelines.
Publish findings in top‑tier conferences and journals (optional but encouraged).
Leadership
Contribute to the model development roadmap and provide strategic advice to technical leadership.
Mentor and guide junior team members to enhance their technical skills and career growth.
What You’ll Need to Succeed
Bachelor’s degree in Computer Science, Software Engineering, or related field with 6+ years of professional applied MLE engineering experience in Autonomous Vehicle, Robotics or related industry.
Master’s degree in Computer Science, Software Engineering, or related field with 3+ years of professional applied MLE engineering experience in Autonomous Vehicle, Robotics or related industry.
Scientific understanding of machine learning for 3D BEV space modeling, including the ability to apply state‑of‑the‑art ML research and methods in production.
Applied understanding and hands‑on expertise in lane and road geometry concepts, multi‑camera calibration, and sensor projection.
Experience with understanding data distributions and analyzing long‑tail distributions.
Mastery of Python and PyTorch, with the ability to transition research level code to production and deployment ready standards.
Bonus Points
PhD in machine learning or data science.
Proficient in writing CUDA kernels and developing custom PyTorch operations.
Publications at top‑tier computer vision / machine learning conferences or journals (CVPR, ICCV, JMLR, IJCV).
Applied experience using Ray in an autonomous vehicle (AV) or related environment to scale machine learning workloads, including distributed training, large‑scale experimentation, and hyperparameter tuning across multi‑node and multi‑GPU systems.
Work Location We are open to hiring in Torc Montreal, Quebec (Canada) or Ann Arbor, MI (U.S.) offices in a hybrid capacity. We are also open to hiring remote in the United States or Canada.
Perks of Being a Full‑time Torc’r
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.
EEO Statement At Torc, we’re committed to building a diverse and inclusive workplace. We celebrate the uniqueness of our Torc’rs and do not discriminate based on race, religion, color, national origin, gender (including pregnancy, childbirth, or related medical conditions), sexual orientation, gender identity, gender expression, age, veteran status, or disabilities.
Job ID R-102413
Seniority Level
Mid‑Senior level
Employment Type
Full‑time
Job Function
Engineering and Information Technology
Industries
Software Development
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Senior, ML Engineer – Road & Lane Detection
role at
Torc Robotics .
About the Company A leader in autonomous driving since 2007, Torc has spent over a decade commercializing our solutions with experienced partners. Now a part of the Daimler family, we are focused solely on developing software for automated trucks to transform how the world moves freight.
Meet the Team Torc’s Model Development Organization is hiring a Senior ML engineer to develop our next generation of Road‑Lane BEV and image‑space models. Your work will span training, validation, data science, architectural design, and deployment collaboration, while mentoring junior team members.
What You’ll Do Develop and Optimize Computer Vision Algorithms
Training monocular and multimodal Road Model Detection models.
Comprehending objects, lanes, obstacles, and weather conditions within the driving environment.
Enhance perception systems to process multimodal sensor data (camera, LiDAR, radar) effectively.
Utilizing data science techniques to analyze model performance, data distributions, and identify corner cases.
Contribute to BEV Self‑Driving Architectures
Design and implement deep learning models for Road Model inference in BEV frameworks.
Integrate BEV representations into end‑to‑end planning and control pipelines.
Use SD maps as priors for enhanced performance.
Data Management and Processing
Develop efficient pipelines for large‑scale data processing and annotation (pseudo‑labeling) of sensor data.
Implement data augmentation, synthetic data generation, and domain adaptation strategies to improve model robustness.
Model Deployment and Optimization
Deploy machine learning models on edge devices, ensuring real‑time performance and resource efficiency.
Optimize inference pipelines for embedded and automotive‑grade hardware platforms.
Cross‑functional Collaboration
Collaborate with robotics, software, and hardware engineering teams to ensure seamless integration of perception systems.
Work with product and operations teams to define performance metrics and improve system reliability.
Research and Innovation
Stay updated with the latest advancements in computer vision, Road Lane monocular and BEV models, and autonomous driving technologies.
Translate scientific research into production‑grade machine learning pipelines.
Publish findings in top‑tier conferences and journals (optional but encouraged).
Leadership
Contribute to the model development roadmap and provide strategic advice to technical leadership.
Mentor and guide junior team members to enhance their technical skills and career growth.
What You’ll Need to Succeed
Bachelor’s degree in Computer Science, Software Engineering, or related field with 6+ years of professional applied MLE engineering experience in Autonomous Vehicle, Robotics or related industry.
Master’s degree in Computer Science, Software Engineering, or related field with 3+ years of professional applied MLE engineering experience in Autonomous Vehicle, Robotics or related industry.
Scientific understanding of machine learning for 3D BEV space modeling, including the ability to apply state‑of‑the‑art ML research and methods in production.
Applied understanding and hands‑on expertise in lane and road geometry concepts, multi‑camera calibration, and sensor projection.
Experience with understanding data distributions and analyzing long‑tail distributions.
Mastery of Python and PyTorch, with the ability to transition research level code to production and deployment ready standards.
Bonus Points
PhD in machine learning or data science.
Proficient in writing CUDA kernels and developing custom PyTorch operations.
Publications at top‑tier computer vision / machine learning conferences or journals (CVPR, ICCV, JMLR, IJCV).
Applied experience using Ray in an autonomous vehicle (AV) or related environment to scale machine learning workloads, including distributed training, large‑scale experimentation, and hyperparameter tuning across multi‑node and multi‑GPU systems.
Work Location We are open to hiring in Torc Montreal, Quebec (Canada) or Ann Arbor, MI (U.S.) offices in a hybrid capacity. We are also open to hiring remote in the United States or Canada.
Perks of Being a Full‑time Torc’r
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.
EEO Statement At Torc, we’re committed to building a diverse and inclusive workplace. We celebrate the uniqueness of our Torc’rs and do not discriminate based on race, religion, color, national origin, gender (including pregnancy, childbirth, or related medical conditions), sexual orientation, gender identity, gender expression, age, veteran status, or disabilities.
Job ID R-102413
Seniority Level
Mid‑Senior level
Employment Type
Full‑time
Job Function
Engineering and Information Technology
Industries
Software Development
#J-18808-Ljbffr