8 дней назад
Ml Engineer, Ii - Road & Lane (Ai)
Мэтч & Сопровод
Для мэтча с этой вакансией нужен Plus
Описание вакансии
Текст:
TL;DR
Ml Engineer, Ii - Road & Lane (Ai): Develops next-generation models that estimate road surfaces, lane geometry, and lane topology within Torc’s autonomy stack with an accent on delivering high‑quality, production‑ready lane perception models. Focus on improving robustness under diverse environmental and long‑tail conditions.
Location: Remote (US)
Company
is developing autonomous driving technology for trucking.
What you will do
- Develop and train computer vision and deep learning models for road‑lane detection using monocular and multimodal sensor data (camera, LiDAR, radar).
- Build 3D road surface and lane geometry models in BEV space and integrate them into Torc’s autonomy pipeline.
- Analyze model performance, identify corner cases, and improve robustness under diverse environmental conditions.
- Develop and optimize large‑scale data processing workflows, including annotation, pseudo‑labeling, and data augmentation.
- Implement scalable training and evaluation pipelines for lane perception models.
- Optimize models for real‑time execution on automotive‑grade hardware.
Requirements
- Bachelor’s degree in Computer Science, Robotics, Electrical Engineering, Machine Learning, or a related field with 4+ years of experience, or a Master’s with 2+ years.
- Hands‑on experience developing ML models for perception tasks such as lane detection, road surface modeling, multi‑camera fusion, or related geometry estimation.
- Strong understanding of camera calibration, multi‑sensor alignment, and projection between image and BEV spaces.
- Proficiency in Python and PyTorch, with experience writing production‑quality machine learning code.
- Experience training models on large datasets and using scalable compute environments.
- Ability to work cross‑functionally with autonomy, perception, and software engineering teams.
Nice to have
- Experience working specifically on lane perception, BEV networks, or road topology estimation.
- Experience with CUDA kernels or custom PyTorch operations.
- Familiarity with SD maps, localization pipelines, or map‑based priors.
- Experience with distributed training or large‑scale experimentation frameworks (e.g., Ray).
- Publications in major ML/CV conferences (CVPR, ICCV, NeurIPS).
Culture & Benefits
- Work on autonomous driving technology for trucking.
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