Sr. Machine Learning Optimization Engineer - Autonomous Driving
Published: 2025-04-13At Lucid, our mission is to inspire the adoption of sustainable energy by creating the most captivating electric vehicles, centered around the human experience. We’re doing more than designing and building electric vehicles — we’re committed to a more sustainable future. At Lucid, you’ll have the opportunity to make an impact on a global scale, helping introduce technology that will ...
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The Role
Lucid’s ADAS/Autonomous Driving division is seeking a highly skilled Machine Learning Optimization Engineer to enhance the efficiency of deep learning models for real-time inference. This role focuses on optimizing perception models for deployment on high-performance automotive hardware, leveraging advanced techniques such as quantization, pruning, and custom CUDA implementations.
Responsibilities
- Analyze ADAS/AD hardware to identify deep learning model optimization opportunities, working closely with cross-functional engineering teams.
- Lead the technical roadmap for deep learning inference optimization, implementing techniques such as quantization, compression, and pruning for current and future hardware platforms.
- Develop and integrate custom model optimizations using internal datasets and benchmarks, ensuring seamless deployment within existing training and inference pipelines.
- Debug and enhance deep learning deployment pipelines, optimizing preprocessing and postprocessing code for target devices using CUDA kernels to minimize latency.
- Conduct unit tests and validation to ensure the reliability, accuracy, and efficiency of optimized models.
- Collaborate with perception, software, and hardware teams to ensure optimized models meet real-time performance requirements.
Required Qualifications
- Strong experience in CUDA kernel development and TensorRT plugin optimization for deep learning inference.
- Proficiency in C/C++ programming, particularly for embedded systems and real-time applications.
- Solid understanding of deep learning model architectures, with hands-on experience optimizing models for deployment.
- Familiarity with automotive safety standards (e.g., ASPICE, ISO 26262) and their impact on software development.
- Bachelor's degree in Computer Engineering, Electrical Engineering, Automotive Engineering, Mechanical Engineering, or a related field.
- Minimum 3 years of professional experience or a Ph.D. for senior positions.
- Advanced degrees preferred.
Preferred Qualifications
- Experience working with automotive sensors (e.g., Camera, Radar, Lidar) in ADAS/AD applications.
- Familiarity with agile development methodologies and collaborative software development.
- Experience in system integration, testing, and verification at both the component and vehicle levels.
- Knowledge of Neural Architecture Search (NAS) techniques for optimizing deep learning model architectures.
Base Pay Range (Annual)
$134,400 - $184,800 USD
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