Senior Software Engineer - NVIDIA DRIVE Platform
Role details
Job location
Tech stack
Job description
- Bring up and integrate software systems on NVIDIA DRIVE platforms (Xavier / Orin / Thor).
- Develop and maintain platform-level software and infrastructure components.
- Work with NVIDIA DRIVEWORKS SDK to support perception and system pipelines.
- Manage system resources, memory, and compute utilization to ensure optimal performance.
- Design software architectures that leverage GPU, DLA, and heterogeneous compute resources.
- Debug, profile, and optimize system-level software for performance and reliability.
- Integrate software with sensors, hardware components, and other platform modules.
- Collaborate with cross-functional teams including algorithms, hardware, and verification.
- Support testing, validation, and debugging on development platforms and vehicles.
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Requirements
Do you have experience in Software development?, Do you have a Master's degree?, At Autobrains, we are building next-generation Level 4 autonomous driving vehicles. We are looking for an experienced software engineer with hands-on experience with NVIDIA DRIVE platforms to help bring up and optimize our software system on NVIDIA DRIVE Thor., * B.Sc. or M.Sc. in Computer Science, Electrical Engineering, or a related field.
- 5+ years of software development experience in embedded or high-performance systems.
- Strong programming skills in C++ and Python.
- Hands-on experience with NVIDIA DRIVE platforms (Xavier / Orin / Thor) and DRIVEWORKS.
- Experience with Linux-based embedded systems.
- Strong understanding of memory management, concurrency, and system-level performance optimization.
- Strong debugging and problem-solving skills.
Advantages
- Experience with ROS / ROS2.
- Experience with CUDA or GPU-based acceleration.
- Experience deploying AI models on edge platforms (TensorRT, ONNX Runtime).
- Experience with camera, LiDAR, or IMU integration.
- Background in ADAS or autonomous driving systems.