Position Summary
We're building safety first video telematics products (ADAS / DMS / driver behavior analytics) that run efficiently on edge devices inside commercial vehicles. You will write modern C++ software, integrate and optimize CV / ML pipelines, and ship reliable, low latency perception features such as driver monitoring and distance estimation from camera feeds.
Key Responsibilities
- Own C++ software modules for on device video capture, preprocessing, inference, and post processing on Linux.
- Implement classical image processing pipelines (denoise, resize, color space, undistortion) and CV algorithms (keypoints, homography, optical flow, tracking).
- Build and optimize distance / spacing estimation from monocular / stereo camera(s) using calibration, geometry, and / or depthestimation networks.
- Integrate ML models (PyTorch / TensorFlow ONNX / TensorRT / NNAPI / NPU runtimes) for DMS / ADAS events : drowsiness, distraction / gaze, phoneusage, smoking, seat belt, etc.
- Hit real time targets (FPS / latency / memory) on CPU / GPU / NPU using SIMD / NEON, multithreading, zero copy buffers.
- Write clean, testable C++, CMake builds, and Git based workflows (branching, PRs, code reviews, CI).
- Instrument logging / telemetry; debug with gdb / addr2line, sanitize and profile with perf / valgrind.
- Collaborate with data / ML teams on dataset curation, labeling specs, training / evaluation, and model handoff.
- Work with product & compliance to meet on road reliability, privacy, and regulatory expectations.
Qualifications
B.Tech / B.E. in CS / EE / ECE (or equivalent practical experience).2–3 years in CV / ML or videocentric software roles. Hands on in modern C++ on Linux, with strong Git and CMake .Solid image processing and computervision foundations (camera models, intrinsics / extrinsics, distortion, PnP, epipolar geometry).Practical experience integrating CV / ML models on device (OpenCV + ONNX Runtime / TensorRT / NCNN / MediaPipe / NNAPI).Experience building real time pipelines for live video (GStreamer / FFmpeg, RTSP / RTMP, ring buffers), optimizing for latency & memory .Competence in multithreading / concurrency , lock free queues, and producer–consumer designs.Comfort with debugging & profiling on Linux targets.Reporting To : Technical Lead ADAS
Requisites :
Experience with driver monitoring or ADAS features; event logic and thresholding for production alerts.Knowledge of monocular depth estimation, stereo matching, or structure from motion for distance estimation .Model training exposure ( PyTorch / TensorFlow ) : augmentation, evaluation (precision / recall, ROC / PR), quantization / pruning, conversion to ONNX / TensorRT / NCNN.Hardware acceleration (GPU / VPU / NPU, Arm NEON / DSP), YOLO / RT DETR / Lightweight backbones on edge.Cross compiling, Yocto / Buildroot, containerized toolchains; unit tests (gtest), static analysis (clang tidy, cppcheck), sanitizers.Basic familiarity with MQTT / IoT , message schemas, and over the air updates.Technical Competency :
Languages : C++, PythonCV / ML : OpenCV, ONNX Runtime / TensorRT / NCNN / MediaPipe; PyTorch / TensorFlow (for training / eval).Video : GStreamer / FFmpeg, V4L2, RTSP / RTMP.Build / DevOps : CMake, Git, gtest, clangtidy, sanitizers; CI / CD (GitHub / GitLab / Bitbucket).Debug / Perf : gdb, perf, valgrindSkills Required
Pytorch, Tensorflow, simd, Rtsp, Opencv, Linux, Ffmpeg, RTMP, Multithreading, Valgrind, Gdb, Gstreamer, Git, PERF, Cmake