
Pioneering accelerated computing and AI
Senior Software Engineer – ADAS
Required skills
Python
C++
Linux
PyTorch
TensorFlow
Machine Learning
Step into the future with NVIDIA, a global leader in AI computing, data science, and graphics, driving innovation in Artificial Intelligence, Deep Learning, and Autonomous Vehicles. Our team of visionaries is reshaping industries worldwide with cutting-edge technologies. Join us on an exhilarating journey as a Senior Software Engineer, where you'll fuse our ADAS software stack with OEM applications, witnessing your creations hit the road in real-time. You would have opportunity to bring cutting Edge AI Models to Futuristic Cars. NVIDIA is synonymous with innovation, boasting trailblazers who are shaping the world with their forward-thinking approaches. This is your chance to be part of a vibrant community that's redefining the technological landscape. Ready to shape the future of automotive technology with NVIDIA? Apply now to be part of a team that's revolutionizing the industry and driving innovation to new heights. Your potential awaits!
We’re hiring a mid‑level Software Engineer to develop production ADAS and autonomous driving functions in C++ and Python. If you’re passionate about building robust, high‑performance features that run on GPUs in real vehicles, we’d like to hear from you.
What you’ll be doing:
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Design, implement, and maintain C++ ADAS functions for perception, prediction, and planning (e.g., lane keeping, ACC, AEB, traffic‑light and object handling) in a safety‑critical codebase.
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Integrate deep learning models into C++ pipelines: take models trained in Python (Py Torch or Tensor Flow), export/convert them, and deploy them for real‑time inference on NVIDIA GPUs.
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Work with multi‑sensor data — cameras, radar, lidar — and implement sensor fusion, tracking, and decision‑making logic in C++.
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Build and extend testable, modular libraries and components, including interfaces to models, sensor drivers, and vehicle control.
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Profile, debug, and optimize C++ and CUDA code to meet strict latency and throughput targets.
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Contribute to tooling around data quality, automated evaluation, and regression tests for ADAS functions.
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Collaborate closely with ML researchers, systems engineers, and automotive partners to turn prototype algorithms into production‑ready C++ implementations.
What we need to see:
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4–8 years of professional software engineering experience, ideally in ADAS, automotive, robotics, or real‑time systems.
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Master’s or Ph
D degree in Computer Science or in Machine Learning:
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Strong modern C++ (C++14/17 or later): templates, RAII, smart pointers, STL, and experience building large codebases.
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Solid Python skills for tooling, training scripts, and glue code between data pipelines and C++ components.
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Hands‑on experience training and using deep learning models (Py Torch or Tensor Flow): designing experiments, tuning hyperparameters, working with large datasets, and debugging model behavior.
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Experience developing on Linux: build systems (CMake), debugging (gdb, sanitizers), profiling, and git‑based workflows in a CI/CD environment.
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Familiarity with one or more of:
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GPU programming and optimization (CUDA, TensorRT, cuDNN)
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Computer vision / perception (object detection, segmentation, multi‑object tracking)
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Robotics or autonomous systems (ROS/ROS2, ADAS features, simulation environments)
Ways to stand out from the crowd:
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Direct experience implementing ADAS functions in C++, such as lane keeping, adaptive cruise control, automatic emergency braking, or traffic‑sign/traffic‑light handling.
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Experience with camera calibration, sensor fusion, or multi‑camera perception systems.
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Knowledge of model optimization and deployment: quantization (INT8, FP8, 4‑bit), TensorRT‑LLM, ONNX Runtime, or similar frameworks.
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Background in training infrastructure: distributed training, experiment tracking, dataset versioning, hyperparameter optimization.
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Understanding of software quality practices for safety‑critical systems (code review, unit testing, static analysis; automotive standards knowledge is a plus) as well as open‑source contributions or published work in AI, robotics, or GPU computing.
Work on challenging, real‑world ADAS and autonomous driving problems where your C++ and ML skills directly impact vehicle safety and performance. Collaborate with a talented, multidisciplinary team of researchers, engineers, and automotive experts. Solve hard technical problems at the intersection of deep learning, real‑time systems, and production software engineering. If this opportunity aligns with your background and interests, please apply with your resume and a brief description of relevant ADAS or autonomy projects (links to GitHub, publications, or technical write‑ups are welcome)
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About NVIDIA

NVIDIA
PublicA computing platform company operating at the intersection of graphics, HPC, and AI.
10,001+
Employees
Santa Clara
Headquarters
$4.57T
Valuation
Reviews
10 reviews
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10 reviews
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4.5
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3.8
78%
Recommend to a friend
Pros
Cutting-edge technology and innovation
Excellent compensation and benefits
Great team culture and collaboration
Cons
High pressure and expectations
Poor work-life balance and long hours
Fast-paced environment leading to burnout
Salary Ranges
79 data points
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Stock
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$204,174
Interview experience
5 interviews
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/ 5
Interview process
1
Application Review
2
Recruiter Screen
3
Technical Phone Screen
4
Onsite/Virtual Interviews
5
Team Matching
6
Offer
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Coding/Algorithm
System Design
Behavioral/STAR
Technical Knowledge
Past Experience
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