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Nvidia Computer Vision Image Processing Jobs (NOW HIRING)

Computer Vision Sales Executive A Computer Vision Sales role combines technical expertise in AI/image processing with sales strategy to drive revenue. Responsibilities include conducting technical ...

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Nvidia Computer Vision Image Processing information

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$5

$62

$89

How much do nvidia computer vision image processing jobs pay per hour?

As of Jun 9, 2026, the average hourly pay for nvidia computer vision image processing in the United States is $62.58, according to ZipRecruiter salary data. Most workers in this role earn between $51.92 and $66.83 per hour, depending on experience, location, and employer.

What are some common challenges faced by professionals working in Nvidia Computer Vision Image Processing roles?

Professionals in Nvidia Computer Vision Image Processing often encounter challenges such as optimizing algorithms for real-time performance, ensuring compatibility across various hardware platforms, and managing large volumes of imaging data efficiently. Additionally, staying current with rapidly evolving deep learning frameworks and GPU architectures is essential to maintain a cutting-edge skill set. Collaboration with cross-functional teams—including data scientists, software engineers, and hardware specialists—is also a key aspect of the role, requiring strong communication and teamwork skills.

What are the key skills and qualifications needed to thrive as an Nvidia Computer Vision Image Processing Engineer, and why are they important?

To thrive as an Nvidia Computer Vision Image Processing Engineer, you need a strong background in computer vision, image processing algorithms, and programming (especially in C++, Python, and CUDA), typically supported by a degree in computer science, electrical engineering, or a related field. Familiarity with deep learning frameworks like TensorFlow or PyTorch, Nvidia's CUDA platform, and tools such as OpenCV is commonly required, along with relevant certifications or project experience. Strong problem-solving, teamwork, and communication skills help individuals stand out, enabling them to collaborate on complex projects and share findings effectively. These competencies are crucial for developing innovative computer vision solutions that leverage Nvidia's hardware and software for high-performance, real-world applications.

What does an Nvidia Computer Vision Image Processing engineer do?

An Nvidia Computer Vision Image Processing engineer develops algorithms and software that enable computers to interpret and analyze visual data, such as images or videos. Their work often involves optimizing deep learning models for tasks like object detection, image segmentation, and pattern recognition, utilizing Nvidia's GPU technologies. These engineers collaborate with research and product teams to implement high-performance solutions for industries such as autonomous vehicles, robotics, healthcare, and entertainment.

What is the difference between Nvidia Computer Vision Image Processing vs Computer Vision Engineer?

AspectNvidia Computer Vision Image ProcessingComputer Vision Engineer
Required CredentialsDegree in Computer Science, Electrical Engineering, or related fields; experience with Nvidia toolsDegree in Computer Science, Electrical Engineering, or related fields; programming skills in Python, C++, and AI frameworks
Work EnvironmentPrimarily in R&D labs, hardware integration, and software development for Nvidia platformsResearch labs, tech companies, or AI startups focusing on developing computer vision applications
Industry UsageUsed within Nvidia for product development, AI hardware, and embedded systemsApplied across various industries like automotive, healthcare, and security for developing vision-based solutions

While Nvidia Computer Vision Image Processing focuses on developing and optimizing vision algorithms using Nvidia hardware and software tools, Computer Vision Engineers design and implement vision systems across industries. Both roles require a strong background in computer vision and programming, but Nvidia specialists are more hardware and platform-oriented, whereas Computer Vision Engineers work on broader application development.

Infographic showing various Nvidia Computer Vision Image Processing job openings in the United States as of May 2026, with employment types broken down into 1% As Needed, 89% Full Time, 3% Part Time, and 7% Contract. Highlights an 84% Physical, 8% Hybrid, and 8% Remote job distribution, with an average salary of $130,171 per year, or $62.6 per hour.
Computational Pathology Scientist

Computational Pathology Scientist

Talent Software Services

South San Francisco, CA

Full-time

Posted 12 days ago


Job description

Duties The Translational Safety, Pathology team provides pre-clinical pathology assessments of risk. Within this group, the Digital Pathology team focuses on revolutionizing the analysis of digital histopathology slides by leveraging computational methods to enhance pathological evaluations traditionally performed solely by humans. Our objective is to integrate cutting-edge digital and computational techniques into pathology workflows and develop computational tools to support pathologist-driven identification and interpretation of findings.

We are seeking a talented image data scientist for a contract position within our Digital Pathology team. This role involves contributing to the development and application of image-processing methods and pipelines using both conventional techniques and advanced techniques, such as machine learning and deep learning. The successful candidate should be proficient with commercially available image analysis software and able to perform basic statistical analyses and data visualizations.

Ideally, the candidate will also contribute to the development and implementation of new AI-powered image analysis algorithms and should have programming expertise, particularly in Python. The role requires close collaboration with pathologists to design and execute image analysis workflows tailored to biological questions, as well as working with computational and data scientists across various departments. Strong interpersonal and communication skills, as well as a passion for interdisciplinary collaboration, are essential.

Skills: Essential Skills: Strong Programming Foundation: Demonstrated proficiency in Python and its scientific computing ecosystem, including libraries like NumPy, Pandas, Scikit-learn and OpenCV. Version Control: Proficiency with version control systems, particularly Git, and experience with collaborative platforms like GitHub or GitLab. Computer Vision & Image Analysis: Solid experience in both classical and modern image analysis techniques.

This includes traditional image processing and applying machine learning for tasks like image classification and semantic segmentation. Whole-Slide Image (WSI) Handling: Hands-on experience processing and analyzing gigapixel whole-slide images, using libraries such as OpenSlide or similar tools. Collaborative Mindset: A strong aptitude for iterative design, a proactive approach to receiving and incorporating frequent feedback from cross-disciplinary teams.

Communication Skills: Excellent interpersonal and communication skills, with a proven ability to explain complex computational concepts to pathologists and biologists. Desirable Skills: Advanced Deep Learning: Deep expertise in developing and implementing advanced deep learning models for digital pathology, including for tasks like instance segmentation. High proficiency with at least one major framework such as PyTorch (experience with object detection libraries like Detectron2 is a plus), TensorFlow, or Keras.

High-Performance Computing (HPC): Experience using HPC environments and familiarity with job schedulers, specifically SLURM, for training models on large datasets. Commercial Pathology Software: Practical experience with commercial digital pathology platforms (e.g., HALO, Visiopharm, or QuPath). Workflow Orchestration: Experience building and managing data pipelines with workflow orchestration tools such as Dagster or Airflow.

Application Development: Experience building simple graphical user interfaces (GUIs) for research tools using Python frameworks like Tkinter or PyQt. Cloud Computing: Familiarity with cloud computing services for model training and deployment, particularly Amazon Web Services (AWS EC2) Education: MS, or PhD-level scientist or Minimum years of experience: 5 Soft skills: 1) Collaborative Mindset: A strong aptitude for iterative design, a proactive approach to receiving and incorporating frequent feedback from cross-disciplinary teams. 2) Communication Skills: Excellent interpersonal and communication skills, with a proven ability to explain complex computational concepts to pathologists and biologists.

Hard skills 1) Strong Programming Foundation: Demonstrated proficiency in Python and its scientific computing ecosystem, including libraries like NumPy, Pandas, Scikit-learn and OpenCV. 2) Computer Vision & Image Analysis: Solid experience in both classical and modern image analysis techniques. This includes traditional image processing and applying machine learning for tasks like image classification and semantic segmentation.

3) Whole-Slide Image Handling: Hands-on experience processing and analyzing gigapixel whole-slide images, using libraries such as OpenSlide or similar tools. 4) Advanced Deep Learning: Deep expertise in developing and implementing advanced deep learning models for digital pathology, including for tasks like instance segmentation. High proficiency with at least one major framework such as PyTorch (experience with object detection libraries like Detectron2 is a plus), TensorFlow, or Keras.

5) High-Performance Computing (HPC): Experience using HPC environments and familiarity with job schedulers, specifically SLURM, for training models on large datasets. Interview process: 1. Virtual 2.

Onsite Onsite position- No exceptions