Search Jobs

 

Job Details

< Back to job list

       Camera Systems Software Engineer

  •    Palo Alto, CA

Job ID#: 1828

Category: Information Technology

Position Type

Contractor (W-2)

Positions Available

3

Job Description

Responsibilities
  • Identify, analyze, design, develop and debug system software for Camera/Imagingand Computer Vision features on Linux, QNX Android systems.
  • Deliver quality code, debug complex problems, prioritize and get things done with a high level of efficiency and urgency.
  • Collaborate with cross-functional teams across multiple engineering and algorithms teams, making the architectural, design tradeoffs required to deliver scalable end to end software stack across various compute engines.
  • Stay open-minded, constantly dive into innovative technologies, and embrace the ambiguity of complex problem solving.

Job Requirements

Qualifications
  • Hands-on experience with C/C++ on Linux and/or RTOS based systems.
  • Master's Degree in Electronics, Computer Engineering or Computer Science.
  • Exceptional candidates with Bachelor's degree in Computer Science and relevant work experience will also be considered.
  • Experience with optimizing code across various compute engines and heterogeneous computing ( CPU / GPU / DSP / etc)
  • Experience with best in class Engineering practices, technical documentation, design/architecting, and code reviews.
  • Experience with software update strategy for development and mass production phases including but not limited to OTA SW updates, factory SW updates, recovery SW updates, secure SW updates, etc.
  • Experience with one or more HAL architectures (preferably Camera HAL)
  • Familiarity with HW bring up, MIPI / CSI drivers, V4L2 drivers, SerDes drivers would be a positive.
  • Good understanding and hands on experience with interface protocol stacks (SPI,I2C, Ethernet).
  • Deep understanding of the camera processing pipeline from a systems level, including ISP, sensors, SerDes, power management, etc.
  • Familiar with RTOS kernel (Threadx or QNX), IPC, kernel and user space driver model.
Preferred Qualifications:
  • PhD in EE/Computer Science with relevant emphasis in image processing, graphics and/or Artificial Intelligence
  • Experience with automotive surround view systems/use cases along with their optimized implementation on GPUs using OpenGL/Vulkan/OpenCL APIs.
  • Background in the automotive industry or experience with safety-critical systems.
  • Experience with AI SDKs and building systems on edge devices
  • Track record of innovative thinking as evidenced by patents and peer-reviewed Publications.

Already have an account? Log in here