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Senior Silicon Hardware Development Engineer

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NVIDIA Silicon Solutions Group is seeking a hardworking engineer to be part of a silicon HW team. As a member of this team, you are responsible for developing and validating system level features with a deep understanding of products needs that will get delivered to notebook, desktop, embedded, automotive and professional solution markets.

NVIDIA Silicon Solutions Group is seeking a hardworking engineer to be part of a silicon HW team. As a member of this team, you are responsible for developing and validating system level features with a deep understanding of products needs that will get delivered to notebook, desktop, embedded, automotive and professional solution markets. Prior experience in the lab with system level post silicon bring-up and debug is highly desired.

 

What you'll be doing:

  • Drive evaluation, development and bring-up of sophisticated in-system test methodologies on complex processors to achieve better manufacturability and hardware maintenance in the field.
  • Analyze and correlate engineering, manufacturing, field, and RMA data to improve system feature efficiency with innovative solutions to reach better product quality and customer experience.
  • Stay on top of the latest industry direction, market needs, and technology development, and incorporate them into future roadmaps to build more compelling products.
  • Work closely and proactively with other engineering teams such as system architects, DFT engineers, ASIC and board designers, software/firmware engineers, HW/SW QA teams and Applications Engineering teams to drive design, development, debug and release of next generations products.
  • Lead debugging, craft WARs, and support manufacturing and customer issues on relevant features.

 

What we need to see:

  • BS or MS degree in EE/CE or equivalent experience.
  • 8+ years of proven experience in silicon design, validation, and debug.
  • Strong EE fundamentals, knowledgeable in digital design, timing, power, noise, signal integrity, DVFS, statistics, micro architecture, and system architecture.
  • Strong understanding of firmware/driver structures and their interaction with HW.
  • Helpful to have prior experience or strong knowledge in DFT, BIST logic, ATE testing.
  • Validated hands-on lab experience with silicon bringup, lab debug and lab tools (oscilloscopes, multimeters, logic analyzers).
  • Excellent problem solving, teamwork, and interpersonal skills.
  • Experience with Python, Perl, C/C++, Windows, and Linux is a plus.
Set alert for similar jobsSenior Silicon Hardware Development Engineer role in Santa Clara, United States
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Company

NVIDIA

Job Posted

a year ago

Job Type

Full-time

WorkMode

On-site

Experience Level

8-12 Years

Category

Engineering

Locations

Santa Clara, California, United States

Qualification

Bachelor

Applicants

Be an early applicant

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