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Circuit Designer and Reliability Scientist

Circuit Designer and Reliability Scientist

CompanyIntel
LocationHillsboro, OR, USA
Salary$161230 – $227620
TypeFull-Time
DegreesBachelor’s, Master’s, PhD
Experience LevelSenior

Requirements

  • Bachelor’s degree in Electrical Engineering, Computer Engineering, Applied Physics, Physics, or a related field with 6+ years relevant experience
  • Master’s degree in Electrical Engineering, Computer Engineering, Applied Physics, Physics, or a related field with 4+ years relevant experience
  • PhD in Electrical Engineering, Computer Engineering, Applied Physics, Physics, or a related field with 2+ years relevant experience
  • Relevant experience in device physics and digital/mixed signal circuit design
  • Experience with SPICE simulations and Python coding for data analysis and modeling

Responsibilities

  • Custom circuit design, pre-Si validation, layout and tape-in of designs targeted to support development of Intel’s next generation products
  • Understand mechanisms that limit reliability of Intel’s latest products, define creative approaches to characterize these mechanisms through circuit design on test chips, architect the test chips, and develop design definitions, design schematics and work with layout engineers on implementation
  • Develop test programs, develop and execute design of experiments, reliability modeling and work with product design and quality and reliability teams for reliability risk assessments

Preferred Qualifications

  • Experience with FPGA programming using VHDL or Verilog
  • Proven track record of research and publications in reliability, particularly thermal reliability
  • Prior experience in reliability testing and characterization
  • Strong background in reliability statistics
  • Familiarity with industry-standard tools and methodologies for reliability assessment
  • Knowledge of test board design and implementation
  • Demonstrated ability to innovate and develop new concepts in device and circuit reliability
  • Reliability modeling using machine learning/AI are an added advantage