Validation Engineer

STMicroelectronics
Edinburgh
1 month ago
Applications closed

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OUR STORY

At ST, we believe in the power of technology to drive innovation and make a positive impact on people, business, and society. We are a global semiconductor company, and our advanced technology & chips forms the hidden part of the world we live in today.

When you join ST, you will be part of a global business of more than 115+ nationalities and present in 40 countries, 50,000+, diverse and dedicated creators & makers of technology around the world!

Developing technologies takes more than talent: it takes amazing people who understand collaboration and respect. People with passion and desire to disrupt the status quo, push boundaries and drive innovation – whilst unlocking your own potential.

Working at ST means innovating for a future that we want to make smarter, greener, in a responsible and sustainable way. Our technology starts with you. Join us and start the future!

YOUR ROLE

We are seeking a highly skilled and experienced Senior Validation Engineer with expertise in Analog IP validation to join our team. The ideal candidate will be responsible for validating analog and mixed signal IP designs and ensuring their functionality and performance meet specified requirements. The successful candidate will have a strong background in analog and mixed signal circuit design and validation methodologies.

YOUR SKILLS & EXPERIENCES

  1. Develop test plans and validation strategies for analog IP blocks and sub-systems.
  2. Collaborate with design and verification teams to ensure successful validation of analog IPs.
  3. Conduct in-depth testing, simulation, and analysis of analog IP designs to verify performance.
  4. Identify performance issues, debug problems, and report findings to the design team.
  5. Develop automation scripts and tools to enhance validation efficiency and test coverage.
  6. Work closely with cross-functional teams to drive successful tape-out of analog IP blocks.

Qualifications and Key Technical Skills:

  1. Bachelor's / Master's degree in Electrical Engineering or related field.
  2. Minimum of 5 years of experience in analog and mixed signal IP validation.
  3. Strong expertise in analog circuit design and validation methodologies.
  4. Advanced knowledge of laboratory instruments and equipment.
  5. Hands-on experience with industrial-grade simulation tools (e.g., LTSpice, eDesignSuite etc).
  6. Proficiency in scripting languages (e.g., Python, Perl) for automation tasks.
  7. Skilled in Data Analysis and presentation tools i.e., JMP, MATLAB, MS Excel, CSV.
  8. Excellent analytical and problem-solving skills.
  9. Strong communication and teamwork abilities.

We encourage candidates who may not meet every single requirement to apply, as we appreciate diverse perspectives and provide opportunities for growth and learning. Our DEI vision is, “At ST, you can be the true version of yourself”, we value all employee contributions and have zero tolerance for any kind of discrimination.

Joining us is also about a greater work-life balance and workplace with equal opportunities. Dedicated Employee Resource Groups for women and LGBTQIA+, hybrid work arrangements are amongst the many DEI & Sustainability initiatives that make us a great place to evolve your career.

To discover more, visitst.com/careers

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