Verification Engineering Trainee (f/m/div)

Infineon Technologies
Bristol
1 year ago
Applications closed

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Does your creative and analytical thinking make you the go-to person to solve problems? Are you a technology enthusiast, eager to develop your skills and face new challenges? Then you might be the team player we are missing! Apply now and join our dynamic environment in Bristol.As a Verification Engineering Trainee, you will be working within the Compute and ADAS IP Development teams in Bristol. You will take a responsible role in the verification of cutting-edge real time compute and ADAS radar processing designs for the future of driving including electric and autonomous cars.

In your new role, you will:

• Understand the process ofdeveloping IPs for the AURIX familyand the complex product specifications;
• Collaborate witharchitecture and design teams;
• Use SystemVerilog UVM tocreate the verification environmentanddebug test fails;
• Learn how todetermine when verification is complete;
• Use a range of software tools toincrease efficiency and produce accurate results;
• Have the potential towork with innovative methods, such as Machine learning,to improve our workflows;
• Work within Infineonquality and functional safety process frameworks;
• Contribute across the team tosolve challenges in achieving on-schedule deliveriesof high-quality subsystems.You have a result-oriented and proactive mindset and are a team player with good interpersonal skills. Furthermore, you are eager to learn about new, cutting-edge technology and have creative and analytical skills that support you in solving problems as well as ensuring a successful outcome.

You are best equipped for this job if you:

• Have adegree in Engineering, Science, TechnologyorMaths;
• Understand theprinciples of scripting( in Python);
• Have goodtime management skills;
• Fluency in English.
It will be an advantage if you also have:
• Capability to useEDA software tools;
• Some experience inadvanced verification languages(SystemVerilog, Specman-e, SystemC).

This paid internship is a first step into a successful career with us! Please send us yourCV in Englishso we can get to know you better.

Benefits

Coaching, mentoring networking possibilities Wide range of training offers & planning of career development Different career paths: Project Management, Technical Ladder, Management & Individual Contributor Flexible working conditions Part-time work possible (also during parental leave) Sabbatical Medical coverage Labor gymnastics Private insurance offers Wage payment in case of sick leave Corporate pension benefits IFX Success Bonus and Spot Awards Accessibility, access for wheelchairs

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