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Staff Power Intent Implementation Engineer

ARM
Cambridge
8 months ago
Applications closed

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Do you want to shape the future of chip design? In the Solutions Engineering team at Arm, we're looking for an experienced power intent engineer to join our team in a multi-faceted and diverse role!

 

In this role, working within the implementation team, you'll be helping to optimize the power and cohesiveness of Arm's solutions, while also evolving our next generation of flows. You'll wield influence over the development of EDA tools and contribute to building pioneering development and production platforms to showcase Arm IP in silicon.

 

Within the team, we work with multiple divisions across Arm to steer product direction, define high quality standards and help drive partner success. We use our keen analytical skills and effective communication to provide solutions to a wide range of problems in the physical design space.

 

The successful applicant will play a key role in ensuring optimal performance and power efficiency for sophisticated semiconductor designs!

Responsibilities:

  • Develop and verify power intent for system level designs and SoCs
  • Deliver accurate results across a range of technology nodes to demonstrate the best of our designs
  • Collaborate with our chip design partners to support their physical implementation success
  • Develop and deploy new methodologies to improve implementation efficiency and results
  • Convert ground-breaking R&D concepts into real solutions

Required skills and experience:

  • Strong understanding of power management techniques and low-power design methodologies
  • Proficiency in writing and verifying UPF (Unified Power Format) to work with industry-standard EDA tools (e.g. Synopsys, Cadence, Siemens)
  • Experience with low power design techniques, such as clock and power gating, voltage/frequency scaling, retention
  • The ability to analyse problems, reason logically about solutions and chart the appropriate course to take
  • Experience in architecting and embracing new silicon implementation techniques and methodologies
  • Be able to dream big, explore novel concepts and communicate them clearly
  • Algorithmic thinking, with well-tested programming ability in Tcl, Make and Linux shell

'Nice to have' skills & experience

  • Knowledge of microprocessor architecture, Arm IP and Arm-based SoCs
  • Past experience with programming languages for data processing and presentation - along the lines of Python, R, Go, MatLab
  • Experience with RTL design in an HDL such as Verilog, SystemVerilog or VHDL
  • A STEM degree in a relevant field, such as electronics engineering or computer science

In Return

You will get to utilise your engineering skills to underpin the power efficiency of many designs, alongside mentoring colleagues to gain a deeper understanding. There will be opportunity to bring your ideas to a wide group of our leading authorities, build your technical leadership and influencing skills and work towards becoming an established and recognised authority within the existing team.

 

#LI-SM1

 

Accommodations at Arm

At Arm, we want our people toDo Great Things. If you need support or an accommodation toBe Your Brilliant Selfduring the recruitment process, please email . To note, by sending us the requested information, you consent to its use by Arm to arrange for appropriate accommodations. All accommodation requests will be treated with confidentiality, and information concerning these requests will only be disclosed as necessary to provide the accommodation. Although this is not an exhaustive list, examples of support include breaks between interviews, having documents read aloud or office accessibility. Please email us about anything we can do to accommodate you during the recruitment process.

Hybrid Working at Arm

Arm’s approach to hybrid working is designed to create a working environment that supports both high performance and personal wellbeing. We believe in bringing people together face to face to enable us to work at pace, whilst recognizing the value of flexibility. Within that framework, we empower groups/teams to determine their own hybrid working patterns, depending on the work and the team’s needs. Details of what this means for each role will be shared upon application. In some cases, the flexibility we can offer is limited by local legal, regulatory, tax, or other considerations, and where this is the case, we will collaborate with you to find the best solution. Please talk to us to find out more about what this could look like for you.

Equal Opportunities at Arm

Arm is an equal opportunity employer, committed to providing an environment of mutual respect where equal opportunities are available to all applicants and colleagues. We are a diverse organization of dedicated and innovative individuals, and don’t discriminate on the basis of race, color, religion, sex, sexual orientation, gender identity, national origin, disability, or status as a protected veteran.

National AI Awards 2025

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