Research Fellow in Ai for Electronic Systems

5 months ago


Edinburgh, United Kingdom University of Edinburgh Full time

**Grade UE08: £48,350 - £59,421**

**College of Science & Engineering / School of Engineering**

**Institute/Discipline: Integrated Micro and Nano Systems**

**Contract type: Full-time (35 hours per week)**

**Fixed term for up to 5 years**

**The Opportunity**:
This position is affiliated with the UKRI APRIL AI Hub that aspires to develop AI tools to accelerate innovation across semiconductor technologies, novel microchip designs and system architectures - leading to faster, cheaper, greener and overall, more power-efficient electronics. As one of nine UKRI funded AI Hubs, this is a highly visible programme both nationally and internationally.

The post-holder will work closely with a team of talented researchers and the APRIL operations team to lead the development of novel AI capabilities, tools and methodologies that can enhance the productivity of engineers in designing, developing and testing advanced electronic devices and systems. More specifically, the post-holder should have experience in building “digital twins” for modelling device/systems performance, with input from automated testing routines. The research spans from automated process for new and emerging semiconductor devices to efficient modelling of complex electronic circuits and architectures. automatically deciphering underlying physical mechanism is emerging beyond-CMOS devices.

The post-holder will have the ability to engage with world-leading experts across AI and electronics both at Edinburgh and in other UK higher education (HE) institutions but also industrial partners to ensure relevance of their Research in addressing state-of-art challenges in electronics.

**Your skills and attributes for success**:

- A 1 st class undergraduate degree and a PhD in Electronics or AI, or a clearly related area, with a proven contact with Electronic systems modelling, or a closely related area or equivalent industry experience.
- Experience in AI tools for Electronic systems modelling automation and experience with Electronics Testing and instrumentation.
- A track record of research in AI, with a specific focus on Electronic systems modelling or a closely related area.
- Experience in delivering research project results in an Electronic systems modelling and/or AI context; i.e. a record of peer-reviewed journal and conference papers in a relevant area.
- Ability to be adaptive and accepting of new ideas and a willingness to approach new challenges and adjusts plans to meet new priorities.

Click **here **for a copy of the full job description

**As a valued member of our team you can expect**:

- A competitive salary of £48,350 - £59,421
- An exciting, positive, creative, challenging and rewarding place to work.
- To be part of a diverse and vibrant international community
- Comprehensive Staff Benefits, such as a generous holiday entitlement, a defined benefits pension scheme, staff discounts, family-friendly initiatives, and flexible work options. Check out the full list on our **staff benefits page **(opens in a new tab) and use our reward calculator to discover the total value of your pay and benefits

**Championing equality, diversity and inclusion**

The University of Edinburgh holds a Silver Athena SWAN award in recognition of our commitment to advance gender equality in higher education. We are members of the Race Equality Charter and we are also Stonewall Scotland Diversity Champions, actively promoting LGBT equality.

Prior to any employment commencing with the University you will be required to evidence your right to work in the UK. Further information is available on our **right to work webpages **(opens new browser tab)

**Key dates to note



  • Edinburgh, United Kingdom The University of Edinburgh Full time

    Full-time 35 hours per week Fixed term for up to 5 years The Centre for Electronic Frontiers (CEF) at the University of Edinburgh is accepting applications for an experienced Research Fellow in AI for Electronics Testing & Verification automation. The position will be based at the King’s Buildings Campus. The Opportunity: This position is affiliated with...


  • Edinburgh, United Kingdom University of Edinburgh Full time

    **UE08, £48,350 - £59,421** **School of Engineering, College of Science & Engineering** **Institute/Discipline: Integrated Micro and Nano Systems** **Full-time 35 hours per week** **Fixed term for up to 5 years** **The Opportunity**: This position is affiliated with the UKRI APRIL AI Hub that aspires to develop AI tools to accelerate innovation across...


  • Edinburgh, United Kingdom University of Edinburgh Full time

    **Grade UE08: £48,350 - £59,421** **College of Science & Engineering / School of Engineering** **Institute/Discipline: Integrated Micro and Nano Systems** **Contract type: Full-time (35 hours per week)** **Fixed term for up to 5 years** **The Opportunity**: This position is affiliated with the UKRI APRIL AI Hub that aspires to develop AI tools to...


  • Edinburgh, United Kingdom University of Edinburgh Full time

    **UE07, £39,347.00 - £46,974.00** **School of Engineering, College of Science & Engineering** **Institute/Discipline: Integrated Micro and Nano Systems** **Full-time 35 hours per week** **Fixed term for up to 5 years **The Opportunity**: This position is affiliated with the UKRI APRIL AI Hub that aspires to develop AI tools to accelerate innovation...


  • Edinburgh, United Kingdom University of Edinburgh Full time

    **UE08: £48,350.00 - £59,421.00.00** **School of Engineering, College of Science & Engineering** **Institute/Discipline: Integrated Micro and Nano Systems** **Full-time 35 hours per week** **Fixed term for up to 5 years** **The Opportunity**: This position is affiliated with the UKRI APRIL AI Hub that aspires to develop AI tools to accelerate...


  • Edinburgh, United Kingdom University of Edinburgh Full time

    **UE08: £48,350 - £59,421** **School of Engineering, College of Science & Engineering** **Institute/Discipline: Integrated Micro and Nano Systems** **Full-time 35 hours per week** **Fixed term for up to 5 years** **The Opportunity**: This position is affiliated with the UKRI APRIL AI Hub that aspires to develop AI tools to accelerate innovation across...


  • Edinburgh, United Kingdom University of Edinburgh Full time

    **Grade, Salary Range: UE07, £39,347.00 - £46,974.00** **School of Engineering, College of Science & Engineering** **Institute/Discipline: Integrated Micro and Nano Systems** **Full-time 35 hours per week** **Fixed term for up to 5 years **The Opportunity**: This position is affiliated with the UKRI APRIL AI Hub that aspires to develop AI tools to...


  • Edinburgh, United Kingdom Canon Medical Research Europe Full time

    **About us**: At Canon Medical Research Europe, helping care teams to get the best outcome for their patients is at the heart of everything we do. We strive to create technology that makes a meaningful difference to people’s lives, helping doctors restore their patients’ health and well-being. Our R&D centre of excellence in Edinburgh are seeking an...


  • Edinburgh, United Kingdom University of Edinburgh Full time

    **Grade, Salary Range: UE07, £39,347.00 - £46,974.00** **School of Engineering, College of Science & Engineering** **Institute/Discipline: Integrated Micro and Nano Systems** **Full-time 35 hours per week** **Fixed term for up to 5 years **The Opportunity**: This position is affiliated with the UKRI APRIL AI Hub that aspires to develop AI tools to...


  • Edinburgh, United Kingdom University of Edinburgh Full time

    **UE07, £39,347.00 - £46,974.00** **School of Engineering, College of Science & Engineering** **Institute/Discipline: Integrated Micro and Nano Systems** **Full-time 35 hours per week** **Fixed term for up to 5 years **The Opportunity**: This position is affiliated with the UKRI APRIL AI Hub that aspires to develop AI tools to accelerate innovation...


  • Edinburgh, United Kingdom University of Edinburgh Full time

    **UE07, £39,347.00 - £46,974.00** **School of Engineering, College of Science & Engineering** **Institute/Discipline: Integrated Micro and Nano Systems** **Full-time 35 hours per week** **Fixed term for up to 5 years **The Opportunity**: This position is affiliated with the UKRI APRIL AI Hub that aspires to develop AI tools to accelerate innovation...

  • AI Researcher

    1 week ago


    Edinburgh, Edinburgh, United Kingdom Edinburgh Napier University Full time

    The Computer Science group at Edinburgh Napier University is seeking a highly skilled Research Fellow to join their cutting-edge project developing AI-driven solutions for the aviation industry.The successful candidate will investigate and develop adaptive real-time AI models for MRO use cases, focusing on areas such as demand forecasting, resource...


  • Edinburgh, Edinburgh, United Kingdom AI Square Corp Full time

    Position at AI Square CorpPhD Student in In-Memory Computing Architectures for AIThe project aims to explore the potential benefits of In-Memory Computing (IMC) in addressing the performance bottlenecks of AI hardware. Digital IMC is proposed to bridge the Von-Neumann performance gap for AI applications with massive data workloads. The project targets...


  • Edinburgh, Edinburgh, United Kingdom AI Square Corp Full time

    Position at AI Square CorpPhD Student, Software Modelling/Optimization for AI Computing ArchitecturesWe are seeking a highly skilled PhD student to join our team at AI Square Corp, focusing on software modelling and optimization for AI computing architectures. The successful candidate will contribute to the development of Python-based libraries for training...


  • Edinburgh, Edinburgh, United Kingdom AI Square Corp Full time

    Position at AI Square CorpThe project aims to explore the potential of In-Memory Computing (IMC) to address AI hardware bottlenecks. IMC is proposed to bridge the Von-Neumann performance gap for AI applications with massive data workloads. The project targets exploring unconventional computing domains, such as Stochastic and Quasi-Stochastic, for...


  • Edinburgh, Edinburgh, United Kingdom AI Square Corp Full time

    Position @ AI Square CorpPhD Student, In-Memory Computing Architectures for AIThe project aims to explore the potential benefits of In-Memory Computing (IMC) in addressing the performance bottlenecks of AI hardware. By leveraging digital IMC, we aim to bridge the Von-Neumann performance gap for AI applications with massive data workloads. The project focuses...


  • Edinburgh, Edinburgh, United Kingdom AI Square Corp Full time

    Position @ AI Square CorpPhD Student, In-Memory Computing Architectures for AIThe project aims to explore the potential benefits of In-Memory Computing (IMC) in addressing the performance bottlenecks of AI hardware. By leveraging digital IMC, we aim to bridge the Von-Neumann performance gap for AI applications with massive data workloads. The project focuses...


  • Edinburgh, Edinburgh, United Kingdom AI Square Corp Full time

    Position @ AI Square CorpPhD Student, In-Memory Computing Architectures for AIThe project aims to explore the potential benefits of In-Memory Computing (IMC) in addressing the performance bottlenecks of AI hardware. IMC is proposed to bridge the Von-Neumann performance gap for AI applications with massive data workloads. The project targets exploring...


  • Edinburgh, Edinburgh, United Kingdom AI Square Corp Full time

    Position @ AI Square CorpPhD Student, In-Memory Computing Architectures for AIThe project aims to explore the potential benefits of In-Memory Computing (IMC) in addressing the performance bottlenecks of AI hardware. IMC is proposed to bridge the Von-Neumann performance gap for AI applications with massive data workloads. The project targets exploring...


  • Edinburgh, Edinburgh, United Kingdom AI Square Corp Full time

    Position @ AI Square CorpPhD Student, In-Memory Computing Architectures for AIThe project aims to explore the potential benefits of In-Memory Computing (IMC) in addressing the performance bottlenecks of AI hardware. IMC is proposed to bridge the Von-Neumann performance gap for AI applications with massive data workloads. The project targets exploring...