Postdoctoral Fellow in Machine Learning Applications for Utility-Scale PV
Postdoctoral Fellow in Machine Learning Applications for Utility-Scale PV

Postdoctoral Fellow in Machine Learning Applications for Utility-Scale PV

Glasgow Full-Time 80000 - 90000 £ / year (est.) No home office possible
U

At a Glance

  • Tasks: Develop machine learning algorithms for renewable energy applications and engage in scholarly research.
  • Company: UNSW is a leading institution in renewable energy research, known for its innovative contributions to solar technology.
  • Benefits: Enjoy a competitive salary, flexible work options, and opportunities for international collaboration.
  • Why this job: Join a dynamic team making a real impact on sustainable energy and advance your research career.
  • Qualifications: PhD in Computer Science or related field with expertise in machine learning and deep learning.
  • Other info: Applications close on 16 June 2025; diverse candidates are encouraged to apply.

The predicted salary is between 80000 - 90000 £ per year.

Postdoctoral Fellow in Machine Learning Applications for Utility-Scale PV Join to apply for the Postdoctoral Fellow in Machine Learning Applications for Utility-Scale PV role at UNSW Postdoctoral Fellow in Machine Learning Applications for Utility-Scale PV 1 week ago Be among the first 25 applicants Join to apply for the Postdoctoral Fellow in Machine Learning Applications for Utility-Scale PV role at UNSW Get AI-powered advice on this job and more exclusive features. The Opportunity The School of Photovoltaic and Renewable Energy Engineering (SPREE) has an opportunity for a Postdoctoral Fellow. You will contribute to UNSW’s research efforts in developing machine learning and deep learning algorithms for dynamic systems (sequential or time-series data). Experience in applying these methods to renewable energy (wind or photovoltaic) applications is highly desirable. This Job is based in Australia The Opportunity The School of Photovoltaic and Renewable Energy Engineering (SPREE) has an opportunity for a Postdoctoral Fellow. You will contribute to UNSW’s research efforts in developing machine learning and deep learning algorithms for dynamic systems (sequential or time-series data). Experience in applying these methods to renewable energy (wind or photovoltaic) applications is highly desirable. This position will provide you with the opportunity to develop your scholarly research and professional activities both nationally and internationally. You will contribute to writing scientific papers and reports for international journals, participate in conferences and workshops, supervise HDR students, and actively engage with industry partners. This role reports to Professor Ziv Hameiri and has no direct reports. Level A, Salary – $110,059 to $117,718 per annum + 17% superannuation Full time Fixed-term contract –ASAP start until December 2025 Location: Kensington – Sydney, Australia About UNSW UNSW isn’t like other places you’ve worked. Yes, we’re a large organisation with a diverse and talented community; a community doing extraordinary things. But what makes us different isn’t only what we do, it’s how we do it. Together, we are driven to be thoughtful, practical, and purposeful in all we do. If you want a career where you can thrive, be challenged and do meaningful work, you’re in the right place. The School of Photovoltaic and Renewable Energy Engineering is internationally recognised for its record-breaking research in solar power (photovoltaics) and renewable energy. The PERC solar cell was first invented at UNSW in our labs in 1983 and today powers more than 85% of all new solar panel modules all over the world. SPREE’s work and people have changed the face of sustainable energy on the global stage, and we continue to be at the forefront of leading-edge research and development in the field of renewable technology as our economies transition away from fossil fuels. For more information, please see the following link: https://www.unsw.edu.au/engineering/our-schools/photovoltaic-and-renewable-energy-engineering Skills & Experience A PhD in Computer Science or a related field. Thorough theoretical background in machine learning and deep learning. Demonstrated experience in developing machine learning and deep learning algorithms for dynamic systems (sequential or time-series data), preferably for renewable energy (wind or photovoltaic) applications. Proven expertise in (and/or proven ability to learn if necessary): One or more scientific programming languages, such as Python (preferred) or R, with a preference for functional style and algorithms experience. One or more deep learning frameworks, such as PyTorch (preferred) or TensorFlow, with a preference for experience implementing SOTA models and training procedures from academic journal papers. Development of data engineering pipelines (data aggregation and processing, database management, analysis, and visualisation). Operating within Unix-based environments (headless servers, HPC clusters), with a preference for experience managing server infrastructure. Collaborative software development using tools such as git/GitHub or equivalent. Highly desirable: experience with generative representation learning models (VAEs, GANs, etc.) or similar unsupervised data modelling techniques. A strong practice of maintaining an open-source code repository. A solid theoretical background in semiconductor device physics or substantial practical experience in electrical engineering, especially related to photovoltaic devices and systems. Demonstrated research excellence. Evidence of winning major international awards for research is highly desirable. Demonstrated track record in research with outcomes of high quality and high impact. Proven commitment to proactively keeping up to date with discipline knowledge and developments. Demonstrated ability to work in a team, collaborate across disciplines and build effective relationships. Demonstrated ability to communicate and interact with a diverse range of stakeholders and students. Evidence of highly developed interpersonal skills. An understanding of and commitment to UNSW’s aims, objectives and values in action, together with relevant policies and guidelines. Knowledge of health and safety responsibilities and commitment to attending relevant health and safety training. Additional details about the specific responsibilities for this position can be found in the position description. This is available via JOBS@UNSW. To Apply: Please click the apply now button and submit your CV, Cover Letter and Responses to the Skills and Experience. You should systematically address the Skills and Experience listed within the position description in your application. Please note applications will not be accepted if sent to the contact listed below. Contact : Eugene Aves – Talent Acquisition Consultant E: eugene.aves@unsw.edu.au Applications close: 11:55 pm (Sydney time) on Monday 16 June 2025 UNSW is committed to evolving a culture that embraces equity and supports a diverse and inclusive community where everyone can participate fairly, in a safe and respectful environment. We welcome candidates from all backgrounds and encourage applications from people of diverse gender, sexual orientation, cultural and linguistic backgrounds, Aboriginal and Torres Strait Islander background, people with disability and those with caring and family responsibilities. UNSW provides workplace adjustments for people with disability, and access to flexible work options for eligible staff. The University reserves the right not to proceed with any appointment. Seniority level Seniority level Internship Employment type Employment type Full-time Job function Job function Research Industries Higher Education and Research Services Referrals increase your chances of interviewing at UNSW by 2x Get notified about new Postdoctoral Researcher jobs in Glasgow, Scotland, United Kingdom . 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Postdoctoral Fellow in Machine Learning Applications for Utility-Scale PV employer: UNSW

UNSW is an exceptional employer, offering a vibrant work culture that fosters innovation and collaboration in the field of renewable energy. As a Postdoctoral Fellow, you will have access to extensive professional development opportunities, engage with industry partners, and contribute to groundbreaking research that has a global impact, all while being based in the beautiful and dynamic city of Sydney, Australia.
U

Contact Detail:

UNSW Recruiting Team

eugene.aves@unsw.edu.au

StudySmarter Expert Advice 🤫

We think this is how you could land Postdoctoral Fellow in Machine Learning Applications for Utility-Scale PV

✨Tip Number 1

Familiarise yourself with the latest advancements in machine learning and deep learning, especially as they pertain to renewable energy applications. This will not only enhance your knowledge but also allow you to engage in meaningful discussions during interviews.

✨Tip Number 2

Network with professionals in the field of photovoltaic and renewable energy engineering. Attend relevant conferences or workshops where you can meet potential colleagues and mentors who can provide insights into the role and the research environment at UNSW.

✨Tip Number 3

Showcase your collaborative skills by participating in open-source projects related to machine learning or renewable energy. This demonstrates your ability to work in a team and your commitment to contributing to the community, which is highly valued at UNSW.

✨Tip Number 4

Prepare to discuss your previous research experiences and how they relate to the position. Be ready to explain your methodologies and the impact of your work, as this will highlight your suitability for the Postdoctoral Fellow role.

We think you need these skills to ace Postdoctoral Fellow in Machine Learning Applications for Utility-Scale PV

PhD in Computer Science or related field
Theoretical background in machine learning and deep learning
Experience in developing algorithms for dynamic systems (sequential or time-series data)
Application of machine learning to renewable energy (wind or photovoltaic)
Proficiency in Python or R programming languages
Experience with deep learning frameworks such as PyTorch or TensorFlow
Implementation of state-of-the-art models and training procedures
Development of data engineering pipelines
Database management and data visualisation skills
Experience in Unix-based environments
Collaborative software development using git/GitHub
Knowledge of generative representation learning models (VAEs, GANs)
Strong practice of maintaining an open-source code repository
Theoretical background in semiconductor device physics or practical experience in electrical engineering
Demonstrated research excellence and high-impact outcomes
Ability to work collaboratively across disciplines
Strong interpersonal and communication skills
Commitment to UNSW’s aims and values
Understanding of health and safety responsibilities

Some tips for your application 🫡

Tailor Your Cover Letter: Make sure to customise your cover letter specifically for the Postdoctoral Fellow position at UNSW. Highlight your experience in machine learning and deep learning, particularly in relation to renewable energy applications, as this is a key requirement.

Address Skills and Experience: Systematically address each of the skills and experience listed in the job description. Use specific examples from your past work or research that demonstrate your expertise in areas such as scientific programming languages, deep learning frameworks, and data engineering pipelines.

Showcase Research Excellence: Include details about your research achievements, especially any major international awards or high-impact outcomes. This will help demonstrate your commitment to excellence in research, which is highly desirable for this role.

Proofread Your Application: Before submitting, thoroughly proofread your CV, cover letter, and responses to ensure there are no errors. A well-presented application reflects your attention to detail and professionalism, which are crucial in academic roles.

How to prepare for a job interview at UNSW

✨Showcase Your Research Experience

Be prepared to discuss your previous research projects in detail, especially those related to machine learning and renewable energy. Highlight any publications or presentations you've made, as this demonstrates your ability to contribute to UNSW's scholarly activities.

✨Demonstrate Technical Proficiency

Familiarise yourself with the specific programming languages and frameworks mentioned in the job description, such as Python and PyTorch. Be ready to discuss your experience with developing algorithms and data engineering pipelines, as well as any relevant projects you've worked on.

✨Understand UNSW's Values

Research UNSW’s mission and values, and be prepared to articulate how your personal values align with theirs. This shows that you are not only a good fit for the role but also for the university's culture.

✨Prepare Questions for the Interviewers

Have thoughtful questions ready to ask your interviewers about their current projects, team dynamics, and future goals for the department. This demonstrates your genuine interest in the position and helps you assess if it's the right fit for you.

Postdoctoral Fellow in Machine Learning Applications for Utility-Scale PV
UNSW
U
  • Postdoctoral Fellow in Machine Learning Applications for Utility-Scale PV

    Glasgow
    Full-Time
    80000 - 90000 £ / year (est.)

    Application deadline: 2027-06-18

  • U

    UNSW

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