PhD Student - Computer Science with desirable specialization in Data Science (DC12); knowledge and experience in wind energy are welcome
Lisbon
ANNEA
ANNEA offers AI-powered solutions to enhance the efficiency of renewables. Minimize Downtime. Maximize Profitability. Brain for RenewablesYour mission
TWEED Project
TWEED is looking for 12 talented and motivated Doctoral Candidates (DCs) with the skills, knowledge and enthusiasm to work as part of a network to advance the field of digitalisation within the wind energy sector.
The “Training Wind Energy Experts on Digitalisation (TWEED)” Doctoral Network (DN) aims to train the next generation of excellent researchers equipped with a full set of technical and complementary skills to develop high-impact careers in wind energy digitalisation.
Co-funded by the European Commission through the Horizon Europe Marie Sklodowska Curie Doctoral Networks Programme, the TWEED network offers 12 Doctoral Candidates (DCs) positions to provide high-level training in the new emerging research field of Wind Energy Data Science and Digitalisation.
An outstanding research-for-innovation programme, and a unique training programme that combines hands-on research training, interactive schools and hackathons, innovation management and placements with industry partner organisations has been designed for the DCs who will participate in the network. Alongside the exciting research topics related to wind energy data science, the research programme also includes state-of-the-art technology to develop a new Wind Energy Data Science Hub that will facilitate a virtual research environment to foster collaboration, data sharing and testing of innovative solutions to significantly increase the value of wind energy.
The network will provide an interdisciplinary and inter-sectoral context to foster creativity in tackling wind energy data science and digitalisation challenges by developing solutions for commercial exploitation.
DCs will be trained in business innovation to extend their focus beyond the academic context, to be able to identify added-value products or services with the guidance from established researchers and entrepreneurs. As a result, a research-for-innovation mindset will be developed to provide enhanced career prospects for the fellows, equipping them with a complete set of thematic, technological and innovation skills.
DCs are expected to i) conduct high quality, original academic research in the fields of Wind Energy, Digitalisation, Data Science and Computer Science, ii) participate in the network’s planned training-dissemination activities and mobility plan, iii) collaborate with fellow researchers, with the goal of advancing and promoting the network's objectives.
The most talented and motivated candidates will be selected to participate in the network's interdisciplinary collaborative research training, preferably starting in February 2024. The assessment shall be carried out by the TWEED recruitment team.
DC Project
Internal code of the position: DC12
Host Institution: ANNEA.ai
Brief description of the project:
The doctoral candidate will be responsible for developing a unified technological platform that integrates advancements across various wind energy research areas. This includes analyzing technological patterns from previous work to propose cohesive solutions that align with ongoing projects. A major focus will be the creation of a comprehensive Wind Energy Knowledge Hub, featuring a source code repository, data lake, knowledge models, and training resources. The hub will be designed according to European Open Science Cloud (EOSC) guidelines, enabling data reuse and innovation in wind energy research. Candidates will also develop semantic artefacts for data integration and implement a novel knowledge graph generation approach for effective data management.
In this role, candidates will facilitate global collaboration within the wind energy community by promoting knowledge sharing through the WeDoWind Framework. They will design a reference model for the knowledge hub, which will serve as both a deployment proposal and a training resource. Additionally, candidates will define the data and knowledge resources needed by researchers in the field, drawing on solutions from other industries to develop a modern, scalable implementation framework aligned with international standards.
Candidates will also contribute to industry-wide advancements in data sharing and standardization by co-authoring a joint paper addressing the challenges of wind energy data interoperability. Their work will help promote greater collaboration and progress in wind energy research, supporting long-term sustainability efforts across the sector.
Secondments:
3 months in UNIZAR to attend PhD courses and coordinate research activities (F. Javier Zarazaga-Soria). 5,5 months distributed into 2 weeks secondment to the host places of Doctoral Candidates 1-11 to understand the pilots developed and to support their implementation in the Hub platform.
Personal Supervisory Team:
Main Supervisor: Maik Reder
Co-Supervisors: F. Javier Zarazaga-Soria (UNIZAR)
Your profile
Research Field: Computer Science with desirable specialization in Data Science (DC12); knowledge and experience in wind energy are welcomeEducation Level: Master Degree or equivalent
Skills / Qualifications:
- Computer Science with desirable specialization in Data Science, knowledge and experience in wind energy are welcome
- Applicants must be proficient in the English language.
- Master degree or equivalent obtained by the time they are appointed. Students currently in the final year of a Master’s degree are encouraged to apply but should note that if selected, they will be expected to start their PhD in the first quarter of 2025.
- Specific requirements:
- Excellent writing and communication skills in English
- Background in wind energy & renewable energies is not required but considered a big plus
- Programming skills that are useful to have skills or knowledge in for the role:
- Programming Languages: TypeScript, JavaScript, Python
- Web Frameworks: NestJS, NextJS
- Testing Frameworks: pytest, Jest, Cypress
- Databases: Timescale (PostgreSQL), MongoDB
- Version Control: Git, GitLab
- ORM: Prisma
- DevOps: AWS, Kubernetes, Terraform, Helm, Docker
- Ability to work in a team and independently
- Willingness to follow the mobility plan of the programme (conduct secondments in the country of the host institute or abroad)
- The successful candidate must also fulfil the requirements for admission to a PhD program at University of Zaragoza.
Languages: English Level: Excellent
Why us?
BenefitsYou will work under a 36-month employment contract with the competitive conditions and salary adapted to the living costs in each host country, set by the MSCA Doctoral Networks (DN). The MSCA DN programme offers a highly competitive and attractive salary and working conditions. The successful candidates will receive a salary in accordance with the MSCA regulations for DCs, according to the national rules of the country with full social security benefits.
The successful candidate will receive a financial package plus an additional mobility and family allowance according to the rules for Doctoral Candidates (DCs) in an EU Marie Skłodowska-Curie Actions Doctoral Networks:
- The gross salary will be calculated by deducting the applicable employer taxes and social security contribution for each country, will be approximately €3,059 (without family allowance) or €3,592 (with family allowance) / month. Additional deductions may apply based on your personal circumstances and local tax/social security regulations.
Following the EU’s commitment to DEI, the TWEED network and ANNEA.ai encourages and promotes the participation of under-represented groups such as women in technical careers, people from diverse economic and ethnic backgrounds, people with disabilities, those who identify as neurodivergent and LGBTQA+. The {Host institution} community aims to exercise a policy of equal opportunities at all times.
Additional information can be found in Information Note for Marie Sklodowska-Curie fellows in Doctoral Networks.
Eligibility criteria
All applicants must, at the date of the recruitment, comply with the following ELIGIBILITY CRITERIA:
- Candidate status: At the time of recruitment, applicants must not hold a doctoral degree or equivalent.
- Mobility Rule: Applicants can be of any nationality. However, applicants must not have resided or carried out their main activity (work, studies, etc.) in the country of the recruiting organisation for more than 12 months in the 3 years immediately before the appointment. This excludes short stays such as holidays or compulsory national service
* Salary range is an estimate based on our AI, ML, Data Science Salary Index 💰
Tags: AWS Computer Science Data management DevOps Docker Git GitLab Helm JavaScript Kubernetes MongoDB PhD PostgreSQL Python Research Security Terraform Testing TypeScript
Perks/benefits: Competitive pay Flex hours
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