Search for University Jobs in Engineering

Job ID: 209339

INESCTEC | Bolsa de Investigação (BI) em Engenharia Elétrica (AE2023-0155)
INESCTEC


Date Posted Apr. 19, 2023
Title INESCTEC | Bolsa de Investigação (BI) em Engenharia Elétrica (AE2023-0155)
University INESCTEC
PORTO, Portugal
Department CPES
Application Deadline May 19, 2023
Position Start Date Apr. 19, 2023
 
 
  • Graduate Student
  • Engineering - Other
 
 

INESC TEC is now accepting grant applications to award 1 Research Grant (BI) on the scope Green_Dat_AI with
reference 101070416 funded by the European Commission under the Horizon Europe program for the period
2021-2027.

1. GRANT DESCRIPTION
Type of grant: Research Grant (BI)
General scientific area: ENGINEERING
Scientific subarea: Electrical engineering
Grant duration: 12 months, starting on 2023-06-12, with the possibility of being renewed until the end of the
project.
Scientific advisor: Carla Silva Gonçalves
Workplace: INESC TEC, Porto, Portugal
Maintenance stipend: € 930,98 or 1199,64, according to the table of monthly maintenance stipend for FCT grants
, paid via bank transfer. Grant holders may be awarded potential supplements, according to a quarterly evaluation
process (Articles 19, 21 and 22 of the Regulations for Grants of INESC TEC and Annex II), up to a maximum limit of
50% of the monthly maintenance stipend.
INESC TEC supports costs with registration, enrolment or tuition fees, during the grant duration, under the terms
established in the internal document: "Payment of Tuition fees to grant holders".
The grant holder will benefit from health insurance, supported by INESC TEC.

2. OBJECTIVES:
The European Project GREEN.DAT.AI will demonstrate the efficiencies of the new large-scale data analytics
services in four industries (Smart Energy, Smart Agriculture/Agri-food, Smart Mobility, Smart Banking) and six
different application scenarios, leveraging the use of European Data Spaces. The work of INESC TEC is
focused on federated learning and control at the edge device (smart electric vehicle charging) and maintenance
of renewable power plants. The main objectives are:
- Contribute to the state of the art in artificial intelligence at the edge and data sharing;
- Develop the research capacity in machine learning and data-driven optimisation;
- Exercise critical thinking in the evaluation of the research process and the results obtained.

3. BRIEF PRESENTATION OF THE WORK PROGRAMME AND TRAINING:
- Development of federated learning and control algorithms for intelligent control of electric vehicles;
- Development of strategies to valorise data from renewable power plants in advanced maintenance strategies;
- Dissemination of work in international journals.

4. REQUIRED PROFILE:
Admission requirements:
The awarding of the fellowship is dependent on the applicants' enrolment in study cycle or non-award courses of
Higher Education Institutions.
Preference factors:
Knowledge in energy management and optimization; Experience with software and API development; Fluency in
English (spoken and written).
Minimum requirements:
Basic knowledge about machine learning;
Programming skills (Python or C++).

5. EVALUATION OF APPLICATIONS AND SELECTION PROCESS:
Selection criteria and corresponding valuation: the first phase comprises the Academic Evaluation (AC), based
on the criteria referred to in Article 12 of the Regulations for Grants of INESC TEC, while the second phase
comprehends the Individual Interview (EI). All factors are evaluated on a scale of 0 to 100, taking into account the
applicants' merit, suitability and conformity with the preference factors.
The weight of the AC factors are as follows: Academic Qualifications (FA, 50%), Scientific Publications (PC, 20%),
Experience (EX, 20%) and Motivation Letter (CM, 10%).
Candidates who score less than 50 points in the AC average will be considered excluded on absolute merit. The top
five candidates approved on absolute merit will be qualified for the individual interview. The Final Grade (CF) is
obtained by the weighted average of AC (70%) and EI (30%).
The Selection Jury is composed of the following members:
President of the Jury: Carla Silva Gonçalves
Full member: David Emanuel Rua
Full member: Ricardo Jorge Bessa
Substitute member: Conceição Nunes Rocha
Release of results and prior hearing: the results of the selection process, as well as the terms and procedures for
prior hearing, will be released to the applicants by email, under the terms referred to in Article 13 of the Regulations
for Studentships and Fellowships of INESC TEC.

6. FORMALISATION OF APPLICATIONS:
Application Documents:
1. Motivation letter;
2. Curriculum Vitae (must include the list of previous fellowships, their type, beginning and end dates, funding
entities and host institutions);
3. Certificate or diploma degree dully recognised in Portugal;
● Documents proving the awarding of academic degrees and diplomas, or the according recognition - in cases of academic degrees or diplomas granted by a foreign higher education institution - can be dismissed in the application process, and replaced by the applicant's declaration of honour, with the verification of said condition taking place during the grant's hiring stage. The submission of the certificate is mandatory when signing the contract.
● Academic degrees or diplomas awarded by a foreign higher education institution require an authentication by a Portuguese higher education institution, and the corresponding registration on the DGES platform, in conformity with Decree-Law no. 66/2018, of August 16, and Ordinance no. 33/2019, of January 25. More information available on the website
https://www.dges.gov.pt/pt/pagina/reconhecimento?plid=374
4. Proof of enrollment in a degree awarding study cycle or in a non degree awarding Higher Education program.
● The proof of enrollment may be presented just during the grant hiring stage.
5. Signed declaration stating the infringement of the grant holder's duties (article 14, no. 4)
6. Documental evidence to support the country of residence, residence permit or other legally equivalent
document, in cases where the applicant is a foreigner or non-resident in Portugal - valid until the beginning of
the grant.
7. Other supporting documents relevant to the final assessment.

Failure to deliver the required documents within the 90-day period after the date of the notice of the conditional
awarding of the grant implies its cancellation.
Application period: From 2023-04-19 to 2023-05-19
Submission of applications: the application will be formalised by submitting the form available in the Work With
Us section of INESC TEC website.

7. BINDING LEGISLATION AND REGULATION
The hiring process shall comply with the current legislation regarding the Research Grant Holder Statute, approved
by Law no. 40/2004 of August 18, in its current wording, as well as by the Regulations for Grants of INESC TEC
and for FCT Grants Regulation in force.
For more information, please check the Regulations for Grants of INESC TEC and relevant annexes at
www.inesctec.pt/bolsas


 
Please reference AcademicKeys.com in your cover letter when
applying for or inquiring about this job announcement.
 
 

Contact Information

 

 

Refer this job to a friend or colleague!



New Search | Previous