Postdoctoral Researcher In Deep Learning For Time Series Data Analysis In Complex Infrastructure And Industrial Systems With A Particular Focus On Graph Neural Networks (gnns) Or Physics Informed Machine Learning (pi Ml)

Lausanne, Switzerland

Job Description

\\n EPFL is one of the most dynamic university campuses in Europe, ranks among the top 20 universities worldwide and offers an exceptional working environment with very competitive salaries. The IMOS Lab offers a highly motivating, interdisciplinary scientific environment with many opportunities to interact between different projects and researchers, and has an excellent network of collaborations with industrial stakeholders and other international universities.

Postdoctoral Researcher in Deep Learning for Time Series Data Analysis in Complex Infrastructure and Industrial Systems with a particular focus on Graph Neural Networks (GNNs) or Physics-Informed Machine Learning (PI-ML)

Key Responsibilities:

Research Leadership: The primary responsibility of the postdoctoral researcher will be to lead and drive research projects focused on the development of novel deep learning techniques, including Graph Neural Networks (GNNs) and Physics-Informed Machine Learning (PI-ML) algorithms, in order to create innovative solutions for the intelligent maintenance and operation of complex infrastructure and industrial systems. This will involve conducting experiments, developing novel algorithms, and publishing research findings in reputable academic journals and top-tier machine learning conferences.

Mentorship: The position includes independent supervision of master students and involvement in the supervision of PhD students.

Teaching: While the primary focus is on research, there will be minimal teaching responsibilities associated with this position.

Description:
We are seeking a highly motivated and skilled Postdoctoral Researcher to join our dynamic research team. The successful applicant will play a pivotal role in advancing the field of deep learning as applied to time series data derived from complex infrastructure and industrial systems. This position offers a unique opportunity to lead cutting-edge research, contribute to the development of innovative solutions, engage in academic mentorship and interact with industrial stakeholders.

Qualifications:
Ph.D. in Computer Science, Machine Learning, Data Science, Signal Processing or a related field: The ideal candidate should possess a strong academic background and expertise in deep learning, particularly as applied to time series data analysis, with specific experience or interest in Graph Neural Networks (GNNs) and/or PI-ML.
Research Experience: Proven experience in conducting independent cutting-edge research in the field of deep learning, including GNNs and PI-ML, with a track record of publications in reputable journals and top-tier machine learning conferences.
Mentorship Skills: Strong interpersonal and communication skills, as well as the ability to effectively mentor and guide students.
Innovative Mindset: Independence, curiosity, and innovation are highly valued qualities in the successful applicant. We encourage creative thinking and the exploration of novel research directions.

Application process:
Interested candidates should submit the following application materials:
  • a letter of motivation,
  • a detailed CV including a list of publications and awards (if applicable)
  • a short research statement (1-2 pages) outlining the intended research proposal, making connection to your experience in this area and the related work from the literature,
  • scanned transcripts of all obtained degrees (in English) (Doctorate, Master\\\'s degree, other degrees)
  • the names and email addresses for 2-3 individuals who can provide reference letters.
Please submit your application via the EPFL application website. Applications submitted via email will not be considered. The application deadline is the 15.11.2023.

Further information on EPFL IMOS Lab can be found under:

Term of employment :
Fixed-term (CDD)

Work rate :
100%

Remark :
Only candidates who applied through EPFL website or our partner Jobup\\\'s website will be considered. Files sent by agencies without a mandate will not be taken into account.

Reference :
Job Nb 3115\\n \\n \\n \\n \\n \\n

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Job Detail

  • Job Id
    JD1631434
  • Industry
    Not mentioned
  • Total Positions
    1
  • Job Type:
    Full Time
  • Salary:
    Not mentioned
  • Employment Status
    Permanent
  • Job Location
    Lausanne, Switzerland
  • Education
    Not mentioned