Cookies Policy
The website need some cookies and similar means to function. If you permit us, we will use those means to collect data on your visits for aggregated statistics to improve our service. Find out More
Accept Reject
  • Menu
Research Opportunities
Apply now Final Selection Minute View Formal Call
Research Opportunities

Engineering

[Closed]

Work description

The proposed position comprises literature review and experimental work comprising: - push forward the state of the art knowledge in machine learning regarding methods for neural networks complexity reduction; - development of methods for the evaluation of biases, fairness, overestimation and related metrics; - study, development and comparison of diverse approaches to reduce the complexity of neural networks; - development of benchmarking approaches that go beyond the traditional Accuracy vs Complexity trade-off; - exercise critical thinking in evaluating the research process and the results obtained.

Academic Qualifications

Students enrolled in a professional higher technical course, in a degree, in an integrated master's degree or in a master's degree.

Minimum profile required

Minimum or equal grade of 16 in the Bachelor studies.

Preference factors

Experience in Computer Vision and Machine Learning.

Application Period

Since 07 Dec 2023 to 21 Dec 2023

[Closed]

Centre

Telecommunications and Multimedia

Scientific Advisor

Ana Filipa Sequeira