RSS Feed Source: Academic Keys

Research Opportunities

Programming, Computer engineering

Work description

The goal of this research is to evaluate how Large Language Models (LLMs) can be leveraged to address forecasting challenges in the energy sector, specifically those that can be framed as sequence-to-sequence problems.

The grant holder will explore different strategies on prompt engineering, compare the potential of different LLM’s and create a methodology that can be replicable to multiple challenges for the energy sector.

Academic Qualifications

Electrical Engineering, Informatics, Computer Science or similar courses.

Minimum profile required

Programming experience in Python. Basic understanding of machine learning concepts. Experience using data science tools (e.g., pandas, scikit-learn, matplotlib). Familiarity with version control systems (Git).

Preference factors

Familiarity with Large Language Models (e.g., Mistral, LLaMA). Understanding of machine learning workflows and forecasting methods. Python oriented to data manipulation and analytics.

Maintenance stipend: € 651.12, according

Click this link to continue reading the article on the source website.

RSS Feed Source: Academic Keys

Job ID: 257948

INESC TEC | Doctor Researcher (AE2025-0235)
INESC TEC

Research Opportunities

Computer Science

Work description

Contribution to the preparation of R&D proposal proposals. Development of intelligent models within the scope of electrical energy systems. Supervision of students and scholarship holders to develop work related to the area of work. Development of scientific production oriented to international journals and conferences, and participation in scientific and technological dissemination initiatives.

Academic Qualifications

Ph.D. degree in Computer Science or a related scientific field, and who possess a scientific and professional track record demonstrating a profile suitable for the activities to be carried out, are eligible to apply.

Minimum profile required

Ph.D. holders with experience in the development of data science-based solutions applied to the domain of electric power systems,

Click this link to continue reading the article on the source website.

RSS Feed Source: Academic Keys

Research Opportunities

Computer Science; Informatics

Work description

The design and development of automated data pipelines for pre-processing, anonymisation and efficient storage of large volumes of clinical data. The creation of backends and APIs using frameworks to integrate AI models with hospital interfaces. The implementation of security mechanisms and compliance with the LGPD/GDPR and hospital standards. The technical integration of the predictive model with existing hospital systems, guaranteeing interoperability and performance.

Active collaboration with the scientific team in the technical and methodological documentation of the solutions developed and in the writing of scientific publications.

Academic Qualifications

Master’s degree in computer science.

Minimum profile required

Knowledge of Software Engineering. Knowledge of Data Science.

Preference factors

Solid academic background in Computer Engineering, Computer Science. Relevant experience in backend software development and API integration. Knowledge and experience in managing and processing large volumes

Click this link to continue reading the article on the source website.

RSS Feed Source: Academic Keys

Postdoctoral Position at Arizona State University

Modeling and Simulations of Fluid-Metamaterial Interactions

Position details: A postdoctoral position is available in the School for Engineering of Matter, Transport and Energy at Arizona State University, Aerospace and Mechanical Engineering program. The project duration is for 2 years, with an initial appointment for 12 months and the possibility for further extensions based on performance. The start date is Summer 2025 or Fall 2025 (negotiable). The applications will be accepted on a rolling basis until the position is filled. See isim.asu.edu/#/positions for more information.

Project description: Efficient methods for control of turbulent flows are critical for many applications. Recent promising approaches include passive techniques such as textured surfaces and metamaterials. The goal of this project is to investigate the physical mechanisms via which fluid flows interact with metamaterials. The project involves modeling and simulation of coupled dynamics and

Click this link to continue reading the article on the source website.