Sort by
Refine Your Search
-
Listed
-
Country
-
Employer
- University of Birmingham
- George Mason University
- The University of Queensland
- University of Texas at Austin
- The University of Alabama
- University of Alabama, Tuscaloosa
- ;
- Harvard University
- Johns Hopkins University
- King Abdullah University of Science and Technology
- Nanyang Technological University
- University of North Carolina at Charlotte
- University of South-Eastern Norway
- 3 more »
- « less
-
Field
-
Pay Grade/Pay Range: Minimum: $48,600 - Midpoint: $60,800 (Salaried E7) Department/Organization: 214241 - Computer Science Normal Work Schedule: Monday - Friday 8:00am to 5:00pm Job Summary: The
-
frameworks (MOFs), and related materials using hybrid classical-quantum algorithms. A key component of the role involves using first-principles methods that capture strong electronic correlations, such as DFT
-
/Administrative Internal Number: 527188 Pay Grade/Pay Range: Minimum: $48,600 - Midpoint: $60,800 (Salaried E7) Department/Organization: 214241 - Computer Science Normal Work Schedule: Monday - Friday 8:00am to 5
-
algorithmic foundations of quantum adversarial machine learning, an emerging field at the intersection of quantum computing and machine learning. It investigates how the unique capabilities of quantum computing
-
University of North Carolina at Charlotte | Charlotte, North Carolina | United States | about 1 hour ago
Unit Computer Science Work Location 9201 University City Blvd Vacancy Open To All Candidates Position Designation Post Doc Employment Type Temporary - Full-time Hours per week 40 Work Schedule 8 hours
-
. Develop and enhance advanced optimization algorithms for the Energy Management System (EMS), addressing energy dispatch, storage control, load scheduling, and strategies for market participation. Architect
-
Pay Grade/Pay Range: Minimum: $48,600 - Midpoint: $60,800 (Salaried E7) Department/Organization: 750801 - Alabama Life Research Institute Normal Work Schedule: Monday - Friday 8:00am to 5:00pm
-
of classical and hybrid classical-quantum algorithms for treating the correlations. This position offers exciting opportunities for collaboration within UQ, across the QDA network, and with external research
-
highly motivated researcher to develop artificial intelligence based novel algorithms and computational workflows to predict the impact of mutations on genes in the avian flu virus and the viral host which
-
inversion techniques and signal processing. Strong programming skills, Proficiency in scientific computing (e.g. Python, MATLAB, or similar) for algorithm development and data handling. Experience with sensor