409 computer-programmer-"Multiple"-"O.P"-"Embry-Riddle-Aeronautical-University"-"U" positions at Monash University
Sort by
Refine Your Search
-
Listed
-
Category
-
Program
-
Field
-
of their service and leadership in the peer mentoring community. Peer Mentoring Coordinators work closely with the Faculty and Portfolio of the Deputy Vice-Chancellor (Education) to manage key aspects of the program
-
higher grades which is important for my career goals. The financial support it provides has allowed me to take part in extracurricular activities such as the Monash Minds Leadership program, instead
-
meetings and related processes, and undertake initial and ongoing training and education Demonstrate effective communication and interpersonal skills, as well as computer skills Be able to read, interpret
-
Master of Engineering pathway program. Up to 10 scholarships valued at up to $30,000 are available each year. Applications No application required Total scholarship value Up to $30,000 Number offered Ten
-
analysis. Additionally, experience in healthcare informatics, user experience research, and a commitment to improving mental health services are highly desirable. Project funding Project based scholarship
-
search is guided simultaneously by multiple contrasting objectives: maximising the QA resources on software modules that are risky, severe, and affect a large number of end-users, while minimising the cost
-
Alfred Research Alliance Honours Scholarship Sir John Monash Scholarship for Distinction The Alfred Research Alliance Honours Scholarship is for students studying an Honours program on the Alfred
-
background mathematical knowledge, including differential calculus (e.g., partial derivatives) and matrix determinants. The student should also know how to program with either Matlab, Java, or Python. Ideally
-
Centred Computing, Faculty of Information Technology, yolande.strengers@monash.edu Position Description: Research Fellow Applications Close: Sunday 15 June 2025, 11:55pm AEST Supporting a diverse workforce
-
., Pan, S., Aggarwal, C., & Salehi, M. (2022). Deep learning for time series anomaly detection: A survey. ACM Computing Surveys.