Master Program in Cloud Computing in Russia

Find Masters Programs in Cloud Computing in Russia 2018

Cloud Computing

Master-level studies involve specialized study in a field of research or an area of professional practice. Earning a master’s degree demonstrates a higher level of mastery of the subject. Earning a master’s degree can take anywhere from a year to three or four years. Before you can graduate, you usually must write and defend a thesis, a long paper that is the culmination of your specialized research.

Russia or, also officially known as the Russian Federation, is a country in northern Eurasia. Education in Russia is provided predominantly by the state and is regulated by the Ministry of Education and Science. In Russia, it takes about 70 % of training time for the contact lessons with a teacher, the rest 30 % of the workload are devoted to the independent study of the material.

Top Master Programs in Cloud Computing in Russia 2018

Read More

Master in High-Performance and Cloud Computing

Northern (Arctic) Federal University
Campus Full time 2 years September 2018 Russia Arkhangelsk

MA program in High-performance and cloud computing is focused on the study and practical use of parallel computing systems solutions for computationally intensive tasks, the study of complex systems by modern methods of distributed and high-performance computing technologies, use of modern supercomputers and cloud technologies. [+]

Master in High-Performance and Cloud ComputingLanguage: EnglishMA program in High-performance and cloud computing is focused on the study and practical use of parallel computing systems solutions for computationally intensive tasks, the study of complex systems by modern methods of distributed and high-performance computing technologies, use of modern supercomputers and cloud technologies. Master in "High-performance and cloud computing" is a high-class specialist, able to work in high-priority areas of ICT:

Solving the complex problems (demands a system with the computational performance of 100TFlops and above) - to ensure the scalability of parallel algorithms and programs. Consolidation of resources and services (use of distributed computing technologies to enable effective choice and use of specific resources and services) ... [-]