Development of an adaptive mass open online course in the framework of training in artificial neural network technologies
Journal: RUDN Journal of Informatization in Education (Vol.18, No. 1)Publication Date: 2021-04-10
Authors : Dmitry Bordachev;
Page : 100-106
Keywords : mass open online courses; adaptive learning; artificial neural networks; student;
Abstract
Problem and goal. The development of mass open online courses contributes to the increasing attention of students to them. At the moment, there are many large services that provide online training, but there are no clearly defined universal requirements for such courses. Also, along with this problem, there is a fairly high level of rejection of the course at various stages due to the loss of motivation to continue training. Methodology. A variant of solving these problems by using adaptive learning technologies on the example of a course on learning artificial neural network technologies was considered. Results. In the process of reviewing the issue, the topics of the online course sections were determined. As a result, a work plan was drafted and the most relevant ways to solve the identified problems were formulated. Conclusion. The developed strategy can help with further elaboration and testing of the designed course and can be applied to any mass open online course.
Other Latest Articles
- Approaches to improving the training of IT specialists in the field of electronic document management
- Development of information culture of students when teaching equations of mathematical physics in the conditions of informatization of education
- Methodology and features of assessing the economic effect of implementing digital educational environment models in secondary vocational and higher education systems
- Analysis of the development efficiency of the Moscow Electronic School resources by future computer science teachers on the basis of practical training sites
- State and prospects of distance learning during the COVID-19 pandemic
Last modified: 2021-04-10 01:20:42