Implementation of Task Scheduling Algorithms of Multiprocessor and Mixed Critical Systems
Creators
- 1. Associate Professor, Shridevi Institute of Engineering & Technology, Tumakuru-572106
Description
The advent of multi-core architecture rises many challenges, issues and opportunities. Multicores have significantly increased performance of embedded real-time systems and high performance systems. It has also created a greater impact in the way of software development from application software’s to operating system kernels. An increasing number of high performance systems are programmed using modern programming languages due to parallel programming revolution created by the multicores. The cost reduction trends in modern embedded systems induces functional consolidation which results in development of mixed critical systems (MCS). Two critical challenges are addressed in this research work are one is overcoming the limitations of modern programming languages to support for developing time sensitive applications in multicore systems. Another one is developing task scheduling strategy in multicore systems to decrease the runtime overhead as well as improving support for mixed critical systems.
Files
Implementation of Task Scheduling Algorithms of Multiprocessor and Mixed Critical Systems.pdf
Files
(554.6 kB)
Name | Size | Download all |
---|---|---|
md5:68ec4953f7c454c6e539c1e3fe694b8f
|
554.6 kB | Preview Download |
Additional details
References
- 1. Chen, S., Mulgrew, B., & Grant, P. M. (1993). A clustering technique for digital communications channel equalization using radial basis function networks. IEEE Transactions on neural networks, 4(4), 570-590.
- 2. Duncombe, J. U. (1959). Infrared navigation—Part I: An assessment of feasibility. IEEE Trans. Electron Devices, 11(1), 34-39.
- 3. Lin, C. Y., Wu, M., Bloom, J. A., Cox, I. J., Miller, M. L., & Lui, Y. M. (2000, May). Rotation-, scale-, and translation-resilient public watermarking for images. In Security and watermarking of multimedia contents II (Vol. 3971, pp. 90-98). SPIE.
- 4. Suhas, G. K., Devananda, S. N., Jagadeesh, R., Pareek, P. K., & Dixit, S. (2021). Recommendation-Based Interactivity Through Cross Platform Using Big Data. In Emerging Technologies in Data Mining and Information Security (pp. 651-659). Springer, Singapore.
- 5. GK, M. S., Verma, V. K., Devananda, S. N., BR, C. R., Manchale, P., & Pareek, P. K. An Exploration on Recommendation Based Interactivity through Multiple Platforms in Big Data.
- 6. GK, D., SN, D., Pareek, P., & MS, N. M. (2021, April). A Altmetrics analysis in social media using Bigdata. In Proceedings of the International Conference on Innovative Computing & Communication (ICICC).
- 7. NR, D., GK, S., & Kumar Pareek, D. (2022). A Framework for Food recognition and predicting its Nutritional value through Convolution neural network.
- 8. Hossain, M. D., Kabir, M. A., Anwar, A., & Islam, M. Z. (2021). Detecting autism spectrum disorder using machine learning techniques. Health Information Science and Systems, 9(1), 1-13.