Preview

Doklady BGUIR

Advanced search

INTELLIGENT DATA ANALYSIS AND CLOUD COMPUTING

https://doi.org/10.35596/1729-7648-2019-124-6-62-71

Abstract

In this paper the term of «intelligent data analysis» is discussed, the cloud computing concept is described. The system developed and deployed on the computer cluster by ECM department of BSUIR is shown as an example of the intelligent data analysis by means of cloud computing. Some results of research with the help of this system are given.

About the Authors

M. M. Tatur
Belarusian State University of Informatics and Radioelectronics
Belarus

D.Sci, professor of the department of electronic computing machines

220013, Minsk, P. Brovka, st., 6



M. M. Lukashevich
Belarusian State University of Informatics and Radioelectronics
Belarus

PhD, associate professor, dean of the faculty of computer systems and networks

220013, Minsk, P. Brovka, st., 6



D. Y. Pertsev
Belarusian State University of Informatics and Radioelectronics
Belarus

220013, Minsk, P. Brovka, st., 6



N. A. Iskra
Belarusian State University of Informatics and Radioelectronics
Belarus

Iskra Natalia Alexandrovna  , senior lecturer of the department of electronic computing machines

220013, Minsk, P. Brovka, st., 6



References

1. Poisk, vizualizacija skrytyh zavisimostej i prognozirovanija razvitija situacij na baze tehnologij Data Mining & Knowledge Discovery / M.M. Tatur [i dr.] // Sb. mater. konf. «BIG DATA and Advanced Analytics». Minsk, 2016. S. 194–196. (in Russ.)

2. Zhivickaja E.N., Parhimenko V.A., Tatur M.M. Tehnologii Data Mining & Knowledge Discovery v prinjatii reshenij v oblasti marketinga, menedzhmenta i logistiki // Sb. mater. konf. «Suchasnі problemi і dosjagnennja v galuzі radіotehnіki, tele-komunіkacіj ta іnformacіjnih tehnologіj». Zaporozh'e, 2016. S. 326–329. (in Russ.)

3. Primenenie metodov DataMining i Knowledge Discovery v operativno-rozysknoj dejatel'nosti / S.N. Nefedov [I dr.] // Sb. mater. konf. «Aktual'nye problemy operativno-rozysknoj dejatel'nosti». Minsk, 2017. S. 70–72. (in Russ.)

4. Tatur M.M. Osobennosti postroenija vychislitelej intellektual'noj obrabotki dannyh // Informatika. 2015. № 1 (45). S. 39–44. (in Russ.)

5. K voprosu o podgotovke dannyh dlja reshenija zadach Data Mining / E. N. Zhivickaja [i dr.] // Sb. mater. konf. «BIG DATA and Advanced Analytics». Minsk, 2017. S. 288–292. (in Russ.)

6. Intellektual'nyj analiz dannyh: trend ili application? / M.M. Tatur [i dr.] // Sb. mater. konf. «Informacionnye tehnologii i sistemy». Minsk, 2017. S. 10–12. (in Russ.)

7. Tatur M.M., Iskra N.A. Intelligent Data Analysis: From Theory to Practice // Sb. mater. konf. «Otkrytye semanticheskie tehnologii proektirovanija intellektual'nyh sistem». Minsk, 2018. S. 171–175.

8. Mjuller A., Gvido S. Vvedenie v mashinnoe obuchenie s pomoshh'ju Python: Rukovodstvo dlja specialistov po rabote s dannymi. M., 2017. 393 s. (in Russ.)

9. Silen D., Mejsman A., Ali M. Osnovy Data Science i Big Data. Python i nauka o dannyh. SPb.: Piter, 2017. 336 s. (in Russ.)

10. Mell P., Grance T. The NIST Definition of Cloud Computing / Recommendations of the National Institute of Standards and Technology. NIST, 2011.

11. Marinescu D.C. Cloud Computing: Theory and Practice. Morgan Kaufmann, 2017. 588 p.

12. Bhowmik S. Cloud Computing. Cambridge University Press, 2017. 426 p.

13. Demidchuk A.I., Percev D.Ju., Samal' D.I. Uchebno-issledovatel'skaja sistema obrabotki bol'shih dannyh // BIG DATA and Advanced Analytics. Minsk: BGUIR, 2017. S. 170–173. (in Russ.)

14. Sistema obrabotki bol'shih dannyh na osnove vychislitel'nogo klastera BGUIR / D.I. Samal' [i dr.] // Sb. mater. konf. «BIG DATA Advanced Analytics». Minsk, 2018. S. 220–256. (in Russ.)

15. Intellektual'naja obrabotka bol'shih ob'emov dannyh na osnove tehnologij MPI i CUDA. Laboratornyj praktikum: posobie / A. I. Demidchuk [i dr.]. Minsk: BGUIR, 2017. 60 s. (in Russ.)

16. Zeppelin [Electronic resourse]. URL: http://zeppelin.apache.org/ (data obrashhenija: 20.01.2019).

17. Scikit-learn: Machine Learning in Python [Electronic resourse]. URL: https://scikit-learn.org/stable/ (date of access: 20.01.2019).

18. MLib Apache Spark [Electronic resourse]. URL: https://spark.apache.org/mllib/ (date of access: 20.01.2019).

19. Theano 1.0.0 documentation [Electronic resourse]. URL: http://deeplearning.net/software/theano/ (date of access: 20.01.2019).

20. Weka 3 – Data Mining with Open Source Machine Learning Software in Java [Electronic resourse]. URL: https://www.cs.waikato.ac.nz/ml/weka/ (date of access: 20.01.2019).

21. Projavlenie zakona Amdala-Gustavsona na primere realizacii algoritma k-srednih / A.I. Demidchuk [i dr.] // Sb. mater. konf. «BIG DATA and Predictive Analytics». Minsk, 2015. S. 151–154. (in Russ.)

22. Lukashevich M.M., Starovojtov V.V. Metodika podscheta chisla jader kletok na medicinskih gistologicheskih izobrazhenijah // Sistemnyj analiz i prikladnaja informatika. 2016. № 2. S. 38–42. (in Russ.)

23. Ronneberger O., Fischer P., Brox T. U-Net: Convolutional Networks for Biomedical Image Segmentation / Medical Image Computing and Computer-Assisted Intervention, 2015. P. 234–241. (in Russ.)

24. Semanticheskaja model' predstavlenija i obrabotki baz znanij / V.V. Golenkov [i dr.]. // Analitika i upravlenie dannymi v oblastjah s intensivnym ispol'zovaniem dannyh. 2017. S. 412–419. (in Russ.)

25. Faster R-CNN: Towards Real-Time Object Detection with Region Proposal Networks / Shaoqing R. [et al.] // IEEE Transactions on Pattern Analysis and Machine Intelligence. 2017. P. 1137–1149.


Review

For citations:


Tatur M.M., Lukashevich M.M., Pertsev D.Y., Iskra N.A. INTELLIGENT DATA ANALYSIS AND CLOUD COMPUTING. Doklady BGUIR. 2019;(6):62-71. (In Russ.) https://doi.org/10.35596/1729-7648-2019-124-6-62-71

Views: 5373


Creative Commons License
This work is licensed under a Creative Commons Attribution 4.0 License.


ISSN 1729-7648 (Print)
ISSN 2708-0382 (Online)