Abstract
The article focuses on the promising directions of introducing special directives that support parallel processing tools in standard programming languages. Examples of such development are given. The advantages of the parallel processing approach are suggested.
References
Barseghyan A.A. and others. Analysis of data and processes: Proc. allowance f or universities. 3rd ed. / Petersburg, 2009. P. 512 512;
Kupriyanov M.S. and others. Data mining in distributed systems / St. Petersburg .: Publishing house of St. Petersburg Electrotechnical University, 2012. P. 110110;
Amol G., Prabhanjan K., Edwin P., Ramakrishnan K. NIMBLE: A Toolkit for the Implementation of Parallel Data Mining and Machine Learning Algorithms on Map Reduce . Proceedings of the 17th ACM SIGKDD international conference on Knowledge discovery and data mining (KDD'11), San Diego, California, USA,
August 21 24, 2011.P. 334 342.