Results 31 to 40 of about 45 (45)
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2019
Ð ÑабоÑе пÑÐµÐ´Ð»Ð¾Ð¶ÐµÐ½Ñ Ð¼ÐµÑод пÑиема многоÑаÑÑоÑнÑÑ Ñигналов Ñ Ð½ÐµÐ¾ÑÑогоналÑнÑм ÑаÑÑоÑнÑм ÑплоÑнением (SEFDM â Spectrally Efficient Frequency Division Multiplexing) в ÑÑловиÑÑ ÐºÐ°Ð½Ð°Ð»Ð° Ñ ÑаÑÑоÑно-ÑелекÑивнÑми замиÑаниÑми, Ð¾Ñ ...
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Ð ÑабоÑе пÑÐµÐ´Ð»Ð¾Ð¶ÐµÐ½Ñ Ð¼ÐµÑод пÑиема многоÑаÑÑоÑнÑÑ Ñигналов Ñ Ð½ÐµÐ¾ÑÑогоналÑнÑм ÑаÑÑоÑнÑм ÑплоÑнением (SEFDM â Spectrally Efficient Frequency Division Multiplexing) в ÑÑловиÑÑ ÐºÐ°Ð½Ð°Ð»Ð° Ñ ÑаÑÑоÑно-ÑелекÑивнÑми замиÑаниÑми, Ð¾Ñ ...
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Рданной бакалавÑÑкой ÑабоÑе иÑÑледÑеÑÑÑ Ð¿Ð¾Ð²ÐµÐ´ÐµÐ½Ð¸Ðµ моÑÑкой ÑÑаÑионаÑной глÑбоководной ледоÑÑойкой плаÑÑоÑÐ¼Ñ Ð¿ÑÑем ÑаÑÑеÑов внеÑниÑ
нагÑÑзок, дейÑÑвÑÑÑие на ÑÑÑÐ°Ð½Ð¾Ð²ÐºÑ Ð² пеÑиод ÑкÑплÑаÑаÑиР...
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Ð ÑабоÑе ÑаÑÑмоÑÑена ÑазÑабоÑка нового пÑодÑкÑа на оÑнове йогÑÑÑа Ñ Ð¸ÑполÑзованием коноплÑного белка, коÑоÑÑй ÑдовлеÑвоÑÐ¸Ñ Ð¿Ð¾ÑÑебноÑÑи поÑÑебиÑелей в здоÑовом и наÑÑÑалÑном пиÑании, а Ñакже ...
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The topic of the final qualification work: «Nonlinear dynamics of Nano systems made of two-dimensional materials under laser thermo-optical influences". This thesis focuses on the nonlinear dynamics of nanosystems made from two-dimensional materials under laser thermo-optical influences.
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2017
Ð¦ÐµÐ»Ñ ÑабоÑÑ - ÑазÑабоÑка ÑÐµÑ Ð½Ð¾Ð»Ð¾Ð³Ð¸Ð¸ изгоÑÐ¾Ð²Ð»ÐµÐ½Ð¸Ñ Ð´ÐµÑали "ЧаÑка". РпÑоÑеÑÑе ÑабоÑÑ Ð¿Ñоведен анализ ÑекÑÑего ÑоÑÑоÑÐ½Ð¸Ñ ÑÐµÑ Ð½Ð¾Ð»Ð¾Ð³Ð¸Ð¸ и пÑоекÑиÑование ÑÐµÑ Ð½Ð¾Ð»Ð¾Ð³Ð¸Ð¸ изгоÑÐ¾Ð²Ð»ÐµÐ½Ð¸Ñ Ð´ÐµÑали «ЧаÑка».
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Ð¦ÐµÐ»Ñ ÑабоÑÑ - ÑазÑабоÑка ÑÐµÑ Ð½Ð¾Ð»Ð¾Ð³Ð¸Ð¸ изгоÑÐ¾Ð²Ð»ÐµÐ½Ð¸Ñ Ð´ÐµÑали "ЧаÑка". РпÑоÑеÑÑе ÑабоÑÑ Ð¿Ñоведен анализ ÑекÑÑего ÑоÑÑоÑÐ½Ð¸Ñ ÑÐµÑ Ð½Ð¾Ð»Ð¾Ð³Ð¸Ð¸ и пÑоекÑиÑование ÑÐµÑ Ð½Ð¾Ð»Ð¾Ð³Ð¸Ð¸ изгоÑÐ¾Ð²Ð»ÐµÐ½Ð¸Ñ Ð´ÐµÑали «ЧаÑка».
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The topic of the graduation qualification work: «Identification of Potentially Malicious Code Segments in Android Applications Using Deep Learning». The goal of this work is to identify potentially malicious code segments in Android applications based on the analysis of the control flow graph using deep learning methods.
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