NEYRON TARMOQNI O‘QITISH USULLARI VA ALGORITMLARI

NEYRON TARMOQNI O‘QITISH USULLARI VA ALGORITMLARI

Authors

  • Quvvatali Raximov Ortiqovich Texnika fanlari bo‘yicha falsafa doktori (PhD)
  • Tojimamatov Israil Nurmamatovich O`qituvchi, Farg‘ona davlat universiteti
  • Xo’jaqulov Hamidullo Rahimjon o’g’li Muhammad al-Xorazmiy nomidagi TATU Farg’ona filiali magistri

Keywords:

Konvolyutsion, takroriy, generativ qarama-qarshi neyron tarmoqlar, transformatorlar, autoencoders.

Abstract

Mazkur maqolada neyron tarmoqlarni o’qitishda foydalaniladigan tizimlar ustida olib borilgan izlanishlar haqida ma’lumot berilgan.

References

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Published

2023-06-01

How to Cite

Quvvatali Raximov Ortiqovich, Tojimamatov Israil Nurmamatovich, & Xo’jaqulov Hamidullo Rahimjon o’g’li. (2023). NEYRON TARMOQNI O‘QITISH USULLARI VA ALGORITMLARI. Scientific Impulse, 1(10), 790–799. Retrieved from https://nauchniyimpuls.ru/index.php/ni/article/view/9433

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