SUN'IY INTELLEKT YORDAMIDA SIGNALLARNI QAYTA ISHLASHNING ZAMONAVIY YO‘NALISHLARI

Authors

  • Axmadjonov Ixtiyorjon Rovshanjonovich1, Meliboyeva Dilbaroy Ravshanbek qiz2 1Farg'ona davlat texnika universiteti “Kompyuter muhandisligi va sun'iy intelekt” kafedrasi assistenti 2Farg‘ona davlat texnika universiteti Author

DOI:

https://doi.org/10.65164/117yfz85

Keywords:

Sun’iy intellekt, signalni qayta ishlash, chuqur o‘rganish, transformer arxitekturasi, graf neyron tarmoqlari, federativ o‘rganish, tibbiy signallar.

Abstract

Maqolada sun’iy intellekt texnologiyalari asosida signallarni qayta ishlashning zamonaviy yondashuvlari yoritilgan. Transformer arxitekturasi, graf asosidagi modellar, chuqur o‘rganish, federativ o‘rganish va tibbiy signallarni intellektual tahlil qilish kabi yo‘nalishlarning asosiy afzalliklari va qo‘llanilish imkoniyatlari tahlil qilingan. Tadqiqot natijalari sun’iy intellekt yordamida signalga ishlov berishning samaradorligi sezilarli darajada oshganini ko‘rsatadi 

References

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Published

2025-12-29