SUN’IY INTELLEKNING XATOLIKLARI VA ULARGA OPTIMAL YECHIMLARI

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Abstract:

Ushbu maqola sun’iy intellekt (SI) sohasidagi xatoliklar, jumladan, algoritmik xatoliklar, ma’lumotlarning aniqlik mavjudligi, muammolar va xavfsizlikka oid zaifliklar tahlil qilinadi. Maqola, shuningdek, har bir muammoni hal qilish uchun taklif etilgan optimal yechimlarni taqdim etadi.

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How to Cite:

Xo‘jakulov, T., Mamatqulov, M., & Shukrullayev, F. (2025). SUN’IY INTELLEKNING XATOLIKLARI VA ULARGA OPTIMAL YECHIMLARI. Eurasian Journal of Academic Research, 4(12 Special Issue), 1056–1060. Retrieved from https://in-academy.uz/index.php/ejar/article/view/45845

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https://mitpress.mit.edu/books/reinforcement-learning

https://ieeexplore.ieee.org/document/5995446