Yapay Zeka Teknolojilerinin, Bağımsız Denetim Uygulamalarına Etkileri
Özet Görüntüleme: 146 / PDF İndirme: 88
DOI:
https://doi.org/10.5281/zenodo.13881546Anahtar Kelimeler:
Yapay Zeka, Otomasyon, Hizmet KalitesiÖzet
Bu çalışmada Yapay Zeka (YZ) teknolojilerinin bağımsız denetim uygulamalarına olan etkileri incelenmiştir. Bu bağlamda derleme olarak hazırlanan bu çalışmada tümden gelim yöntemi izlenmiştir. Bu kapsamda YZ, bağımsız denetim, otomasyon gibi kavramlara yer verilmiş, daha sonra YZ teknolojileri Olan, yüz tanıma sistemleri, sanal asistanlar, YZ haritaları, otomasyon, akıllı öneri sistemleri, sesli asistanlar, dil çevreleri, öneri sistemleri, navigasyon, siber güvenlik, robot uygulamaları büyük veri analitiği ve blok zincir teknolojisi konuları incelenmiştir. çalışmanın son bölümünde ise YZ teknolojileri ile denetim uygulamalarında, mali tabloları düzenleme, analiz yapma, planlama, yöntem belirleme, stratejiler, standartların oluşturulması, verimlilik, güvenirlik ve kalite konuları incelenmiştir. Çalışma sonucunda YZ teknolojilerinin bağımsız denetim üzerindeki etkilerine yönelik sonuçlar ve oluşturulan öneriler; araştırmacıların, denetçilerin, kamu kurumlarının, toplumun ve konu ile ilgili tarafların bilgisine sunulmuştur..
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