Algoritmik Makroekonomi: Yapay Zeka, Büyük Veri ve Yeni Nesil Politika Tasarımı

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3 Nisan 2026

Lisans

Lisans

Bu İnternet Sitesi içeriğinde yer alan tüm eserler (yazı, resim, görüntü, fotoğraf, video, müzik vb.) Akademisyen Kitabevine ait olup, 5846 sayılı Fikir ve Sanat Eserleri Kanunu ve 5237 sayılı Türk Ceca Kanunu kapsamında korunmaktadır. Bu hakları ihlal eden kişiler, 5846 sayılı Fikir ve Sanat eserleri Kanunu ve 5237 sayılı Türk Ceza Kanununda yer alan hukuki ve cezai yaptırımlara tabi olurlar. Yayınevi ilgili yasal yollara başvurma hakkına sahiptir.

Bu yazıyla ilgili ayrıntılar

ISBN-13 (15)

978-625-362-011-0

Publication date (01)

2026

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