YAPAY ZEKÂ/AKILLI ÖĞRENME TEKNOLOJİLERİYLE AKADEMİK METİN YAZMA: CHATGPT ÖRNEĞİ

Yapay zekâ ve akıllı öğrenme, son yılların en önemli teknolojik gelişmelerinden biri olarak kabul edilmektedir. Bu teknoloji, bilgisayar ve robotların insan benzeri zekâ ve öğrenme yetenekleri kazanması üzerine odaklanmaktadır. Yapay zekâ, birçok alanda kullanılmakta olup, özellikle sanayi, sağlık, internet uygulamaları, bilişim teknolojileri, finans ve eğitim gibi sektörlerde büyük bir etkiye sahiptir. Yapay zekâ ve akıllı öğrenme teknolojisi daha hızlı, daha doğru ve daha verimli kararlar verme imkânı sağlayarak insanların hayatını kolaylaştırmakta ve daha üretken bir hâle getirmektedir. Yapay zekâ ve akıllı öğrenme teknolojilerinin olumlu etkilerinin yanında birçok olumsuz etkiyi de beraberinde getirdiği görülmektedir. Bu konuda ikiye ayrılan araştırmacıların bir kısmı gelişmeleri iyimser karşılarken, bir kısmı ise katı şekilde eleştirmektedir. Yapay zekâ ve akıllı öğrenme teknolojilerinin gelecekte insan hayatına yapacağı olumlu ya da olumsuz etkileri büyük bir merak ve endişe konusudur. Bu çalışma son günlerin popüler bir yapay zekâ ve akıllı öğrenme teknolojisi örneği olan ChatGPT’nin potansiyelini anlamak amacıyla yapılmıştır. Hazırlanmasında doğrudan ChatGPT kullanıldığı için ortak yazar olarak eklenmiştir.

Academic Text Writing with Artificial Intelligence/Smart Learning Technologies: The ChatGPT Example

Artificial intelligence and smart learning are considered to be one of the most important technological developments of recent years. This technology focuses on computers and robots gaining human-like intelligence and learning abilities. Artificial intelligence is used in many fields and has a great impact especially in sectors such as industry, health, internet applications, information technologies, finance and education. Artificial intelligence and smart learning technology make people's lives easier and more productive by enabling them to make faster, more accurate and more efficient decisions. It is seen that artificial intelligence and smart learning technologies bring many negative effects as well as positive effects. While some of the researchers, who are divided into two on this subject, welcome the developments optimistically, some criticize them harshly. The positive or negative effects of artificial intelligence and smart learning technologies on human life in the future are a matter of great curiosity and concern. This study was conducted to understand the potential of ChatGPT, which is a popular example of artificial intelligence and smart learning technology in recent days. Added as a co-author because ChatGPT was used directly in its creation.

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