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  • × year_i:[2020 TO 2030}
  1. Aydin, Ö.; Karaarslan, E.: OpenAI ChatGPT generated literature review: : digital twin in healthcare (2022) 0.00
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    Abstract
    Literature review articles are essential to summarize the related work in the selected field. However, covering all related studies takes too much time and effort. This study questions how Artificial Intelligence can be used in this process. We used ChatGPT to create a literature review article to show the stage of the OpenAI ChatGPT artificial intelligence application. As the subject, the applications of Digital Twin in the health field were chosen. Abstracts of the last three years (2020, 2021 and 2022) papers were obtained from the keyword "Digital twin in healthcare" search results on Google Scholar and paraphrased by ChatGPT. Later on, we asked ChatGPT questions. The results are promising; however, the paraphrased parts had significant matches when checked with the Ithenticate tool. This article is the first attempt to show the compilation and expression of knowledge will be accelerated with the help of artificial intelligence. We are still at the beginning of such advances. The future academic publishing process will require less human effort, which in turn will allow academics to focus on their studies. In future studies, we will monitor citations to this study to evaluate the academic validity of the content produced by the ChatGPT. 1. Introduction OpenAI ChatGPT (ChatGPT, 2022) is a chatbot based on the OpenAI GPT-3 language model. It is designed to generate human-like text responses to user input in a conversational context. OpenAI ChatGPT is trained on a large dataset of human conversations and can be used to create responses to a wide range of topics and prompts. The chatbot can be used for customer service, content creation, and language translation tasks, creating replies in multiple languages. OpenAI ChatGPT is available through the OpenAI API, which allows developers to access and integrate the chatbot into their applications and systems. OpenAI ChatGPT is a variant of the GPT (Generative Pre-trained Transformer) language model developed by OpenAI. It is designed to generate human-like text, allowing it to engage in conversation with users naturally and intuitively. OpenAI ChatGPT is trained on a large dataset of human conversations, allowing it to understand and respond to a wide range of topics and contexts. It can be used in various applications, such as chatbots, customer service agents, and language translation systems. OpenAI ChatGPT is a state-of-the-art language model able to generate coherent and natural text that can be indistinguishable from text written by a human. As an artificial intelligence, ChatGPT may need help to change academic writing practices. However, it can provide information and guidance on ways to improve people's academic writing skills.
  2. ¬The library's guide to graphic novels (2020) 0.00
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    Abstract
    The circ stats say it all: graphic novels' popularity among library users keeps growing, with more being published (and acquired by libraries) each year. The unique challenges of developing and managing a graphics novels collection have led the Association of Library Collections and Technical Services (ALCTS) to craft this guide, presented under the expert supervision of editor Ballestro, who has worked with comics for more than 35 years. Examining the ever-changing ways that graphic novels are created, packaged, marketed, and released, this resource gathers a range of voices from the field to explore such topics as: a cultural history of comics and graphic novels from their World War II origins to today, providing a solid grounding for newbies and fresh insights for all; catching up on the Big Two's reboots: Marvel's 10 and DC's 4; five questions to ask when evaluating nonfiction graphic novels and 30 picks for a core collection; key publishers and cartoonists to consider when adding international titles; developing a collection that supports curriculum and faculty outreach to ensure wide usage, with catalogers' tips for organizing your collection and improving discovery; real-world examples of how libraries treat graphic novels, such as an in-depth profile of the development of Penn Library's Manga collection; how to integrate the emerging field of graphic medicine into the collection; and specialized resources like The Cartoonists of Color and Queer Cartoonists databases, the open access scholarly journal Comic Grid, and the No Flying, No Tights website. Packed with expert guidance and useful information, this guide will assist technical services staff, catalogers, and acquisition and collection management librarians.

Languages

  • e 671
  • d 124
  • pt 4
  • m 2
  • sp 1
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Types

  • a 754
  • el 84
  • m 23
  • p 7
  • s 6
  • x 2
  • A 1
  • EL 1
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