Abstract
Purpose
This paper aims to explore the potential impact of artificial intelligence (AI) image generators, specifically MidJourney and DALL-E, on education and library services. The study aims to understand how these tools can revolutionize learning experiences and library resources while also addressing the ethical considerations surrounding their use.
Design/methodology/approach
This study investigates the technical foundations of MidJourney and DALL-E, highlighting their neural network architectures. It also traces the iterative refinement of these models and examines cost, accessibility and the unique prompt-guided capabilities of DALL-E 3.
Findings
MidJourney and DALL-E show remarkable progress in generating high-quality, photorealistic images from text prompts. The iterative refinement of these models demonstrates a trend toward improved creative output and user accessibility. DALL-E 3, in particular, allows users to guide image generation through prompt modifications, offering unprecedented control over the creative process. The study identifies potential applications in personalized learning, visual communication and research support in libraries, while recognizing challenges such as cost and accessibility.
Originality/value
This research innovatively explores AI's impact on education and libraries, detailing applications in personalized learning and research while addressing legal and ethical considerations.
Reference29 articles.
1. Revitalizing reference services and fostering information literacy: Google Bard’s dynamic role in contemporary libraries;Library Hi Tech News,2023
2. Role of artificial intelligence in renewable energy and its scope in future,2022
3. The role of education and social policy in the development of responsible production and consumption in the AI economy;Frontiers in Environmental Science,2022
4. Awan, A.A. (2023), “What is DALL-E?”, July, available at: www.datacamp.com/blog/what-is-dall-e (accessed 11 January 2024).
5. Ball, Z. (2024), “Deploying high-performance, energy-efficient AI”, MIT Technology Review, available at: www.technologyreview.com/2024/01/10/1086259/deploying-high-performance-energy-efficient-ai/ (accessed 11 January 2024).
Cited by
3 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献