A Low-Code Methodology for Developing AI Kiosks: a Case Study with the DIZEST Platform
- URL: http://arxiv.org/abs/2511.17853v1
- Date: Sat, 22 Nov 2025 00:40:02 GMT
- Title: A Low-Code Methodology for Developing AI Kiosks: a Case Study with the DIZEST Platform
- Authors: SunMin Moon, Jangwon Gim, Chaerin Kim, Yeeun Kim, YoungJoo Kim, Kang Choi,
- Abstract summary: This paper presents a study on enhancing kiosk systems through a low-code architecture, with a focus on AI-based implementations.<n>We propose a DIZEST-based approach methodology, a specialized low-code platform that enables intuitive workflow design and seamless AI integration.<n>Our case study further validates the effectiveness of this approach in improving interoperability, enhancing user experience, and increasing deployment flexibility.
- Score: 1.422355431544213
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: This paper presents a comprehensive study on enhancing kiosk systems through a low-code architecture, with a focus on AI-based implementations. Modern kiosk systems are confronted with significant challenges, including a lack of integration, structural rigidity, performance bottlenecks, and the absence of collaborative frameworks. To overcome these limitations, we propose a DIZEST-based approach methodology, a specialized low-code platform that enables intuitive workflow design and seamless AI integration. Through a comparative analysis with existing platforms, including Jupyter Notebook, ComfyUI, and Orange3, we demonstrate that DIZEST delivers superior performance across key evaluation criteria. Our photo kiosk case study further validates the effectiveness of this approach in improving interoperability, enhancing user experience, and increasing deployment flexibility.
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