Data augmentation and generative machine learning on the cloud platform


연구 분야: Artificial Intelligence



학회: International Journal of Information Technology


초록

This paper aims to explore the image data augmentation application on the cloud platform utilizing state-of-the-art generative machine learning techniques. This paper further highlights these techniques’ significance in addressing the challenge of data generation and emphasizes the need for further research in this area. This research adopts an in-depth exploration approach to examine the burgeoning domain of generative machine learning techniques. It discusses the evolution of these techniques and their integration with cloud services powered by Graphical Processing Unit (GPU)-enabled computational engines. Practical experimentation involving Modified National Institute of Standards and Technology (MNIST) data is conducted to showcase the capabilities of generative models, with a focus on the core Generative Adversarial Network (GAN). The findings reveal the potential of generative machine learning techniques in generating new data images, as demonstrated through practical experimentation with MNIST data. It also highlights the ongoing evolution of these techniques and their challenges, particularly in terms of computational requirements and integration with cloud computing services. This research originally contributes to the existing literature by providing insights into recent advancements and challenges in GANs and their synergies with cloud computing. It presents results from experimentation and emphasizes the importance of cost-effective development environments for implementing generative machine learning techniques.


Author Profile
Piyush Vyas

Texas A&M University-Central Texas College of Business Administration Killeen TX USA

United States
Author Profile
Kaushik Muthusamy Ragothaman

University of Wisconsin–Parkside 900 Wood Rd Kenosha WI 53144 USA

United States
Author Profile
Akhilesh Chauhan

Dakota State University College of Business & Information Systems Madison SD USA

Sudan

📄 논문 정보

발행 연도 2024년
인용수 0
출판 국가 Indonesia, United States, Sudan
사이트 Springer
좋아요 수 0

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