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MLOps Technology Trend Supporting Automatic Generation of Neural Network

신경망 자동생성 지원 MLOps 기술 동향

  • S.T. Kim ;
  • C.S. Cho
  • 김선태 (AI컴퓨팅시스템SW연구실) ;
  • 조창식 (AI컴퓨팅시스템SW연구실)
  • Published : 2024.10.01

Abstract

As more devices are used across various industries and their performance improves, artificial intelligence applications are being increasingly adopted. Hence, the rapid development of neural networks suitable for diverse devices can determine the competitiveness of companies. Machine learning operations (MLOps), which constitute a framework that supports neural network generation and its immediate application to devices, have become necessary for the development of artificial intelligence. Currently, most MLOps are provided by major companies such as Google, Amazon, and Microsoft, which provide cloud services supported by large-scale computing power. In addition, various services are provided by the open-source project Kubeflow. We examine basic concepts and technology trends in MLOps and unveil additional functions required in industry.

Keywords

Acknowledgement

본고는 2023년도 정부(과학기술정보통신부)의 재원으로 정보통신기획평가원의 지원을 받아 수행된 연구임[NO. 2021-0-00766, 신경망 응용 자동생성 및 실행환경 최적화 배포를 지원하는 통합개발 프레임워크 기술개발].

References

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