Wang et al., 2024 - Google Patents
End-edge-cloud collaborative computing for deep learning: A comprehensive surveyWang et al., 2024
- Document ID
- 2484570389029166158
- Author
- Wang Y
- Yang C
- Lan S
- Zhu L
- Zhang Y
- Publication year
- Publication venue
- IEEE Communications Surveys & Tutorials
External Links
Snippet
The booming development of deep learning applications and services heavily relies on large deep learning models and massive data in the cloud. However, cloud-based deep learning encounters challenges in meeting the application requirements of responsiveness …
- 238000013135 deep learning 0 title abstract description 25
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