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Self-supervised learning from unlabeled IoT data
Dongxin Liu
,
Tarek Abdelzaher
Siebel School of Computing and Data Science
Information Trust Institute
Coordinated Science Lab
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Keyphrases
Self-supervised Learning
100%
Foundation Models
100%
IoT Data
100%
Unlabeled Data
75%
Contrastive Learning
75%
Edge AI
50%
Data Labeling
50%
IoT Domain
50%
Similarity Data
25%
Network Architecture
25%
Inference Quality
25%
Ability to Learn
25%
High-level Semantics
25%
Artificial Intelligence
25%
Neural Network Training
25%
Semantic Similarity
25%
Semantic Structure
25%
Autoencoding
25%
IoT Applications
25%
Labeling Cost
25%
Conversational Interfaces
25%
Chat Generative Pre-trained Transformer (ChatGPT)
25%
AI Applications
25%
Computer Science
Self-Supervised Learning
100%
Internet-Of-Things
100%
Unlabeled Data
75%
Contrastive Learning
75%
Edge AI
50%
Artificial Intelligence
50%
Network Architecture
25%
Neural Network Training
25%
Higher Semantic Level
25%
IoT Application
25%
ChatGPT
25%