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Dynamic neural networks

Dynamic neural networks are adaptable models that can change their structure or parameters during training or inference based on input complexity or computational constraints. They offer benefits like improved efficiency, adaptability, and scalability compared to static architectures.

Papers

Showing 1120 of 37 papers

TitleStatusHype
Monadic Deep Learning0
DyCL: Dynamic Neural Network Compilation Via Program Rewriting and Graph Optimization0
Stock Price Prediction using Dynamic Neural Networks0
Evolving Artificial Neural Networks To Imitate Human Behaviour In Shinobi III : Return of the Ninja Master0
GradMDM: Adversarial Attack on Dynamic Networks0
Fixing Overconfidence in Dynamic Neural NetworksCode0
ED-Batch: Efficient Automatic Batching of Dynamic Neural Networks via Learned Finite State Machines0
The Dark Side of Dynamic Routing Neural Networks: Towards Efficiency Backdoor Injection0
HADAS: Hardware-Aware Dynamic Neural Architecture Search for Edge Performance ScalingCode1
Boosted Dynamic Neural NetworksCode0
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