Toward AI-Native 6G: Unveiling Online Optimization and Deep Reinforcement Learning for Autonomous Network Slicing
<p dir="ltr">The shift to AI-native 6G networks demands autonomous slicing strategies that can adapt to diverse and evolving edge and IoT service needs. Two paradigms have emerged: Learn to Slice (L2S), where AI optimizes network slicing for general services, and Slice to Learn (S2L)...
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| Main Author: | Amr Abo-eleneen (17032284) (author) |
|---|---|
| Other Authors: | Menna Helmy (23073205) (author), Alaa Awad Abdellatif (17151163) (author), Mohamed Abdallah (3073191) (author), Amr Mohamed (3508121) (author), Aiman Erbad (14150589) (author) |
| Published: |
2025
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