Papers
Topics
Authors
Recent
Gemini 2.5 Flash
Gemini 2.5 Flash
80 tokens/sec
GPT-4o
59 tokens/sec
Gemini 2.5 Pro Pro
43 tokens/sec
o3 Pro
7 tokens/sec
GPT-4.1 Pro
50 tokens/sec
DeepSeek R1 via Azure Pro
28 tokens/sec
2000 character limit reached

The Age of Generative AI and AI-Generated Everything (2311.00947v1)

Published 2 Nov 2023 in cs.NI

Abstract: Generative AI (GAI) has emerged as a significant advancement in artificial intelligence, renowned for its language and image generation capabilities. This paper presents ``AI-Generated Everything'' (AIGX), a concept that extends GAI beyond mere content creation to real-time adaptation and control across diverse technological domains. In networking, AIGX collaborates closely with physical, data link, network, and application layers to enhance real-time network management that responds to various system and service settings as well as application and user requirements. Networks, in return, serve as crucial components in further AIGX capability optimization through the AIGX lifecycle, i.e., data collection, distributed pre-training, and rapid decision-making, thereby establishing a mutually enhancing interplay. Moreover, we offer an in-depth case study focused on power allocation to illustrate the interdependence between AIGX and networking systems. Through this exploration, the article analyzes the significant role of GAI for networking, clarifies the ways networks augment AIGX functionalities, and underscores the virtuous interactive cycle they form. This article paves the way for subsequent future research aimed at fully unlocking the potential of GAI and networks.

Understanding Generative AI in Networking

Generative AI (GAI) has marked its significance in the field of artificial intelligence by mastering language and image generation. This prowess has given rise to the concept of AI-Generated Everything (AIGX), extending the applications of GAI far beyond content creation. AIGX impacts multiple tiers of technology, notably in networked environments, where it fosters real-time system management that responds to dynamic service requirements.

The Interconnection of AIGX and Networks

AIGX not only enriches network functionalities but also benefits immensely from the network structure itself. Networks enhance AIGX's productivity by offering a comprehensive data collection platform, supporting decentralized model training phases, and fostering quick decision-making capabilities. Interaction between AIGX and networking systems is symbiotic - AIGX introduces network components with the agility to adapt to instantaneous changes, whereas networks augment AIGX functionalities by contributing to its lifecycle stages: data collection, pre-training, fine-tuning and inference.

Transformative Impacts of AIGX on Networking Systems

In networks, AIGX's influences are manifold. It elevates the physical layer by automating modulation adjustments, augmenting the data link layer by evolving error correction methods and data security. Importantly, in the network layer, AIGX jumps in to reshape dynamic systems like vehicle networks. Also, it refines application layer offerings by tailoring healthcare systems and semantic communications. This transformative potential promises a drastic overhaul in how networks operate and interact with data and users.

A Case Study in Power Allocation

To illustrate the mutually beneficial interaction between AIGX and networks, consider the case paper focused on power allocation. The conventional methods are resource-intensive and require adjustments. In contrast, AIGX offers an adaptable solution that tunes power allocation in real-time according to variable channel feedbacks. In essence, this demonstrates the broader applicability of AIGX, indicating how it might be the key to resolving various wireless communication challenges that involve rapidly changing environmental conditions and data patterns.

Future Direction & Conclusion

The implications of blending AIGX with networked environments are significant and forecast a promising trajectory. Future efforts could focus on enhancing network-related AIGX functionalities such as automating network management and creating AIGX-tools to facilitate multimodal communications. Network support is essential for AIGX, involving efficient data transportation, rapid deployment of models, and facilitating edge computing. This partnership between AIGX and intelligent networking systems presents an adaptive and forward-looking ecosystem poised to revolutionize the network landscape.

User Edit Pencil Streamline Icon: https://streamlinehq.com
Authors (12)
  1. Hongyang Du (154 papers)
  2. Dusit Niyato (671 papers)
  3. Jiawen Kang (204 papers)
  4. Zehui Xiong (177 papers)
  5. Ping Zhang (436 papers)
  6. Shuguang Cui (275 papers)
  7. Xuemin Shen (74 papers)
  8. Shiwen Mao (96 papers)
  9. Zhu Han (431 papers)
  10. Abbas Jamalipour (68 papers)
  11. H. Vincent Poor (884 papers)
  12. Dong In Kim (168 papers)
Citations (12)