How can you optimize cloud and edge resource allocation?
Cloud and edge computing are two paradigms that enable the deployment of AI applications and services in different scenarios. Cloud computing offers centralized, scalable, and cost-effective resources, while edge computing provides distributed, low-latency, and privacy-preserving resources. However, optimizing the allocation of cloud and edge resources for AI tasks is not a trivial problem. It involves balancing various factors, such as performance, cost, security, reliability, and user preferences. In this article, you will learn some strategies and techniques to optimize cloud and edge resource allocation for AI.
-
Rapha?l MANSUYData Engineering | DataScience | AI & Innovation | Author | Follow me for deep dives on AI & data-engineering
-
Shubham SabooBuilding a community of 1M+ AI Developers | I share daily tips and tutorials on LLM, RAG and AI Agents
-
Anesu KafesuCTO | IT and Infrastructure Project Management | PMP? | ITIL 4? | CCNA | CISM? | OCIAA