A Dynamic Resource Scheduling Model for Advertising Production in Virtual-Physical Fusion Scenarios
DOI:
https://doi.org/10.54097/4qpkhb33Keywords:
Virtual-reality integration, Advertising production, Resource scheduling, Dynamic scheduling, Multi-dimensional resource profiling, Adaptive algorithmsAbstract
Virtual-physical fusion advertising production integrates physical filming with virtual elements, presenting new challenges for resource management. This paper proposes a dynamic resource scheduling model for virtual-physical fusion advertising production, employing a three-tier resource pool architecture design to establish multi-dimensional resource profiles and real-time status monitoring mechanisms. An adaptive scheduling strategy engine was developed to achieve data-driven decision optimisation and feedback control, effectively addressing issues such as fluctuating computing power, multi-source heterogeneous resources, and cross-regional collaboration. Application validation demonstrates that this model significantly improves resource utilisation and reduces task response time, providing an efficient resource scheduling solution for virtual-reality integrated advertising production.
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