Intelligent IoT networks create massive, diversified data streams that need real-time and massive analytical processing. Traditional cloud-centric architectures feature latency, bandwidth congestion, and limited flexibility for batch and stream data. The AI-HyECC framework for Adaptive Batch–Stream Data Analytics (ABSDA) in intelligent IoT tackles these limits. IoT sensing, edge intelligence, AI-orchestrated adaptive middleware, and cloud cognitive analytics comprise the four-layer AI-HyECC architecture. The Neural Stream Optimizer (NSO) performs real-time edge-level inference, while the reinforcement learning-powered Adaptive Task Orchestration Engine (ATOE) dynamically distributes tasks between edge and cloud based on data type, latency, and network AI-HyECC decreases latency by 38%, resource usage by 32%, and inference speed by 40% compared to cloud-only systems in experimental validation. For many IoT applications, the framework may deliver scalable, context-aware, energy-efficient analytics. Intelligent, adaptable, and resilient AI-HyECC blends batch and stream processing for next-generation IoT ecosystems.
Wang et al. (Sat,) studied this question.