Most AI systems are not built as single models, but as layers that evolve in complexity, speed, and decision-making ability. In this session, we unpack how algorithms operate across these layers, from static inference to adaptive, real-time systems.
We explore how each layer introduces new data constraints and latency considerations, and how they connect into a continuous feedback loop.
What You'll Learn
- How layered model architectures support smarter, more responsive outcomes
- Where data constraints and latency shape model behavior at each layer
- How feedback loops connect model layers into adaptive decision systems
