EntMTP: Accelerating LLM Inference with Entropy Guided Multi Token Prediction
The authors propose Entropy-guided Multi-Token Prediction (EntMTP), a training-free scheduler that dynamically adjusts speculation depth during LLM inference based on local generation entropy. This approach addresses the inefficiency of static tree-based attention topologies by matching compute requirements to context predictability.