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Analysis

This article presents an interesting experimental approach to improve multi-tasking and prevent catastrophic forgetting in language models. The core idea of Temporal LoRA, using a lightweight gating network (router) to dynamically select the appropriate LoRA adapter based on input context, is promising. The 100% accuracy achieved on GPT-2, although on a simple task, demonstrates the potential of this method. The architecture's suggestion for implementing Mixture of Experts (MoE) using LoRAs on larger local models is a valuable insight. The focus on modularity and reversibility is also a key advantage.
Reference

The router achieved 100% accuracy in distinguishing between coding prompts (e.g., import torch) and literary prompts (e.g., To be or not to be).