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Comment by janalsncm

10 hours ago

Your method appears to be similar to LoRA but simply less expressive. Some kind of manipulation to layers 7, 14, and 21. Did you compare with other layers? This is obviously extremely specific to a particular backbone.

Also your documents use a ton of nonstandard jargon which only serve to confuse laypeople and annoy anyone who is familiar with ML. Saying your change adds “semiotic awareness” is meaningless when your experiments claim only marginal improvements. Clearly the model had most of the capability before.

More generally, who is it for? People who have expertise in ML are not going to take it seriously. People who don’t?

It is not LoRA. LoRA fine tunes capabilities into the model. SRT Adapter is a small overlay on a frozen model whose purpose is to make internal reasoning observable. It surfaces what the model is activating at moments of high divergence.

The layers 7, 14, and 21 were chosen after probing. They showed the strongest regime signals. We did compare other layers. The term semiotic awareness is just shorthand for detecting and modulating higher order meaning patterns. If the term is unhelpful I will drop it.

The capability gains are often marginal on standard benchmarks. The intended value is observability and steerability without retraining the backbone.