| A fine-tune of google/gemma-3-12b-it using the antislop method described in this paper: https://arxiv.org/abs/2510.15061 | |
| The pipeline identifies the model's unique slop (over-represented words and phrases compared to human writing), generates a preference training set, and trains out the slop with our FTPO training algorithm. | |
| https://github.com/sam-paech/auto-antislop | |
| This process alters the model to make the most common slop words & phrases much less frequent, with minimal impact or degradation to the model. | |
| It won't remove slop entirely. The technique only targets over-represented words & phrases, not stylistic or thematic slop. | |
| This model should serve as a good base for further fine-tuning. |