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| # LoKr | |
| Low-Rank Kronecker Product ([LoKr](https://hf.co/papers/2309.14859)), is a LoRA-variant method that approximates the large weight matrix with two low-rank matrices and combines them with the Kronecker product. LoKr also provides an optional third low-rank matrix to provide better control during fine-tuning. | |
| ## LoKrConfig | |
| [[autodoc]] tuners.lokr.config.LoKrConfig | |
| ## LoKrModel | |
| [[autodoc]] tuners.lokr.model.LoKrModel |