--- base_model: westlake-repl/SaProt_35M_AF2 library_name: peft --- # Base model: [westlake-repl/SaProt_35M_AF2](https://huggingface.co/westlake-repl/SaProt_35M_AF2) # Model Card for Model ID This model is trained on a sigle site deep mutation scanning dataset and can be used to predict fitness score of mutant amino acid sequence of protein [UBC9_HUMAN](https://www.uniprot.org/uniprotkb/P63279/entry) (SUMO-conjugating enzyme UBC9). ## Protein Function This proterin can accepts the ubiquitin-like proteins SUMO1, SUMO2, SUMO3, SUMO4 and SUMO1P1/SUMO5 from the UBLE1A-UBLE1B E1 complex and catalyzes their covalent attachment to other proteins with the help of an E3 ligase such as RANBP2, CBX4 and ZNF451. ### Task type protein level regression ### Dataset description The dataset is from [Deep generative models of genetic variation capture the effects of mutations](https://www.nature.com/articles/s41592-018-0138-4). And can also be found on [SaprotHub dataset](https://huggingface.co/datasets/SaProtHub/DMS_UBC9_HUMAN). Label means fitness score of each mutant amino acid sequence. The wild‐type mutants receiving a score of one, larger value represents higher fitness. ### Model input type Amino acid sequence ### Performance 0.60 Spearman's ρ ### LoRA config lora_dropout: 0.0 lora_alpha: 16 target_modules: ["query", "key", "value", "intermediate.dense", "output.dense"] modules_to_save: ["classifier"] ### Training config class: AdamW betas: (0.9, 0.98) weight_decay: 0.01 learning rate: 1e-4 epoch: 100 batch size: 2 precision: 16-mixed