Exploring Large Protein Language Models in Constrained Evaluation Scenarios within the FLIP Benchmark
Mollon, Manuel F., Gonzalez-Rodriguez, Joaquin, Lozano-Diez, Alicia, Ramos, Daniel, Toledano, Doroteo T.
–arXiv.org Artificial Intelligence
In this study, we expand upon the FLIP benchmark-designed for evaluating protein fitness prediction models in small, specialized prediction tasks-by assessing the performance of state-of-the-art large protein language models, including ESM-2 and SaProt on the FLIP dataset. Unlike larger, more diverse benchmarks such as ProteinGym, which cover a broad spectrum of tasks, FLIP focuses on constrained settings where data availability is limited. This makes it an ideal framework to evaluate model performance in scenarios with scarce task-specific data. We investigate whether recent advances in protein language models lead to significant improvements in such settings. Our findings provide valuable insights into the performance of large-scale models in specialized protein prediction tasks.
arXiv.org Artificial Intelligence
Jan-30-2025