PhageBench: Can LLMs Understand Raw Bacteriophage Genomes?
arXiv cs.CL / 4/8/2026
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Key Points
- The paper introduces PhageBench, a new benchmark for evaluating how well LLMs can understand raw bacteriophage genomes using an expert bioinformatics workflow.
- It provides 5,600 high-quality samples spanning five tasks across three stages—Screening, Quality Control, and Phenotype Annotation.
- Experiments with eight general-purpose LLMs show they outperform random baselines on tasks like phage contig identification and host prediction.
- The study finds notable weaknesses for more demanding problems requiring long-range dependency reasoning and fine-grained functional localization.
- Overall results suggest that better next-generation models with stronger biological sequence reasoning are needed for reliable genomic interpretation.
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