Developing Customizable Machine Learning Pipelines: A Systems-First Approach to Reliability and Trust
Machine learning models come and go, superseded by improved architectures, better data, or changing business requirements. Pipelines persist. They outlive individual models, span multiple projects, survive personnel changes, and adapt to shifting research questions. When treated as first-class systems rather than incidental scaffolding, pipelines transform from sources of fragility into foundations for sustainable AI capability.
Common Failure Modes in Pathogen Genomics Machine Learning Pipelines: Lessons for AMR, Fungal and Viral Drug Discovery
Machine learning (ML) promises transformative gains in pathogen genomics — from antimicrobial resistance (AMR) prediction to fungal target identification and rapid viral variant characterization. Yet, across research and translational environments, pipelines that integrate high-throughput sequencing with ML models regularly fail to deliver robust, generalizable outcomes.
Have something you’d like to submit to The Commons?
Send us your name and email, and we’ll send you a follow-up with further details regarding the submission process.
