Machine Learning Researcher, Genomic AI
Bayer
Location
🇺🇸 Creve Coeur, United States
Type
full_time
Salary
Undisclosed
Posted
7h ago
Job Description
At Bayer we're visionaries, driven to solve the world's toughest challenges and striving for a world where 'Health for all Hunger for none' is no longer a dream, but a real possibility. We're doing it with energy, curiosity and sheer dedication, always learning from unique perspectives of those around us, expanding our thinking, growing our capabilities and redefining 'impossible'. There are so many reasons to join us. If you're hungry to build a varied and meaningful career in a community of brilliant and diverse minds to make a real difference, there's only one choice. Machine Learning Researcher, Genomic AI We are seeking a Machine Learning Researcher with expertise in machine learning for biological systems, with a particular focus on genomic and multi-omic data modeling. This role is centered on building and deploying state-of-the-art AI models- including large-scale genomic language models and deep representation learning architectures - that extract actionable biological insight from complex molecular datasets. You will develop models that learn the grammar of genomes, predict functional consequences of genetic variation, and connect molecular signatures to whole-organism phenotypes across diverse crop species. Your work will directly enable transformative applications in genomic selection and genome editing target identification, translating sequence-level intelligence into breeding and discovery decisions at global scale. This position is being hired at the entry level. Depending on the candidate's depth of experience and demonstrated research impact,
the role
may be filled at the Senior Machine Learning Researcher level. YOUR TASKS AND
RESPONSIBILITIES
The primary
responsibilities
of this role are: Genomic & Omic Model Development: Design, train, and evaluate deep learning models (including large language models, transformers, and representation learning architectures) on diverse omic datasets - whole-genome sequences, gene expression profiles (RNA-seq), epigenomic marks, k-mer spectra, skim-seq, pangenome graphs, and multi-omic integrations. Genomic Language Models: Develop and fine-tune foundation models for DNA/RNA sequences that capture long-range dependencies, regulatory grammar, and evolutionary conservation to predict variant effects, gene function, and trait associations in crop genomes. Genomic Selection & Editing Enablement: Build predictive models that connect genotype to phenotype across environments, identify high-value editing targets, and rank candidate genetic interventions with biological interpretability and statistical rigor. Functional Data Integration: Integrate heterogeneous biological data types-including high-resolution genome assemblies, structural variants, gene regulatory networks, protein structure predictions, and phenomic measurements-into unified predictive frameworks. Interdisciplinary Collaboration: Work closely with molecular biologists, geneticists, breeders, bioinformaticians, and computational scientists to ground models in biological reality, design informative training data strategies, and validate predictions experimentally. Scalable Deployment: Partner with engineering and IT teams to operationalize models within genomic selection pipelines, editing nomination workflows, and decision-support platforms used by breeding programs globally. Research Contribution: Advance the state of the art through publications, internal seminars, and engagement with the broader computational biology and AI research community. Documentation & Communication: Communicate complex modeling results to diverse audiences, prepare technical reports, and build organizational confidence in AI-driven biological discovery.