Are you ready to harness
multi-omics,
comparative genomics, and
agentic AI to accelerate vaccines and immune therapies from discovery to the clinic? In this role, you will transform complex human and pathogen datasets into clear, decision-driving insights that shape
antigen design,
patient stratification, and
translational strategy across high-priority programs.
Based in
Cambridge, MA you will work in a collaborative, multidisciplinary environment alongside
immunologists,
molecular biologists, and
data scientists. If you thrive at the intersection of computation and experiment-designing reproducible pipelines on
HPC and cloud platforms while partnering closely with the lab to iterate rapidly-this role offers the opportunity to influence study design, guide
go/no-go decisions, and help advance novel immune-based therapies toward patients.
Accountabilities- You will design, implement, and deliver robust analyses across genomics, bulk and single-cell transcriptomics, and multi-omics to answer program-critical questions with statistical rigor. You will assemble genomes, call variants, and perform comparative genomics and phylogenetic analyses on bacterial and viral pathogens to inform antigen selection and surveillance strategy.
- You will apply machine learning and statistical modeling to discover biomarkers, stratify patients, predict antigen immunogenicity, and forecast treatment response, translating model outputs into actionable program recommendations. You will also build, optimize, and maintain reproducible workflows using HPC schedulers and AWS to scale analyses, reduce turnaround time, and ensure traceability.
In addition, you will design and integrate
LLM-powered agentic workflows for literature mining, data extraction, and pipeline orchestration to accelerate discovery and improve developer productivity. Working closely with experimental scientists, you will propose computationally informed experiments, interpret results, and refine study designs to improve confidence and reduce cycle time.
You will generate translational insights through
differential expression,
pathway enrichment, and
functional annotation, connecting molecular signals to biological mechanisms and clinical hypotheses. You will produce publication-quality visualizations and reports, present findings clearly to cross-functional stakeholders, and champion
version control,
workflow managers, and
reproducible research practices to strengthen code quality and method sharing across programs.
Finally, you will stay current with emerging tools in
bioinformatics,
AI/ML, and
agentic AI, piloting new approaches, sharing learnings, and scaling successful methods across the portfolio.
Essential Skills and Experience- You should have a PhD in Bioinformatics, Computational Biology, Genomics, Molecular Biology, Computer Science, or a closely related quantitative discipline, with 2-5 years of industry experience.
- Alternatively, you may have an MS in a relevant discipline with 4-6 years of industry experience in bioinformatics, computational biology, or genomics.
- A demonstrated track record of independent research through publications, conference presentations, or successful project delivery is expected.
- You should bring proficiency in R and/or Python for genomic data analysis, statistical computing, and data visualization, including tools such as ggplot2, Bioconductor, tidyverse, pandas, and scikit-learn.
- Hands-on experience with NGS data analysis is required, including alignment tools such as STAR, BWA, and Bowtie2; quantification tools such as Salmon, featureCounts, and HTSeq; and variant calling tools such as GATK and bcftools.
- You should be familiar with RNA-seq analysis workflows, including differential expression methods such as DESeq2, edgeR, and limma, as well as pathway analysis and gene set enrichment approaches such as ssGSEA and MSigDB. Experience working in Linux/Unix environments and with HPC job schedulers such as SLURM, SGE, or PBS, and/or cloud computing platforms such as AWS or GCP, is important.
You should also have working knowledge of
Git/GitHub and reproducible research practices, including
Nextflow or similar workflow managers. A solid understanding of
molecular biology fundamentals,
genome annotation, and public bioinformatics databases such as
NCBI,
Ensembl,
UniProt, and
PDB is required, along with foundational knowledge of
machine learning concepts and applied statistics relevant to biomarker discovery and genomic data.
Success in this role will also require strong analytical thinking, creative problem-solving, and the ability to translate complex datasets into actionable biological insights. You should have excellent written and verbal communication skills, a collaborative mindset, intellectual curiosity, and the ability to manage multiple priorities and deliver results within timelines.
Desirable Skills and Experience
Experience in at least one therapeutic area-
infectious diseases,
oncology, or
inflammatory disease-would be valuable.
We also welcome experience with
comparative genomics and
microbial or viral genome analysis, including
pangenome methods,
AMR gene detection, and
phylogenetics.
Additional desirable experience includes building
predictive and prognostic models using supervised and unsupervised machine learning methods on clinical or preclinical omics data; familiarity with
deep learning frameworks such as
PyTorch and
TensorFlow; and exposure to
biological foundation models such as
ESM,
EvolutionaryScale,
scGPT,
TranscriptFormer, and
Evo.
We also value experience with or strong interest in
agentic AI workflows for bioinformatics, including
LLM-orchestrated pipelines,
retrieval-augmented generation (RAG) for scientific literature, and tool-using AI agents that interact with databases and analysis tools. Proficiency with AI-assisted coding tools such as
Claude Code or
GitHub Copilot is a plus.
Exposure to
single-cell RNA-seq tools such as
Seurat,
Scanpy, and
CellRanger; knowledge of
structural biology tools,
protein modeling, or
antigen/antibody design; and experience with
containerization and
infrastructure-as-code would also be beneficial. Familiarity with
LLM APIs and prompt engineering for scientific applications, including structured output generation and multi-agent system design, is also desirable.
The annual base pay for this position ranges from $115,992.00 - $172,671.60. Our positions offer eligibility for various incentives-an opportunity to receive short-term incentive bonuses, equity-based awards for salaried roles and commissions for sales roles. Benefits offered include qualified retirement programs, paid time off (i.e., vacation, holiday, and leaves), as well as health, dental, and vision coverage in accordance with the terms of the applicable plans.
Date Posted14-Jul-2026
Closing Date24-Jul-2026