Bioinformatics Analyst III

Spectraforce
Cambridge, United States of America
yesterday

Role details

Contract type
Temporary contract
Employment type
Full-time (> 32 hours)
Working hours
Regular working hours
Languages
English
Experience level
Junior

Job location

Cambridge, United States of America

Tech stack

Artificial Intelligence
Bioinformatics
Cluster Analysis
Computational Biology
Data Integration
Document-Oriented Databases
Python
Machine Learning
NumPy
TensorFlow
Cloud Platform System
PyTorch
Bioconductor
GIT
Pandas
Matplotlib
Scikit Learn
Information Technology
Software Version Control
Data Pipelines

Job description

The successful candidate will work closely with stakeholders across the TIEV (Target Identification and Validation in Immunology Discovery) group to advance the Single-Cell Atlas initiatives. The role will focus on analyzing large-scale single-cell transcriptomic and epigenomic datasets to build reference maps, define tissue-specific niches, and uncover their roles in health and disease., * Curate, harmonize, and analyze large-scale scRNA-seq and scATAC-seq datasets from internal and public sources

  • Integrate multi-modal data to support single-cell atlas construction
  • Develop and apply computational and AI/ML methods to classify cell states, identify regulatory networks, and generate disease-relevant insights
  • Support interpretation of model outputs to better understand cell-state biology, tissue-specific function, and fibroblast heterogeneity
  • Collaborate with immunology, computational, and cross-functional stakeholders to translate biological questions into computational solutions
  • Document data curation, processing, and analysis pipelines to ensure reproducibility and transparency
  • Contribute to time-sensitive projects supporting target discovery and prioritization

Requirements

  • Experience analyzing single-cell transcriptomics and epigenomics data, especially scRNA-seq and scATAC-seq
  • Experience with single-cell atlas construction and multi-modal data integration
  • Strong proficiency in Python and bioinformatics/data science workflows
  • Familiarity with cell type annotation, clustering, trajectory inference, and regulatory analysis
  • Ability to communicate scientific results clearly and work collaboratively across teams, * MS degree with 5+ years of experience, or PhD with 0+ years of experience, in a quantitative field such as Bioinformatics, Computational Biology, Computer Science, Computational Genetics, Biostatistics, AI/Machine Learning, or a related discipline
  • Proficiency in Python and standard ML/data science libraries
  • Experience working in HPC or cloud environments for large-scale omics datasets
  • Domain knowledge in single-cell analysis, chromatin accessibility analysis, or systems immunology
  • Strong attention to detail, documentation, and communication skills
  • Ability to independently design, execute, and troubleshoot computational workflows

Preferred Technical Skills:

  • Experience with NumPy, Pandas, Scikit-learn, Matplotlib, and Seaborn
  • Familiarity with TensorFlow and/or PyTorch
  • Proficiency with Git for version control and collaboration
  • Hands-on experience with single-cell analysis tools such as Scanpy, Seurat, or Bioconductor
  • Exposure to multi-modal integration methods such as CITE-seq, ATAC-seq, or spatial transcriptomic

Additional Technical Skills (a plus):

  • Experience with cell type annotation, clustering, and trajectory inference
  • Knowledge of regulatory network inference and peak-to-gene linking
  • Experience building multi-modal AI/ML models that connect transcriptomic, proteomic, and imaging data

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