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Machine Learning Scientist/Sr Scientist - Antibody Property Prediction & Generative Design

Eli Lilly and Company
Full-time
Remote friendly (South San Francisco, CA)
United States
$151,500 - $244,200 USD yearly
Clinical Research and Development

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Role Summary

Machine Learning Scientist/Sr Scientist - Antibody Property Prediction & Generative Design. Role focuses on antibody and biologic drug development within the TuneLab AI-powered drug discovery platform, applying advanced machine learning to accelerate antibody discovery, optimization, and developability assessment across a federated network.

Responsibilities

  • Antibody Property Prediction: Build multi-task learning frameworks for antibody properties (binding affinity, specificity, stability, immunogenicity, developability metrics) from sequence and structural features.
  • Antibody Sequence Generation: Develop generative models for antibody design, including CDR optimization, humanization, and affinity maturation while maintaining structural integrity.
  • Structure-Aware Design: Integrate structural modeling with generative approaches to ensure proper folding, CDR conformations, and epitope recognition.
  • Developability Optimization: Create models optimizing expression yield, solubility, viscosity, and post-translational modifications for manufacturing.
  • Species Cross-Reactivity: Design antibodies with desired species cross-reactivity profiles for preclinical development.
  • Antibody-Antigen Modeling: Predict antibody-antigen interactions, epitope mapping, and paratope design using sequence and structural information.

Qualifications

  • Required: PhD in Computational Biology, Protein Engineering, Immunology, Biochemistry, or related field from an accredited institution.
  • Required: Minimum of 2 years of experience in antibody or protein therapeutic development within the biopharmaceutical industry.
  • Required: Strong experience with protein sequence analysis and structural biology.
  • Required: Proven track record in machine learning applications to biological sequences.
  • Required: Deep understanding of antibody structure-function relationships and immunology.

Additional Preferences

  • Experience with immune repertoire sequencing and analysis.
  • Publications on antibody design, protein engineering, or therapeutic development.
  • Expertise in protein language models and transformer architectures.
  • Knowledge of antibody manufacturing and CMC considerations.
  • Experience with display technologies (phage, yeast, mammalian).
  • Understanding of clinical immunogenicity and prediction methods.
  • Proficiency in protein modeling tools (Rosetta, MOE, Schrodinger BioLuminate).
  • Familiarity with antibody-drug conjugates and bispecific platforms.
  • Experience with federated learning in biological applications.
  • Portfolio mindset balancing innovation with practical developability.

Education

  • PhD in relevant field (as listed under Qualifications).

Additional Requirements

  • Location: Indianapolis, IN; or South San Francisco, CA; or Boston, MA with up to 10% travel to attend key industry conferences. Relocation provided.
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