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

Eli Lilly and Company
Full-time
Remote friendly (Boston, MA)
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 plays an essential role within the TuneLab platform, specializing in antibody and biologic drug development. This position requires deep expertise in antibody engineering, protein design, and immunology, combined with advanced machine learning capabilities in sequence modeling and structure prediction. The role will drive the development of AI models that accelerate antibody discovery, optimization, and developability assessment across the federated network.

Responsibilities

  • Antibody Property Prediction: Build multi-task learning frameworks specifically for antibody properties including binding affinity, specificity, stability (thermal, pH, aggregation), immunogenicity, and developability metrics from sequence and structural features.
  • Antibody Sequence Generation: Develop and implement generative models (transformers, diffusion models, evolutionary models) for antibody design, including CDR optimization, humanization, and affinity maturation while maintaining structural integrity.
  • Structure-Aware Design: Integrate structural modeling and prediction (AlphaFold, ESMFold) with generative approaches to ensure generated antibodies maintain proper folding, CDR loop conformations, and epitope recognition.
  • Developability Optimization: Create models that simultaneously optimize for multiple developability criteria including expression yield, solubility, viscosity, and post-translational modifications, crucial for manufacturing and formulation.
  • Species Cross-Reactivity: Develop approaches to design antibodies with desired species cross-reactivity profiles for preclinical development, learning from cross-species binding data.
  • Antibody-Antigen Modeling: Create models for predicting antibody-antigen interactions, epitope mapping, and paratope design, incorporating both sequence and structural information.

Qualifications

  • PhD in Computational Biology, Protein Engineering, Immunology, Biochemistry, or related field from an accredited college or university
  • Minimum of 2 years of experience in antibody or protein therapeutic development within the biopharmaceutical industry
  • Strong experience with protein sequence analysis and structural biology
  • Proven track record in machine learning applications to biological sequences
  • 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 a relevant field (as listed in Basic Qualifications)

Additional Requirements

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