Advisor - Antibody Developability Validation & Benchmarking

Eli Lilly Eli Lilly · Pharma · Boston, MA +2

The Advisor - Antibody Developability Validation & Benchmarking role at Eli Lilly is part of the AI-powered drug discovery platform, Lilly TuneLab. This role focuses on validating federated antibody models by building benchmark suites, designing test sets, integrating public benchmarks, and developing validation frameworks. The goal is to ensure the trustworthiness of AI models for triaging drug candidates, partnering closely with modeling scientists on design choices and statistical rigor, and integrating validation into the MLOps pipelines.

What you'd actually do

  1. Build the canonical benchmark suite covering the full developability portfolio — aggregation propensity (AC-SINS, SMAC, CIC), thermal stability (nanoDSF/DSF), polyspecificity (BVP-ELISA, Heparin RT, PSR), self-interaction, viscosity, chemical liabilities (deamidation, isomerization, oxidation, N-glycosylation in CDRs), and immunogenicity surrogates.
  2. Architect privacy-preserving protocols for constructing representative test sets across distributed partner datasets, with splitting strategies appropriate to antibody data — germline-based, CDR-similarity-based, and clonotype-based splits that genuinely test generalization rather than near-duplicate memorization.
  3. Systematically benchmark federated antibody models against established external resources — SAbDab, OAS, TAP, the Jain et al. clinical-stage antibody panel, FLAb, and equivalent emerging datasets — to characterize generalization gaps and quantify where federated training delivers measurable lift over public-only baselines.
  4. Develop validation strategies that assess model generalization across modalities and formats relevant to antibody developability — IgG vs. bispecific vs. fragment formats, different expression systems, different assay protocols across partners — while respecting partner data boundaries.
  5. Implement temporal-split and sequence-similarity-aware validation protocols that simulate prospective deployment, detect concept drift as partner data accumulates, and surface systematic failure modes across CDR length distributions, germline families, and physicochemical regimes.

Skills

Required

  • PhD in Computational Biology, Bioinformatics, Computational Chemistry, Computer Science, Statistics, or related field
  • Minimum of 4 years of post-PhD experience
  • Understanding of antibody characterization and developability
  • Experience with machine learning model validation
  • Statistical rigor and experimental design
  • Privacy-preserving protocols
  • MLOps pipelines

Nice to have

  • Experience with federated learning
  • Familiarity with NVIDIA FLARE

What the JD emphasized

  • validation
  • benchmark
  • test sets
  • generalization
  • validation strategies
  • validation protocols
  • validation implications

Other signals

  • AI-powered drug discovery platform
  • federated learning
  • antibody developability prediction
  • validation and benchmarking