México

Advisor - Ai-Guided Optimization For Biologics (San José …, San José del Rincón

Advisor - Ai-Guided Optimization For Biologics (San José …, San José del Rincón
Descripción
Primary Responsibilities Active Learning & Multi-Objective Optimization: Design and establish Active Learning pipelines for multi-objective optimization balancing affinity, specificity, stability, immunogenicity, and manufacturability; include multi-property guidance, Pareto-optimal search strategies, and uncertainty quantification. Reward & Surrogate Modeling: Design and train reward models and discriminative classifiers (e.g., affinity ranking, stability prediction, developability scoring) as objective functions for optimization loops. Reinforcement Learning for Generative Model Alignment: Develop and implement RL strategies (PPO, DPO, reward-weighted approaches) to fine-tune generative models (autoregressive transformers, diffusion models) toward biologic sequences with desired therapeutic properties; assess when RL vs Bayesian Optimization/Active Learning is warranted. Agentic DMTA Pipelines: Build AI-orchestrated, semi-autonomous pipelines connecting generative design, property prediction, experiment selection, and result interpretation with human oversight; optimize for scientific rigor. Cross-Functional Leadership: Lead joint data reviews with dry and wet-lab scientists; collaborate with protein engineers, structural biologists, and automation scientists to encode domain knowledge as reward signals, action constraints, and optimization boundaries. Scientific Communication: Publish in top-tier venues and present at conferences. Basic Requirements Ph.D. in Machine Learning, Computer Science, Computational Biology, Physics, Applied Mathematics, or closely related quantitative field. 1–3 years post-Ph.D. industry R&D; experience or relevant postdoctoral appointment. Preferred Qualifications Bayesian Optimization, Active Learning, sequential decision-making under uncertainty. RL fluency (PPO, DPO, RLHF-style alignment, reward shaping) to design/evaluate RL vs simpler methods. Deep learning with transformers, diffusion, and flow-based models. Software development in Python and PyTorch; distributed training, GPU workflows, production-quality code. Protein science/biologics ML familiarity (protein representations/language models such as ESM-family, AbLang); ML for antibody/nanobody/peptide design. Generative biologics experience (structure-conditioned generation, inverse folding, de novo antibody design such as Boltz, Chai, RFDiffusion, AF-Multimer). RL for molecular property optimization and/or drug discovery optimization. Data/compute scaling laws for language models. Multi-modal models jointly modeling sequence, structure, and functional annotations. Strong publication/presentation record. Active open-source contributions. Benefits / Compensation Anticipated wage: $166,500
- $244,200. Full-time employees may be eligible for a company bonus. Comprehensive benefits including 401(k), pension, vacation, medical/dental/vision/prescription, versátil benefits, life insurance, time off/leave, and well-being benefits. #J-*****-Ljbffr Postúlate en Kit Empleo: kitempleo.com.mx/empleo/5uuccv
Información clave
Consejos de seguridad
Si una oferta parece demasiado buena para ser verdad, desconfía.
1 / 10
Más info sobre el anuncio

El anuncio Advisor - Ai-Guided Optimization For Biologics (San José … fue publicado en la categoría San Felipe del Progreso Ingeniería de Locanto.

En estos momentos, este es el único anuncio disponible en esta categoría en San Felipe del Progreso.

Además, en esta sección, disponemos de más anuncios clasificados en un radio de 15 km. Haz clic aquí para verlos.