Overview
• Design, implement, and apply AI-based methods merged with molecular modeling for protein design and engineering, including one or more of de novo design, sequence (re)design, and design of functionally relevant properties such as substrate selectivity and catalytic activity, stability, enzyme complementation, and photocontrol.
• Develop and train ML models informed by diverse experimental data such as (a) enzyme activity, specificity, and stability measurements; and (b) high-throughput sequencing data based on library screening and/or directed evolution.
• Collaborate closely with experimentalists on design–build–test–learn cycles including analysis and design of libraries.
• Prepare and publish manuscripts; present at conferences; contribute to grant-related reporting.
• Mentor graduate and undergraduate trainees.
Posting Summary
The Khare Laboratory at Rutgers University invites applications for a postdoctoral fellow position in computational enzyme engineering and AI-based protein design. A primary project will focus on engineering DNA polymerases supported by a federally funded and multi-institutional collaborative effort on DNA polymerase engineering. Postdoctoral fellows are also encouraged and supported to develop independent research directions aligned with the lab’s scientific program.
The laboratory develops and applies computational and machine-learning methods for enzyme engineering, de novo protein design, and the design of protein function. Research is conducted in close collaboration with experimental colleagues within and outside the group at Rutgers and beyond, with iterative cycles between computational design and experimental characterization.
Benefits
Rutgers provides a comprehensive benefits package to eligible employees. The specific benefits vary based on the position and may include:
- Medical, prescription drug, and dental coverage
- Paid vacation, holidays, and various leave programs
- Competitive retirement benefits, including defined contribution plans and voluntary tax-deferred savings options
- Employee and dependent educational benefits (when applicable)
- Life insurance coverage
- Employee discount programs
Minimum Education and Experience
• PhD (awarded or expected within six months of start date) in computational biology, bioinformatics, biophysics, chemistry, computer science, or a closely related field.
Required Knowledge, Skills, and Abilities
• Publication record (published, in press, or as a preprint) in protein design, protein engineering, computational structural biology, or machine learning for biology.
• Demonstrated programming proficiency in Python, including experience with modern deep-learning frameworks (PyTorch and/or JAX).
• Submission of a representative code sample or link to a public code repository (e.g., GitHub) as part of the application.
Preferred Qualifications
• Direct experience with contemporary protein design tools and models (e.g., Rosetta, ProteinMPNN, RFdiffusion, AlphaFold-family models, ESM-based or other protein language models, or comparable methods).
• Experience training or fine-tuning ML models on large experimental datasets.
• Prior track record of close collaboration with experimentalists.