Postdoctoral Scholar-Pharmaceutical Sciences
United States
⚠️ We'll shut down after Aug 1st - try foo🦍 for all jobs in tech ⚠️
University of Tennessee
The University of Tennessee System serves all 95 counties and improves lives statewide through the work of five campuses and two institutes.THIS IS A GRANT-FUNDED POSITION OFFERED AS A ONE-YEAR CONTRACT, RENEWABLE ANNUALLY BASED ON PERFORMANCE AND THE AVAILABILITY OF FUNDING
JOB SUMMARY/ESSENTIAL JOB FUNCTIONS: The Roy Laboratory has an immediate opening in Artificial Intelligence (AI) in small molecules drug discovery for a talented and motivated Postdoctoral Scholar to join our interdisciplinary team focused on accelerating small molecule drug discovery. The ideal candidate will have a strong background in artificial intelligence, machine learning, and computational chemistry, with a deep understanding of molecular modeling, cheminformatics, and drug discovery pipelines. You will contribute to the development and application of AI-driven models to identify and optimize novel therapeutic compounds.
- Develops and applies AI approaches for small molecule virtual screening, de novo molecule generation, lead optimization, and property prediction.
- Integrates and analyzes multi-modal datasets, including chemical structures, bioactivity data, omics profiles, and structural biology information, to create predictive and generative models for small molecule development.
- Collaborates closely with medicinal chemists, structural biologists, and pharmacologists to interpret model outputs and guide experimental design.
- Designs, implements, and evaluates novel AI/ML algorithms tailored to chemical space exploration and drug discovery.
- Evaluates and benchmarks model performance using rigorous statistical and domain-relevant criteria.
- Contributes to the development of computational platforms and pipelines for end-to-end drug discovery tasks.
- Publishes research findings in top-tier journals and present at scientific conferences.
- Stay abreast of the latest developments in AI and computational drug discovery and recommend innovative tools and techniques.
- PhD in Computer Science, Computational Chemistry, Bioinformatics, or related field.
- Proficiency in Python and scientific computing tools (NumPy, Pandas, Jupyter).
- Strong experience with AI/ML frameworks: PyTorch, TensorFlow, scikit-learn, XGBoost.
- Familiarity with graph neural networks (e.g., DGL, PyTorch Geometric) and/or generative models (e.g., VAEs, GANs, diffusion models).
- Proven experience in cheminformatics: RDKit, DeepChem, Open Babel.
- Strong understanding and experience of model evaluation techniques (e.g., cross-validation, ROC-AUC, precision-recall) and bias mitigation in imbalanced or noisy datasets.
- Experience with molecular representations (e.g., SMILES, SELFIES, molecular graphs) and datasets (e.g., ChEMBL, PubChem, ZINC, BindingDB).
- Hands-on experience with AI tools/platforms such as REINVENT, MolBERT, Chemprop, DeepDock, DiffDock, or MoleculeNet.
- Familiar with drug discovery concepts, including QSAR modeling, molecular docking, and lead optimization.
PREFERRED:
- Knowledge of protein–ligand interaction modeling, including experience with docking software (e.g., AutoDock Vina, GOLD, GNINA) and MD simulation packages (e.g., AMBER, NAMD, Desmond).
- Familiarity with protein structure prediction tools, especially AlphaFold, and integration of predicted structures into modeling workflows.
- Hands-on experience with AI-driven molecular design platforms, such as REINVENT, MolBERT, Chemprop, DeepDock, DiffDock, or benchmark datasets like MoleculeNet.
- Understanding of synthetic accessibility and feasibility, including cheminformatics-based estimations.
- Exposure to retrosynthesis planning tools, such as ASKCOS, AiZynthFinder, IBM RXN, and related automated synthesis platforms.
- Experience with high-performance computing (HPC) clusters and/or cloud-based AI/ML environments (AWS, GCP, Azure), including resource management, job scheduling, or distributed training.
* Salary range is an estimate based on our AI, ML, Data Science Salary Index 💰
Tags: AWS Azure Bioinformatics Biology Chemistry Computer Science Diffusion models Drug discovery GANs GCP Generative modeling HPC Jupyter Machine Learning NumPy Pandas Pharma PhD Pipelines Python PyTorch RDKit Research Scikit-learn Statistics TensorFlow XGBoost
Perks/benefits: Conferences
More jobs like this
Explore more career opportunities
Find even more open roles below ordered by popularity of job title or skills/products/technologies used.