Scientist/Senior Scientist – AI Molecule Drug Design
Listed on 2026-02-08
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Science
Drug Discovery, Research Scientist
Overview
Syst Immune is a leading and well-funded clinical-stage biopharmaceutical company located in Redmond, WA and Princeton, NJ. It specializes in developing innovative cancer treatments using its established drug development platforms, focusing on bi-specific, multi-specific antibodies, and antibody-drug conjugates (ADCs). Syst Immune has multiple assets in various stages of clinical trials for solid tumor and hematologic indications. Alongside ongoing clinical trials, Syst Immune has a robust preclinical pipeline of potential cancer therapeutics in the discovery and IND-enabling stages, representing cutting-edge biologics development.
We offer an opportunity for you to learn and grow while making significant contributions to the company's success.
- Develop and optimize AI-driven small molecule drug design pipelines to predict molecular properties, perform virtual screening, and improve drug-like characteristics
- Utilize advanced AI methods such as generative modeling (e.g., Diff Dock, Protein
MPNN), deep learning, and reinforcement learning to generate novel small molecules and predict their interactions - Implement AI-based molecular docking methods (e.g., Diff Dock) to improve binding affinity predictions, optimize lead compounds, and enhance virtual screening efficiency
- Collaborate with cross-functional teams, including medicinal chemistry, biology, and computational biology, to integrate AI methods into drug discovery workflows, ensuring a seamless transition from computational design to experimental validation
- Lead AI-driven efforts in drug manufacturing, optimizing small molecule synthesis routes, yield predictions, and manufacturability profiles of novel drug candidates
- Apply virtual screening techniques using AI models to explore vast chemical spaces, prioritize compound libraries, and identify promising lead candidates for various therapeutic targets
- Analyze and interpret computational data to guide decision-making in the drug design process, focusing on optimizing molecular properties such as pharmacokinetics, toxicity, and efficacy
- Contribute to the development of AI-based software tools and platforms for drug design and analysis, ensuring that solutions are scalable and user-friendly for cross-disciplinary teams
- Generate insights from large-scale chemical and biological datasets, identifying key relationships and optimizing drug candidates for efficacy, safety, and pharmacokinetics
- Contribute to the development and deployment of software tools and platforms that enable AI-based drug design and analysis
- Stay updated on the latest advancements in AI and computational chemistry, especially in areas like AI small molecule generation, molecular docking, and virtual screening, and apply state-of-the-art methods to improve drug discovery processes
- Ph.D. or equivalent in Computational Chemistry, Bioinformatics, Biophysics, Machine Learning, or a related field
- 5+ years of experience applying computational methods and AI to small molecule drug design or a related field, with specific experience in AI small molecule generation, AI molecular docking, virtual screening, and drug manufacturing
- Strong background in machine learning techniques (e.g., deep learning, generative models, reinforcement learning) and their application to drug discovery
- Expertise in molecular modeling and drug design software (e.g., Auto Dock, Schrodinger, Open Babel, or other relevant tools)
- Proficiency in programming languages such as Python, R, or C++, and experience with machine learning frameworks (e.g., Tensor Flow, PyTorch)
- Experience in analyzing large-scale datasets, including molecular databases (e.g., ChEMBL, Pub Chem) and performing virtual screening
- Proven track record in applying computational chemistry and machine learning to solve real-world drug discovery challenges
- Excellent communication skills with the ability to present complex data to both technical and non-technical stakeholders
- Experience with high-performance computing (HPC) is a plus
- Familiarity with drug-likeness, ADMET (absorption, distribution, metabolism, excretion, toxicity) properties, and structure-activity relationships (SAR)
- Experience working with AI models in the context of generative chemistry or reinforcement learning for drug design
- Contributions to AI-driven drug discovery publications and conference presentations
- Knowledge of biological data integration, such as combining genomic, proteomic, or transcriptomic data with drug discovery
The expected base salary range for this position is $150,000 - $250,000 annually. Actual compensation will be based on a variety of factors, including but not limited to a candidate’s qualifications, experience, and skills. While most offers typically fall within the low to mid-point of the range, we may extend an offer toward the higher end for exceptional candidates whose background and expertise exceeds the requirements of the role.
Syst Immune is an Equal Opportunity…
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