VantAI
New York, United States
About VantAI:
VantAI combines cutting-edge machine learning with deep systems biology, physics and chemistry expertise to solve the most challenging problems in drug discovery. We specialize in the discovery of compounds and biologics that modulate complex protein-protein interactions, using data-driven modeling approaches. Our machine learning-powered in silico platform has helped leading biopharma partners advance their development programs at a fraction of the time and cost of traditional methods.
About the role:
We're looking for a Head of Platform, a leader with a deep understanding of proteomics and small molecule drug discovery who can help us scale one of the most exciting screening and data generation platforms in a novel modality. Join us!
Key Responsibilities:
Required Qualifications:
Desired Skills:
New York, NY
Salary: $200,000 - $225,000+
This band is a reflection of the job description as written. Looking for a higher salary? Apply anyway! We are happy to speak to more experienced candidates who may require a higher salary and discuss that experience in our first touchpoint.
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VantAI
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VantAI pairs bleeding-edge machine learning techniques with deep systems biology expertise to build computational models that uncover hidden relationships between molecules, targets, and diseases. These models power a best-in-class solution that identifies and generates new molecular entities for targets of interest, repurposes existing molecules at any stage of development, uncovers accurate ADME and toxicological insights, and predicts adverse events likely to influence trial success from deep analysis of systems-based pharmacogenomics. VantAI's in silico platform specializes in modelling complex protein-protein interactions, powering the discovery of biologics and protein degraders in addition to small-molecule drugs. It has helped leading biopharma partners launch new development programs--or revitalize old ones--at a fraction of the time and cost of traditional methods.