TalentBurst
Overview
Title: Machine Learning Engineer Location: South San Francisco, CA (Hybrid Working Model) Duration: 12 Months Job Description
We are looking for talented Machine Learning Engineers to join Prescient Design, a division devoted to developing structural and machine learning-based methods for molecular design within Client's Research and Early Development (gRED) organization. The successful candidate will manage projects deploying new techniques for machine learning-based molecular optimization for the analysis and design of small and large molecule drugs within target-driven design campaigns. Special focus will be given to engineering pipelines for probabilistic molecular property prediction and Bayesian acquisition for active learning-based drug discovery. Additional activities may extend to include engineering pipelines for molecular generative modeling. The Role
Join Prescient Design within the Computational Sciences organization in gRED. Collaborate closely with scientists within Prescient and across gRED. Develop machine learning and Bayesian optimization workflows to analyze existing and design new small and large molecules. Form close working relationships with small molecule and protein therapeutic development efforts across gRED. Work on existing projects and generate new project ideas. Qualifications
PhD in a quantitative field (e.g., Computer Science, Chemistry, Chemical Engineering, Computational Biology, Physics), or MS with 3+ years of industry experience. Demonstrated experience with machine learning libraries in production-ready workflows (e.g., PyTorch + Lightning + Weights and Biases). Record of achievement, including at least one high-impact first author publication or equivalent. Excellent written, visual, and oral communication and collaboration skills. Additional Desired Qualifications
Experience with physical modeling methods (e.g., molecular dynamics) and cheminformatics toolkits (e.g., rdkit). Molecular property prediction Computational chemistry De novo drug design Medicinal chemistry Small molecule design Self-supervised learning Geometric deep learning Bayesian optimization Probabilistic modeling Statistical methods Public portfolio of computational projects (e.g., GitHub).
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Title: Machine Learning Engineer Location: South San Francisco, CA (Hybrid Working Model) Duration: 12 Months Job Description
We are looking for talented Machine Learning Engineers to join Prescient Design, a division devoted to developing structural and machine learning-based methods for molecular design within Client's Research and Early Development (gRED) organization. The successful candidate will manage projects deploying new techniques for machine learning-based molecular optimization for the analysis and design of small and large molecule drugs within target-driven design campaigns. Special focus will be given to engineering pipelines for probabilistic molecular property prediction and Bayesian acquisition for active learning-based drug discovery. Additional activities may extend to include engineering pipelines for molecular generative modeling. The Role
Join Prescient Design within the Computational Sciences organization in gRED. Collaborate closely with scientists within Prescient and across gRED. Develop machine learning and Bayesian optimization workflows to analyze existing and design new small and large molecules. Form close working relationships with small molecule and protein therapeutic development efforts across gRED. Work on existing projects and generate new project ideas. Qualifications
PhD in a quantitative field (e.g., Computer Science, Chemistry, Chemical Engineering, Computational Biology, Physics), or MS with 3+ years of industry experience. Demonstrated experience with machine learning libraries in production-ready workflows (e.g., PyTorch + Lightning + Weights and Biases). Record of achievement, including at least one high-impact first author publication or equivalent. Excellent written, visual, and oral communication and collaboration skills. Additional Desired Qualifications
Experience with physical modeling methods (e.g., molecular dynamics) and cheminformatics toolkits (e.g., rdkit). Molecular property prediction Computational chemistry De novo drug design Medicinal chemistry Small molecule design Self-supervised learning Geometric deep learning Bayesian optimization Probabilistic modeling Statistical methods Public portfolio of computational projects (e.g., GitHub).
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