Scientist, Machine Learning (Principal Scientist - Associate Director)

Reposted Yesterday
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Boston, MA, USA
In-Office
Senior level
Biotech
The Role
The role involves applying machine learning in drug discovery, leading model development, collaborating with cross-functional teams, and mentoring staff.
Summary Generated by Built In

About Superluminal Medicines:

Superluminal Medicines is a generative biology and chemistry company revolutionizing the speed and accuracy of how small molecule medicines are created. The Company’s platform aims to create candidate-ready compounds with unprecedented speed using a combination of deep biology, computational and medicinal chemistry, machine learning, and proprietary big data infrastructure. We are expanding the team of talented scientists who seek to build the future of small molecule drug discovery with creativity and innovation.

About the Role:

We are seeking a Machine Learning Scientist to join our integrated discovery team and help advance small molecule drug discovery programs through applied ML. In this role, leading from the bench, you will enable the development, validation and deployment of state-of-the-art ML models to generate the quantitative predictions necessary to drive drug discovery. Beyond technical mastery, you will serve as a core strategic partner to medicinal chemists, computational chemists, and biologists, building models that move programs efficiently toward program decision points and candidate nomination.  

Key Responsibilities:

  • Lead the application of Large Language Models (LLMs), co-folding algorithms, and generative chemistry techniques to design novel chemical matter aimed at hitting key program milestones, such as establishing selectivity windows and optimizing drug-like properties
  • Serve as the machine learning POC on cross functional projects partnering  with medicinal chemists and structural biologists to refine SAR and structure informed modeling efforts 
  • Synthesize complex ML outputs into clear, actionable design hypotheses that cross-functional scientific stakeholders can use to make high-stakes program decisions
  • May be responsible for management and development of internal team members

Required Qualifications:

  • Ph.D. in Computational Chemistry, Computer Science, Machine Learning, or a related field
  • 2+ years applying ML methods in a small molecule drug discovery programs in biotech or pharma environments
  • Demonstrated expertise in statistics, probability theory, data modeling, machine learning algorithms, and the languages used to implement analytics solutions
  • Demonstrated success in a cross-functional environment, including biologists, structural biologists, medicinal and computational chemists, with specific examples of computational designs/algorithms/models that directly influence achievement of program milestones
  • Strong practical proficiency in Python and deep learning libraries (e.g., PyTorch, TensorFlow) is required. Demonstrated ability to build and maintain robust, production-quality ML code and data workflows

Preferred Qualifications:

  • Proven experience with protein-ligand co-folding models (e.g.,Boltz, OpenFold, AlphaFold, etc) and the ability to integrate these structural insights into broader ML discovery pipelines
  • Expertise fine-tuning existing models with internally generated structural biology and biology data
  • Strong knowledge of deep learning frameworks, specifically for affinity prediction, ADMET modeling, and the application of LLMs in a biological or chemical context
  • Experience mentoring and developing teams

Skills & Competencies:

  • A demonstrated track record of innovation in the ML/AI space, including developing and validating new architectures or novel applications of existing models to solve complex drug discovery problems
  • Demonstrated expertise using small molecule drug discovery ML/AI tools e.g. AlphaFold, Boltz, OpenFold, ChemProp, DeepChem, Reinvent, etc)  
  • Strong level coding for ML tasks including knowledge of key packages (RDKit, scikit-learn, numpy, pandas, pytorch, DeepChem, polars, PyG/DGL).
  • Strong interpersonal and communications skills in the "why" behind a design to a diverse scientific audience

Benefits:

Superluminal offers a comprehensive benefits package that fully covers employees’ annual deductibles and monthly premiums for medical, dental, and vision insurance. The package also includes a 401(k) match program, a Massachusetts transportation subsidy, equity, unlimited paid time off, and both disability and life insurance.

Equal Opportunity Statement:

Superluminal Medicines is an Equal Opportunity Employer committed to a culturally diverse workforce. All qualified applicants will receive consideration for employment without regard to race; color; creed; religion; national origin; age; ancestry; nationality; marital, domestic partnership or civil union status; sex, gender, gender identity or expression; affectional or sexual orientation; disability; veteran or military status or liability for military status.

Skills Required

  • Ph.D. in Computational Chemistry, Computer Science, Machine Learning, or related field
  • 2+ years applying ML in drug discovery
  • Expertise in statistics, data modeling, ML algorithms
  • Practical proficiency in Python and deep learning libraries
  • Success in cross-functional environments
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The Company
HQ: Boston, Massachusetts
24 Employees

What We Do

Superluminal Medicines is a Boston-based generative biology and chemistry company developing a differentiated pipeline and revolutionizing the speed and accuracy of how medicine is created. Our platform creates candidate-ready compounds with unprecedented speed using a comprehensive combination of deep biology and chemistry expertise, machine learning, and proprietary big data infrastructure. The predict-design-test architecture accurately models protein shapes and designs highly selective compounds to target the precise structural change for therapeutic effect. Our discovery engine is powered by an industry-leading, pharmacokinetic and toxicology in silico prediction capability. With a lead program candidate expected in the near term, our proprietary pipeline validates our platform with initial programs focused on high-value GPCR targets. We’re pleased to be backed by a strong network of investors including RA Capital Management, Insight Partners, NVentures, Catalio Capital Management, Eli Lilly and Company, Gaingels, and Cooley LLP.

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