ML Research Scientist, Foundation Models (Senior / Staff / Principal)

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🌍 Remote📍 New York, NY📍 San Mateo, CAFullTime

About this role

ML Research Scientist, Foundation Models

About the Team

Join a world-class team at the forefront of AI and biochemistry.

At Genesis Molecular AI, we’re a tight-knit team of proven deep learning researchers, software engineers, and drug discovery pioneers. Our shared mission is nothing short of revolutionary: to forge the next generation of AI foundation models that will unlock groundbreaking therapies for patients with severe diseases.

We don’t just apply machine learning to biology; we are conducting fundamental research at the intersection of machine learning, physics, and computational chemistry, pushing the boundaries of each field. The Genesis AI team is building an engine for this revolution. You will work side by side with the top multidisciplinary researchers to design and build generative and discriminative foundation models at scale from the entire spectrum of molecular data, having access to ample compute and large-scale simulations.

About the Role

This is an opportunity for a scientific innovator to advance the future of generative AI in drug discovery. As a key member of the Genesis AI team, you will shape and drive our research agenda for foundation models. You will lead critical research initiatives in areas like reinforcement learning, novel model architectures, and advanced pretraining and post-training methods. Your core mission is to create groundbreaking models and insights that are instrumental in discovering new medicines.

This role requires a deep curiosity and a collaborative spirit. You will be a strong team player, working in close partnership with our exceptional engineers and drug discovery experts to bring complex ideas to life. We also want you to be a voice in the scientific community. We will actively support and champion your efforts to publish some research breakthroughs in premier ML venues such as NeurIPS, ICML, and ICLR.

Positions are available at various levels of seniority: Senior, Staff, and Principal.

You will

  • Lead transformative research projects from conception to implementation, tackling core challenges in generative modeling for molecular systems.

  • Design and develop novel models and algorithms, building upon the latest literature in diffusion models, flow matching, RL, LLMs, and other cutting-edge areas.

  • Execute ambitious experiments at scale, leveraging our world-class computational infrastructure to rigorously validate your hypotheses and push the boundaries of the state-of-the-art.

  • Collaborate intensely with a multidisciplinary team to translate your research into tangible impact on our drug discovery platform.

  • Contribute to the global research community by publishing some of your work and representing Genesis at top tier AI/ML conferences and workshops.

  • Mentor and guide other researchers and engineers, fostering a culture of shared learning, growth, and innovation.

You are

  • A deep learning expert with a portfolio of novel research in one or more cutting-edge domains of generative or predictive modeling (e.g., diffusion, flow matching, RL, foundation model architectures and training methods).

  • An independent, first-principles thinker with a strong sense of ownership over your research projects and a drive to see them through to completion.

  • A strong coder, comfortable with going deep into the engineering stack to build, debug, and ship your own models.

  • A curious, problem-oriented mind, excited to dive into the emerging field at the intersection of AI, physics, chemistry, and biology and make foundational contributions and discoveries. No prior experience in biology or chemistry is necessary – only willingness to learn.

  • A true team player with strong communication skills who thrives in highly collaborative, mission-driven environments where science and engineering are deeply intertwined.

  • Inspired by our culture of intellectual curiosity and the shared belief that breakthroughs happen when diverse perspectives and minds unite.

Nice to have's

  • PhD in machine learning, computer science, other computational sciences or equivalent research experience, demonstrated by a strong publication record.

  • Hands-on experience with Pytorch, Pytorch Lightning, Ray Distributed Training, Pytorch Geometric, etc.

  • Experience in distributed training and inference of large models on GPU clusters.

  • Familiarity with molecular data, (proteins, small molecules), physics-informed ML, or 3D point cloud data.

Compensation, Benefits, and Perks

  • Competitive compensation package that includes salary and equity.

  • Comprehensive health benefits: Medical, Dental, and Vision (covered 100% for the employees).

  • 401(k) plan.

  • Open (unlimited) PTO policy.

  • Free lunches and dinners at our offices.

  • Paid family leave (maternity and paternity).

  • Life and long- and short-term disability insurance.

About Genesis Molecular AI

Genesis Molecular AI is pioneering foundation models for molecular AI to unlock a new era of drug design and development. The company’s generative and predictive AI platform, GEMS (Genesis Exploration of Molecular Space), integrates AI and physics into industry-leading models to generate and optimize drug molecules, including the breakthrough generative diffusion model Pearl for structure prediction. Genesis has raised over $300 million from leading AI, tech and life science-focused investors, signed multiple AI-focused research collaborations with major pharma partners, and is deploying GEMS to advance an internal therapeutics pipeline for a variety of high-impact targets.

Genesis is headquartered in San Mateo, CA, with a fully integrated laboratory in San Diego. We are proud to be an inclusive workplace and an Equal Opportunity Employer.

Frequently Asked Questions

Is the salary disclosed for the ML Research Scientist, Foundation Models (Senior / Staff / Principal) position at genesis-molecular-ai?
The salary for this ML Research Scientist, Foundation Models (Senior / Staff / Principal) role at genesis-molecular-ai is not publicly listed. Click "Apply Now" to learn more about the compensation package on their official careers page.
Is the ML Research Scientist, Foundation Models (Senior / Staff / Principal) job at genesis-molecular-ai remote?
Yes, this ML Research Scientist, Foundation Models (Senior / Staff / Principal) position at genesis-molecular-ai is remote, with team members based in New York, NY, San Mateo, CA. You can work from home or anywhere in the supported regions.
Is the ML Research Scientist, Foundation Models (Senior / Staff / Principal) role at genesis-molecular-ai full-time or part-time?
This is listed as a FullTime position. It is posted as a ML Research Scientist, Foundation Models (Senior / Staff / Principal) role in the AI department at genesis-molecular-ai.
Which team or department does the ML Research Scientist, Foundation Models (Senior / Staff / Principal) at genesis-molecular-ai belong to?
This ML Research Scientist, Foundation Models (Senior / Staff / Principal) position is part of the AI department at genesis-molecular-ai. See the full job description for more information about the team structure and responsibilities.
How do I apply for the ML Research Scientist, Foundation Models (Senior / Staff / Principal) position at genesis-molecular-ai?
Click the "Apply Now" button on this page. You will be redirected to genesis-molecular-ai's official application portal hosted on ashby where you can submit your application directly.
When was the ML Research Scientist, Foundation Models (Senior / Staff / Principal) job at genesis-molecular-ai posted?
This ML Research Scientist, Foundation Models (Senior / Staff / Principal) position at genesis-molecular-ai was posted on Jul 30, 2025. Apply as soon as possible — early applications are often reviewed first.
ML Research Scientist, Foundation Models (Senior / Staff / Principal)
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