Full-Time

Lead – Applied Machine Learning

Materials Science

Confirmed live in the last 24 hours

Flagship Pioneering

Flagship Pioneering

201-500 employees

Biotechnology firm creating health and sustainability solutions

Food & Agriculture
Biotechnology
Healthcare

Senior, Expert

Cambridge, MA, USA

Category
Applied Machine Learning
AI & Machine Learning
Required Skills
Python
Pytorch
Pandas
NumPy
Requirements
  • Proven experience in leading teams in AI/ML applied to physical sciences, particularly in materials science, chemistry, or physics.
  • Expertise in training, deploying, and fine-tuning deep learning models with applications in materials composition and performance prediction.
  • Strong background in developing physics-informed machine learning models, including conservation laws, symmetry, PINNs, or neural ODEs.
  • Proficiency with PyTorch and experience managing multi-GPU training environments.
  • Demonstrated track record of publishing scientific papers or contributing to public codebases in the areas of AI and materials science.
  • Proficiency in Python and the data science ecosystem (NumPy, SciPy, Pandas), along with data visualization tools.
  • PhD in Computer Science, Applied Mathematics, Materials Science, or a related field, with a strong focus on machine learning.
  • Excellent communication and leadership skills to manage a diverse team and convey technical findings to stakeholders.
Responsibilities
  • Lead and mentor a cross-disciplinary team: Supervise and support a group of ML engineers and scientists, guiding them in applying ML techniques to materials composition, structure, and performance.
  • Develop and deploy advanced ML models: Oversee the creation, fine-tuning, and deployment of deep learning models, with a focus on materials discovery, synthesis, and performance prediction.
  • Drive innovation in physics-informed AI: Lead the development of physics-based learning architectures, integrating conservation laws, symmetries, and other scientific principles into AI models.
  • Integrate AI tools with lab workflows: Collaborate closely with experimental teams to design AI-driven methods for lab orchestration, experimental assay design, and optimization of synthesis processes.
  • Oversee computational projects: Ensure team members are successfully implementing deep learning architectures for representation learning, generative AI, and quantitative reasoning tools (e.g., LLMs).
  • Strategize on AI-driven discovery: Shape the team’s long-term goals for applying AI to optimize materials discovery, including digital platforms that continually fine-tune models as new data emerges.
  • Communicate findings and strategies: Represent the team’s work to stakeholders through presentations, reports, and technical documentation, ensuring clear communication of complex AI-driven insights.
  • Stay at the forefront of AI and materials science: Keep the team up to date with the latest advancements in AI, ML, and materials research, integrating cutting-edge techniques into the team's approach.

Flagship Pioneering fosters a culture of groundbreaking advancements in biotechnology, emphasizing an ecosystem approach that synergizes human health and sustainability. Their business model not only focuses on creating transformative products but also incubates leading companies like Moderna and Indigo Agriculture, positioning them at the forefront of scientific innovation and industry leadership. This approach offers employees a unique opportunity to be part of a pioneering team that drives real-world impacts across multiple sectors.

Company Stage

N/A

Total Funding

$10.2B

Headquarters

Cambridge, Massachusetts

Founded

2000

Simplify Jobs

Simplify's Take

What believers are saying

  • Flagship's recent $3.6 billion raise will support the creation of 25 new breakthrough companies, offering substantial growth opportunities.
  • The firm's track record of founding over 100 biotechnology companies, including industry leaders like Moderna, highlights its potential for high-impact innovation.
  • Key leadership appointments and promotions, such as Lovisa Afzelius to General Partner, strengthen Flagship's strategic direction and operational capabilities.

What critics are saying

  • The ambitious goal of creating 25 breakthrough companies may stretch resources and focus, potentially impacting the quality of each venture.
  • Heavy reliance on AI and advanced computational techniques could face technological and regulatory hurdles, slowing down progress.

What makes Flagship Pioneering unique

  • Flagship Pioneering's focus on creating and developing breakthrough companies in human health, sustainability, and AI sets it apart from traditional venture firms.
  • Their significant capital pool of $10.9 billion and $14 billion in assets under management provides unparalleled financial backing for innovative ventures.
  • Flagship's unique approach to leveraging generative AI for drug discovery and development accelerates the creation of transformative technologies.

Help us improve and share your feedback! Did you find this helpful?