Postdoctoral Researcher - Machine Learning for Materials & Alloys jobs in United States
cer-icon
Apply on Employer Site
company-logo

SandboxAQ · 4 months ago

Postdoctoral Researcher - Machine Learning for Materials & Alloys

SandboxAQ is a high-growth company delivering AI solutions that address some of the world's greatest challenges. They are seeking a motivated postdoctoral researcher to develop and apply machine learning methods at the intersection of materials science and structural design, focusing on data-driven approaches and optimization techniques to support engineering workflows and decision-making.

Artificial Intelligence (AI)Cyber SecurityInformation TechnologyQuantum ComputingSaaS
badNo H1BnoteU.S. Citizen Onlynote

Responsibilities

Develop and apply ML and optimization techniques to guide lightweighting strategies
Use reasoning-based ML approaches to evaluate trade-offs among performance, manufacturability and other criteria
Apply Bayesian optimization and related uncertainty-aware methods to balance performance, manufacturability, and other constraints
Build reproducible workflows that integrate materials data, manufacturing methods, and simulation outputs
Curate and analyze structured datasets on materials, processing routes, and mechanical properties to support ML pipelines
Collaborate with engineers and computer scientists to connect ML outputs with structural and materials design tasks
Write technical reports and present results to technical and non-technical stakeholders

Qualification

Machine LearningBayesian OptimizationPythonMaterials ScienceStatistical MethodsProblem-solvingCommunication SkillsCollaboration

Required

U.S. citizenship is required due to USG contract requirements
PhD in Materials Science, Metallurgy, Mechanical Engineering, Computational Materials Science, Applied Physics, or a related field
Demonstrated experience applying ML or statistical methods to materials or engineering applications
Proficiency in Python and ML frameworks (PyTorch, TensorFlow, Scikit-learn)
Familiarity with optimization and uncertainty quantification methods such as Bayesian optimization, Gaussian processes, ensemble learning, or related approaches
Strong research track record, evidenced by publications in materials science, ML, or computational design
Excellent problem-solving and communication skills

Preferred

Familiarity with knowledge graphs or graph-based ML for materials/manufacturing data
Experience with LLMs for data integration, retrieval-augmented reasoning, or decision support
Experience with graph-based, generative, or physics-informed ML for materials or engineering applications
Background in lightweighting, alloy substitutions, or design for manufacturability
Experience working with experimental or simulation-based datasets in materials (e.g., thermomechanical processing data, microstructure characterization, or finite element modeling)
Ability to work collaboratively in multidisciplinary teams

Benefits

Annual discretionary bonuses
Equity
Competitive salaries
Stock options depending on employment type
Generous learning opportunities
Medical/dental/vision
Family planning/fertility
PTO (summer and winter breaks)
Financial wellness resources
401(k) plans

Company

SandboxAQ

twittertwittertwitter
company-logo
SandboxAQ develops AI and quantum technology solutions that enhance biopharma, cybersecurity, and materials science.

Funding

Current Stage
Late Stage
Total Funding
$975M
Key Investors
Eric Schmidt Angel InvestmentsMichael J. Fox Foundation
2025-04-04Series E· $150M
2024-12-18Series E· $300M
2024-10-29Grant· $25M

Leadership Team

leader-logo
Jack Hidary
Chief Executive Officer
linkedin
leader-logo
Joerg Rathenberg
Head Of Marketing
linkedin
Company data provided by crunchbase