Position : GenDesign / Inverse Design Ai Engineer
Location : Santa Clara, CA
Duration : 1 Years
Mandatory Areas
Must Have Skills
Skill 1 Strong proficiency in Python and ML frameworks (PyTorch, TensorFlow).
Skill 2 Experience with generative AI (LLMs, diffusion models, graph-based models).
Skill 3 We are seeking a Generative AI (GenAI) Design Engineer to join our team and drive innovation in AI-powered solutions
Good To have Skills
Skill 1 Familiarity with MLOps, HPC environments, and cloud deployment
We are seeking a Generative AI (GenAI) Design Engineer to join our team and drive innovation in AI-powered solutions. This role involves designing, developing, and optimizing generative AI models and workflows for applications such as content creation, product design, and intelligent automation.Develop forward surrogate models for CVD / ALD / etch chambers mapping geometry, gas chemistry, flow, temperature, and power to film-uniformity, step-coverage, particle behavior, and thermal outcomes.Implement inverse-design workflows where target performance specifications generate feasible chamber geometries, showerhead / baffle designs, and process conditions via generative or adjoint / topology-optimization methods.Build bi-directional models that infer optimal process parameters for a given geometry and recommend geometry modifications when process latitude is insufficient.Create high-fidelity digital twins combining physics-based solvers (CFD, plasma, heat transfer) with learned surrogate components for rapid design-space exploration.Develop robust multi-objective optimization and uncertainty-quantification workflows to ensure AI-generated designs are manufacturable, robust to variation, and compatible with downstream yield requirements.Required Skills & Qualifications
Education : Master's or Ph.D. in Materials Science, Computational Engineering, AI / ML, or related field.
Technical Expertise :
Strong proficiency in Python and ML frameworks (PyTorch, TensorFlow).Experience with generative AI (LLMs, diffusion models, graph-based models).Knowledge of computational materials methods (DFT, MD, phase-field modeling).Additional Skills :
Familiarity with MLOps, HPC environments, and cloud deployment.Understanding of thermodynamics, crystallography, and mechanical properties of materials.