Position: Materials Science AI Engineer
Location: Santa Clara CA***Day 1 Onsite***
Duration: 1 Years
Mandatory Areas
Must Have Skills
Skill 1 Strong proficiency in programming languages like Python and C.
Skill 2 Experience with machine learning and deep learning frameworks (e.g. PyTorch TensorFlow).
Skill 3 Experience with data cleansing preprocessing and feature engineering
Good To have Skills
Skill 1 Design develop and deploy multi-modal AI ML and hybrid physical-based models to solve ground-breaking material physics and design problems
We are seeking an AI Scientist/Engineer to join our team in developing and supporting materials discovery and design. The ideal candidate will have strong experience building AI-based solutions for building neural network architecture attention mechanisms multi-modal learning aggregating and structuring training data statistical theory and cloud-based compute for parallelized scalable and automated workflows.
Key Responsibilities
* Design develop and deploy multi-modal AI ML and hybrid physical-based models to solve ground-breaking material physics and design problems.
* Aggregate process transform and quality-control experimental and simulation data for modeling and analysis.
* Design develop and maintain data workflows to support materials informatics initiatives. Optimize data pipelines and model execution on parallel cloud systems (e.g. Azure GCP AWS).
* Collaborate with materials scientists chemists and software engineers to integrate analytics and predictive modeling into core R&D workflows.
* Document code workflows and best practices to support reproducible research.
* Apply AI and data analytics to optimize material synthesis and processing parameters in real-time minimizing defects improving consistency.
Technical Skills:
* Strong proficiency in programming languages like Python and C.
* Experience with machine learning and deep learning frameworks (e.g. PyTorch TensorFlow).
* Knowledge of generative modeling techniques and architectures (e.g. GANs VAEs transformers).
* Knowledge of MLOps model deployment pipelines and CI/CD.
* Experience with data cleansing preprocessing and feature engineering
Qualifications
* Graduate or undergraduate degree in Computer Science Engineering Applied Mathematics or a related technical field.
* 2-4 years of work experience (depending on educational degree) in data science AI machine learning or data engineering roles.
* A strong foundation in the principles of materials science is essential to understand the underlying science and set up meaningful problems for AI.
* Expert in Python and data science libraries (e.g. pandas NumPy scikit-learn TensorFlow or PyTorch).
* Expertise in use of cloud-based compute environments and tools for parallel or distributed computing.
* Strong problem-solving and communication skills.
Position: Materials Science AI Engineer Location: Santa Clara CA***Day 1 Onsite*** Duration: 1 Years Mandatory Areas Must Have Skills Skill 1 Strong proficiency in programming languages like Python and C. Skill 2 Experience with machine learning and deep learning frameworks (e.g. PyTorch...
Position: Materials Science AI Engineer
Location: Santa Clara CA***Day 1 Onsite***
Duration: 1 Years
Mandatory Areas
Must Have Skills
Skill 1 Strong proficiency in programming languages like Python and C.
Skill 2 Experience with machine learning and deep learning frameworks (e.g. PyTorch TensorFlow).
Skill 3 Experience with data cleansing preprocessing and feature engineering
Good To have Skills
Skill 1 Design develop and deploy multi-modal AI ML and hybrid physical-based models to solve ground-breaking material physics and design problems
We are seeking an AI Scientist/Engineer to join our team in developing and supporting materials discovery and design. The ideal candidate will have strong experience building AI-based solutions for building neural network architecture attention mechanisms multi-modal learning aggregating and structuring training data statistical theory and cloud-based compute for parallelized scalable and automated workflows.
Key Responsibilities
* Design develop and deploy multi-modal AI ML and hybrid physical-based models to solve ground-breaking material physics and design problems.
* Aggregate process transform and quality-control experimental and simulation data for modeling and analysis.
* Design develop and maintain data workflows to support materials informatics initiatives. Optimize data pipelines and model execution on parallel cloud systems (e.g. Azure GCP AWS).
* Collaborate with materials scientists chemists and software engineers to integrate analytics and predictive modeling into core R&D workflows.
* Document code workflows and best practices to support reproducible research.
* Apply AI and data analytics to optimize material synthesis and processing parameters in real-time minimizing defects improving consistency.
Technical Skills:
* Strong proficiency in programming languages like Python and C.
* Experience with machine learning and deep learning frameworks (e.g. PyTorch TensorFlow).
* Knowledge of generative modeling techniques and architectures (e.g. GANs VAEs transformers).
* Knowledge of MLOps model deployment pipelines and CI/CD.
* Experience with data cleansing preprocessing and feature engineering
Qualifications
* Graduate or undergraduate degree in Computer Science Engineering Applied Mathematics or a related technical field.
* 2-4 years of work experience (depending on educational degree) in data science AI machine learning or data engineering roles.
* A strong foundation in the principles of materials science is essential to understand the underlying science and set up meaningful problems for AI.
* Expert in Python and data science libraries (e.g. pandas NumPy scikit-learn TensorFlow or PyTorch).
* Expertise in use of cloud-based compute environments and tools for parallel or distributed computing.
* Strong problem-solving and communication skills.
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