Machine Learning Mathematics Engineer

Do you enjoy solving algorithm design problems for the semiconductor metrology industry, with demanding time, accuracy, and memory requirements ? Do you like to use your creativity, your in-depth knowledge of physics principles, numerical maths and machine learning, and your hands-on experience with practical problem solving, being part of a highly talented group of algorithm experts ?

Within ASML the sector Development & Engineering is responsible for the development, specification and design of new ASML products. The Business Line Applications provides integrated solutions with computational, metrology and control technology. These solutions extend and improve the performance of lithography and patterning products for the semiconductor industry.

Role and responsibilities

Within D&E Applications, the Modeling and Inference Group covers the development of optical and mathematical models and methods required to infer physical model parameters from optical metrology data. Relevant new metrics and algorithms as well as new measurement functions, with optimum performance characteristics, are identified, designed and implemented. The availability and development of fast and accurate optical models and Maxwell solvers, and their optimal integration in the simulation framework, is essential. The group secures the Applied Mathematics for Parameter Estimation and the Scattterometry ASML-Competencies.

As a Machine Learning Mathematics Engineer you will;

  • Develop optical metrology solutions with statistically correct parameter inference, machine learning and optimization algorithms, and system calibrations, to improve semiconductor metrology and enable high-volume fab control solutions.

  • Implement machine learning and deep learning metrology applications, with a mindset for scalable data-intensive and distributed software architectures, at the interface with colleague data science, functional and software groups at ASML.

  • Drive for data and code quality, and collaborate and help to implement along industry coding best practices.

  • Communicate crystal clearly on physical principles, algorithm solutions and design decision to stakeholders, without omitting the essentials.

  • Design and realize fully functional proof-of-concept subsystems on the edge of system specifications, costs and project planning, thereby contributing directly to products for B2B customers world-wide.

  • Review technical analyses from the team, and structure team contributions keeping the overview.

  • Consolidate technical-team identity in communication with other departments.

  • Contribute to technical product roadmaps and generate intellectual property protecting ASML products, while developing the best metrology solutions and a well-founded vision on semiconductor metrology.

Education and experience

To help us tackle the technical challenges we face, you’ll need experience working on hightech products and with complex processes. As a Machine Learning Mathematics Engineer you’ll need:

  • Ph.D. in Applied Mathematics, Physics, Computer Science, or Electrical Engineering

  • Excellence in numerically stable modeling, code development, using sound physical-mathematical principles and insights

  • Ability to explain physical principles and algorithmic solutions in a crisp way, without omitting the essentials

  • Excellence in numerical mathematics, and affinity with machine learning methods, data-intensive and distributed software architecture (cloud) as environment for metrology applications

  • Drive for structuring the scripting code base in the cluster, and be energized by helping colleagues in this

  • Fluency in the languages Python, Julia, MATLAB, or C++, and awareness of compatibility with other software

  • Sound understanding of the fundamentals such as optics, linear algebra, probability theory, robust optimization and (deep) learning methods

Skills

Working at the cutting edge of tech, you’ll always have new challenges and new problems to solve – and working together is the only way to do that. You won’t work in a silo. Instead, you’ll be part of a creative, dynamic work environment where you’ll collaborate with supportive col-leagues. There is always space for creative and unique points of view. You’ll have the flexibility and trust to choose how best to tackle tasks and solve problems. To thrive in this job, you’ll need the following skills:

  • Drive creative solutions -within the bigger picture- with the product and customer in mind

  • Initiating, self-propelling and decisive in an ambiguous environment

  • Team worker, and ability to influence without power

  • Pragmatic approach and pro-active attitude, with result focus and a ‘can do’ spirit

Keywords: deep learning pipeline, data-intensive and distributed computing, cloud computing, data processing, parameter inference, (non-)convex optimization, physics, software, dataflow, robust (un)supervised and reinforcement learning, neural network, inverse problem, physical calibration, mathematics, optics, regression, information theory.

This position requires access to controlled technology, as defined in the Export Administration Regulations (15 C.F.R. § 730, et seq.). Qualified candidates must be legally authorized to access such controlled technology prior to beginning work. Business demands may require ASML to proceed with candidates who are immediately eligible to access controlled technology.

Diversity and inclusion

ASML is an Equal Opportunity Employer that values and respects the importance of a diverse and inclusive workforce. It is the policy of the company to recruit, hire, train and promote persons in all job titles without regard to race, color, religion, sex, age, national origin, veteran status, disability, sexual orientation, or gender identity. We recognize that diversity and inclusion is a driving force in the success of our company.

Need to know more about applying for a job at ASML? Read our frequently asked questions.

Location

Veldhoven, Building 03, Netherlands

Job Overview
Job Posted:
1 week ago
Job Expires:
Job Type
Full Time

Share This Job: