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A global design and engineering consultancy is seeking two hands-on Data Scientists to improve and optimize Monte Carlo-based simulation algorithms. Ideal candidates will have a Master's or PhD in a relevant field and strong proficiency in Python, while experience with data-driven reports and cloud platforms is preferred. This role promises a collaborative team environment and various competitive perks.
Method is a global design and engineering consultancy founded in 1999. We believe that innovation should be meaningful, beautiful and human. We craft practical, powerful digital experiences that improve lives and transform businesses. Our teams based in New York, Charlotte, Atlanta, London, Poland, Bengaluru, and remote work with a wide range of organizations in many industries, including Healthcare, Financial Services, Retail, Automotive, Aviation, and Professional Services.
Method is part of GlobalLogic, a digital product engineering company. GlobalLogic integrates experience design and complex engineering to help our clients imagine what’s possible and accelerate their transition into tomorrow’s digital businesses. GlobalLogic is a Hitachi Group Company.
We’re seeking two hands-on Data Scientists to join our Data & AI Team. Both will be responsible for improving, optimizing, and scaling Monte Carlo–based simulation algorithms that support advanced maintenance planning and assessment. For one of these positions, experience in reliability engineering or reliability science—particularly in the context of maintenance planning and asset performance assessment—is highly desirable. Working closely with solution architects and fellow data scientists, you will analyze and optimize Python code, benchmark performance across CPU and GPU environments, and design experiments to assess feasibility at scale.
Your work will span from algorithm refinement and performance testing to developing proof-of-concept architectures on Azure, creating parameterized simulations, and producing benchmark reports that inform product vision and cost/benefit trade-offs. These roles are highly collaborative, requiring both strong technical depth and the ability to translate simulation results into actionable insights for future product and service offerings.
Travel for team and client meetings is required, typically up to 15%.
We offer a ton of competitive perks, including:
If Method sounds like the place for you, please submit an application. Also, let us know if you have a presence online with a portfolio, GitHub, Dribbble or other platform.
We are an equal opportunities employer and welcome applications from all qualified candidates. By applying for this role, you give your express consent to process your data for this vacancy according to the Recruitment Privacy Notice.