SoftServe | Process Simulation Practice Leader

SoftServe
Sheffield
4 months ago
Applications closed

WE ARE

SoftServe is a global digital services and consulting company founded in 1993. We work on 2,000+ projects with clients in the USA, Europe, and APAC regions.

We are advisors, engineers, and designers solving industrial challenges with innovative technologies. We are acknowledged for our expertise in Machine Learning, AI, Robotics, IoT, XR, and Big Data. Our recognition extends to industry leaders including NVIDIA, Google, Amazon, and Microsoft, as well as key players in diverse business sectors like Manufacturing, Automotive, Warehousing, Retail, and more.

We combine expertise in advanced technologies with the ability to drive business value by adapting such technologies in the industrial space. Today, we are looking for leaders and technology experts with industrial backgrounds to drive digital transformation and adopt innovative solutions for our customers in the different industrial sectors.

We are looking for a Process Simulation Team Lead to drive innovative Digital Twin and Process Simulation solutions, leading a talented team of engineers and helping clients in the Manufacturing and Warehousing industries achieve impactful results.


IF YOU ARE

  • Experienced in process simulation and optimization, solving challenges in factory redesign, production line automation, or logistics
  • Skilled in simulating material flows and logistics processes using tools like FlexSim, Siemens Tecnomatix, or similar software
  • Having at least 6 years of general experience and 4 years of relevant domain expertise
  • Successfully delivering digital solutions that drive cost reduction, efficiency, and quality improvements
  • Familiar with Digital Twin concepts and process optimization tools
  • Strong in technical presales and able to clearly communicate business value and ROI
  • Experienced in crafting compelling client proposals that articulate tailored solutions and align with customer needs
  • A great communicator, fluent in presentation, negotiation, and team leadership
  • Motivated by creating high-impact solutions for complex industrial challenges


AND YOU WANT TO

  • Lead a global team of top-tier process simulation engineers to design and deliver visionary Digital Twin and Industrial Metaverse solutions that solve tomorrow’s problems, today
  • Be a key player in pre-sales, scoping out new business opportunities and showing clients how technology can change their future
  • Collaborate with industry-leading experts and technology innovators to craft bold, cutting-edge solutions that stand out in the market
  • Develop powerful client proposals that not only showcase the value of our solutions but also ignite excitement and confidence in what we deliver
  • Push boundaries by staying at the forefront of innovation — learning, applying, and shaping the latest advancements in AI/ML, IoT, and next-gen simulation technologies


TOGETHER WE WILL

  • Win game-changing deals, land new clients, and become trusted advisors to some of the biggest names in Manufacturing, Automotive, and Warehousing
  • Drive digital transformation that redefines how industries operate, using Process Simulation and Digital Twin technologies to create measurable impact
  • Build and lead a high-performing team that thrives on innovation, creativity, and delivering real results for our clients
  • Shape the future of industrial operations, helping companies push the envelope and embrace the next generation of digital solutions


All qualified applicants will receive consideration for employment without regard to race, color, religion, age, sex, national origin, disability, sexual orientation, gender identity/expression, or protected veteran status. SoftServe is an Equal Opportunity Employer.

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