Modelling and Simulation Engineer Digital, Systems & Automation · ·

Paebbl
London
2 months ago
Applications closed

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Join Paebbl as a Modelling and Simulation Engineer

Are you ready to put your expertise in all things modelling and simulation to work for a greener planet? At Paebbl, we’re on a mission to decarbonize industries and accelerate sustainable development. As a Modelling and Simulation Engineer, you'll build the models that accelerate our innovation and development .This is your chance to use your skills to lead impactful projects, design future-ready systems, and help shape the technologies that drive Paebbl's decarbonization solutions.

Why Join Us?

Imagine working in a dynamic, startup-like environment where every decision you make has the power to influence global change. This role offers you the autonomy to work on cutting-edge data driven initiatives and be part of passionate teams dedicated to transforming our planet's future. If you’re a proactive problem-solver with a passion for leveraging data and tech for meaningful impact, Paebbl could be your next big career move.

Key Responsibilities:

  • Accelerate our Development: Bring your modelling and simulation approaches to accelerate critical projects and enhance our operations.
  • Build Knowledge:Help design and make the models that capture our knowledge available across Paebbl, influencing both short-term solutions and long-term vision.
  • Cross-Functional Collaboration: Work closely with engineers, research scientists, and digital and product teams to embed knowledge systems into our products and operations.
  • Pioneering Solutions: Employ advanced data, modelling, and simulation methods to accelerate decision-making and fuel impactful projects.

About You:

You thrive in agile, fast-paced settings, possess deep technical knowledge, and can work seamlessly across teams. Your background in data science, statistics, and machine learning is complemented by your proficiency in Cloud-based environments (AWS preferred), Python development, and strong project leadership.

Your Skills and Experience:

  • Technical Expertise: Strong foundation in modelling and simulation, including model development, analysis, and visualisation, coupled with proficiency in programming languages such as Python or MATLAB.
  • Problem-Solving Skills: Excellent analytical thinking with a proven ability to tackle complex problems through quantitative approaches.
  • Effective Communication: Ability to translate complex analyses into actionable insights for non-technical stakeholders.
  • Industrial Insights: Experience with mining, chemical, or engineering systems, with familiarity in software development best practices.
  • Leadership in Action: You’ve led complex technical projects with significant outcomes, navigating challenges in agile environments.
  • System Engineering: A plus if you’re adept in system engineering.

What we offer :

Join a purpose-driven team where you’ll have the freedom to shape innovative solutions for a sustainable future. At Paebbl, you’ll find a culture that celebrates innovation, values collaboration, and empowers you to make a difference. Here, your work won’t just support our business—it will impact the planet.

  • Competitive salary.
  • Stock option program participation.
  • Private healthcare insurance.
  • Annual training and development budget.
  • Annual wellness budget.
  • Unlimited days paid vacation.
  • Up to 6 months of compensated parental leave.
  • Standard pension scheme support.

If you're ready to leverage your skills to build sustainable solutions and be part of a team dedicated to change, apply now.

Please note that successful candidates will be required to undergo professional reference checks and background screening prior to joining the company.

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