Machine Learning Engineer

Machine Learning Engineer

Full-Time 50000 - 70000 € / year (est.) No home office possible
Carbon Re

At a Glance

  • Tasks: Build and deploy machine learning models to combat climate change.
  • Company: Join a mission-driven team at Carbon Re focused on reducing carbon emissions.
  • Benefits: Equity options, flexible working hours, 30 days holiday, and a generous pension scheme.
  • Other info: Collaborative culture with opportunities for growth and innovation.
  • Why this job: Make a real impact on the environment while working with cutting-edge AI technology.
  • Qualifications: 2+ years in machine learning, proficient in Python, and passionate about climate solutions.

The predicted salary is between 50000 - 70000 € per year.

Our Mission At Carbon Re, we’re on a mission to cut gigatonnes of carbon emissions from the world’s biggest emitting industries, like cement, steel, and glass, by applying cutting‑edge AI where it matters most. We’re a small and growing team of scientists, engineers, and strategic thinkers who care deeply about impact and believe in getting there with good humour and urgency. Our SaaS products help heavy industry optimise operations in real time, cutting costs and carbon today while building the foundation for the next industrial revolution.

We are seeking a Senior Machine Learning Engineer to help build the models that underpin these control systems and help us level up our machine learning infrastructure. We don’t draw a specific line between engineering and research teams. We operate as one cohesive unit, sharing tech stack, knowledge, and objectives. Our focus spans from fundamental ML research to commercial‑grade software development, offering diverse learning and impact opportunities.

Your main responsibilities

  • Work in the machine learning team as an individual contributor, building, testing and deploying our models.
  • Contribute to technical innovation and problem solving across the machine learning lifecycle.
  • Collaborate with the product team on customer projects, planning, designing and delivering the work packages required, as well as playing a significant role in the development of our wider product.
  • Help establish best practices to improve our internal processes.
  • Contribute to the design and implementation of robust, maintainable and scalable machine learning systems.
  • Contribute to our fear‑free development process by building tooling that helps the team move faster and more sustainably.

You will be supported by continuous builds, tests, a constructive review system, and a strong culture of improving engineering processes.

What a great fit looks like

  • You have 2 or more years of experience as a machine learning engineer.
  • You are familiar with several ML techniques, and have both theoretical ML knowledge and experience implementing different types of solutions.
  • You are proficient in Python and have a good understanding of the ecosystem of tools and libraries that support ML development (e.g., scikit‑learn, PyTorch).
  • You have experience working in a scientific environment across disciplines (particularly physics, chemistry, materials science, and engineering), either through previous roles or study.
  • Are passionate about making a positive impact on climate change mitigation and possess a strong interest in our mission.

You’ll excel if

  • You have prior experience with time‑series modelling and industrial or IoT data.
  • You have experience in any of: dynamical systems, reinforcement learning, system identification, optimisation or Bayesian statistics.
  • You are used to working in a fast‑paced startup environment with an agile process.
  • You have a degree in machine learning, physics or chemistry.
  • You are hungry for responsibility, enthusiastic about taking on the design and development of solutions to difficult problems, and eager to drive the progress of new products.
  • You have a solid understanding of modern cloud compute infrastructure as it relates to machine learning, and experience in working with AWS, GCP, Azure, or other vendors.

Interview process

  • Intro call - Meeting with our talent partner
  • Fundamentals of Machine Learning - A discussion with members of the machine learning team around some of the fundamentals of ML and your understanding and application of them. (1 hour, remote)
  • Technical interview - (half day, in person/remote)
  • Problem solving - applying machine learning, scientific understanding and problem solving to some of the challenges we tackle day to day in the ML team.
  • Engineering - a practical exercise focused on software engineering for ML.
  • Architecture - a discussion‑based exercise around systems design for ML.
  • Behaviours and Operating Principles- A meeting with two members of our team to discuss your past experiences, to understand how you would fit in with our operating principles. (1 hour, remote)
  • Meet the exec - an informal chat to meet either Josh (CEO) or Buffy (COO) (30 minutes, in person/remote)

In the same way we reference‑check our candidates before making final offers, we invite you to reference‑check us by chatting informally with any team members you didn’t meet during the hiring process. Once the interviews are over, we’ll try to make a decision as quickly as possible, and you can ask us for feedback at any stage.

In return for your hard work, we’ll give you

  • Equity in the company: You’ll get share options, so you’re part of our journey from the inside.
  • Flexible working: We trust you to know how and when you work best and to work that out with your team.
  • 30 days of holiday (plus bank holidays).
  • A generous pension scheme.

Our Operating Principles

  • Go Gig or Go Home: High Bar, All In. What we do matters to humanity, to our customers and to each other. We hold ourselves to an extraordinarily high bar and bring the urgency this mission requires.
  • Concrete Honesty: Be honest. As concrete forms the foundation of our world, genuine honesty and transparency are the bedrock of our culture.
  • Autonomous Ownership: High agency, high ownership. We build systems that take control and make things better. We do the same: see it, own it, drive it.
  • Cement it with Kindness & Fun: Have fun, be kind. We're here to extend Earth's life, but ours is still limited. We want to enjoy the ride.

To see these in full, go to Carbon Re’s Operating Principles Notion page.

Machine Learning Engineer employer: Carbon Re

At Carbon Re, we are not just a workplace; we are a mission-driven team dedicated to combating climate change through innovative AI solutions. Our collaborative and inclusive culture fosters continuous learning and growth, offering employees the chance to work on impactful projects while enjoying flexible working arrangements and generous benefits, including equity options. Join us in our journey to make a meaningful difference in the world, all while having fun and embracing a high-performance ethos.

Carbon Re

Contact Detail:

Carbon Re Recruiting Team

StudySmarter Expert Advice🤫

We think this is how you could land Machine Learning Engineer

Tip Number 1

Network like a pro! Reach out to folks in the industry, attend meetups, and connect with people on LinkedIn. You never know who might have the inside scoop on job openings or can refer you directly.

Tip Number 2

Prepare for those interviews! Brush up on your machine learning fundamentals and be ready to discuss your past projects. We want to see how you think and solve problems, so practice explaining your thought process clearly.

Tip Number 3

Show your passion for our mission! When chatting with us, let your enthusiasm for climate change mitigation shine through. We love candidates who genuinely care about making a positive impact.

Tip Number 4

Apply through our website! It’s the best way to ensure your application gets seen by the right people. Plus, it shows you’re serious about joining our team at Carbon Re.

We think you need these skills to ace Machine Learning Engineer

Machine Learning Techniques
Python
scikit-learn
PyTorch
Time-Series Modelling
Dynamical Systems
Reinforcement Learning

Some tips for your application 🫡

Show Your Passion:When you're writing your application, let your enthusiasm for tackling climate change shine through. We want to see that you care about our mission and how your skills can contribute to making a real impact.

Tailor Your Experience:Make sure to highlight your relevant experience in machine learning and any specific projects you've worked on. We love seeing how your background aligns with what we do, so don’t hold back on the details!

Be Clear and Concise:Keep your application straightforward and to the point. We appreciate clarity, so avoid jargon and make it easy for us to understand your qualifications and motivations.

Apply Through Our Website:We encourage you to submit your application directly through our website. It’s the best way for us to keep track of your application and ensure it gets the attention it deserves!

How to prepare for a job interview at Carbon Re

Know Your ML Fundamentals

Brush up on your machine learning fundamentals before the interview. Be ready to discuss various ML techniques, their applications, and your personal experiences with them. This will show that you not only understand the theory but can also apply it practically.

Showcase Your Problem-Solving Skills

Prepare to tackle real-world problems during the technical interview. Think of examples from your past work where you successfully solved complex issues using machine learning. Highlight your thought process and how you approached these challenges.

Familiarise Yourself with Their Tech Stack

Since Carbon Re uses a specific tech stack, make sure you're familiar with tools like scikit-learn and PyTorch. If you have experience with cloud platforms like AWS or GCP, be ready to discuss how you've used them in your projects.

Emphasise Cultural Fit

Carbon Re values a fun and kind culture, so be yourself! Share your passion for climate change mitigation and how you align with their operating principles. Show that you’re not just a fit for the role, but also for the team dynamic.