FAQ
Are you still walking around with pressing questions? View our Frequently Asked Questions section below.
FAQ
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No. We deliberately follow a hybrid setup. We have a strong collaborative culture where we’d like to meet up at least a couple of times a week in one of our offices. Do know that ML6 provides a lot of flexibility in terms of working hours and how you schedule your agenda. Our offices are situated in Berlin, Munich, Amsterdam, Eindhoven and Ghent.
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Don’t expect a big corporate organisation with pre-defined jobroles and a defined plan for the coming years. Expect the unexpected. Growth, change and impact. Learn from engaged experts with a like minded passion for technology. Expect to work for the most innovative and biggest companies across countries.
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At ML6, we boost and increase revenue growth for other companies, by implementing AI solutions. We do this for a broad range of industries. From manufacturing, to healthcare or media and entertainment industries (and lots more!).
You can find some of our client cases and testimonials here. -
At ML6 we take our responsibility to build secure, reliable and sustainable technology seriously and integrate ethics within our way of working. We have our own Ethical Advisory board to discuss sensitive projects. Read our blogpost on how we approach this practically here.
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ML stands for Machine Learning. Next to that, we don't take ourselves always very seriously. Our people are 'ML6 agents', wink to MI6. Seen the James Bond movies? Our meeting rooms for example are named after them. After all, we can be a bit geeky at times ;-)
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This really depends on the scope of the project. A project can run for a couple of months, to even years. Our ML6ies work on projects together with a team of colleagues. This team can have different skills like data engineering, software, machine learning and project management to deliver top notch service to our clients. They sometimes work on different projects simultaneously or combine project work with an internal project or research topic. We are not an outsourcing firm.
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Definitely not. We indeed believe in accelerating young graduates in their career and bringing in new fresh perspectives, but the same applies for seniors. We are always challenging ourselves to expand our capabilities and bring in new knowledge and expertise. People have a personal growth plan at our company, where they can choose to specialise more or to grow further in people and strategy responsibilities. In 2025, 45% of our hires were hired on a senior level. ML6 exposes you to an incredible ecosystem of leading AI talent and will continue to challenge you on a day-to-day basis by bringing you a big variety of projects and business problems.
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At ML6 you can even work on multiple products! Sometimes we build products and platforms for customers (and/or internally) as well. Unum is a great example, but we’ve also, for example, built onboarding platforms for customers in the past. The good thing about ML6: you can choose to work for a longer amount of time on the same project or product, or if you’d like more variation, choose to rotate more towards different projects or products. Our core today still focuses on selling solutions, but we’re also maturing on the product side. In short: variation in your role will be differentiating.
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Our company stands for our engineering expertise. You’ll work alongside the most brilliant engineers, with a very in depth technical focus. Some use cases don’t need a very technical in depth solution, some do. At ML6 you can work in different domains (from GenAI to more classic ML), and on different types of client problems. We always make sure that our seniors are linked to more complex problems and to their domain of expertise (ex specific Cloud or Industry).
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On average, about 2-3 weeks starting from the first interview. Our junior technical process typically takes a bit longer, since we start with a coding challenge.
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Absolutely! Here’s the thing: AI generates code at the speed of light, but understanding it still moves at the speed of thought. If you just let the AI run wild, you don’t get a finished product. AI-native engineering is the new normal. It makes us faster, and it allows us to bridge the gap between technical and functional roles in ways we never thought possible. But it’s not a magic button. It requires a more disciplined, human approach to design and quality control than ever before. Acceleration of delivery might unlock new use-cases that previously were not economically viable.