Magnet.me  -  Het slimme netwerk waar studenten en professionals hun stage of baan vinden.

Het slimme netwerk waar studenten en professionals hun stage of baan vinden.

Machine Learning Scientist - Regulatory Reporting Technology

Geplaatst 17 mei 2026
Delen:
Werkervaring
4 tot 8 jaar
Full-time / part-time
Full-time
Functie
Opleidingsniveau
Taalvereiste
Engels (Vloeiend)

Bouw aan je carrière op Magnet.me

Maak een profiel aan en ontvang slimme aanbevelingen op basis van je gelikete vacatures.

Development Amsterdam

This is Adyen

Adyen provides payments, data, and financial products in a single solution for customers like Meta, Uber, H&M, and Microsoft - making us the financial technology platform of choice.

For our teams, we create an environment with opportunities for our people to succeed, backed by the culture and support to ensure they are enabled to truly own their careers. We are motivated individuals who tackle unique technical challenges at scale and solve them as a team.

Together, we deliver innovative and ethical solutions that help businesses achieve their ambitions faster.

Machine Learning Scientist - Regulatory Reporting Technology

MLS - Regulatory Reporting Tech

At Adyen, we are the financial technology platform of choice for the world’s leading companies. The Regulatory Reporting Tech team is critical to ensuring compliance with complex reporting requirements. The Regulatory Financial Modelling & Analytics team, a new workstream within Regulatory Reporting Tech, is responsible for meeting the immediate and increasing need for regulatory financial modeling capabilities and risk evaluation.

We operate at the intersection of data and actionable insights. By leveraging Adyen’s global payment flow data, we apply advanced statistical models to enable accurate reporting and risk evaluation. We are looking for a Machine Learning Scientist to help us further automating and scaling our global regulatory reporting framework to keep Adyen compliant across all markets.

In this role, you will:

  • Build – Design and scale production-ready ML models to support regulatory reporting and risk requirements. You will own the end-to-end lifecycle, from feature engineering within our Big Data ecosystem (Spark/Hadoop) to building the internal infrastructure.
  • Discover – Move beyond simple detection to build automated root-cause analysis. You will develop logic that translates complex statistical signals into actionable recommendations.
  • Collaborate – Work at the heart of a product-driven team. You will sit close to our users, gathering continuous feedback to ensure our technical solutions solve real-world business friction and drive product adoption.

Who You Are:

  • You have 4+ years of experience as a Machine Learning Engineer or Data Scientist (Anomaly Detection, Time-Series, or Signal Processing).
  • You have an Engineering-First mindset. You treat ML code like production code and are comfortable managing your own deployments and infrastructure.
  • You are proficient in Python and Big Data frameworks (PySpark, Airflow, Hadoop, Kafka).
  • Experience with SparkStreaming/Flink, Docker and Kubernetes is a plus.
  • You have a strong interest in Causal Inference, you want to prove why something happened, not just that it happened.
  • You are a pragmatic problem solver. You prioritize business impact and reliability over model complexity, choosing the right tool for the job to ship solutions that work today.
  • You are proactively taking the lead in projects, from ideation to deployment. You have experience working with a wide range of stakeholders and can clearly communicate complex outcomes to a wide range of audiences.
  • You can confidently work in a product team with demanding stakeholders, are able to communicate effectively and have the ability to drive the team’s roadmap, alongside the product and engineering leadership of the team.

This role is based out of our Amsterdam office. We are an office-first company and value in-person collaboration; we do not offer remote-only roles.

We took an unobvious approach to starting a payments company, building a platform from scratch. Today, we're the payments platform of choice for the world's brightest companies. Our unobvious approach is a product of our diverse perspectives. This diversity, of backgrounds, cultures, and perspectives, is essential in helping us maintain our momentum.

Financieel & Banken
Amsterdam
Actief in 22 landen
1.700 medewerkers
60% mannen - 40% vrouwen
Gemiddeld 31 jaar oud