Staff Machine Learning Engineer for AI Product

Qonto

Qonto

Software Engineering, Product, Data Science

Paris, France

Posted 6+ months ago

Our mission and customers: We are creating the freedom for SMEs to succeed by delivering Europe's leading finance workspace with banking at its core, augmented by financial tools. We are proud to be rated 4.8 on Trustpilot, based on 55,000+ reviews. Our culture puts customer satisfaction at the core of what we do, as proven by our Net Promoter Score of 75.

Our journey: Founded in 2017 by Alexandre and Steve, Qonto has grown to 1,600+ Qontoers serving over 600,000+ customers across 8 European countries. We have been profitable since 2023, and we are just getting started.

Our beliefs: We hire for skills and potential. With 80+ nationalities, 45% women, of which 56% of women in our leadership team, diversity isn't a program; It's who we are. We've built a discrimination-free hiring process because the best teams are built on merit.

AI at Qonto: AI is deeply embedded in how we work (here) - Every Qontoer gets unlimited access to the best AI tools. We want people who experiment without waiting for permission, push AI beyond the obvious, know when to trust it, and when to question it.

------------------------------------------------------------------------------------------------------

Join us as a Staff Machine Learning Engineer on our AI Product team to build and ship customer-facing AI for 600,000+ business customers. You'll combine Generative AI with proven machine-learning techniques to create products with measurable impact — adoption, faster task completion, user satisfaction — while ensuring reliability, privacy, and continuous monitoring in production. You will report to Marianne, Head of Data Products, and join a team of 8 AI Engineers and 3 Data Ops.

➡️ What you'll do

  • Develop ML models end-to-end: From understanding product requirements to training, evaluating, and deploying models in production. You design, iterate, and ship — not just prototype.
  • Integrate ML into the product ecosystem: Align with Product Managers, Data Engineers, and Backend Engineers to ensure your models are seamlessly embedded in Qonto's financial services.
  • Build the ML Ops framework: Create the infrastructure for the team to scale — model drift detection, performance tracking, automated retraining pipelines, monitoring, and alerts.
  • Put models into production with rigour: Robust technical implementation, quality assurance, and continuous monitoring. Client-facing AI in financial services has no room for silent failures.
  • Raise the bar for the team: Share best practices, contribute to internal tooling improvements, and mentor peers across the ML team.

➡️ What we're looking for

  • 6+ years as an ML Engineer with ML Ops experience: You've developed and deployed client-facing ML products end-to-end — not internal tools or dashboards. You can show measurable impact on real users.
  • Modelling expertise: Experience building and optimising machine learning models for external customers. You know when to use GenAI and when proven ML techniques are the better choice.
  • Strong Python engineering: You write resilient, testable code at scale. Proficient with FastAPI (or similar), third-party service integration, and database interaction in production.
  • ML Ops fluency: Familiar with tools that automate model retraining, performance checking, and drift detection. You've built or significantly improved ML infrastructure before.
  • Fluent in English: Qonto's working language.

➡️ What we can offer you

  • Customer-facing AI with real impact: Your models will be used directly by hundreds of thousands of business customers. You'll see adoption metrics, not just offline evaluations.
  • A modern, flexible stack: Python, Snowflake, Kafka, Kibana, PostgreSQL, Airflow, AWS, Prometheus, ArgoCD, GitHub, Cursor. You have the freedom to test any tool as long as it helps reach the target.
  • A team building AI at the core of fintech: 8 AI Engineers and 3 Data Ops working on innovative solutions at the heart of Qonto's financial services — not a side project.
  • Clear IC growth track: Individual contributor career path for those who want to become deep experts in their field, with access to the latest AI technologies.

➡️ Your future manager

Your manager will be Marianne, Head of AI Products at Qonto.

  • Her path? École Polytechnique graduate. Nearly 6 years at Uber in San Francisco — from Data Scientist to Senior Data Scientist II, leading Strategic Finance Tech and forecasting models for Rides. Then Senior Business Intelligence Engineer at Amazon in Luxembourg. Joined Qonto in 2022 as Head of Data Science, built the team from scratch, and was promoted to Head of AI Products in 2025 — now setting the vision and strategy for AI/ML across Qonto's product.
  • What does she bring to the team? Deep hands-on ML experience from Uber and Amazon combined with the ability to build and lead teams. She's shipped real-time and batch ML products at scale and cares as much about mentoring and coaching as about model performance. She built Qonto's Data Science team from zero — she knows how to grow people alongside products.
At Qonto, we understand that true diversity isn’t just about ticking boxes on a hiring checklist. Apply regardless of the boxes you tick — who knows? You may have the missing piece of the puzzle we’ve been searching for all along.
By applying, you agree that Qonto processes your personal data to assess your application. Your data is kept for up to 2 years in our candidate pool. Read our Privacy Notice for full details.
------------------------------------------------------------------------------------------------------
On average, our hiring process lasts 20 working days. More information on our candidate journey here
------------------------------------------------------------------------------------------------------

🔒 Your security matters to us

Recruitment scams are on the rise. Keep in mind, we will never work with third-party platforms or agencies that request payment from candidates.

If you receive a suspicious message claiming to be from Qonto, please report it right away (support@qonto.com)