Shop to your own beat
ML Engineer
Location
France
Posted
1 day ago
Salary
0
Seniority
Senior
Job Description
ML Engineer
Alma
• Own ML models across their full lifecycle - from data pipelines and feature engineering to training, evaluation, deployment and monitoring; choosing the right metrics and guarding against leakage, overfitting and drift. • Run and improve our ML platform - own the team's GitOps CI/CD and release process, monitor serving endpoints, latency and load in Datadog, and define the SLOs and alerting that keep models reliable in production. • Turn ML into business value across the org - collaborate with risk, operational and product teams to spot and ship ML opportunities, from credit scoring to AI for operational intelligence, sharing your expertise through code reviews and tech watch.
Job Requirements
- You have 5+ years building and shipping ML in production: strong Python and SQL, solid ML fundamentals (evaluation, leakage, over/under-fitting), and clean, tested, reviewable code. We expect you to be familiar with some elements of our stack.
- You're hybrid - hands-on with MLOps and infrastructure (data pipelines, monitoring, system design, live prediction / streaming) and at ease reasoning about latency, scale and reliability.
- You're autonomous, analytical and business-driven, with professional English and working proficiency in French (the team's day-to-day language).
- Have experience with GCP, Docker, or graph databases.
- You have experience with LLMs, both as development tools and as components embedded in product systems.
- Have a background in credit scoring, BNPL ("Buy Now Pay Later"), or financial services and fraud.
Benefits
- Competitive salary based on 12 months
- Profit-sharing and employee savings plan
- Health insurance: 100% covered by Alma including family package
- Disability insurance: 100% covered by Alma
- Sport: partnerships with Gymlib and Classpass, or €30/month reimbursement for your sports activities
- Maternity/paternity leave: salary maintained at 100% during leave with no seniority requirement. Return to work at 4/5 schedule paid at 100% for 8 weeks.
- Sustainable Mobility Package (FMD): €544.80/year (excluding full-remote contracts)
- Meal vouchers: €10/day, 50% covered by Alma
- Mental health: free access to MindDay platform
- Paid time off: 25 days/year (+ additional paid leave granted for employees on executive contracts)
- Access to our Learning & Development Platform
- 2 weeks of full remote possible per year in summer
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