Data Scientist Ml Engineer H/F
collectivite
- Paris - 75
- Indépendant
- Bac +5
- Services aux Entreprises
- Exp. - 1 an
- Exp. 1 à 7 ans
- Exp. + 7 ans
Détail du poste
Important information
Contract type:
Freelance
Daily rate:
550
This job is at 0% commission 🎉Location:
Paris, France
Starting date:
Urgent
Work mode:
Hybrid
Published on:
15 June 2026
What they need
Context
Decathlon Digital aims to become the best digital sports platform and open ecosystem worldwide. The company focuses on enabling customers to experience Decathlon through numerous local sport-centric experiences by connecting many third-party actors and services securely and efficiently. Decathlon Digital includes over 5000 technical profiles such as software engineers, product managers, data, cloud, and cybersecurity experts located in Paris, Lille, Nantes, Lyon, and Amsterdam.
The Inventory Optimization team, part of the Data Supply Chain, is responsible for designing, developing, and maintaining innovative analytical and Artificial Intelligence solutions related to supply chain use cases like multi-echelon demand forecasting, target stock estimation, and shortage management. The team works in an agile environment alongside Data Scientists, Data Analysts, Analytics Engineers, ML Engineers, Product and Engineering contacts, and business users.
Missions
Analyze, develop, and deploy Inventory Optimization solutions at scale.
Develop and deploy production-grade ML models for demand forecasting across BTB and BTC channels at various geographical granularities (stores, warehouses).
Build robust models integrating internal variables (price, assortment) and external signals (weather, calendar data, market trends) for global replenishment.
Conduct in-depth diagnostic analyses of production forecasts and user-driven overrides to identify patterns, refine model accuracy, accelerate deployment, and drive automation.
Manage the end-to-end lifecycle of ML solutions from R&D to CI/CD deployment, ensuring forecasting engine stability and efficiency.
Translate complex data insights into actionable recommendations for Supply Chain and Business stakeholders using compelling visualization and storytelling.
Participate actively in daily technical initiatives, contribute to codebases, remove blockers, and maintain high team velocity.
Engage in code and model reviews to promote best practices in ML engineering, reproducibility, and documentation.
Collaborate with team members to foster a culture of technical excellence and knowledge sharing.
Tools & Environment
Execution Engine: Databricks, AWS, GCP
Programming Languages & Libraries: Python, Spark, Scikit-Learn, TensorFlow / PyTorch, PySpark
CI/CD: GitHub Actions
Serving: Docker, Protobuf, gRPC
Model Registry & Tracking: MLFlow
Orchestration: Airflow
Documentation & Code Management: Git, Confluence
Data Visualization: Tableau
Working Conditions
Location: Paris
Profile wanted
- Good knowledge of Time Series forecasting with successful experience working on ML pipelines in production at scale
- Experience working in collaborative technical teams with strong ability to give and receive constructive feedback
- Understanding of supply chain concepts, particularly stock optimization and demand forecasting
- Ability to transform business needs into well-defined technical problems
- Ability to clearly explain model predictions to non-technical stakeholders and discuss gradient boosting hyperparameters with engineers
- Balance between state-of-the-art research and delivering reliable, maintainable code
- Professional command of English
Publiée le 15/06/2026 - Réf : be6ac76e6e3d9881228ef24177d79227