## What You Bring
### Core competencies
- Proactive, outcome-driven, and comfortable operating in ambiguity.
- Strong stakeholder management: able to bridge supply chain, IT, and data science.
- High attention to detail with large/complex datasets and business-critical processes.
- Strong communication skills in English (written and verbal).
### Functional expertise (AI + Supply Chain)
- MSc or PhD in Computer Science, Data Science/AI, Machine Learning, Mathematics, Statistics, Industrial Engineering, Supply Chain or similar, with **4+ years** applying AI/analytics in an enterprise setting.
- Proven end-to-end delivery of **AI/ML solutions** (problem framing → modeling → deployment) for supply chain use cases (e.g., demand forecasting, inventory/service optimization, anomaly detection, ETA/lead-time prediction, segmentation, network/production planning).
- Strong **supply chain domain experience** across planning and execution (MAKE/SOURCE/DELIVER/QUALITY/PLAN, IBP/S&OP), incl. working with **ERP/APS/MRP** concepts and data (BOM, routings, times, safety stock, lot sizes, capacities) and translating them into scalable data products.
- Hands-on experience with **cloud + MLOps (preferably Azure)**: CI/CD for ML, model registry/versioning, automated testing, monitoring & drift detection, retraining strategies (Databricks/Spark/MLflow or equivalents); **GenAI/LLM** experience and **Responsible AI** familiarity are strong pluses.
### Technical skills (updated for AI)
- Strong programming: **Python**, **SQL**, **PySpark/Scala** (or willingness to deepen Scala).
- Experience with ML libraries and practices (e.g., scikit-learn, statsmodels, Spark ML, MLflow or equivalent).
- Solid understanding of cloud data platforms; **Azure** experience is a strong plus (e.g., Databricks, Data Lake Synapse, ADF).
- Experience with DevOps/MLOps concepts: CI/CD, automated testing, monitoring, model/version management.
- Nice to have: Power BI, Alteryx, R, experience with optimization solvers (e.g., OR-Tools, Gurobi/CPLEX), time-series forecasting.
- GenAI/LLM experience (nice to have but valued): RAG patterns,, prompt engineering, secure enterprise integration.
### Domain experience
- Supply chain planning exposure (APS, ERP, IBP), lean manufacturing, or demonstrated supply chain analytics capability is a strong advantage.
- Understanding of ERP planning & production master data and its impact on MRP and execution.
- Hands-on experience translating analytics into operational improvements.
## Benefits
- Hybrid working: **40% home / 60% office**
- 32–40 hours/week
- Training: Microsoft Certifications, Language courses, Agile courses
- Career paths across Data Science, AI Product, and Supply Chain domains
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## Join Us
If you want to build AI products that materially improve global manufacturing and supply chain performance—reliable in production, measurable in impact, and scalable across regions—join AkzoNobel’s digital transformation journey.