Job Purpose :
To spearhead the development and deployment of advanced analytics and data-driven solutions across the CBG value chaindriving process optimization, predictive insights, and innovation in production, maintenance, supply chain, and commercial operations.
Key Responsibilities :
Analytics Strategy & Roadmap :
- Define and own the advanced analytics roadmap, aligning data initiatives with CBG business objectives (yield maximization, cost reduction, quality improvement).
- Identify high-impact use cases across feedstock selection, digester performance, purification, bottling, logistics, and sales forecasting.
Data Modelling & Solution Development :
Lead the design, development, and validation of statistical and machine-learning models (predictive maintenance, anomaly detection, yield forecasting, optimization).Oversee end-to-end analytics workflows : data ingestion / cleansing, feature engineering, model training, evaluation, and deployment.Platform & Tool Leadership :
Evaluate, select, and manage analytics platforms and toolchainsDrive the adoption of automated ML pipelines, MLOps best practices, and scalable data architectures.Insight Delivery & Visualization :
Collaborate with plant operations, supply chain, and commercial teams to translate analytical insights into actionable dashboards and reports (Power BI / Tableau / Grafana).Present findings and recommendations to senior leadership, translating complex analyses into clear business narratives.Team Leadership & Collaboration :
Mentor and lead a small team of data scientists, analysts, and engineers; coordinate with IT, digital infrastructure, and manufacturing applications leads.Foster a culture of experimentation, continuous learning, and cross-functional collaboration.Governance & Compliance :
Establish data governance standards, model validation protocols, and documentation for reproducibility and audit readiness.Ensure compliance with data security, privacy, and regulatory requirements.Key Skills :
B.E. / B.TechStrong proficiency in Python, SQL, ML frameworks (scikit-learn, TensorFlow, PyTorch), and big-data technologies (Spark, Databricks, etc.).Hands-on experience with predictive maintenance, process optimization, time-series forecasting, and anomaly detection.