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What we do:
GMG is a global well-being company retailing, distributing and manufacturing a portfolio of leading international and home-grown brands across sport, everyday goods, health and beauty, properties and logistics sectors. Under the ownership and management of the Baker family for over 45 years, GMG is a valued partner of choice for the world's most successful and respected brands in the well-being sector. Working across the Middle East, North Africa, and Asia, GMG has introduced more than 120 brands across 12 countries. These include notable home-grown brands such as Sun & Sand Sports, Dropkick, Supercare Pharmacy, Farm Fresh, Klassic, and international brands like Nike, Columbia, Converse, Timberland, Vans, Mama Sita's, and McCain.
What will you do:
We are hiring a Staff Data Scientist to partner with senior leaders in the Sports Line of Business and lead the end-to-end AI/ML roadmap for Sports across brand, e-commerce, retail operations, merchandising, assortments, and marketing. This is a senior individual contributor role with responsibility to mentor/lead 12 junior resources, driving high-impact analytics, machine learning, and experimentation from concept to production outcomes.
Role Summary:
- Own and drive the Sports AI/ML roadmap in partnership with Sports leadership.
- Deliver insights and models that improve revenue, margin, and operational efficiency.
- Build and productionize ML solutions (forecasting, personalization, optimization) with strong MLOps practices.
- Lead/mentor a small team to deliver analysis, reporting, and ML initiatives.
Responsibilities:
Business partnership & roadmap ownership:
- Act as a strategic analytics/AI partner to Sports leadership, translating business priorities into a clear AI/ML delivery plan.
- Identify and prioritize opportunities across merchandising, pricing/markdowns, replenishment, demand forecasting, assortment planning, personalization, and retail performance.
- Define success metrics, measurement approaches, and adoption plans to ensure outcomes are realized (not just models delivered).
Advanced analytics & insight-to-action delivery:
- Lead deep-dive analyses to uncover revenue uplift and cost reduction opportunities (e.g., drivers of sell-through, margin leakage, inventory health, promo effectiveness).
- Establish robust reporting/insight routines that guide decision-making and actions across the Sports organization.
- Guide junior team members in analysis structure, storytelling, and business-facing outputs.
Machine Learning & Experimentation:
- Build classical ML solutions such as forecasting, propensity/personalization, recommendation/ranking, segmentation, and optimization.
- Design and interpret experiments (A/B tests, controlled rollouts), ensuring statistically sound measurement and learning loops.
- Apply best practices in feature engineering, model evaluation, bias checks (where relevant), and calibration.
Productionization & MLOps:
- Operationalize models into production with monitoring, drift detection, retraining strategy, and clear model/version management.
- Partner with data engineering/platform teams to ensure reliable data pipelines, point-in-time correctness, and scalable inference (batch-first).
- Create model documentation and operational runbooks to support supportability and long-term ownership.
Technical Competencies:
- Strong stakeholder management: ability to influence senior leaders, shape priorities, and drive adoption.
- Strong hands-on skills in analytics + classical ML and the ability to lead projects end-to-end.
- Experience leading/mentoring junior team members and managing execution across multiple workstreams.
- Demonstrated MLOps capability: deployment patterns, monitoring, drift detection, retraining strategy, and model governance.
Technical(mandatory):
- Advanced Python for analytics/ML and strong SQL for data exploration and feature building.
- Solid foundations in statistics and ML: forecasting, classification/regression, segmentation, ranking/recommendations, model evaluation.
- Experimentation: A/B testing concepts, measurement design, and interpreting results reliably.
- Production mindset: reproducibility, version control, testing, and operational monitoring of models.
- Ability to structure problems, define KPIs, and create measurement plans tied to business outcomes.
Technical(nice to have):
- Retail/Sports domain familiarity (merchandising, inventory, promotions, store performance).
- Experience leading reporting/analysis teams and building stakeholder-ready insight products.
- Exposure to GenAI/Agentic AI use cases (as part of the roadmap), alongside classical ML.
Qualification & Experience:
- Graduation or Masters in Statistics, Mathematics, Computer Science or equivalent
- 8+ years of proven experience as a senior/lead data scientist delivering business outcomes in complex environments
Job ID: 142480633