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Analytics Engineer

Job in 243601, Gurgaon, Uttar Pradesh, India
Listing for: GMG
Full Time position
Listed on 2026-02-17
Job specializations:
  • IT/Tech
    Data Analyst, Data Science Manager, Data Scientist
Job Description & How to Apply Below
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 an Analytics Engineer to work closely with the Data Scientist leading analytics for a specific Line of Business (LOB) and partner with LOB senior leadership to deliver trusted data products and decision-ready insights. You will build and maintain data marts, semantic layers, and foundational reporting, conduct deep-dive analysis, and support structured ML solutions in collaboration with the Data Scientist - bridging business needs and scalable data models.

Role

Summary:

- Build and maintain curated data marts and a consistent semantic layer for the LOB.
- Develop core reporting and dashboards; deliver analysis and insight narratives for leadership.
- Translate ambiguous business needs into well-defined analytical problems, hypotheses, and measurement plans.
- Support ML-ready datasets and structured ML solutions in partnership with the Data Scientist.

Responsibilities:
Data marts & semantic modeling:
- Design and implement curated data marts for the LOB (facts/dimensions, metric definitions, governed datasets).
- Define and maintain a semantic layer that standardizes business KPIs, dimensions, and calculation logic.
- Ensure models are reusable, performant, and maintainable (clear grain, lineage, documentation).

Reporting & self-serve analytics enablement:
- Build foundational reports and dashboards that support leadership reviews and operational decision-making.
- Create “single source of truth” KPI views and ensure metric consistency across stakeholders.
- Improve data discoverability with documentation, data dictionaries, and usage guidance.

Analysis, Synthesis & Insights:
- Conduct exploratory analysis and deep dives to answer key business questions, identify drivers, and recommend actions.
- Formulate hypotheses, define success metrics, and quantify impact (uplift, cost, productivity, risk).
- Communicate insights through crisp storytelling: problem → insight → recommendation → expected impact.

Collaboration with Data Scientist on ML solutions:
- Support structured ML initiatives by producing clean, point-in-time correct feature datasets, labels, and evaluation slices.
- Implement operational reporting for ML solutions (performance tracking, adoption metrics, drift indicators where needed).
- Assist in packaging outputs into business workflows (e.g., decision tables, score exports, prioritized lists).

Stakeholder partnership & delivery execution:
- Work closely with the LOB Data Scientist to align on priorities, delivery roadmap, and stakeholder expectations.
- Engage senior leadership with strong presentation skills, influencing through data and recommendations.
- Navigate complexity and ambiguity; drive clarity, alignment, and delivery momentum.

How does success look like:
- LOB leaders trust the data: consistent KPIs, clean definitions, and reliable reporting cadence.
- Key data marts and semantic models are in place and actively used for decision-making.
- You independently deliver high-quality analyses that translate into clear actions and measurable outcomes.
- ML initiatives accelerate because feature datasets and analytical foundations are robust and reusable.
- Stakeholders experience faster turnaround and fewer debates about “which number is correct.”

Technical

Competencies:

- Strong experience building analytics data products: marts, semantic layers, and decision-ready reporting.
- Advanced SQL and solid data modeling skills (facts/dims, grain…
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