Senior Analytics Engineer
About the client:
About the role:
Key Responsibilities:
– Azure Cloud Architecture & Engineering:
Design and maintain scalable data pipelines and analytical environments using the Azure stack (e.g., Azure Synapse, Data Factory, Databricks, Azure SQL). Ensure optimal performance and cost-efficiency of cloud resources.
– Data Fabric Implementation:
Champion the adoption of Data Fabric principles to connect data across on-premise and multi-cloud environments. Implement logical data layers and virtualization techniques to provide seamless data access without unnecessary data movement.
– Data Integration & Modeling:
Design robust, modular data models. Integrate fragmented data sources across multiple markets to create a “single source of truth” while utilizing active metadata management to automate data delivery.
– Data Strategy & Innovation:
Drive data discovery initiatives to identify new value drivers. Architect innovative data products that solve complex business challenges using modern data mesh or fabric methodologies.
– Data Science Collaboration:
Prepare high-quality, feature-rich datasets. Partner closely with Data Scientists to explain data nuances and lineage, ensuring the data foundation supports advanced modeling and machine learning.
– Domain Expertise:
Apply deep knowledge of consumer data domains—specifically Loyalty, Promotions, Subscriptions, and E-commerce—to ensure analytical solutions are business-relevant and actionable.
Required Qualifications:
– Technical Proficiency:
Expert-level proficiency in SQL and Python is required.
– Azure Expertise:
Proven experience in cloud data warehousing and engineering within the Microsoft Azure ecosystem(Synapse Analytics, Azure Data Lake Gen2, Azure Data Factory).
– Data Fabric & Virtualization:
Strong understanding of Data Fabric concepts, including data virtualization, active metadata management, and knowledge graphs (experience with tools like Microsoft Purview or logical data warehousing is a plus).
– Data Modeling:
Advanced experience in dimensional modeling and building performant data marts.
– Consumer Data Experience:
Strong experience working with consumer-centric data (Loyalty, CRM, E-commerce).
– Communication:
Ability to translate complex technical data concepts for non-technical stakeholders and Data Scientists.
We offer:
– Free English classes with a native speaker and external courses compensation.
– PE support by professional accountants.
– 40 days of PTO.
– Medical insurance.
– Team-building events, conferences, meetups, and other activities.
– There are many other benefits you’ll find out at the interview.
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