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Architect scalable, secure, high-performance data solutions for fraud detection and risk management.
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Design end-to-end data architectures including ingestion, transformation, storage, governance, lineage, and consumption layers.
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Build and optimize high-quality data pipelines (ETL/ELT) using Spark, PySpark, and Databricks.
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Handle structured and semi-structured high-scale datasets ensuring data integrity and quality.
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Work with data scientists to prepare training datasets, support feature engineering, and operationalize machine learning models.
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Implement cloud-native data solutions on Microsoft Azure using services like Data Lake, Synapse, Databricks, Event Hubs, Functions, and Key Vault.
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Establish data governance practices covering metadata, lineage, quality rules, and security controls.
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Drive technology evaluations, POCs, and contribute to the data platform roadmap.
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Lead deployments across environments ensuring smooth releases and minimal risk.
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Provide technical leadership, mentor data engineers, and maintain architectural standards across squads.