Analysis Skills, Best Practices, Business Intelligence, Business Operations, Centers for Disease Control and Prevention (CDC), Channel Strategies, Cloud Computing, Cloud Storage, Cross-Functional, Data Management, Data Modeling, Data Processing, Data Quality, Data Science, Data Storage, Database Extract Transform and Load (ETL), Forecasting, Leadership, Logistics, Machine Tool, Mentoring, Order Processing, Order/Customer Fulfillment, Performance Analysis, Performance Metrics, Privacy Controls, Privacy Regulations, Reporting Dashboards, SQL (Structured Query Language), Scalable System Development, Stock Keeping Unit (SKU) Management, Supply Chain, Supply Chain Management, Use Cases, User Documentation, Vendor/Supplier Evaluation, Vendor/Supplier Selection
JD for lead role:
Key Responsibilities
Data Architecture & Design
• Responsible in designing SupplyChain Anomaly Detection and Revenue Assurance platform for Order processing data platform.
• Define and own end-to-end supply chain data architecture, including source ingestion, transformation, storage, and consumption layers.
• Design data models for supply chain domains such as inventory, logistics, fulfillment, and supplier performance.
• Establish architecture standards, patterns, and design guidelines aligned with the enterprise data strategy.
Data Engineering & Platforms
• Architect and guide development of scalable data pipelines using,
o PySpark and Spark-based processing
o Python for transformation, orchestration, and data services
o Enterprise ETL/ELT frameworks
o Advanced SQL for data modeling and analytics
• Support both batch and near–real-time data processing use cases
• Optimize pipelines for data quality, performance, scalability, and cost.
Supply Chain Analytics Enablement
• Enable downstream usage for,
o Supply chain planning and forecasting
o Inventory optimization and demand analytics
o Vendor and procurement performance reporting
o Operational KPIs and executive dashboards
o SKU Management
• Partner with analytics and data science teams to ensure data is fit for advanced analytics platforms.
Cloud & Data Storage
• Design and oversee implementation of data solutions leveraging cloud-native data platforms.
• Ensure secure, compliant, and resilient data storage and access patterns
Data Governance & Quality
• Partner with governance and security teams to ensure,
o Data quality, consistency, and reliability
o Data lineage, metadata management, and documentation
o Compliance with data privacy, security, and internal policies
Leadership & Collaboration
• Collaborate with product owners, supply chain leaders, engineering teams, and vendors
• Translate business and operational needs into technical architecture solutions
• Mentor data engineers and architects on best practices and design principles
Qualifications
• Data Engineering: 10+ years building data pipelines with Kafka/CDC, ETL tooling.
• Streaming Expertise: Hands on with stream processing using Spark Streaming, Kafka Streams etc..
• SQL & BI: Strong SQL/analytics skills and experience building dashboards
• Data Governance: Familiarity with lineage/audit tools (OpenLineage), data privacy, and regulatory controls.
• Communication: Strong cross functional collaboration and experience presenting to executives.
• Education: Bachelor's degree in CS/Engineering, or equivalent practical experience.