Data Warehousing
At Lumen, we help organisations build modern, scalable data warehouses that enable real-time analytics, AI-driven insights, and better decision-making. As data volumes grow, a future-ready warehousing strategy is essential for maintaining competitiveness.
Our experts assess your current data landscape and provide a tailored roadmap to modernise your warehouse, ensuring it is scalable, cost-effective, and AI-ready. Partnering with Lumen unlocks real-time analytics, seamless BI, and AI-powered insights for long-term success.
Lumen’s Data Warehousing Consultancy ensures that organisations can store, manage, and analyse their data effectively, delivering a unified, accessible, and high-performance data platform. Our approach includes:
Enterprise Data Warehouse (EDW) Strategy
Designing a centralised or distributed data warehouse aligned with your business goals and analytical needs.
Cloud & Hybrid Data Warehousing
Implementing on-premise, cloud-native, or hybrid data warehouse solutions (AWS Redshift, Snowflake, Google BigQuery, Azure Synapse) to ensure scalability, security, and flexibility.
Data Architecture & Modelling
Designing high-performance data models (Star Schema, Snowflake Schema, Data Vault, or Hybrid) to optimise query performance and reporting.
Data Integration & ETL/ELT Pipelines
Implementing automated data ingestion, transformation, and processing using ETL/ELT frameworks to ensure data is accurate, timely, and analytics-ready.
Big Data & Data Lake Integration
Combining structured and unstructured data across data lakes and warehouses to enable advanced analytics, AI, and machine learning.
Data Governance & Security
Ensuring robust access controls, encryption, and compliance measures to protect data and meet regulatory requirements.
Optimisation & Performance Tuning
Enhancing query speed, indexing, partitioning, and caching to ensure cost-efficient and high-speed data retrieval.
Lets get in touch!
Ready to start your Journey
Contact us for more information or to book a one-on-one meeting