Data Estate Modernization Powered by Microsoft Azure & Fabric – 4 Week Assessment

CompQsoft Inc

Modernize your data estate with scalable, secure, cloud-first architecture to drive analytics and AI innovation

Many enterprises still operate on outdated, siloed, or fragmented data systems. These legacy environments slow innovation, increase costs, and limit the ability to leverage AI, advanced analytics, and real-time insights. Without a modern, cloud-based data foundation, scalability, agility, and competitiveness are at risk.

Our Data Estate Modernization Assessment empowers organizations to transition from legacy systems to a secure, AI-ready, and analytics-driven platform. Leveraging Microsoft Azure and Microsoft Fabric, we help you assess modernization readiness, identify gaps, and design a migration strategy that aligns with your business goals. Our approach ensures a seamless transformation with minimal disruption while maximizing long-term value from your data assets.

Assessment Approach:

Over four weeks, CompQsoft Digital follows a structured, collaborative methodology: • Phase 1: Data Strategy & Readiness Assessment Deliverables: Current data estate analysis, architecture evaluation, analytics landscape review. • Phase 2: Solution Design & Architecture Deliverables: Modern data estate reference architecture, information governance framework, security and compliance plan. • Phase 3: Modernization Roadmap & Migration Strategy Deliverables: Azure migration approach, phased implementation roadmap, optimization and scalability recommendations.

Key Deliverables: • Comprehensive current-state assessment • Modern data platform design leveraging Azure and Microsoft Fabric • Data governance and compliance framework • Migration and modernization roadmap • Recommendations for AI and analytics enablement

https://store-images.s-microsoft.com/image/apps.25873.5a11640e-a27e-4872-b40c-5010285b7627.285bcfaa-d6f8-4a12-978e-7d231b704eee.460d0455-52f3-4246-9458-fb6cbf9fa414
https://store-images.s-microsoft.com/image/apps.25873.5a11640e-a27e-4872-b40c-5010285b7627.285bcfaa-d6f8-4a12-978e-7d231b704eee.460d0455-52f3-4246-9458-fb6cbf9fa414