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Microsoft Fabric Center of Excellence: 16-Week Implementation

Celebal Technologies Private Limited

A focused Fabric program enabling enterprises to build a unified, scalable, intelligence-ready analytics environment with strategic planning, governance, and specialist-led engineering support.

The Microsoft Fabric: 16-Week COE is an engineering-focused engagement designed to help enterprises establish a centralized analytics platform with clarity and predictability. Celebal Technologies follows a disciplined execution model that brings strategy, architecture, governance, and delivery into one integrated program, ensuring Fabric grows into a dependable and analytics-ready environment.

At the core of this engagement is Celebal’s COE framework, built on four pillars that guide each stage:

  • Strategic Alignment & Roadmap: A 3–5-year modernization plan defining platform priorities, migration tracks, and enterprise goals.
  • Technology Leadership & Mentorship: Guidance from certified Fabric experts supported by proven engineering patterns, best practices, and structured team enablement.
  • Innovation & Co-Creation: Rapid MVP development to validate AI and analytics use cases early, accelerating measurable value and adoption.
  • Collaboration & Scale: A coordinated cross-functional operating model that streamlines adoption, strengthens governance, and supports enterprise-wide scaling.

Engagement Timeline (16 Weeks)

Weeks 1–4: Discovery & Foundation

  • Stakeholder alignment, access setup, and KPI definition
  • Identification of GenAI and ML use cases
  • Finalization of use cases with enterprise
  • Source system assessment, volumetric analysis, and governance planning
  • OneLake zoning strategy and platform blueprint finalization

Weeks 5–10: Build & Configuration

  • Batch and streaming ingestion setup for prioritized sources
  • Development of curated models and semantic layers
  • Governance implementation (RBAC, Microsoft Purview, RLS/OLS)
  • BI, ML, and GenAI use case development

Weeks 11–13: Validation & Stabilization

  • Data quality checks, performance testing, and pipeline tuning
  • Monitoring setup, alerting rules, and Data Activator configuration
  • User acceptance testing and sign-offs

Weeks 14–15: Deployment & Documentation

  • Production cutover, deployment automation, and environment hardening
  • Runbooks, SOPs, architecture diagrams, and compliance documentation

Week 16: Enablement & COE Handover

  • Training workshops and COE playbook delivery
  • Knowledge transfer, operating model rollout, and roadmap for next-phase scale

Key Deliverables

  • Insight Suite: 6 BI reports, 1 ML use case, and 1 GenAI use case.
  • Data Ingestion: Batch pipelines up to 6 sources and 2 sources with streaming pipelines.
  • Governance Framework: RBAC, Microsoft Purview, RLS, OLS, and compliance controls.
  • Monitoring & Alerts: Data observability and automated notifications via Data Activator.
  • Scalable Architecture: Platform designed to support up to 10TB of data.
  • Third-Party Integrations: Seamless integration with external tools and platforms.
  • Production Deployment: End-to-end testing, documentation, and smooth go-live.

Advance your Microsoft Fabric adoption with Celebal Technologies. Backed by certified specialists, mature accelerators, and deep data-AI engineering strength, we help you build a reliable and scalable analytics platform with clarity and speed.

For collaboration, reach us at enterprisesales@celebaltech.com

Visão geral

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