https://store-images.s-microsoft.com/image/apps.40870.c95c9449-7042-4e6b-ad3b-8c7c6e4cfe73.32140245-6ef5-471c-a75e-bf67ab10c1eb.3b1a4fc8-31ed-4af6-9cf6-ca1703dd50b8

CT Visa - Migration Accelerator for Azure Synapse to Microsoft Fabric

Celebal Technologies Private Limited

Automate migration from Synapse to Fabric with faster timelines, data validation, unified governance, and optimized performance while reducing TCO and preserving analytics integrity.

Azure Synapse environments often span separate layers for storage, SQL workloads, pipelines, Spark processing, and reporting, resulting in duplicated data, higher operational overhead, and dispersed governance. Microsoft Fabric consolidates these functions into a single platform centered on OneLake, bringing SQL Warehouse, Lakehouse, Spark, ML, and Power BI into one integrated ecosystem. The shift enables faster processing cycles, unified governance, and scalable analytics without re-building data foundations from scratch.

CT Visa serves as the migration accelerator for this transition, converting Synapse SQL assets, Spark workloads, schemas, and pipelines into Fabric-native components through automated translation, compatibility mapping, validation workflows, and governance alignment. It shortens adoption timelines while preserving logic, lineage, and analytical consistency across migrated workloads.

Migration Scenarios:

CT Visa supports multiple migration journeys depending on the target architecture:

  • Migration from Synapse Dedicated SQL Pools into Fabric SQL Warehouse for SQL-first workloads, schema objects, and stored procedures.
  • Migration from Dedicated SQL Pools to Fabric Lakehouse for notebook-led execution and ELT modernization.
  • Migration from Synapse Spark environments into Fabric Lakehouse notebooks for data engineering workflows.

These paths include compatibility conversion, lineage alignment, execution tuning, and deployment packaging across environments.

Features:

  • Data Validation: Ensuring post-migration data integrity entails verifying the absence of data loss or duplication, the preservation of referential integrity, and the continued accuracy of dependent business logic and analytical processes.
  • Data Governance: Replication and implementation of the best data governance practices for a secure migration and implementation experience.
  • Rollback strategies: Detailed migration strategies for effective rollback procedures to ensure a robust and cost-effective migration supported by potent rollback mechanisms.

Implementation Deliverables — Small Deployment (~2 Weeks)

The small deployment scope involves:

→ Migration of Synapse objects across all schemas

Includes:

  • 50–100 tables
  • 20–30 views
  • 30–50 stored procedures
  • 20–30 functions

→ Handles up to 500GB of data volume

The outcome is a working Fabric deployment for a defined set of workloads, complete with governance alignment and runbooks for continued rollout.

Key Benefits:

  • Real-time query reports for seamless data validation
  • Up to 70% faster migration timelines
  • Automated workflows enabling smooth integration to target platforms
  • 30–35% reduction in Total Cost of Ownership
  • Optimized algorithms for improved performance and efficient resource utilization

Get Started

Accelerate your move to Microsoft Fabric with a migration approach backed by automation, engineering depth, and validated execution.

This offer is customized to your enterprise requirements. Pricing will vary based on the scope of work. For a tailored proposal or to schedule a complimentary demo, please contact us at enterprisesales@celebaltech.com

At a glance

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https://store-images.s-microsoft.com/image/apps.39417.c95c9449-7042-4e6b-ad3b-8c7c6e4cfe73.32140245-6ef5-471c-a75e-bf67ab10c1eb.f755b282-dab4-4e43-a77e-a203cddaea5f
https://store-images.s-microsoft.com/image/apps.8923.c95c9449-7042-4e6b-ad3b-8c7c6e4cfe73.32140245-6ef5-471c-a75e-bf67ab10c1eb.deeeb55b-2724-4246-acfa-f0187c833b37