Enterprise Data Strategy
Data Modernisation Services for Enterprise
We migrate legacy data infrastructure - mainframes, on-premises Hadoop, ageing Oracle estates, and brittle ETL pipelines - to scalable, cloud-native platforms built for the speed and governance demands of modern enterprise analytics. Our programmes deliver production-ready lakehouses, data mesh architectures, and master data foundations that eliminate technical debt and unlock measurable business value.
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The Challenge
Legacy data infrastructure is compounding risk and cost while modern competitors accelerate
Enterprise organisations carrying decade-old data stacks face escalating licence fees, mounting integration complexity, and an inability to deliver the real-time, governed data products that business stakeholders now demand. Every quarter that modernisation is deferred, the technical debt grows deeper, qualified talent to maintain ageing systems becomes harder to source, and the gap between what analytics teams can deliver and what the business needs widens further.
Why QuickHire
Why Enterprises Choose QuickHire
Architecture-First Approach
We design the target state architecture before writing a single migration script, ensuring that platform decisions align with the client's long-term analytics strategy and compliance obligations. Architectural rigour at the outset prevents costly rework mid-programme.
Zero Data Loss Migration Guarantee
Our automated reconciliation framework compares source and target datasets at every stage using statistical profiling, row-count matching, and business-rule validation. No migration batch is marked complete until automated and manual sign-off thresholds are met.
Platform-Agnostic Expertise
Our architects hold certifications across AWS, Azure, Google Cloud, Snowflake, and Databricks, enabling genuinely unbiased platform recommendations based on your workload profile and vendor landscape. We are not incentivised by reseller margins to push any single technology.
Governance Embedded from Day One
Data cataloguing, lineage tracking, access control, and quality monitoring are built into the migration programme rather than treated as post-go-live activities. Clients receive a governed platform, not just a relocated one.
Regulatory Compliance by Design
GDPR, HIPAA, SOC 2, and industry-specific compliance requirements are mapped during discovery and implemented as platform controls before any sensitive data moves. Our compliance attestation documentation supports client DPO and audit requirements.
Measurable ROI from Each Phase
Every delivery phase is tied to quantifiable outcomes - licence cost reduction, pipeline latency improvement, or new data products enabled - so that the business case is validated incrementally rather than deferred to programme completion.
Challenges
Common Enterprise Pain Points
Undocumented Legacy Schemas and Tribal Knowledge
Enterprise mainframe and Oracle estates accumulated over decades often lack current documentation, with critical business logic embedded in COBOL copybooks or PL/SQL procedures understood only by retiring specialists. Our discovery methodology uses automated schema crawlers, interview frameworks, and reverse-engineering tooling to reconstruct authoritative data dictionaries before migration begins.
Fragile ETL Pipelines with Undeclared Dependencies
Legacy ETL environments built in Informatica PowerCenter, IBM DataStage, or bespoke shell scripts frequently contain undeclared upstream dependencies, hardcoded file paths, and implicit ordering assumptions that only surface under production conditions. We conduct a full dependency graph analysis and produce a migration sequence that respects execution order and eliminates hidden coupling.
Data Quality Debt Surfacing at Migration Time
Data quality issues masked by compensating application logic in legacy systems become visible when data is moved to a new platform with stricter type enforcement and constraint handling. Our pre-migration profiling identifies quality gaps early, and we work with business data stewards to resolve them in the source before they propagate into the target environment.
Organisational Resistance to Decentralised Ownership
Data mesh adoption requires business domains to accept accountability for data product quality and SLAs, which represents a significant cultural shift from centralised data team ownership. We provide a structured enablement programme including domain data product templates, stewardship playbooks, and communities of practice to accelerate organisational readiness alongside the technical implementation.
Dual-Platform Operating Costs During Transition
Running legacy and modern platforms in parallel during migration creates a period of elevated infrastructure spend that can undermine the business case if not actively managed. We structure migration sprints to progressively decommission legacy components rather than maintaining full parallel operation throughout, reducing the overlap window and accelerating cost savings realisation.
Our Approach
A structured, governed migration programme that delivers a production-ready modern data platform - not just a cloud copy of your legacy estate
Our data modernisation practice combines deep platform engineering capability with enterprise change management to deliver programmes that are technically rigorous, commercially predictable, and organisationally durable. We scope each engagement to your specific legacy environment, target architecture, and compliance context rather than applying a generic lift-and-shift methodology that fails to address the root causes of data infrastructure debt.
Legacy Extraction and Inventory
Systematic extraction from mainframes, Oracle databases, and on-premises Hadoop clusters using automated crawlers, CDC connectors, and metadata scanners that build a complete, authoritative inventory of the data estate before any migration activity begins.
Cloud Lakehouse and Data Mesh Design
Target architecture design for Delta Lake, Iceberg, or Hudi-based lakehouses on your chosen cloud provider, with optional data mesh domain decomposition, self-serve infrastructure patterns, and federated governance frameworks.
Pipeline Re-platforming and ELT Modernisation
Migration of ETL workflows to modern ELT patterns using dbt, Apache Airflow, Spark Structured Streaming, or platform-native orchestrators, with automated lineage capture and quality gate integration.
Master Data Management and Data Product Delivery
MDM hub design and implementation, golden-record resolution, and the creation of certified data products with documented SLAs, catalogued metadata, and governed access policies that business consumers can trust.
Delivery Models
How We Deliver
A focused engagement to inventory the existing data estate, define the target architecture, and produce a costed, sequenced modernisation roadmap with risk register.
A structured multi-phase delivery in which the client's data estate is migrated domain by domain with independent validation gates, progressive legacy decommission, and incremental business value delivery.
A long-term embedded team that operates as an extension of the client's data engineering function, managing ongoing platform evolution, new domain onboarding, and continuous quality improvement post-modernisation.
Capabilities
Technical Capability Matrix
Engagement Models
How We Engage
Choose the model that fits your programme governance, budget cycle, and team structure.
Our Process
From Discovery to Delivery
Data Estate Discovery
Weeks 1-3Automated profiling of all source systems to produce a complete inventory of schemas, data volumes, quality metrics, lineage dependencies, and regulatory classifications.
Architecture Design and Roadmap
Weeks 3-6Target platform selection, lakehouse or data mesh architecture design, migration sequence planning, and a costed phased roadmap reviewed and approved by client stakeholders.
Foundation Build
Weeks 6-10Provisioning of the target cloud environment, security controls, network architecture, identity federation, and ingestion infrastructure ahead of the first data migration sprint.
Phased Migration and Validation
Weeks 10-40+Domain-by-domain data migration with automated reconciliation, quality gate validation, and progressive legacy decommission executed across planned sprints.
Handover and Enablement
OngoingDocumentation, runbook creation, platform operations training for the client's team, and a structured 90-day hypercare period with on-call support.
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Security & Compliance
Enterprise-Grade Security by Default
Governance
Programme Governance
Data Classification and Sensitivity Tagging
Every dataset in the source estate is classified by sensitivity tier before migration, with tags propagated to the target catalogue and used to drive access control and encryption policies automatically.
Automated Quality Gates
Pipeline quality checks using Monte Carlo, Great Expectations, or Soda are embedded at each transformation layer with configurable tolerance thresholds and stakeholder alerting integrated into the client's incident management tooling.
Lineage and Auditability
End-to-end column-level lineage is captured using OpenLineage-compatible tooling and surfaced in the data catalogue so that any data element can be traced from its source system through every transformation to its point of consumption.
Access Control and Data Contracts
Role-based and attribute-based access controls are configured at the platform level, and formal data contracts between producer domains and consumers are version-controlled to ensure SLA accountability and change communication.
Team Structure
Your Enterprise Team
Our data modernisation teams are assembled from senior practitioners with hands-on experience in enterprise legacy environments and modern cloud data platforms. Every engagement is led by a principal architect who has delivered comparable programmes at scale, supported by specialist engineers in extraction, pipeline, and governance disciplines.
Project Lifecycle
From Kickoff to Production
Discovery
Data estate inventory, quality baseline report, compliance gap analysis, and stakeholder interview findings.
Architecture and Design
Target architecture diagrams, platform selection rationale, migration sequence plan, and costed phased roadmap.
Foundation and Infrastructure
Provisioned and secured cloud environment, ingestion infrastructure, CI/CD pipelines for data assets, and network and identity configuration.
Migration and Validation
Migrated domains with reconciliation reports, quality gate certifications, decommissioned legacy components, and progressive go-live of modernised data products.
Hypercare and Enablement
Platform operations runbooks, team training, 90-day on-call support, and KPI reporting against the agreed success metrics.
Case Studies
Enterprise Outcomes
A tier-2 bank needed to retire a 30-year-old mainframe data warehouse serving 47 downstream applications.
We implemented a phased extraction using CDC connectors, migrated to Snowflake with dbt transformation layers, and decommissioned the mainframe over 18 months with zero data loss.
A hospital network required migration of 15TB of patient and clinical data from on-premises Oracle to a HIPAA-compliant cloud lakehouse.
We delivered a Databricks-based lakehouse on Azure with Unity Catalog governance, encrypted PHI columns, and audit logging integrated with the client's SIEM platform.
A national retailer's on-premises Hadoop cluster had become a bottleneck for product and customer analytics teams.
We migrated 200TB of HDFS data to Google Cloud Storage with BigQuery as the query layer, re-platformed 85 Spark jobs to Dataproc Serverless, and implemented Dataplex for catalogue and governance.
FAQ
Frequently Asked Questions
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