
Search by job, company or skills

Senior Data Management Solution Architect
Experience: 10–15 Years
Location: India
Role Type: Solution Architecture + Pre-sales + Advisory
Role Summary
We are seeking a high-impact Data Management Solution Architect to define, architect, and operationalize enterprise data management platforms across Data Governance, Data Quality, Master Data Management, Data Security, and Data Observability.
Role Specifics:
Core Responsibilities
Enterprise Data Management Architecture
Define end-to-end data management architecture across DG, DQ, and MDM layers
Architect multi-domain MDM (Customer, Product, Finance, Reference Data) with golden record strategy, match/merge, survivorship
Design data lifecycle management (ingestion → curation → consumption → retirement)
Publish target-state architecture, standards, and reference models
Data Governance, Security & Compliance
Design enterprise Data Governance operating model (ownership, stewardship, policies)
Implement metadata-driven governance, catalog, lineage, and business glossary
Define and enforce data security (RBAC/ABAC, masking, encryption, PII compliance)
Enable auditability and regulatory compliance (GDPR, DPDP, etc.)
Governance is no longer compliance-only—it must enable trusted AI at scale
Data Quality & Observability Engineering
Define enterprise-wide DQ framework (rules, profiling, monitoring, remediation)
Implement shift-left data quality controls at source and ingestion layers
Establish data observability → freshness, completeness, drift, anomaly detection
Drive DQ automation and self-healing pipelines
Modern Data Architecture (Fabric + Mesh)
Architect Data Fabric layer for unified, metadata-driven access across distributed systems
Design Data Mesh model → domain-driven data ownership, decentralized governance
Enable data-as-product philosophy with domain-level accountability
Integrate data platform, governance, and consumption layers seamlessly
Cloud Data Platform & Engineering
Architect solutions on one leading cloud (Azure / AWS / GCP)
Strong experience in Databricks (Lakehouse) or Snowflake (Data Cloud)
Design scalable data pipelines, lakehouse/warehouse architecture
Ensure performance, scalability, cost optimization, and reliability
AI-driven Data Management
Embed AI/ML in DQ, MDM, and Governance (auto classification, anomaly detection, semantic matching)
Enable AI-ready data foundation (feature stores, lineage, trust layer)
Drive GenAI-led enhancements in data stewardship and metadata automation
Pre-Sales & Client Solutioning
Lead RFP/RFI responses, solution proposals, effort estimation, and architecture definition
Conduct client workshops → assess maturity, define roadmap, propose solution
Create differentiated POVs (AI-augmented DQ, adaptive MDM, metadata automation)
Present to CXO-level stakeholders and drive solution buy-in
Strong ability to map business outcomes ↔ architecture decisions
Leadership & Delivery Governance
Provide technical leadership across programs and engagements
Mentor architects, engineers, and stewards
Drive best practices, reusable accelerators, and COE assets
Ensure alignment with enterprise architecture and governance standards
Mandatory Skills
Deep expertise across:
Data Governance, Data Quality, Master Data Management, Data Security, Data Observability
Strong understanding of:
Data Modeling, Metadata, Lineage, Data Catalogs
Data Integration (ETL/ELT), APIs, Streaming
Experience in:
Databricks Lakehouse or Snowflake Data Cloud
At least one cloud platform (Azure/AWS/GCP)
Good to Have
Presales/consulting experience (RFPs, proposals, estimations)
Experience with tools:
Collibra / Purview / Alation / Unity Catalog
Informatica / Reltio / Profisee / Ataccama / Syndigo
AI/GenAI in data management:
Domain exposure: Telecom / BFSI / Pharma / Manufacturing
Behavioral Expectations
Job ID: 151002841
We don’t charge any money for job offers