Data & Analytics Data Pipelines Lead
Apply now »Date: Jul 16, 2026
Location: Bangalore, KA, IN
Company: NTT DATA Services
Key Responsibilities
Data Pipeline Leadership
• Lead the design, development, deployment, and support of enterprise data pipelines and integration solutions.
• Establish standards, patterns, and best practices for data ingestion, transformation, orchestration, and delivery.
• Oversee data movement across the full analytics lifecycle:
o Source systems and external data providers
o Landing/staging databases
o Enterprise data warehouses
o Data lake environments
o Analytics platforms
o Reporting databases and data marts
• Ensure scalable, secure, and high-performing data integration architectures.
• Drive automation and operational efficiency within data pipeline environments.
Data Integration & Engineering
• Manage batch, near-real-time, and streaming data ingestion processes.
• Coordinate data onboarding and integration activities for new source systems and external data suppliers.
• Define and maintain ETL, ELT, and data replication standards.
• Support cloud and on-premises data integration platforms.
• Collaborate with enterprise architects to align data movement solutions with strategic architecture standards.
Data Quality & Governance
• Establish and maintain enterprise data quality controls and monitoring processes.
• Define data validation, reconciliation, exception handling, and alerting frameworks.
• Monitor pipeline performance and proactively identify data integrity issues.
• Partner with data governance teams to ensure compliance with organizational standards.
• Implement and maintain data lineage documentation across data movement processes.
• Support audit, compliance, and regulatory reporting requirements related to data traceability.
Data Lineage & Metadata Management
• Document end-to-end data flows across all pipeline stages.
• Maintain lineage mapping between source systems, transformation processes, and downstream reporting assets.
• Ensure metadata accuracy and availability for analytical consumers.
• Support impact assessments related to upstream and downstream changes.
• Drive adoption of data catalog and metadata management capabilities.
Production Support & Operations
• Lead operational support for production data integration and analytics pipelines.
• Manage ServiceNow incidents, service requests, problem records, and change activities related to data pipeline operations.
• Coordinate incident triage, root cause analysis, issue resolution, and stakeholder communications.
• Establish and monitor service level agreements (SLAs) and operational metrics.
• Ensure rapid resolution of critical data availability and quality issues.
• Coordinate production releases and change management activities.
Monitoring & Reliability
• Implement pipeline monitoring, observability, and alerting solutions.
• Track pipeline health, throughput, latency, failure rates, and data quality metrics.
• Develop operational dashboards and reporting for platform performance.
• Lead efforts to improve platform reliability, resiliency, and recoverability.
• Support disaster recovery and business continuity processes for critical data assets.
Stakeholder & Team Leadership
• Serve as the primary point of contact for data pipeline operations and support.
• Partner with business intelligence, analytics, reporting, application, and infrastructure teams.
• Mentor data engineers and analysts on integration standards and best practices.
• Facilitate prioritization of enhancements, technical debt reduction, and operational improvements.
• Communicate risks, issues, and performance metrics to leadership.
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Required Qualifications
• Bachelor's degree in Computer Science, Information Systems, Engineering, Data Analytics, or related field.
• 7+ years of experience in data engineering, data integration, ETL/ELT development, or data platform operations.
• 3+ years of experience leading enterprise-scale data pipeline and integration initiatives.
• Experience supporting production data environments and operational processes.
• Experience managing incident, problem, and change management processes within ServiceNow or similar ITSM platforms.
• Strong understanding of data warehousing, dimensional modeling, and data lake architectures.
• Experience implementing data quality and data governance practices.
• Strong analytical, troubleshooting, and problem-solving skills.
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Preferred Qualifications
• Experience with cloud data platforms such as Oracle, Azure, AWS, or Google Cloud.
• Experience with the Teradata platform and Teradata Data Mover (TDM)
• Experience with modern data engineering platforms including:
o Azure Data Factory
o Databricks
o Synapse Analytics
o Snowflake
o Informatica
o Talend
o SSIS
o Kafka
o Fivetran
o dbt
• Experience with metadata management and data lineage tools.
• Knowledge of DevOps, CI/CD, infrastructure automation, and data observability platforms.
• Familiarity with Agile delivery methodologies and product operating models.
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Key Competencies
Technical Competencies
• Data Engineering
• ETL/ELT Architecture
• Data Warehousing
• Data Lake Architectures
• Data Quality Management
• Metadata Management
• Data Lineage
• Production Support Operations
• Monitoring and Observability
• ServiceNow Administration and Workflow Processes
Leadership Competencies
• Operational Excellence
• Stakeholder Management
• Team Leadership
• Incident Management
• Strategic Planning
• Continuous Improvement
• Risk Management
• Communication and Influence
Job Segment:
Data Warehouse, Business Intelligence, Database, Computer Science, Oracle, Technology