Senior Data Quality & Information Management Lead
Listed on 2026-05-29
-
IT/Tech
Data Analyst, Data Engineering
Lead Data Quality and information Management Manager
Apply (opens in new window)
Job Req :
Location(s):
Bengaluru, Karnataka, India
Job Type:
On-Site/Resident
Posted:
May. 11, 2026
Discover your future at Citi
Working at Citi is far more than just a job. A career with us means joining a team of more than 230,000 dedicated people from around the globe. At Citi, you’ll have the opportunity to grow your career, give back to your community and make a real impact.
Job OverviewAbout us:
Analytics Information management (AIM) is a global community that is driving data driven transformation across Citi in multiple functions with the objective to create actionable intelligence for our business leaders. We are a fast-growing organization working with Citi businesses and functions across the world.
What do we offer:
FCDO team manages the implementation of best-in-class data quality measurement programs across globe in retail consumer bank. The critical areas we support:
Data Governance
:
Standardization of data definitions and ensuring consistency in usage as per definitions across systems/products/regions.Meta Data Management
:
Leveraging data lineage, data discovery initiatives and creation of enterprise level meta data for all retail consumer productsData Ownership
:
Identifying trusted data sources, data owners and consumers across process and productsIssue Management
:
Identifying defects and investigating root causes for different issues. Following up with stakeholders and creation of plan for resolution as per SLAAudit Support
:
Identifying cases on control gaps, policy breaches and providing data evidence for audit completionData Certification
:
Developing procedures on data certification and certifying as per fit for purpose criteria
Expertise
Required:
Data/Information Mgt Sr Analyst is responsible for ensuring the organization’s data is accurate, complete, consistent, and reliable to support strategic planning and operational efficiency. This role involves profiling data to identify flaws, authoring data quality rules to prevent issues, monitoring data pipelines, managing metadata and remediate data concerns. This person will also be responsible to design, develop, and deploy scalable AI-powered solutions that enhance enterprise workflows and decision-making.
The ideal candidate will combine strong software engineering skills with hands-on experience in machine learning and generative AI systems, including LLM-based applications and AI agents.
Metadata Management and Data Governance
Maintain Data Catalog/Dictionary: Document and maintain business, technical, and operational metadata, including data lineage, definitions, and data standards.
Data Lineage Mapping: Utilize metadata to map data lineage, understanding how data flows from source systems to downstream reporting to identify potential impact areas.
Policy Compliance: Ensure all data assets adhere to defined data governance policies and data privacy regulations.
Data Profiling and Analysis
Profiling Execution: Perform deep profiling of large datasets to understand data structure, patterns, and content, identifying hidden anomalies or missing information.
Root Cause Analysis (RCA): Investigate data quality issues to determine the root cause, distinguishing between upstream processing errors and data entry errors.
Data Assessment: Evaluate critical data elements (CDEs) for accuracy and completeness.
Data Quality Rule Creation and Authoring
Rule Definition: Collaborate with business stakeholders to define and validate business rules for data validation (e.g., completeness, accuracy, consistency, validity).
Rule Authoring/Implementation: Develop and implement data quality rules, checks, and preventative/detective controls using SQL, Python, or specialized DQ tools.
Validation Logic: Document validation logic and exception-handling procedures for critical datasets.
Data Monitoring and Reporting
Continuous Monitoring: Actively monitor data pipelines, ETL processes, and dashboards to proactively identify DQ issues and operational anomalies.
DQ Dashboards/Scorecards: Develop and maintain data quality metrics and scorecards to report on data accuracy trends to leadership.
Alerting:…
(If this job is in fact in your jurisdiction, then you may be using a Proxy or VPN to access this site, and to progress further, you should change your connectivity to another mobile device or PC).