FREE ACCESS
5,000–10,000 jobs/day
See all jobs on JobTailor
Search thousands of fresh jobs every day.
Discover
- Fresh listings
- Fast filters
- No subscription required
Create a free account and start exploring right away.

AVP Data Product Analyst
LPL FinancialAVP Data Product Analyst at LPL Financial overseeing data quality, governance, and product analytics. Collaborating with technology and business teams to enhance data-driven application capabilities.
Posted 7/14/2026full-timeNew York City • New York, Texas • 🇺🇸 United StatesLead💰 $103,309 - $172,113 per yearWebsite
Core Competencies
Role fitCore Competencies
Use this summary to align your resume positioning with the role.
Demonstrates extensive expertise in data governance, data quality rule implementation, and data management processes. Proficient in SQL and experienced with business intelligence tools to ensure data integrity and compliance across various domains.
Highest-signal resume keywords
Data GovernanceSQL ExpertiseBusiness Intelligence ToolsData Quality Rules ImplementationData Lineage Tracking
ATS Keywords
Tailor your resumeApplicant Tracking System Keywords
Tip: use these terms in your resume and cover letter to boost ATS matches.
Hard Skills
Data Warehouse DesignData ManagementData GovernanceData Quality Rules CodingData CatalogsData LineageData ModelingData Pipeline EngineeringBusiness Intelligence DevelopmentData Analysis
Soft Skills
CollaborationProblem-SolvingCommunicationDocumentation
Tools & Technologies
SQLTableauMicrosoft PowerBIDomoQlikSisenseCollibraAWS DatazoneAlationAtlan
Industry Keywords
Data QualityData Governance ToolsData Lineage TrackingBusiness Metadata ManagementData Sharing Agreements
Tech Stack
Tools & technologiesAirflowAWSETLSQLTableau
About the role
Key responsibilities & impact- Author both operational and analytical data quality rules for respective data and business domains.
- Document the rules and partner with technology teams and engineers to have the rules built into data pipelines, APIs, a commercial tool quality framework, etc.
- Develop data profiling, quality, and alerting capabilities leveraging database and ETL capabilities (DBT, Airflow, SQL, etc.) or commercial data management tools (Collibra, Alation, atlan, AWS Datazone, data.world, etc.)
- Develop and document standardized processes and workflows for remediating data issues by working with Relationship Management, Servicing, and Operations teams.
- Assist with data issue research, impact analysis, and fixes by partnering with support and technology teams.
- Translate business product, application and capability requirements for Advisors and Investors into data needs and solutions. These include business logic and transformations specs for data pipelines, inputs and business context for data modeling and logic embedded in consuming APIs.
- Utilize homegrown solutions, commercial data governance tools, or Excel, to build and document data lineage views of data transformations across the data ecosystems from source to target.
- Maintain data lineage artifacts and leverage them for data research and remediation efforts.
- Work with enterprise data architects to document data flows in conceptual and reference architecture diagrams for accountable data and business domains.
- Use either commercial governance tools or manually capture, document, and maintain data dictionaries at the attribute level for accountable domains.
- Partner with the enterprise data modelling team to ensure consistency of data definitions, classifications, taxonomies, hierarchies, etc. across data assets and consuming applications.
- Work with data product peers to identify inconsistencies in data to standardize on data definitions, code sets, naming conventions, classifications, consumption contracts, and taxonomies.
- Define and configure workflows, metadata structures, data quality rules, and classification schemes based on defined requirements.
- Author and enter Feature and Story-level work in Jira for technology teams to execute against.
- Work with data domain teams and the enterprise modeling team to understand both the domain-level data models and the enterprise data model to determine if fit for purpose for new project intake or if changes are required for the data domain.
- Provide scope and level of complexity if development work needed.
- Document drift and gaps between the enterprise logical data model and domain-level physical data models.
- Represent data and participate in QE and end-to-end testing of data products.
- Populate and enrich the business glossary or data dictionary and supporting and resolving data quality issues.
- Leverage software. Applications, and tooling to construct, monitor, govern and maintain new data products for the company. Data products will be developed on both the producing and consuming sides of the organization.
- Manage the data sharing and data delivery agreements as defined by the Data Design Authority, business stakeholders, data modeling and engineering teams.
- Accountable for partnering with engineering to implementation and execution of the data quality and privacy rules.
- Ensure alignment of data schemas, models, contracts, and templates from ingestion to the enterprise data model to systems of record domains to consumption layers.
- Align and govern physical models to logical data models.
- Partner with the Risk organization for data archiving, retention, privacy, and data destruction policies and requirements for critical data elements.
- Business metadata management across accountable data domains and data products.
- Onboard, govern and certify new CDEs introduced into the data ecosystem.
- Perform technical traceability mapping and data lineage tracking.
- Validate and certify new data sources.
- Partner with data domain (SOR) teams and business stakeholders to author and implement data quality rules and standards.
- Operational oversight of data quality rules execution in partnership with Engineering and Operations.
- Partner with a variety of internal support and Operations teams to build data quality scorecards, data exception reports, and ultimately assist teams with data enrichment and remediation when required.
- Track data issues and risks and develop associated mitigation strategies for corresponding business domains.
- Update central metadata repository with business metadata content including business terms, definitions, classifications, and data quality rules.
Requirements
What you’ll need- Minimum of 7 years’ experience in data warehouse design, data management, data governance, business intelligence and analytics, or similar;
- Minimum of 7 years and expert level use of reading and coding in SQL.
- Minimum of 5 years’ experience with business intelligence tools and report development in tools like Tableau, Microsoft PowerBI, Domo, Qlik, Sisense, etc.
- Experience in individual contributor-level data management roles like data analyst, data modeler, data pipeline engineer, BI analyst, or developer.
- Knowledge base of data governance including data quality rules coding and implementation, data catalogs, quality scorecard development, data lineage, mastering data, and reference data management.
- Experience using (data steward) or implementing (technology) data governance tools like Collibra, AWS Datazone, Alation, atlan, data.world, etc.
Benefits
Comp & perks- 401K matching
- health benefits
- employee stock options
- paid time off
- volunteer time off