We are seeking an execution-focused Strategic Data Provisioning Specialist to deliver on four primary service areas: provisioning new and differentiated data tracing and uplifting lineage resolving data quality issues and uplifting existing data. This role requires a unique combination of deep technical expertise strategic thinking and collaborative leadership to make data available for AI/analytics provide transparency into data flows embed preventative controls and enrich metadata to accelerate adoption.
Job Responsibilities
1. Provision New/Different Data
Make data available for AI and analytics initiatives working closely with use case owners to define requirements and manage product dependencies. Provide transparency and visibility into bottlenecks and progress in making AI-ready data available for innovation
Collaborate with business technology and operations partners to understand data requests and accelerate provisioning through deployment of AI for Data. Drive executive visibility of progress in making critical data sources available including performance metrics and adoption tracking
Support agile product routines to oversee cross-product data dependencies and prioritize delivery
2. Trace & Uplift Lineage
Identify the lineage and provenance of critical data assets to support governance regulatory and business requirements. Embed evergreen controls on data flows to improve safety and meet regulatory requirements
Develop and deliver data lineage analysis and documentation that provides executive visibility on progress meeting critical SLAs (including blockers resourcing etc.)
Uplift data flows for critical data to include controls transparency and traceability. Drive insight into areas of efficiency and risk through consolidation and reengineering of data flows
3. Resolve Data Quality Issues
Lead data quality issue root cause analysis using deep data profiling and advanced analytics techniques fix the cause of identified data quality issues and embed uplifted evergreen controls on data flows to prevent future failures
Develop proactive controls to reduce the time from data quality issue identification to resolution improving client experience drive operational efficiency through elimination of cost of poor quality (COPQ) and demonstrate control environment improvements and reduction in toil to achieve benefits through common tooling and frameworks
4. Uplift Existing Data
Uplift the metadata (semantic layer) of existing data to make it more valuable to users and AI applications (AKA Brownfield data enrichment)
Support AI and Natural Language Query (NLQ) usage through enhanced data cataloging and discoverability. Accelerate adoption of Mesh data architecture by enriching existing data assets with improved metadata data quality scores and lineage information
Reduce consumer friction due to poor data catalog quality and incomplete documentation. Develop and deliver data product prototypes that demonstrate the value of uplifted data assets
Required Qualifications Capabilities and Skills
7 years of experiencein data science analytics data engineering or data management within financial services
Deep subject matter expertisein wealth and asset management covering customer account position transaction and/or reference data domains
Proven execution abilityin a matrixed and complex environment with the ability to influence people at all levels of the organization
Experience in strategic or transformational change initiatives including data governance data quality or analytics transformation programs
Strong technical skillsin data profiling analysis and data management using modern tools and environments (Python R SQL Spark cloud platforms)
Understanding of data lineage conceptsand experience with lineage analysis metadata management and data cataloging
Excellent communication skillswith the ability to convey complex technical concepts to diverse audiences including executive leadership
Ability to work in ahighly collaborative and intellectually challenging environment willingness to challenge the status quo think creatively problem-solve and drive innovation
Experience withdata quality frameworks including profiling rule development issue remediation and preventative controls.
Exposure to Cloud Platforms like AWS Azure GCP data tools likeData profiling tools data quality platforms metadata management systems visualization tool likeTableau Power BI or similar BI tools methodologieslike Agile/Scrum DevOps DataOps Version controllike Git GitHub Bitbucket
Preferred Qualifications Capabilities and Skills
Strong proficiency indata science and analytics tools: Python R SQL Spark and cloud data platforms (AWS Azure GCP). Experience withdata visualization and reporting tools(e.g. Tableau Power BI) to deliver executive dashboards and performance metrics
Hands-on experience withdata lineage toolsand techniques including graph databases and metadata management platforms
Knowledge ofdata governance frameworks data quality dimensions and regulatory requirements (e.g. BCBS 239 GDPR)
Experience withAI/ML technologiesand their application to data management challenges (e.g. automated data profiling metadata enrichment)
Understanding ofagile and product management methodologiesand experience working in agile teams
Ability tomulti-task in a fast-paced environmentand operate independently with minimal supervision. Experiencebuilding and growing capabilitiesand developing talent in data science or data management teams
Strong judgmentwith the ability to balance strategic vision with pragmatic incremental delivery. Excellent interpersonal skillsand ability to build strong working relationships with business technology and control stakeholders across global teams
JPMorganChase, one of the oldest financial institutions, offers innovative financial solutions to millions of consumers, small businesses and many of the world’s most prominent corporate, institutional and government clients under the J.P. Morgan and Chase brands. Our history spans ov ... View more