Full Job Description
Act as an individual contributor, providing project oversight and guidance to Decision Scientists, and supporting the Decision Science Manager in executing against the objectives of assigned business group. Using an interdisciplinary approach of leveraging concepts from business, applied statistics and math, operations research, information technology, process design and behavioral sciences, the incumbent will engage in consultative partnerships, aligning with the Line of Business (LOB) to produce analytic insights that help the business make informed, data-driven decisions with an objective of driving quantifiable, optimized business results in support of company goals.
Following is a summary of the essential functions for this job. Other duties may be performed, both major and minor, which are not mentioned below. Specific activities may change from time to time.
Lead Business Data Architecture Strategy
Define current-to-target state data architecture blueprints supporting CSBB business capabilities, aligning to enterprise standards and AI readiness objectives
Establish domain-based data models, ownership structures, and cross-domain data flow designs to eliminate silos and improve interoperability
Lead the development, maintenance, and socialization of target-state architecture blueprints, data domain models & ownership maps, cross-domain lineage / flow diagrams, architecture standards & design patterns
Drive Data Product Alignment & Rationalization
Partner with Business Data Product teams to ensure consistent architecture alignment across data products and reporting assets
Lead rationalization of legacy BI/reporting ecosystem, enabling consolidation and migration to scalable, modern platforms aligned to product strategy
Enable AI-Ready Data Foundations
Define and enforce architectural standards that ensure data quality, lineage, certification, and governance are embedded in design-time workflows
Support the development of AI-ready data assets and enable scalable analytics and automation capabilities across CSBB
Portfolio Alignment & Intake Governance
Collaborate with portfolio strategy functions to ensure intake, prioritization, and solution design align with architectural principles and business value drivers
Provide architectural oversight to ensure new initiatives align with long-term target state and do not introduce fragmentation
Stakeholder Partnership & Strategic Alignment
Serve as a key interface between business stakeholders, enterprise architects, platform teams, and data delivery managers
Influence senior leadership through clear articulation of architecture strategy, trade-offs, and value realization
Enable Federated Analytics & Cloud Migration
Foster communication and partnership across multiple levels of the organization including engagement with LOB leaders and senior managers. Responsible for stewarding relationships, delivering on promises, and building trust with partners while delivering on LOB and company goals.
Mentor, guide, and act as a force multiplier in support of analytics practitioners across CSBB in aligning data & reporting assets with broader enterprise data transformation objectives and target state architecture strategy, including cloud migration efforts
Promote consistent data structures, access patterns, and governance practices to enable scalable and efficient delivery
Value Realization & Transformation Enablement
Define and track success metrics (e.g., reduced redundancy, improved time-to-insight, adoption of standardized assets)
Support change management, communication strategies, and adoption efforts for new data architecture and product capabilities
Represent the CSBB Data & Governance group in various forums, work streams, and senior leadership reviews. Cultivate relationships with partner federated and hub analytics teams to drive efficient decision science delivery against shared objectives.
Pursue business outcomes valued through increased revenue and/or efficiency leveraging data-driven insights powered by analytics in support of enhanced decision-making. Focus on continuous improvement in decision science delivery and outcomes in pursuit of business optimization.
Promote Best Practices & Continuous Improvement
Champion architectural rigor, standardization, and reuse across all CSBB data initiatives
Foster a culture of proactive design vs. reactive solutioning aligned to product-based delivery principles
Champion the use of cloud tools to solve business challenges and deliver solutions that are timely, accurate, and adherent to change management & governance standards.
Exercise sound judgment, risk management, and foster a client centric culture throughout design, development, and deployment practices.
QUALIFICATIONS
Required Qualifications
The requirements listed below are representative of the knowledge, skill and/or ability required. Reasonable accommodations may be made to enable individuals with disabilities to perform the essential functions.
The incumbent must demonstrate a combination of academic aptitude, quantitative skills, business acumen, working knowledge of Finance & Banking concepts, enterprise data management systems, strategic and creative thinking, and excellent written and verbal communications skills
Bachelor’s degree in Banking, Finance, Economics, Data Science, Computer Science, Engineering, Analytics, Mathematics, or related field; or equivalent experience
7+ years of experience in data architecture, data engineering, decision science, or analytics within banking or financial services
Demonstrated experience designing business data models, data architectures, and scalable data solutions across enterprise environments
Strong understanding of modern data platforms (e.g., cloud data warehouses, distributed processing frameworks) and data product concepts
Proven ability to influence cross-functional stakeholders and align business and technology priorities
Must act as role model, able to perform in a cross-functional and collaborative team environment focused on supporting business partners with enhanced insights
Demonstrated ability to engage and manage a diverse set of internal business partners, product sets, and projects, connecting insights with execution and business impact
Innovative and strategic thinker with ability to connect to practical application, providing leadership on target initiatives, with a strong bias to action and focus on quantifiable business impact
Experience in managing multiple projects with tight deadlines in a collaborative environment, with ability to pivot and align resources to drive maximum impact
Ability to maintain a high level of competency in statistical and analytical principles, tools, and techniques. Champion application of emerging decision science techniques by supporting teammate training and development and building business partner awareness
Incumbent should have an understanding of various database environments (IBM DB2, Oracle), technical programming skills (SAS, SQL, Toad), exposure to applied data science tools (R, Python, SAS Viya), comfortability with cloud computing platforms (e.g. Snowflake, Amazon S3, Microsoft Azure) familiarity with data visualization and BI tools (Tableau, Power BI, Qlik Sense), and demonstrated proficiency in Microsoft Office Suite (SharePoint, Excel, PowerPoint, Word)
Experience leading complex, multi-domain initiatives with measurable business impact
Strong communication, storytelling, and executive presentation skills
Preferred Qualifications
Master’s or PhD in a quantitative field such as Finance, Mathematics, Analytics, Data Science, Computer Science, or Engineering
10+ years of experience in Banking, Finance, Decision/Data Science, Analytics, Computer Science, Applied Mathematics or Engineering
2+ years of analytics management experience with a diverse project focus and demonstrated results
Experience supporting large-scale cloud migrations and modernization initiatives
Familiarity with AI/ML data requirements and operationalization frameworks
Experience in BI rationalization, data product lifecycle management, or enterprise data governance alignment