Risk Analytics Product Development / Data Scientist, VP
State StreetRole Overview
State Street is hiring a Risk Analytics Product Development / Data Scientist, VP. This is a full-time role in Bengaluru. Part of State Street's Risk hiring, posted yesterday. Full responsibilities, required qualifications, and the apply link are listed in the description below.
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Job Description
Role Description
We are recruiting a VP-level Data Scientist and ETL Developer to design, build, and operate robust data integration and analytics pipelines that power State Street’s risk analytics and reporting products. The role focuses on extending our data transformation and delivery architecture to onboard new client and vendor data sources, standardize them to enterprise data models, and deliver high‑quality, timely information to downstream risk, regulatory, and management reporting platforms. In addition to integration, the role will lead advanced data preparation for model‑ready datasets, support feature engineering, and enable model deployment and monitoring in partnership with data science teams.
Function
This role sits within Risk Services and works closely with product managers and engineering leads to: (1) execute the risk data integration roadmap, (2) modernize legacy data movements to event‑driven/streaming and cloud patterns, and (3) enable seamless migration of clients from legacy to target‑state architectures while maintaining regulatory and control standards.
Responsibilities
- Design & build data integrations: Develop resilient ingestion, mapping, validation, and publishing processes to bring client and market data from multiple custodians and vendors into standardized schemas supporting risk analytics and reporting.
- Own ETL/ELT workflows: Translate business and data analysis into production‑grade pipelines (batch and streaming), including transformation logic, data quality rules, lineage, and exception handling.
- Model‑ready data & MLOps enablement: Partner with data scientists to design feature pipelines, curate training and inference datasets, implement feature‑store patterns, and operationalize model scoring and monitoring.
- Integration patterns & architecture: Contribute to capability models and reference patterns (API, file, message/stream, CDC) that simplify and standardize integration across risk platforms; document and review designs.
- Environment readiness & releases: Automate build, test, and deploy processes; ensure non‑prod/prod environments, secrets, and dependencies are correctly configured; support blue/green and canary releases where applicable.
- Production reliability: Partner with production support to implement monitoring, alerting, run‑books, and on‑call rotations; lead incident triage and root‑cause analysis; continuously harden pipelines for resiliency and cost.
- Data quality & controls: Implement reconciliation, validation, and auditability controls aligned to internal policies and external regulations for risk data.
- Stakeholder engagement: Work with product managers, client service, and operations to prioritize backlog, groom user stories, and align technical plans with client deliverables and regulatory deadlines.
- Documentation & knowledge transfer: Produce clear technical specifications, mappings, and run‑books; coach junior team members and enable handoffs to global support teams.
- Continuous improvement: Identify opportunities to rationalize tech stacks, retire redundant feeds, and evolve toward metadata‑driven pipelines and self‑service data delivery.
- Adaptability & Continuous Learning: The ability to keep up with the fast-paced, evolving AI landscape.
- Critical Thinking & Evaluation: The ability to verify AI outputs, check for hallucinations, and identify bias.
Skills (What we’re looking for)
Essential
- Strong hands‑on experience building ETL/ELT pipelines and data mappings for financial services, ideally in risk, performance, or regulatory reporting contexts.
- Proficiency with SQL (SQL Server/Oracle), Python/Scala, and a workflow/orchestration tools.
- Integration patterns across file‑based, API, and message/stream (Kafka/Event Hubs); comfort with schema/version management, idempotency, and backfills.
- Data modelling & quality: dimensional/relational modelling, DQ rules, reconciliation, lineage/metadata cataloguing.
- Applied data science skills: feature engineering, model evaluation metrics, and experience supporting model deployment/monitoring with MLOps practices.
- Agile delivery (stories, epics, backlogs), CI/CD, and modern git workflows; clear written/spoken communication across global teams.
Desired
- Reporting/visualization exposure (e.g., SSRS/Power BI) and experience modernizing or decommissioning legacy report stacks.
- Experience with cloud platforms (Azure/AWS), object storage, Spark/Databricks, dbt, and infrastructure‑as‑code.
- Familiarity with enterprise controls for financial services (change management, access, segregation of duties) and regulatory reporting data needs.
- Experience with feature stores, model registries, and monitoring (e.g., MLflow, Feast, EvidentlyAI) is a plus.
Experience
- 10+ years total experience in data integration / data engineering / data science, with at least 5+ years building production pipelines for financial data.
- 3+ years leading technical delivery or small teams, including code reviews, standards, and mentoring.
- Bachelor’s degree in computer science, Engineering, Information Systems, Mathematics or related field; advanced degree is a plus.
- Demonstrated success delivering change in complex global environments using Agile and/or hybrid models.
Split of role
- Design & development: 50%
- Production reliability & support enablement: 15%
- Analysis, documentation, and testing: 15%
- Stakeholder management & planning: 20%
Key relationships
- Internal: Product managers (Risk Services), Data Engineering, Production Support, Client Service/Operations (prioritization and delivery).
- External: Data vendors and technology partners as needed for onboarding and API/format changes.
Work schedule & travel
Primary location Bengaluru, with periodic evening overlap to support EMEA/NA stakeholders; occasional travel may be required for workshops or go‑lives.
About State Street
Across the globe, institutional investors rely on us to help them manage risk, respond to challenges, and drive performance and profitability. We keep our clients at the heart of everything we do, and smart, engaged employees are essential to our continued success.
We are committed to fostering an environment where every employee feels valued and empowered to reach their full potential. As an essential partner in our shared success, you’ll benefit from inclusive development opportunities, flexible work-life support, paid volunteer days, and vibrant employee networks that keep you connected to what matters most. Join us in shaping the future.
As an Equal Opportunity Employer, we consider all qualified applicants for all positions without regard to race, creed, color, religion, national origin, ancestry, ethnicity, age, disability, genetic information, sex, sexual orientation, gender identity or expression, citizenship, marital status, domestic partnership or civil union status, familial status, military and veteran status, and other characteristics protected by applicable law.
Discover more information on jobs at StateStreet.com/careers
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Frequently Asked Questions
How do I apply for the Risk Analytics Product Development / Data Scientist, VP position at State Street?
Use the Apply button above to submit your application directly to State Street. Most applications take less than 5 minutes if your resume and contact details are ready, and you'll be routed to the employer's official application system to finish.
Where is the Risk Analytics Product Development / Data Scientist, VP position at State Street located?
This position is based in Bengaluru. State Street has not indicated remote or hybrid options for this role, so candidates should plan for on-site work.
What does a Risk Analytics Product Development / Data Scientist, VP at State Street earn?
State Street has not disclosed a salary range in this posting. Many employers share specifics later in the interview process; you can also ask during a recruiter screen if compensation transparency is important to you.
When was the Risk Analytics Product Development / Data Scientist, VP role at State Street posted?
This role was posted on June 6, 2026 (yesterday). It's still listed as actively hiring; we re-confirm openings against the source system multiple times per day and remove closed roles.
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