Senior Vice President, Full Stack Data Engineer

BNY Mellon

$116K — $220K *
Finance & Insurance
8 - 10 years of experience
Job Overview by Ladders

Qualifications

  • Bachelor's degree in computer science or related discipline, or equivalent work experience; advanced degree is a plus.
  • 10-14 years of diverse IT experience; background in financial services is advantageous.
  • Deep experience in designing and operating production ELT/ETL pipelines, and cloud data infrastructure.
  • Strong proficiency with modern data tools: dbt, Airflow, Spark, and cloud platforms (Snowflake, Databricks, etc.).
  • Experience balancing data pipeline velocity with quality and compliance requirements.

Responsibilities

  • Design and build production data pipelines from prototype to production readiness.
  • Work closely with stakeholders to define data engineering plans with clear goals.
  • Architect and implement data infrastructure using advanced tools for ingestion and transformation.
  • Integrate data pipelines that support AI and analytics systems effectively.
  • Mentor junior data engineers, contributing to their skill development and knowledge sharing.
  • Ensure consistent practices for data quality and operational readiness across pipelines.
  • Document and prepare handoff packages to aid future solution maintenance.

Benefits

  • Generous paid leave, including volunteer time off.
  • Access to global resources promoting health and personal resilience.
  • Programs designed to help achieve financial goals.
  • Commitment to employee wellbeing and work-life balance.
  • Competitive compensation and reward structure.
Full Job Description
Job Description

Senior Vice President , Full-Stack Data Engineer

We9re seeking a future team member for the role of Senior Vice President , Full-Stack Data Engineer to join our Engineering Hub Analytics team. This role is located in New York, NY

This is a hands-on senior individual contributor role embedded within the Engineering Hub Analytics practice. The Data Engineer owns data platform delivery across client engagements - designing, building, and hardening production-grade data pipelines, warehouse architectures, and data infrastructure that power AI and analytics capabilities. This is not a consulting or coordination role; it is an engineering role with full delivery ownership.

In this role, you9ll make an impact in the following ways:
  • Design, build, and harden production data pipelines, ELT/ETL workflows, and data platform components across client engagements - moving confidently from prototype to scalable, observable production deployment.
  • Embed with business and platform stakeholders to scope and execute time-boxed data engineering engagements with clear entry and exit criteria; translate defined data opportunities into production-ready delivery plans.
  • Architect and implement data infrastructure across ingestion, transformation, serving, and governance layers using modern tooling (dbt, Airflow/Prefect, Spark, Snowflake, Databricks, cloud-native services).
  • Build and integrate data pipelines that feed AI and analytics systems - including feature stores, RAG knowledge bases, semantic search indexes, and LLM context pipelines.
  • Default to reuse-first delivery: extend existing data platform patterns, templates, and pipeline modules rather than building avoidable one-offs; contribute reusable data assets back to shared repositories.
  • Apply data quality, observability, and operational readiness practices consistently - including lineage tracking, schema validation, SLA monitoring, and alerting.
  • Execute discovery with data owners, analytics teams, and sponsors to clarify data contracts, validate feasibility, and rapidly prototype before hardening into production.
  • Prepare clear handoff packages and transition plans - including data dictionaries, lineage documentation, pipeline runbooks, and ownership transfer artifacts - so receiving teams can sustain solutions independently.
  • Surface reusable data patterns and learnings from engagements that can be standardized and promoted into shared platform capabilities.
  • Coordinate with architecture, security, compliance, and governance stakeholders to ensure data solutions are production-appropriate, lineage-traceable, and governance-compliant.
  • Mentor junior data engineers; contribute to team delivery quality, standards, and knowledge sharing.


To be successful in this role, we9re seeking the following:
  • Bachelor9s degree in computer science or a related discipline, or equivalent work experience required; advanced degree is beneficial
  • 10-14 years of diverse experience in multiple areas of information technology required; experience in the securities or financial services industry is a plus.
  • Mentors junior data engineers within engagements; contributes to team delivery quality, pipeline standards, and knowledge sharing.
  • Deep experience designing and operating production ELT/ETL pipelines, data warehouse/lakehouse architectures, and cloud data infrastructure.
  • Hands-on experience with modern data tooling: dbt, Airflow or Prefect, Spark, Snowflake or Databricks or BigQuery, and cloud-native data services (AWS, Azure, or GCP).
  • Experience working across the full data stack - ingestion, transformation, serving, governance, and quality - rather than only within a single layer.
  • Experience delivering data infrastructure that feeds AI/ML systems, including feature engineering pipelines, vector stores, RAG knowledge pipelines, or LLM context preparation workflows.
  • Experience operating in regulated environments (financial services, healthcare) with data governance, lineage, and compliance requirements.
  • Strong data modeling judgment: dimensional modeling, data vault, OBT patterns - knowing when to apply which and why.
  • Comfort operating in ambiguity and driving data discovery with senior stakeholders and data owners.
  • Experience with metadata management and governance platforms (Collibra, DataHub, OpenMetadata).
  • Familiarity with real-time and streaming data patterns (Kafka, Kinesis, Flink) as a complement to batch workloads.
  • Experience balancing pipeline velocity with data quality, observability, and SLA commitments.
  • Strong Java\Python engineering skills for pipeline development; SQL fluency (T-SQL, PL/SQL, or equivalent) for transformation and analysis.
  • Experience with dbt for transformation layer development and testing.
  • Proficiency with orchestration tooling: Airflow, Prefect, or equivalent.
  • Cloud data platform experience: Snowflake, Databricks, BigQuery, or Redshift in production.
  • Familiarity with cloud infrastructure relevant to data workloads: AWS (Glue, Lambda, Step Functions, S3, Redshift), Azure (Data Factory, Synapse, ADLS), or GCP (Dataflow, BigQuery, Cloud Composer).
  • Data quality and observability tooling: Great Expectations, Monte Carlo, dbt tests, or equivalent.
  • Version control, CI/CD, and DevOps practices applied to data pipeline development (DataOps).
  • Strong written and verbal communication across technical and non-technical audiences, including data owners, analytics consumers, and platform stakeholders.
  • Clear data product and delivery judgment within a scoped engagement.
  • Ability to coordinate and execute across stakeholders - data owners, platform engineers, analytics teams - without formal authority.
  • Practical tradeoff thinking: pipeline complexity vs. maintainability, freshness vs. cost, schema flexibility vs. governance.
  • Bias toward action with disciplined follow-through on data quality and operational readiness.


Our Benefits and Rewards:

BNY offers highly competitive compensation, benefits, and wellbeing programs rooted in a strong culture of excellence and our pay-for-performance philosophy. We provide access to flexible global resources and tools for your life9s journey. Focus on your health, foster your personal resilience, and reach your financial goals as a valued member of our team, along with generous paid leaves, including paid volunteer time, that can support you and your family through moments that matter.

BNY assesses market data to ensure a competitive compensation package for our employees. The base salary for this position is expected to be between $116,500 and $220,000per year at the commencement of employment. However, base salary if hired will be determined on an individualized basis, including as to experience and market location, and is only part of the BNY total compensation package, which, depending on the position, may also include commission earnings, discretionary bonuses, short and long-term incentive packages, and Company-sponsored benefit programs.
This position is at-will and the Company reserves the right to modify base salary (as well as any other discretionary payment or compensation) at any time, including for reasons related to individual performance, change in geographic location, Company or individual department/team performance, and market factors.

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