AWS Data Architect in Jersey City, NJ (Hybrid) with Banking domain and Risk Management Experience

Overview

Hybrid
$80 - $90
Full Time
25% Travel

Skills

Data Architect
Risk Management
Settlement
Trade

Job Details

Mandatory Areas

Must have skills:

Snowflake

AWS ecosystem, including S3, EC2, Lambda, Glue, IAM,

Python

data architecture patterns

Data Warehousing, Data Lake, Data Mesh


Job Description:
The Risk Management Back Office is the operational core of the risk ecosystem, responsible for the integrity, settlement, and reporting of all trading activity. This team ensures the foundational data that underpins a firm's risk analysis is accurate, timely, and secure. We are seeking an exceptional Senior Data Architect to lead the design and implementation of a next-generation data platform for our financial services clients, directly enabling robust risk mitigation, regulatory compliance, and operational excellence.

Position Summary:
As a Senior Data Architect, you will be the primary owner of the data architecture for the Risk Management Back Office. You will leverage your deep expertise in modern cloud data platforms and financial risk management to design and build scalable, secure, and resilient data solutions on AWS and Snowflake. This role requires a hands-on leader who can architect enterprise-grade systems, establish rigorous data governance and quality frameworks, and collaborate effectively with stakeholders across the front, middle, and back office.

Key Responsibilities:
Architect & Design: Design, build, and maintain the end-to-end data architecture for the Risk Management Back Office, leveraging AWS and Snowflake to support critical functions like trade settlement, collateral management, regulatory reporting, and data reconciliation.
Data Modeling & Pipelines: Develop conceptual, logical, and physical data models for risk data domains. Lead the development of complex, high-performance data ingestion and transformation pipelines using Python (including Snowpark) and AWS data services (e.g., Glue, Lambda, Kinesis).
Governance & Quality: Establish and champion a robust data governance framework. Define and enforce standards for data lineage, metadata management, and data quality. Implement monitoring and alerting systems to ensure the highest levels of data integrity.
Business Intelligence & Analytics: Partner with risk analysts, operations teams, and leadership to understand their data needs. Architect data marts and semantic layers optimized for analytics and support the development of insightful dashboards and reports using Sigma, Power BI, and other BI tools.
Security & Compliance: Serve as a subject matter expert on data security within the data platform. Design and implement solutions for data classification, access control, and protection, ensuring compliance with firm policies and financial regulations.
Technical Leadership: Provide technical guidance and mentorship to data engineers and analysts. Champion best practices in data architecture, software engineering, and cloud infrastructure. Drive innovation by evaluating and adopting new technologies and methodologies.

Required Qualifications & Skills
Bachelor's or Master's degree in Computer Science, Engineering, or a related quantitative field.
15+ years of experience in data architecture, data engineering, or a similar role, with a proven track record of designing and delivering large-scale data solutions.
Extensive, hands-on experience with Snowflake, including performance tuning, security best practices, and cost management.
Expert-level knowledge of the AWS ecosystem, including S3, EC2, Lambda, Glue, IAM, and networking fundamentals.
Advanced programming proficiency in Python for data manipulation, pipeline development, and automation.
Demonstrable experience architecting and delivering data solutions for BI and analytics, with direct experience using tools like Sigma and/or Power BI.
Crucially, extensive experience and deep domain knowledge of financial services back-office operations, specifically within Risk Management (e.g., trade lifecycle, settlement risk, counterparty data, collateral).
Expert-level understanding of (e.g., Data Warehousing, Data Lake, Data Mesh), data modeling, and data governance principles.
Must be based in or willing to relocate to the New York City metropolitan area.

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