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This position description identifies the responsibilities and tasks typically associated with the performance of the position.
Other relevant essential functions may be required.
Must Have
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 data architecture patterns (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.
Preferred Qualifications
Deep, practical experience with data security principles and implementation, including data encryption (at-rest, in-transit), tokenization, and managing Material Non-Public Information (MNPI).
Experience with data transformation tools like dbt (Data Build Tool).
Familiarity with infrastructure-as-code (IaC) tools such as Terraform or CloudFormation.
Knowledge of streaming data technologies (e.g., Kafka, Kinesis).
Strong understanding of financial instruments across equities, fixed income, and derivatives.
Seniority level
Mid-Senior level
Employment type
Full-time
Job function
Engineering and Information Technology
Industries
IT Services and IT Consulting
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