domain
Enterprise Data Architect/ Solution Architect
Philadelphia, PA, US
Onsite
2026-07-03
Announced salary
$145,600 - $166,400
Estimated net pay
$8,859 - $9,991
/month · 27% withheld
after tax & contributions · Single, no dependents
Job description
We are placing a senior data integration consultant embedded at a financial services client for a 6\-month engagement, extension possible based on client need. The consultant works onsite as part of the client's data engineering effort, integrating the client's systems and data sources with our company's Declarative Agentic Framework (DAF) and connected products.
This is delivery work, not advisory. The consultant owns the data pipelines, warehouse structures, and integration points that the deployment depends on, and is accountable for data quality and reliability in production.
What the Consultant Will Do
* Design and build data integration pipelines connecting client source systems (reference data, pricing, transaction, custody, or similar) to the client's platform.
* Own data warehouse and data lake architecture for the engagement, including ingestion, transformation, and data quality rules.
* Work hands\-on with ETL tooling (Informatica, Snowflake, or equivalent) and cloud data platforms (AWS or Azure).
* Write production\-grade Python for data processing and integration between on\-prem and cloud systems.
* Define data reconciliation and data lineage processes so the client can trust what the pipelines produce.
* Coordinate with the client's data engineering, ops, and compliance stakeholders, and with the client's deployment team.
* Document architecture decisions and integration patterns so the work is defensible and repeatable across future deployments.
Required Background
* 10\+ years in enterprise data architecture, data engineering, or solution architecture roles.
* Direct experience in financial services, ideally capital markets, asset management, or securities operations. Candidate should recognize terms like reference data, corporate actions, and reconciliation without explanation.
* Hands\-on ETL and data warehousing expertise: Informatica, Snowflake, or comparable enterprise\-grade tooling.
* Production Python for data pipelines and integration