VP, Data Engineer & Developer

Customers Bank
Malvern
1 day ago
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Customers Bank is a super‑community bank with over $22 billion in assets, founded in 2009. We believe in dedicated personal service for the businesses, professionals, individuals, and families we work with. Our vision, mission, and values guide us on our path to achieve excellence. Passion, attitude, creativity, integrity, alignment, and execution are cornerstones of our behaviors. We encourage personal development plans, enabling team members to achieve their highest potential.

We look for a talented and experienced Data Engineer and Developer to join our Data Management and Analytics team. As a Data Engineer and Developer, you will design and build data pipelines, integrate multiple platforms (Snowflake, Salesforce, nCino), develop data solutions, and solve challenging data problems to support our rapidly growing business.

Responsibilities
  • Design, develop, and maintain robust and scalable data pipelines using Azure Data Factory, DBT, and Microsoft Fabric to stage and integrate data into our Enterprise Data Warehouse.
  • Develop integration solutions between Snowflake, Salesforce, Workday, and nCino, ensuring data consistency, reliability, and compliance with business needs.
  • Proactively identify opportunities to reduce data flow complexity and risk while proposing innovative, best‑in‑class solutions.
  • Implement data engineering solutions following guiding principles and best practices when detailed requirements are unavailable.
  • Monitor and maintain production ETL processes and resolve support issues, ensuring operational excellence and performance.
  • Develop objects (tables, views, stored procedures, triggers) in Snowflake along with tasks to support data processes.
  • Work with BAs and the business to refine requirements and deliver against those requirements within the timeframe committed.
  • Manage work tasks and update status on work tasks on ADO (Azure DevOps), communicate status and updates to management, stakeholders, and peers to deliver work products on time.
What You Need
  • 5–7 years of experience as a data engineer supporting enterprise data warehouse solutions.
  • Hands‑on experience with Azure Data Factory, DBT, and Microsoft Fabric for developing modern ETL/ELT pipelines.
  • Experience with Talend and PowerBI.
  • Experience at banking institutions or within the financial services industry.
  • Hands‑on experience with Snowflake for data warehousing and analytics.
  • Proven experience integrating enterprise systems, particularly Salesforce and nCino.
  • Proficient in SQL, PowerShell, and Python for data transformation and scripting.
  • Demonstrated critical thinking mindset with the ability to independently drive end‑to‑end solutioning, even in the absence of detailed requirements.
  • Strong knowledge of data governance/controls, data architecture, and data modeling principles.
  • Excellent communication and collaboration skills to translate business requirements into scalable technical solutions.
  • Strong analytical and problem‑solving abilities, with a focus on alignment with best practices and CUBI standards.
  • Ability to work across multiple concurrent projects in a fast‑paced environment.
  • Experience creating scalable ETL solutions using tools such as ADF, DBT, SSIS, or Microsoft Fabric.
  • Familiarity with Agile development methodologies and CI/CD pipelines.
Technology Skills
  • Ability to work with the Microsoft Suite and learn/work with other Customers Bank’s applications.

Equal Opportunity Employer – Customers Bank is an equal opportunity employer. We do not discriminate based upon race, religion, color, national origin, gender (including pregnancy, childbirth, or related medical conditions), sexual orientation, gender identity, gender expression, age, status as a protected veteran, status as an individual with a disability, or other applicable legally protected characteristics.

We also provide reasonable accommodations, upon request, to qualified individuals with disabilities, in accordance with the Americans with Disabilities Act and applicable state and local laws.

Diversity Statement – At Customers Bank, we believe in working smart, working together, and having fun while delivering innovative solutions and memorable experiences for our customers. We are committed to the continual advancement of a culture that reflects the value we place on diversity, equity, and inclusion. We honor the diverse experiences, perspectives, and identities of our team members, and we recognize that it is their passion, creativity, and integrity that drives our success. Step into your future with us! Let’s take on tomorrow.


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