
$0-$0 / yr
Salary
colombia
Region
ASAP
Start Date
Partner One Capital is a long-term investment group specialized in the acquisition and growth of successful software companies. We are owned by one of the largest pension funds in North-America with over $15 Billion in Net Assets. In business for over 23 years, we own some of the fastest growing enterprise software companies in the world. Over 600 of the world's largest corporations and governments rely on our software for their most critical operations and to safeguard their most valuable data.
About the Company
We are looking for a new Data Engineer to be part of the Mortgage Cadence team.
The Data Engineer operates designing, building and maintaining robust data pipelines and transformation logic that powers analytics, compliance and operational reporting across the Mortgage Cadence Platform. The role is execution-focused with increasing ownership of end-to-end data workflows as familiarity with the platform grows. Strong SQL, ETL, and data quality skills are required; the ability to build reports and leverage semantic models is secondary to data engineering excellence.
RESPONSIBILITIES
Data Pipeline Development:
Design and build ETL pipelines using Microsoft Fabric (Dataflow Gen2, Notebooks, or equivalent tools)
Write optimized SQL queries and transformations for data ingestion from designated source systems
Apply data quality rules and validation logic at each pipeline stage
Implement incremental loads and manage refresh schedules for performance
Escalate to Lead for architectural decisions or complex transformation patterns
Data Quality & Validation:
Define and implement data quality checks at ingestion, transformation, and output stages
Perform ongoing data validation to ensure pipeline outputs align with business logic and source system expectations
Identify, document, and escalate data quality issues with root cause analysis
Maintain data quality dashboards and SLA monitoring
Support UAT for new data sources or transformation logic
Transformation & Modeling:
Build and maintain data transformations using Power Query, SQL, or Python as appropriate
Develop dimensional models and define aggregation logic aligned with analytics requirements
Optimize data structures for performance and maintainability
Document transformation logic, lineage, and assumptions per team standards
Collaborate with Lead to define semantic
Operational Support:
Troubleshoot pipeline failures and performance issues; coordinate resolution with IT/Engineering
Respond to data discrepancy reports from business users and analysts
Maintain documentation of data sources, data dictionaries, and transformation specifications
Support capacity planning and optimization of Fabric environments and pipelines models and calculated metrics
Requirements
Technical
Advanced SQL - query optimization, window functions, performance tuning, debugging complex transformations
Proficient with Microsoft Fabric - (Dataflow Gen2, Notebooks, Lakehouse) OR equivalent ETL tools (Python, dbt, Talend, Informatica)
Strong understanding of relational database design and dimensional modeling
Power Query / M - complex data shaping, merging, error handling, and transformation logic
Python or similar scripting language - data manipulation, pipeline automation
Git/version control basics - able to collaborate on code and track changes
Data quality and testing frameworks - unit tests, assertions, validation rules
Non-Technical
Ability to interpret business requirements and design efficient data solutions
Data governance mindset - understands data lineage, documentation, and quality standards
Proactive about identifying edge cases and potential data issues
Mortgage/lending domain familiarity preferred; willingness to learn domain required
Works effectively within defined standards and escalates architectural questions to Lead
Able to balance speed with quality; advocates for technical excellence