FREE ACCESS
5,000–10,000 jobs/day

See all jobs on JobTailor
Search thousands of fresh jobs every day.
Discover
- Fresh listings
- Fast filters
- No subscription required
Create a free account and start exploring right away.

Data Platform Engineer III
Finance of AmericaDesigning and supporting scalable cloud-based data platforms at Finance of America. Engaging with diverse data sources and ensuring operational efficiency across the enterprise data ecosystem.
Tech Stack
Tools & technologiesAWSAzureCloudEC2ETLPySparkPythonSQLVault
About the role
Key responsibilities & impact- Responsible for designing, developing, implementing, and supporting scalable cloud-based data platforms, pipelines, integrations, and lakehouse solutions that enable enterprise reporting, analytics, operational insights, and AI-driven initiatives.
- Extracts, transforms, and optimizes data from complex and diverse data sources while ensuring reliability, performance, governance, and operational efficiency across the enterprise data ecosystem.
- Designs and develops data pipelines to ingest, transform, and load data from various sources into the data ecosystem.
- Designs, develops, and maintains scalable, secure, and reliable enterprise data platforms, pipelines, integrations, and cloud-native data solutions.
- Implements and supports modern data platform architectures including medallion, lakehouse, dimensional, and semantic modeling patterns.
- Develops and maintains notebooks, data engineering frameworks, orchestration solutions, and reusable components using SQL, Python, PySpark, and cloud-native technologies.
- Supports Microsoft Fabric environments including Lakehouse, Warehouse, Data Pipelines, Notebooks, OneLake, semantic models, and Power BI integration.
- Supports enterprise Power BI solutions including gateways, refresh optimization, data connectivity, semantic models, and performance tuning.
- Designs and implements integration patterns including APIs, event-driven integrations, cloud-native integrations, and file-based data movement processes.
- Creates and maintains monitoring, logging, alerting, observability, and operational reporting frameworks to ensure platform reliability and SLA adherence.
- Supports cloud infrastructure and modernization initiatives across Azure, AWS, Microsoft Fabric, and related cloud services.
- Monitors platform health, compute utilization, refresh performance, storage efficiency, reliability, and operational metrics across data environments.
- Collaborates with Analytics Engineers, Data Owners, Infrastructure teams, Security teams, and business stakeholders to understand requirements and improve platform efficiencies through automation and optimization.
- Troubleshoots and resolves pipeline, infrastructure, integration, data quality, and performance issues across enterprise data platforms.
- Contributes to platform standards, governance practices, documentation, and operational procedures.
- Researches emerging technologies, tools, and industry trends to recommend improvements to the enterprise data platform ecosystem.
- Provides mentorship and technical guidance to junior engineers and team members.
- Maintains a customer-first mentality while collaborating with stakeholders, leadership, and engineering teams.
Requirements
What you’ll need- Minimum 7 years of related experience designing, developing, and supporting enterprise data warehouses, lakehouses, or modern cloud-based data platforms, preferably within the financial services industry.
- Minimum 7 years of experience developing and supporting cloud-based data integration solutions such as Azure Data Factory, Microsoft Fabric Data Pipelines, Synapse Pipelines, or equivalent technologies.
- Strong hands-on experience with Microsoft Fabric including Lakehouse, Warehouse, Data Pipelines, Notebooks, OneLake, semantic models, and Power BI integration.
- Experience implementing medallion architecture and modern lakehouse design patterns.
- Strong experience with SQL, Python, PySpark, notebooks, and distributed data processing technologies.
- Experience with Azure services such as Azure Data Lake Storage, Azure SQL Database, Azure Functions, Logic Apps, Azure Key Vault, and Azure Monitor.
- Experience with AWS services such as Amazon S3, AWS Lambda, Amazon RDS, CloudWatch, EC2, and IAM.
- Strong understanding of dimensional modeling, semantic modeling, star schemas, data warehousing concepts, and lakehouse architecture principles.
- Experience developing scalable ETL/ELT pipelines, orchestration frameworks, and reusable data engineering solutions.
- Experience supporting Power BI environments including gateways, semantic models, refresh optimization, Direct Lake, and enterprise reporting integrations.
- Understanding of data governance, data lineage, metadata management, data security, and cloud platform best practices.
- Experience implementing monitoring, logging, observability, and operational reporting solutions for enterprise data platforms.
- Understanding of cloud infrastructure, networking, identity and access management, security controls, and cost optimization principles.
- Experience supporting AI, machine learning, generative AI, or advanced analytics initiatives through the delivery of trusted datasets.
- Strong analytical thinking, troubleshooting, and problem-solving skills.
- Experience working within Agile delivery environments.
- Ability to manage multiple concurrent priorities and deliver high-quality solutions.
- Strong verbal, written, and interpersonal communication skills.
- Demonstrated ability to mentor junior engineers and collaborate effectively across technical and business teams.
- Bachelor's Degree or comparable qualifications in Computer Science, Engineering, or related field.
Benefits
Comp & perks- health, dental, vision, life insurance
- paid time-off benefits
- flexible spending account
- 401(k) with employer match
- ESPP
ATS Keywords
✓ Tailor your resumeApplicant Tracking System Keywords
Tip: use these terms in your resume and cover letter to boost ATS matches.
Hard Skills & Tools
SQLPythonPySparkETLELTdata integrationdimensional modelingsemantic modelingdata warehousingcloud-native data solutions
Soft Skills
analytical thinkingtroubleshootingproblem-solvingmentorshipcollaborationcommunicationcustomer-first mentalityorganizational skillsleadershipAgile delivery
Certifications
Bachelor's Degree in Computer ScienceEngineeringrelated field