Inspira Financial is a company focused on helping businesses and individuals thrive in their health and wealth journeys. The Data Engineering Manager will lead an agile team of Data Engineers to enhance data delivery and analysis, oversee the creation of data visualizations, and support various business strategies through effective data management.
Responsibilities:
- Lead an agile team of data engineers with varying levels of experience in the delivery of enterprise data initiatives
- Oversee the creation of data visualizations including enterprise dashboards, analytical, and operational reporting
- Partner with business leadership to implement 3–5-year plan for area of responsibility
- Manage multiple concurrent projects
- Define and establish benchmarks, metrics, and quality measures
- Support disaster recovery and contingency planning
- Ensure solutions meet non-functional requirements, including security, performance, maintainability, scalability, usability, and reliability
- Effectively manage relevant 3rd party vendor relationships
- Support the stability and resiliency of Data Visualization production processes, as well as instituting a robust support model addressing process and application failures
- Understand the business and technology
- Drive process alignment with business partners
- Identify project team requirements and capital requirements
- Evaluate and integrate productivity tools, development tools, testing tools, databases, and applications into this architecture
- Work with the leaders of Technology Infrastructure and Software Engineering to ensure effective operational tools and procedures are in place to support the application architecture
- Research and strategize emerging technologies relevant to business needs
- Develop and document an overall enterprise reporting delivery architecture which is fit for business purposes and cost effective
- Recruits, interviews, hires, and trains new staff
- Oversees the daily workflow of the department
- Provides constructive and timely performance evaluations
- Participate in budget planning and monitoring
Requirements:
- 10+ years of experience in Data Engineering, Data Visualization, or Software Product Development
- Bachelor's degree preferred in Computer Science, Computer Engineering, Software Engineering, Electrical/Electronic Engineering, Mathematics, Statistics, Data Science, or similar/related Engineering/Science based disciplines
- 1-3 years of leadership experience managing direct reports
- Strong understanding of Programming Skills. While not expected to perform day-to-day code development, the Data Engineering Manager is expected to be knowledgeable and practiced in programming languages such as SQL/T-SQL, Python
- Data / Database Skills: Competence with relational and NoSQL databases (e.g., SQL Server, MongoDB) including proficiency with Data Definition Languages, Data Mark-Up Languages
- Participate in design and implementation of OLAP databases to serve internal and external consumer use cases
- Design and implement hybrid data cloud services, leveraging public could providers (i.e., Azure) and specialty providers (i.e., Snowflake)
- Understand and implement Generative AI solutions within the context of developer assistance and data visualization product delivery
- Support the development of enterprise data visualization strategy ensuring rapid delivery while taking responsibility for applying standards, principles, theories, and concepts
- Support enterprise data governance initiatives
- Strong experience in working with and optimizing enterprise reporting
- Exceptional analytical skills and strong attention to detail
- Ability to prioritize, plan and take initiative
- Highly self-motivated and directed
- Experience in a high availability environment
- Knowledge of ITIL/ITSM Foundational practices and framework
- Strong Vendor management skills
- Strong understanding of Salesforce Financial Services Cloud data object model
- Data Engineering Tools/Platforms: Platform/Framework (Snowflake, Azure MSSQL), Visualization (Tableau, PowerBI, SSRS), Governance (Data.World, Atlan, Alation)
- Problem-Solving and Analytical Skills: Data engineers must possess strong problem-solving abilities and the capacity to analyze complex technical challenges. They should be able to break down problems into manageable components and devise effective solutions
- Software Product Development Lifecycle: Familiarity with the software development lifecycle (SDLC) is crucial. This includes understanding requirements gathering, system design, implementation, testing, deployment, and maintenance in an Agile/Scaled Agile manner. Experience with Scrum, Kanban, Extreme Programming, or other outcome based iterative development approach required
- Knowledge of Development Tools and Frameworks: Data engineers should be proficient in using development tools and frameworks relevant to their domain. This can include version control systems (e.g., Git), integrated development environments (e.g., Visual Studio Code, IntelliJ), and frameworks specific to data platform development
- Collaboration and Communication: Effective collaboration with cross-functional teams is vital for data engineers. Strong communication skills, both written and verbal, enable them to clearly express ideas, collaborate with colleagues, and convey technical concepts to non-technical stakeholders
- Continuous Learning: The field of software engineering is constantly evolving, so a mindset of continuous learning is crucial. Staying updated with new technologies, programming languages, frameworks, and industry trends is highly valued
- Testing and Debugging: Proficiency in automated software testing techniques, including unit testing, integration testing, and debugging, is important for ensuring the reliability and quality of software applications
- Knowledge of Security Best Practices: Strong understanding of secure coding practices and the ability to apply them effectively in software development. Ability to implement security controls, conduct code reviews, and perform security-focused testing, ensuring adherence to industry standards and minimizing the risk of potential exploits
- Compliance: Familiarity with regulatory compliance requirements and industry-specific security standards, such as GDPR, HIPAA, PCI-DSS, and ISO 27001. Ability to design and implement software solutions that meet these compliance standards, ensuring the protection of sensitive data and maintaining regulatory compliance
- System Design and Architecture: Data engineers should have a solid understanding of data platform system design principles and architecture patterns. This includes scalability, performance optimization, and the ability to design robust and efficient software systems
- Adaptability and Flexibility: Data engineers often encounter changing requirements, tight deadlines, and evolving technologies. Being adaptable, flexible, and able to quickly learn and adapt to new tools and frameworks is crucial
- Tableau Certifications
- Microsoft Certified Azure Data Fundamentals
- Snowflake SnowPro Certification