Job Closed
This listing is no longer active.
We streamline your law firm with Filevine, so you can focus on what really matters.
Data Migration Engineer
Location
United States
Posted
111 days ago
Salary
$74.4K - $120K / year
Seniority
Senior
Job Description
Data Migration Engineer
Vineskills
• Lead end-to-end, non-recurring data and document migrations from legacy case management systems into Filevine. • Partner directly with clients to assess source systems, define migration strategy, and set clear expectations. • Design and build SQL queries and ETL processes to extract, transform, and load structured data. • Develop and document detailed data mappings between source databases and Filevine. • Cleanse, normalize, and validate data to ensure accuracy and integrity before and after migration. • Collaborate with clients to understand their data structures and migration needs. • Troubleshoot and resolve migration-related issues, escalating when necessary. • Conduct post-migration testing and quality assurance. • Maintain detailed documentation of migration processes, issues, and resolutions. • Provide support and training to clients and internal teams on data migration best practices. • Participate in code reviews and continuous improvement initiatives.
Job Requirements
- Filevine Data Migration Engineer Certification (or willingness to obtain).
- Ability to analyze and interpret complex database structures.
- Familiarity with APIs and integrations.
- Proficiency in SQL (T-SQL, PostgreSQL, MySQL, or similar).
- Experience with ETL processes and tools such as SSIS, CloverDX, or custom scripting.
- Strong problem-solving and debugging skills for data-related issues.
- Understanding of data security best practices.
- Prior experience in legal case management or CRM data migrations is a bonus.
- Mid-level Python skills are preferred.
- Experience with cloud storage solutions (AWS S3, Google Cloud, or similar) is preferred.
- Familiarity with Agile methodologies and version control systems (Git, GitLab) is preferred.
- CJIS certification (or willingness to obtain for working with sensitive government legal data).
Benefits
- 100% remote position with flexible work hours.
- Bonus structure based on client work.
- Employee Stock Ownership Plan (ESOP) with company shares at no cost.
- 401k plan through Empower.
- Medical, dental, and vision benefits with 85% of costs paid by employer.
- Short-term disability coverage paid by Vineskills.
- Three weeks of PTO and three days of sick leave, expanding to four weeks of PTO in year four.
- 12 paid holidays and a holiday slowdown between Christmas and New Years.
- A new shiny Mac or Windows laptop that is yours to keep after one year of employment.
Related Guides
Related Categories
Related Job Pages
More Data Engineer Jobs
Ingeniero de Datos, On-Premise
EX Squared LATAMMultishore & tech staff augmentation experts! Building solutions for leading brands #ImagineBuildEvolve 🔭
• Desarrollar procesos ETL para réplica, extracción y tratamiento de información desde bases de datos SQL Server. • Programar flujos de transformación y carga hacia Data Warehouse. • Analizar requerimientos de negocio y diseñar especificaciones técnicas. • Desarrollar scripts y procesos bajo herramientas Microsoft. • Implementar modelos dimensionales en esquema Estrella o Copo de Nieve. • Elaborar documentación y manuales técnicos. • Trabajar bajo metodología Scrum. • Desarrollar bajo las políticas y estándares establecidos por BAC Regional.
• Establish and maintain technical excellence within the data engineering team • Design and implement robust data solutions aligning with business objectives • Drive data-driven initiatives and ensure successful delivery • Lead by example, combining strong technical execution with mentorship • Engage with stakeholders to understand data needs and technical constraints • Implement with a DataOps mindset, building reliable and efficient data pipelines • Mentor and develop data engineers, contributing to knowledge sharing and thought leadership
• Support the development and maintenance of secure, scalable data systems that enable clinical, operational, and financial analytics in a HIPAA‑regulated environment. • Contribute to building and operating data pipelines that ingest, transform, and standardize data from internal and external healthcare sources such as EHRs, claims vendors, and SDOH APIs. • Work closely with analysts and business stakeholders to understand requirements and help create reliable, analytics‑ready datasets and basic data models. • Assist in documenting data processes and governance practices, including data lineage, access controls, and handling procedures for sensitive health information. • Participate in data quality efforts by implementing validation checks, monitoring data flows, and helping identify anomalies that could impact downstream analytics. • Help develop and maintain reusable dbt models and shared data transformations, with exposure to open healthcare data models like Tuva, OMOP, or FHIR. • Collaborate with senior engineers to improve infrastructure and team processes, taking on increasing responsibility as skills grow and the data engineering function expands.
• Build and maintain automated data workflows and orchestrations using Apache Airflow • Build automation processes using Copilot to generate Airflow DAGs • Implement at least two major end-to-end data pipeline projects using Airflow • Design and optimize complex DAGs for scalability, maintainability, and reliability • Create reusable, parameterized, and modular Airflow components (operators, sensors, hooks) to streamline workflow development • Ensure effective monitoring, alerting, and logging of Airflow DAGs for quick issue resolution • Document workflows, solutions, and processes for team knowledge sharing and training • Mentor and support other team members in Airflow usage and adoption • Explain best practices, identify pros and cons, and communicate technical decisions to team members • Develop reusable frameworks, leveraging reusable concepts for efficiency and scalability • Implement and utilize reusable ecosystem components, including Python & Apache Airflow, DynamoDB, Amazon RDS • Develop reusable frameworks to enforce data governance and data quality standards • CI/CD pipeline development using re-usable frameworks and Jenkins




