Property management. PURE and simple.
Implementation Entity Data Manager
Location
United States
Posted
3 days ago
Salary
$61K - $81K / year
Seniority
Mid Level
Job Description
Implementation Entity Data Manager
PURE Property Management
• Oversee the entire entity data lifecycle throughout the implementation process • Lead data validation, migration, system configuration, and third-party integrations • Proactively audit and analyze data to identify and resolve any errors • Act as the main point of contact for third-party partners • Collaborate with the team to ensure all consolidation goals are met
Job Requirements
- At least two years of experience in Data Migration & Integration
- At least two years of experience in Data Management
Benefits
- Medical, Dental and Vision Coverage
- 401(k) plan with a 4% Instantly Vested Match
- Generous Vacation and Sick time
- Life and Disability Plans
- Wellness Fitness Program
- Employee Assistance Program
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