Quality Data Analyst
Location
United States
Posted
2 days ago
Salary
$60K - $65K / year
Seniority
Mid Level
Job Description
Quality Data Analyst
Tri-County Care
Role Description The Quality Data Analyst is responsible for analyzing quality metrics, identifying trends and areas for improvement, and providing actionable insights to support organizational quality initiatives. This role informs data-driven decisions, evaluates the effectiveness of improvement efforts, and contributes to the achievement of overall quality goals. Qualifications - Familiarity with OPWDD regulations and implementation of policies and procedures - Ability to effectively communicate verbally and in a written manner - Microsoft Office experience; particular familiarity with the use of Microsoft Excel - Strong analytical and problem solving skills with attention to detail - Ability to organize, schedule, prioritize and utilize time effectively - Excellent interpersonal skills, confidentiality, and professionalism Requirements - Familiarity with OPWDD regulations and practices - Minimum 2 years in a Quality Assurance role, preferred - Experience building reports and dashboards using BI tools, preferred
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