Data Analyst Expert

Expedite Technology Solutions
Lincoln
4 days ago
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IT Senior Reporting Analyst

Below are the qualifications and preferences for this position.


Requirements

  • Must have four (4) or more years of experience as a business analyst working on data reporting applications, preferably in the healthcare domain.
  • Must have seven (7) or more years of experience writing Business System and Process Change / Design Documents, including Business Requirements Documents, System Design, Training Documents, and Process Flow Charts.
  • Must have five (5) or more years of experience working with business clients and technical staff to drive the development of business and technical requirements.
  • Must have seven (7) or more years of experience working independently within guidelines, developing and executing test scripts and test cases, data sets, and user procedures.
  • A solid proficiency in speaking and writing the English language is required.
  • Strong verbal and written communication skills, including the ability to gather and provide information effectively, regardless of audience.
  • Must be able to work well within a team environment and have exceptional collaborative skills. Must be service-oriented with strong interpersonal skills with all levels of business and technical staff.
  • Experience level with Microsoft Word and Microsoft Excel must be at an intermediate level or higher.
  • Strong organization, planning, problem‑solving, and decision‑making skills. Comfortable prioritizing and managing multiple tasks to meet required deadlines.
  • Must be a self‑starter and self‑motivated. Must be able to learn and apply new technology quickly.
  • Minimum of two (2) years of experience as a Business Analyst in an agile, project‑based environment. Proficient with user stories and agile ceremonies, principles, and frameworks.

Preferred

  • Prefer three (3) or more years of experience (current within the last year) in an operational role at a Medicaid or Medicare agency or a Health Insurance company.
  • Experience with Cognos reporting.
  • Working knowledge of Microsoft Outlook, Microsoft SharePoint, and JIRA.


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