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Department: Health System Shared Services | Clinical Applications Job Description Senior-level Epic analyst responsible for advancing the integration, optimization, and governance of artificial intelligence
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Computer Science, Healthcare, Nursing, Pharmacy, or Allied Health. Seeking candidates with Epic certification and 2 years of experience working as an analyst in an organization using Epic; or direct patient
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college degree in Computer Science, Healthcare, Nursing, Pharmacy, or Allied Health and 2 years of experience in information technology preferably in Epic Certification in Ambulatory and/or Phoenix
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secondary diagnoses, and sequencing diagnoses and procedures. Codes flow from the Encoder Software to EPIC/IHIS Resolute Billing system. This staff member is responsible for complete and accurate coding
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). Experience with EPIC preferred. Strong verbal and written communication, organizational and human relations skills, self-motivated, professional (Customer service skills). Ability to prioritize workload
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with EPIC preferred. Strong verbal and written communication, organizational and human relations skills, self-motivated, professional (Customer service skills). Ability to prioritize workload. Career
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counseling role. At least 1 year experience with insurance verification/identification, Microsoft Office, Medical Terminology and EPIC or other EMR. At least 1 year experience utilizing computers and
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prioritize tasks Knowledge of Epic, or other EMR, preferred Additional Information: Location: Remote Location Position Type: Regular Scheduled Hours: 40 Shift: First Shift Final candidates are subject to
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and administered in compliance to regulatory and sponsor requirements; participates in collecting, extracting, coding, and analyzing clinical research data (including neuropsychological tests, EEG
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following qualifications and experiences: Experience with developing or applying ecosystem models (e.g., SWAT-Carbon, CLM, EPIC, DNDC, and DayCent) Experience with analysis of geospatial data and time series