Job Title: Healthcare Revenue Data Scientist - Predictive Analytics - ONSITE
Work Location: Onsite - Upper East Side Manhattan
Hybrid Schedule: 3-4 days onsite / week
Compensation Range: $145,000 - $170,000 DOE
Benefits: Medical, Dental,Vision, Life, 403b Retirement, PTO, Holidays, Education Credit
Required Industry: Healthcare
ABOUT OUR CLIENT / ABOUT THIS ROLE
Medix is currently seeking a Data Science Analyst for an exciting full-time opportunity with one of our Health System clients, headquartered in New York's Upper East Side. This individual will be developing and operating / optimizing predictive models for deep analysis on the Health Systems' financial / revenue cycle data, with an emphasis towards commercialization and cost-savings.
RESPONSIBILITIES
REQUIRED SKILLS
No C2C Inquiries - this is a full time /permanent position. Work visa sponsorship is not offered: talent must be permanently authorized to work for our client without the need for work-visa sponsorship now, or in the future.
For California Applicants:
We will consider for employment all qualified Applicants, including those with criminal histories, in a manner consistent with the requirements of applicable federal, state and local laws, including the City of Los Angeles' Fair Chance Initiative for Hiring Ordinance (FCIHO), Los Angeles Fair Chance Ordinance for Employers (ULAC), The San Francisco Fair Chance Ordinance (FCO) , and the California Fair Chance Act (CFCA).
This position is subject to a background check based on its job duties, which may include patient care, working with vulnerable populations, access to financial and confidential information, driving, working with heavy machinery, or working in a warehouse or laboratory environment. Due to these job duties, this position has a significant impact on the business operations and reputation, as well as the safety and well-being of individuals who may be cared for as part of the job position or who may interact with staff or clients.
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