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Advance your career at UCLA Health by leading inpatient coding operations that directly support our revenue cycle performance and compliance standards. As the Inpatient Coding Supervisor, you will
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professional revenues annually. The position will serve as compliance officer to ensure all federal regulations and policy and procedures are adhered to with respect to auditing, billing, coding, and
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Play a key role within a world-class healthcare organization. Support accurate and efficient coding processes to enhance operational success. Elevate your professional expertise at UCLA Health. You
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learning tools for image analysis, MATLAB coding, excellent organizational and communication skills, the ability to work collaboratively and cooperatively, and a passion for neuroscience research. Salary
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more at UCLA Health. You will be responsible for coding diagnoses and procedures for assigned cases. This will involve using your knowledge of UCLA, AHA – Coding Clinic, and AMA – CPT Assistant
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for outpatient/inpatient institutional, ancillary, professional claims, and Medicare fee schedules · Understanding of CPT, HCPCS, ICD-10, ASA, Revenue Codes · Experience researching and resolving
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planning and organizing necessary tasks to ensure adherence to the study protocol and applicable regulations, such as institutional policy and procedures, FDA Code of Federal Regulations (CFR), and ICH Good
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and organizing necessary tasks to ensure adherence to the study protocol and applicable regulations, such as institutional policy and procedures, FDA Code of Federal Regulations (CFR), and ICH Good
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coding of transactions and providing supporting documents as needed Promptly identifies, collects, researches, and analyzes issues related to the procure-to-pay process, and implements solutions
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experience in software development. Experience applying large language models (LLMs) or autonomous agents to scientific tasks such as code generation, protocol reasoning, or automated experimental planning