Mount Sinai Health System

Data Analyst II (Hybrid) - Graduate School of Biomedical Sciences


PayCompetitive
LocationNew York/New York
Employment typeFull-Time

This job is now closed

  • Job Description

      Req#: 3022051

      The Data Analyst II ensures data integrity, supports reporting needs, and enhances data management processes to provide actionable insights that align with our team’s strategic goals. Working under the guidance of the Director for Systems Strategy and Innovation, this role focuses on supporting institutional and operational needs through data analysis, reporting, and process optimization. The analyst collaborates with stakeholders to streamline workflows and deliver impactful reports to drive decision-making.

      Qualifications

      • Bachelor’s degree in computer science, data science, statistics, or a related field, or combination of equivalent work experience and education. Master's degree in relevant field of study preferred (e.g., statistics, epidemiology, computer science, etc.).
      • 3+ years of experience in data analysis, SQL reporting, and database management; experience in higher education preferred.
      • Expertise in Microsoft Excel and Google Sheets is required; experience with R and/or Python is preferred.
      • Strong analytical, organizational, problem-solving, and communication skills, with exceptional attention to detail and the ability to manage multiple projects simultaneously
      • Experience with low code/no code tools; experience with Airtable preferred.
      • Proficiency in data visualization principles and tools, particularly Tableau Desktop & Server.
      • Ability to work both independently and collaboratively in dynamic and fast-paced environments
      • Ability to adapt quickly to new technologies and environments with a flexible and collaborative approach

      Responsibilities

      • Collaborate with the graduate school administrative team to define and prioritize data reporting requirements.
      • Lead the annual faculty teaching hour and compensation effort, including data collection, analysis, communication, and reporting.
      • Support the design and management of internal tools, such as degree auditing systems.
      • Manage forms and workflows, guiding staff to ensure efficiency and accuracy.
      • Conduct data extraction, cleaning, validation, and integration to maintain accuracy and reliability.
      • Work with IT teams to leverage centralized information systems and optimize secondary data sources and integration workflows.
      • Develop and deliver reports, dashboards, and data visualizations tailored to diverse audiences.
      • Enhance data quality, organization, and accessibility across systems, ensuring continuous improvement and maintaining security and compliance.
      • Identify trends and insights to support strategic initiatives and drive process improvements.
      • Respond to ad hoc requests, produce custom reports, and perform analyses as needed.
  • About the company

      The mission of the Mount Sinai Health System is to provide compassionate patient care with seamless coordination and to advance medicine through unrivaled education, research, and outreach in the many diverse communities we serve.

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