Other
This job posting has expired and is no longer accepting applications. Check out similar jobs
Job description
This position would be a hands-on technical role that will require end-to-end ownership of data feeds related to C&S, M&R and E&I platforms, revenue and membership systems and financial databases. The candidate would also focus on influencing process shortcomings and data issues as a SME. The candidate would also work on projects that require transforming huge amounts of C&S, M&R, E&I, accounting and finance data from disparate sources into actionable business intelligence. The resource will also work towards the creation of automated processes, data repositories, reporting, and analyses from multiple systems and data sources using a variety of tools, including SAS, Python, Power BI, Snowflake, and Databricks.
Other responsibilities will include:
- Working in a team environment on projects that aim to solve ambiguous business problems, support requirements gathering as well as design and development of the deliverables within the agreed SLAs
- Participating in UAT efforts, system migration projects and partner with IT personnel on test-efforts, defect detection, resolution and deployment
- Working across teams on complex projects that achieve key business objectives and build innovative solutions to meet customers needs using the proven Fin360 framework.
- Leverage the UHC SAS Fin360 framework and build fully functional innovative solutions while integrating robust reconciliation and control processes
- Collaborating with colleagues and peers to drive business solutions and identify opportunities for innovation.
This role would augment additional bandwidth to the Financial Data Management group in support of the C&S, M&R and E&I Groups.
Most Popular Data Analyst Job Categories
Data Mining
Entry Level Data Analyst Sql Tableau
Home Based Data Analyst
No Experience Data Analytics
Full Time Data Analyst
Performance And Data Analyst
Part Time Excel Vba
Senior Data Analyst Ibm
Full Time Data Analyst Sql Excel
Senior Exempt Data Analyst
Other Helpful Pages Related To Data Analyst(UAT) - Minnetonka,MN - Onsite
Cisco Webex Salaries
Frequently asked questions
Q: What skills or qualities help someone succeed as a Data Analyst?
A: To succeed as a Data Analyst, key technical skills include proficiency in programming languages such as Python or R, expertise in data visualization tools like Tableau or Power BI, and knowledge of statistical analysis and machine learning concepts. Additionally, strong soft skills like effective communication, problem-solving, and collaboration are crucial for presenting insights to stakeholders and working with cross-functional teams. By combining these technical and soft skills, Data Analysts can drive business decisions, identify areas for improvement, and contribute to the growth and success of their organization.
Q: What is the career path for a Data Analyst?
A: A Data Analyst's typical career progression involves starting as an Entry-Level Data Analyst, where they collect, analyze, and interpret data to inform business decisions. As they gain experience, they can move into Mid-Level roles such as Senior Data Analyst or Business Analyst, where they take on more complex projects and lead smaller teams. Ultimately, they can advance to Senior Leadership positions like Data Scientist, Data Manager, or even Director of Analytics, where they oversee large-scale data initiatives and drive strategic business growth.\n\nKey opportunities for skill development and professional growth in this role include learning programming languages like Python or R, mastering data visualization tools like Tableau or Power BI, and staying up-to-date with emerging trends in machine learning and artificial intelligence. Additionally, Data Analysts can develop soft skills like communication, project management, and leadership to excel in their roles.\n\nLong-term career prospects for Data Analysts are diverse, with potential directions including transitioning into related fields like Business Intelligence, Data Engineering, or even becoming a Product Manager, or pursuing advanced degrees in Data Science or related fields to further specialize in areas like machine learning or data engineering.