Senior HR Data Analyst

UL Solutions
Basingstoke
4 days ago
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Responsibilities

  • Provides oversight regarding metric definition and computation approaches ensuring consistency within HR and partner groups such as Finance.
  • Helps develop roadmap with key HR leaders regarding timing and scope of additional phases to enable more advanced reporting and ultimately support strategic/ advanced analytics.
  • Helps to develop and implement data analyses, data collection systems and other strategies that optimize statistical efficiency and quality.
  • Provides feedback to HR Data Analyst(s) that furthers their ability to understand business context and leverage more sophisticated statistical software and tools.
  • Helps identify and evaluate potential new approaches and tools to leverage at UL.
  • Responsible for generating presentations/visualizations that synthesize conclusions from multiple data analysis (e.g., compiling findings into comprehensive, easy-to-access reports for executive members of the company and key HR partners such as HRBAs, Talent Acquisition, ULU, DEI, Field HR, etc.).
  • The SR Analyst leverages their expertise in data visualization software and problem-solving skills to tell a story with data.
  • As a result of data audits, tracks assignment of data reliability issues identified to appropriate teams and ensures solutions are implemented to correct the root cause and mitigate future risks of errors.
  • The SR Analyst leverages experience and expertise to solve potential data management issues and provide suggestions on the use of cutting-edge data management software.
  • Helps to prioritize requests and track work-in progress.
  • Works with team to support root cause and predictive analyses at the enterprise and Business Unit/Functional level.
  • Ensures understanding of business context and competitive landscape driving request for information/insights.
  • Interprets data from multiple sources and analyzes results using sophisticated statistical techniques.
  • Proactively identifies trends or patterns in complex data sets that may require deeper analysis and shares with appropriate HR leadership.
  • Develops suggested approach to implement more sophisticated methods and tools to support predictive analysis.
  • Assists in the assessment and upskilling of HR practitioners to move into a more data-driven function.
  • Identify ways to integrate information and insights into the day-to-day support HR provides to the business.
  • Read and follow the UL Code of Conduct and follow all physical and digital security practices.
  • Performs other duties as directed.

Qualifications

  • University Degree (Equivalent to bachelor's degree) or Masters in HR Data and Analytics, Mathematics, Computer Science, Statistics, Data Management, or a related discipline and generally five plus years of experience in data and statistical analysis strongly preferred.
  • Strong in Microsoft Excel and Power BI, data management and data integration skills with an ability to organize, analyze and correlate data information.
  • Familiarity with Oracle / Oracle HR systems.
  • Proficiency with data visualization software such as Azure, Tableau, and D3.js and statistical analysis tools such as R, Python and SPSS.
  • Strong interpersonal skills with the ability to communicate with technical and non-technical stakeholders.
  • Previous experience doing large-scale data analysis is required and proven experience leveraging analytical skills to spot tendencies in batches of data.
  • Ability to organize, analyze and correlate data information.


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