Data Specialist

Bloomsbury
1 year ago
Applications closed

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Our client, pioneers in workplace experience innovation, are seeking a talented Data Specialist to join their mission of creating outstanding user experiences in modern workplaces.

With roots in the world's foremost workplace experience assessment tool, they've been at the forefront of workplace analytics since 2010. Now, they're expanding their horizons and need your expertise to uncover the critical moments that transform workplaces.

What you'll do:

  • Analyze complex datasets to identify key factors influencing workplace experiences

  • Develop predictive models to forecast trends in employee satisfaction and productivity

  • Create compelling data visualizations that tell the story of workplace dynamics

  • Collaborate with cross-functional teams to translate data insights into actionable strategies

  • Design and implement new diagnostic techniques to assess workplace effectiveness

    Your toolkit will include:

  • Advanced statistical analysis and machine learning techniques

  • Data visualization tools (e.g., Tableau, Power BI)

  • Programming languages like Python or R for data manipulation and analysis

  • Experience with large-scale survey data and sentiment analysis

  • Familiarity with workplace metrics and KPIs

    This role offers the chance to directly impact how leading organizations design and operate their workspaces. You'll be the bridge between raw data and transformative insights, helping to create environments where employees truly want to be.

    They're looking for a data enthusiast who's passionate about improving people's daily work lives. Your analytical skills will make all the difference in workplace design and operation.

    If you're ready to turn data into outstanding workplace experiences and be part of a team that's shaping the future of work, we want to hear from you

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