Data Analyst

Snaphunt
3 months ago
Applications closed

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Data Analyst

Data Analyst

Data Analyst

Data Analyst

Data Analyst

Data Analyst

The Offer

  • Join a market leader within Real Estate
  • Opportunity within a company with a solid track record of performance
  • Flexible working options

The Job

Responsibilities:

  • User-friendly deliverables (reports, dashboards, presentations, etc.) that translate detailed data, analysis, and insights into business-appropriate communication and recommendations
  • Consultation to partners on using data and insights to achieve their strategic goals; participation in cross-functional teams to analyze and tackle critical business challenges
  • Quantitative and qualitative data analysis, identification of patterns and trends, and insights that support thoughtful decision-making
  • Forecasts, recommendations and both strategic and tactical plans driven by business data and market knowledge
  • New perspectives, creative problem solving, and inter-departmental connections that improve analytical capabilities and transform us from reactive to proactive


The Profile


Requirements:

  • Have expertise in development and analytical tools such as SQL, SPSS, R, Python, MS Excel, or other tools, as well as visualization tools like PowerBI or Tableau.
  • Have a proven ability to gather information systematically; consider a broad range of issues and factors; grasp complexities and perceive relationships among problems or issues; and use accurate logic in analysis.
  • Feel a strong sense of personal accountability for high quality, value-driven work that supports business outcomes; places the user in the center of decision making; and prioritizes speed, agility and innovation in work.
  • Embrace continuous learning, curiosity, and ambiguity.
  • They will fluidly share findings and new insights with peers through coaching and mentoring.
  • Have progressively more advanced experience in research and data analysis, application of statistical research techniques, or application development.
  • Be responsive to changing business needs, manage and prioritize concurrent assignments, and handle ambiguity with ease.
  • They will have a strong customer orientation and a consistent record of hitting deadlines.

The Employer

Our client is a full-service construction management and general contracting firm dedicated to providing outstanding client services.

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