Data Analytics Manager

Sadler Recruitment Ltd
Bolton
1 year ago
Applications closed

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Job Title: Data Analytics Manager

Location: Bolton OR Doncaster (3 days in the office + 2 days working from home)

Job Type: Full-time

Salary: £49,440 per annum

Are you an analytical thinker with experience managing complex data sets and a talent for translating numbers into insights? 

We're looking for aData Analystto work on challenging data projects in the energy sector. You'll play a vital role in evaluating data channels, optimising strategies, and presenting insights to senior leadership.

Key Responsibilities

  • Analyse Complex Data Sets: Explore data from various sources to uncover trends, provide actionable insights, and support strategic decision-making within the energy sector.
  • Channel Assessment & Optimisation: Evaluate and recommend suitable data channels to meet project objectives, identifying efficiencies and optimization opportunities.
  • Data Visualisation & Reporting: Use Power BI to create clear, insightful visualizations and dashboards, allowing stakeholders to track key performance metrics.
  • SQL & Data Extraction: Leverage SQL to query and manage large data sets, ensuring reliable analysis and consistent results.
  • Excel Mastery: Use advanced Excel functions like pivot tables, VLOOKUPs, and complex formulas to conduct detailed data analysis and support day-to-day reporting.
  • Present to Senior Leadership: Prepare and deliver concise presentations to senior leadership, translating complex data into clear, actionable insights.
  • Cross-functional collaboration: Work with teams across engineering, finance, and operations to align on objectives and utilize data to support broader energy strategies.

Skills & Qualifications:

  • Bachelor's degree in Data Science, Statistics, Business, or a related field.
  • Good experience in data analysis, with proficiency in managing and interpreting large, complex data sets.
  • Proficiency in SQL for data extraction and manipulation.
  • Expertise in Power BI to create impactful visualisations and track data metrics.
  • Advanced Excel skills.
  • Strong analytical skills with attention to detail and data accuracy.
  • Excellent communication and presentation skills to effectively convey insights to senior leadership.
  • Ability to adapt and work across various teams and project requirements, with a curiosity to learn about the energy sector.

Why Join Us?

  • Collaborate on challenging marketing campaigns and impactful data projects in the energy sector.
  • Flexible working options.
  • Competitive salary, benefits, and opportunities for professional growth.

For immediate consideration please send your CV in today

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