Data Analyst

Holborn
3 months ago
Applications closed

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Data Analyst

Data Analyst

Data Analyst

Data Analyst

Data Analyst

Data Analyst

ZTP is rapidly growing and successful energy consultancy and software company, working with nationwide corporate and I&C clients. Our services are centred around our industry leading energy management and purchasing software solutions Trace and Kiveev, which are designed and built-in house. Our consultancy offering includes energy procurement, energy management, and financial services, while our software services provide SaaS solutions to major energy users and competing consultancies. With ambitious growth plans, we are always looking for talented professionals from the energy industry to join our expanding team.
As a Data Analyst, you’ll analyse large energy datasets, uncover trends, and deliver actionable insights that drive smarter energy decisions and help client on their Net Zero journey.
Key Responsibilities
*Analyse and interpret complex energy data to identify trends, inefficiencies, and opportunities.
*Create clear, insightful dashboards and reports using Power BI or Tableau.
*Ensure accuracy and completeness of data through cleaning, validation, and transformation.
*Collaborate with internal teams and clients to define requirements and deliver tailored analytical solutions.
*Provide data-driven recommendations that support operational, financial, and sustainability goals.
*Continuously improve data processes and tools to enhance reporting and efficiency.
Experience / Knowledge
Please note: Only candidates with prior experience in the energy industry will be considered.
Essential
*Proven experience as a Data Analyst.
*Energy industry background (brokerage or consultancy experience preferred).
*Advanced Excel skills (VLOOKUPs, pivot tables, data sorting, conditional formatting).
*Excellent attention to detail, accuracy, and data quality assurance.
*Strong analytical thinking and communication skills — able to turn data into meaningful insights.
*Highly organised, proactive, and comfortable working independently or in a team.
Desirable
*Power BI or Tableau experience.
*Knowledge of Python or SQL for data manipulation and automation.
*Understanding of energy data, consumption patterns, and sustainability metrics.
Key Skills / Competencies
*Curious, analytical, and solutions focused.
*Strong communicator with excellent stakeholder management.
*Collaborative and adaptable in a fast-paced environment.
*Passionate about using data to drive sustainability and performance.
Company Benefits
*Competitive compensation package
*Remote/Hybrid working and flexible working options
*25 days annual leave
*Career development pathways and promotion opportunities
*Pension
*Family Friendly Policies
*Vision and Flu reimbursement
*We Work office membership
*Company and team meetups
*Wellbeing initiatives, recognition schemes, and paid volunteering days
*Learning and Development opportunities
*Travel expenses reimbursement
ZTP continues to grow at pace, making this an excellent opportunity to join us at an exciting stage of our development. If you are ready for a fresh challenge, we’d love to hear from you – apply today

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