Senior Sustainability & Commercial Data Analyst

Exeter
1 year ago
Applications closed

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Leading Renewable Energy Provider require a highly motivated and detail-oriented Senior Sustainability & Commercial Data Analyst to join their team in the energy sector. The successful candidate will play a crucial role in supporting their sustainability initiatives and Commercial reporting by managing and analysing data related to Regulatory and weekly KPI reporting.

Client Details

Leading Renewable Energy Provider

Description

Leading Renewable Energy Provider require a highly motivated and detail-oriented Senior Sustainability & Commercial Data Analyst to join their team in the energy sector. The successful candidate will play a crucial role in supporting their sustainability initiatives and Commercial reporting by managing and analysing data related to Regulatory and weekly KPI reporting. This position requires a strong analytical mindset, proficiency in data management tools, and a passion for sustainability.

Key Responsibilities:

Data Collection and Management: Gather, clean, and maintain sustainability data from various sources. Ensure data accuracy and integrity for Regulatory reporting and internal KPI tracking.
Regulatory Reporting: Prepare and submit regular reports to the Regulator, ensuring compliance with regulatory requirements. Monitor changes in regulations and update reporting processes accordingly.
KPI Reporting: Develop and maintain weekly KPI dashboards to track sustainability performance. Analyse trends and provide insights to support decision-making.
Data Analysis: Perform detailed data analysis to identify opportunities for improving sustainability performance. Generate reports and visualizations in Power BI to communicate findings to stakeholders.
Collaboration: Work closely with cross-functional teams to gather data and implement sustainability initiatives. Support the Head of Finance & Sustainability in developing and executing sustainability strategies.

Key Skills & Experience:

Bachelor's degree in Sustainability, Environmental Science, Data Science, or a related field.
Proven experience in data analysis, working with complex data from a variety of sources
Experience with data visualization tools, ideally Power BI or similar
Familiarity with regulatory reporting requirements and sustainability metrics (desirable but not essential)
Proficiency in data analysis tools (e.g., Excel, SQL, Python, R).
Strong analytical and problem-solving skills.
Excellent communication and presentation skills.
Ability to work independently and as part of a team.

Profile

Bachelor's degree in Sustainability, Environmental Science, Data Science, or a related field.
Proven experience in data analysis, working with complex data from a variety of sources
Experience with data visualization tools, ideally Power BI or similar
Familiarity with regulatory reporting requirements and sustainability metrics (desirable but not essential)
Proficiency in data analysis tools (e.g., Excel, SQL, Python, R).
Strong analytical and problem-solving skills.
Excellent communication and presentation skills.
Ability to work independently and as part of a team.Job Offer

Opportunity to deliver enhanced analytics capability

Opportunity to join a rapidly expanding Renewable Energy company

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