Wastewater Solutions Data Analyst

Southern Water
Brighton
3 weeks ago
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Wastewater Solutions Data Analyst

Southern Water – Falmer (Sussex) – Permanent – 37 hours – Salary: From £45,000 depending on skills and experience – Closing Date: 2026-01-22


About the Role

We’re looking for a Wastewater Solutions Data Analyst to join our growing Operational Planning and Improvement Team to work alongside our data and insight team, helping to protect the environment and enhance the performance of our wastewater treatment systems.


What You Will Be Responsible For

  • Develop dashboards, models, and reports that track treatment performance, network risk, and asset health.
  • Apply predictive analytics and simulation to forecast failures, optimise maintenance, and reduce pollution risk.
  • Collaborate with engineers, process scientists, and data teams to integrate insights into operational decision‑making.
  • Support digital transformation by embedding machine learning and automation into wastewater performance monitoring.
  • Drive continuous improvement in data quality, model accuracy, and environmental outcomes.

Essential Requirements

  • Strong experience in data analysis, BI, or operational insight.
  • Proficiency in Python, SQL, and analytics tools such as Power BI, Alteryx, or Databricks.
  • Ability to interpret and visualise complex operational or environmental datasets.
  • Strong problem‑solving skills to support solution identification and development.
  • Excellent communication skills – translating data into clear actions and decisions.
  • A genuine interest in sustainability, water, or environmental protection.

Desirable

  • Knowledge of machine learning, simulation, or digital twin techniques.
  • Experience with SCADA, telemetry, or wastewater process data.
  • Familiarity with wastewater treatment operations or utility environments.

Diversity and Inclusion

We welcome applicants from all backgrounds, identities, and experiences. We do not discriminate based on race, ethnicity, gender, sexual orientation, age, disability, religion, or any other protected characteristic. If you need reasonable adjustments during the recruitment process, please let us know.


Company Overview

Southern Water is at the forefront of transforming Britain’s water industry, investing significantly to enhance resilience, sustainability, and service excellence. With £7.8bn planned investment for 2025‑30, this is an unparalleled opportunity to join a business committed to delivering a generational shift in the way water services are managed.


Mission Statement

Our mission is to protect and enhance life through water—and we need passionate people to help us achieve it. If you’re inspired by our purpose and believe you can contribute, apply today. You don’t need to meet every criterion; what matters most is your drive to make a difference.


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