Wastewater Network Modeller - all grades

Advance TRS
Stoke-on-Trent
2 months ago
Applications closed

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Data Governance Analyst

Job Title: Wastewater Modelling Specialist

Salary: £35,000-£60,000 (dependent on experience)

Location: South East England, near Haywards Heath (hybrid, ideally 2-3 days per week in office, with flexibility for senior/principal-level candidates)

Type: Permanent

About the Role:

This role is an exciting opportunity to work at the intersection of machine learning, data science, and wastewater modelling. You will contribute to groundbreaking projects in optimisation, digital transformation, automation, and real-time modelling, leveraging state-of-the-art tools and methodologies.

About the Client:

Our client is a UK-based team specialising in innovative modelling services that set them apart from other consultants. Their focus includes optimisation, digital transformation, automation, and cutting-edge water quality and real-time modelling techniques. This role offers you a chance to join a collaborative environment with training and mentorship from one of the UK's leading experts in hydraulics and hydraulic modelling.

Key Responsibilities:

  • Develop machine learning, AI, and data analytics solutions to support wastewater modelling.
  • Utilise programming languages such as Ruby, FME, and Python to create robust modelling tools.
  • Work with industry-standard tools like InfoWorks ICM and ArcGIS.
  • Engage in model audits, 2D and water quality modelling, and optimisation projects.
  • Participate in digital transformation initiatives to drive innovation across the industry.

What Our Client is Looking For:

  • Expertise in machine learning, AI, data science, and data analytics.
  • Proficiency in programming languages, particularly Ruby, FME, and Python.
  • Experience in wastewater modelling and familiarity with InfoWorks ICM.
  • A keen interest in innovation, digital transformation, and optimisation.
  • A collaborative and flexible approach to work.

What Our Client Offers:

  • Comprehensive training in key areas, including Optimizer software, ArcGIS, water quality modelling, and US hydrology.
  • Mentorship from one of the UK's leading experts in hydraulics and hydraulic modelling.
  • Company-funded travel opportunities to the USA for collaboration, conferences, and additional training.
  • A chance to work on specialised modelling services, setting you apart in the industry.

Eligibility:

Applicants must be eligible to work in the UK and able to commit to a hybrid working arrangement with 2-3 days per week in the office (flexibility provided for senior/principal-level candidates).

Opportunity for Growth:

This role offers unmatched opportunities to expand your expertise in machine learning, data analytics, and wastewater modelling. With access to world-class training and a focus on innovation, you'll play a pivotal role in shaping the future of the industry.

We are an equal opportunity employer and value diversity in our company. We do not discriminate on the basis of race, religion, colour, national origin, gender, sexual orientation, age, marital status, veteran status, or disability status.


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