Hydrologist/Senior Environmental Data Scientist

Wallingford
3 weeks ago
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Senior Environmental Data Scientist / Hydrologist

Location: Oxfordshire (hybrid / remote options available)
Salary: £38,000 – £42,000 + Excellent Benefits

We are partnering with a growing environmental and data-led consultancy that is expanding its technical team and seeking an experienced Environmental Data Scientist / Hydrologist. This role sits within a collaborative science and software environment and offers the opportunity to work on nationally significant modelling tools that influence water management and flood-risk decision making across the UK.

The position is well suited to someone with a strong analytical mindset who enjoys combining environmental science, data analysis and software development to deliver real-world impact.

The Opportunity

You will become part of a multidisciplinary team responsible for developing, enhancing and maintaining large-scale hydrological modelling systems. These platforms are used by regulators, practitioners and researchers to better understand river systems, flood behaviour and long-term water availability.

A key element of the role will involve improving an established water-resources modelling framework, alongside contributing to the ongoing evolution of national flood-risk estimation tools. There is also scope to explore and embed machine learning techniques within traditional hydrological methods to extend capability and performance.

Key Responsibilities

  • Develop, test and improve hydrological models used at national scale

  • Contribute to the advancement of flood-risk and water-resource assessment tools

  • Support software testing, validation and usability improvements

  • Collaborate with regulators, researchers and end users to ensure outputs remain accurate and compliant

  • Contribute to applied research and convert findings into practical tools and methodologies

    About You

  • Degree-qualified (2:1 or above) in a numerate or environmental discipline such as hydrology, earth sciences, environmental science or civil engineering

  • Strong programming experience in Python and/or R

  • Practical experience applying machine learning techniques to environmental, spatial or time-series data

    In your initial 12 months, you can expect to:

  • Develop a strong understanding of the organisation’s modelling tools and software platforms

  • Build and deploy Python-based modules addressing real hydrological challenges

  • Collaborate with academic partners and national stakeholders

  • Produce high-quality technical documentation and reports

  • Begin working towards professional accreditation (e.g. CIWEM or equivalent)

    As the role develops, you’ll have opportunities to:

  • Influence long-term technical and product strategy

  • Identify new modelling approaches, tools or service offerings

  • Lead components of research and development initiatives

  • Support proposal development and client-facing work

    Benefits & Working Environment

  • Employee-owned business model with tax-efficient profit-share bonuses

  • Additional performance-related bonus opportunities

  • Transparent salary bands and clear progression routes

  • Share-option opportunities at senior levels (subject to tenure)

  • Generous annual leave allowance (40+ days including buy/sell options)

  • Pension scheme with employer contributions starting at 5% and increasing with service

  • Health cash plan including virtual GP access and wellbeing support

  • Cycle-to-work scheme

  • Paid volunteering day focused on environmental or community initiatives

  • Structured performance reviews and personalised development plans

  • Dedicated annual training allowance and funded professional memberships

  • Regular team events, social activities and knowledge-sharing sessions

    Interested in learning more?
    For a confidential discussion about this opportunity, apply now

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