Data Engineer

Global Canopy
Oxford
1 week ago
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Global Canopy is a data-driven not for profit that targets the market forces destroying nature. We do this by improving transparency and accountability. We provide innovative open-access data, clear metrics, and actionable insights to leading companies, financial institutions, governments and campaigning organisations worldwide. 

Corporate Performance:A growing number of companies and financial institutions are seeking to mitigate their impacts on nature. But many have made commitments that are not being met, and others are failing to take any action at all. Through our Corporate Performance work and Forest 500 project, we assess the policies and performance of influential companies and financial institutions. Our newly launched Deforestation Action Tracker monitors financial institutions with significant climate commitments to track their action on deforestation and associated human rights abuses.

We also support financial institutions and investors by providing a suite of guidance including our Deforestation-free finance Roadmap, Pensions Guidance and our Deforestation-free investment mandate. And we support the finance sector, policy makers and other stakeholders by providing market-leading data on deforestation and ESG metrics through our Forest IQ project. 

Overview of the role

Global Canopy is seeking a hands-on Data Engineer to help modernise and automate our data platform as we scale. As well as performing data uploads, data cleaning and other routine tasks using existing methods, you will suggest and implement improvements to make these tasks more straightforward and robust. You will be well versed in best practices for data engineering and will be comfortable following industry-standard development processes.

Our data is complex and text-heavy, with both internal and third-party data sources. We are aiming to reduce the number of manual interventions required in its processing and make our systems more reliable and efficient. Tasks you will be involved with include:

  • Building data pipelines using appropriate tooling.
  • Adding new and altering existing cloud data infrastructure.
  • Creating automated CI/CD pipelines.
  • Fixing issues found in the data, and implementing checks to ensure they don’t recur.

Requirements

To be successful in this role,these are the things that will matter the most: 

  • Experience building robust ETL pipelines.
  • Experience working with common cloud data engineering tools.
  • Strong SQL and python skills.

Essential behavioural competencies: 

  • Engaging and developing good working relationships with multiple stakeholders.
  • Attention to detail and quality.
  • A problem-solving approach and ability to identify opportunities to improve data systems.
  • Good organisational skills and ability to manage a varied workload.

Preferred tech stack:

  • SQL (ideally Postgres)
  • Python (including pandas)
  • R
  • Terraform for infrastructure as code
  • Git for source control
  • GitHub actions for CI/CD
  • Cloud infrastructure (ideally AWS)
  • Airflow or other pipeline orchestration tool
  • dbt or other transformation tool

At Global Canopy, we value diversity and inclusion. You can read our diversity statement on ourwebsite. We encourage applications from all backgrounds and are committed to having a team with a diverse set of skills, experiences and abilities. We are committed to reducing systemic barriers in our recruitment processes. 

Global Canopy works on issues of tropical deforestation. We are particularly interested in strengthening our team to include those with a background from forest regions such as Latin America and South East Asia. We welcome applications from people from these regions.

Global Canopy is an inclusive employer and accommodations will be made to allow anyone who requires additional support to apply for this role. Please get in touch with us if you require any additional support.

To find out more,download the recruitment packor visit our website. 

We aim to maintain an anonymous shortlisting process, please do NOT include your name in the cover letter you submit with your application.

Benefits

Salary

£45,000 full time equivalent.

This role sits within Band D on Global Canopy’s remuneration framework.

Nature of contract

Full time. Fixed term for 18-24 months. We are a flexible employer and welcome candidates wishing to work flexibly.

Base

Our office is in Oxford, with flexible home-working arrangements in place.

Holidays

36 days (including bank/public holidays) for discretionary use across the annual leave year. Option to purchase up to an additional 5 days or equivalent of one week’s leave.

Pension

Employer pension contribution of 7%.

Healthcare cashback plan

Covering dental fees, eye-care, wellbeing, physiotherapy, chiropody and much more – for you and any children. 

Group Life Assurance 

Paying a lump sum of 3 times annual salary

Group Income Protection

Paying 75% of annual salary for up to 2 years (for long term sickness).

Employee Assistance Programme

Which provides free, confidential advice on personal and legal matters.

Other

Huge range of discounts and cashback deals at gyms, restaurants, holidays, and much more.

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