Senior Data Engineer

Plumstead Consulting
Reading
3 days ago
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About the Company

Unlock your potential as a Senior Data Engineer with a leading Award Winning name in the renewable energy sector. This role offers an exceptional chance to elevate your career while contributing to a sustainable future.


About the Role

As a Senior Data Engineer, you will play a pivotal role in maintaining and expanding the Data Warehouse and Data Pipeline, working closely with a dedicated team of Data Engineers and Analysts. Imagine a role where your technical expertise is not just valued but essential.


Responsibilities

  • You will have the autonomy to design, build, and modify data models using dbt Core and VS Code, ensuring that the data infrastructure remains robust and scalable.
  • Your day-to-day responsibilities will include monitoring the Data Stack, identifying and resolving issues, and integrating new data sources to enhance the functionality of the Data Pipeline and Data Warehouse.
  • Managing a small team to deliver key objectives.


Qualifications

  • Strong foundation in SQL, preferably PostgreSQL or Snowflake SQL within dbt.
  • Understanding of Cloud Data Warehouse concepts and design.

Required Skills

  • Familiarity with SOAP and REST APIs, JSON, YAML, and basic Python is essential.
  • Fluency in English is a must, ensuring seamless communication within the team and across the business.
  • Logical approach to problem-solving and the ability to work both independently and collaboratively.
  • Proven track record of supervising a team.
  • Building relationships with colleagues from various departments will be key to your success.
  • A positive attitude and a keen desire to expand your technical knowledge will set you apart.


Preferred Skills

  • Experience with Git/version control, CI/CD using Bitbucket, data modelling, Fivetran, dbt, Snowflake, AWS S3, and Lambda is preferred, it is not a strict requirement.
  • What matters most is your enthusiasm for data engineering and your commitment to contributing to a forward-thinking team.
  • Seize this chance to grow your career in an environment that champions innovation and sustainability.


Equal Opportunity Statement

Be part of a team that is driving change in the renewable energy landscape.

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