Graduate/Junior Data Engineer

Skelmersdale
1 month ago
Applications closed

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Dover Fueling Solutions are looking to recruit a Graduate/Junior Data Engineer to join our growing team on a full time, permanent basis based in Skelmersdale.

The engineering team at Dover Fueling Solutions are responsible for building, improving and maintaining our wetstock management platform. This platform assists fuel retailers around the globe to manage their forecourts and fuel by managing their data.

The Junior Data Engineer will focus on building solutions to business problems through collaboration with domain experts and architects, designing appropriate data ingestion and processing pipelines, deploying and maintaining them for a portfolio of cloud-based solutions. They will also make significant contributions to algorithms and machine learning initiatives.

The successful candidate will:

Have strong problem-solving and analytical skills.

Have strong customer service skills and the ability to work within strict deadlines.

Able to work in a team environment.

Excellent written and verbal skills

Experience using Power BI

Experience using Python and SQL

RDBMS and data modelling knowledge with Oracle or MSSQL/Azure SQL

Experience designing and building scalable, efficient data pipelines to solve business problems.

Experience distributing Big Data processing using one or more of: Apache Spark, Azure Data Lake, Azure Databricks, CosmosDB. MongoDB

Cloud computing experience in MS Azure (preferred) 

Experience with ETL and orchestration tools, such as Azure Synapse, Azure Data Factory

Cloud computing experience in MS Azure

Experience with streaming data technologies, such as Apache Kafka, Spark Streaming, Azure Stream Analytics,

Knowledge of C#/.NET, PL/SQL, T-SQL and

Experience with Python for data modelling

Benefits we offer for the successful Graduate/Junior Data Engineer:

This is an excellent opportunity for a Junior / Mid-Level Data Engineer to join a company that strongly believes in the development of its employees, and you will be rewarded with an attractive benefits package:

Hybrid working environment.

Generous holiday allowance

On-going training

Annual bonus

Private medical insurance

Life assurance

Interested?

If you feel you are the right candidate for the role of Graduate/Junior Data Engineer, please click "Apply" today!

All qualified applicants will receive consideration for employment without discrimination on the basis of race, colour, religion, sex, sexual orientation, gender identity, national origin, protected veteran status, disability, age, genetic information, or any other factors prohibited by law

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