Data Engineer

Venquis
London
3 months ago
Applications closed

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Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer

Looking for a Data Engineer to join the Data Engineering team.


The team is responsible for ensuring the delivery of accurate, curated data for downstream consumption in a timely manner, and are responsible for extracting data from source solutions and transforming that into a central data repository The role will be working closely with the Data Analytics team, providing assistance where required on producing any required outputs needed by the business.


Perform the day to day running of the ETL processes that feed into the central data repository.


Work with key stakeholders and other teams to gather requirements, identify where the data is located and to then implement the required changes.


Continue to improve the existing processes, including optimization and maintenance improvements.


Diagnose any issues with the data, the processing of that data and any associated code.


Work with other teams as a subject matter expert for the data model and associated lineage.


To ensure that robust data quality checks are embedded in the code to reflect established business processes.


To support the Data Analytics team with data reconciliation issues.


Working with the overall team to assist in migrating to the cloud


Skills

Strong Python and SQL coding skills with a good understanding of SDLC. Knowledge of cloud technologies and how to use them in a data and reporting solution. The ability to analyse, refactor and implement processes (technical/business). Good technical understanding of developing data pipeline solutions abiding to best practice. Good communication skills. Ability to document and accurately capture business requirements, translating that into a Technical Solution Specification document detailing the data engineering solution (the ability to translate business requirements into data requirements). Good understanding of data warehousing concepts. • Good understanding of data modelling techniques. Understanding of business operations and Insurance industry trends • Problem-solving: The ability to identify and analyse complex problems, generate solutions and debug complex code / data packages

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