Data Engineer

Galway
2 weeks ago
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Galway Location

€55k - €60k + 12% Bonus + Health + Pension

Large finance company

Our client a large finance company is seeking a Data Engineer to support the Asset Management Strategic teams. This hands-on role involves understanding the requirements, contributing to the development of specific product features, provisioning datasets, database development in Oracle, ETL development, applying best engineering practices, testing, deployment, and providing L3 support.

The Expertise We’re Looking For:

Degree or equivalent in Computer Science, Engineering, or related discipline

Minimum of 2 years of experience in Oracle SQL & PL/SQL

Some experience in data analysis

Experience in SQL and PL/SQL performance tuning

Exposure to Agile development practices

The Skills You Bring:

Familiarity with logical data modeling and relational database design

Experience with data movement and ETL (preferably Informatica)

Knowledge of native AWS services, Data APIs, Snowflake, and Python

Unix scripting and AutoSys skills are a plus

Data Warehousing experience is advantageous

Oracle APEX knowledge is a plus

Experience with a source control system

Ability to work with project teams across multiple geographic locations

Exposure to financial and investment domains is beneficial

The Value You Deliver:

Contribute to the delivery of high-quality, timely, cost-effective, and maintainable software solutions in an agile environment to meet both functional and non-functional business requirements

Help to adopt and comply with good engineering practices such as test-driven development, code and design reviews, CI/CD, and Oracle xplans

Collaborate as part of a team to deliver complex technical features

Communicate effectively in a team-oriented environment

Demonstrate a positive, collaborative attitude while delivering independently

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