IT Data Engineer

Chandler's Ford
1 week ago
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Job Title: IT Data Engineer

Location: Southampton, Hampshire

Salary: £40,000 - £50,000

Are you an experienced IT Data Engineer with experience in the professional services industry? If so, we may just have the perfect role for you!

Role Overview:

Based in Southampton, our client is a leading Law Firm looking to hire an IT Data Engineer to help aid their expansion plans. Your role will be structured around project and business support tasks, and feedback will be used to drive innovation and business growth. Although the role is primarily an IT Data Engineer, you will also need to be able to display BI Developer and strong Analytical skills and play a crucial role in designing, building, and maintaining our data pipelines using Microsoft Azure tools and platforms, as well as presenting information to the end user.

Your responsibilities:

Work with Microsoft Azure Technologies (e.g., Data Factory, Databricks, Synapse) to orchestrate data loading and workflows and manage data pipelines.

Maintain, support, and build data warehouses using Azure SQL Technologies

Collaborate with analysts, and business stakeholders to understand data requirements and translate them into technical solutions.

Developing and implementing data validation and reconciliation processes to ensure data quality and consistency across the data platforms.

Troubleshooting and resolving issues related to data transformation, data loading, and data quality, while proactively identifying opportunities for process optimisation and performance tuning.

Contribute to the development, support and maintenance of reports and dashboards using Power BI.

Troubleshoot and resolve data-related issues and provide support for data-related projects.

Innovate on existing solutions and look to help maximise efficiency in the platform. 

The ideal candidate:

Good understanding of SQL and relational databases. These are the key assets within our organisation.

Familiarity with Microsoft Azure services (e.g., Azure SQL, Azure Synapse, Azure Databrick Understanding of data warehousing concepts and data architecture.

Familiarity with any programming or scripting language (e.g., Python, R, JavaScript).

Strong analytical and problem-solving skills.

Excellent communication and teamwork abilities.

Eagerness to learn and adapt to new technologies and methodologies

What’s in it for you?

26 days' holiday + buy up to a further 5 days

A day off for your birthday

Life assurance

Employee assistance programme

Enhanced maternity, adoption and paternity pay

Private medical insurance

Healthcare cash plan

Annual discretionary bonus scheme

Employee retail discounts

If you would like to discuss this opportunity in more detail, please reach out to the team at Liberty Recruitment Group

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