Senior Azure Data Engineer - London

London
6 days ago
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Senior Azure data engineer

We are seeking an Azure Data Engineer to join the analytics department within the financial services industry. This role focuses on designing, implementing, and maintaining data solutions using Azure technologies to support business decision-making and insights.

Client Details

Senior Azure data engineer

Our client is a large organisation within the financial services industry, dedicated to providing innovative solutions and leveraging technology to drive business success. They are known for their commitment to excellence and their focus on delivering impactful data-driven strategies.

Description

Senior Azure data engineer

Design and develop data pipelines and workflows using Azure technologies.
Implement and manage data storage solutions, ensuring optimal performance and security.
Collaborate with analytics teams to understand data requirements and deliver solutions accordingly.
Monitor and maintain the performance of Azure based data systems.
Ensure data integrity and accuracy across all platforms.
Provide technical expertise on Azure data engineering best practices.
Optimise data processes for efficiency and scalability.
Troubleshoot and resolve data-related issues promptly.Profile

Senior Azure data engineer

A successful Azure Data Engineer should have:

Proven experience in data engineering within the financial services industry.
Strong expertise in Azure data technologies, including Data Factory, Databricks, and Synapse Analytics.
Proficiency in SQL and other data query languages.
Knowledge of data modelling, ETL processes, and data warehousing concepts.
Experience in working with large datasets and ensuring data quality.
Excellent problem-solving and analytical skills.
A degree in Computer Science, Data Science, or a related field.Job Offer

Senior Azure data engineer

Competitive salary ranging from £80,000 to £95,000 per annum.
Comprehensive benefits package.
Opportunities for professional growth within the financial services industry.
A supportive and innovative work environment.If you are an experienced Senior Azure Data Engineer looking for your next permanent opportunity, we encourage you to apply and take the next step in your career

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