x4 Data Engineers – Fully Remote Opportunity with a Game-Changing HealthTech Startup!

Areti Group | B Corp
Leigh
1 year ago
Applications closed

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SAS Data Engineer

x4Data Engineers – Fully Remote Opportunity with a Game-Changing HealthTech Startup!

Areti Group is thrilled to partner with a HealthTech powerhouse revolutionizing health and social care across the UK! With strategic hubs in Bristol, Dorset, Southampton, and Somerset, this is a unique opportunity to join an innovative company that’s reshaping the industry. This fully remote role offers flexibility, with all travel expenses covered for occasional visits to our client’s offices. We are looking for x4 exceptional Azure Data Engineersto join this high-impact team on a permanent basis—become a pivotal part of the digital transformation that’s driving real change!


Role Overview

As a Data Engineer specialising in Data Pipelining, you will play a pivotal role in designing, developing, and maintaining data movement pipelines using Azure Synapse to facilitate the smooth transfer of data across our internal systems. You will collaborate closely with our already well established team and process to ensure the timely and accurate movement of data to support various business operations and analytical initiatives.


Required Experience:


  • Proven experience as a Data Engineer with a focus on using Azure Synapse or similar technologies.
  • Strong proficiency in SQL and experience with data modelling concepts.
  • Hands-on experience with Azure Synapse, including familiarity with Synapse SQL, Apache Spark pools, and data integration capabilities.
  • Experience with ETL/ELT processes and tools such as Azure Data Factory.
  • Solid understanding of cloud computing principles and experience with Azure services.
  • Excellent analytical and problem-solving skills with a keen attention to detail.
  • Strong communication and collaboration skills with the ability to work effectively in a cross-functional team environment.
  • Experience with Agile development methodologies is a plus.
  • Azure certifications related to data engineering or analytics are desirable.



What We Offer You:


Our client provides an environment where your well-being and growth are as important as your contributions. Enjoy a collaborative and supportive culture along with:


  • Flexible, Fully Remote Working– Monthly on-site visits covered, with travel, food, and accommodation expenses included.
  • Competitive Salary– Up to £70k based on experience.
  • Generous Leave– 25 days paid leave + public holidays.
  • Comprehensive Benefits:
  • Private Medical Insurance
  • Group Life Assurance ️
  • Dental & Optical Coverage
  • Enhanced Maternity Leave
  • Financial Security– Pension Contributions
  • Employee Assistance Programme
  • Birthday Day Off
  • Continuous Learning & Development Opportunities– Because your growth matters.

Ready to make an impact in HealthTech? Join a forward-thinking, supportive company that values innovation, teamwork, and excellence. This is your chance to be part of something extraordinary!

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