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Data Quality Analyst - Care Technology

Adecco
London
1 week ago
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Job Advertisement: Data Quality Analyst - Care Technology

Are you passionate about ensuring high-quality data in the care technology sector? Do you thrive in a collaborative environment where your analytical skills can make a real difference? If so, we want to hear from you!

Position: Data Quality Analyst - Care TechnologyContract Type: Temporary (3 months)Hourly Rate: £20.03 - £21.70 PAYE or - £26.53 - £27.50 Umbrella Location: Hybrid (Richmond & Wandsworth)DBS Required: Yes

About the RoleJoin our dedicated Care Technology team and play a pivotal role in transitioning from analogue to digital equipment for residents of Richmond and Wandsworth. As a Data Quality Analyst, you will provide comprehensive data support and quality assurance, ensuring that our datasets reflect the current service usage accurately.

Key Responsibilities

  • Lead and manage complex data quality and cleansing projects that enhance service delivery.
  • Systematically cleanse care technology datasets to maintain accurate records.
  • Collaborate with the Data and Performance Team and various stakeholders to improve data quality for individuals using care technology.
  • analyse and cleanse multiple datasets to identify service users who may no longer require care technology services.

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