Data Scientist

R3vamp Limited
Reading
1 year ago
Applications closed

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Data Scientist

Data Scientist

Data Scientist

Data Scientist

Data Scientist

Data Scientist - Measurement Specialist

Location: Reading, UK

Salary: DOE plus benefits

Job type: Full-time

Reporting to: Head of Insight and Innovation

About Us

Since 2005, we have been enabling organisations to improve their operational efficiency by helping managers and teams deliver their best possible performance.

Providing cloud-based software and services to meet the increasing market demand for back office workforce optimisation.

Workware+, our cloud-based platform, is purpose-built for the back office to quantify work and time, manage capacity, and measure productivity for people and robots. It enables capacity to be optimised, reducing costs and improving service delivery across diverse and complex back office operations.

Our method enables teams to collaborate and sustain higher performance through a consistent management framework. Better communication and improved control results in increased staff engagement and well-being.

We operate across the globe from offices in the UK, Australia, India, South Africa and North America, supporting back office and shared service operations in financial services, shared service centres, government organisations and Business Process Outsourcers (BPOs).

The Role

We are looking for a Data Scientist to work within our newly created “Insights and ...

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