Director Data Engineering

Charles River Laboratories
Tranent
2 months ago
Applications closed

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Job Description

At Charles River, we are passionate about improving the quality of people’s lives. When you join our global family, you will help create healthier lives for millions of patients and their families.

Charles River employees are innovative thinkers, who are dedicated to continuous learning and improvement. We will empower you with the resources you need to grow and develop in your career.

As a Charles River employee, you will be part of an industry-leading, customer-focused company at the forefront of drug development. Your skills will play a key role in bringing life-saving therapies to market faster through simpler, quicker, and more digitalized processes. Whether you are in lab operations, finance, IT, sales, or another area, when you work at Charles River, you will be the difference every day for patients across the globe.

Job Summary

Do you have expertise in, and a passion for Data Engineering?

Would you like to be a part of an innovative digital movement, with the chance to build and implement strategies?

Have you got the desire to improve health and lives?

Charles River Laboratories are excited to be recruiting for a Director of Data Engineering to be part of the Enterprise Data Analytics team. Working remotely, you’ll have a team of 5-6 direct reports and will app...

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