Security-Cleared Data Science Lead

BT Group
Cheltenham
3 days ago
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A leading telecommunications and security firm in Cheltenham seeks a Data Science Specialist to lead and develop an agile team of data scientists. The role focuses on maturing the data science capability and delivering innovative solutions for internal and customer needs. Responsibilities include coordinating custom data models, mentoring professionals, and identifying high-impact opportunities. With a commitment to security and professional growth, this role offers competitive salary and extensive benefits.
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