Remote Forward-Deployed Data Scientist

The Rundown AI, Inc.
Manchester
3 weeks ago
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A leading tech firm in Manchester is looking for a Forward Deployed Scientist to partner with clients on AI solutions. This role involves deploying and customizing AI products, engaging with stakeholders, and leveraging machine learning and data science to solve complex business challenges. Strong programming skills, excellent communication ability, and a passion for innovative applications are essential. The company values diversity and offers flexible working arrangements.
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