Principal Data Science Consultant

Harvey Nash
London
1 day ago
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Partnered with a Global Specialist Cloud Consultancy working with various household brands who are on the ramp up to upscale their Data Science capabilities and looking to build out top tier resources in this area of speciality in a Senior and Principal capacity.
Role Requirements:

Develop and deploy Machine Learning models on Google Cloud.
Collaborate with various clients to understand their business challenges and design technical solutions utilising Machine Learning models.
Strong understanding of Machine Learning algorithms for supervised and unsupervised learning.
Collaborate across the various client base utilising and developing AI agents, Cloud ML tools, MLOps and Python.

Skills/Experience:

Excellent communication and strong level of consulting/client facing experience.
Comprehensive understanding of Data landscape and proactive nature in staying up to date with latest market trends.
Business focus and outcome oriented.
Capable of working independently and as part of a team setting.

If this role aligns with your career aspirations and you’d like to know more please share your CV and availability for a call to
#J-18808-Ljbffr

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