AI Consultant - Remote

Oxford
9 months ago
Applications closed

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AI & Data Scientist – Real-World ML in Bristol

Senior Consultant - AI & Data, Financial Services, Data Platforms, Data Engineer, BCM, Edinburgh

Senior Consultant - AI & Data, Financial Services, Data Platforms, Data Engineer, BCM, Edinburgh

Senior Data Engineer & AI Solutions Consultant

Hybrid Data Scientist Consultant — AI & Analytics

Senior Data Engineer & AI Transformation Consultant

A growing Microsoft Partner Consultancy are looking for a passionate AI Consultant join their impressive team. The role is home-based, with some element of travel to client sites when required, and to regular company conferences and events. For this reason, they're able to consider candidates across the UK.

This role sits within their specialist AI Practice - focused on providing cutting-edge solutions for their clients using the latest AI tech including Gen-AI, Machine Learning, Open AI, Co-Pilot etc.

You'll work as part of an Agile team, working directly with a range of clients to understand their business needs, design appropriate AI solutions, and ensure successful deployment and integration.

This will involve designing and developing AI models and algorithms, conducting data analysis and pre-processing to prepare data sets for AI model training, and providing training and support to clients on AI tools and best practices.

This role would be really well-suited to a Data Scientist looking to take their first-step into Consultancy, or an existing Consultant who is ready for the next step in their career - being a Microsoft Partner, they are committed to supporting you through your Microsoft Certifications with a huge emphasis on personal and professional development!

Requirements:

Strong Python scripting skills
Experience delivering Data Science projects
Experience with Gen-AI
Experience with Microsoft data technologies
Experience with Cloud platforms - ideally Azure
Strong communication, stakeholder management and problem-solving skillsBenefits:

Salary of up to £60,000 depending upon experience
Bonus up to 10%
Pension - 5% matched
25 days holiday
Home working allowance
Enhanced parental pay and leave
And much more!

Please Note: This is a permanent role for UK residents only. This role does not offer Sponsorship. You must have the right to work in the UK with no restrictions. Some of our roles may be subject to successful background checks including a DBS and Credit Check.

Tenth Revolution Group / Nigel Frank are the go-to recruiter for Power BI and Azure Data Platform roles in the UK, offering more opportunities across the country than any other. We're the proud sponsor and supporter of SQLBits, and the London Power BI User Group. To find out more and speak confidentially about your job search or hiring needs, please contact me directly at

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