Data Analytics Engineer

TEC Partners
London
1 year ago
Applications closed

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Tec Partners have partnered with a specialist Machine Learning & Data consultancy that builds ML and Data products for companies across Europe. It was started by 2 experts in the field; the CTO has a PhD in ML, and he has built an incredible business based on problem-solving, collaboration, and ethics.

They are a small, passionate team of experts looking to grow their team. They're actively looking for a Data Analytics Engineer to join their London-based team.

You'll be working on a high-level project and dealing with large datasets for a business with hundreds of millions in turnover. This is the perfect role if you want to develop your coding skills and have a clear career progression path.

The ideal candidate for the Data Analytics Engineer:

1+ years' experience working as a Data Analyst or equivalent Experience using Tableau or PowerBI Good experience using SQL (Python is a plus but not essential) Pragmatic, problem-solving mindset

This role comes with advanced career and development opportunities from AAA mentors and experts and hybrid working in a beautiful office in London.

If this sounds like you, please apply with your up-to-date CV.

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