Data & Machine Learning Product Lead

VIQU
East London
1 year ago
Applications closed

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Data & Machine Learning Product Lead – London/ Hybrid £90,000 to £100,000

We're partnered with one of the UK's leading brands that are currently hiring for a Data & ML Product Lead. Our client is driven to be the best in the field and outdo with their experience in data and technology. The business has modified the work structure to help the customers, take on new technologies and develop business outclass.

The Data & ML Product Lead will oversee the lifecycle of Data and Machine Learning products, driving the data strategy, development and delivery of the products. The position will benefit from hybrid working of 3 days a week onsite from their London office.

Responsibilities of the Data& Machine Learning Product Lead:

- Drive the Data Product strategy that aligns with the business data strategy and goals.

- Collaborate with stakeholders at different levels to identify opportunities and make sure the product is launched successfully

- Own the full lifecycle of the data products, governance to maintain quality, integrity and consistency of the products

- Track the data product performance to drive continuous improvement

Requirements of the Data & Machine Learning Product Lead:

- 5+ years' experience in Data product management with a background delivering data products focused on Machine Learning

- A background in financial services, insurance, or a related sec...

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