Data Science Lead

ZENOVO LTD
Cardiff
10 months ago
Applications closed

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We are seeking a Data Science Team Lead to join a client in Cardiff, working on-site on an ad-hoc basis. Leading a growing team of Data Scientists, Data Engineers & Machine Learning Engineers, you will be at the forefront of creating and working on next-generation technologies and systems that are recognised worldwide.

Key Responsibilities:

- Oversee data science and machine learning projects from research phase, through to assessment and then production.

- Lead the design & development of Machine Learning Models & Datasets

- Work closely with Product Management Team to define a Data Science Roadmap

- Develop processes, best practices, and reporting mechanisms to effectively communicate the project status of the data science team

- Suggest innovative data science and machine learning solutions to support both new and existing systems/solutions

- Research and stay up to date with latest trends and technologies with AI, Data Science & Machine Learning.

- Act as the expert in data science and machine learning to support strategic product decisions and assess customer inquiries.

Key Experience:

- Previously led and developed a team of Data Scientists & Engineers as well as Machine Learning Engineers

- Proven ability to leverage analytical expertise and creative problem-solving skills to deliver projects efficiently and effect...

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