Staff Data Scientist

Harnham
Manchester
1 year ago
Applications closed

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We are working with a large software development company who are looking to add a Staff Data Scientist to their team to mentor a small team of Data Scientists and Data Analysts. The company are focused on providing quality behavioural data to global research companies. They have recently had a huge push towards AI and want AI to be the forefront of the company.

Role:

  • Lead the development of data models and algorithms
  • Work closely with stakeholders and business leaders to influence business decisions
  • Build, Develop and Deployment of ML models
  • Mentoring a team of data scientists


Desired Skills and Experience

Data Science, Machine Learning, Research, Tech Lead

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