Data Science Practitioner - Glasgow/London

FBI &TMT
London
1 week ago
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Our client is seeking a highly skilled Data Science Practitioner to join the AI & Data team on a contract basis in Glasgow or London. In this role, you will be collaborating on the Glasgow_Bournemouth Delivery Unit project. This is an exciting opportunity to work with a global leader in financial services, delivering innovative AI/ML solutions to various prominent clients.



Key Responsibilities:

  • Formulating, designing, and delivering AI/ML-based decision-making frameworks and models for business outcomes.
  • Measuring and justifying the value of AI/ML-based solutions.
  • Collaborating and managing the team to perform effectively and engaging with multiple teams.
  • Providing solutions to problems for the immediate team and across multiple teams.
  • Developing and integrating innovative AI/ML models that drive business insights and enhance decision-making processes.
  • Conducting thorough evaluations of AI/ML frameworks to ensure they meet business objectives and deliver measurable results.
  • Staying updated with the latest trends and advancements in AI/ML technologies to continuously improve project outcomes.
  • Mentoring and guiding team members in best practices for AI/ML implementation and data analysis.



Job Requirements:

  • Advanced proficiency in Machine Learning and Data Science.
  • Intermediate proficiency in Amazon Sagemaker.
  • Exp...

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