Data Scientist

Career Moves Group
City of London
1 week ago
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Job Title:Data Scientist
Company:Meta
Location:Remote
Pay: £50 p/h PAYE
Job Description:
The Data Scientist will analyse complex, high-dimensional datasets to uncover patterns, generate insights, and develop data-driven solutions that enhance products and services. The role involves applying statistical analysis, machine learning, and advanced modeling techniques to design predictive models, run product experiments, and support data-driven decision-making. The Data Scientist will collaborate with engineers to translate analytical prototypes into scalable product features and provide business intelligence and data visualisation support for dashboards and ad-hoc analyses.


Key Responsibilities:



  • Perform exploratory data analysis on large datasets to identify trends and opportunities.
  • Develop and evaluate predictive models and machine learning algorithms.
  • Design, run, and analyse product experiments and hypothesis tests.
  • Partner with product engineers to deploy scalable data solutions.
  • Create dashboards and visualisations to support business intelligence needs.

Required Skills:



  • Programming in Python and/or R.
  • Experience with big data tools (e.g., Hadoop) or visualization tools (e.g., Tableau).
  • Strong statistical, analytical, and problem-solving skills.
  • Ability to communicate complex insights clearly in writing.

Education:



  • Master’s degree in Computer Science, Data Science, or a related field.


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