Data Scientist

Talent Hero
Birmingham
7 months ago
Applications closed

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Data Scientist – Remote (UK Only | No Visa Sponsorship)
Work on Real-World Data Projects with US Companies

Talent Hero connects UK-based professionals with remote roles at innovative US tech firms. We’re hiring Data Scientists who are analytical, curious, and skilled at turning complex data into actionable insights.

If you have a strong statistical foundation and enjoy solving business problems with data, this is your chance to work globally — from home.

What You’ll Do:

  • Collect, clean, and analyse data from multiple sources
  • Build predictive models and deploy machine learning algorithms
  • Spot trends, identify insights, and inform strategy
  • Design experiments (A/B tests, hypothesis testing)
  • Communicate findings to technical and non-technical teams
  • Create dashboards and data visualisations
  • Use tools like Python, R, SQL, Pandas, Scikit-learn, Jupyter, Power BI, Tableau

UK applicants only – we cannot offer visa sponsorship.

Apply once – we’ll match you to remote roles aligned with your skills.

Requirements

  • Bachelor’s degree in Data Science, Statistics, Maths, Computer Science or related field
  • 1+ year in a Data Scientist or similar role
  • Strong skills in Python or R, and solid grasp of ML and statistical methods
  • Experience with SQL and relational databases
  • Bonus: Familiarity with AWS, Azure, GCP or working with US-based clients

Benefits

  • 100% remote – UK-based
  • Access to global projects and high-growth US teams
  • Fast, free hiring process
  • One application = multiple opportunities
  • Some roles offer flexibility beyond core US hours

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