Data Scientist

Entasis Partners
Birmingham
1 week ago
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Data Scientist (Mid Level)


Are you ready to make a meaningful impact in the mobile network industry?


We are looking for a talented Data Scientist to join a dynamic and innovative team, contributing to mobile network data analysis innovation while driving sustainability efforts. This fully remote role offers the chance to join a growing data analytics team within an ambitious and market-leading organisation.


Your Responsibilities

  • Apply data science and machine learning techniques to time-series data, delivering impactful insights for clients.
  • Collaborate with business analysts and software engineers to create cutting-edge solutions to industry challenges.
  • Design algorithms and experiments to support product development and enhance business intelligence.
  • Process, clean and verify data integrity while automating event and anomaly detection models.
  • Stay informed on technological advancements, proactively implementing new techniques to boost analytics capabilities.


About You

  • At least 2 years’ experience in data science or analytics roles.
  • Proficient in Python, SQL and data science tools.
  • Comfortable working with time-series data and applying machine learning techniques.
  • Strong statistics background and problem-solving abilities.
  • Independent and self-motivated with excellent communication and collaboration skills.
  • Telecom experience isn’t necessary - just bring your enthusiasm to learn and innovate.


Be part of a collaborative remote-working team with a global impact. You'll benefit from:

  • Flexible work arrangements, with regular in-person team meetups in London.
  • Generous benefits package including holiday allowance, pension contributions, equity options, and a budget for personal development.
  • Opportunities to work on exciting industry initiatives like carbon reduction and rural expansion.
  • Support for continuous learning and professional growth tailored to your interests.


Ready to apply?


If this role sounds like the perfect fit for your skills and ambitions, we'd love to hear from you. Apply now and be part of an innovative team transforming their sector!

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