Data Scientist

Egregious
London
3 days ago
Applications closed

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Company Description

The rise of AI has transformed the information landscape; online disinformation campaigns and manipulated narratives - once rare or irrelevant - are now everywhere. The internet is at risk of becoming a dead zone filled with GenAI ‘slopaganda’.


Superhuman AI makes it increasingly difficult for humans to detect bots at all, so the team at Egregious have designed advanced algorithms to protect the internet from these novel threats. We're looking for another Data Scientist to join our extraordinary team. Someone who thinks the internet is worth defending, and who is determined to have an outsized impact on the future of the web.


Role Description

This is a full-time on-site role for a Data Scientist at Egregious' office in London. As a Data Scientist, you will be responsible for data processing, analysis, applying statistical methods, data visualisation, and utilising data analytics techniques including NLP and ML to support decision-making. You will collaborate with cross-functional teams to identify trends, patterns, and insights from large, complex datasets.


Requirements

  • Fluent Python, Pandas, Numpy, Matplotlib & Scikit-Learn
  • 5+ consecutive years living in the UK
  • Bachelor's or above in a STEM field (e.g., Maths, Physics, Data Science, Statistics, Computer Science)
  • Ability to work effectively in a team environment


Desired Skills

  • Selenium, BeautifulSoup, Scrapy or similar
  • Tensorflow, PyTorch or Keras
  • Git, Docker, Kubernetes and Azure/AWS/GCloud
  • PostgreSQL, MySQL, ElasticSearch, MongoDB or similar
  • Strong problem-solving and critical thinking skills
  • Excellent communication and presentation skills


This is an onsite role. Graduate and junior applicants welcome !

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