Data Science Engineer

TieTalent
London
1 month ago
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Overview

We are seeking a skilled Data Science Engineer with a strong background in data science and experience in developing AI solutions. While a background in life sciences or clinical knowledge is preferred, it is not mandatory. This is an exciting opportunity to work on cutting-edge projects, leveraging your expertise in LLMs (Large Language Models) and AI technologies.


Responsibilities

  • Develop and implement AI-driven solutions for complex data science challenges.
  • Work with Large Language Models (LLMs) to create and optimize intelligent systems.
  • Collaborate with cross-functional teams to ensure solutions meet project requirements.
  • Contribute to projects in the pharma/life sciences domain (if applicable).

Qualifications

  • Minimum 5 years of experience in AI solution development.
  • Hands-on experience with Large Language Models (LLMs).
  • Proven track record as a Data Science Developer/Engineer

Senioriy level

  • Mid-Senior level

Employment type

  • Full-time

Job function

  • Information Technology

Industries

  • Technology, Information and Internet

EEO statement and other relevant legal disclosures are retained as applicable.


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