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Data Scientist

Hirexa Solutions UK
London
2 weeks ago
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Requirements

We are looking for candidates who have:

  • Proven experience as an AI/ML professional.
  • A strong understanding of Python programming concepts, leading practices, and SQL skills.
  • Experience in any cloud computing environment.
  • Familiarity with Machine Learning Operations (MLOps) methodologies.
  • An eye for detail and strong analytical skills.
  • Excellent problem-solving abilities.
  • Strong communication and presentation skills

Primary Skills :

1. Problem Solving - Defines a problem, generates solutions, and evaluates and identifies the best solution to overcome the problem

2. Artificial intelligence ethics - Demonstrates knowledge and application of moral principles, guidelines and techniques to inform the development and responsible use of artificial intelligence technology

3. Data analysis - Collects, analyses and interprets data to reach conclusions and/or present insights and findings

4. Data wrangling - Cleans, manipulates, and transforms data from one form into another format that is more useful and valuable

5. Statistics - Applies the right statistical methods or formulas to solve problems or analyse a situation

6. Statistical Algorithms - Understands and uses algorithms to gather insights from data

Secondary Skills:

1. Communication - Communicates wit...

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