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Senior Data Scientist

Information Tech Consultants
Greater London
1 day ago
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Job Description

Location : London (Relocation required - Sponsorship will be provided)

Data Science SME (Subject matter expert)

Experience : 12 to 18 years


Job Requirements:

  • 12 years of experience manipulating data sets and building statistical and machine learning models.
  • Masters or Ph D in Statistics, Mathematics, Computer Science, or another quantitative field

- Fluent English (written/spoken)

  • Experience Developing Machine Learning / Data Science models, from coding to deployment
  • 2+ years of experience in teaching or training.
  • 3+ Years of Hands-on Hybrid Development experience preferred.

Skills

  • Able to train/mentor/coach in coding (mandatory python and SQL, java or C++)
  • Project Management background preferred.
  • Knowledge of the Consulting/Sales structure.
  • Empathy and service attitude
  • Fast-paced
  • Project Management experience
  • Desirable previous international experience (US, Canada, or Europe)
  • Leading consultants to grow and create tangible benefits and assets.


Competencies

Mentor / Develop / Train consultants

Orientation to results

Leadership


Main responsibilities of the position

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