Data Analyst

Information Tech Consultants
Manchester
3 days ago
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Job Title: Data Scientist/Machine Learning Engineer

Location: UK

Experience: 2–5 years

Education: Master's in Science (IT/Computer Science/Engineer)

Employment Type: Full-Time

UK based candidates only.


Information Tech Consultants Ltd (ITC) is an IT management and consulting firm based in Central London. Information Tech Consultants Ltd (ITC) is an IT management and consulting firm based in Central London. We are responsible for sourcing and hiring field experts for various companies. We primarily work with Software and Cloud Hosted Services organizations as well as Mobile Apps and Service companies.


Required Skills:

  • 2-4 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)
  • Strong hands-on experience on Python, SQL, No SQL.
  • Experience in Developing Machine Learning / Data Science models, from coding to deployment.


Preferred Skills:

  • Hands on experience in coding (mandatory python and SQL or C++).
  • Understanding of Generative AI, Computer Vision cloud technology, NLP, Deep Learning.
  • Familiarity working with large data sets.
  • Project Management background preferred.


Qualifications :

  • Master’s (Required) in Data Science, Mathematics, Statistics, Economics, IT related fields and 2- 4 years of experience in Information Technology.
  • You should be entitled to work in the UK with legal work authorization status.
  • Must be willing to travel within the UK as per project/client requirements.
  • Excellent communication skills and teamwork skills.

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