Data Science Associate

Areti Group | B Corp
London
3 months ago
Applications closed

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Job Title: Data Consultants - Multiple Positions ranging from Junior to Senior Principal
Location: London (Hybrid – Flexible working with client site travel required)
Salary: Competitive, based on experience (from 1 year to Principal level) -Multiple positions required
Leading consultancy partner headquartered in London
Focused on delivering data solutions that drive measurable business impact

Broad role spanning data science, engineering, analytics, and strategy
Design, implement, and optimize end-to-end data solutions
Work on high-impact, dynamic projects with flexibility to innovate

Translate client challenges into actionable data solutions
Develop and deploy scalable data pipelines and architectures
Perform data analysis, modeling, and machine learning tasks
Advise on data governance, compliance, and best practices
Collaborate across multidisciplinary teams to deliver project goals
1+ years’ experience in a data-related role (Analyst, Engineer, Scientist, Consultant, or Specialist)
~ Experience with technologies such as Python, SQL, Spark, Power BI, AWS, Azure, or GCP
~

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