Data Engineer & Analyst Trainee

Cooper & Hall Limited
Manchester
1 week ago
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A technology training organization is seeking candidates for various data roles including Data Engineer and Data Analyst. Ideal applicants should have a foundational knowledge of Python and a passion for technology. Responsibilities include designing data pipelines and working collaboratively with teams. The company offers development programs, a supportive environment, and various employee benefits such as 20 days annual leave, pension contributions, and opportunities for personal development.
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