Trainee Data Analyst / Cloud Consultant

The AI Core
Dallinghoo
7 months ago
Applications closed

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Artificial Intelligence Trainee (Career Accelerator with Employment Guarantee)

Patent Attorney, AI and Machine Learning - UK based

Job Title: Trainee Data / Cloud Consultant Location: Norfolk & Suffolk Average salary: £30,000 - £35,000 per year Job Types: Training Programme -> Full-time, Part-time, Internship Programme Overview: Our Trainee Consultant programme is a fully funded, free training programme, designed to equip individuals with lifelong skills. Candidates who demonstrate exceptional performance during the training will be considered for a full-time position as a Data /Cloud Consultant upon completion. AiCore is a specialist Ai & Data career accelerator. Our mission is to guide every individual to excel in the careers of the future by delivering the most industry-informed, hands-on education in Ai & Data. You will gain certifications in each module as you go and will build industry-grade data products. By the end of this programme, you will work towards earning either the: Microsoft Power Bi Data Analyst Associate (PL-300) Databricks Certified Data Engineer Associate certification Microsoft Azure Fundamentals (AZ-900) certification. Important information: You must be based in the Norfolk & Suffolk and have the right to work You have a degree and final grade of 2:2 and above. You can commit 20 hour per week to learning for 16 weeks Our best candidates: Have strong analytical and problem-solving skills. Are self-motivated and curious have the ability to work under pressure; Learning as they go. Have the ability to work well in a team Please click the APPLY button and to submit your CV. Candidates with experience or relevant job titles of; Graduate, Graduate Training, Tech Scheme, Technology Training, Graduate Opportunities, Artificial intelligence, Grad Programme, Machine learning, Data Science, Data Engineering, MLOps, Python, Interns and Grads will also be considered for this role

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