Senior Data Scientist

Anson McCade
1 year ago
Applications closed

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Senior Data Scientist

Senior Data Scientist

Senior Data Scientist

Senior Data Scientist

Senior Data Scientist and Machine Learning Researcher

Senior Data Scientist

Data & AI Consultant £75,000 - £85,000London (Hybrid)Currently working with a leading strategy house who solve the most complex challenges in the technology space. Joining their Data and AI practice, their experts work within teams from improvement, advisory and restructuring. Working across multiple industries, you will support their clients across their most complex business challenges using Data and AI technology.We are in search of candidates who have prior top tier management consulting experience as hands-on Senior Data Science professionals.As a Data & AI Consultant you will: - Work in small teams with experienced members, collaborating directly with owners, board members, and senior management.- Deliver quick solutions for urgent issues in critical situations within data and AI.- Optimize business processes and design AI strategies.- Translate complex problems into technology solutions for management.Skills Needed from the ideal Data & AI Consultant:- Data extraction, processing, and analysis.- Experience with cloud frameworks (e.G., Apache Spark, MS Azure).- Proficient in Python, R, SQL; knowledge of Java, C++,Rust, Go, JavaScript is a plus.- Excellent communication skills to engage with CxO stakeholders - At least 4 years of relevant experience within Consulting; strong academic qualifications.Data and AI Consultant package: - £75,000 - £85,000 base- Discretionary bonus- Company pension scheme- Medical careTo hear more about our Data & AI Consultant opportunity, get in touch with Connor Smyth at Anson McCade on .

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