Senior AI Data Scientist

Investigo
London
3 months ago
Applications closed

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- Security Cleared Senior AI Data Scientist

- 1-2 days onsite per week in London / Cardiff / Glasgow

- Security Clearance Required

- £700 - £750 per day inside IR35

Our client a public sector regulator are looking for a Senior AI Data Scientist to join on a contract bases. You will design, develop, test, and deploy data science models to answer strategic business questions and turn data into actionable insights for the organisation.

You will be responsible for developing advanced analytics products using Microsoft Azure ML Studio, Python, and Power BI. You will be involved in business conversations to understand requirements, analyse datasets, estimate and productionise machine learning models, and communicate insights to the business using dashboards and storytelling.

Key Responsibilities

To support the team deliverables, that utilise your expertise to ensure successful outcomes across team members and collaborating teams

* Understand strategic business initiatives and analytical questions to answer.

* Design, develop, test, and deploy data science workflows using Microsoft Azure ML Studio with a Python data science stack.

* Ensure high-quality delivery of accurate data science models, and review that proposed solutions meet security, compliance, and governance requirements.

* Monitor model performance, identify drift and implement model retraining when ap...

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