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Data Science Consultant

Consultancy.uk
City of London
1 day ago
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Overview

Data Science Consultant at Consultancy.uk, Capgemini Invent. Location: Glasgow, Manchester, London. We blend strategic, creative and scientific capabilities to deliver cutting-edge solutions for client challenges, informed and validated by science and data, and underpinned by technology with purpose.

In a world of globalisation and constant innovation, organisations are creating, consuming, and transforming data. We work with clients to extract and leverage key insights driven by Data Science and Analytics. You will partner with clients to deliver outcomes through cutting-edge data science methods.

Your Role

You will play a key role in:

  • Supporting the delivery of AI, Data Science and Analytics projects and ensuring client expectations are met at all stages.
  • Inspiring clients on exploiting Gen AI, data science and analytics through demonstrations.
  • Developing and deploying new skills in AI, Data Science and Analytics with support from colleagues, ensuring current methods are used where appropriate.
  • Delivering work in a structured manner, balancing creativity and practicality to meet client standards within agreed timescales.
  • Working effectively in a team, supporting peers to deliver at pace and meet high internal standards.
  • Contributing to business and personal growth through activities in the following categories: Business Development, Internal Contribution, and Learning & Development.
Responsibilities by Category
  • Business Development: Contributing to proposals, RFPs, bids, proposition development, client pitch contribution, and client hosting at events.
  • Internal contribution: Campaign development, internal think-tanks, whitepapers, practice development (operations, recruitment, team events & activities), offering development.
  • Learning & development: Training to support career development and skills demand, certifications, etc.
What You'll Love About Working Here

Data Science Consulting brings an inventive quantitative approach to client data challenges, delivering intelligent data products and solutions through rapid innovation leveraging AI. We focus on three areas of the data science lifecycle: exploring AI opportunities, accelerating impact with AI prototypes, and scaling AI with responsible design and scalable AI/ML Ops architectures.

We have been recognised as a Glassdoor Best Places to Work UK for five consecutive years. For more, visit our Glassdoor page.

Need To Know

We prioritise inclusion and flexible working. Our environment supports hybrid working and flexible arrangements across the UK. Employee wellbeing is important, with Mental Health Champions and wellbeing apps like Thrive and Peppy.

We’re focused on reducing our carbon footprint and have been named one of the world’s most ethical companies by the Ethisphere Institute for the 10th year. Roles may require time away from home to accommodate client locations.

About Capgemini:

Capgemini is a global technology transformation partner with 350,000 team members across 50+ countries. It focuses on AI, cloud and data, delivering end-to-end services from strategy to engineering, with revenues of €22.1 billion in 2024.


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