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Senior Data Scientist United Kingdom, London

Dataiku
City of London
3 days ago
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Dataiku is The Universal AI Platform, giving organizations control over their AI talent, processes, and technologies to unleash the creation of analytics, models, and agents. Providing no-, low-, and full-code capabilities, Dataiku meets teams where they are today, allowing them to begin building with AI using their existing skills and knowledge.

The role of a Data Scientist at Dataiku is quite unique. Our Data Scientists not only develop solutions to real-world problems, but also participate in client-facing endeavours throughout the customer journey. This includes supporting their discovery of the platform, helping integrate Dataiku with other tools and technologies, providing user training, and co-developing data science projects from design to deployment.

Key Areas of Responsibility (What You’ll Do)
  • Help users discover and master the Dataiku platform via user training, office hours, and ongoing consultative support
  • Co-develop production-level data science projects with our customers across different industries and use cases
  • Provide strategic input to the customer and account teams that help our customers achieve success
  • Provide data science expertise both to customers and internally to Dataiku’s sales and marketing teams
  • Run demo booth/tech talk duties at company public events (e.g. Everyday AI)
  • Contribute to internal assets (internal best practice or external blog post/project on the public gallery)
Experience (What We’re Looking For)
  • Curiosity and a desire to learn new topics and skills
  • Empathy for others and an eagerness to share your knowledge and expertise with your colleagues, Dataiku’s customers, and the general public
  • The ability to clearly explain complex topics to technical as well as non-technical audiences
  • 2-10 years of experience with Python and SQL
  • 2-10 years of experience with building ML models and using ML tools (e.g., sklearn)
  • Experience with LLM
  • Experience with data visualisation and building web apps with Python frameworks (Dash, Streamlit)

Dataiku is an equal opportunity employer. Our practices are rooted in the idea that everyone should be treated with dignity, decency and fairness. If you need assistance or an accommodation, please contact us at:

Protect yourself from fraudulent recruitment activity. Dataiku will never ask you for payment during the interview or hiring process. We will never ask you to download third-party applications. If you suspect fraudulent activity, please review our page on identifying and reporting fraudulent activity here.


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