Senior Data Scientist (Recommender Systems)

JR United Kingdom
London
7 months ago
Applications closed

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Senior Data Scientist (Recommender Systems), London

Client:Xcede

Location:London, United Kingdom

Job Category:Other

EU work permit required:Yes

Job Views:

4

Posted:

28.04.2025

Expiry Date:

12.06.2025

Job Description:

Senior Data Scientist - Recommendation Systems

London, 3 days in the office per week

Xcede is partnering with a dynamic scale-up. As they operate on a need-to-know basis, please contact us to learn more about this opportunity!

Responsibilities

  • Build the Recommender System that powers the company's core platform.
  • Contribute to defining the company's Product strategy by creating impactful tools for customers/members.
  • Mentor junior engineering and data science team members.

Requirements

  • Strong academic background in Statistics, Computer Science, or related fields.
  • Experience in developing and deploying recommendation engines in a commercial setting.
  • Excellent skills in Machine Learning and Deep Learning.
  • Experience working and deploying at scale.
  • Knowledge of Graphs and entity linking.

If you're interested or want to learn more, please apply here or contact us via [emailprotected]. Feel free to include your CV for review.


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