Senior Data Scientist

Stepstone UK
London
1 month ago
Applications closed

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Senior Data Scientist

Senior Data Scientist

Senior Data Scientist

Senior Data Scientist

Senior Data Scientist

Senior Data Scientist


Company Description

Who we are

At The Stepstone Group, we have a simple yet very important mission: The right job for everyone. Using our data, platform, and technology, we create opportunities for jobseekers and companies around the world to find a perfect match in fair and equitable way. With over 20 brands across 30+ countries, we strive for fair and unbiased hiring.

Join our team of 3,000+ employees and be part of reshaping the labour market and becoming the world's leading job platform.

Job Description

The jobat a glance

This is an exciting opportunity to help shape the future of work through advanced data science and AI within a globally scaledjobtechorganisation.

As aData Scientist, you will play a key role in advancing core areas of our platform, developing intelligent, data-driven solutions that meaningfullyimpacthow millions of people find jobs and how employers connect with talent. Your work will directly improve user experiences at scale and help drive fairer, more effective outcomes across the labour market.

Youwill build and optimize in-house algorithms, work with the latest NLP and generative AI techniques, and develop intelligent conversational agents. Your work will directly improve how jobseekers and employers find the right opportunities and talent.

Your responsibilities:

  • Partner with Pro...

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