NLP Data Scientist
City of London, London / £51795 - £69059
£51795 - £69059
City of London, London
NLP Data Scientist
Salary up to €60,000 - €80,000
Join a technology team as an NLP Data Scientist working with world class specialists. Push the boundaries of what can be achieved through Data Science and Machine Learning Engineering, working on interesting projects solving complex problems.
This company are working within the life sciences and pharmaceutical space. You will be developing NLP models across the business and working in a small but collaborative team.
As a Natural Language processing Scientist, you will implement and create Natural Language models that will be used for internal and external consumption. Helping transform the way this company uses technology. Further details of the role are as follows;
- Share knowledge and expertise with team
- Solve complex business problems
- Deploy end to end Machine Learning models
- Use your knowledge of NLP to solver and promote business value
- Design Machine Learning models
- Create Natural Language, processing models
- Experience working with computational linguistics
- Work on challenging projects and come up with suitable outcomes
- Lead projects
YOUR SKILLS AND EXPERIENCE
- A T shaped person who enjoys challenging work
- Master's or PhD in a numeric discipline
- Experience using and deploying ML
- Experience as an NLP engineer
- Passion for deploying ML models
- Understanding of the latest technologies
- Strong Python user
- Someone who can communicate ideas
- Craftsmanship and innovation
- Earning potential up to £60,000
- + More
HOW TO APPLY
Please register your interest by sending your CV Charlotte York via the apply link on this page
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