NLP & ML Data Scientist
Leiden, South Holland / €80000 - €90000
€80000 - €90000
Leiden, South Holland
NLP & ML Data Scientist
Up to €90,000
This company is transforming the pharmaceutical industry by using AI solutions to support the healthcare ecosystem. They are the leaders in AI analytics for life sciences and pride themselves in giving their employees creative freedom in order to do their work and take pride in what they are doing. This company uses a suite of products that have been built in partnership with top life science companies- all with a focus on empowering the people to take action.
The company is seeking a Data Scientist with a strong background in NLP to develop solutions based on the company's ground-breaking technologies. You will play a crucial role in designing and building solutions using the leading AI engine for healthcare. You will be part of a close team who have extensive experience in implementing machine learning for real-world applications. This company prides itself on its ability for its employees to influence the design, architecture, and refinement of the data processing applications in healthcare.
Day to Day
- Apply NLP techniques and statistical analysis to extract unstructured Textual Data Sets
- Define and build systems to generate insights that NLP techniques can solve
- Build and prototype NLP pipelines
- Contribute to the defining and testing of products
- Work closely with the engineering and data science teams
Your Skills and Experience
The ideal fit for this role is someone who:
- Has applied experience and knowledge of Natural Language Processing
- Has a Masters or PhD in NLP, Data Science, Computer Science, or other relevant quantitative fields
- Is comfortable with Python and solving problems using AI
- Language: English (Excelling verbal and written abilities)
- Monthly WFH budget and one-off set-up budget
- 25 days holiday
- Frequent informal team socials
- Excellent pension scheme
- Private healthcare
- Fully covered public transport (NL)
How to Apply
Please register your interest by sending your CV to Rosie Morgan via the Apply link on this page.
Data science - Data scientist - NLP - Natural Language Processing - Healthcare
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