NLP Data Scientist (Hybrid)
Amsterdam, North Holland / €70000 - €90000
€70000 - €90000
Amsterdam, North Holland
NLP DATA SCIENTIST (Healthcare)
€70,000 - €90,000
Join a company that is creating greenfield product and AI solutions that compiles healthcare data from multiple sources, with coverage across hundreds of therapeutic areas, thousands of clinical trials and publications, millions of medically relevant free text and billions of data points that are specific to patient demographics
You will have the opportunity to join an artificial intelligence (AI) company for life sciences, that supports the
industry in bringing the right drug to the right patient at speed.
By joining an established team of data scientists as an NLP specialist, you will:
- Work closely with both data engineers and other data scientists
- Help model unstructured data sets
- You will be creating and delivering Data Science/NLP projects regularly.
- You will be effectively collaborating with colleagues to solve business problems.
- Build NLP processing pipelines
- Work on conducting proper testing to remove bias
- Apply state of the art NLP solutions to solve real-world problems
YOUR SKILLS AND EXPERIENCE
To be a fit for this position, you need to have:
- Strong knowledge of working with Python, SQL, and Python libraries
- Proven industry experience working with NLP tools like BERT, NLTK, GenSim, or similar
- Knowledge of Public Clouds, ideally AWS is nice to have
- Have a background in computational linguistics, text mining, topic modeling, semantic analysis or text classification, or similar
- Fluency in English is a must
- Hybrid model 3 days in the office 2 at home
- competitive Salary
HOW TO APPLY
Please register your interest by sending your CV to Luc Simpson-Kent via the Apply link on this page
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