1 день назад
Data Scientist (NLP & Graph AI)
Мэтч & Сопровод
Для мэтча с этой вакансией нужен Plus
Описание вакансии
Текст:
TL;DR
Data Scientist (NLP & Graph AI): Building intelligent systems for financial applications with an accent on embedding models, LLMs, and graph-based data. Focus on developing NLP models for classification and semantic search, and implementing Generative AI solutions for financial use cases.
Location: Onsite in Gent, Belgium
Company
works with more than 1,500 banks and finance providers worldwide to help them develop and operationalise their digital transformation strategies.
What you will do
- Develop and deploy NLP models for text classification, entity recognition, and semantic search.
- Utilize graph data structures to model relationships and extract insights.
- Build and optimize systems leveraging embedding models and LLMs.
- Design and implement Generative AI solutions for specific financial use cases.
- Collaborate with cross-functional teams to deliver scalable data products.
- Handle multilingual datasets, particularly in French and English.
Requirements
- Native French speaker
- Fluency in English
- Strong experience in Natural Language Processing (NLP).
- Experience with graph-based data and graph algorithms.
- Hands-on experience with embedding models, LLMs, and Generative AI.
- Proficiency in Python.
Nice to have
- Experience with SQL and database systems.
- Familiarity with knowledge graphs and vector databases.
- Knowledge of additional programming languages.
Culture & Benefits
- Comprehensive health and wellbeing package including private medical, dental, and eye care insurance.
- Financial protection with life assurance, critical illness cover, and a pension plan.
- Lifestyle perks such as a cycle to work scheme and holiday trading.
- Inclusive work environment committed to fighting all forms of discrimination.
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