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AI Data Scientist (1 year fixed term contract)

Moneyfarm
City of London
1 week ago
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AI Data Scientist (1 year fixed term contract)

Join to apply for the AI Data Scientist (1 year fixed term contract) role at Moneyfarm

We're a pan-European digital wealth manager with 130,000 active investors and over €5 billion invested on our platform. With 220+ people across 4 offices in Italy and the UK, we're supported and funded by Poste Italiane, Cabot Square Capital, United Ventures and Allianz.

Mission: To provide investment solutions and advice to protect and grow client wealth through time.

Our Core Values: We've built our business on three Principles:

  • Relationships are our first asset: We're one team, built on trust, honesty and transparency.
  • Trust drives success: We give each other the space to grow.
  • Our customers dream big, just like us: We see the bigger picture and we make sure our customers see it, too.

About the role: Are you looking forward to researching how LLMs can reshape the fintech industry? Are you excited to put to a test the AI and ML knowledge you assembled during your studies? Do you want to be part of a highly skilled and motivated international team focussing on AI?

Key Responsibilities:

  • Research, design, implement and refine AI and ML models and applications and their corresponding performance metrics
  • Collaborate with Product and Design teams to design and test customer facing AI and ML models and applications
  • Collaborate with Software and Data Engineering teams to deploy AI and ML models to production
  • Collaborate with Data Analysts to provide AI and ML solutions with the needed analytical packages
  • Research and study the latest trends in AI and ML fields, and elaborate on their possible use cases

Requirements:

  • Demonstrable proficiency in AI / data science fundamentals through academic projects, competition participation, or relevant internships (0-2 years of professional experience)
  • BSc or higher degree in Data Science, Computer Science, Statistics or related discipline
  • Strong proficiency with Python.
  • Experience / familiarity with main ML libraries and techniques (xgboost, lgbm, scikit-learn)
  • Experience / familiarity with main deep learning libraries (Tensorflow, pytorch) and techniques (CNN, RNN)
  • Proficiency with version control systems (Git)
  • Solid practical and theoretical understanding of language models
  • Solid practical and theoretical knowledge of statistical principles and techniques
  • Ability to blend a research driven explorative approach with a results oriented mindset
  • Excellent written and verbal communications skills
  • Fluency in English is essential (most stakeholders are UK based)
  • Previous experience in fintech, wealth management is preferable

This role can be based in our offices in Milan, London or Cagliari. Our hybrid office policy requires 2 days of in-office presence per week.

Benefits:

  • Health Insurance, Wellness plan
  • Fee free investments on Moneyfarm platform
  • Career development opportunities
  • Training opportunities
  • Regular office social events
  • Happy and friendly culture!

Moneyfarm is an equal opportunities employer and welcomes applications from all qualified candidates.


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