Quantitative Developer (Python) - Hybrid London - Up To 250k

Farringdon, Greater London
3 months ago
Applications closed

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Quantitative Developer

Quantitative Developer

Quantitative Developer

Senior Quantitative Developer

Senior Quantitative Developer

Senior Quantitative Developer

Are you looking for a new Quantitative Developer role in Central London?

Wanting to join a fast paced blockchain scale up?

Having added nearly 100 people to the business this year, they're looking for Quantitative Developers with proficiency in Python, and experience with the Python data libraries (Pandas, NumPy) (preferably) from the Trading world.

They also are on the look out for candidates who:

Have deep familiarity with Python data ecosystem
Understanding of Jupyter notebooks
Exposure to machine learning libraries like PyTorch, XGBoost and JAX
Understanding of crypto or traditional financial markets
Strong API design and documentation skills
What do you get in return?

Up to £250k base (depending on experience)
3 days in their new central London office
Pension scheme
100% Health coverage
Team events
Would this role be of interest? If so please apply!
Unfortunately, no sponsorship available for this role at this time

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