Data Scientist

Premium Job From Noir



Listed on

1st April




£100,000 - £150,000



Start Date


This job has now expired please search on the home page to find live IT Jobs.

Data Scientist - Asset Management - London

(Tech stack: Data Scientist, Python, R, Data Science, Machine Learning, Artificial Intelligence, Tableau, Data Scientist, Engineer, Senior, Leader, Technical Lead)

Founded in 1930, our client is a leading investment manager with offices in Europe, Asia and North America. They manage over £120 billion across all asset classes and employ over 2000 people around the world and are developing revolutionary applications that have attracted much attention in the trade press.

As a result of this there are several Greenfield software development projects that require talented Data Scientist to build software that will support their progression. We are looking for Data Scientist that can hit the ground running and be instrumental in the creation of stylish and innovative products. Every possible resource will be at your disposal to help you achieve this.

We are looking for Data Scientist with a good grasp of some or all of the following (full training will be provided to fill any gaps in your skill set): Python, R, Data Science, Machine Learning, Artificial Intelligence, PyTorch, TensorFlow, Scikit-learn, Pandas, Identity Providers, oAuth2, Tableau, SQL, MS SQL Server, PostgreSQL, Spacy, NLTK, FlairNLP, Fast API, Django/REST Framework, REST APIs, RDF/XML, JSON-LD, IIIF, UI/UX and DevOps.

All Data Scientist can look forward to the following benefits:

* Performance-based Bonus * Remote working * 34 Days Holidays per year * Life Insurance * Ongoing training and certifications * Health Insurance * Reduced gym membership costs * And much more

Location: London, UK / Remote

Salary: £100K - £150k + Bonus + Benefits

To apply for this position please send your CV to Sham Ahmed at Noir.

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