Data Scientist - £80,000 - Hybrid - London

City of London
9 months ago
Applications closed

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Data Scientist

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Data Scientist

Data Scientist

Data Scientist - £80,000 - Hybrid - London

Company Overview:

My client is a trusted partner for major clients across a range of data and AI driven industries such as banking, insurance, health-care, retail, and more! With a global presence spanning continents and tens of thousands of professionals, there is no better place to grow and advance your career. Due to their commitment and motivation to stay at the top of their industry, there is constant investment in research and development to stay ahead of trends by working with, and developing their own, cutting-edge technology. My client believes their success stems from the calibre of people they employ and will do everything to support you and your development.

Role Overview:

As a Data Scientist you will be hands on in developing advanced statistical and machine learning models within the financial sector. Python is obviously a pre-requisite for this role, with experience required in processing and model development. You will develop end-to-end models and use a combination of NLP and OCR-based extraction techniques.

In addition to the technical expertise you will bring and develop, this is a consultant role and you will be working with key stakeholders in large financial institutions, good communication is essential.

Requirements:

Python Expertise
Supervised and Unsupervised Learning
NLP and OCR Experience
Exposure to Modern Cloud Platforms (EG. Databricks, AWS)
Abillity to Communicate Technical Concepts Nice to Have:

Financial Services Experience

Interviews ongoing don't miss your chance to secure the future of your career!

Contact me @ (url removed) or on (phone number removed).

Data Science, Data Scientist, AI, ML, Random Forest, Databricks, SageMaker, Regression, Gradient Boosting, NLP, Palantir, Insurance, Banking

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