Data Scientist - FinTech - £80K - £100K

Oliver Bernard
London
1 year ago
Applications closed

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Data Scientist

Data Scientist - FinTech - £80K - £100K


Our client is an innovative and growing FinTech - Their software connects bank accounts, credit providers, APIs, Data Aggregators and mobile apps - entire FinTech and Ecommerce solutions can be built and used all around the world.


Based in brand new offices in central London, they offer great hybrid office / WFH flexibility.


You’ll have the chance to design and build core Machine Learning infrastructure and develop innovative algorithms and data models.


You’ll have the opportunity to lead the full implementation of the Data Science platform.


You’ll work with developers and engineers to create software, API products and grow out this new, greenfield, Data Science team – not an opportunity to miss!


Requirements:


- Excellent experience of Data Science, Machine Learning and / or AI

- Excellent academic background

- Expertise in statistical methods such as regression analysis, cluster analysis, decision trees and time series etc

- Experience with large, complex datasets

- Great coding skills with Python

- Knowledge of CI/CD development

- Experience leading, driving teams and projects of work

- Good understanding of SQL and NoSQL technologies

- Knowledge of TensorFlow is ideal

- Excellent communication and business-facing skills

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