Software Developer – Data Products and Services

Squarepoint Capital
London
1 month ago
Applications closed

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Department:Development - Data Products and Services

Position Overview:

The Data Products and Services team uses some of the most cutting-edge technologies and cloud offerings to design, build and maintain machine learning frameworks, data science tools, microservices, web applications and other data driven products. We actively seek to work with the latest technologies to improve our tech stack, knowledge, and existing processes. We collaborate closely with investment teams to deliver on business goals and priorities.

Work with stakeholders across the business to understand the challenges faced, gather requirements, and collect documentation Build and maintain scalable, production grade backend applications using Python as well as frontend web applications using React Take ownership of the products you and your team work on to ensure continued support and improvements

Required Qualifications:

Bachelor’s degree in Computer Science, Engineering, or related subject 2+ years of professional software engineering experience Proficiency in Python and web development Experience with relational databases and document stores Proven track record of owning or working on end-to-end full-stack applications Excellent communication skills Willingness to pick up and learn new technologies and frameworks

 Nice to have:

Rust is a nice to have  Experience with highly available distributed systems Experience with Javascript/React JS Frontend Experience working with large datasets

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