Staff Frontend Engineer

Amicus
11 months ago
Applications closed

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Staff Frontend Engineer - Remote - Fintech - £75-100kIam currently working with an exciting London based FinTechscale-up! The company who were founded a little over 5 years agoand have secured multiple $M of funding to build their investmentinsights platform.Having already secured multiple clients usingtheir state-of-the-art analytics to assist with managing andanalyzing multi-billion found funds the delivery team is looking toscale.The RoleYou will be reporting into the Head of Engineeringand working with various stakeholders across the business to driveand scale the companies core offerings.As the company are currentlywithin their scale-up phase you will have many opportunities tocontribute to a range of projects, work closely with DataScientists and even have the ability to be client facing!Requirements5+ years experience with ReactStrong working knowledgewith TypeScript ArchitectureExperience with BuildingAPIsBeneficial:Experience or interest in the financialmarketsExperience with Component Libraries + UIsPrevious start-upexperienceExperience with Serverless CRUDapplicationsBenefitsSalary between £75,000 - £100,00025 Day Holiday+ Bank Holidays + Christmas and New Year Health InsuranceFullyRemote If this sounds like something you’d be interested in hearingmore about, please drop me a message with your CV –

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