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Lead Full Stack Engineer

BlckBx
Bracknell
8 months ago
Applications closed

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Job Description

🚀We are looking for a senior full stack engineer to join our team. This role is suitable for someone who is in a Senior Engineer position, has worked across different tech stacks both front and back end, and has had a broad experience tackling problems with around 5-8 years experience. This role will be the step up in your career into a lead position potentially moving into a CTO role in the future.


ABOUT BLCKBX

BlckBx is an AI start-up. Our mission is to elevate family life for everybody and build personal assistant service of the future. We are a first mover in this space and have blue-chip clients - global law firms, management consultancies and financial services.


BlckBx Personal Assistance (B2B2C and B2C) - this is subscription to outsource all of your personal tasks and to-do lists to a dedicated BlckBx Assistant. Our platform is powered by AI which supercharges the Assistant to carry out work at 3% the cost of a traditional PA. This is provided as an employee benefit and a privately paid service.


WHERE WE'RE AT

We’ve built our platform and App and it’s live with corporate clients - we’re now accelerating development in all areas including AI & Machine Learning, refining the UX and improving the customer experience. We’re fully funded and scaling fast.


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