Mobile Developer (Android & iOS)

Be-IT Resourcing Ltd
Edinburgh
10 months ago
Applications closed

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Are you a skilled mobile developer looking for the autonomy to thrive within a start up environment?Would you like to join an organisation that truly enables it's employees to make business critical decisions that will have tangible results in real time?You have the opportunity to join a Scottish based organisation who are leading the way within innovation in their field as they scale rapidly for the next phase of growthWorking across both Android and iOS projects you will play an instrumental role in choosing future technical direction and investigating cutting edge and emerging technologies particularly within Lidar and predictive analyticsYou will work on a complex range of AI products designed to revolutionise an industry for both household customers and large corporate businesses through cutting edge computer vision, machine learning models and web applications.You will have the opportunity to work fully remote with plans for quarterly social eventsCurious?  Contact me for more details on (phone number removed),  (url removed) or message me directly on LinkedIn

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