AlexapiAlexa client for all your devices! # No active development. PRs welcome # consider https://github.com/respeaker/avs instead
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HackerrankThis is the Repository where you can find all the solution of the Problems which you solve on competitive platforms mainly HackerRank and HackerEarth
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