bayesian-bandit.js

bayesian-bandit.js

bayesian-bandit.js is a versatile implementation of Bayesian Bandit algorithms designed for both Node.js and browser environments. Built from the foundations of d3bandits.js, it offers idiomatic code and supports pre-existing data through the constructor. The package includes unit tests to ensure reliability, enhancing user feedback integration.

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