Modeling of autonomous ML based on a task ontology

Parul kant

Abstract


Most sectors now utilize artificial intelligence, and many machine learning specialists are striving to integrate and standardize different machine learning technologies so that non-experts may simply apply them to their domain. For standardizing machine learning ideas, researchers are also looking into autonomous machine learning and ontology creation. In this article, we define typical problem-solving stages for autonomous machine learning as tasks and provide a problem-solving procedure. We present a technique for modeling autonomous machine learning based on job execution processes in machine learning, such as workflow.

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