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I’m joined by Brian Richardson, who’s an Associate Partner, and Senior Data Scientist at Quantum Black, and also leads our data-centric AI efforts across Quantum Black and McKinsey globally. By way of explanation, Quantum Black is a machine learning engineering services company that started back in 2009.
I’m joined by Brian Richardson, who’s an Associate Partner, and Senior Data Scientist at Quantum Black, and also leads our data-centric AI efforts across Quantum Black and McKinsey globally. By way of explanation, Quantum Black is a machine learning engineering services company that started back in 2009.
I’m joined by Brian Richardson, who’s an Associate Partner, and Senior Data Scientist at Quantum Black, and also leads our data-centric AI efforts across Quantum Black and McKinsey globally. By way of explanation, Quantum Black is a machine learning engineering services company that started back in 2009.
For instance, given a certain sample if the active learning algorithm is uncertain about the correct response it can send the sample to the human annotator. The annotator can then properly evaluate the image, label it correctly, and add it to the labeled data pool. Overview of the types of active learning | Source : Settles, B.
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