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Explain text classification model predictions using Amazon SageMaker Clarify

AWS Machine Learning Blog

Model explainability refers to the process of relating the prediction of a machine learning (ML) model to the input feature values of an instance in humanly understandable terms. This field is often referred to as explainable artificial intelligence (XAI). In this post, we illustrate the use of Clarify for explaining NLP models.

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Jeff Kofman, Founder & CEO of Trint – Interview Series

Unite.AI

In 2014, Jeff and a team of developers leveraged AI to do the heavy lifting, and Trint was born. Trint launched in 2014, can you discuss how the idea was born? It took a lot of explaining to get them to understand how a reporter works. What are the different machine learning algorithms that are currently used at Trint?

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Exploring the Frontiers of Artificial Intelligence: A Comprehensive Analysis of Reinforcement Learning, Generative Adversarial Networks, and Ethical Implications in Modern AI Systems

Marktechpost

Applications of RL RL has been applied successfully in various domains: Gaming: RL algorithms have mastered complex games like Go, chess, and video games, often surpassing human experts. Over time, the agent aims to develop an optimal policy that maximizes the total reward.

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The Dezeen guide to AI

Flipboard

In this guide , we explain the key terms in the field and why they matter. Rather than humans programming computers with specific step-by-step instructions on how to complete a task, in machine learning a human provides the AI with data and asks it to achieve a certain outcome via an algorithm.

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Ivan Crewkov CEO & Co-Founder of Buddy AI – Interview Series

Unite.AI

In 2014, you launched Cubic.ai, one of the first smart speakers and voice-assistant apps for smart homes. in 2014 and brought my family with me. Children download the App and convince parents to pay for a subscription, explaining that Buddy is a teacher. What were some of your key takeaways from this experience?

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GANs (Generative Adversarial Networks:)

Towards AI

GANs are a part of the deep-learning world and were very introduced by Ian Goodfellow and his collaborators in 2014, After that GANs have rapidly captivated many researchers’ eyes which resulted in much research and also helped to redefine the boundaries of creativity and artificial intelligence in the world of AI 1.1 what is the procedure?

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Robustness of a Markov Blanket Discovery Approach to Adversarial Attack in Image Segmentation: An…

Mlearning.ai

Automated algorithms for image segmentation have been developed based on various techniques, including clustering, thresholding, and machine learning (Arbeláez et al., Understanding the robustness of image segmentation algorithms to adversarial attacks is critical for ensuring their reliability and security in practical applications.