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Are Model Explanations Useful in Practice? Rethinking How to Support Human-ML Interactions.

ML @ CMU

Our work further motivates novel directions for developing and evaluating tools to support human-ML interactions. Model explanations have been touted as crucial information to facilitate human-ML interactions in many real-world applications where end users make decisions informed by ML predictions.

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Machine Learning & Data Analysts: Seizing the Opportunity in 2018

Dataconomy

Undoubtedly, 2017 has been yet another hype year for machine learning (ML) and artificial intelligence (AI). As ML and AI become increasingly ubiquitous in many industries, so does the proof that advanced analytics significantly improve day-to-day operations and drive more revenue for businesses.

professionals

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Turbocharging GPU Inference at Logically AI

databricks

Founded in 2017, Logically is a leader in using AI to augment clients’ intelligence capability. By processing and analyzing vast amounts of data.

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Building Generative AI and ML solutions faster with AI apps from AWS partners using Amazon SageMaker

AWS Machine Learning Blog

Our customers want a simple and secure way to find the best applications, integrate the selected applications into their machine learning (ML) and generative AI development environment, manage and scale their AI projects. Comet has been trusted by enterprise customers and academic teams since 2017.

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Navigating tomorrow: Role of AI and ML in information technology

Dataconomy

With the ability to analyze a vast amount of data in real-time, identify patterns, and detect anomalies, AI/ML-powered tools are enhancing the operational efficiency of businesses in the IT sector. Why does AI/ML deserve to be the future of the modern world? Let’s understand the crucial role of AI/ML in the tech industry.

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[AI/ML] Keswani’s Algorithm for 2-player Non-Convex Min-Max Optimization

Towards AI

214–223, 2017.[4] Vladu, “Towards deep learning models resistant to adversarial attacks,” arXivpreprint arXiv:1706.06083, 2017.[5] Wang, “Deep primal-dual reinforcement learning: Accelerating actor-critic using bellman duality,” arXiv preprintarXiv:1712.02467, 2017.[6] Bottou, “Wasserstein generative adversarial networks,” pp.

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Rethinking LLM Memorization

ML @ CMU

2017 ] may look like tests for memorization and they are even intimately related to auditing machine unlearning [ Carlini et al., In 2017 IEEE symposium on security and privacy (SP) , pages 3–18. IEEE, 2017. So while membership inference attacks (MIAs) [e.g. Shokri et al., 2021 , Pawelczyk et al., 2023 , Choi et al.,

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