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Why you should care about debugging machine learning models

O'Reilly on Data

Not least is the broadening realization that ML models can fail. And that’s why model debugging, the art and science of understanding and fixing problems in ML models, is so critical to the future of ML. Because all ML models make mistakes, everyone who cares about ML should also care about model debugging. [1]

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Avnet CIO: Navigating the cloud and AI landscape with a practical approach

CIO Business Intelligence

When we started with generative AI and large language models, we leveraged what providers offered in the cloud. Now that we have a few AI use cases in production, were starting to dabble with in-house hosted, managed, small language models or domain-specific language models that dont need to sit in the cloud.

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Sweat the small stuff: Data protection in the age of AI

CIO Business Intelligence

From the discussions, it is clear that today, the critical focus for CISOs, CIOs, CDOs, and CTOs centers on protecting proprietary AI models from attack and protecting proprietary data from being ingested by public AI models. isnt intentionally or accidentally exfiltrated into a public LLM model?

Risk 105
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Curiosity-Driven Learning Through Next State Prediction

Dataiku

From 2013 with the first deep learning model to successfully learn a policy directly from pixel input using reinforcement learning to the OpenAI Dexterity project in 2019, we live in an exciting moment in RL research. In the last few years, we’ve seen a lot of breakthroughs in reinforcement learning (RL).

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Monetizing Analytics Features: Why Data Visualizations Will Never Be Enough

Think your customers will pay more for data visualizations in your application? Five years ago they may have. But today, dashboards and visualizations have become table stakes. Discover which features will differentiate your application and maximize the ROI of your embedded analytics. Brought to you by Logi Analytics.

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Deep Learning Illustrated: Building Natural Language Processing Models

Domino Data Lab

The excerpt covers how to create word vectors and utilize them as an input into a deep learning model. While the field of computational linguistics, or Natural Language Processing (NLP), has been around for decades, the increased interest in and use of deep learning models has also propelled applications of NLP forward within industry.

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Data Science Papers – Summer 2019 edition

Data Science 101

Cloud Programming Simplified: A Berkeley View on Serverless Computing (2019) – Serverless computing is very popular nowadays and this article covers some of the limitations.