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AI News Weekly - Issue #363: 20 Best AI Chatbots in 2024 - Dec 14th 2023

AI Weekly

futurism.com Ethics MIT publishes white papers to guide AI governance The comprehensive framework outlined in these papers seeks to extend existing regulatory and liability approaches to effectively oversee AI while fostering its benefits and mitigating potential harm. Many of the services only work on women.

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5 key areas for governments to responsibly deploy generative AI

IBM Journey to AI blog

In 2024, the ongoing process of digitalization further enhances the efficiency of government programs and the effectiveness of policies, as detailed in a previous white paper. Traditional AI primarily relies on algorithms and extensive labeled data sets to train models through machine learning.

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The 2021 Executive Guide To Data Science and AI

Applied Data Science

This post is a bitesize walk-through of the 2021 Executive Guide to Data Science and AI  — a white paper packed with up-to-date advice for any CIO or CDO looking to deliver real value through data. The most common data science languages are Python and R   —  SQL is also a must have skill for acquiring and manipulating data.

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Harvard professor: DataPerf and AI’s need for data benchmarks

Snorkel AI

What kind of algorithms are you using to run your models? Then of course, the third piece is not really just the datasets themselves on the training and tests, but it’s also the algorithms that are actually used to construct the data. And algorithms. What’s the silicon substrate? Where do you apply them?

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Harvard professor: DataPerf and AI’s need for data benchmarks

Snorkel AI

What kind of algorithms are you using to run your models? Then of course, the third piece is not really just the datasets themselves on the training and tests, but it’s also the algorithms that are actually used to construct the data. And algorithms. What’s the silicon substrate? Where do you apply them?