Google Engineer Put on Leave After Saying AI Chatbot Has Become Sentient
The engineer says the system has the perception of, and ability to express thoughts and feelings equivalent to, a human child.
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The engineer says the system has the perception of, and ability to express thoughts and feelings equivalent to, a human child.
Developers of artificial intelligence must learn to collaborate with social scientists and the people affected by its applications.
The machine learning outfit's foray into pharmaceuticals could be very useful, but its grand claims should be taken with a pinch of salt.
The ELN's Sylvia Mishra writes that AI-generated fake videos - deep fakes - threaten to exacerbate chaos in conflict, lower nuclear thresholds and complicate nuclear weapons decision-making. The uncontrolled use and spread of this technology requires urgent attention from the nuclear policy community.
If by 2052 a computer could match the human brain then we need better ways to build it.
Tests of natural language processing models show that the bigger they are, the bigger liars they are. Should we be worried?
Collaborations between AI researchers and China's medical workers are helping to combat diseases such as diabetes and COVID-19.
Today features an interview with Darrell W. Gunter, editor of the new book Transforming Scholarly Publishing With Blockchain Technologies and AI.
The detection and removal of poor-quality data in a training set is crucial to achieve high-performing AI models. In healthcare, data can be inherently poor-quality due to uncertainty or subjectivity, but as is often the case, the requirement for data privacy restricts AI practitioners from accessing raw training data, meaning manual visual verification of private patient data is not possible. Here we describe a novel method for automated identification of poor-quality data, called Untrainable Data Cleansing. This method is shown to have numerous benefits including protection of private patient data; improvement in AI generalizability; reduction in time, cost, and data needed for training; all while offering a truer reporting of AI performance itself. Additionally, results show that Untrainable Data Cleansing could be useful as a triage tool to identify difficult clinical cases that may warrant in-depth evaluation or additional testing to support a diagnosis.
English Analysis on World about Disaster Management, Protection and Human Rights and Flood; published on 28 Apr 2021 by GFDRR, University of Toronto and 2 other organizations
The risks associated with poor medical database management are ever heightened in today's global pandemic, as the world struggles with control over COVID-19.
A mathematical model designed to forecast the success of biotechnology papers has drawn criticism from researchers.
Italian researchers enabled Pepper robot to explain its decision-making processes.
The pandemic is being used as a pretext to push unproven artificial-intelligence tools into workplaces and schools.
We fear and yearn for "the singularity." But it will probably never come.
Zombies are supposed to be capable of asking any question about the nature of experience. It's worth wondering, though, how a person or machine devoid of experience could reflect on experience it doesn’t have.
Technology that speeded the development of Covid vaccines has potential to transform the pharmaceutical industry.
A chess program that learns from human error might be better at working with people or negotiating with them.
What are the pitfalls of using AI as a citation evaluation tool?