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AI poses a bigger threat to women's work than men's, says U.N. report
Jobs traditionally done by women are more vulnerable to the impact of artificial intelligence than those done by men, especially in high-income countries, a report by the United Nations' International Labour Organization showed on Tuesday. It found 9.6% of traditionally female jobs were set to be transformed compared with 3.5% of those carried out by men as AI increasingly takes on administrative tasks and transforms clerical jobs, such as secretarial work. Human involvement will still be required for many tasks -- and roles are more likely to be radically changed rather than eliminated, the report said. Jobs in the media, software and finance-related roles are also at the forefront of change as generative AI expands its learning abilities. "We stress that such exposure does not imply the immediate automation of an entire occupation, but rather the potential for a large share of its current tasks to be performed using this technology," the report said. It called on governments and employers' and workers' organizations to think about how AI can be used to enhance productivity and job quality.
"Why Are There No F-cking Jobs?" There's More Than Trump to the Vexing Employment Market.
Sign up for the Slatest to get the most insightful analysis, criticism, and advice out there, delivered to your inbox daily. In 2021, Zia graduated from the University of MichiganโDearborn with a degree in software engineering. With an internship under his belt, he had no shortage of job opportunities, and he landed a contract coding gig in January of 2022. It was good work, for a year and a half, until he got laid off in mid-2023. After taking a month to figure out what he wanted to specialize in, Zia decided that he'd go for the types of app- and site-building jobs that had been so plentiful when he was in school.
UFO crashes into US Air Force fighter jet over Arizona during terrifying encounter
A UFO slammed into a US fighter jet over Arizona, cracking the canopy protecting the pilot, and forcing the 63 million plane to land, new reports have revealed. According to the Federal Aviation Administration (FAA), the F-16 Viper fighter jet was hit by an'orange-white UAS' - which stands for uncrewed aerial system, better known as a drone - on January 19, 2023. Within a day of this collision, there were three more unidentified aircraft sightings over the Air Force's Barry Goldwater Range, where the fighter was damaged, the documents stated. Barry Goldwater Range is an expanse of desert along the Arizona-Mexico border where the military practices air-to-air and air-to-ground combat. The FAA's report of the F-16 collision revealed that the fighter was flying in restricted airspace near Gila Bend, Arizona, when it was hit by the object in the rear of the canopy, the glass bubble which protects the pilot.
Can nuclear power really fuel the rise of AI?
This story is a part of MIT Technology Review's series "Power Hungry: AI and our energy future," on the energy demands and carbon costs of the artificial-intelligence revolution. These somewhat unlikely partnerships could be a win for both the nuclear power industry and large tech companies. Tech giants need guaranteed sources of energy, and many are looking for low-emissions ones to hit their climate goals. For nuclear plant operators and nuclear technology developers, the financial support of massive established customers could help keep old nuclear power plants open and push new technologies forward. "There [are] a lot of advantages to nuclear," says Michael Terrell, senior director of clean energy and carbon reduction at Google.
How AI is introducing errors into courtrooms
One of Anthropic's lawyers had asked the company's AI model Claude to create a citation for a legal article, but Claude included the wrong title and author. Anthropic's attorney admitted that the mistake was not caught by anyone reviewing the document. Lastly, and perhaps most concerning, is a case unfolding in Israel. After police arrested an individual on charges of money laundering, Israeli prosecutors submitted a request asking a judge for permission to keep the individual's phone as evidence. But they cited laws that don't exist, prompting the defendant's attorney to accuse them of including AI hallucinations in their request.
Everything you need to know about estimating AI's energy and emissions burden
Despite the fact that billions of dollars are being poured into reshaping energy infrastructure around the needs of AI, no one has settled on a way to quantify AI's energy usage. Worse, companies are generally unwilling to disclose their own piece of the puzzle. There are also limitations to estimating the emissions associated with that energy demand, because the grid hosts a complicated, ever-changing mix of energy sources. So, that said, here are the many variables, assumptions, and caveats that we used to calculate the consequences of an AI query. Companies like OpenAI, dealing in "closed-source" models, generally offer access to their systems through an interface where you input a question and receive an answer.
AI's energy impact is still small--but how we handle it is huge
Innovation in IT got us to this point. Graphics processing units (GPUs) that power the computing behind AI have fallen in cost by 99% since 2006. There was similar concern about the energy use of data centers in the early 2010s, with wild projections of growth in electricity demand. But gains in computing power and energy efficiency not only proved these projections wrong but enabled a 550% increase in global computing capability from 2010 to 2018 with only minimal increases in energy use. In the late 2010s, however, the trends that had saved us began to break.
We did the math on AI's energy footprint. Here's the story you haven't heard.
AI's integration into our lives is the most significant shift in online life in more than a decade. Hundreds of millions of people now regularly turn to chatbots for help with homework, research, coding, or to create images and videos. Today, new analysis by MIT Technology Review provides an unprecedented and comprehensive look at how much energy the AI industry uses--down to a single query--to trace where its carbon footprint stands now, and where it's headed, as AI barrels towards billions of daily users. This story is a part of MIT Technology Review's series "Power Hungry: AI and our energy future," on the energy demands and carbon costs of the artificial-intelligence revolution. We spoke to two dozen experts measuring AI's energy demands, evaluated different AI models and prompts, pored over hundreds of pages of projections and reports, and questioned top AI model makers about their plans.
Four reasons to be optimistic about AI's energy usage
"Dollars are being invested, GPUs are being burned, water is being evaporated--it's just absolutely the wrong direction," says Ali Farhadi, CEO of the Seattle-based nonprofit Allen Institute for AI. But sift through the talk of rocketing costs--and climate impact--and you'll find reasons to be hopeful. There are innovations underway that could improve the efficiency of the software behind AI models, the computer chips those models run on, and the data centers where those chips hum around the clock. Here's what you need to know about how energy use, and therefore carbon emissions, could be cut across all three of those domains, plus an added argument for cautious optimism: There are reasons to believe that the underlying business realities will ultimately bend toward more energy-efficient AI. The most obvious place to start is with the models themselves--the way they're created and the way they're run.
Interview with Filippos Gouidis: Object state classification
Filippos's PhD dissertation focuses on developing a method for recognizing object states without visual training data. By leveraging semantic knowledge from online sources and Large Language Models, structured as Knowledge Graphs, Graph Neural Networks learn representations for accurate state classification. In this interview series, we're meeting some of the AAAI/SIGAI Doctoral Consortium participants to find out more about their research. The Doctoral Consortium provides an opportunity for a group of PhD students to discuss and explore their research interests and career objectives in an interdisciplinary workshop together with a panel of established researchers. In this latest interview, we met with Filippos Gouidis, who has recently completed his PhD, and found out more about his research on object state classification.