Economist
Research scientist Brian Subirana speaks with The Economist’s Babbage podcast about his work developing a new AI system that could be used to help diagnose people asymptomatic Covid-19.
Research scientist Brian Subirana speaks with The Economist’s Babbage podcast about his work developing a new AI system that could be used to help diagnose people asymptomatic Covid-19.
Prof. Daron Acemoglu speaks with Guardian reporter Lauren Aratani about the impact of automation on inequality. While AI has “tremendous potential for making humans more productive,” Acemoglu notes that it also “has been a major driver in the increase in inequality.”
Forbes contributor Adi Gaskell highlights a new study by CSAIL researchers that underscores the importance of foreign-born scientists when it comes to breakthroughs in AI. The researchers noted that “If we want the United States to continue to be ground zero for computer science, we need to make sure that our policies make it easy to continue to bring host international researchers to join our institutions.”
Axios reporter Bryan Walsh writes that during the virtual AI and the Work of the Future Congress, Elisabeth Reynolds, executive director of the MIT Task Force on the Work of the Future, noted that “education and training are central to helping the current and next generation thrive in the labor market.”
Elisabeth Reynolds, executive director of the MIT Task Force on the Work of the Future, speaks with Annie Nova of CNBC about the Task Force’s new report, which lays out recommendations for ensuring Americans are able to secure good jobs in an era of automation. “We’re suggesting that people have access to affordable education and training,” says Reynolds. “I think there’s a real opportunity to help transition people and educate workers without four-year degrees.”
Axios reporter Bryan Walsh writes that a new report by MIT’s Task Force on the Work of the Future makes policy recommendations for ensuring American workers are able to secure good jobs. “If we deploy automation in the same labor market system we have now," says Prof. David Mindell, "we're going to end up with the same results.”
Three years after President L. Rafael Reif delivered an “intellectual call to arms” to examine the impact of technology on jobs, the MIT Task Force on the Work of the Future has published its final set of recommendations. “In an extraordinarily comprehensive effort, they included labor market analysis, field studies and policy suggestions for changes in skills-training programs, the tax code, labor laws and minimum-wage rates,” writes Steve Lohr for The New York Times.
Prof. James Collins speaks with Boston 25 reporter Julianne Lima about the growing issue of antibiotic resistant bacteria and his work using AI to identify new antibiotics. Collins explains that a new platform he developed with Prof. Regina Barzilay uncovered “a host of new antibiotics including one that we call halicin that has remarkable activity against multi drug-resistant pathogens.”
A new algorithm developed by MIT researchers could be used to help detect people with Covid-19 by listening to the sound of their coughs, reports Zoe Kleinman for BBC News. “In tests, it achieved a 98.5% success rate among people who had received an official positive coronavirus test result, rising to 100% in those who had no other symptoms,” writes Kleinman.
Mashable reporter Rachel Kraus writes that a new system developed by MIT researchers could be used to help identify patients with Covid-19. Kraus writes that the algorithm can “differentiate the forced coughs of asymptomatic people who have Covid from those of healthy people.”
A new took developed by MIT researchers uses neural networks to help identify Covid-19, reports Alyse Stanley for Gizmodo. The model “can detect the subtle changes in a person’s cough that indicate whether they’re infected, even if they don’t have any other symptoms,” Stanley explains.
TechCrunch reporter Devin Coldewey writes that MIT researchers have built a new AI model that can help detect Covid-19 by listening to the sound of a person’s cough. “The tool is detecting features that allow it to discriminate the subjects that have COVID from the ones that don’t,” explains Brian Subirana, a research scientist in MIT’s Auto-ID Laboratory.
MIT researchers have developed a new AI model that could help identify people with asymptomatic Covid-19 based on the sound of their cough, reports CBS Boston. The researchers hope that in the future the model could be used to help create an app that serves as a “noninvasive prescreening tool to figure out who is likely to have the coronavirus.”
Forbes contributor Adi Gaskell writes that CSAIL researchers have developed a machine learning system that can determine whether a task is best performed by a human or AI. The researchers developed the system to be “capable of learning and adapting as it goes, such that it can identify,” Gaskell explains, “when the expert isn't available or whether they have a certain level of experience, before choosing whether to defer to them.”
Forbes reporter Eva Amsen writes about a new study by researchers from the Media Lab that explores how to credit art developed by AI systems. The researches found that “credit for AI-generated art all depends on how we think and talk about the role of AI.”