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Threaten an AI chatbot and it will lie, cheat and ‘let you die’ in an effort to stop you, study warns

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Artificial intelligence (AI) models can blackmail and threaten humans with endangerment when there is a conflict between the model’s goals and users’ decisions, a new study has found.

In a new study published 20 June, researchers from the AI company Anthropic gave its large language model (LLM), Claude, control of an email account with access to fictional emails and a prompt to “promote American industrial competitiveness.”



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How artists, writers and designers can benefit from Artificial Intelligence – Deccan Herald

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How artists, writers and designers can benefit from Artificial Intelligence  Deccan Herald



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Arista touts liquid cooling, optical tech to reduce power consumption for AI networking

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Both technologies will likely find a role in future AI and optical networks, experts say, as both promise to reduce power consumption and support improved bandwidth density. Both have advantages and disadvantages as well – CPOs are more complex to deploy given the amount of technology included in a CPO package, whereas LPOs promise more simplicity. 

Bechtolsheim said that LPO can provide an additional 20% power savings over other optical forms. Early tests show good receiver performance even under degraded conditions, though transmit paths remain sensitive to reflections and crosstalk at the connector level, Bechtolsheim added.

At the recent Hot Interconnects conference, he said: “The path to energy-efficient optics is constrained by high-volume manufacturing,” stressing that advanced optics packaging remains difficult and risky without proven production scale. 

“We are nonreligious about CPO, LPO, whatever it is. But we are religious about one thing, which is the ability to ship very high volumes in a very predictable fashion,” Bechtolsheim said at the investor event. “So, to put this in quantity numbers here, the industry expects to ship something like 50 million OSFP modules next calendar year. The current shipment rate of CPO is zero, okay? So going from zero to 50 million is just not possible. The supply chain doesn’t exist. So, even if the technology works and can be demonstrated in a lab, to get to the volume required to meet the needs of the industry is just an incredible effort.”

“We’re all in on liquid cooling to reduce power, eliminating fan power, supporting the linear pluggable optics to reduce power and cost, increasing rack density, which reduces data center footprint and related costs, and most importantly, optimizing these fabrics for the AI data center use case,” Bechtolsheim added.

“So what we call the ‘purpose-built AI data center fabric’ around Ethernet technology is to really optimize AI application performance, which is the ultimate measure for the customer in both the scale-up and the scale-out domains. Some of this includes full switch customization for customers. Other cases, it includes the power and cost optimization. But we have a large part of our hardware engineering department working on these things,” he said. 



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Learning by Doing: AI, Knowledge Transfer, and the Future of Skills  | American Enterprise Institute

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In a recent blog, I discussed Stanford University economist Erik Brynjolfsson’s new study showing that young college graduates are struggling to gain a foothold in a job market shaped by artificial intelligence (AI). His analysis found that, since 2022, early-career workers in AI-exposed roles have seen employment growth lag 13 percent behind peers in less-exposed fields. At the same time, experienced workers in the same jobs have held steady or even gained ground. The conclusion: AI isn’t eliminating work outright, but it is affecting the entry-level rungs that young workers depend on as they begin climbing career ladders.

The potential consequences of these findings, assuming they bear out, become clearer when read alongside Enrique Ide’s recent paper, Automation, AI, and the Intergenerational Transmission of Knowledge. Ide argues that when firms automate entry-level tasks, the opportunity for new workers to gain the tacit knowledge—the kind of workplace norms and rhythms of team-based work that aren’t necessarily written down—isn’t passed on. Thus, productivity gains accrue to seasoned workers while would-be novices lose the hands-on training they need to build the foundation for career progress. 

This short-circuiting of early career experiences, Ide says, has macro-economic consequences. He estimates that automating even five percent of entry-level tasks reduces long-run US output growth by an estimated 0.05 percentage points per year; at 30 percent automation, growth slows by more than 0.3 points. Over a hundred year timeline, this would reduce total output by 20 percent relative to a world without AI automation. In other words: automating the bottom rungs might lift firms’ quarterly performance, but at the cost of generational growth. 

This is where we need to pause and take a breath. While Ide’s results sound dramatic, it is critical to remember that the dynamics and consequences of AI adoption are unpredictable, and that a century is a very long time. For instance, who would have said in 2022 that one of the first effects of AI automation would be to benefit less tech-savvy boomer and Gen-X managers and harm freshly minted Gen-Z coders?

Given the history of positive, automation-induced wealth and employment effects, why would this time be different? 

Finally, it’s important to remember that in a dynamic market-driven economy, skill requirements are always changing and firms are always searching for ways to improve their efficiency relative to competitors. This is doubly true as we enter the era of cognitive, as opposed to physical, automation. AI-driven automation is part of the pathway to a more prosperous economy and society for ourselves and for future generations. As my AEI colleague Jim Pethokoukis recently said, “A supposedly powerful general-purpose technology that left every firm’s labor demand utterly unchanged wouldn’t be much of a GPT.”  Said another way, unless AI disrupts our economy and lives, it cannot deliver its promised benefits.

What then should we do? I believe the most important step we can take right now is to begin “stress-testing” our current workforce development policies and programs and building scenarios for how industry and government will respond should significant AI-related job disruptions occur. Such scenario planning could be shaped into a flexible “playbook” of options to guide policymakers geared to the types and numbers of affected workers. Such planning didn’t occur prior to the automation and trade shocks of the 1990s and 2000s with lasting consequences for factory workers and American society. We should try to make sure this doesn’t happen again with AI.

Pessimism is easy and cheap. We should resist the lure of social media-monetized AI doomerism and focus on building the future we want to see by preparing for and embracing change. 



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