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Anthropic Agrees to $1.5 Billion Settlement in AI Copyright Case

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Anthropic will reportedly pay $1.5 billion to settle a high-profile copyright violation lawsuit.

The artificial intelligence (AI) startup was sued last year by a group of authors who accused the company of illegally accessing their books.

Under the terms of this settlement, Anthropic will pay around $3,000 per book as well as interest, and will also destroy the datasets that contain the allegedly pirated material, CNBC reported Friday (Sept. 5), citing a court filing.

The report noted that the case had caught the attention of AI startups and media companies trying to get a sense of the copyright infringement atmosphere in the AI age. Assuming the settlement is approved, it will be the largest publicly reported copyright recovery on record, the court filing said.

“This settlement sends a powerful message to AI companies and creators alike that taking copyrighted works from these pirate websites is wrong,” Justin Nelson, the attorney for the plaintiffs, said in a statement to CNBC.

PYMNTS has contacted Anthropic for comment but has not yet gotten a reply.

The suit, brought by authors Andrea Bartz, Charles Graeber and Kirk Wallace Johnson, had accused Anthropic of “largescale copyright infringement by downloading and commercially exploiting books that it obtained from allegedly pirated datasets.” 

A judge had ruled in June that Anthropic’s use of books to train its models fell under the “fair use” umbrella, but ordered a trial to determine if the company had infringed on copyright by using works from the databases Library Genesis and Pirate Library Mirror. 

“In June, the district court issued a landmark ruling on AI development and copyright law, finding that Anthropic’s approach to training AI models constitutes fair use,” said Aparna Sridhar, deputy general counsel at Anthropic. “Today’s settlement, if approved, will resolve the plaintiffs’ remaining legacy claims. We remain committed to developing safe AI systems that help people and organizations extend their capabilities, advance scientific discovery, and solve complex problems.”

The news follows a report from late last month that Anthropic and the authors had agreed to a settlement ahead of that trial.

As PYMNTS wrote in July, the ruling in Anthropic’s case,– and a similar decision involving Meta, appeared to be emboldening tech firms.

“It’s a green light for the most common approaches AI companies have taken to model training,” Cecilia Ziniti, CEO of GC AI and a former general counsel, told PYMNTS.

Still, she cautioned, “it’s not an all clear,” pointing to pending lawsuits including The New York Times v. OpenAI and Disney v. Midjourney. Other similar suits include one filed last month against Perplexity by two Japanese media companies.

Irina Tsukerman, an attorney and president of Scarab Rising, argued the rulings marked an erosion of control for creators.

“Copyright has long protected the right not just to profit from a work, but to decide how and when it is used,” she said. “Now, that control is slipping away.”

 



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AI-powered hydrogel dressings transform chronic wound care

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As chronic wounds such as diabetic ulcers, pressure ulcers, and articular wounds continue to challenge global healthcare systems, a team of researchers from China has introduced a promising innovation: AI-integrated conductive hydrogel dressings for intelligent wound monitoring and healing.

This comprehensive review, led by researchers from China Medical University and Northeastern University, outlines how these smart dressings combine real-time physiological signal detection with artificial intelligence, offering a new paradigm in personalized wound care.

Why it matters:

  • Real-time monitoring: Conductive hydrogels can track key wound parameters such as temperature, pH, glucose levels, pressure, and even pain signals-providing continuous, non-invasive insights into wound status.
  • AI-driven analysis: Machine learning algorithms (e.g., CNN, KNN, ANN) process sensor data to predict healing stages, detect infections early, and guide treatment decisions with high accuracy (up to 96%).
  • Multifunctional integration: These dressings not only monitor but also actively promote healing through electroactivity, antibacterial properties, and drug release capabilities.

Key features:

  • Material innovation: The review discusses various conductive materials (e.g., CNTs, graphene, MXenes, conductive polymers) and their roles in enhancing biocompatibility, sensitivity, and stability.
  • Smart signal output: Different sensing mechanisms-such as colorimetry, resistance variation, and infrared imaging-enable multimodal monitoring tailored to wound types.
  • Clinical applications: The paper highlights applications in pressure ulcers, diabetic foot ulcers, and joint wounds, emphasizing the potential for home care, remote monitoring, and early intervention.

Challenges & future outlook:

Despite promising advances, issues such as material degradation, signal stability, and AI model generalizability remain. Future efforts will focus on multidimensional signal fusion, algorithm optimization, and clinical translation to bring these intelligent dressings into mainstream healthcare.

This work paves the way for next-generation wound care, where smart materials meet smart algorithms-offering hope for millions suffering from chronic wounds.

Stay tuned for more innovations at the intersection of biomaterials, AI, and personalized medicine!

Source:

Journal reference:

She, Y., et al. (2025). Artificial Intelligence-Assisted Conductive Hydrogel Dressings for Refractory Wounds Monitoring. Nano-Micro Letters. doi.org/10.1007/s40820-025-01834-w



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To ChatGPT or not to ChatGPT: Professors grapple with AI in the classroom

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As shopping period settles, students may notice a new addition to many syllabi: an artificial intelligence policy. As one of his first initiatives as associate provost for artificial intelligence, Michael Littman PhD’96 encouraged professors to implement guidelines for the use of AI. 

Littman also recommended that professors “discuss (their) expectations in class” and “think about (their) stance around the use of AI,” he wrote in an Aug. 20 letter to faculty. But, professors on campus have applied this advice in different ways, reflecting the range of attitudes towards AI.

In her nonfiction classes, Associate Teaching Professor of English Kate Schapira MFA’06 prohibits AI usage entirely. 

“I teach nonfiction because evidence … clarity and specificity are important to me,” she said. AI threatens these principles at a time “when they are especially culturally devalued” nationally.

She added that an overreliance on AI goes beyond the classroom. “It can get someone fired. It can screw up someone’s medication dosage. It can cause someone to believe that they have justification to harm themselves or another person,” she said.

Nancy Khalek, an associate professor of religious studies and history, said she is intentionally designing assignments that are not suitable for AI usage. Instead, she wants students “to engage in reflective assignments, for which things like ChatGPT and the like are not particularly useful or appropriate.”

Khalek said she considers herself an “AI skeptic” — while she acknowledged the tool’s potential, she expressed opposition to “the anti-human aspects of some of these technologies.”

But AI policies vary within and across departments. 

Professors “are really struggling with how to create good AI policies, knowing that AI is here to stay, but also valuing some of the intermediate steps that it takes for a student to gain knowledge,” said Aisling Dugan PhD’07, associate teaching professor of biology.

In her class, BIOL 0530: “Principles of Immunology,” Dugan said she allows students to choose to use artificial intelligence for some assignments, but that she requires students to critique their own AI-generated work. 

She said this reflection “is a skill that I think we’ll be using more and more of.”

Dugan added that she thinks AI can serve as a “study buddy” for students. She has been working with her teaching assistants to develop an AI chatbot for her classes, which she hopes will eventually answer student questions and supplement the study videos made by her TAs.

Despite this, Dugan still shared concerns over AI in classrooms. “It kind of misses the mark sometimes,” she said, “so it’s not as good as talking to a scientist.”

For some assignments, like primary literature readings, she has a firm no-AI policy, noting that comprehending primary literature is “a major pedagogical tool in upper-level biology courses.”

“There’s just some things that you have to do yourself,” Dugan said. “It (would be) like trying to learn how to ride a bike from AI.”

Assistant Professor of the Practice of Computer Science Eric Ewing PhD’24 is also trying to strike a balance between how AI can support and inhibit student learning. 

This semester, his courses, CSCI 0410: “Foundations of AI and Machine Learning” and CSCI 1470: “Deep Learning,” heavily focus on artificial intelligence. He said assignments are no longer “measuring the same things,” since “we know students are using AI.”

While he does not allow students to use AI on homework, his classes offer projects that allow them “full rein” use of AI. This way, he said, “students are hopefully still getting exposure to these tools, but also meeting our learning objectives.”

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Ewing also added that the skills required of graduated students are shifting — the growing presence of AI in the professional world requires a different toolkit.

He believes students in upper level computer science classes should be allowed to use AI in their coding assignments. “If you don’t use AI at the moment, you’re behind everybody else who’s using it,” he said. 

Ewing says that he identifies AI policy violations through code similarity — last semester, he found that 25 students had similarly structured code. Ultimately, 22 of those 25 admitted to AI usage.

Littman also provided guidance to professors on how to identify the dishonest use of AI, noting various detection tools. 

“I personally don’t trust any of these tools,” Littman said. In his introductory letter, he also advised faculty not to be “overly reliant on automated detection tools.” 

Although she does not use detection tools, Schapira provides specific reasons in her syllabi to not use AI in order to convince students to comply with her policy. 

“If you’re in this class because you want to get better at writing — whatever “better” means to you — those tools won’t help you learn that,” her syllabus reads. “It wastes water and energy, pollutes heavily, is vulnerable to inaccuracies and amplifies bias.”

In addition to these environmental concerns, Dugan was also concerned about the ethical implications of AI technology. 

Khalek also expressed her concerns “about the increasingly documented mental health effects of tools like ChatGPT and other LLM-based apps.” In her course, she discussed with students how engaging with AI can “resonate emotionally and linguistically, and thus impact our sense of self in a profound way.”

Students in Schapira’s class can also present “collective demands” if they find the structure of her course overwhelming. “The solution to the problem of too much to do is not to use an AI tool. That means you’re doing nothing. It’s to change your conditions and situations with the people around you,” she said.

“There are ways to not need (AI),” Schapira continued. “Because of the flaws that (it has) and because of the damage (it) can do, I think finding those ways is worth it.”



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This Artificial Intelligence (AI) Stock Could Outperform Nvidia by 2030

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When investors think about artificial intelligence (AI) and the chips powering this technology, one company tends to dominate the conversation: Nvidia (NASDAQ: NVDA). It has become an undisputed barometer for AI adoption, riding the wave with its industry-leading GPUs and the sticky ecosystem of its CUDA software that keep developers in its orbit. Since the launch of ChatGPT about three years ago, Nvidia stock has surged nearly tenfold.

Here’s the twist: While Nvidia commands the spotlight today, it may be Taiwan Semiconductor Manufacturing (NYSE: TSM) that holds the real keys to growth as we look toward the next decade. Below, I’ll unpack why Taiwan Semi — or TSMC, as it’s often called — isn’t just riding the AI wave, but rather is building the foundation that brings the industry to life.

What makes Taiwan Semi so critical is its role as the backbone of the semiconductor ecosystem. Its foundry operations serve as the lifeblood of the industry, transforming complex chip designs into the physical processors that power myriad generative AI applications.

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