Connect with us

AI Research

Baylor, Rice receive $500k NEH grant to develop CHHAIN for health AI

Published

on


Baylor College of Medicine and Rice University have been awarded a $500,000 grant from the National Endowment for the Humanities (NEH) to create the Center for Humanities-based Health AI Innovation (CHHAIN).

The new center and three-year initiative aims to create ethically responsible and trustworthy AI for health care that uses history and patient narratives to shape the technology, according to a release. It represents a collaboration between the Center for Medical Ethics and Health Policy at Baylor and the Medical Humanities Research Institute at Rice. Ultimately, the researchers aim to establish a national model for integrating the humanities into the design and implementation of health AI.

Vasiliki Rahimzadeh, assistant professor at Baylor in the Center for Medical Ethics and Health Policy, and Kirsten Ostherr, director of the Medical Humanities Research Institute at Rice, will serve as co-directors of the new center, which will be housed within the Center for Medical Ethics.

The team will also engage in strategic collaborations with Kirstin Matthews, Rice’s Baker Institute for Public Policy and its fellow in science and technology policy, as well as Dr. Quianta Moore, executive director of the Meadows Mental Health Policy Institute. An interdisciplinary team of medical humanities and bioethics scholars from Baylor, Rice, and partners in the Houston area will complete the group.

“CHHAIN represents a bold new model for integrating the humanities into health innovation,” Ostherr said in a news release. “It will create a collaborative space where humanities scholars, patients, developers and clinicians can come together to explore the human dimensions of health AI—trust, narrative and lived experience. These are essential perspectives that are too often missing from technology development, and CHHAIN is designed to change that.”

CHHAIN’s work will revolve around three key points:

  • Defining trustworthy AI through patient voices
  • Translating humanities insights into clinical AI settings
  • Public engagement and policy translation

“For AI to truly improve health outcomes, it must be designed with patient trust and wellbeing at its core,” Rahimzadeh said in the news release. “CHHAIN will provide a dedicated space to explore critical bioethics questions, such as how we ensure AI respects patient autonomy, addresses the needs of underserved communities and integrates meaningfully into clinical care. Our goal is to translate these insights into real-world health settings where AI is already shaping patient experiences.”

CHHAIN’s research mission was also developed thanks to pilot funding from the Margaret M. and Albert B. Alkek Department of Medicine at Baylor and a grant from Rice’s Provost’s TMC Collaborator Fund.

Texas A&M, the University of North Texas and the University of Texas at El Paso were also home to some of the 97 projects that received a portion of the $34.79 million in fundning from the NEH. See the full list here.



Source link

AI Research

Exclusive | Cyberport may use Chinese GPUs at Hong Kong supercomputing hub to cut reliance on Nvidia

Published

on


Cyberport may add some graphics processing units (GPUs) made in China to its Artificial Intelligence Supercomputing Centre in Hong Kong, as the government-run incubator seeks to reduce its reliance on Nvidia chips amid worsening China-US relations, its chief executive said.

Cyberport has bought four GPUs made by four different mainland Chinese chipmakers and has been testing them at its AI lab to gauge which ones to adopt in the expanding facilities, Rocky Cheng Chung-ngam said in an interview with the Post on Friday. The park has been weighing the use of Chinese GPUs since it first began installing Nvidia chips last year, he said.

“At that time, China-US relations were already quite strained, so relying solely on [Nvidia] was no longer an option,” Cheng said. “That is why we felt that for any new procurement, we should in any case include some from the mainland.”

Cyberport’s AI supercomputing centre, established in December with its first phase offering 1,300 petaflops of computing power, will deliver another 1,700 petaflops by the end of this year, with all 3,000 petaflops currently relying on Nvidia’s H800 chips, he added.

Cyberport CEO Rocky Cheng Chung-ngam on September 12, 2025. Photo: Jonathan Wong

As all four Chinese solutions offer similar performance, Cyberport would take cost into account when determining which ones to order, according to Cheng, declining to name the suppliers.



Source link

Continue Reading

AI Research

Why do AI chatbots use so much energy?

Published

on


In recent years, ChatGPT has exploded in popularity, with nearly 200 million users pumping a total of over a billion prompts into the app every day. These prompts may seem to complete requests out of thin air.

But behind the scenes, artificial intelligence (AI) chatbots are using a massive amount of energy. In 2023, data centers, which are used to train and process AI, were responsible for 4.4% of electricity use in the United States. Across the world, these centers make up around 1.5% of global energy consumption. These numbers are expected to skyrocket, at least doubling by 2030 as the demand for AI grows.



Source link

Continue Reading

AI Research

AI Transformation (AX) using artificial intelligence (AI) is spreading throughout the domestic finan..

Published

on


Getty Images Bank

AI Transformation (AX) using artificial intelligence (AI) is spreading throughout the domestic financial sector. Beyond simple digital transformation (DX), the strategy is to internalize AI across organizations and services to achieve management efficiency, work automation, and customer experience innovation at the same time. Financial companies are moving the judgment that it will be difficult to survive unless they raise their AI capabilities across the company in an environment where regulations and competition are intensifying. AX’s core is internal process innovation and customer service differentiation. AI can reduce costs and secure speed by quickly and accurately handling existing human-dependent tasks such as loan review, risk management, investment product recommendation, and internal counseling support.

At customer contact points, high-quality counseling is provided 24 hours a day through AI bankers, voice robots, and customized chatbots to increase financial service satisfaction. Industry sources say, “AX is not just a matter of technology, but a structural change that determines financial companies’ competitiveness and crisis response.”

First of all, major domestic banks and financial holding companies began to introduce in-house AI assistant and private large language model (LLM), establish a dedicated organization, and establish an AI governance system at the level of all affiliates. It is trying to automate internal work and differentiate customer services at the same time by establishing a strategic center at the group company level or introducing collaboration tools and AI platforms throughout the company.

KB Financial Group has established a ‘KB AI strategy’ and a ‘KB AI agent roadmap’ to introduce more than 250 AI agents to 39 core business areas of the group. It has established the ‘KB GenAI Portal’ for the first time in the financial sector to create an environment in which all executives and employees can utilize and develop AI without coding, and through this, it is efficiently changing work productivity and how they work.

Shinhan Financial Group is increasing work productivity with cloud-based collaboration tools (M365+Copilot) and introducing AI to the site by affiliates. Shinhan Bank placed Generative AI bankers at the window through the “AI Branch,” and in the application “SOL,” “AI Investment Mate” provides customized information to customers through card news.

사진설명

Hana Bank is operating a “foreign exchange company AI departure prediction system” using its foreign exchange expertise. It is a structure that analyzes 253 variables based on past transaction data to calculate the possibility of suspension of transactions and automatically guides branches to help preemptively respond.

Woori Financial Group established an AI strategy center within the holding under the leadership of Chairman Lim Jong-ryong and deployed AI-only organizations to all affiliates, including banks, cards, securities, and insurance.

Internet banks are trying to differentiate themselves by focusing on interactive search and calculation machines, forgery and alteration detection, customized recommendations, and spreading in-house AI culture. As there is no offline sales network, it is actively strengthening customer contact AI innovation such as app and mobile counseling.

Kakao Bank has upgraded its AI organization to a group and has more than 500 dedicated personnel. K-Bank achieved a 100% recognition rate with its identification card recognition solution using AI, and started to set standards by publishing papers to academia. Toss Bank uses AI to determine ID forgery and alteration (99.5% accuracy), automate mass document optical character recognition (OCR), convert counseling voice letters (STT), and build its own financial-specific language model.

Insurance companies are increasing accuracy, approval rate, and processing speed by introducing AI in the entire process of risk assessment, underwriting, and insurance payment. Due to the nature of the insurance industry, the effect of using AI is remarkable as the screening and payment process is long and complex.

Samsung Fire & Marine Insurance has more than halved the proportion of manpower review by automating the cancer diagnosis and surgical benefit review process through ‘AI medical review’. The machine learning-based “Long-Term Insurance Sickness Screening System” raised the approval rate from 71% to 90% and secured patents.

Industry experts view this AI transformation as a paradigm shift in the financial industry, not just the introduction of technology. It is necessary to create new added value and customer experiences beyond cost reduction and efficiency through AI. In particular, it is evaluated that the differentiation of financial companies will be strengthened only when AI and data are directly connected to resolving customer inconveniences.

However, preparing for ethical, security, and accountability issues is considered an essential task as much as the speed of AI’s spread. Failure to manage risks such as the impact of large language models on financial decision-making, personal information protection, and algorithmic bias can lead to loss of trust. This means that the process of developing accumulated experiences into industrial standards through small experiments is of paramount importance.

[Reporter Lee Soyeon]



Source link

Continue Reading

Trending