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International Gaming Standards Association releases best practices document for artificial intelligence — CDC Gaming

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  • Rege Behe, CDC Gaming

The International Gaming Standards Association on Monday announced that it has released “Ethical Use of Artificial Intelligence,” the first in a series of new best practices documents by the association.

“The EAI (Ethical Artificial Intelligence) Committee has completed work on our very first release of a set of best practices, which is a new document form for us,” IGSA President Mark Pace said in a statement. “The EAI is also the first of our non-technical committees to release such a document.

“The nine best practices for the ethical use of AI in the gaming industry was completed with input from the IGSA Regulatory Committee, which is composed exclusively of representatives from regulatory authorities. The membership recently voted to approve the document.”

The best practices were created primarily for use by regulators providing a framework to “help provide oversight of AI use in our industry,” Pace added. “I would like to thank Richard Bayliss, chair of the EAI committee, and the committee members for their diligent work in creating these first set of best practices.”

“I’m grateful to the committee, for their work on this new effort,” said IGSA Chairman and former Chair of the EAI committee Nimish Purohit. “Our committee members have been putting in the time for the meetings and new members are joining IGSA to contribute. This is the first in a series of new best practices from IGSA and we’ll be releasing them from our other committees, too. These documents will be considered ’living documents,’ and we will add to them as the committees continue to create work output.”

The public can access this new document on IGSA’s website at https://igsa.org/best-practices.

 

 

 

 



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Concordia-led research program is Indigenizing artificial intelligence | Education

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An initiative steered by Concordia researchers is challenging the conversation around the direction of artificial intelligence (AI). It charges that the current trajectory is inherently biased against non-Western modes of thinking about intelligence — especially those originating from Indigenous cultures. As a way of decolonising the future of AI, they have created the Abundant Intelligences research program: an international, multi-institutional and interdisciplinary program that seeks to rethink how we conceive of AI. The driving concept behind it is the incorporation of Indigenous knowledge systems to create an inclusive, robust concept of intelligence and intelligent action, and how that can be embedded into existing and future technologies.

The full concept is described in a recent paper for the journal AI & Society.

 “Artificial intelligence has inherited conceptual and intellectual ideas from past formulations of intelligence that took on certain colonial pathways to establish itself, such as emphasizing a kind of industrial or production focus,” says Ceyda Yolgörmez, a postdoctoral fellow with Abundant Intelligences and one of the paper’s authors.

They write that this scarcity mindset contributed to resource exploitation and extraction that has extended a legacy of Indigenous erasure that influences discussion around AI to this day, adds lead author Jason Edward Lewis. The professor in the Department of Design and Computation Arts is also the University Research Chair in Computational Media and the Indigenous Future Imaginary. “The Abundant Intelligences research program is about deconstructing the scarcity mindset and making room for many kinds of intelligence and ways we might think about it.”

The researchers believe this alternative approach can create an AI that is oriented toward human thriving, that preserves and supports Indigenous languages, addresses pressing environmental and sustainability issues, re-imagines public health solutions and more.

Relying on local intelligence

The community-based research program is directed from Concordia in Montreal but much of the local work will be done by individual research clusters (called pods) across Canada, in the United States and in New Zealand.

The pods will be anchored to Indigenous-centred research and media labs at Western University in Ontario, the University of Lethbridge in Alberta, the University of Hawai’i—West Oahu, Bard College in New York and Massey University in New Zealand.

They bring together Indigenous knowledge-holders, cultural practitioners, language keepers, educational institutions and community organizations with research scientists, engineers, artists and social scientists to develop new computational practices fitted to an Indigenous-centred perspective.

The researchers are also partnering with AI professionals and industry researchers, believing that the program will open new avenues of research and propose new research questions for mainstream AI research. “For example, how do you build a rigorous system out of a small amount of resource data like different Indigenous languages?” asks Yolgörmez.  “How do you make multi-agent systems that are robust, recognize and support non-human actors and integrate different sorts of activities within the body of a single system?”

Lewis asserts that their approach is both complementary and alternative to mainstream AI research, particularly regarding data sets like Indigenous languages that are much smaller than the ones currently being used by industry leaders. “There is a commitment to working with data from Indigenous communities in an ethical way, compared to simply scraping the internet,” he says. “This yields miniscule amounts of data compared to what the larger companies are working with, but it presents the potential to innovate different approaches when working with small languages. That can be useful to researchers who want to take a different approach than the mainstream.

“This is one of the strengths of the decolonial approach: it’s one way to get out of this tunnel vision belief that there is only one way of doing things.”

Hēmi Whaanga, professor at Massey University in New Zealand, also contributed to the paper.

Read the cited paper: “Abundant intelligences: placing AI within Indigenous knowledge frameworks.

— By Patrick Lejtenyi

Concordia University

@ConcordiaUnews

— AB





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Eckerd College launches new minor in AI studies – News

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It couldn’t have come at a better time. Students have become more and more reliant on AI for coursework, and national studies are sending up warning signals about the new and creative ways students are utilizing AI to complete assignments.

“AI is definitely a balancing act that I think so many of us in higher education are dealing with,” says Ramsey-Tobienne, who also oversees the College Academic Honor Council. “As professors, we have to decide how, if and when to use it, and we need to help our students develop into critical consumers of AI. Indeed, critical AI literacy is really the foundation of so much of what we’re doing in the minor.

“For better or worse, AI is not going anywhere,” Ramsey-Tobienne adds. “And I think we do ourselves a disservice if we’re not helping our students to understand how to navigate this new AI world.” 



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AI drug companies are struggling—but don’t blame the AI

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Moonshot hopes of artificial intelligence being used to expedite the development of drugs are coming back down to earth. 

More than $18 billion has flooded into more than 200 biotechnology companies touting AI to expedite development, with 75 drugs or vaccines entering clinical trials, according to Boston Consulting Group. Now, investor confidence—and funding—is starting to waver.

In 2021, venture capital investment in AI drug companies reached an apex with more than 40 deals being made worth about $1.8 billion. This year, there have been fewer than 20 deals worth about half of that peak sum, the Financial Times reported, citing data from Pitchbook. 

Some existing companies have struggled in the face of challenges. In May, biotech company Recursion tabled three of its prospective drugs in a cost-cutting effort following a merger with Exscientia, a similar biotech firm, last year. Fortune previously reported that none of Recursion’s discovered AI-compounds have reached the market as approved drugs. After a major restructuring in December 2024, biotech company BenevolentAI delisted from the Euronext Amsterdam stock exchange in March before merging with Osaka Holdings. 

A Recursion spokesperson told Fortune the decision to shelve the drugs was “data-driven” and a planned outcome of its merger with Exscientia.

“Our industry’s 90% failure rate is not acceptable when patients are waiting, and we believe approaches like ours that integrate cutting-edge tools and technologies will be best positioned for long-term success,” the spokesperson said in a statement.

BenevolentAI did not respond to a request for comment.

The struggles of the industry coincide with a broader conversation around the failure of generative AI to deliver more quickly on its lofty promises of productivity and efficiency. An MIT report last month found 95% of generative AI pilots at companies failed to accelerate revenue. A U.S. Census Bureau survey this month found AI adoption in large U.S. companies has declined from its 14% peak earlier this year to 12% as of August.

But the AI technology used to help develop drugs is far different than those from large language models used in most workplace initiatives and should therefore not be held to the same standards, according to Scott Schoenhaus, managing director and equity research analyst for KeyBanc Capital Markets Inc. Instead, the industry faces its own set of challenges.

“No matter how much data you have, human biology is still a mystery,” Schoenhaus told Fortune.

Macro and political factors drying up AI drug development funding

At the crux of the slowed funding and slower development results may not be the limitations of the technology itself, but rather a slew of broader factors, Schoenhaus said.

“Everyone acknowledges the funding environment has dried up,” he said. “The biotech market is heavily influenced by low interest rates. Lower interest rates equals more funding coming into biotechs, which is why we’re seeing funding for biotech at record lows over the last several years, because interest rates have remained elevated.”

It wasn’t always this way. Leveraging AI in drug development is not only thanks to growing access to semiconductor chips, but also how technology has allowed for quick and now cheap ways of mapping the entire human genome. In 2001, it cost more than $100 million to map the human genome. Two decades later, that undertaking cost about $1,000.

Beyond having the pandemic to thank for next-to-nothing interest rates in 2021, COVID also expedited partnerships between AI drug development start ups and Big Pharma companies. In early 2022 biotechnology startup AbCellera and Eli Lilly got emergency FDA approval for an antibody used in the early COVID vaccines, a tangible example of how the tech could be used to aid in drug discoveries.

But since then, there have been other industry hurdles, Schoenhaus said, including Big Pharma cutting back on research and development costs amid slowing demand, as well as uncertainty surrounding whether President Donald Trump would impose a tariff on pharmaceuticals as the U.S. and European Union tussled over a trade deal. Trump signed a memo this week threatening to ban direct-to-consumer advertising for prescription medications, theoretically driving down pharma revenues.

Limitations of AI

That’s not to say there haven’t been technological hiccups in the industry.

“There is scrutiny around the technology themselves,” Schoenhaus said. “Everyone’s waiting for these readouts to prove that.”

The next 12 months of emerging data from AI drug development startups will be critical in determining how successful these companies stand to be, Schoenhaus said. Some of the results so far have been mixed. For example, Recursion released data from a mid-stage clinical trial of a drug to treat a neurovascular condition in September last year, finding the drug was safe but that there was little evidence of how effective it was. Company shares fell double digits following the announcement. 

These companies are also limited by how they’re able to leverage AI. The drug development process is one that takes 10 years and is intentionally bottlenecked to ensure the safety and efficacy of the drugs in question, according to according to David Siderovski, chair of University of North Texas Health Science Center’s Department of Pharmacology & Neuroscience, who has previously worked with AI drug development companies in the private sector. Biotechnology companies using AI to make these processes more efficient are usually only tackling one small part of this bottleneck, such as being able to screen and identify a drug-like molecule faster than previously.

“There are so many stages that have to be jumped over before you can actually declare the [European Medicines Agency], or the FDA, or Health Canada, whoever it is, will designate this as a safe, approved drug to be marketed to patients out in the world,” Siderovski told Fortune. “That one early bottleneck of auditioning compounds is not the be-all and end-all of satisfying shareholders by announcing, ‘We have approval for this compound as a drug.’”

Smaller companies in the sector have also made a concerted effort to partner less with Big Pharma companies, preferring instead to build their own pipelines, even if it means no longer having access to the franchise resources of industry giants. 

“They want to be able to pursue their technology and show the validation of their platform sooner than later,” Schoenhaus said. “They’re not going to wait around for large pharma to pursue a partnered molecule. They’d rather just do it themselves and say, ‘Hey, look, our technology platform works.’”

Schoenhaus sees this strategy as a way for companies looking to prove themselves by perfecting the use of AI to better understand the slippery, mysterious, and still greatly unknown frontier of human biology.

“It’s just a very much more complex application of AI,” he said, “hence why I think we are still seeing these companies focus on their own internal pipelines so that they can really, squarely focus their resources on trying to better their technology.”



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