( September 15, 2025, 10:44 GMT | Official Statement) — MLex Summary: The EU aims to enhance the prospects of digitalization and artificial intelligence in research, the European Commission said on Monday in a strategy for a stronger European research and technology ecosystem. Among the five actions, it also wants to ensure data access for researchers. The EU seeks to remain a global leader in research, innovation and critical technologies and is encouraging scientists to choose Europe, the commission said.Statement follows. …
AI Research
Evacuations in Alaska after glacial melt raises fears of record flooding in Juneau

BBC News
Some Alaskans are evacuating their homes as meltwater escapes a basin dammed by the Mendenhall Glacier – raising fears of record-breaking flooding in the US state’s capital city.
The National Weather Service (NWS) office in Juneau has issued a flood warning as glacial outburst water flows into Mendenhall River, putting homes in the area at risk.
For days, local officials have warned residents they may be forced to evacuate. On Tuesday, they confirmed water had begun escaping the ice dam and flooding was expected in the coming days.
The glacier, a popular tourist attraction, is 12 miles (19km) from Juneau.
Water levels reached 9.85ft (3m) on Tuesday, below major flooding levels which begin at 14ft, the NWS said. But by Wednesday morning they were above 16ft, which is considered a crest.
“This will be a new record, based on all of the information that we have,” Nicole Ferrin, a weather service meteorologist, said at a press conference on Tuesday.

The Juneau city website explains that glacial lake outbursts happen when a lake of melting snow and ice and rain drains rapidly. It compares the process to pulling out a plug from a full bathtub. When meltwaters reach a certain level, they can overtop a glacier that previously held them back.
Alaska Governor Mike Dunleavy issued a state disaster declaration on Sunday because of the “imminent threat of catastrophic flooding from a glacier lake outburst flood (GLOF)” in the Juneau area.
Flooding has been an annual concern in the area since 2011, as homes have been damaged and swept away by deluges. Last year, hundreds of residences were damaged.
Mountain glaciers are shrinking around the world as temperatures rise.
Extra meltwater can collect to form glacial lakes. Scientists have observed an increasing number and size of these lakes globally since 1990.
The natural dams of ice and rock that hold the lakes in place can fail suddenly and unpredictably, triggering floods.
Researchers expect climate change to increase the number of these outburst floods in future, although past trends – and the causes of individual floods – are complicated.
AI Research
How to Turn Early Adoption into ROI

To realize AI’s full potential, organizations must be in it for the long game; a pursuit that requires patience, persistence, and strategic alignment. While quick wins are important, they won’t stand alone in delivering meaningful value; agile experimentation is a necessity, execution requires iteration, and early challenges are inevitable.
Protiviti’s inaugural global AI Pulse Survey highlights a compelling correlation between AI maturity and return on investment (ROI) as well as a disconnect between expectations and performance for many organizations in the early stages of AI adoption. The survey, which had more than 1,000 respondents, categorizes organizations from more than a dozen industry sectors into five maturity stages:
-
Stage 1: Initial — Recognizing AI’s potential but lacking strategic initiatives.
-
Stage 2: Experimentation — Running small-scale pilots to assess feasibility.
-
Stage 3: Defined — Integrating AI into business processes.
-
Stage 4: Optimization — Enhancing performance and scalability with data feedback.
-
Stage 5: Transformation — AI drives significant business transformation.
Expectations from AI Investments
As organizations progress through these stages, their satisfaction with AI investments improves. In fact, of the 50% of survey respondents who indicated that they are in the early stages (initial or experimentation) of AI adoption, about 26% reported that AI investment returns fell below expectations.
Of course, not all AI experimenters are experiencing poor returns. Indeed, a majority report ROI meeting expectations, but the results showed a higher concentration of slightly exceeded or significantly exceeded ROI expectations among groups in the middle to advanced stages of AI adoption.
In reviewing what differentiates successful experimenters — those in the experimentation stage of AI adoption who reported exceeding ROI expectations — from those that did not, we find three compelling attributes:
-
Focus on balanced key performance indicators (KPIs) and measuring success using a mix of financial and operational indicators, such as employee productivity, cost savings and revenue growth;
-
Report fewer challenges with skills and integration, as they tend to invest in training, upskilling and cross-functional collaboration;
-
Seek diverse support, including strategic planning assistance and data management tools, not just training.
One more thing: These successful experimenters also emphasized financial and operational outcomes more evenly, while others focused more narrowly on cost savings.
Challenges AI Experimenters Face
Many AI experimenters are struggling not because of unrealistic expectations, but more likely due to unclear objectives or misunderstood value potential. This challenge and difficulties with integrating AI into existing systems are the two biggest hurdles faced by organizations in the early stages of adoption (stages 1 and 2).
Integration issues peak in the middle stages of AI adoption, but they begin in the early stages. Interestingly, the challenge related to understanding the most impactful use cases is most acute in the earliest stage, dips in the middle stages, and resurfaces even at the highest levels of maturity, albeit for different reasons.
The AI experimenters, of course, are unsure how to apply AI strategically and technical compatibility remains a hurdle, unlike the more mature companies. Compounding these issues are unclear or conflicting regulatory guidance and difficulties with data availability and access, a foundational issue for effective AI deployment.
It is the lack of structured approaches, unclear project objectives, and unreliable data that often lead to underwhelming ROI for these companies in the early stages.
Redefining AI Success
In another interesting finding from the survey, we see that as organizations progress to stages 3 to 5, their success metrics evolve from cost savings and process efficiency to revenue growth, customer satisfaction and innovation.
The good news is that organizations starting out on their AI journey can course-correct by focusing on these success metrics. It starts with redefining AI success, which means moving beyond short-term wins to sustainable transformation.
Having a clear understanding of what you’re trying to accomplish with AI is critical from the outset. Without clarity on what AI is meant to achieve, and how value will be measured, they will struggle to unlock its full potential.
Early experimenters should seek to build a solid foundation by:
Asking Why? Why are you adopting AI? What specific problems are you solving?
Investing in data infrastructure is critical. This step should involve auditing existing data systems and implementing robust data governance frameworks. Organizations will be well served in considering cloud-based platforms for scalability.
Developing a robust integration strategy early. Many existing systems were not originally designed to support AI. To overcome this deficiency, organizations should be proactive in assessing and modernizing infrastructure to handle AI workloads in the initial phases. They are likely to find greater success if IT, data and business teams collaborate and there’s shared ownership of AI initiatives to ensure alignment and adoption.
Aligning AI strategies with business objectives and organizational culture: This is not just a technical step. It involves ensuring organizational readiness and managing cultural and operational changes effectively.
Turning AI Trials into ROI Triumphs
The research is clear: there’s tremendous ROI potential for early-stage companies that can test, learn and scale AI use cases swiftly. Yet, while speed is crucial to capturing value, it’s important to recognize that AI experimentation is ongoing, requiring continuous iteration.
To win, think big, act swiftly, and continuously evolve — never stop.
AI Research
How is AI Changing the Way You Work at Duke? – Duke Today
AI Research
Exploit AI, digitalization in research and technology strategy, EU says | MLex
Prepare for tomorrow’s regulatory change, today
MLex identifies risk to business wherever it emerges, with specialist reporters across the globe providing exclusive news and deep-dive analysis on the proposals, probes, enforcement actions and rulings that matter to your organization and clients, now and in the longer term.
Know what others in the room don’t, with features including:
- Daily newsletters for Antitrust, M&A, Trade, Data Privacy & Security, Technology, AI and more
- Custom alerts on specific filters including geographies, industries, topics and companies to suit your practice needs
- Predictive analysis from expert journalists across North America, the UK and Europe, Latin America and Asia-Pacific
- Curated case files bringing together news, analysis and source documents in a single timeline
Experience MLex today with a 14-day free trial.
-
Business2 weeks ago
The Guardian view on Trump and the Fed: independence is no substitute for accountability | Editorial
-
Tools & Platforms1 month ago
Building Trust in Military AI Starts with Opening the Black Box – War on the Rocks
-
Ethics & Policy2 months ago
SDAIA Supports Saudi Arabia’s Leadership in Shaping Global AI Ethics, Policy, and Research – وكالة الأنباء السعودية
-
Events & Conferences4 months ago
Journey to 1000 models: Scaling Instagram’s recommendation system
-
Jobs & Careers3 months ago
Mumbai-based Perplexity Alternative Has 60k+ Users Without Funding
-
Podcasts & Talks2 months ago
Happy 4th of July! 🎆 Made with Veo 3 in Gemini
-
Education3 months ago
VEX Robotics launches AI-powered classroom robotics system
-
Education2 months ago
Macron says UK and France have duty to tackle illegal migration ‘with humanity, solidarity and firmness’ – UK politics live | Politics
-
Funding & Business3 months ago
Kayak and Expedia race to build AI travel agents that turn social posts into itineraries
-
Podcasts & Talks2 months ago
OpenAI 🤝 @teamganassi