AI Research
Azerbaijan highlights growing focus on Artificial Intelligence and digital innovation

Azerbaijan’s vision for a digital economy is no longer a distant
ambition—it is a rapidly unfolding reality that is becoming
increasingly embedded in the country’s national development
strategy. Artificial intelligence (AI), now a key driver of global
economic growth and innovation, is gaining strategic importance
worldwide, with governments investing heavily in its development.
Recognizing that AI is a trend that cannot be overlooked,
Azerbaijan is also working to integrate this transformative
technology into its economic framework to support progress and
competitiveness. Alongside AI, initiatives in the Internet of
Things (IoT), blockchain, and automation reflect the country’s
commitment to embracing emerging technologies and aligning with
global digital trends.
This week, Baku hosted the opening of the VI International
Conference on Problems of Cybernetics and Informatics (PCI 2025) –
an event that serves not only as a scientific forum but also as a
reflection of Azerbaijan’s strategic alignment with the ongoing
Fourth Industrial Revolution. Organized at the Institute of Control
Systems under the Ministry of Science and Education, the three-day
hybrid conference has drawn over 200 leading scientists,
policymakers, and technologists from more than 30 countries,
including the United States, Germany, Japan, Kazakhstan, and
France.
The PCI conference underscores a critical transformation in
Azerbaijan’s approach to science and technology. It is not just
about academic exploration – it is about embedding innovation into
the core of national policy. From control systems and signal
processing to optimization, AI, and image recognition, the event’s
thematic focus reveals how seriously the country is taking the
foundational elements of digital transformation.
Professor Ali Abbasov, Director General of the Institute of
Control Systems, emphasized in his address that Azerbaijani science
has entered a “new phase of development” – a phase driven by both
government support and technological urgency. Natural language
processing, smart decision-making systems, and intelligent
automation are not only research areas but critical tools for
statecraft, security, and economic resilience.
“Artificial intelligence has become a defining feature of modern
science. In Azerbaijan, its importance is increasingly recognized
at both the scientific and policy levels,” Abbasov stated.
While Azerbaijan is making visible progress in AI research and
applications, Professor Rasim Aliguliyev, Vice-President of ANAS
and Director of the Institute of Information Technologies, offered
a more cautionary tone. His remarks highlighted the dual nature of
AI development—full of promise, yet fraught with strategic
vulnerabilities.
“Artificial intelligence opens immense opportunities, but it
also introduces serious risks—particularly in cybersecurity. As
threats become more intelligent, our defensive systems must evolve
in tandem,” Aliguliyev warned.
His comments reflect growing international concern that the rise
of intelligent threats – including state-sponsored cyberattacks and
algorithmic misinformation – poses as much danger as the benefits
AI brings. He further stressed that cyber sovereignty is now a key
national priority.
Aliguliyev also drew attention to an important domestic gap: a
lack of structured historical understanding of AI development in
Azerbaijan. Without proper documentation and public dissemination,
the country risks disconnecting future generations from the
scientific foundations that underpin today’s technological
advances.
“We must systematize the research of Azerbaijani scientists
conducted over the last 60 years and make this accessible to
society,” he said.
One of the conference’s underlying themes is the urgent need for
AI literacy among youth. Both Abbasov and Aliguliyev stressed that
the next generation must not only consume technology but understand
its evolution, ethics, and implications.
This aligns with Azerbaijan’s broader strategic goals,
particularly its ambition to nurture a digitally competent
workforce capable of participating in and contributing to the
global knowledge economy.
The conference’s agenda, ranging from optimal control theory to
fuzzy decision-making models, indicates a maturing scientific
ecosystem.
PCI 2025 reflects Azerbaijan’s growing focus on digital
transformation. With continued investment, international
collaboration, and capacity-building, the country is working to
strengthen its position in the field of AI and digital technologies
within the region.
But as experts at the conference have made clear, this journey
demands not only enthusiasm and innovation but also strategic
foresight, institutional memory, and robust cybersecurity
frameworks. Azerbaijan’s AI future will be shaped not just by what
it builds, but by how responsibly and securely it builds it.
AI Research
If I Could Only Buy 1 Artificial Intelligence (AI) Chip Stock Over The Next 10 Years, This Would Be It (Hint: It’s Not Nvidia)

While Nvidia continues to capture headlines, a critical enabler of the artificial intelligence (AI) infrastructure boom may be better positioned for long-term gains.
When investors debate the future of the artificial intelligence (AI) trade, the conversation generally finds its way back to the usual suspects: Nvidia, Advanced Micro Devices, and cloud hyperscalers like Microsoft, Amazon, and Alphabet.
Each of these companies is racing to design GPUs or develop custom accelerators in-house. But behind this hardware, there’s a company that benefits no matter which chip brand comes out ahead: Taiwan Semiconductor Manufacturing (TSM -3.05%).
Let’s unpack why Taiwan Semi is my top AI chip stock over the next 10 years, and assess whether now is an opportune time to scoop up some shares.
Agnostic to the winner, leveraged to the trend
As the world’s leading semiconductor foundry, TSMC manufactures chips for nearly every major AI developer — from Nvidia and AMD to Amazon’s custom silicon initiatives, dubbed Trainium and Inferentia.
Unlike many of its peers in the chip space that rely on new product cycles to spur demand, Taiwan Semi’s business model is fundamentally agnostic. Whether demand is allocated toward GPUs, accelerators, or specialized cloud silicon, all roads lead back to TSMC’s fabrication capabilities.
With nearly 70% market share in the global foundry space, Taiwan Semi’s dominance is hard to ignore. Such a commanding lead over the competition provides the company with unmatched structural demand visibility — a trend that appears to be accelerating as AI infrastructure spend remains on the rise.
Image source: Getty Images.
Scaling with more sophisticated AI applications
At the moment, AI development is still concentrated on training and refining large language models (LLMs) and embedding them into downstream software applications.
The next wave of AI will expand into far more diverse and demanding use cases — autonomous systems, robotics, and quantum computing remain in their infancy. At scale, these workloads will place greater demands on silicon than today’s chips can support.
Meeting these demands doesn’t simply require additional investments in chips. Rather, it requires chips engineered for new levels of efficiency, performance, and power management. This is where TSMC’s competitive advantages begin to compound.
With each successive generation of process technology, the company has a unique opportunity to widen the performance gap between itself and rivals like Samsung or Intel.
Since Taiwan Semi already has such a large footprint in the foundry landscape, next-generation design complexities give the company a chance to further lock in deeper, stickier customer relationships.
TSMC’s valuation and the case for expansion
Taiwan Semi may trade at a forward price-to-earnings (P/E) ratio of 24, but dismissing the stock as “expensive” overlooks the company’s extraordinary positioning in the AI realm. To me, the company’s valuation reflects a robust growth outlook, improving earnings prospects, and a declining risk premium.
TSM PE Ratio (Forward) data by YCharts
Unlike many of its semiconductor peers, which are vulnerable to cyclicality headwinds, TSMC has become an indispensable utility for many of the world’s largest AI developers, evolving into one of the backbones of the ongoing infrastructure boom.
The scale of investment behind current AI infrastructure is jaw-dropping. Hyperscalers are investing staggering sums to expand and modernize data centers, and at the heart of each new buildout is an unrelenting demand for more chips. Moreover, each of these companies is exploring more advanced use cases that will, at some point, require next-generation processing capabilities.
These dynamics position Taiwan Semi at the crossroad of immediate growth and enduring long-term expansion, as AI infrastructure swiftly evolves from a constant driver of growth today into a multidecade secular theme.
TSMC’s manufacturing dominance ensures that its services will continue to witness robust demand for years to come. For this reason, I think Taiwan Semi is positioned to experience further valuation expansion over the next decade as the infrastructure chapter of the AI story continues to unfold.
While there are many great opportunities in the chip space, TSMC stands alone. I see it as perhaps the most unique, durable semiconductor stock to own amid a volatile technology landscape over the next several years.
Adam Spatacco has positions in Alphabet, Amazon, Microsoft, and Nvidia. The Motley Fool has positions in and recommends Advanced Micro Devices, Alphabet, Amazon, Intel, Microsoft, Nvidia, and Taiwan Semiconductor Manufacturing. The Motley Fool recommends the following options: long January 2026 $395 calls on Microsoft, short August 2025 $24 calls on Intel, short January 2026 $405 calls on Microsoft, and short November 2025 $21 puts on Intel. The Motley Fool has a disclosure policy.
AI Research
Researchers train AI to diagnose heart failure in rural patients using low-tech electrocardiograms

Concerned about the ability of artificial intelligence models trained on data from urban demographics to make the right medical diagnoses for rural populations, West Virginia University computer scientists have developed several AI models that can identify signs of heart failure in patients from Appalachia.
Prashnna Gyawali, assistant professor in the Lane Department of Computer Science and Electrical Engineering at the WVU Benjamin M. Statler College of Engineering and Mineral Resources, said heart failure—a chronic, persistent condition in which the heart cannot pump enough blood to meet the body’s need for oxygen—is one of the most pressing national and global health issues, and one that hits rural regions of the U.S. especially hard.
Despite the outsized impact of heart failure on rural populations, AI models are currently being trained to diagnose the disease using data representing patients from urban and suburban areas like Stanford, California, Gyawali said.
“Imagine Jane Doe, a 62-year-old woman living in a rural Appalachian community,” he suggested. “She has limited access to specialty care, relies on a small local clinic, and her lifestyle, diet and health history reflect the realities of her environment: high physical labor, minimal preventive care, and increased exposure to environmental risk factors like coal dust or poor air quality. Jane begins to experience fatigue and shortness of breath—symptoms that could point to heart failure.
“An AI system, trained primarily on data from urban hospitals in more affluent, coastal areas, evaluates Jane’s lab results. But because the system was not trained on patients who share Jane’s socioeconomic and environmental context, it fails to recognize her condition as urgent or abnormal,” Gyawali said. “This is why this work matters. By training AI models on data from West Virginia patients, we aim to ensure people like Jane receive accurate diagnoses, no matter where they live or how their lives differ from national averages.”
The researchers identified the AI models that were most accurate at diagnosing heart failure in an anonymized sample of more than 55,000 patients who received medical care in West Virginia. They also pinpointed the exact parameters for providing the AI models with data that most enhanced diagnostic accuracy. The findings appear in Scientific Reports, a Nature portfolio journal.
Doctoral student Alina Devkota emphasized they trained the AI models to work from patients’ electrocardiogram results, rather than the echocardiogram readings typical for patient data from urban areas.
Electrocardiograms rely on round electrodes stuck to the patient’s torso to record electrical signals from the heart. According to Devkota, they don’t require specialized equipment or specialized training to operate, but they still provide valuable insights into heart function.
“One of the criteria to diagnose heart failure is by measuring the ‘ejection fraction,’ or how much blood is pumped out of the heart with every beat, and the gold standard for doing that is with echocardiography, which uses sound waves to create images of the heart and the blood flowing through its valves,” she said.
“But echocardiography is expensive, time-consuming and often unavailable to patients in the very same rural Appalachian states that have the highest prevalence of heart failure across the nation. West Virginia, for example, ranks first in the U.S. for the prevalence of heart attack and coronary heart disease, but many West Virginians don’t have local access to high-tech echocardiograms. They do have access to inexpensive electrocardiograms, so we tested whether AI models could use electrocardiogram readings to predict a patient’s ejection fraction.”
Devkota, Gyawali and their colleagues trained several AI models on patient records from 28 hospitals across West Virginia. The AI models used either “deep learning,” which relies on multilayered neural networks, or “non-deep learning,” which relies on simpler algorithms, to analyze the patient records and draw conclusions.
The researchers found the deep-learning models, particularly one called ResNet, did best at correctly predicting a patient’s ejection fraction based on data from 12-lead electrocardiograms, with the results suggesting that a larger dataset for training would yield even better results. They also found that providing the AI models with specific “leads,” or combinations of data from different electrode pairs, affected how accurate the models’ ejection fraction predictions were.
Gyawali said while AI models are not yet being used in clinical practice due to reliability concerns, training an AI to successfully estimate ejection fraction from electrocardiogram signals could soon give clinicians an edge in protecting patients’ cardiac health.
“Heart failure affects more than six million Americans today, and factors like our aging population mean the risk is growing rapidly—approximately 1 in 4 people alive today will experience heart failure during their lifetimes. The prevalence is even higher in rural Appalachia, so it’s critical the people here do not continue to be overlooked.”
Additional WVU contributors to the research included Rukesh Prajapati, graduate research assistant; Amr El-Wakeel, assistant professor; Donald Adjeroh, professor and chair for computer science; and Brijesh Patel, assistant professor in the WVU Health Sciences School of Medicine.
More information:
AI analysis for ejection fraction estimation from 12-lead ECG, Scientific Reports (2025). DOI: 10.1038/s41598-025-97113-0scientific
Citation:
Researchers train AI to diagnose heart failure in rural patients using low-tech electrocardiograms (2025, August 31)
retrieved 31 August 2025
from https://medicalxpress.com/news/2025-08-ai-heart-failure-rural-patients.html
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