AI Research
Artificial Intelligence: Applications in Healthcare

Time of Event
4 August, 09:00–14:10
5 August, 09:00–16:00
6 August, 08:45–15:15
7 August, 09:00–15:30
8 August, 09:00–15:15
Summary
Artificial intelligence (AI) is becoming more salient in the healthcare sector, optimizing workflows, enhancing efficiency, enabling a shift into proactive care, and reducing costs. To promote knowledge on the multifaceted issues on AI in healthcare, ADBI, the Asian Development Bank (ADB), the International Cooperation and Development Fund (ICDF), and the Japan International Cooperation Agency (JICA) are co-organizing a 5-day training workshop to explore the transformative role of AI in the healthcare ecosystem.
However, there are various considerations in adopting AI. The first concerns data security and making sure that consumer privacy is protected. Another is ensuring data transparency and integrity while scaling up AI’s impact. Building a skilled workforce is also important. Having people who are willing to adopt new technologies and develop AI expertise is crucial because they can drive the transformation process.
To integrate AI into health systems, governments must address three key areas: infrastructure, governance, and financing. This includes ensuring robust digital connectivity and providing essential physical assets, such as computers, medical equipment, and data centers. Moreover, since AI utilizes personal data, it is vulnerable to breaches and fraud. Stricter rules on sharing information and data security are essential.
This event brings together healthcare professionals, technologists, policymakers, and innovators to delve into the latest advancements, applications, financing, and ethical considerations of AI in health. Participants will gain a comprehensive understanding of how AI is reshaping healthcare delivery, diagnostics, and public health.
Objectives
- Exchanging knowledge and insights. Facilitating the exchange of information on the emerging intersection between AI and health, including in public health monitoring and diagnostics, personalized and telemedicine, and healthcare administration.
- Building a community of practice across health stakeholders. Bringing together a multistakeholder network of government officials, international policymakers, private sector practitioners, and academic experts to discuss the implications of AI across healthcare sectors, policy areas, disciplinary boundaries, and levels of governance.
- Informing policymakers on the diversity of AI applications in healthcare. Throughout 5 days of interactive roundtables and site visits, participants will be invited to explore AI in healthcare, its applications in underlying systems, the interplay between digitalization and financing, ethical and equity considerations, and specific, diverse country approaches.
- Strengthening the evidential foundation for policymaking. Stimulating discussions on existing good practices and transferrable lessons from the 16 countries that have adopted governance frameworks to manage AI across Asia and the Pacific, and the policy-related challenges and opportunities associated with AI adoption.
Target Participants
- Mid-to-senior-level officials from health ministries
- Senior officials from disaster management agencies in charge of monitoring health risks and epidemics
- Senior city officials in charge of health emergency response (including for elderly care)
- Practitioners from the private sector and academia working on AI integration in healthcare
Output
- Four-day in-person workshop plus 1-day site visit to see firsthand the contributions of the private sector in Japan through the development of innovative equipment and technologies (e.g., mobile hospitals)
- Shared knowledge on the utilization of AI in healthcare and the promotion of wider AI usage in the healthcare industry among government officials and experts from DMCs
How to Register
By invitation or prior arrangement with ADBI
Partners
- Asian Development Bank
- International Cooperation and Development Fund
- Japan International Cooperation Agency
- In collaboration with: Yokohama Urban Solution Alliance
AI Research
GEAT) Announces Official Re-Launch of Wall Street Stats Mobile Applications with Advanced AI and Machine Learning Features

RENO, Nev., Sept. 02, 2025 (GLOBE NEWSWIRE) — GreetEat Corporation (OTC: GEAT), a forward-thinking technology company dedicated to building next-generation platforms, today announced the official re-launch of its subsidiary Wall Street Stats (WallStreetStats.io) applications on both iOS and Android. The updated apps deliver a powerful suite of new tools designed to empower investors with deeper insights, smarter analytics, and a cutting-edge user experience.
The new release introduces an upgraded platform driven by artificial intelligence and machine learning, providing users with:
- Detailed Quotes & Company Profiles – Comprehensive financial data with intuitive visualization.
- Summarized Market Intelligence – AI-powered data aggregation and automated summarization for faster decision-making.
- Sentiment Analysis via Reddit & Social Platforms – Machine learning models that detect, classify, and quantify investor sentiment in real time.
- Trending Stocks, Top Gainers, Top Losers, and Most Active Lists – AI-curated market movers updated dynamically throughout the day.
- Smart Watchlists – Personalized watchlists enhanced by predictive analytics and recommendation algorithms.
- AI-Driven Market Predictions – Leveraging natural language processing (NLP), deep learning, and behavioral pattern recognition to uncover emerging investment opportunities.
“Wall Street Stats was designed to go beyond traditional financial data and offer an AI-first experience that empowers both retail and professional investors,” said Victor Sima, CTO of GreetEat Corporation. “With this re-launch, we’ve combined the best of real-time market intelligence with machine learning powered insights that make data more actionable, intuitive, and predictive. This is just the beginning of our vision to democratize Wall Street – level analytics for everyone.”
The platform’s enhanced features are aimed at giving investors a competitive edge by uncovering hidden patterns, predicting momentum, and providing smarter investment signals. With natural language processing, predictive modeling, and real-time data analytics, Wall Street Stats represents a new era in financial technology innovation.
The applications are now available for download on both the Apple App Store and Google Play Store.
About GreetEat Corporation
GreetEat Corporation (OTC: GEAT) is a technology-driven platform designed to bring people together through virtual dining. Whether for business meetings, celebrations, or personal connections, GreetEat blends video conferencing with meal delivery to create meaningful, shared experiences anywhere in the world. In addition to GreetEat.com, the company also owns WallStreetStats.io, a cutting-edge fintech app that leverages AI and machine learning to analyze social sentiment, market trends, and trading signals in real time, available on both Android and iOS stores.
For Investor Relations or Media Inquiries:
GreetEat Corporation
Email: investors@GreetEat.com
Website: www.GreetEat.com
Connect with GreetEat Corporation
Website: www.GreetEat.com
Website: www.WallStreetStats.io
Follow us on social media:
Follow us on social media:
Download the apps with the below links:
Apple App Store and Google Play Store.
Forward-Looking Statements: This press release contains forward-looking statements within the meaning of the Private Securities Litigation Reform Act of 1995. These forward-looking statements are based on current expectations, estimates, and projections about the company’s business and industry, management’s beliefs, and certain assumptions made by the management. Such statements involve risks and uncertainties that could cause actual results to differ materially from those in the forward-looking statements. The company undertakes no obligation to update or revise any forward-looking statements, whether as a result of new information, future events, or otherwise.
AI Research
Medical Horizons and Bowhead Health Inc. Announce Exclusive Partnership to Bring AI-Powered Clinical Research Solutions to Italy, Turkey, and Cyprus

FLORENCE, Italy, Sept. 2, 2025 /PRNewswire/ — Medical Horizons S.r.l., (medicalhorizons.it) a leading distributor of Artificial Intelligence (AI) solutions for healthcare, today announced an exclusive distribution agreement with Bowhead Health Inc.(bowheadhealth.com), a Canadian innovator in secure health data management and AI-powered clinical trial matching.
Under this agreement, Medical Horizons becomes the exclusive partner for Bowhead Health in Italy, Turkey, and Cyprus, expanding access to advanced technologies that improve clinical trial recruitment, optimize research workflows, and strengthen hospital and research institute capabilities across the region.
Addressing Healthcare’s Urgent Needs
Healthcare systems worldwide face growing challenges from workforce shortages and rising clinical demands. Artificial intelligence is increasingly recognized as a critical tool to help address these pressures, enabling hospitals and researchers to deliver faster, more personalized care.
“Manual clinical trial matching is slow, burdensome, and often misses the genomic details that matter most,” said Francisco Diaz-Mitoma, CEO of Bowhead Health Inc. “Our platform allows hospitals to scan global and local trial databases instantly, helping them connect patients with the right therapies far more efficiently.”
Bowhead’s AI-driven technology reduces time spent on manual searches, simplifies workflows, and provides confidence for both researchers and patients, accelerating progress toward personalized medicine.
A Strategic Expansion for Medical Horizons
For Medical Horizons, the partnership marks a continuation of its mission to bring best-in-class AI technologies to European healthcare providers.
“This collaboration represents a decisive step in our strategy to deliver practical, high-impact AI solutions,” said Guido Osti, CEO of Medical Horizons. “Bowhead Health has developed a unique platform that combines secure health data management, artificial intelligence, and clinical research. We are proud to guide their expansion in Italy, Turkey, and Cyprus.”
Bowhead Health Inc.
Based in Ottawa, Canada, Bowhead Health has developed a secure digital ecosystem that integrates:
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An AI-powered trial matching engine for personalized patient recruitment.
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A de-identified health data platform compliant with GDPR, HIPAA, and global security standards.
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Collaborative digital flows connecting patients, hospitals, researchers, and pharmaceutical companies.
Bowhead Health is currently validating its technology with leading hospitals in Canada, Europe, India, and the United States, with strong early results.
AI Research
To scale AI and bring Zero Trust security, look to the chips

Enabling secure and scalable artificial intelligence for Defense Department missions depends on deploying the right semiconductors across the AI lifecycle, from data sourcing and model training to deployment and real-time inferencing.
Enabling secure and scalable artificial intelligence architectures for Defense Department and public sector missions depends on deploying the right compute technologies across the entire AI lifecycle from data sourcing and model training to deployment and real-time inferencing – in other words, drawing conclusions.
At the same time, securing the AI pipeline can be accomplished through features like hardware-based semiconductor security such as confidential computing to provide a trusted foundation. This enables Zero Trust principles to be applied across both information technology (IT) and operational technology (OT) environments, with OT having different security needs and constraints compared to traditional enterprise IT systems. Recent DoD guidance on Zero Trust specifically addresses OT systems such as industrial control systems that have become attack vectors for adversaries.
Breaking Defense discussed the diverse roles that chips play across AI and Zero Trust implementations with Steve Orrin, Federal Security Research Director and a Senior Principal Engineer with Intel.
Breaking Defense: In this conversation we’re going to be talking about chip innovation for public sector mission impact. So what does that mean to you?
Orrin: The way to think about chip innovation for public sector is understanding that public sector writ large is almost a macro of the broader private sector industries. Across the federal government and public sector ecosystem, with some exceptions, you’ll find almost every kind of use case with much of the same usages and requirements that you find across multiple industries in the private sector: logistics and supply chain management, facilities operations and manufacturing, healthcare, and finance.
When we talk about chip innovation specific for the public sector, it’s this notion of taking private sector technology solutions and capabilities and federalizing them for the specific needs of the US government. There’s a lot of interplay there and, similarly, when we develop technologies for the public sector and for federal missions, oftentimes you find opportunities for commercializing those technologies to address a broader industry requirement.
With that as the baseline, we look at their requirements and whether there’s scalability of IT systems and infrastructure to support agencies in helping them achieve their goals around enabling the end user to perform their job or mission. In the DoD and specific industries, oftentimes they’ll have a higher security bar, and in the Defense Department there’s an edge component to their mission.
Being able to take enterprise-level capabilities and move them into edge and theater operations where you don’t necessarily have large-scale cloud infrastructure or other network access means you have to be more self-contained, more mobile. It’s about innovations that address specific mission needs.
One of the benefits of being Intel is that our chips are inside the cloud, the enterprise data center, the client systems, the edge processing nodes. We exist across that entire ecosystem, including network and wireless domains. We can bring the best of what’s being done at those various areas and apply them to specific mission requirements.
We also see a holistic view of cloud, on-prem, end-user, and edge requirements. We can look at the problem sets that they’re having from a more expansive approach as opposed to a stove pipe that’s looking just at desktop and laptop use cases or just at cloud applications.
This holistic view of the requirements enables us to help the government adopt the right technology for their mission. That comes to the heart of what we do. What the government needs is never one-size-fits-all when it comes to solving public-sector requirements.
It’s helping them achieve the right size, weight, and power profile, the right security requirements, and the right mission enabling and environmental requirements to meet their mission needs where they are, whether that be cloud utilization or at the pointy edge of the spear.

What’s required to enable secure, scalable AI architectures that advance technology solutions for national security?
From an Intel perspective, scalable AI is being able to go both horizontally and vertically to have the right kind of computing architecture for every stage of the lifecycle, from the training to the tuning, deployment, and inferencing. There are going to be different requirements from both SWaP and horsepower of the actual AI workload that’s performing.
Oftentimes you’ll find that it’s not the AI training, which everyone focuses on because it feels like the big problem, because that’s the tip of the iceberg. When you look at the challenge, sometimes it’s around data latency or input ingestion speeds. How do I get all of this data into the systems?
Maybe it’s doing federated learning because there’s too much data to put it all in one place and it’s all from different sensors. There’s actually benefits to pushing that compute closer to where the data is being generated and doing federated learning out at the edge.
At the heart of why Intel is a key player in this is understanding that it’s not a one size fits all approach from a compute perspective but providing that right compute to the needs of the various places in the horizontal scale.
At the same time there’s the vertical scale, which is the need to do massive large language model training, or inference across thousands of sensors, and fusion of data across multimodal sensors that are capturing different kinds of data such as video, audio, and RF spectrum in order to get an accurate picture of what’s being seen across logistics and supply chains, for example.
I need to pull in location data of where supplies are across vendor supply chains. I need to be able to pull in information from my project management demand signal to understand what’s needed where, and from mission platforms like planes, vehicles, weapons systems, radar stations, and sensor technologies to know where I’m deploying people. Those are different kinds of data sets and structures that have to be fused together in order to enable supply chain and logistics management at scale.
Being able to scale up computing power to meet the needs of those various parts is about how we’re providing the right architecture for those different parts of the ecosystem and AI pipeline.
Intel is helping defense and intelligence agencies adopt AI in ways that are secure, scalable, and aligned with Zero Trust principles, especially in operational technology environments as opposed to IT environments. Explain.
Operational technology has been around for a long time and is distinct from what is known as information technology or enterprise systems, where you have enterprise email and your classic collaboration and document management.
OT are the things that are not that – everything from fire suppression and alerting systems, HVAC, the robots and machines and error detection technologies that do quality control. Those are the operational technologies that perform the various task specific functions that support the operations and mission of an organization, they are not your classic IT operations.
One of the interesting transitions over the last many years is that the actual kinds of technology in those OT environments now look and feel a lot like IT. It’s a set of servers or client systems that are performing a fixed function, but the vendors are still your classic laptop and PC OEMs.
That mixing of the IT-style equipment in OT environments has created a tension point over the years when it comes to things like management and how you secure OT systems versus IT because OT systems are more mission critical. They’re more fixed-function and they often don’t have the space and luxury of having heaps of security tools monitoring them and performing because you have real-time reliability requirements like guaranteed uptime.
The DoD is coming out with new Zero Trust guidance specifically for OT, and the reason is because IT Zero Trust principles don’t easily translate to OT environments. There’s different constraints and limitations in OT, as well as some higher-level requirements, so there needs to be an understanding that there is a difference between the two when it comes to applying Zero Trust.
What do you suggest?
One of the first steps that I’ve talked about is getting the right people in the room for those initial phases of policy definition and architectural planning. Oftentimes you’ll find, and we’ve seen this a lot in the private sector, that when they start looking at OT, the IT people come up with security policy and force it on the OT systems. More often than not that fails miserably because OT just isn’t like IT. You don’t have the same flexibility and you have more stringent requirements for the actual operations side of OT.
That calls for crafting subset policies for that system and then containerizing that from a segmentation or a policy perspective and monitoring against that. The nice thing about OT is you don’t have to worry about every possible scenario. If you take the example of a laptop, users can do almost anything on their laptop. They can browse the Internet, send email, work with documents, collaborate on Teams calls. That means there’s a lot of security I have to worry about across the myriad usages enabled by that PC.
In an OT environment, you have a much smaller set of what it’s supposed to be doing, which means you can lock down that system and the access to that system to just key functions. That gives you a much tighter policy you can apply in OT that you wouldn’t have the availability of doing on the IT side of the camp. That way you can craft very specific policies, monitoring, and access controls specific to that particular OT or mission platform. That is a powerful way of applying it.
If you look at some of the guidance that’s coming out, the Navy has just recently published some specific OT guidance, NIST is coming out with OT guidance. It’s about tying the policies to the environment and being able to craft a subset of security controls specific to the domain, and then leveraging the right technologies that you need in order to achieve that goal.
Final thoughts?
Intel has technology and architectures that provide the right compute at the right place where and when the customer needs it. We understand the vertical and horizontal scale requirements, and provide the security, reliability, and performance for those environments that you need across your mission areas.
Second, when applying Zero Trust, it’s not one size fits all. You need to craft your Zero Trust policies, controls, and technologies to meet the requirements of your mission and of your enterprise IT and OT technologies.
Then, much of the technology and the security capabilities you need are already built in the system. You just need to take advantage of them, whether they be network segmentation, secure boot, and confidential computing. The hardware and software that has often already been deployed gives you a lot of those capabilities. You just need to leverage them.
To learn more about Intel and AI visit www.intel.com/usai.
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