US Funds Software for Russians to Slip Past Censors
Attendees walk past a Facebook logo during Facebook Inc's F8 developers conference in San Jose, California, US, April 30, 2019. REUTERS/Stephen Lam/File Photo
US Funds Software for Russians to Slip Past Censors
Attendees walk past a Facebook logo during Facebook Inc's F8 developers conference in San Jose, California, US, April 30, 2019. REUTERS/Stephen Lam/File Photo
A US-backed campaign is giving Russians access to anti-censor software to dodge Moscow's crackdown on dissent against its invasion of Ukraine, involved groups told AFP.
Russia has intensified its restrictions on independent media since attacking its neighbor in February, with journalists under threat of prosecution for criticizing the invasion or for even referring to it as a war.
The US government-backed Open Technology Fund is paying out money to a handful of American firms providing virtual private networks (VPNs) free of charge to millions of Russians, who can then use them to visit websites blocked by censors.
Traditional VPN software creates what is effectively a private tunnel on the internet for data, typically encrypted, to flow safeguarded from snooping -- and their use has boomed in Russia since the invasion.
"Our tool is primarily used by people trying to access independent media, so that funding by the OTF has been absolutely critical," said a spokesman for Lantern, one of the involved companies.
Tech firms Psiphon and nthLink have also been providing sophisticated anti-censorship applications to people in Russia, with OTF estimating that some four million users in Russia have received VPNs from the firms.
Psiphon saw a massive surge in Russian users, with the number soaring from about 48,000 a day prior to the February 24 invasion to more than a million a day by mid-March, said a company senior advisor Dirk Rodenburg.
The firm's tools in Russian now average nearly 1.5 million users daily, he added.
While some, like Ukraine's leadership, have called for Russia to be cut off from the internet, others have noted access is key for opposition groups.
"It's so very important for Russians to be connected to the whole world wide web, to keep resistance going," said Natalia Krapiva, tech legal counsel at rights group Access Now, which is not involved in the OTF effort.
"All kinds of initiatives are happening and to keep them alive you need the internet because you can't gather in person, or because activists are scattered around the world," she added.
Keeping VPNs running and accessible was relatively straightforward in the early days of the war, said Lucas, the spokesman for Lantern, who spoke on condition that only his first name be used.
"They weren't ready to block anything," Lucas said. "Over time, Russia learned how to block the easy stuff but Lantern and Psiphon are still up and running."
- Lesson from China, Myanmar -
Censors try to cut VPN software off from servers they rely on to function or stop people from getting to websites where the tools can be downloaded.
As a result, crackdowns on internet freedom typically result in people sharing VPNs through guerrilla tactics such as word-of-mouth.
However, groups like Lantern have adopted methods like hiding VPN installers in online platforms too vital for the government to block, and building a network so users can share the technology with others, Lucas said.
"Lantern and Psiphon are different in that we do all sorts of much more sophisticated stuff to hide our traffic and get around our servers being detected," he said.
People in Russia are benefitting from the VPN makers honing their tools while battling censorship in countries such as China and Myanmar.
"There was a moment about two years ago when China really upped the level of their game, when it came to the lengths they were going to block stuff," Lucas said.
"We raised the level of our game a whole lot," he added.
US government funding provided through OTF has been important to the operations since costs jumped and revenue vanished for VPN makers in Russia, as sanctions kicked in and companies pulled out of the country.
OTF said it typically spends $3-4 million annually funding VPNs, but that figure was ramped up due to censorship in Russia.
Psiphon has been receiving US government funding for more than 14 years, with the money generally going to improve tools to counter new tactics used by authoritarian regimes, the company told AFP.
Despite the efforts to get VPN technology to those who want it, many people still don't have access.
"The use of virtual private networks and other methods have increased significantly in Russia, but it still only represents a small percentage of the population," Krapiva, from Access Now, told AFP.
Google, Meta, TikTok Hit by EU Consumer Complaints about Handling of Financial Scamshttps://english.aawsat.com/technology/5275768-google-meta-tiktok-hit-eu-consumer-complaints-about-handling-financial-scams
FILE PHOTO: The logo of Meta is seen during the Viva Technology conference dedicated to innovation and startups at Porte de Versailles exhibition center in Paris, France, June 12, 2025. REUTERS/Benoit Tessier/File Photo
Google, Meta, TikTok Hit by EU Consumer Complaints about Handling of Financial Scams
FILE PHOTO: The logo of Meta is seen during the Viva Technology conference dedicated to innovation and startups at Porte de Versailles exhibition center in Paris, France, June 12, 2025. REUTERS/Benoit Tessier/File Photo
Alphabet's Google, Meta Platforms and TikTok were hit with complaints from European Union consumer groups on Thursday for allegedly failing to protect users from financial scams on their platforms, putting them at risk of regulatory fines.
The move highlights growing pressure worldwide on Big Tech to do more to address the negative impacts of social media, particularly for children and vulnerable users.
The complaints, filed by the European Consumer Organisation (BEUC) and 29 of its members in 27 European countries, were submitted to the European Commission and national regulators under the Digital Services Act, which requires large online platforms to do more to tackle illegal and harmful content, Reuters reported.
"Meta, TikTok and Google not only fail to proactively remove fraudulent ads but also do little when being notified about such scams," BEUC Director General Agustin Reyna said in a statement.
"If they fail to address the financial scams circulating on their platforms, fraudsters will continue to reach millions of European consumers daily, leaving people at risk of losing hundreds to thousands of euros to fraud," he said. Google and Meta rejected the complaints and said they work proactively to protect their users.
A Google spokesperson said: "We strictly enforce our ad policies, blocking over 99% of violating ads before they ever run. Our teams constantly update these defences to stay ahead of scammers and protect people."
Meta said it found and removed over 159 million scam ads last year, 92% before anyone reported them. "We invest in advanced AI, tools, and partnerships to stop them," a spokesperson said.
TikTok said it takes action against violations, adding that scams are an industry-wide challenge while bad actors constantly adapt their tactics.
The consumer groups, meanwhile, said they reported nearly 900 ads suspected of breaching EU laws between December last year and March this year but the platforms only took down 27% of the ads and 52% of the reports were rejected or ignored.
The groups urged regulators to investigate whether the companies were complying with the rules and to impose fines for breaches.
DSA fines can reach as much as 6% of a company's global annual turnover.
SDAIA Outlines Comprehensive Data Quality Journey to Support National AI Initiativeshttps://english.aawsat.com/technology/5275751-sdaia-outlines-comprehensive-data-quality-journey-support-national-ai
SDAIA Outlines Comprehensive Data Quality Journey to Support National AI Initiatives
The Saudi Authority for Data and Artificial Intelligence (SDAIA)
The Saudi Data and Artificial Intelligence Authority (SDAIA) highlighted data quality as a critical foundation for enhancing information reliability, boosting performance, and enabling accurate business decisions, as part of its efforts during the Year of Artificial Intelligence 2026 to raise awareness about data importance.
The authority noted that high data quality serves as the cornerstone for sustainable national trust, integrated digital services, operational savings, entrepreneurship, and readiness for artificial intelligence applications, SPA reported.
SDAIA stated that the data quality journey spans five phases, beginning with a creation phase, where data is entered according to standardized criteria.
This is followed by a storage and organization phase to structure data and eliminate duplication, and an integration and sharing phase, which assesses quality before data is reused.
The journey continues through an analysis and use phase, where report accuracy is tied directly to source quality, and culminates in a continuous improvement phase, which utilizes analysis and user feedback to constantly refine data sets.
SDAIA called on organizations to adopt comprehensive data quality practices and strictly adhere to national regulations and standards. This includes integrated data quality planning, prioritizing initial assessments, developing data rules, and establishing clear performance indicators to measure improvement.
The authority also emphasized the importance of conducting periodic reviews and enabling users to report quality problems, which will ultimately maximize the efficiency of digital services and AI applications across the Kingdom.
Dell to Asharq Al-Awsat: AI in Saudi Arabia Enters Production, Not Experimentation Phasehttps://english.aawsat.com/technology/5275232-dell-asharq-al-awsat-ai-saudi-arabia-enters-production-not-experimentation-phase
Dell to Asharq Al-Awsat: AI in Saudi Arabia Enters Production, Not Experimentation Phase
Mohammed Amin, Senior Vice President for Central Eastern Europe, Middle East, Türkiye and Africa at Dell Technologies
Saudi Arabia became a focal point of discussion in the “Dell Technologies World 2026” in Las Vegas this week about the next phase of artificial intelligence.
The question is no longer just about the size of investment in infrastructure or national capacity building, but about the difference the Kingdom can make in a global market transitioning from AI experimentation to its operational deployment within institutions.
In exclusive remarks to Asharq Al-Awsat, Michael Dell, Chairman and CEO of Dell Technologies, stated that what the company sees in Saudi Arabia is a “deep commitment to modernizing the Kingdom,” highlighting its significant energy resources and Dell's collaboration with Humain and other companies in the Kingdom, in addition to a regional facility through which the company works to “aggregate these capabilities and build infrastructure for customers in the region.”
He added that every country today is going through a phase of re-understanding what the transition towards AI means, and how citizens and industries can be empowered to drive the economy forward. In the same session, Dell described Saudi Vision 2030 as “highly ambitious,” and the ambition for AI under this vision as “impressive.”
The Operation Test
From this point, the real discussion about Saudi Arabia and artificial intelligence begins. The narrative is no longer solely about the volume of investments, the speed of data center construction, or the number of announced national projects.
The challenge of the next test relates to how this national capability can be transformed into operational value within government entities, banks, hospitals, energy and telecommunications companies, and smart cities. It's about how institutions move from AI experiments to systems that operate daily, on real data, within secure environments, and at a predictable cost.
Mohammed Amin, Senior Vice President for Central Eastern Europe, Middle East, Türkiye and Africa at Dell Technologies, places this transformation in a clear context.
In remarks to Asharq Al-Awsat on the sidelines of the conference, he states that the biggest barrier for institutions in Saudi Arabia and the Gulf as they transition from AI experimentation to production is not a single isolated factor, but an interconnected system encompassing infrastructure, governance, skills, cyber resilience, cost, and operating models.
However, he considers “data readiness” to be the primary obstacle. He adds: “Without a reliable and AI-ready data foundation, even the most advanced infrastructure is insufficient, and pilot projects falter before reaching production.”
Mohammed Amin, Senior Vice President for Central Eastern Europe, Middle East, Türkiye and Africa at Dell Technologies
Data Before the Model
This point appears fundamental to Dell's assessment of the Saudi phase, as the company indicates that 96 percent of Saudi institutions now view AI as a key part of their business strategy, according to its research on the state of innovation and AI.
However, this indicator, despite its importance, does not mean that the path to production has become easy. Many institutions still operate through outdated and fragmented systems, distributed data, inconsistent governance, and limited access to reliable real-time data.
According to Amin, the fastest-advancing institutions are those that treat AI “not as a standalone tool, but as a transformation of the entire operating model.”
Here lies the difference between ambition and operational infrastructure. An institution that wants to use AI for customer service, risk management, predictive maintenance, or patient data analysis not only needs a robust model but also requires its data to be discoverable, governed, reliable, and usable by AI systems in a timely manner.
Amin defines AI-ready data as data that is “discoverable, governed, reliable, and usable by AI systems in real-time.” This definition transforms the discussion from a narrow technical question to an institutional one: Does the institution know where its data is, who can use it, and can it be trusted when fed into a model or intelligent agent?
Data from Sensitive Sectors
In the Saudi banking sector, this could mean linking customer, transaction, and risk data across different environments while maintaining compliance and governance. In hospitals, it involves securely organizing clinical and imaging data so that AI can support diagnosis or improve operations without compromising patient privacy. For government entities, it means unifying citizen and operational data while preserving sovereignty and security controls. As for energy companies, it might involve combining operational, sensor, and geographic data to support predictive maintenance and improve performance.
Dell states that updates to its Dell AI Data Platform specifically target this point, by indexing billions of files and linking them into governed data pipelines. The platform includes capabilities such as GPU-accelerated SQL analytics, achieving up to six times faster performance, and vector indexing up to 12 times faster.
These details might seem technical, but they actually determine the speed at which an institution transitions from a limited experiment to a widely operational AI service. The slower data is accessed or the less organized it is, the more the data pipelines themselves become an operational bottleneck. Amin notes that these capabilities help reduce response time, improve accuracy, and expand AI services with higher efficiency.
Local Operating Economics
As AI transitions to more sensitive and continuous workloads, another question emerges: when does private or institution-controlled infrastructure become more suitable than the public cloud? Amin does not present this as a stark choice between cloud and private infrastructure; he believes the public cloud remains important for experimentation, flexibility, and quick access to AI services. However, he adds that there comes a stage where controlled infrastructure becomes “strategically better,” especially when workloads involve sensitive national or financial data, or when response time requirements are critical.
This aligns with what Dell presented at the conference regarding Deskside Agentic AI, a solution aimed at running some AI agents locally on high-performance workstations, rather than relying entirely on cloud programming interfaces.
The company states that this solution can, in some cases, reach a break-even point with the cost of cloud programming interfaces within three months, and reduce spending by up to 87 percent within two years. Amin interprets these figures from a broader perspective, stating that technology managers in Saudi Arabia must evaluate the economics of AI “over its full lifecycle, not just by focusing on initial infrastructure costs.” The cloud might appear attractive at the outset, but it can become more expensive when running continuous generative or agentic workloads at the scale of a large enterprise.
Processor Efficiency
For Saudi Arabia, this issue is also linked to sectors with regulatory and sensitive natures. Amin acknowledges that the most realistic use cases today are those that deliver clear productive and operational value while maintaining manageable governance.
He points out that private assistants within institutions and workflow in regulated sectors represent a compelling starting point in the Kingdom, due to the strong focus on data security and sovereignty. He also believes that programming assistants are rapidly gaining momentum because they offer direct benefits to development teams.
The transition to production requires not only data and architecture but also infrastructure capable of handling high workload density. In heavy AI environments, processing units are insufficient if data does not move quickly between computing, storage, and applications.
Amin notes that the network design in PowerRack includes a switching capacity exceeding 800 terabits per second per rack, explaining that the practical meaning of this capacity is to eliminate data traffic bottlenecks between GPUs, storage, and applications. The longer GPUs wait for data, the lower the efficiency of infrastructure investment. Conversely, when data moves with low latency, training and inference operations become faster and more effective.
Cooling as a Strategic Factor
This discussion cannot be separated from cooling and power, as AI increases rack density and power requirements within data centers, making cooling a strategic, not just operational, factor.
Amin notes that the ability of Dell PowerCool C7000 to support facility water temperatures up to 40 degrees Celsius means that data centers can operate with higher efficiency in hot climates, reducing reliance on energy-intensive cooling.
In Saudi Arabia, where the government and private sector are investing in sovereign AI infrastructure, he believes that cooling “is no longer merely an operational issue,” but has become linked to scalability, energy efficiency, and long-term viability.
Data and Model Security
Cyber resilience is part of AI readiness; an intelligent system is not reliable if its data is corruptible, its models are exploitable, or its infrastructure is not recoverable. Amin points out that an AI system “is only as reliable as the data and models it operates on,” and a cyberattack that corrupts data or harms a model can have significant consequences.
Therefore, he believes that the maturity of cyber resilience will directly impact the extent to which institutions trust expanding their adoption of AI. Here, Dell offers tools like Cyber Detect, which it claims can detect data corruption resulting from ransomware attacks and accurately identify the last known clean version.
Openness and Sovereignty
With Dell's expanded partnerships with Google, Hugging Face, OpenAI, Palantir, ServiceNow, and SpaceXAI, the company emphasizes that institutions do not want to tie their AI strategy to a single model, cloud platform, or infrastructure package.
This openness, in Amin's view, gives institutions a “choice” and reduces vendor lock-in risks, allowing them to develop their capabilities as technology evolves. This is crucial in a fast-moving market like Saudi Arabia, where integration and interoperability can become strategic advantages in themselves.
When Mohamed Amin was asked about the Saudi sectors that would first require AI-ready infrastructure, he placed government, energy, telecommunications, finance, and smart cities at the forefront, due to the volume of their data, their national importance, and the operational value that AI can unlock.
These sectors are also most closely linked to sovereignty, compliance, and security requirements. Therefore, building a secure and scalable AI infrastructure appears not merely a technical upgrade, but part of institutions' ability to transform the Vision's ambitions into measurable daily operations.
Between Michael Dell's response regarding Saudi Arabia and Mohamed Amin's vision for the region, the picture of the next phase becomes clear. The Kingdom is not entering the AI race merely from the perspective of consumption or experimentation, but from the perspective of building institutional capability.
However, true capability will not be measured solely by the number of data centers or the volume of investment, but by institutions' ability to prepare their data, choose where to run their workloads, manage costs, protect their models and data, and scale their use without losing control or governance.
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