The Independent Authority Against Corruption (IAAC) in Mongolia has started using the tuss.io platform to monitor orders, decisions, rules and regulations adopted by state organisations and officials.
The platform, developed by Tus Solution company, is used to check whether decisions, orders, rules or regulations meet legal requirements, create unnecessary procedural steps, or establish conflicts of interest or conflicts with the law.
According to IAAC, a total of 388 orders, decisions, rules and regulations have been monitored. Out of these, 152 have been revised, amended or invalidated over the past three years.
Why does it matter?
The initiative reflects broader efforts of Mongolia to strengthen transparency and accountability in public administration through digital tools. By integrating AI-powered analysis and compliance monitoring, platforms like tuss.io can more efficiently identify regulatory inconsistencies and support evidence-based decision-making, reducing opportunities for corruption and improving the overall quality of governance.
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The UK Department for Science, Innovation and Technology said more than one million people have been helped online through its Digital Inclusion Action Plan. The update was published in a one-year progress report on the government strategy.
The department said over 22,000 devices were donated through government schemes and industry partnerships. It also confirmed £11.9 million in funding that supported more than 80 local digital inclusion programmes.
According to the report, the plan aims to improve access to devices, connectivity and digital skills. The government said all commitments in the strategy have either been delivered or remain on track.
The department added that partnerships with industry and charities helped expand access to broadband and mobile services, including more affordable connectivity. The programme also supported training and local initiatives to improve digital participation.
Secretary of State for Science, Innovation and Technology, Liz Kendall, said the programme is intended to expand access to online services, employment opportunities and communication tools. She added that the government plans to continue developing the initiative.
The department also confirmed it will take over the Essential Digital Skills Framework from Lloyds Banking Group and update it to reflect current needs, including online safety and the growing role of AI.
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The European Data Protection Board has published a summary of its 17 March conference in Brussels on cross-regulatory interplay and cooperation in the EU from a data protection perspective. According to the EDPB, the event brought together representatives of the EU institutions, European Data Protection Authorities, academia, and industry.
Three panels structured the conference discussion. One focused on data protection and competition, another on the Digital Markets Act and the General Data Protection Regulation (GDPR), and a third on the Digital Services Act and the GDPR.
Discussion in the first panel centred on cooperation between regulatory bodies in data protection and competition, including lessons from the aftermath of the Bundeskartellamt ruling. The EDPB said speakers emphasised the need for regulators to align their approaches and recognise synergies between the two fields. Speakers also said data protection should be considered in competition analysis only when relevant and on a case-by-case basis. The EDPB added that it had recently agreed with the European Commission to develop joint guidelines on the interplay between competition law and data protection.
The second panel focused on joint guidelines on the Digital Markets Act and the GDPR, developed by the European Commission and the EDPB and recently opened to public consultation. According to the EDPB, speakers described the guidelines as an example of regulatory cooperation aimed at developing a coherent and compatible interpretation of the two frameworks while respecting regulatory competences. The Board said participants linked the guidelines to stronger consistency, legal clarity, and easier compliance. Some speakers also suggested changes to the final version, including points related to proportionality and the relationship between DMA obligations and the GDPR.
The final panel examined the interaction between the Digital Services Act and the GDPR. The EDPB said panellists referred to the protection of minors as one example, arguing that age verification should be effective while remaining fully in line with data protection legislation. Speakers also highlighted the need for coordination between the two frameworks, including cooperation involving the EU institutions such as the European Board for Digital Services, the European Commission, the EDPB, and national authorities. Emerging technologies such as AI were also mentioned in the discussion.
The event also featured keynote speeches from European Commission Executive Vice President Henna Virkkunen and European Parliament LIBE Committee Chair Javier Zarzalejos. According to the EDPB, Virkkunen said the Commission remained committed to cooperation between different frameworks and highlighted the need to support compliance through stronger coordination among regulators. Zarzalejos said close cross-regulatory cooperation was essential for consistency, effective enforcement, and trust, and pointed to the intersections among data protection law, competition law, the DMA, and the DSA.
EDPB Chair Anu Talus closed the conference by reiterating that the EDPB and European Data Protection Authorities are committed to supporting stakeholders in navigating what the Board described as a new cross-regulatory landscape. The EDPB said future work will include continued cooperation with the Commission on joint guidelines on the interplay between the AI Act and the GDPR, finalisation of the joint guidelines on the interplay between the DMA and the GDPR, and work on the recently announced Joint Guidelines on the interplay between data protection and competition law.
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Google Quantum AI is broadening its quantum computing research to include neutral atom technology alongside its established superconducting qubits. Neutral atoms offer high connectivity and flexibility, while superconducting qubits provide fast cycles and deep circuit performance.
By pursuing both approaches, Google aims to accelerate progress and deliver versatile platforms for different computational challenges.
The neutral atom programme is focused on three pillars: quantum error correction adapted for atom arrays, modelling and simulation of hardware architectures, and experimental hardware development to manipulate atomic qubits at scale.
The initiative is led by Dr Adam Kaufman, who joins Google from CU Boulder, bringing expertise in atomic, molecular, and optical physics to advance neutral atom hardware.
Google is leveraging the Boulder quantum ecosystem, collaborating with institutions such as JILA, CU Boulder, NIST, and QuEra to strengthen research and innovation. These partnerships give access to top talent, facilities, and federal programmes, strengthening the US role in global quantum research.
By combining superconducting and neutral-atom approaches, Google aims to address critical physics and engineering challenges on the path to large-scale, fault-tolerant quantum computers, with commercial relevance expected by the end of the decade.
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A major expansion of its activities has been outlined by OpenAI Foundation, signalling a broader effort to ensure AI delivers tangible benefits while addressing emerging risks.
The organisation plans to invest at least $1 billion over the next year, forming part of a wider $25 billion commitment focused on disease research and AI resilience.
OpenAI Foundation frames such potential as central to its mission, while recognising that more capable systems introduce complex societal and safety challenges that require coordinated responses.
Initial programmes prioritise life sciences, including research into Alzheimer’s disease, expanded access to public health data, and accelerated progress on high-mortality conditions.
Parallel efforts examine the economic impact of automation, with engagement across policymakers, labour groups and businesses aimed at developing practical responses to labour market disruption.
A dedicated resilience strategy addresses risks linked to advanced AI systems, including safety standards, biosecurity concerns and the protection of children and young users.
Alongside community-focused funding, the OpenAI Foundation’s initiative reflects a dual objective: enabling innovation rather than leaving societies exposed to technological disruption.
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A growing wave of AI-driven scams is prompting warnings from Competition Bureau Canada, as fraudsters increasingly impersonate government officials through deepfake technology and fake websites.
Authorities report a steady rise in complaints linked to deceptive schemes designed to exploit public trust.
Scammers are using synthetic media to mimic well-known political figures, including senior government officials, to extract personal information and spread misleading narratives.
Such tactics demonstrate how AI tools are being weaponised for social engineering rather than for legitimate communication.
The trend reflects a broader shift in digital fraud, where increasingly sophisticated techniques blur the line between authentic and fabricated content. As synthetic identities become more convincing, individuals find it harder to verify the legitimacy of online interactions and official communications.
In response, authorities in Canada are intensifying awareness efforts during Fraud Prevention Month, offering expert guidance on identifying and avoiding scams.
The development underscores the urgent need for stronger safeguards and public education to counter evolving AI-enabled threats.
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OpenAI is moving to shut down the Sora app, its consumer-facing AI video platform, according to an official X post on 24 March. The move follows months of scrutiny around AI-generated video, including concerns over deepfakes, copyright, and harmful synthetic media.
The reported shutdown comes shortly after OpenAI retired Sora 1 in the United States on 13 March 2026 and replaced it with Sora 2 as the default experience. OpenAI’s help documentation says the older version remains available only in countries where the newer one has not yet launched, while support pages for the standalone Sora app are still live. The product changes also follow the announcement of new copyright settings for the latest video generation model.
That makes the current picture more complex than a simple sunset. Public OpenAI help pages still describe tools on iOS, Android, and the web, while news reports say the company has now decided to wind down the app itself. OpenAI had also recently indicated that it plans to integrate Sora video generation into ChatGPT, which could help explain why the standalone product is being reconsidered.
Sora became one of OpenAI’s most visible consumer media products, but it also drew sustained scrutiny over deepfakes, non-consensual content, and copyrighted characters. Such concerns remained central even as OpenAI added additional controls to the platform, including new consent and traceability measures to enhance AI video safety. AP reported that pressure from advocacy groups, scholars, and entertainment-sector voices formed part of the backdrop to the shutdown decision.
For users, the immediate issue is preservation of existing content. OpenAI’s Sora 1 sunset FAQ says some legacy material may be exportable for a limited period before deletion, but the company has not yet published a detailed standalone help document explaining the full shutdown. Based on the information now available, the clearest distinction is that OpenAI first retired one legacy version in some markets and is now reportedly ending the standalone app more broadly.
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A surge in AI-generated child sexual abuse material has raised urgent concerns across Europe, with the Internet Watch Foundation reporting record levels of harmful content online.
Findings of the IWF report indicate that AI is accelerating both the scale and severity of abuse, transforming how offenders create and distribute illicit material.
Data from 2025 reveals a sharp increase in AI-generated imagery and video, with over 8,000 cases identified and a dramatic rise in highly severe content.
Synthetic videos have grown at an unprecedented rate, reflecting how emerging tools are being used to produce increasingly realistic and extreme scenarios rather than traditional formats.
Analysis of offender behaviour highlights a disturbing trend toward automation and accessibility.
Discussions on dark web forums suggest that future agentic AI systems may enable the creation of fully produced abusive content with minimal technical skill. The integration of audio and image manipulation further deepens risks, particularly where real children’s likenesses are involved.
Calls for regulatory action are intensifying as policymakers in the EU debate reforms to the Child Sexual Abuse Directive.
Advocacy groups emphasise the need for comprehensive criminalisation, alongside stronger safety-by-design requirements, arguing that technological innovation must not outpace child protection frameworks.
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Over the past few years, we have witnessed a rapid shift in the way data is stored and processed across businesses, organisations, and digital systems.
What we are increasingly seeing is that AI itself is changing form as computation shifts away from centralised cloud environments to the network edge. Such a shift has come to be known as edge AI.
Edge AI refers to the deployment of machine learning models directly on local devices such as smartphones, sensors, industrial machines, and autonomous systems.
Instead of transmitting data to remote servers for processing, analysis is performed on the device itself, enabling faster responses and greater control over sensitive information.
Such a transition marks a significant departure from earlier models of AI deployment, where cloud infrastructure dominated both processing and storage.
From centralised AI to edge intelligence
Traditional AI systems used to rely heavily on centralised architectures. Data collected from users or devices would be transmitted to large-scale data centres, where powerful servers would perform computations and generate outputs.
Such a model offered efficiency, scalability, and easier security management, as protection efforts could be concentrated within controlled environments.
Centralisation allowed organisations to enforce uniform security policies, deploy updates rapidly, and monitor threats from a single vantage point. However, reliance on cloud infrastructure also introduced latency, bandwidth constraints, and increased exposure of sensitive data during transmission.
Edge AI introduces a fundamentally different paradigm. Moving computation closer to the data source reduces the reliance on continuous connectivity and enables real-time decision-making.
Such decentralisation represents not merely a technical shift but a reconfiguration of the way digital systems operate and interact with their environments.
Advantages of edge AI
Reduced latency and real-time processing
Latency is significantly reduced when computation occurs locally. Edge systems are particularly valuable in time-sensitive applications such as autonomous vehicles, healthcare monitoring, and industrial automation, where delays can have critical consequences.
Enhanced privacy and data control
Privacy improves when sensitive data remains on-device instead of being transmitted across networks. Such an approach aligns with growing concerns around data protection, regulatory compliance, and user trust.
Operational resilience
Edge systems can continue functioning even when network connectivity is limited or unavailable. In remote environments or critical infrastructure, independence from central servers ensures service continuity.
Bandwidth efficiency and cost reduction
Bandwidth consumption is decreased because only processed insights are transmitted, not raw data. Such efficiency can translate into reduced operational costs and improved system performance.
Personalisation and context awareness
Devices can adapt to user behaviour in real time, learning from local data without exposing sensitive information externally. In healthcare, personalised diagnostics can be performed directly on wearable devices, while in manufacturing, predictive maintenance can occur on-site.
The dark side of edge AI
However, the shift towards edge computing introduces profound cybersecurity challenges. The most significant of these is the expansion of the attack surface.
Instead of a limited number of well-protected data centres, organisations must secure vast networks of distributed devices. Each endpoint represents a potential entry point for malicious actors.
The scale and diversity of edge deployments complicate efforts to maintain consistent security standards. Security is no longer centralised but dispersed, increasing the likelihood of vulnerabilities and misconfigurations.
Let’s take a closer look at some other challenges of edge AI.
Physical vulnerabilities and device exposure
Edge devices often operate in uncontrolled environments, making physical access a major risk. Attackers may tamper with hardware, extract sensitive information, or reverse engineer AI models.
Model extraction attacks allow adversaries to replicate proprietary algorithms, undermining intellectual property and enabling further exploitation. Such risks are significantly more pronounced compared to cloud systems, where physical access is tightly controlled.
Software constraints and patch management challenges
Many edge devices rely on embedded systems with limited computational resources. Such constraints make it difficult to implement robust security measures, including advanced encryption and intrusion detection.
Patch management becomes increasingly complex in decentralised environments. Ensuring that millions of devices receive timely updates is a significant challenge, particularly when connectivity is inconsistent or when devices operate in remote locations.
Breakdown of traditional security models
The decentralised nature of edge AI undermines conventional perimeter-based security frameworks. Without a clearly defined boundary, traditional approaches to network defence lose effectiveness.
Each device must be treated as an independent security domain, requiring authentication, authorisation, and continuous monitoring. Identity management becomes more complex as the number of devices grows, increasing the risk of misconfiguration and unauthorised access.
Data integrity and adversarial threats
As we mentioned before, edge devices rely heavily on local data inputs to make decisions. As a result, manipulated inputs can lead to compromised outcomes. Adversarial attacks, in which inputs are deliberately altered to deceive machine learning models, represent a significant threat.
In safety-critical systems, such manipulation can lead to severe consequences. Altered sensor data in industrial environments may disrupt operations, while compromised vision systems in autonomous vehicles may produce dangerous behaviour.
Supply chain risks in edge AI
Edge AI systems depend on a combination of hardware, software, and pre-trained models sourced from multiple vendors. Each component introduces potential vulnerabilities.
Attackers may compromise supply chains by inserting backdoors during manufacturing, distributing malicious updates, or exploiting third-party software dependencies. The global nature of technology supply chains complicates efforts to ensure trust and accountability.
Energy constraints and security trade-offs
Edge devices are often designed with efficiency in mind, prioritising performance and power consumption. Security mechanisms such as encryption and continuous monitoring require computational resources that may be limited.
As a result, security features may be simplified or omitted, increasing exposure to cyber threats. Balancing efficiency with robust protection remains a persistent challenge.
Cyber-physical risks and real-world impact
The integration of edge AI into cyber-physical systems elevates the consequences of security breaches. Digital manipulation can directly influence physical outcomes, affecting safety and infrastructure.
Compromised healthcare devices may produce incorrect diagnoses, while disrupted transportation systems may lead to accidents. In energy networks, attacks could impact entire regions, highlighting the broader societal implications of edge AI vulnerabilities.
Regulatory and governance challenges
Existing regulatory frameworks have been largely designed for centralised systems and do not fully address the complexities of decentralised architectures. Questions regarding liability, accountability, and enforcement remain unresolved.
Organisations may struggle to implement effective security practices without clear standards. Policymakers face the challenge of developing regulations that reflect the distributed nature of edge AI systems.
Towards a secure edge AI ecosystem
Addressing all these challenges requires a multi-layered and adaptive approach that reflects the complexity of edge AI environments.
Hardware-level protections, such as secure enclaves and trusted execution environments, play a critical role in safeguarding sensitive operations from physical tampering and low-level attacks.
Encryption and secure boot processes further strengthen device integrity, ensuring that both data and models remain protected and that unauthorised modifications are prevented from the outset.
At the software level, continuous monitoring and anomaly detection are essential for identifying threats in real time, particularly in distributed systems where central oversight is limited.
Secure update mechanisms must also be prioritised, ensuring that patches and security improvements can be deployed efficiently and reliably across large networks of devices, even in conditions of intermittent connectivity.
Without such mechanisms, vulnerabilities can persist and spread across the ecosystem.
Rather than relying entirely on decentralised or centralised models, organisations are distributing workloads strategically, keeping latency-sensitive and privacy-critical processes on the edge while maintaining centralised oversight, analytics, and security coordination in the cloud.
Such an approach allows organisations to balance performance and control, while enabling more effective threat detection and response through aggregated intelligence.
Security must also be embedded into system design from the outset, rather than treated as an additional layer to be applied after deployment. A proactive approach to risk assessment, combined with secure development practices, can significantly reduce vulnerabilities before systems are operational.
In conclusion, we have seen how the rise of edge AI represents a pivotal shift in both AI and cybersecurity. Decentralisation enables faster, more private, and more resilient systems, yet it also creates a fragmented and dynamic attack surface.
The advantages we have outlined are compelling, but they also introduce additional layers of complexity and risk. Addressing these challenges requires a comprehensive approach that combines technological innovation, regulatory development, and organisational awareness.
Only through such coordinated efforts can the benefits of edge AI be realised while ensuring that security, trust, and safety remain intact in an increasingly decentralised digital landscape.
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Binance has launched the Beta version of Binance Ai Pro, an advanced AI trading assistant built on the OpenClaw ecosystem. Available from 25 March 2026 at 07:00 UTC, the service can be activated via the Binance App on Android or through the Binance web homepage, with iOS support coming soon.
The platform offers one-click activation, automatic cloud setup, and integration with multiple AI models, including ChatGPT, Claude, Qwen, MiniMax, and Kimi. Users receive a dedicated Binance Ai Pro Account, isolated from their main account to minimise operational risks.
Funds can be manually transferred to the AI account for trading, asset monitoring, and strategy execution, covering spot and perpetual contracts, leveraged borrowing, market analysis, token distribution queries, and custom strategies.
Beta users will pay $9.99 per month, with a 7-day free trial. Activation grants 5 million usage credits each month for accessing advanced AI models, with automatic fallback to basic models once credits are exhausted.
Security measures ensure that AI API keys have no withdrawal permissions and operate within strict, authorised scopes.
Binance plans to expand the platform with additional credits, enriched Binance Skills, and user-customisable third-party AI tools. The company warns that AI trading carries risks and urges users to trade responsibly while giving feedback to enhance the platform.
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