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India’s Shift in AI Regulation
India’s surprising new AI advisory stance imposes a stricter regulatory environment, impacting its growth of AGI.
Published
1 year agoon
By
AIinAsia
TL;DR
- India’s shift in AI regulation as it issues a new AI advisory, requiring significant tech firms to obtain government approval before launching new models
- The policy shift stuns industry executives, raising concerns over competition and innovation
- India’s move impacts the development and growth of Artificial General Intelligence (AGI) in Asia
India’s AI Regulation U-Turn: A Change in Stance
India’s AI Regulation U-Turn: A Change in Stance
India has plunged into the global AI debate by issuing an advisory that mandates significant tech firms to secure government approval before launching new models. The Ministry of Electronics and IT issued this advisory on Friday, which, although not legally binding, signals the future of regulation, according to India’s IT Deputy Minister Rajeev Chandrasekhar. This unexpected shift marks a departure from India’s previous laissez-faire approach to AI regulation, which viewed the sector as a crucial component of India’s strategic interests.
The Advisory’s Requirements and Potential Consequences
The advisory, which is not publicly available but has been reviewed by TechCrunch, invokes powers granted through the IT Act, 2000 and IT Rules, 2021. It seeks immediate compliance from tech firms, requiring them to ensure their services or products do not permit bias, discrimination, or pose a threat to the integrity of the electoral process. Furthermore, companies are expected to clearly label the potential fallibility or unreliability of the output generated by their AI models. Failure to comply with these guidelines may result in penal consequences for intermediaries, platforms, or users.
Industry Executives and Silicon Valley Leaders Express Concerns
India’s policy shift has left many industry executives taken aback, with Indian startups and venture capitalists voicing apprehensions about the nation’s ability to remain competitive in the global AI race, where it is already lagging behind. Silicon Valley leaders, such as Aravind Srinivas, co-founder and chief executive of Perplexity AI, and Martin Casado, a partner at venture firm Andreessen Horowitz, have also criticised India’s move. The new advisory has demoralised some AI entrepreneurs, like Pratik Desai, founder of Kisan AI, who aimed to bring AI solutions to Indian agriculture.
The Ripple Effect on Artificial General Intelligence (AGI) in Asia
India’s shift in AI regulation could have significant and lasting implications for the development and growth of Artificial General Intelligence (AGI) in Asia. As India joins the global AI debate and adopts a stricter regulatory environment, it may inadvertently hinder innovation and competition in the AGI landscape. This, in turn, could affect collaborations and advancements across the continent, making it more challenging for Asia to maintain a competitive edge in the global AI race.
The Importance of AGI in Asia’s Technological Future
AGI represents the next frontier in artificial intelligence, with the potential to revolutionise industries, drive economic growth, and improve the quality of life for millions. As Asia continues to establish itself as a global technological powerhouse, the development and integration of AGI become increasingly vital to the region’s future success. However, India’s new AI advisory may create roadblocks for companies and researchers working on AGI, potentially stifling breakthroughs and discouraging investment in the sector.
Balancing Regulation and Innovation: The Way Forward
While it is essential to address the ethical concerns and potential risks associated with AI and AGI, striking the right balance between regulation and innovation is crucial. Overly restrictive regulations may deter startups and established companies alike from pursuing AI and AGI research, stifling the very innovations that could drive progress and economic growth.
Learning from Other Regions and Countries
India can learn from the experiences of other regions and countries that have grappled with similar challenges in regulating AI. For example, the European Union has proposed a risk-based approach to AI regulation, focusing on strict rules for high-risk applications while allowing more flexibility for low-risk use cases. This approach aims to protect citizens from potential harm without stifling innovation.
Encouraging Collaboration and Open Dialogue
To navigate the complex landscape of AI regulation, it is essential for governments, industry leaders, and researchers to engage in open dialogue and collaboration. By working together, they can develop regulatory frameworks that address legitimate concerns while fostering an environment conducive to innovation and growth in the AGI space.
You Decide: Is India AI Regulation Good Or Bad For The Country?
In light of India’s shift in AI regulation, how can Asia strike the right balance between promoting innovation in AGI and addressing the ethical concerns and risks associated with advanced AI technologies? Share your thoughts in the comments below.
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News
If AI Kills the Open Web, What’s Next?
Exploring how AI is transforming the open web, the rise of agentic AI, and emerging monetisation models like microtransactions and stablecoins.
Published
1 week agoon
May 28, 2025By
AIinAsia
The web is shifting from human-readable pages to machine-mediated experiences with AI impacting the future of the open web. What comes next may be less open—but potentially more useful.
TL;DR — What You Need To Know
- AI is reshaping web navigation: Google’s AI Overviews and similar tools provide direct answers, reducing the need to visit individual websites.
- Agentic AI is on the rise: Autonomous AI agents are beginning to perform tasks like browsing, shopping, and content creation on behalf of users.
- Monetisation models are evolving: Traditional ad-based revenue is declining, with microtransactions and stablecoins emerging as alternative monetisation methods.
- The open web faces challenges: The shift towards AI-driven interactions threatens the traditional open web model, raising concerns about content diversity and accessibility.
The Rise of Agentic AI
The traditional web, characterised by human users navigating through hyperlinks and search results, is undergoing a transformation. AI-driven tools like Google’s AI Overviews now provide synthesised answers directly on the search page, reducing the need for users to click through to individual websites.
This shift is further amplified by the emergence of agentic AI—autonomous agents capable of performing tasks such as browsing, shopping, and content creation without direct human intervention. For instance, Opera’s new AI browser, Opera Neon, can automate internet tasks using contextual awareness and AI agents.
These developments suggest a future where AI agents act as intermediaries between users and the web, fundamentally altering how information is accessed and consumed.
Monetisation in the AI Era
The traditional ad-based revenue model that supported much of the open web is under threat. As AI tools provide direct answers, traffic to individual websites declines, impacting advertising revenues.
In response, new monetisation strategies are emerging. Microtransactions facilitated by stablecoins offer a way for users to pay small amounts for content or services, enabling creators to earn revenue directly from consumers. Platforms like AiTube are integrating blockchain-based payments, allowing creators to receive earnings through stablecoins across multiple protocols.
This model not only provides a potential revenue stream for content creators but also aligns with the agentic web’s emphasis on seamless, automated interactions.
The Future of the Open Web
The open web, once a bastion of free and diverse information, is facing significant challenges. The rise of AI-driven tools and platforms threatens to centralise information access, potentially reducing the diversity of content and perspectives available to users.
However, efforts are underway to preserve the open web’s principles. Initiatives like Microsoft’s NLWeb aim to create open standards that allow AI agents to access and interact with web content in a way that maintains openness and interoperability.
The future of the web may depend on balancing the efficiency and convenience of AI-driven tools with the need to maintain a diverse and accessible information ecosystem.
What Do YOU Think?
As AI impacts the future of the open web, we must consider how to preserve the values of openness, diversity, and accessibility. How can we ensure that the web remains a space for all voices, even as AI agents become the primary means of navigation and interaction?
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News
GPT-5 Is Less About Revolution, More About Refinement
This article explores OpenAI’s development of GPT-5, focusing on improving user experience by unifying AI tools and reducing the need for manual model switching. It includes insights from VP of Research Jerry Tworek on token growth, benchmarks, and the evolving role of humans in the AI era.
Published
2 weeks agoon
May 22, 2025By
AIinAsia
OpenAI’s next model isn’t chasing headlines—it’s building a smoother, smarter user experience with fewer interruptions the launch of GPT-5 unified tools.
TL;DR — What You Need To Know
- GPT-5 aims to unify OpenAI’s tools, reducing the need for switching between models
- The Operator screen agent is due for an upgrade, with a push towards becoming a desktop-level assistant
- Token usage continues to rise, suggesting growing AI utility and infrastructure demand
- Benchmarks are losing their relevance, with real-world use cases taking centre stage
- OpenAI believes AI won’t replace humans but may reshape human labour roles
A more cohesive AI experience, not a leap forward
While GPT-4 dazzled with its capabilities, GPT-5 appears to be a quieter force, according to OpenAI’s VP of Research, Jerry Tworek. Speaking during a recent Reddit Q&A with the Codex team, Tworek described the new model as a unifier—not a disruptor.
“We just want to make everything our models can currently do better and with less model switching,” Tworek said. That means streamlining the experience so users aren’t constantly toggling between tools like Codex, Operator, Deep Research and memory functions.
For OpenAI, the future lies in integration over invention. Instead of introducing radically new features, GPT-5 focuses on making the existing stack work together more fluidly. This approach marks a clear departure from the hype-heavy rollouts often associated with new model versions.
Operator: from browser control to desktop companion
One of the most interesting pieces in this puzzle is Operator, OpenAI’s still-experimental screen agent. Currently capable of basic browser navigation, it’s more novelty than necessity. But that may soon change.
An update to Operator is expected “soon,” with Tworek hinting it could evolve into a “very useful tool.” The goal? A kind of AI assistant that handles your screen like a power user, automating online tasks without constantly needing user prompts.
The update is part of a broader push to make AI tools feel like one system, rather than a toolkit you have to learn to assemble. That shift could make screen agents like Operator truly indispensable—especially in Asia, where mobile-first behaviour and app fragmentation often define the user journey.
Integration efforts hit reality checks
Originally, OpenAI promised that GPT-5 would merge the GPT and “o” model series into a single omnipotent system. But as with many grand plans in AI, the reality was less elegant.
In April, CEO Sam Altman admitted the challenge: full integration proved more complex than expected. Instead, the company released o3 and o4-mini as standalone models, tailored for reasoning.
Tworek confirmed that the vision of reduced model switching is still alive—but not at the cost of model performance. Users will still see multiple models under the hood; they just might not have to choose between them manually.
Tokens and the long road ahead
If you think the token boom is a temporary blip, think again. Tworek addressed a user scenario where AI assistants might one day process 100 tokens per second continuously, reading sensors, analysing messages, and more.
That, he says, is entirely plausible. “Even if models stopped improving,” Tworek noted, “they could still deliver a lot of value just by scaling up.”
This perspective reflects a strategic bet on infrastructure. OpenAI isn’t just building smarter models; it’s betting on broader usage. Token usage becomes a proxy for economic value—and infrastructure expansion the necessary backbone.
Goodbye benchmarks, hello real work
When asked to compare GPT with rivals like Claude or Gemini, Tworek took a deliberately contrarian stance. Benchmarks, he suggested, are increasingly irrelevant.
“They don’t reflect how people actually use these systems,” he explained, noting that many scores are skewed by targeted fine-tuning.
Instead, OpenAI is doubling down on real-world tasks as the truest test of model performance. The company’s ambition? To eliminate model choice altogether. “Our goal is to resolve this decision paralysis by making the best one.”
The human at the helm
Despite AI’s growing power, Tworek offered a thoughtful reminder: some jobs will always need humans. While roles will evolve, the need for oversight won’t go away.
“In my view, there will always be work only for humans to do,” he said. The “last job,” he suggested, might be supervising the machines themselves—a vision less dystopian, more quietly optimistic.
For Asia’s fast-modernising economies, that might be a signal to double down on education, critical thinking, and human-centred design. The jobs of tomorrow may be less about doing, and more about directing.
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Business
Apple’s China AI pivot puts Washington on edge
Apple’s partnership with Alibaba to deliver AI services in China has sparked concern among U.S. lawmakers and security experts, highlighting growing tensions in global technology markets.
Published
2 weeks agoon
May 21, 2025By
AIinAsia
As Apple courts Alibaba for its iPhone AI partnership in China, U.S. lawmakers see more than just a tech deal taking shape.
TL;DR — What You Need To Know
- Apple has reportedly selected Alibaba’s Qwen AI model to power its iPhone features in China
- U.S. lawmakers and security officials are alarmed over data access and strategic implications
- The deal has not been officially confirmed by Apple, but Alibaba’s chairman has acknowledged it
- China remains a critical market for Apple amid declining iPhone sales
- The partnership highlights the growing difficulty of operating across rival tech spheres
Apple Intelligence meets the Great Firewall
Apple’s strategic pivot to partner with Chinese tech giant Alibaba for delivering AI services in China has triggered intense scrutiny in Washington. The collaboration, necessitated by China’s blocking of OpenAI services, raises profound questions about data security, technological sovereignty, and the intensifying tech rivalry between the United States and China. As Apple navigates declining iPhone sales in the crucial Chinese market, this partnership underscores the increasing difficulty for multinational tech companies to operate seamlessly across divergent technological and regulatory environments.
Apple Intelligence Meets Chinese Regulations
When Apple unveiled its ambitious “Apple Intelligence” system in June, it marked the company’s most significant push into AI-enhanced services. For Western markets, Apple seamlessly integrated OpenAI’s ChatGPT as a cornerstone partner for English-language capabilities. However, this implementation strategy hit an immediate roadblock in China, where OpenAI’s services remain effectively banned under the country’s stringent digital regulations.
Faced with this market-specific challenge, Apple initiated discussions with several Chinese AI leaders to identify a compliant local partner capable of delivering comparable functionality to Chinese consumers. The shortlist reportedly included major players in China’s burgeoning AI sector:
- Baidu, known for its Ernie Bot AI system
- DeepSeek, an emerging player in foundation models
- Tencent, the social media and gaming powerhouse
- Alibaba, whose open-source Qwen model has gained significant attention
While Apple has maintained its characteristic silence regarding partnership details, recent developments strongly suggest that Alibaba’s Qwen model has emerged as the chosen solution. The arrangement was seemingly confirmed when Alibaba’s chairman made an unplanned reference to the collaboration during a public appearance.
“Apple’s decision to implement a separate AI system for the Chinese market reflects the growing reality of technological bifurcation between East and West. What we’re witnessing is the practical manifestation of competing digital sovereignty models.”
Washington’s Mounting Concerns
The revelation of Apple’s China-specific AI strategy has elicited swift and pronounced reactions from U.S. policymakers. Members of the House Select Committee on China have raised alarms about the potential implications, with some reports indicating that White House officials have directly engaged with Apple executives on the matter.
Representative Raja Krishnamoorthi of the House Intelligence Committee didn’t mince words, describing the development as “extremely disturbing.” His reaction encapsulates broader concerns about American technological advantages potentially benefiting Chinese competitors through such partnerships.
Greg Allen, Director of the Wadhwani A.I. Centre at CSIS, framed the situation in competitive terms:
“The United States is in an AI race with China, and we just don’t want American companies helping Chinese companies run faster.”
The concerns expressed by Washington officials and security experts include:
- Data Sovereignty Issues: Questions about where and how user data from AI interactions would be stored, processed, and potentially accessed
- Model Training Advantages: Concerns that the vast user interactions from Apple devices could help improve Alibaba’s foundational AI models
- National Security Implications: Worries about whether sensitive information could inadvertently flow through Chinese servers
- Regulatory Compliance: Questions about how Apple will navigate China’s content restrictions and censorship requirements
In response to these growing concerns, U.S. agencies are reportedly discussing whether to place Alibaba and other Chinese AI companies on a restricted entity list. Such a designation would formally limit collaboration between American and Chinese AI firms, potentially derailing arrangements like Apple’s reported partnership.
Commercial Necessities vs. Strategic Considerations
Apple’s motivation for pursuing a China-specific AI solution is straightforward from a business perspective. China remains one of the company’s largest and most important markets, despite recent challenges. Earlier this spring, iPhone sales in China declined by 24% year over year, highlighting the company’s vulnerability in this critical market.
Without a viable AI strategy for Chinese users, Apple risks further erosion of its market position at precisely the moment when AI features are becoming central to consumer technology choices. Chinese competitors like Huawei have already launched their own AI-enhanced smartphones, increasing pressure on Apple to respond.
“Apple faces an almost impossible balancing act. They can’t afford to offer Chinese consumers a second-class experience by omitting AI features, but implementing them through a Chinese partner creates significant political exposure in the U.S.
The situation is further complicated by China’s own regulatory environment, which requires foreign technology companies to comply with data localisation rules and content restrictions. These requirements effectively necessitate some form of local partnership for AI services.
A Blueprint for the Decoupled Future?
Whether Apple’s partnership with Alibaba proceeds as reported or undergoes modifications in response to political pressure, the episode provides a revealing glimpse into the fragmenting global technology landscape.
As digital ecosystems increasingly align with geopolitical boundaries, multinational technology firms face increasingly complex strategic decisions:
- Regionalised Technology Stacks: Companies may need to develop and maintain separate technological implementations for different markets
- Partnership Dilemmas: Collaborations beneficial in one market may create political liabilities in others
- Regulatory Navigation: Operating across divergent regulatory environments requires sophisticated compliance strategies
- Resource Allocation: Developing market-specific solutions increases costs and complexity
What we’re seeing with Apple and Alibaba may become the norm rather than the exception. The era of frictionless global technology markets is giving way to one where regional boundaries increasingly define technological ecosystems.
Looking Forward
For now, Apple Intelligence has no confirmed launch date for the Chinese market. However, with new iPhone models traditionally released in autumn, Apple faces mounting time pressure to finalise its AI strategy.
The company’s eventual approach could signal broader trends in how global technology firms navigate an increasingly bifurcated digital landscape. Will companies maintain unified global platforms with minimal adaptations, or will we see the emergence of fundamentally different technological experiences across major markets?
As this situation evolves, it highlights a critical reality for the technology sector: in an era of intensifying great power competition, even seemingly routine business decisions can quickly acquire strategic significance.
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