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Indonesia Drafts Stricter AI Rules Amid Rising Deepfake Concerns

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TLDRs;

  • Indonesia drafts stricter AI regulations, targeting deepfakes as Nezar Patria urges platforms to provide free detection tools.
  • Deepfake content has surged 550% in five years, raising alarms over misinformation and digital safety.
  • Jakarta’s policies align with global efforts, following China’s watermarking rules and EU’s proposed AI transparency laws.
  • The detection battle remains tough, as deepfake creation tools advance faster than available verification technology.

Indonesia is intensifying its push for tighter artificial intelligence (AI) regulation as concerns over deepfakes continue to mount.

At an event in Jakarta on September 10, Nezar Patria, the country’s deputy minister for communications and digital, called on major technology companies to provide free tools that help users identify AI-generated content.

Patria pointed to research from Sensity AI showing a staggering 550% rise in deepfake content over the past five years. He warned that the actual scale could be much larger, given the rapid accessibility of generative AI tools. According to him, while the technology behind deepfakes is advancing rapidly, ordinary users lack the resources to verify what they see online.

Tech Giants Called to Step Up

The Indonesian government believes major platforms such as Google, Meta, and others already have the algorithms and computational capacity to deploy large-scale detection systems. What is missing, Patria argued, is public access to these tools.

“Detection capabilities shouldn’t be locked away behind private walls,” Patria emphasized, suggesting that transparency tools must be integrated into the platforms millions rely on daily.

By offering detection features for free, companies could help users spot hoaxes, misinformation, and manipulated videos before they spread widely.

Indonesia Aligns With Global AI Regulation

Indonesia’s move mirrors broader international efforts to confront the deepfake challenge. China already requires watermarks on AI-generated content, while the European Union has proposed new laws mandating clear labeling and transparency for synthetic media.

Data shows that more than 69 countries have introduced over 1,000 AI-related policy proposals, many aimed at reducing risks associated with misinformation and harmful synthetic content. Jakarta’s approach signals that Southeast Asia’s largest economy intends to play an active role in shaping ethical AI use, not just within its borders but as part of a global movement.



Indonesia already enforces digital safety measures through the ITE Law and the PDP Law. The government is now drafting a new set of rules specifically focused on ethical and responsible AI deployment, positioning itself among nations prioritizing both innovation and public protection.

A Race Between Creation and Detection

Despite the urgency, experts note that detection technologies face an uphill battle. The development of generative adversarial networks (GANs) has made creating realistic deepfakes faster and cheaper than ever. In contrast, detection systems must constantly evolve to keep pace with new manipulation techniques.

Even institutions like the U.S. Defense Advanced Research Projects Agency (DARPA) are investing heavily in deepfake detection, underscoring the scale of the technical challenge. Indonesia’s demand for free tools is therefore not only about user empowerment but also about bridging a critical accessibility gap.

As the world witnesses more governments demanding transparency in AI, Indonesia’s regulatory push adds weight to the argument that AI innovation must be balanced with safeguards against misuse. For now, the success of these measures will depend on how tech giants respond, and whether they are willing to place public safety ahead of commercial advantage.

 



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Can technology bridge development gaps?

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Artificialintelligence promises to revolutionize economies worldwide, but whether developing nations will benefit or fall further behind depends on choices being made today.

The African Union’s historic Continental AI Strategy, adopted in July 2024, represents both unprecedented ambition and stark reality – while AI could add $1.5 trillion to Africa’s GDP by 2030, the continent currently captures just one per cent of global AI compute capacity despite housing 15 per cent of the world’s population.

This paradox defines the central challenge facing underdeveloped countries, particularly across Africa and South America, as they navigate the AI revolution. With global AI investment reaching $100-130 billion annually while African AI startups have raised only $803 million over five years, the question isn’t whether AI matters for development – it’s whether these regions can harness its transformative potential before the window closes.

The stakes couldn’t be higher. The same mobile revolution that enabled Kenya’s M-Pesa to serve millions without traditional banking infrastructure now offers a template for AI leapfrogging. But unlike mobile phones, AI requires massive computational resources, reliable electricity, and specialized skills that remain scarce across much of the Global South.

Africa awakens to AI’s strategic importance

The momentum building across Africa challenges assumptions about AI relevance in developing contexts. Sixteen African countries now have national AI strategies or policies in development, with Kenya launching its comprehensive 2025-2030 strategy in March and Zambia following suit in November 2024. This represents a 33 per cent increase in strategic planning over just two years, signaling that African leaders view AI not as a luxury but as essential infrastructure.

The African Union’s Continental AI Strategy stands as the world’s most comprehensive development-focused AI framework, projecting that optimal AI adoption could contribute six per cent of the continent’s GDP by 2030. Unlike Western approaches emphasizing innovation for innovation’s sake, Africa’s strategy explicitly prioritizes agriculture, healthcare, education, and climate adaptation – sectors criticalto the continent’s 1.3 billion people.

“We’re not trying to copy Silicon Valley,” explains one senior AU official involved in the strategy’s development. “We’re building AI that serves African priorities.” This Africa-centric approach emerges from harsh lessons learned during previous technology waves, when developing countries often became consumers rather than creators of digital solutions.

South America charts cooperative course

Latin America has taken a markedly different but equally strategic approach, leveraging existing regional integration mechanisms to coordinate AI development. The Santiago Declaration, signed by over 20 countries in October 2023, established the Regional Council on Artificial Intelligence, with Chile emerging as the continental leader.

Chile ranks first in the 2024 Latin American Artificial Intelligence Index (ILIA), followed by Brazil and Uruguay as pioneer countries. This leadership reflects substantial investments – Chile committed $26 billion in public investment for its 2021-2030 National AI Policy, while Brazil’s 2024-2028 AI Plan allocates $4.1 billion across 74 strategic actions.

Brazil’s approach particularly demonstrates how developing countries can mobilize resources for AI transformation. The planned Santos Dumont supercomputer aims to become one of the world’s five most powerful, while six Applied Centers for AI focus on agriculture, healthcare, and Industry 4.0 applications. This represents a fundamental shift from viewing AI as imported technology to building indigenous capabilities.

Agriculture proves AI’s development relevance

Critics questioning AI’s relevance to underdeveloped economies need look no further than Hello Tractor’s transformative impact across African agriculture. This Nigerian-founded ‘Uber for tractors’ platform uses AI for demand forecasting and fleet optimization, serving over 2 million smallholder farmers across over 20 countries. The results are striking: farmers increase incomes by 227 per cent, plant 40 times faster, and achieve three-fold yield improvements through precision timing.

Apollo Agriculture in Kenya and Zambia demonstrates how AI can address financial inclusion challenges that have plagued agricultural development for decades. Using machine learning for credit scoring and satellite data for precision recommendations, the company serves over 350,000 previously unbanked farmers with non-performing loan rates below 2 per cent – outperforming traditional banks while serving supposedly high-risk populations.

These aren’t pilot projects or development experiments. They’re profitable businesses solving real problems with measurable impact.

Investment patterns reveal global disparities

The funding landscape starkly illustrates development challenges facing AI adoption. Global AI investment reached $100-130 billion annually, while African AI startups raised $803 million over five years total. Latin American venture capital investment fell to $3.6 billion in 2024, the lowest in five years, with early-stage funding dominating 80 per cent of deals.

This investment concentration perpetuates technological dependence. The United States and China hold 60 per cent of all AI patents and produce one-third of global AI publications. 100 companies, mainly from these two countries, account for 40 per cent of global AI R&D spending, while 118 countries – mostly from the Global South remain absent from major AI governance discussions.

Risks of digital colonialism loom large

However, current trends suggest widening rather than narrowing divides. Tech giants Apple, Nvidia, and Microsoft have achieved $3 trillion market values that rival entire African continent’s GDP. This concentration of AI capabilities in a handful of corporations based in wealthy countries creates dependency relationships reminiscent of colonial-era resource extraction.

Digital colonialism emerges when developing countries become consumers rather than producers of AI systems. Most AI training occurs on Western datasets, creating cultural and linguistic biases that poorly serve non-Western populations. Search results in diverse countries like Brazil show predominantly white faces when searching for babies, reflecting training data biases.

Toward inclusive AI futures

The path forward requires acknowledging both AI’s transformative potential and persistent barriers to equitable adoption. Infrastructure limitations, skills gaps, and funding disparities create formidable challenges, but successful implementations across agriculture and healthcare demonstrate achievable progress.

Regional cooperation frameworks like the African Union’s Continental AI Strategy and Latin America’s SantiagoDeclaration offer models for coordinated development that can compete with concentrated wealth and expertise of traditional tech centers. These approaches emphasize development priorities rather than pure technological advancement, potentially creating more inclusive AI ecosystems.

The mobile revolution precedent suggests optimism about leapfrogging possibilities, but success requires sustained political commitment, adequate funding, and international cooperation. Countries that invest strategically in AI foundations while fostering indigenous innovation can position themselves to benefit from rather than be left behind by the AI transformation.

The global AI divide represents both the greatest risk and greatest opportunity facing international development in the 21st century. Whether AI bridges or widens global inequalities depends on choices being made today by governments, international organizations, and private sector actors. The stakes-measured in trillions of dollars of economic value and billions of lives affected – demand urgent, coordinated action to ensure AI serves human development rather than merely technological advancement.

The African farmer using Hello Tractor’s AI platform to improve crop yields and the Brazilian patient receiving AI-enhanced diagnostic services demonstrate AI’s development relevance. Whether such success stories become widespread or remain isolated examples depends on the policy foundations being laid across developing countries today. The AI revolution waits for no one – but its benefits need not be predetermined by geography or existing wealth. The window for inclusive AI development remains open, but it will not stay open forever.

(Krishna Kumar is a Technology Explorer & Strategist based in Austin, Texas, USA. Rakshitha Reddy is AI Engineer based in Atlanta, Georgia, USA)



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Meta CFO says Superintelligence AI Lab is already working on next model

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Facebook-parent Meta’s Chief Financial Officer, Susan Li, has confirmed the existence of the company’s new research unit, TBD Lab. The unit, which Li says is composed of “a few dozen” researchers and engineers, is focused on developing the social media giant’s next-generation foundation models. According to a report by the news agency Reuters, Li told investors at the Goldman Sachs Communacopia + Technology conference that the name TBD, which stands for “to be determined,” was a placeholder that “stuck” because the team’s work is still taking shape. What Susan Li said about Meta’s TBD AI labAt the conference (as reported by Reuters), Li said: “We conceive of it as sort of a pretty small, few-dozen-people, very talent-dense set of folks.”The TBD Lab is part of a larger reorganisation of Meta’s AI efforts under the umbrella of Meta Superintelligence Labs. The team’s goal is to push the boundaries of AI over the next one to two years, positioning Meta to compete more effectively with other major players in the AI race.Reuters cited another report from last month to claim that Meta has split its Superintelligence Labs into four groups, which are: a “TBD” lab (still defining its role), a products team (including the Meta AI assistant), an infrastructure team, and the long-term research-focused FAIR lab. Earlier this year, Meta reorganised its AI division under Superintelligence Labs after senior staff left and its Llama 4 model received mixed feedback. The company’s CEO, Mark Zuckerberg, has lately been personally leading aggressive hiring efforts, offering oversized pay packages and directly reaching out to talent on WhatsApp. In July, he said the new setup brings together foundations, products, and FAIR teams, along with a fresh lab focused on building the next generation of AI models.

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Bae Kyung-hun vows to cut AI gap with US to 0.5 years and boost Korea growth – CHOSUNBIZ – Chosun Biz

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Bae Kyung-hun vows to cut AI gap with US to 0.5 years and boost Korea growth – CHOSUNBIZ  Chosun Biz



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