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Chinese AI stocks to extend DeepSeek-driven run as Beijing counts on growth boost

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Chinese artificial intelligence (AI) stocks are expected to defy a slowdown across industries, as the mainland relies on the technology to boost business efficiency and revive economic growth, according to investors and analysts.
Companies including Meituan and Xiaomi were set to benefit from a wave of AI integration that would transform business models, according to Morgan Stanley, as investors look for new winners after DeepSeek’s breakthrough in generative AI technology. China Asset Management, one of the mainland’s biggest mutual-fund firms, said last month that the country’s AI adoption – estimated at 5 per cent penetration at present – was on the cusp of explosive growth, similar to personal computers in the 1980s.

“AI will probably become a key driver for China’s modernisation,” said Yao Pei, an analyst at Huachuang Securities, in a report this month. “There are lots of catalysts for AI, and AI is expected to penetrate into every industry,” notably electronics, computing and media, Yao said.

DeepSeek’s surprising ascent earlier this year put China’s technology stocks back into the spotlight, spurring optimism that the country would be able to lead the world in AI in spite of US export curbs. Investors are identifying new prospects in the industry after making bets on platform-based developers of large language models such as Alibaba Group Holding and Tencent Holdings. Alibaba owns the Post.
China’s biggest online travel agency Trip.com Group, short-video platform operator Kuaishou Technology and budget e-commerce operator PDD Holdings are among the companies that stood to thrive on AI applications, according to Morgan Stanley. Other potential beneficiaries included electric-vehicle makers BYD and Nio, as well as household appliances maker Midea Group, it said in a report in May.

Unlike the US, which had an edge in AI computing, China was focused on efficiency – emphasising revenue generated by AI-enabled offerings and cost savings achieved through high productivity, the US investment bank said.



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“The distinction between AI startups and non-AI startups will disappear entirely”

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“At Magenta, we see AI not as a passing trend but as a foundational layer that will underpin the next generation of category-defining companies,” explained Ran Levitzky, General Partner at Magenta Venture Partners. “While the initial wave focused on core models and horizontal capabilities, we believe the next phase will be led by applied AI companies that embed intelligence deeply into products, solve specific and valuable problems, and show clear paths to monetization and defensibility.”

The firm joined CTech for its VC AI Survey, where venture capital companies are invited to share insights on artificial intelligence and its expected impact on every aspect of the sector and industry. It is focused on teams that treat AI as a strategic enabler, not just a feature, and ‘who combine technical excellence with sharp execution and commercial discipline’.

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Ran Magenta

Ran Levitzky

(Photo: Magenta Venture Partners)

“In the coming years, the distinction between AI startups and non-AI startups will disappear entirely,” he added. “The winners will be those who know how to build AI-native products that scale, deliver measurable value, and adapt fast in a rapidly evolving ecosystem. Israel, with its unique mix of talent, resilience, and global ambition, is well-positioned to lead in this transformation.”

Fund ID
Name and Title: Ran Levitzky, General Partner
Fund Name: Magenta Venture Partners
Founding Team: Ran Levitzky, Ori Israely, Mitsui & Co.
Founding Year: 2019
Investment Stage: Series A
Investment Sectors: AI, FinTech, Cyber, Mobility, Healthcare, Supply Chain, Vertical SaaS, Enterprise Software

On a scale of 1 to 10, how has AI impacted your fund’s operations over the past year – specifically in terms of the day-to-day work of the fund’s partners and team members?

7 – We leverage AI across our entire workflow. Our custom GPT acts as a virtual agentic associate, helping assess companies in our dealflow and evaluate potential investments. We apply AI to analyze the environments surrounding our portfolio companies, enabling us to deliver deeper strategic value. AI copilots assist in identifying trends across industry benchmarks, business models, and other relevant signals. We also use generative AI for content creation, including social media, investor updates, and broader communications.

Have you already had any significant exits from AI companies? If so, what were the key characteristics of those companies?

It’s still early for us to see a full exit from a pure AI company, but many of our portfolio companies have already embedded AI into their core strategy and are demonstrating clear business impact. AI capabilities are driving new monetization opportunities through enhanced product tiers and improving margin profiles across several sectors. We’re also seeing stronger sales efficiency, shorter sales cycles, and improved customer retention. Notably, companies leveraging AI effectively are showing a meaningful increase in ARR per employee, reflecting both operational leverage and disciplined execution. These companies share a strong alignment between AI use cases and real customer needs, coupled with product-led teams that move quickly and prioritize measurable business outcomes.

Is identifying promising AI startups different from evaluating companies in your more traditional investment domains? If so, how does that difference manifest?

Yes, evaluating AI startups is meaningfully different, especially when considering the product, competitive positioning, and the founding team’s ability to turn AI into a lasting advantage. We look at whether AI is core to the product’s differentiation and if it creates a moat through performance, user impact, or speed of execution that cannot be easily copied. We assess how well the team can design and evolve AI-driven features that are deeply integrated into the product experience, not just layered on top. There is also a clear distinction between evaluating foundational AI infrastructure companies and AI-enabled vertical SaaS companies as each demands a different lens in terms of scalability, go-to-market, and defensibility.

Over time, we believe the term “AI startup” will become irrelevant, as every successful company will need to be AI-native at its core. The real question will shift from whether a startup uses AI, to how intelligently and strategically it does so.

What specific financial performance indicators (KPIs) do you examine when assessing a potential AI company? Are there any AI-specific metrics you consider particularly important?

When assessing a potential AI company at the Series A stage, we focus on core financial indicators like revenue growth, gross margin potential, customer retention, and sales efficiency, while recognizing that many of these may still be in early stages. What matters most is how AI is expected to influence these metrics over time. We pay close attention to the assumptions around how AI will drive monetization, support pricing strategy, or create stickiness through differentiated outcomes.

For AI-specific considerations, we look at early signals such as adoption and usage rates of AI features, and how those are projected to impact conversion, expansion, or retention. We also examine the cost and scalability of delivering AI-driven value, including inference or infrastructure costs relative to the unit economics. While some data may still be directional at this stage, we look for a clear, credible path showing how AI moves the business forward in ways that are both measurable and defensible.

How do you approach the valuation of early-stage AI startups, which often lack significant revenues but possess strong technological potential?

When we evaluate early-stage AI startups, they typically have less than one million in ARR, so we place strong emphasis on team quality, product differentiation, and the strategic role AI plays in creating long-term value. We look for early signs of customer traction, whether through paid pilots, strong engagement, or clear willingness to pay, and assess how AI contributes to pricing power, retention, and overall business scalability.

Unlike in earlier hype cycles, we believe disciplined investors should still anchor valuation in reasonable multiples on actual or near-term revenue. While we recognize the long-term potential of breakthrough AI technology, we avoid inflated valuations that are unlikely to be justified by business performance. Our approach balances ambition with pragmatism, focusing on companies where strong technology is matched by clear commercial thinking and a realistic path to scale.

What financial risks do you associate with investing in AI companies, beyond the usual technological risks?

Beyond core technological risks, we see several financial risks that are particularly relevant to AI companies. One key area is infrastructure cost – AI workloads can be compute-intensive, and without careful architecture and optimization, high inference or training costs can erode margins as the business scales. Another risk is dependency on third-party models or platforms, where pricing changes, access restrictions, or policy shifts can materially impact unit economics and roadmap execution.

We also pay close attention to regulatory risk, especially in sectors like healthcare, finance, and defense, where AI-driven products may face long and uncertain validation cycles or compliance hurdles that delay revenue. In some cases, uncertainty around IP ownership or the use of third-party training data introduces legal exposure that could translate into financial liabilities. We underwrite these risks carefully, especially at the Series A stage, and prioritize companies that demonstrate a clear understanding of how to build AI-native products with sound business foundations.

Do you focus on particular subdomains within AI?

We focus on applied AI opportunities where the technology delivers a tangible product and business value. Our interest spans generative AI in vertical domains, natural language interfaces that simplify complex workflows, and computer vision for industrial, security, and automation use cases. We also actively look at AI solutions in supply chains, where predictive and optimization tools can drive operational efficiency, as well as horizontal platforms that empower developers, analysts, or non-technical users across industries. In parallel, we are increasingly drawn to startups addressing the new challenges that AI adoption creates for enterprises – such as model governance, compliance, observability, and responsible deployment at scale. Across all these areas, we prioritize teams that pair deep technical expertise with experienced executioners who can translate innovation into scalable, commercially viable products.

How do you view AI’s impact on traditional industries? Are there specific AI technologies you believe will be especially transformative in certain sectors?

We see AI driving fundamental change across traditional industries by rethinking core workflows, improving efficiency, and enabling new business models. This is already evident across our portfolio. At Workiz, AI powers “Jessica,” a virtual voice dispatcher that automates scheduling and customer interaction for field service teams, boosting efficiency and professionalism in a high-friction operational environment. Onebeat applies AI in retail to optimize inventory allocation and real-time merchandising, helping retailers respond dynamically to demand and increase margins. Sensos brings intelligence to logistics and supply chains, using AI to enable predictive tracking, risk monitoring, and real-time visibility for global operations.

We believe technologies like generative AI, computer vision, and domain-specific natural language models will continue to be especially transformative in industries such as logistics, retail, healthcare, and financial services. The most impactful solutions are those that embed AI deeply into existing workflows and deliver measurable ROI in complex, real-world environments.

What specific AI trends in Israel do you see as having strong exit potential in the next five years? Are there niches where you believe Israeli startups particularly excel?

We see strong exit potential across a broad range of AI-driven sectors in Israel, combining deep technical capabilities with strong commercial execution. Core areas like cybersecurity and developer tools continue to perform well, with AI used to solve clear enterprise pain points. Physical AI is an area where Israeli startups are particularly well positioned, building systems that combine perception, decision making, and interaction with the physical world. These companies are creating real value in complex environments that require precision, speed, and adaptability.

Beyond these core strengths, we are also seeing increasing activity in emerging white spaces where AI adoption is still early but accelerating. These include areas where workflows are data-intensive, manual, or fragmented, and where AI can deliver measurable improvements in efficiency, cost, and decision quality. We also see growing demand for AI infrastructure around governance, observability, and safe deployment at scale. Israeli startups excel at building in these conditions, with teams that combine strong technical depth, entrepreneurial agility, and a global mindset—creating a foundation for meaningful exits in the years ahead.

Are there gaps or missing segments in the Israeli AI landscape that you’ve identified? What types of AI founders are you especially looking to back right now in Israel?

We see strong exit potential across a wide spectrum of AI-driven sectors in Israel, supported by a combination of deep technical expertise and strong execution. Cybersecurity continues to be a standout area, where AI is enabling more adaptive and proactive threat detection, creating real differentiation in a crowded global market. Fintech is another domain seeing strong momentum, with AI powering smarter decision making, automation of complex workflows, and better risk management.

Physical AI is emerging as a compelling opportunity, where Israeli startups are building systems that combine perception, reasoning, and real-world interaction. These technologies are gaining traction in environments that demand high levels of autonomy, precision, and reliability.

In parallel, we see increasing activity in emerging white spaces where AI can transform legacy processes and bring step changes in productivity and insight. There is also growing demand for tools that support AI governance, monitoring, and responsible deployment at scale. Israeli teams are particularly strong at executing in these areas, combining technical depth with a global, product-driven mindset that positions them well for meaningful outcomes.



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Beyond Hype and Fluff: Lessons for AI from 25 Years of EdTech

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  • This blog is by Rod Bristow is CEO of College Online which provides access to lifelong learning, Chair of Council at the University of Bradford, Visiting Professor at the UCL Institute of Education, Chair of the Kortext Academic Advisory Board and former President at Pearson.

I am an advocate for education technology. It is a growing force for good, providing great solutions to real problems:

  • Reducing teacher workload through lesson planning, curriculum development, homework submission and marking, formative assessments, course management systems and more;
  • Improving learning outcomes through engaging, immersive experiences, adaptive assessments and the generation of rich data about learning;
  • Widening access to content and tools through aggregation platforms across thousands of publishers and millions of textbooks; and
  • Widening access to courses and qualifications for the purpose of lifelong learning using online and blended modes of delivery.

Products and services that solve these problems will continue to take root.

All that said, we have not seen the widespread transformation in education that technology promised to deliver, and investors have had their fingers burned. We could argue this results from unrealistic expectations rather than poor achievement, but there are lessons to be learned.

According to HolonIQ:

2024 saw $2.4 billion of EdTech Venture Capital, representing the lowest level of investment since 2015. The hype of 2021 is well and truly over, with investors seeking fundamentals over ‘fluff’.

From HolonIQ

The chart says it all. Steady growth in investment over the last decade culminated in a huge peak during Covid. Hype and ‘fluff’ overtook rational thinking, and several superficially attractive businesses spiked and then plummeted in value. In education, details and evidence of impact (or efficacy) matter. Without them, lasting scale is much harder to achieve.

The pendulum has now swung the other way, with investors harder to convince. Investors and entrepreneurs need to ask the question, ‘Does it work?’ before considering how it scales. If they do, they will see plenty of applications that both work and scale, and better-educated investors will be good for the sector.

One of the biggest barriers to scale is the complexity of implementation with teachers, without whom there is little impact. Without getting into the debate about teacher autonomy, most teachers like to do their own thing. And products which bypass teachers, marketed directly to consumers, often struggle to show as much impact and financial return.

Will things be different with AI? The technology, being many times more powerful, will handle much greater flexibility of implementation for teachers than we have seen so far. AI has even greater potential to solve real problems: widening access to learning, saving time for teachers and engaging learners through adaptive digital formative assessment and deeply immersive learning experiences through augmented reality.

But risks of ‘over-selling’ the benefits of AI technologies are potentially heightened by its very power. AI can generate mind-boggling ‘solutions’ for learners which dramatically reduce workload. Some of these are good in making learning more efficient, but questions of efficacy remain. Learning intrinsically requires work: it is done by you, not to you. Technology should not try to make learning easy, but to make hard work stimulating and productive if it is to sustain over the long term.

There is a clear and present danger that AI will undermine learning if high-stakes assessments relying on coursework do not keep pace with the reality of AI. This is a risk yet to be gripped by regulators. There is also little evidence that, for example, AI will ever replace the inspiration of human teachers, and those saying their solutions will do so must make a very strong case. Technology companies can help, but they can also do harm.

New technologies must be grounded in what improves learning, especially when unleashing the power of AI. This is entirely possible.

There are many areas of great promise, but none more so than the enormous expansion in online access to lifelong learning for working people who are otherwise denied the education they need. There are now eight million people (mainly adults) studying for degrees online and tens of millions of people taking shorter online skills courses. Opening access to lifelong learning to everyone remains education’s biggest unmet need and opportunity. Education technologies can be ‘designed in’ to the entire learning experience from the beginning, rather than retrofitted by overworked teachers. Widening access to lifelong learning could deliver a greater transformation to the economy and society than we have seen in 100 years.

Learning tools and platforms are one thing, but what do people need to learn in a world changed by AI? Much has been written about the potential for technology and especially AI to change what people need to learn. A popular narrative is that skills will be more important than knowledge; that knowledge can be so easily searched through the internet or created with AI, there is no need for it to be learned.

Skills do matter, but these statements are wrong. We should not choose between skills and knowledge. Skills are a representation of knowledge. With no knowledge or expertise, there is no skill. More than that, in a world in which AI will have an unimaginable impact on society, we should remember that knowledge provides the very basis of our ability to think and that human memory is the residue of thought.

Only a deeper understanding of learning and the real problems we need to solve will unleash the huge potential for technology to unlock wider access, a better learning experience and higher outcomes. To simultaneously hold the benefits and the risks of AI in a firm embrace, we will need courage, imagination and clarity about the problems to be solved before we get swept up in the hype and fluff. The opportunity is too big to put at risk.



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AI-generated child sexual abuse videos surging online, watchdog says | Internet

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The number of videos online of child sexual abuse generated by artificial intelligence has surged as paedophiles have pounced on developments in the technology.

The Internet Watch Foundation said AI videos of abuse had “crossed the threshold” of being near-indistinguishable from “real imagery” and had sharply increased in prevalence online this year.

In the first six months of 2025, the UK-based internet safety watchdog verified 1,286 AI-made videos with child sexual abuse material (CSAM) that broke the law, compared with two in the same period last year.

The IWF said just over 1,000 of the videos featured category A abuse, the classification for the most severe type of material.

The organisation said the multibillion-dollar investment spree in AI was producing widely available video-generation models that were being manipulated by paedophiles.

“It is a very competitive industry. Lots of money is going into it, so unfortunately there is a lot of choice for perpetrators,” said one IWF analyst.

The videos were found as part of a 400% increase in URLs featuring AI-made child sexual abuse in the first six months of 2025. The IWF received reports of 210 such URLs, compared with 42 last year, with each webpage featuring hundreds of images, including the surge in video content.

The IWF saw one post on a dark web forum where a paedophile referred to the speed of improvements in AI, saying how they had mastered one AI tool only for “something new and better to come along”.

IWF analysts said the images appeared to have been created by taking a freely available basic AI model and “fine-tuning” it with CSAM in order to produce realistic videos. In some cases these models had been fine-tuned with a handful of CSAM videos, the IWF said.

The most realistic AI abuse videos seen this year were based on real-life victims, the watchdog said.

Derek Ray-Hill, the IWF’s interim chief executive, said the growth in capability of AI models, their wide availability and the ability to adapt them for criminal purposes could lead to an explosion of AI-made CSAM online.

“There is an incredible risk of AI-generated CSAM leading to an absolute explosion that overwhelms the clear web,” he said, adding that a growth in such content could fuel criminal activity linked to child trafficking, child sexual abuse and modern slavery.

The use of existing victims of sexual abuse in AI-generated images meant that paedophiles were significantly expanding the volume of CSAM online without having to rely on new victims, he added.

The UK government is cracking down on AI-generated CSAM by making it illegal to possess, create or distribute AI tools designed to create abuse content. People found to have breached the new law will face up to five years in jail.

Ministers are also outlawing possession of manuals that teach potential offenders how to use AI tools to either make abusive imagery or to help them abuse children. Offenders could face a prison sentence of up to three years.

Announcing the changes in February, the home secretary, Yvette Cooper, said it was vital that “we tackle child sexual abuse online as well as offline”.

AI-generated CSAM is illegal under the Protection of Children Act 1978, which criminalises the taking, distribution and possession of an “indecent photograph or pseudo photograph” of a child.



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