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Ant Group's AI Revolution: Shifting from Nvidia to Chinese Chips

Nathaniel StoneMonday, Mar 24, 2025 7:57 am ET
2min read

In the rapidly evolving world of artificial intelligence, Ant Group, the fintech giant behind Alipay, has made a strategic move that could reshape the AI landscape. According to a recent report by Bloomberg, Ant Group has developed AI model training technology using Chinese-made semiconductors, reducing costs by a staggering 20%. This shift away from Nvidia's high-end GPUs and towards domestic chips from alibaba and Huawei is a game-changer in the AI industry.

The fintech giant leveraged domestic chips from affiliates such as alibaba group Holding Ltd. and Huawei Technologies Co. to train models through the Mixture of Experts (MoE) machine learning approach. This method splits tasks into specialized subsets, enhancing efficiency and reducing the cost of training AI models. The results? Performance levels comparable to those trained on Nvidia's H800 GPUs. While Ant continues to use nvidia hardware alongside alternatives like AMD and other Chinese semiconductor providers, the company aims to eliminate reliance on high-end GPUs.



This move by Ant Group is not just about cost savings; it's about strategic independence. The use of MoE models, which have gained traction among AI leaders such as Google and China’s DeepSeek, allows for more efficient processing. Ant Group's adoption of this technique further solidifies its position in the market, as it can now offer competitive AI solutions without relying heavily on high-end GPUs from Nvidia.

The implications of this shift are far-reaching. Ant Group's success in reducing costs by 20% using domestic chips and the MoE method demonstrates that high-performance AI training is not exclusively dependent on high-end GPUs from companies like Nvidia. This could lead to a shift in the market dynamics, as other companies may follow Ant Group's lead and invest in developing more cost-effective AI training solutions.

Moreover, the adoption of cost-efficient AI training methods could put pressure on Nvidia and AMD to adjust their pricing strategies. Nvidia, in particular, has a dominant position in the AI chip market, with a market share estimated to be between 70% and 95% for AI chips used for training and deploying models. However, if more companies adopt cost-saving measures similar to Ant Group's, Nvidia's pricing power could be eroded.

AMD, on the other hand, has been positioning itself as a cost-effective alternative to Nvidia. AMD CEO Lisa Su highlighted the chip's excellence at inference, as opposed to competing with Nvidia for training. Last week, Microsoft said it was using AMD Instinct GPUs to serve its Copilot models. Morgan Stanley analysts took the news as a sign that AMD's AI chip sales could surpass $4 billion this year, the company's public target. If more companies follow Ant Group's example and opt for cost-effective solutions, AMD could see increased demand for its products, further solidifying its position as a viable alternative to Nvidia.

The success of Ant Group's cost-saving measures could accelerate the development of AI technologies in regions with limited access to high-end GPUs. The company plans to leverage the recent breakthrough in the large language models it has developed, Ling-Plus and Ling-Lite, for industrial AI solutions including health care and finance. This could lead to a more democratized AI landscape, where smaller companies and startups in various regions can afford to develop and deploy AI models, driving innovation and competition in the industry.

In conclusion, Ant Group's shift towards using Chinese-made semiconductors and the MoE approach has enhanced its competitive position by reducing costs, achieving comparable performance to Nvidia's high-end GPUs, and leveraging efficient machine learning techniques. This strategy positions Ant Group as a formidable competitor in the AI market, capable of offering cost-effective and high-performance AI solutions. The long-term implications include increased innovation, democratization of AI technologies, and a potential shift in market dynamics, with more companies opting for cost-effective AI training solutions.

Ask Aime: How will Ant Group's adoption of AI model training technology using Chinese-made semiconductors impact the AI chip market and Nvidia's position?

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Disclaimer: the above is a summary showing certain market information. AInvest is not responsible for any data errors, omissions or other information that may be displayed incorrectly as the data is derived from a third party source. Communications displaying market prices, data and other information available in this post are meant for informational purposes only and are not intended as an offer or solicitation for the purchase or sale of any security. Please do your own research when investing. All investments involve risk and the past performance of a security, or financial product does not guarantee future results or returns. Keep in mind that while diversification may help spread risk, it does not assure a profit, or protect against loss in a down market.
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