Baidu, one of China’s leading technology companies, is ramping up its AI chip operations as US restrictions limit Nvidia’s capacity to supply its products to the Chinese market.
The company’s Kunlunxin unit, which designs and produces AI processors for data centers, cloud services, and machine learning applications, is central to this strategy.
Earlier in 2025, Kunlunxin secured major orders from China Mobile, signaling strong domestic interest in locally produced AI chips. Baidu combines its own chips with select Nvidia products, creating a hybrid approach that balances performance and availability while the global semiconductor supply chain faces continued disruptions.
Baidu recently unveiled a five-year roadmap for its Kunlun AI chips, with the M100 scheduled for 2026 and the M300 following in 2027. These chips are positioned as affordable and controllable computing solutions, aimed at supporting the country’s growing AI infrastructure needs.
However, key technical details remain undisclosed. Baidu has not revealed the foundry producing these chips nor the process node, leaving analysts to estimate production capabilities and efficiency.
This lack of transparency contrasts with Huawei’s Ascend AI chips, which have a publicly detailed roadmap extending to 2028 and include in-house High Bandwidth Memory (HBM) technology.
Analysts from Deutsche Bank and JP Morgan note that Baidu is strategically positioned to benefit as local tech giants like Alibaba and Tencent face ongoing semiconductor shortages.
The Chinese government has also encouraged companies to reduce reliance on foreign chips, further increasing demand for domestic solutions.
Baidu’s internal AI computing cluster, Tianchi256, reportedly delivers over 50% improved performance compared with previous setups, although comparisons with Huawei’s CloudMatrix 384 or Nvidia systems remain challenging due to differing benchmarks.
The growth of Baidu’s Kunlunxin chips presents opportunities for software vendors. Chinese GPU manufacturers often provide software stacks inspired by Nvidia’s CUDA platform, with some claiming native CUDA support. Yet, large-scale compatibility and performance remain unverified.
Third-party software companies can review Kunlunxin’s customized PyTorch framework and development tools to identify gaps and build migration services.
This trend enables enterprises transitioning workloads from Nvidia to domestic chips, creating a new consulting and systems integration market.
As Baidu pushes forward with its AI chip expansion, the company is not only responding to supply constraints imposed on Nvidia but also aligning with China’s broader strategy of boosting domestic semiconductor capabilities.
The success of the M100 and M300 chips will be closely watched by both domestic AI developers and international observers, signaling how China’s tech ecosystem adapts amid global supply chain pressures.
Baidu’s initiatives highlight the intersection of national policy, corporate strategy, and technological innovation, potentially reshaping the domestic AI landscape while providing a blueprint for local alternatives to foreign chip dependency.
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