Sources: Huawei’s Ascend chips still lag far behind Nvidia’s for model training and have stability issues, slower inter-chip connectivity, and inferior software (Financial Times)
Huawei’s ambitions to dominate the artificial intelligence (AI) landscape face a significant obstacle: their Ascend chips are lagging behind Nvidia‘s industry-leading offerings. According to a recent Financial Times report, the Ascend chips suffer from several key weaknesses, hindering their performance in model training and potentially jeopardizing Huawei’s AI aspirations.
One major concern is the Ascend chips’ slower speed in model training compared to Nvidia’s GPUs. This gap in processing power translates to longer training times, limiting the efficiency and competitiveness of AI models developed using Huawei’s hardware. Further, stability issues plague the Ascend chips, leading to unpredictable performance and hindering research and development efforts.
Huawei also struggles in inter-chip connectivity. Ascend chips communicate with each other less effectively than Nvidia’s GPUs, hindering the ability to scale up AI workloads and leverage the full potential of their hardware. This limitation further underscores the performance gap between the two companies.
Finally, the software ecosystem surrounding Ascend chips lags behind Nvidia’s offerings. Developers lack access to the same level of support and tools available for Nvidia GPUs, making it challenging to optimize and deploy AI models effectively.
Despite these challenges, Huawei continues to invest heavily in AI research and development, seeking to bridge the gap with Nvidia. However, these shortcomings in Ascend chip performance pose a serious obstacle for the company’s ambitions. If Huawei fails to address these issues, it risks falling behind in the rapidly evolving AI landscape, potentially losing ground to competitors like Nvidia and others.