Baidu CTO Wang Haifeng: PaddlePaddle ERNIE Ecosystem Surpasses 23.33 Million Developers and 760,000 Enterprises

Deep News
Yesterday

At the Baidu WAVE SUMMIT Deep Learning Developer Conference 2025 held today, Baidu CTO Wang Haifeng announced that the number of developers in the PaddlePaddle ERNIE ecosystem has exceeded 23.33 million, with over 760,000 enterprises participating in the ecosystem.

"The wave of technological innovation surges forward courageously, and we stand at the forefront of this wave. Let us work together, ride the wind and break through the waves, contributing technological strength for a more intelligent and better future," Wang Haifeng stated.

During the conference, Wang Haifeng also unveiled Baidu's new generation ERNIE large model X1.1. According to reports, this model achieves a 34.8% improvement in factual accuracy of responses through reinforcement learning technology based on knowledge consistency verification; realizes a 12.5% enhancement in instruction-following capabilities through reinforcement learning technology based on instruction validators; and delivers a 9.6% boost in intelligent agent capabilities through multi-round reinforcement learning technology based on chain of thought and chain of action.

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