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PaddlePaddle/PaddleFormers

PaddleFormers is an easy-to-use library of pre-trained large language model zoo based on PaddlePaddle.

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What it does

PaddleFormers is a library from Baidu that lets developers train large AI language and vision models using Baidu's own deep learning platform, offering similar functionality to the widely-used Hugging Face Transformers toolkit. It supports over 100 cutting-edge AI models including DeepSeek-V3 and various others, with built-in tools for distributing training workloads across many chips simultaneously to handle the massive computational demands of modern AI.

Why it matters

This project signals China's push to build a fully domestic AI infrastructure stack — from the training framework to hardware support for Chinese-made chips like Kunlun and Tianshu — reducing dependence on Western tools like Hugging Face or Nvidia-optimized frameworks. For builders and investors, it represents a parallel AI ecosystem emerging in China that could shape which models, tools, and supply chains power the next wave of AI products in that market.

0Active

On the radar — signal detected

Stars
13.0k
Forks
2.2k
Contributors
0
Language
Python

Score updated May 4, 2026

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