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      "text": "Baidu’s ERNIE 3.0 is the best scoring model (90.6%), outperforming the human baseline by 0.8 percentage point. ERNIE 3.0 stands out from two perspectives: its pre-training data and its historical development. Data: In addition to a massive text corpus, ERNIE 3.0 uses a large-scale knowledge graph of 50 million facts to enhance the model's world knowledge. Origins: ERNIE has been developed fully within Chinese institutions (Tsinghua, Huawei, Baidu). While these have long been seen as followers, they are now leading the NLP SOTA race.",
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