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  "documentTitle": "2021 Air Street Capital The State of AI Report 2021",
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      "text": "The challenge is organized by the Open Graph Benchmark team, which gathers leading researchers from American and German Universities and companies.\nThe challenge is particularly important because it introduces datasets of unprecedentedly large scale spanning prediction on 3 different levels: links, nodes, and graphs.\nThe winners included the usual suspects (Baidu, Tencent, Ant, Peking University), other Chinese Universities and Microsoft Asia.\nAdditionally, on the 15 tasks of the Open Graph Benchmark, another set of smaller-scale datasets, submissions from Chinese institutions ranked first on 11 tasks, and first or second on 14 tasks.",
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