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Big Graph Data Science Making Useful Inferences from Graph Data

10月19日,由微软亚洲研究院与哈尔滨工业大学联合主办的第十九届 “二十一世纪的计算” 大型国际学术研讨会,在哈尔滨环球剧场隆重举行。这是该大会首次在东北地区举办,包括“计算机界的诺贝尔奖”图灵奖获得者在内的多位世界级计算机领域专家,与现场超过1500名高校师生分享了计算机科学热点领域的最新学术研究成果,共同探索“人工智能的未来之路” 。
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