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Representation of Job-Skill in Artificial Intelligence with Knowledge Graph Analysis

机译:用知识图分析表示人工智能中的工作技能

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This study analyses the relationship of different key skills of artificial intelligence (AI) used in the job market. For this, we represent it with a knowledge graph and use a Long Short-term Memory Network to study interactions between these key skills. First, a knowledge graph is build with a rule-based method about these skills in the job markets. Then, the graph is visualized to discover knowledge relationship. Jobs in AI can be classified into two categories: general algorithm jobs and specific focus jobs. Skills of different jobs in AI are very different. Python and Linux are the most necessary key skills for all jobs in AI. Revealing all these key skills in jobs in AI is useful and provide a guideline for job-seekers, companies and universities.
机译:这项研究分析了就业市场中使用的人工智能(AI)的不同关键技能之间的关系。为此,我们用知识图表示它,并使用长期短期记忆网络研究这些关键技能之间的相互作用。首先,使用基于规则的方法构建有关就业市场中这些技能的知识图。然后,将图形可视化以发现知识关系。 AI中的作业可以分为两类:常规算法作业和特定焦点作业。人工智能中不同工作的技能差异很大。 Python和Linux是AI中所有工作最重要的关键技能。揭示AI工作中的所有这些关键技能是有用的,并为求职者,公司和大学提供了指南。

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