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引用次数: 0
摘要
互联网上的数据不断增长。每个平台都有数百万的活跃用户,他们在搜索特定的东西。LinkedIn就是这样一个平台,以提供职业机会、公司和员工信息等著称。本文通过对LinkedIn、IBM new feed、DNB的数据采集,构建了一个图形数据库系统。使用数据爬行收集数据,然后进行数据清理,并为图数据库构建api。图数据库由节点和关系组成,使用Cypher查询语言存储和检索图数据库中的数据。使用Neo4j和cypher查询语言进行可视化表示,并使用Neovis库。该系统显示公司详细信息、员工详细信息,如技能、经验、教育背景、联系信息、证书、执照等。该系统为公司和员工提供了丰富的资源,可以方便快捷地提供有关公司和个人的相关信息,例如公司的员工,博客和文章,以及员工的详细信息。该项目拥有巨大的未来空间,拥有更大的、更多的资源。
Data on the internet is growing nonstop. Every platform has millions of active users, searching for something specific. LinkedIn is one such platform, known for career opportunities, company and employee information and more. In this paper, we make a graph database system, collecting data from LinkedIn, IBM new feed, DNB. Using data crawling the data is gathered followed by data cleaning and, building APIs for graph database. A graph database is made of nodes and relationships, Cypher query language is used to store and retrieve the data from graph database. Neo4j and cypher query language are used for visual representation, with Neovis library. The system shows company details, employee details such as skills, experience, education background, contact information, certifications, licenses and more. The system is resourceful for companies and employees, provides easy and quick relevant information about the company and a person, such as a company’s employees, it’s blogs and articles, and further about the employee’s details. The project holds great future scope, with bigger, multiple sources.