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Smart Human Resource Management System to Maximize Productivity

机译:智能人力资源管理系统,最大限度地提高生产力

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Human resource is one of the most valuable assets in an organization. They are bounded to develop the unique and dynamic aspects that strengthen their competitive advantage to persist in an always changing market environment. In order to recruit a quality candidate for an organization, reducing human involvement and verifying details of the candidate is important in recruitment process. Furthermore, having an idea about how well or poor the employees perform, and how likely the employee attrition can occur is vital in human resource management process. This paper is an attempt to introduce smart human resource management system that can maximize the productivity of an organizational environment using machine learning and blockchain technologies. The end goal of this research is a smart human resource management system that reduces human judgment, time in the candidate selection process and predicts employee performance and attrition to motivate current employers to maximize productivity with minimal financial loss in the workplace environment. Skill assessment and resume classification have been done using unsupervised learning algorithms and natural language processing after extracting raw data from employee resumes using Object Character Recognition. Candidate details verification is done by comparing the hashes of the records which are stored in the blockchain. Employee performance and attrition are predicted using supervised machine learning classification techniques with high accuracy and the result of the final performance is generated as a score for each employee considering the multiple attributes that has been standardized and regulated by some specifically considered e-competence frameworks.
机译:人力资源是组织中最有价值的资产之一。他们被束缚于发展独特而动态的方面,以加强他们在始终不断变化的市场环境中持续存在的竞争优势。为了为组织招募质量候选人,减少人类参与和核查候选人的细节在招聘过程中很重要。此外,对员工表演的良好或差,以及员工疲劳可能发生的可能性在人力资源管理过程中有多可能。本文试图介绍智能人力资源管理系统,可以使用机器学习和区块技术来最大限度地提高组织环境的生产率。该研究的最终目标是智能人力资源管理系统,可降低人类判断,候选人选择过程中的时间,并预测员工的绩效和消耗,以激励现有雇主最大限度地提高工作场所环境中的最小财务流失的生产率。使用对象字符识别从员工恢复从员工恢复后,使用无监督的学习算法和自然语言处理完成了技能评估和恢复分类。候选详细信息通过比较存储在区块链中的记录的散布来完成验证。使用具有高精度的监督机器学习分类技术预测员工的性能和磨损,并且最终性能的结果作为每个员工的分数,考虑到已经标准化和由某些专门考虑的电子能力框架进行标准化和监管的多个属性。

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