“I-Care”——智能系统的大数据分析

Paras Nath Singh
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引用次数: 0

摘要

生物和社会科学中大量的大型数据集,加上计算能力的非凡提高,给定量数据科学带来了一个非常新的困境。这是复杂研究与补救理解相结合的可能性。智能系统的分析应该涵盖硬件平台的架构和软件方法、技术和工具的应用。预期采用动态内存信息,优化处理大型数据表的参数值,速度会更快。在数据科学的最新趋势下,大数据分析领域研究了对来自不同来源的庞大的半结构化数据集进行预处理、分析和过滤的各种方法,这些数据集是传统数据处理系统难以处理的。除了从各种主要性能度量中提取和汇总数据外,该建议还预测这些kpi(关键性能指标)的潜在值,并在不利值即将出现时向它们发出警报。随着AI和ML通过聊天机器人、机器人、社交媒体、医疗保健、自动驾驶汽车和太空探索等不同的平台和领域实现,大公司正在投资这些领域,对ML和AI专家的需求也相应增长。由于其丰富的支持工具,Python正在成为AI(人工智能和机器学习)最流行的语言。本文提出的应用“I-Care”(Intelligent Care)为提高大数据分析的服务质量提供了建议。因此,建议的论文检查了方法和需求、体系结构、建模和分析与实现,并描述了体系结构设计和使用Python及其强大的工具(如Pandas和Scikit-Learn)的试点应用程序获得的结果。
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"I-Care" - Big-data Analytics for Intelligent Systems
A very novel predicament for quantitative data science has been generated by the abundance of large, well-cured data sets in biological and social science, coupled with an extraordinary increase in computational ability. This is the possibility of sophisticated studies combined with remedial understanding. Analytics for intelligent systems should cover architecture of hardware platforms and application of software methods, technique and tools. It is anticipated that adapting dynamic memory information, processing parametric values of large data sheets with optimization, would be faster. The field of Big-Data Analytics under recent trends of Data Science studies various means of pre-processing, analyzing and filtering from huge and semi-structured data sets from different sources which are complex to be handled by traditional data processing systems. In addition to extracting and aggregating data from various main performance measures, this proposal also forecasts potential values for these KPIs (Key Performance Indicators) and alerts them when unfavorable values are about to occur. As AI and ML are implemented through different platforms and sectors including chat-bots, robotics, social media, healthcare, self-driven automobile and space exploration, large companies are investing in these fields, and the demand for ML and AI experts is growing accordingly. Python is becoming the most popular language for AI (Artificial Intelligence and Machine Learning) due to its rich supported tools. This proposed applications "I-Care" (Intelligent Care) provide recommendations to improve Quality of Service of Big-data analytics. So, the proposed paper examines the methodology and requirements, architecture, modeling and analytics with implementation and describes the architectural design and the results obtained by the pilot application using Python and its powerful tools like Pandas and Scikit-Learn.
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