- Artificial Intelligence for Big Data
- Anand Deshpande Manish Kumar
- 270字
- 2021-06-25 21:57:05
Best of both worlds
AI is finding and taking advantage of the best of both worlds in order to augment human capabilities. The sophistication and efficiency of the human brain and the brute force of computers combined together can result in intelligent machines that can solve some of the most challenging problems faced by human beings. At that point, the AI will complement human capabilities and will be a step closer to social inclusion and equanimity by facilitating collective intelligence. Examples include epidemic predictions, disease prevention based on DNA sampling and analysis, self driving cars, robots that work in hazardous conditions, and machine assistants for differently able people.
Taking a statistical and algorithmic approach to data in machine learning and AI has been popular for quite some time now. However, the capabilities and use cases were limited until the availability of large volumes of data along with massive processing speeds, which is called Big Data. We will understand some of the Big Data basics in the next section. The availability of Big Data has accelerated the growth and evolution of AI and machine learning applications. Here is a quick comparison of AI before and with with Big Data:
The primary goal of AI is to implement human-like intelligence in machines and to create systems that gather data, process it to create models (hypothesis), predict or influence outcomes, and ultimately improve human life. With Big Data at the core of the pyramid, we have the availability of massive datasets from heterogeneous sources in real time. This promises to be a great foundation for an AI that really augments human existence:
- 數據分析實戰:基于EXCEL和SPSS系列工具的實踐
- Test-Driven Development with Mockito
- 信息系統與數據科學
- 正則表達式必知必會
- PySpark大數據分析與應用
- 大數據:規劃、實施、運維
- Access 2016數據庫技術及應用
- Enterprise Integration with WSO2 ESB
- 深入淺出MySQL:數據庫開發、優化與管理維護(第2版)
- 大數據Hadoop 3.X分布式處理實戰
- SQL優化最佳實踐:構建高效率Oracle數據庫的方法與技巧
- 企業級容器云架構開發指南
- Oracle 11g+ASP.NET數據庫系統開發案例教程
- Scratch 2.0 Game Development HOTSHOT
- 深入理解Flink:實時大數據處理實踐