Augmented Analytics Driven by AI: A Digital Transformation beyond Business Intelligence

Sensors (Basel). 2022 Oct 21;22(20):8071. doi: 10.3390/s22208071.

Abstract

Lately, Augmented Analytics (AA) has increasingly been introduced as a tool for transforming data into valuable insights for decision-making, and it has gained attention as one of the most advanced methods to facilitate modern analytics for different types of users. AA can be defined as a combination of Business Intelligence (BI) and the advanced features of Artificial Intelligence (AI). With the massive growth in data diversity, the traditional approach to BI has become less useful and requires additional work to obtain timely results. However, the power of AA that uses AI can be leveraged in BI platforms with the use of Machine Learning (ML) and natural language comprehension to automate the cycle of business analytics. Despite the various benefits for businesses and end users in converting from BI to AA, research on this trend has been limited. This study presents a comparison of the capabilities of the traditional BI and its augmented version in the business analytics cycle. Our findings show that AA enhances analysis, reduces time, and supports data preparation, visualization, modelling, and generation of insights. However, AI-driven analytics cannot fully replace human decision-making, as most business problems cannot be solved purely by machines. Human interaction and perspectives are essential, and decision-makers still play an important role in sharing and operationalizing findings.

Keywords: Artificial Intelligence; Augmented Analytics; Business Intelligence; Machine Learning; Natural Language Generation; Natural Language Processing; citizen data scientists.

MeSH terms

  • Artificial Intelligence*
  • Humans
  • Intelligence
  • Machine Learning*

Grants and funding

This research received no external funding.