Technology did not advance to the point where it could be considered an agent of business intelligence until well into the 20th century.It was with the 1958 publication of a landmark article on the subject, written by IBM computer scientist Hans Peter Luhn, that the potential of BI was recognized.The article, titled “A Business Intelligence System”, described “an automatic system…developed to disseminate information to the various sections of any industrial, scientific, or government organization.” In the wake of the post-World War II boom, such sectors required a way to organize and simplify the rapidly growing mass of technological and scientific data.
Advancements and Evolution into the late 1980’sWith the advent of computers in the business world, companies finally had an alternative to storing data on paper.IBM’s invention of the hard disk in 1956 revolutionized data storage. Floppy discs, laser discs, and other storage technologies meant that just as more and more data was being created, so too were there more and more places to store it.This spawned the creation of the first database management systems, collectively referred to as decision support systems (DSS). By the 1970’s a few BI vendors popped up with tools that made accessing and organizing this data possible.But it was a new and clumsy technology. Most importantly, it was very difficult to use.A 1988 international conference aimed to streamline data processes. The Multiway Data Analysis consortium, held in Rome, was a landmark in simplifying BI analysis
Turning Points in the 1980’s and 1990’sBusiness intelligence and business analytics are sometimes used interchangeably, but there are alternate definitions
The modern phase of business intelligence began immediately after the 1988 conference. In 1989 Gartner analyst Howard Dresner again brought the phrase “business intelligence” into the common vernacular. He employed it as a general term to cover the cumbersome-sounding names for data storage and data analysis, names like DSS and executive information system (EIS). Competition from more vendors in the field led to advances including data warehouses. This new tool improved the flow of data as it moved from operational systems to decision support. Data warehousing drastically cut the time it took to access data. Data that traditionally had been stored in multiple places was now all in a single location. Along with this development came supplemental facets of data warehousing that are staples of BI today. These included Extract, Transform, and Load (ETL) tools and Online Analytical Processing (OLAP) software. In later years, this phase of development became known as business intelligence 1.0.
Business Intelligence 1.0As business intelligence became a commonly known phrase in the late 1990’s and early 2000’s, dozens of new vendors hit the market. During this period, there were two basic functions of BI: producing data and reports, and organizing it and visualizing it in a presentable way. Yet there remained two significant issues holding back this developing phase of the technology: complexity, and time. Too many projects were owned by the IT department, meaning that most users were still not capable of executing BI tasks on their own. Existing BI tools had not been developed with anyone but experts in mind, and extensive analytics training was required to gain insights. And because data was siloed, it took more time to formulate and deliver reports to decision makers. Only expert technical experts were able to utilize advanced data analysis software. Tools began to evolve to cater to non-technical users, but it happened slowly
Business Intelligence 2.0The dawn of the 21st century marked a distinct turning point, as technologies developed to address issues of both complexity and speed. They were also bolstered by the onset of Cloud-based programs that expanded and simplified the reach of BI platforms. BI 2.0 included a host of different technologies such as real-time processing, which incorporated information from events as they happened into data warehouses, allowing companies to make decisions based on the most recent information available. Other technologies that came into play included self-service access for non-expert users, meaning that employees could now complete projects without interference from the IT department. The exponential growth of the Internet supported and advanced these developments, in part through the genesis of social networking tools. Facebook, Twitter, and blogs gave users very simple and very quick ways of sharing ideas and opinions. It also provided a way for users to review methods and software, and more broadly disseminate a basic understanding of the different uses of business intelligence. The more that people communicated, the more that they understood. By 2005, the increasing interconnectivity of the business world meant that companies needed real-time information, for a host of reasons. Chiefly they needed to keep abreast of the competition, and understand what their consumers wanted and what they thought of their company. BI was no longer an added utility, or a mere advantage. It was becoming a requirement for businesses looking to stay competitive, and even to remain afloat, in an entirely new, data-driven environment.
Empowering End Users into the Modern DayThe agility and speed of the mid-2000s business intelligence platform has undergone an intense refining process. Tool specification, expanding self-service options, and improving visualization are three of the most important traits of the next frontier of BI evolution. BI tools in the present day are often designed with a very specific industry in mind, be it healthcare, law enforcement, or even professional sports. Known as “software verticalization,” this growth of industry-specific tools has contributed significantly to increased adoption of business intelligence. Self-service tools and visualization features rely on one another for their growth. The big data revolution and explosion of the Internet left organizations with more data than before. Each person creates increasingly large amounts of information. Over 204 million emails are sent per minute. Companies required even more visualization tools to actionably make sense of it. Visualization tools began to evolve to include the end-user even more. More platforms empowered users to complete self-service access, meaning that they could explore and utilize their data on their own, without training.
Cloud BI and Mobile BIAs more companies offered these capabilities, unique, cutting-edge attributes became the only way to stay ahead of the curve. Vendors experimented with faster and cheaper tools. One way to achieve both was through cloud BI, which hosts the software on the Internet, reducing storage costs and making access to organizational data and insights faster and more convenient. Tangential to the cloud is the rise of mobile-empowered platforms, which allows users to work with BI on-the-go on smartphones, tablets, and other devices. As tools are perfected and improved, they are also being made simpler and more convenient, encouraging wider adaptation.