Self-service is a part of our daily lives. People are empowered to do their tasks themselves, like monetary transactions at an ATM, filling up gas from gas stations, check-in at an airport and many more similar activities. So, on one side it reduces the operational costs of an organization and on the other side, it generates a huge volume of data (typically big data). This data has a lot of potential in the world of analytics. Organizations are extracting meaningful insights from such self-service data and generating more business opportunities out of it.
In this article, we will try to explore the impact of big data and how it helps in self-service analytics.
What is self-service data?
Self-service data analytics is actually a type of advanced analytics that can enable businesses to use the large amount of data/cloud data for finding the best business prospects and choices. Also, this is easy enough to be used by users not having a very clear statistical or technological knowledge.
The self-service analytics allows the user to scan large data dumps, visualize it and use it to get useful insights of their business. This also allows businesses to ensure that their daily requirements are being fulfilled, and to know about other requirements that may arise. The insights come from large business owned data reserves, which in turn comes from various transactional data, web logs, sensor data and social media data. Self-service business intelligence is a subset of self-service data, which helps a business to take important decisions based on the data.
How self-service data is helping analytics?
Nowadays, many companies are making software which allows business users to collect information from a variety of sources. Such software is kind of hard to use. It has dashboards, which allows the analyst to query data and analyse the data. Such software, due to their complexity and steep learning curve, can be used only by highly trained data analysts, also called data scientists.
On the contrary, self-service analytics has been introduced in order to help businesses continue the effective analysis of data, without the need of any trained professionals, as data scientists are becoming very hard to find nowadays. Also, this will allow business users directly handle the data, which they can easily manipulate according to their needs and preferences. So, self-service data is allowing business users to make good decisions based on powerful, but easy to do analytics.
Must read – Exploring The Future of Artificial intelligence
How BI is impacted by self-service data?
The needs of businesses always remains the same, though the technology required to achieve that goal changes with time and currently available technologies. Nowadays, the amount of data has also increased many folds. Such data is very complex too, as they come from many different sources.
However, with the advent of self-service data analytics, large amounts of data can be easily analysed. Also, a special “semantic layer” allows even normal business users to easily access the data and use it, as it resolves the complexity of the data. This has resulted in easier business decisions, which are based on accurate data analysis and is giving a new name to business intelligence.
Must read – The Escalating Scope of Big Data Analytics
What are the challenges?
Integrating self-service business intelligence tools have to be very delicately done, because while it can allow business users to easily carry out business intelligence related tasks, it requires IT professionals to manage their data. However, integrating the data can be really hard, as it is with any BI solution.
Another major challenge is that of governance of data. Proper security measures and data governance are extremely essential for self-service business intelligence. Thus, businesses using self-service business intelligence should be able to guard data against extreme freedom of the users of that business. Extreme freedom could mean that the users hit many queries at once, which is enough to cripple any server. Also, they could put the security of the data at risk, mostly by third-party access.
Must read – Bringing BI and Predictive Analytics Together – How Big data can help?
How business is gaining from self-service BI?
Self-service data is proving to be very useful for businesses. They can use self-service analytics for quick and complete analysis of large amounts of cloud data available in stores. This can help a business by improving the reporting of the business.
Also, it can help in decreasing data overloads. The analysed data can be used later for creating charts and marketing dashboards to improve business intelligence. This also allows the business to take complex decisions easily and carry out day to day tasks quickly. If you integrate it with rules engine, then it can become a really powerful business tool which can further help the business intelligence of that organisation know about their current goals. So, business is gaining quite a lot from self-service BI.
Must read – Why Python is important for big data?
Some use cases
Everyone knows that the existing BI tools aren’t enough for meeting all the business requirements. However, with the introduction of self-service business intelligence, everything has seemed to change. Earlier, businesses had to consult with a data scientist repeatedly for any query or for asking questions. But now, this situation has reversed. Business users can now easily find out the business insights and operate tools without the help of a data scientist. So, obviously many businesses began using self-service business intelligence for easier insights and faster work. Some of the use cases of self-service business intelligence are given below.
- Boston College Libraries
The Boston College University Libraries are educational resource centres, which consist of three libraries. It has more than 2.5 million books in it. However, it needed self-service reporting for properly allocating its budget and ensuring mobile access.
After implementing the self-service solution, about 14,000 more students were added to its student base. They could access its large resources from anywhere, and at anytime.
Motionsoft is a financial solutions provider for businesses in the health and wellness sector. Its old Crystal reporting system wasn’t powerful enough for interactive dashboards and web-based reporting, so it chose self-servicing solutions like Logi Ad Hoc and Logi Info. The solutions were very powerful and allowed many self-servicing capabilities.
Hylant is a provider of insurance brokerages which are extremely cost-effective. Also, they provide risk management solutions for a variety of businesses. They needed to eliminate any ad hoc changes by enhancing the report request process. Also, they needed to help the users create their own reports.
So, they used Logi’s self-service module, which allowed their clients to query and manage their own reports very easily, helping in better decision making.
Explore – More articles in Analytics archive
Self-service is really a turning point in the field of business analytics. Self-help is the best help, which we all know about, and with the help of self-service business analytics, we can realize this. Gone are the days when business users had to consult data scientists for any question or for any task. Now, users can easily carry out their own analysis accurately, which increases the speed of the business too. Also, as experienced data scientists are becoming hard to find, there is a need for easier operations which can be done by even inexperienced users through proper training. Though there are certain problems, like security problems, data integrity issues etc., but this self-service solution will evolve and hopefully eliminate them automatically. So, it is safe to conclude that self-service business intelligence will be the business intelligence of the future.