Table of Contents
The lack of the necessary skills, quite widespread today in all ICT sectors, in the field of Business Intelligence is linked in particular to three figures, according to what Vercellis explains:
These roles mustn’t be considered watertight, but the skills of the people who perform them must at least partially overlap to communicate effectively. How to do it? Vercelli proposes job enrichment and job rotation among the possible solutions, but above all, more comprehensive training of the various elements can give a broader vision that goes beyond the individual figure.
In a data-driven society, the application areas of data analytics are many. Those below collect the most representative areas.
From the creative process to the highly data-driven process: marketing is a significant user of the most advanced analytics technologies. Marketing organizations use analytics to determine the results of campaigns or efforts and guide investment decisions and consumer targeting.
Demographic studies, customer segmentation, joint analysis, and other techniques allow marketers to use large amounts of purchase, survey, and panel data to understand and communicate marketing strategy.
An essential tool for marketing optimization is Web Analytics which allows you to collect session-level information on a website. By analyzing these interactions, it is possible to track the referrer, search for keywords, identify the IP address, and track visitor activity.
With this information, marketers can improve their marketing campaigns, creative website content, and information architecture. Analysis techniques frequently used in marketing include marketing mix modeling, price and promotion analysis, sales force optimization, and customer analysis, such as segmentation.
Using the web analytics tools, you can analyze your digital platforms with an excellent degree of detail, benchmarking with data from the market or with other organizations and sites in the sector.
Several free and paid tools are used to do Web analytics. Among these, Google Analytics is the free service offered by Google that allows users to analyze visitors’ behavior to a website, provides useful statistics for Webmasters and those who have created or want to carry out marketing campaigns on the Internet. It is currently the most used tool to check the duration of the visit sessions to the systems, the most viewed pages, the origin of the visit.
Google Analytics can be integrated with Google Ads to analyze online campaigns, monitor their quality, if interactions have been made, etc.
Google Analytics works by adding the page tag. This is the Google tracking code (GATC, Google Analytics Tracking Code) and is a fragment of JavaScript code that the user of the tool places on all the pages of their web domain. Indirect contact with the Google server means collecting users’ navigation data, which are then analyzed and shown on the platform.
People analytics is applied explicitly to human resources. Through the analysis of behavioral data in addition to the classic ones relating to training, CV, etc., the goal is to understand which employees to hire, which to reward or promote, which responsibilities to assign, etc. Human resources analysis is becoming increasingly important to understand what kind of behavioral profiles would succeed and fail.
For example, an analysis may find that individuals who fit a specific type of profile are those most likely to succeed in a specific role, making them the best employees to hire. Using people analytics can have a spectrum of comprehensive action: from the analysis of sales productivity to that of employee turnover and retention, from that of accidents and fraud to that which allows us to understand which employees can determine greater customer loyalty and satisfaction.
It is a widespread application for banks and credit bureaus to both balances the loan yield with the risk of default for each loan: the accounts collected by the bank can differ according to social status (wealthy, average, week, etc. ) of the owner, geographic location, its net worth and many other factors, the use of portfolio analytics allows you to cross and analyze all data by combining time-series analyzes with many other issues to make decisions on when to lend money to different segments of borrowers or interest rate decisions charged to members of a portfolio segment to cover any losses between members in that segment.
Predictive models in the banking sector are developed to ensure certainty in risk scores for individual customers; therefore, an analytics application can be partially overlapped with the previous one even if it has a broader spectrum of action. It is used, for example, to analyze whether an online or credit card transaction can be fraudulent using data relating to the customer’s transaction history.
It is about analytics techniques for collecting and analyzing security events to understand and analyze the events that present the most significant risk. It is one of the areas of data analytics of most significant development.
Alongside the risks caused by malware threats or known vulnerabilities, which could heavily mitigate with regular antivirus and timely patching of applications, there are also more sophisticated and persistent ones that require the ability to capture and analyze “weak signals.”
Among these, for example, data traffic that appears to be expected but which, on the other hand, when properly examined, turn out to be anomalies that can constitute the antechamber of actual attacks.
Cybercriminals make extensive use of analytics to launch their attacks: thanks to social engineering, it is much easier to make a user fall into the phishing trap to allow an APT ( Advanced Persistent Threat ) attack.
Hunting for hidden and persistent threats, continually monitoring data traffic on networks, and identifying anomalous user behavior is Security Analytics’s goal.
Data analytics in a strictly technological field, to model a ‘next generation’ IT Service Management is another vital growth area.
Analytics tools make it possible to extract useful information, from the myriad of data available, for IT, particularly to intervene effectively on Service Management.
In particular, there are some compelling use cases’ that produce value both on the IT level and towards the user/consumer:
When your two year mobile phone contract comes to an end, you might find yourself… Read More
In an era where business dynamics shift with dizzying speed, the difference between success and… Read More
Introduction Generative AI and Machine Learning models have exploded in recent times, and organizations and… Read More
Quick advances in information science are opening up additional opportunities for organizations. They can extend… Read More
When thinking about the future, financial stability is an important factor that provides us with… Read More
It may have been a long time since you had to pull a handle on… Read More