What is Big Data? Analytics, definition, meaning & examples
03.03.2019
There's no way around Big Data anymore. Nevertheless, many companies are still hesitant to address this topic. Read here what Big Data means, which concrete application scenarios exist, and which trends experts predict for Big Data technologies – including practical examples.
The origin of the term Big Data: Big Data is used to describe large amounts of data that consumers, users, and companies generate on a daily basis. At the consumer level this includes data on online search behavior, transaction data or data on purchasing behaviour and, at the company level, production or transport data. Based on these large amounts of data, intelligent software solutions such as the Blockchain can be used to make predictions and identify important facts.
Chip.de provides a slightly different approach to defining Big Data: "A large amount of data is called Big Data if it is too large or too complex to be processed manually. This applies in particular to data that is constantly changing."
Rarely has there been such great consensus about a statement between politics, business and society in general: Data is the raw material of the future. Digitalisation has turned almost every company into a collector and user of Big Data. This applies in particular to logistics, which has always dealt to a large extent with the gathering of information and the resulting conclusions.
When it comes to big data and logistics, the first thing often thought of is trade and transport, where e-commerce giants like Amazon & Co. have long been using their own software to evaluate their customers' data as comprehensively and precisely as possible. But it applies equally to intralogistics. In this area, too, huge amounts of data are generated, which – if used correctly – lead to a significant increase in efficiency and enable completely new business models.
Reservations against Big Data
Big Data offers promising prospects. However, the corporate world often plays by different rules than the digital society. According to the Building Trust in Analytics study, conducted on behalf of KPMG by Forrester Consulting which surveyed decision-makers in more than 2,000 companies in ten countries worldwide, 52 % of companies in Germany worry that data analysis and the use of Big Data could damage their own reputation. Worldwide, the figure is as high as 70 %.
Commenting on the study, Dr. Thomas Erwin, study director and expert for Data and Analytics at KPMG, explains: "German companies use data and analytics to a much lesser extent than their global competitors. The reason for this is the lack of confidence in data analysis. As a result, companies tend to shun the use Data and Analytics or only use it to a very limited extent. As a result, vast data and analytics potentials remain untapped. Another alarming fact is that seven out of ten decision-makers worldwide think that data analysis represents a reputational risk. Our study also shows that decision-makers in Germany doubt that their company is ready to lift the data treasure and that they have the right skills for the utilisation of Big Data at their disposal."
Enhancing the connotation of Big Data
So, how are companies supposed to address their concerns about this new business area, which, according to unanimous expert opinion, will be an important part of business in the future? And how can this be achieved in logistics in particular, where, as shown in DHL's Logistics Trend Radar 2016, it will be particularly important? A first step could be to assign a more appropriate name to the topic, one that more accurately describes the core than the relatively undifferentiated term "Big Data".
Dr. Roland Fischer, Managing Director of the Fraunhofer-Arbeitsgruppe für Supply Chain Services, is also dissatisfied with the term: “I would no longer speak of Big Data, but rather of analytics, because that's what it's all about." This terminology takes us directly to the point: not only the collection of large amounts of data, but also their evaluation, and the conclusions we can draw from them. "As digitalisation progresses, data will accrue that has the potential of creating added value. It starts with the generation of data on machines, objects, and workers. This information will be dealt with in a descriptive manner. This can happen in the Cloud, for instance," Fischer continues.