Among the highlights of the conference was
What are AI, ML, Deep Learning, Big Data and IoT?
The terms artificial intelligence, machine learning, internet of things, and big data are often wrongly used or used interchangeably; here is a brief description of each:
Artificial Intelligence (AI), this is the broader concept that somehow involves all the other topics, we could think of it as a machine that performs tasks in a way that can be defined as intelligent and that simulates human decision-making processes.
It is often categorized into two groups – General and Narrow (also known as Applied); General AI would have all of the features of human intelligence: recognizing sounds and objects, understanding language, planning, learning and problem-solving. Narrow AI displays some aspects of human intelligence, and can do that aspect very well, but is lacking in other areas. A machine that’s very good at identifying images, but nothing else, would be an example of narrow AI.
As it might be expected General AI is more difficult to achieve and is still a field in which researchers are primarily working; Narrow AI is a lot more common nowadays.
Machine Learning (ML), it is essentially a way of achieving. One of the earliest definitions of ML was made by Arthur Samuel in 1959: 'the ability to learn without being explicitly programmed'.
ML algorithms are often classified as supervised, semi-supervised or unsupervised. Supervised algorithms involve humans to provide feedback on the accuracy of predictions or models. Unsupervised algorithms don’t need any human involvement. They use an iterative approach to review inputs and make deductions.
The most common algorithms for supervised learning are Decision Trees, Naive Bayes Classification, Ordinary Least Squares Regression, Logistic Regression and Support Vector Machines.
Some of the applications that can be achieved by this kind of ML are:
- Credit scoring
- Predicting the success rates of marketing campaigns
- Predicting the revenues of a certain product
For unsupervised algorithms, the most common are Clustering, Principal Component Analysis, Singular Value Decomposition and Independent Component Analysis.
Deep Learning is one of many approaches to machine learning; it was inspired by the structure and function of the human brain, especially the interconnection of neurons. Deep learning algorithms are implemented in Artificial Neural Networks (ANNs) which is a computational model based on the structure and functions of biological neural networks. An ANN has nodes or 'neurons' which are distributed in layers. Each layer takes care of a specific feature to learn. It’s because of this layering that deep learning gets its name since the layering has a depth in contrast with other methods that use a single layer in the learning process.
Big Data as a term is quite intuitive - it refers to big amounts of data that started to be more available with the arriving of Internet and later the Internet Of Things (IoT); however, it is not only about the size of the data, usually 3Vs define big data – Volume, Velocity, Variety. Traditional data storage and processing software like RDBMS are not suitable to handle the huge quantities of data. Therefore, it requires different storage and computing paradigm to handle big data.
Internet of Things (IoT), is an ecosystem of interconnected computing devices, mechanical and digital machines, objects, or even animals or people that are provided with unique identifiers and the ability to transfer data over a network without requiring human-to-human or human-to-computer interaction.  It is, of course, a huge source of data that needs Big Data paradigm and Machine Learning technics in order to leverage all of its potential.
Trends and Opportunities
The eye-catching trends are in fields like computer vision, speech recognition, natural language processing, audio recognition, social network filtering, machine translation, etc., which produce amazing applications that appear in every newspapers’ first page as autonomous cars, cellphones that are able to unlock with face recognition, automated call centers, headsets with real-time language translations etc.
Nevertheless, the regular retail businesses are finding troubles on how to apply some of this flood of new applications and technologies and are feeling like left behind in the new digital race which could lead in many cases to wrong adoptions of these technologies.
To see clearly the possibilities it is necessary to take a step behind and see the whole picture. The entry point of AI into the business mainstream is not going to be with state of the art applications, but it will be with sound ML algorithms that have been successfully proofed already.
The opportunity to use this knowledge and technologies is bigger than ever. Social networks and IoT have enabled access to an amount of data as never before and the increasing computational capacity of current computers makes the embracing of these technologies very feasible.
Also the availability of cloud-based IT services (AWS, Azure, Google Cloud Platform) and the so-called algorithm economy, retail businesses will have easy access to Machine Learning applications, which was until now only a dream.
At MCON, we find some very good opportunities for implementing AI applications for our clients in following fields:
OEM Financial Services for the automotive industry has grown considerably in the last years; there
New pricing models
The large amount of available historical transaction information can be used by retailers to adjust the pricing of their different products in real time using predictive model applications.
Prediction of equipment failure
Aftersales services in the automotive industry are becoming more and more important to the Chinese market; with the expansion of aftermarket and the stable margins from selling new vehicles, dealers will change their major business from selling a new vehicle
Every OEM and dealership have big amounts of historical Aftersales transactions in their dealer management systems (DMS), this will be very useful to build Machine Learning algorithms that can predict when a part or equipment of a car will fail.
Identifying customers before they become
We can use Machine Learning to customize the rules for the Chinese market, bringing in a lot more of information like customer demographics, vehicle characteristics, Aftersales behavior, etc. To be able to predict in a much more customized way, when a particular customer will become lapsed.
The boom in vehicle sales in the Chinese market occurred mainly after 2010. OEMs have more and more customers that finished their customer cycle. Using this ML model will allow us to tailor actions to keep customers actively participating with the dealers.