ICSNC 2018 - The Thirteenth International Conference on Systems and Networks Communications
	October 14, 2018 - October 18, 2018
 ICSNC 2018: Tutorials
T1. End-to-end,   Multi-domain and Multi-tenant   Aspects in 5G Network Slicing
Prof.   Dr. Eugen Borcoci, University           „Politehnica” Bucharest, Romania
Prerequisites: general knowledge on IP layered architectures,      protocols, introductory knowledge on 4G/5G, SDN,  ETSI-NFV,      Cloud/Fog  computing, IoT (Internet of Things).
The 5G (fifth generation) networks, embedded in end-to-end (E2E)      architectures are considered today as a main technology to support      the increasing demand of the current and future networks and      services, in terms of flexibility, capacity, bandwidth, number of      terminals, dense deployments, response time, energy consumption and      so on. Challenging applications as Internet of Things, smart cities,      Internet of vehicles, etc., are few examples of driving forces for      5G development. There is a wide range of research and development       projects related to different areas of the 5G network in 5G      Infrastructure Public-Private Partnership (5G PPP phase I and II). 
Network slicing is an important way to enable resource sharing among      multiple tenants–network operators and/or services, thus being a key      functionality for next generation mobile networks. Additionally,      both architecture and also the implemented systems should be able to      span over multiple administrative domains and multi-operator      environments, offering to the users full E2E capabilities. The      slicing mechanisms should enable tenants to benefit of sharing,      while retaining the ability to customize their own users’      allocation. Therefore, E2E, multi-domain and multi-tenant      capabilities are essential features in 5G slicing area. 
Powerful support technologies are available today, generally seen as      network softwarization, like  Software Defined  Networking (SDN)      programmable network infrastructures, Network Function      Virtualization (NFV) running network functions as software and also      the cloud/fog/edge  computing paradigms. In cooperation, the above      technologies can support 5G slicing, aiming to meet the various      services requirements posed by the 5G use cases. Integrated      management and control based on ETSI Management and Orchestration      (MANO) framework is envisaged. The latter will enable network      flexibility and programmability, by creation and  lifecycle      management of virtual network slices tailored to the needs of 5G      verticals, expressed in the form of Mobile Virtual Network Operators      (MVNOs) for automotive, eHealth, massive IoT, massive multimedia      broadband. 
This tutorial covers in a joint vision, the E2E, multi-domain and      multi-tenant aspects in 5G slicing, while considering NFV/SDN and      cloud approaches.  
 
T2. Neural and           Probabilistic Learning Methods for           Robotics and other Domains
Prof. Dr. Elmar Rückert, Institut für           Robotik und Kognitive Systeme,           University of Lübeck, Germany
In this tutorial, I discuss state of the art probabilistic and neural models that can be used to predict complex motions of humans or robots. The models can handle partial observable, missing data and are robust to sensor noise, which is demonstrated in challenging human postural control studies. In this experiment, a Gaussian mixture model was used to predict goal directed right arm motions solely from observing the motion of the trunk or left arm. The model can be also used for model validation, classification and movement  analyses and is as such interesting for a broad range of research approaches working with multi-modal motion data.
  
In the second part of my tutorial, I discuss how recurrent neural networks can be used for motion planning and obstacle avoidance. The model is based on the probabilistic inference framework and can be trained through reinforcement learning. It can be used to explain neural recordings of mental replays and pre-plays in rats during navigation tasks and provides a probabilistic theory for more complex cognitive reasoning tasks. The tutorial will conclude with extensions of this neural network that can be trained from millions of data samples which was exploited for learning dynamics models in robotics.
 
T3. Exploration and           Analysis of Software Engineering           Data with R
Prof. Dr. Luigi Lavazza, Universita` degli Studi dell'Insubria, Italy
Effective management of a software development or maintenance process requires knowledge of the software product and process. Reliable knowledge can be achieve mainly from measures of software products and processes.
  
Through measures we can gain insights in the development and maintenance activities that let us take better and more timely decisions. For instance, measures concerning development effort and software product properties like size, complexity, etc. support the construction of models that can be used for cost estimation in the early phases of development. Measures concerning product and process qualities and defects support the construction of defect-proneness models that suggest what parts of the system under construction deserve additional quality assurance activities.
In this tutorial, we shall see how to visualize measures concerning software products and process, and how to build simple statistical models that represent the quantitative relationships among software product and process qualities and properties. We will also perform basic evaluations of the models, to assess to what extent we can trust them.
The R language and statistical computing environment will be introduced. The R studio will be used.