ADVANCED PROGRAM ICACSIS 2015

Size: px
Start display at page:

Download "ADVANCED PROGRAM ICACSIS 2015"

Transcription

1 1

2 CONFERENCE INFORMATION Dates October 10 th (Saturday) October 11 th (Sunday) 2015 Organizer Venue Official Language Secretariat Conference Website Faculty of Computer Science, Universitas Indonesia Center for Japanese Studies, Universitas Indonesia Kampus UI Depok, Indonesia Phone : Fax : English Faculty of Computer Science, Universitas Indonesia Kampus UI Depok Depok, Indonesia T: ext F: E: icacsis@cs.ui.ac.id W: 2

3 COMMITTEES Honorary Chairs: A. Jain, IEEE Fellow, Michigan State University, US T. Fukuda, IEEE Fellow, Nagoya University, JP M. Anis, Universitas Indonesia, ID M. Adriani, Universitas Indonesia, ID General Chairs: H. Suhartanto, Universitas Indonesia, ID Z. A. Hasibuan, Universitas Indonesia, ID S. Kuswadi, Electronic Engineering Polytechnic Institute of Surabaya / Soft Computing, ID Program Chairs: H. B. Santoso, Universitas Indonesia, ID W. Jatmiko, Universitas Indonesia, ID A. Buono, Institut Pertanian Bogor, ID D. E. Herwindiati, Universitas Tarumanegara, ID A. S. Nugroho, Agency for the Assessment & Application of Technology / Soft Computing, ID Section Chairs: K. Wastuwibowo, IEEE Indonesia Section, ID Program Committees: A. Kristijantoro, Institut Teknologi Bandung, ID A. N. Hidyanto, Universitas Indonesia, ID A. Azurat, Universitas Indonesia, ID A. A Krisnadhi, Universitas Indonesia, ID A. Buono, Institut Pertanian Bogor, ID A. Z. Arifin, Institut Teknologi Sepuluh Nopember, ID A. Murni, Universitas Indonesia, ID A. Purwarianti, Institut Teknologi Bandung, ID A. Saptawijaya, Universitas Indonesia, ID B. Anggorojati, Universitas Indonesia, ID B. H. Widjaja, Universitas Indonesia, ID B. Hardian, Universitas Indonesia, ID B. Purwandari, Universitas Indonesia, ID B. Yuwono, Universitas Indonesia, ID Denny, Universitas Indonesia, ID D. I. Sensuse, Universitas Indonesia, ID E. K. Budiarjo, Universitas Indonesia, ID E. Gaura, Coventry University, UK E. Seo, Sungkyunkwan University, KR H. Ramli, Universitas Indonesia, ID H. Suhartanto, Universitas Indonesia, ID H. Sukoco, Institut Pertanian Bogor, ID H. M. Manurung, Universitas Indonesia, ID I. Sitanggang, Institut Pertanian Bogor, ID I. Budi, Universitas Indonesia, ID 3

4 I. Wasito, Universitas Indonesia, ID K. Phusavat, Kasetsart University, TH L. Y. Stefanus, Universitas Indonesia, ID M. I. Fanany, Universitas Indonesia, ID M. Kyas, Reykjavik University, IS Marimin, Institut Pertanian Bogor, ID M. Nakajima, Nagoya University, JP M. Adriani, Universitas Indonesia, ID P. Hitzler, Wright State Unversity, US P. Mursanto, Universitas Indonesia, ID R. M. Salleh, Universiti Tun Hussein Onn Malaysia, MY S. Yazid, Universitas Indonesia, ID S. Nomura, Nagaoka University of Technology, JP S. Kuswadi, Politeknik Elektronika Negeri Surabaya, ID S. Bressan, National University of Singapore, SG S. Sharif, Universiti Utara Malaysia, MY T. Gunawan, International Islamic University Malaysia, MY T. Hardjono, Massachusetts Institute of Technology, US W. C. Wibowo, Universitas Indonesia, ID W. S. Nugroho, Universitas Indonesia, ID W. Jatmiko, Universitas Indonesia, ID X. Li, The University of Queensland, AU Y. G. Sucahyo, Universitas Indonesia, ID Y. K. Isal, Universitas Indonesia, ID Local Organizing Committee: Aprinaldi, Universitas Indonesia, ID A. Wibisono, Universitas Indonesia, ID D. Marhaendro, Universitas Indonesia, ID H. A. Wisesa, Universitas Indonesia, ID H. R. Sanabila, Universitas Indonesia, ID M. A. Ma sum, Universitas Indonesia, ID M. Roby, Universitas Indonesia, ID M. Soleh, Universitas Indonesia, ID S. C. Purbarani, Universitas Indonesia, ID Q. Ayunina, Universitas Indonesia, ID 4

5 VENUE MAP Pusat Studi Jepang Universitas Indonesia Kampus Baru UI Depok Pondok Cina, Beji, Depok Indonesia ICACSIS Venue 5

6 Venue Map 6

7 7

8 REGISTRATION Registration Fee Accepted Paper USD 300 (International) IDR (Domestic) Additional Page Participant USD 10 (per page) USD 150 (International) IDR (Domestic) Payment Method All payment for the administration fee and additional events should be transferred to the bank account below: Recipient Bank Account Name :BNI :UNIVERSITAS-INDONESIA-Fasilkom Non BP Account Number : Swift Code :BNI NIDJA

9 PROGRAM SCHEDULE Saturday, October 10th, 2015-CONFERENCE Time Event Event Details Rooms Registration Opening Ceremony Plenary Speech I Opening speech from the General Chair of ICACSIS 2015, Prof. Heru Suhartanto, Ph.D. Opening speech from the Dean of Faculty of Computer Science Universitas Indonesia (Mirna Adriani, Ph.D) Opening Speech from the Vice Rector Universitas Indonesia (Prof Dr.rer.nat Rosari Saleh) Prof. Kevin Burrage from University of Oxford Ceremonial gift, from the Dean of Faculty of Computer Science Universitas Indonesia to Prof. Kevin Burrage ICACSIS Photo Session Auditorium, Pusat Studi Jepang, Universitas Indonesia Coffee Break Parallel Session I : Prof. Maman Abdurrahman from Three Parallel Universiti Putra Malaysia, MY Sessions Lunch Parallel Session II: Three Parallel Sessions Plenary Speech II Dr. Eng. Wisnu Jatmiko, S.T., M.Kom. from Faculty of Computer Science, Universitas Indonesia, ID Prof. Jose A.B. Fortes, Ph.D, University of Florida, USA Coffee Break Parallel Session III : Jan Pidanic, Ph.D, University of Three Parallel Pardubice, CZ Sessions R.206, R.106, Auditorium. R.206, R.106, Auditorium. Auditorium, Pusat Studi Jepang, Universitas Indonesia R.206, R.106, Auditorium. 9

10 Sunday, October 11th, 2015-CONFERENCE Time Event Event Details Rooms Registration Parallel Session IV : Three Parallel Sessions Budhitama Subagdja, Ph.D, Nanyang Technological University, SG Coffee Break Plenary Speech III Prof. Subhas Mukhopadhyay from Massey University, NZ Lunch Parallel Session V : Radu Muschevici, Ph.D from Three Parallel Technische Universitat Darmstadt, DE Sessions Coffee Break Closing Ceremony (Awards Announcement and Photo Session) Awards Announcement from the Program Chair of ICACSIS 2015, Dr. Eng. Wisnu Jatmiko, S.T., M.Kom Break Dinner Farewell Dinner for Participants R.206, R.106, Auditorium. Auditorium, Pusat Studi Jepang, Universitas Indonesia R.206, R.106, Auditorium. Auditorium, Pusat Studi Jepang, Universitas Indonesia Mang Engking Restaurants 10

11 KEYNOTE SPEAKERS Kevin Burrage, University of Oxford, UK Subhas Mukhopadhyay, Massey University, NZ José A.B. Fortes, University of Florida, US INVITED SPEAKERS Radu Mushevici, Technische Universität Darmstadt, DE Maman Abdurachman Djauhari, Universiti Putra Malaysia, MY Jan Pidanic, University of Pardubice, CZ Budhitama Subagdja, Nanyang Technological University, SG Wisnu Jatmiko, Universitas Indonesia, ID 11

12 Keynote Speaker Multi Scale Computing for Studying the Electrophysiology of the Human Heart Kevin Burrage Computational Systems Biology, University of Oxford Abstract In this talk I give a brief overview of cell models for cardiac electrophysiology starting with the Hodgkin Huxley equations. I discuss the nature of ion channels and how they can be modeled and how these models can be incorporated into cell models of the heart. I discuss both deterministic and stochastic cell models and derive new methods for their simulation. Finally I discuss how these models can be incorporated into whole organ models of human cardiac electrophysiology and how they can be validated against a variety of experimental and clinical data. No knowledge of physiology is needed. Profile Prof Kevin Burrage joined Oxford University in early 2008 and now Professor of Computational Systems Biology at the Department of Computer Science, University of Oxford and the Oxford Centre for Integrative Systems Biology. Prof Kevin Burrage is a member of the Computational Cardiac Modelling and Simulation group within Computer Science. Prof Kevin Burrage share his time, half and half, between Oxford and the Mathematics Department at the Queensland University of Technology (QUT Brisbane, Australia, where Prof Kevin Burrage earned as Professor of Computational Mathematics. Prof Kevin Burrage is also a theme leader in the new Institute for Future Environments at QUT Prof Kevin Burrage was a supernumerary fellow of New College at Oxford University between 2008 and Before coming to Oxford, Prof Kevin Burrage was a Federation Fellow of the Australian Research Council ( ) at the University of Queensland. 12

13 Keynote Speaker Smart Homes: Design Issues; IoT and Cloud Computing Perspective Subhas Chandra Mukhopadhyay School of Engineering and Advanced Technology, Massey University Abstract The term Internet of Things (IoT) or Internet Sensing) is used to describe embedded sensing devices with Internet connectivity, allowing them to interact with each other, services, and people on a global scale. This level of connectivity can increase reliability, sustainability, and efficiency by improved access to information which can be achieved with effective use of Cloud Computing. Environmental monitoring, home and building automation, and smart grids could be interconnected, allowing information to be shared between systems. One day, internet will connect everyone to everything of everywhere at every time and will be the backbone of business operations, but there is still a long way to go. The plenary talk will provide an overview of Smart Homes which is drawing more and more attention in recent times to provide a safe, sound and secured environment to inhabitant. The design issues along with uses of IoT and Cloud computing will be presented to achieve an ideal smart home for everyone in near future. Profile Subhas holds a B.E.E. (gold medallist), M.E.E., Ph.D. (India) and Doctor of Engineering (Japan). He has over 25 years of teaching, industrial and research experience. Currently he is working as a Professor of Sensing Technology, Massey University, New Zealand. His fields of interest include Smart Sensors and sensing technology, instrumentation techniques, wireless sensors and network, numerical field calculation, electromagnetics etc. He has published over 300 papers in different international journals and conference proceedings, written four books and thirty book chapters and edited twelve conference proceedings. He has also edited twenty books with Springer-Verlag and Twelve journal special issues. He has organized over 20 international conferences as either General Chairs/co-chairs or Technical Programme Chair. He has delivered 236 presentations including keynote, invited, tutorial and special lectures. He is a Fellow of IEEE (USA), a Fellow of IET (UK), a Fellow of IETE (India), a Topical Editor of IEEE Sensors journal, an associate editor of IEEE Transactions on Instrumentation and Measurements, and a Technical Editor of IEEE Transactions on Mechatronics. He was a Distinguished Lecturer of the IEEE Sensors Council from 2010 to He chairs the IEEE IMS Technical Committee 18 on Environmental Measurements. 13

14 Keynote Speaker Software-defined IT Systems José A.B. Fortes Distributed Computing, Autonomic Computing, Computer Acrhitecture, Parallel Processing, and Fault-tolerant Computing, University of Florida Abstract Software-definition is an emerging transformative aspect of IT. It has had a major impact on networking, where major equipment manufacturers already provide products (e.g. routers, switches and controllers) that support software-defined networking. However, even in the context of networking, software-definition is at its infancy, with much research and development being necessary to understand the new capabilities, challenges and applications that it enables in IT systems. In the future we will see a generalization of software-definition to all components of IT infrastructures, software systems and CI applications. Datacenters are already adopting management techniques using software-defined compute, storage and networking leading to software-defined datacenters. More importantly, software-definition is becoming a new dimension of systems design entailing (1) a refactoring of systems that leads to separation of their data and control planes (or, somewhat equivalently, their functional and management aspects), and (2) the exposure of control or management capabilities to users/consumers of the systems. Software-definition introduces major opportunities for research in computer science and engineering, with potential for long-lasting broad impact. This talk will review and exemplify the motivation and nature of softwaredefined IT systems, and introduce some of the opportunities, challenges and approaches in the design and management of such systems. Profile José A.B. Fortes is the AT&T Eminent Scholar and Professor of Electrical and Computer Engineering and Computer Science at the University of Florida where he founded and is the Director of the Advanced Computing and Information Systems Laboratory. He received the B.S. degree in Electrical Engineering (Licenciatura em Engenharia Electrotécnica) from the Universidade de Angola in 1978, the M.S. degree in Electrical Engineering from the Colorado State University, Fort Collins in 1981 and the Ph.D. degree in Electrical Engineering from the University of Southern California, Los Angeles in From 1984 until 2001 he was on the faculty of the School of Electrical Engineering of Purdue University at West Lafayette, Indiana. In 2001 he joined both the Department of Electrical and Computer Engineering and the Department of Computer and Information Science and Engineering of the University of Florida as Professor and BellSouth Eminent Scholar. From July 1989 through July 1990 he served at the National Science Foundation as director of the Microelectronics Systems Architecture program. From June 1993 till January 1994 he was a Visiting Professor at the Computer Architecture Department of the Universitat Politecnica de Catalunya in Barcelona, Spain. His research interests are in the areas of distributed computing, autonomic computing, computer architecture, parallel processing and faulttolerant computing. He has authored or coauthored over 200 technical papers and has lead the development and 14

15 deployment of Cloud and Grid-computing software used in several cyberinfrastructures for e-science and digital government. His research has been funded by the Office of Naval Research, AT&T Foundation, IBM, General Electric, Intel, Northrop-Grumman, Army Research Office, NASA, Semiconductor Research Corporation and the National Science Foundation. José Fortes is a Fellow of the Institute of Electrical and Electronics Engineers (IEEE) professional society and a Fellow of the American Association for the Advancement of Science (AAAS). He was a Distinguished Visitor of the IEEE Computer Society from 1991 till José Fortes is on the Editorial Boards of the IEEE Transactions on Cloud Computing, the IEEE Transactions on Services Computing, and the International Journal on Parallel Programming. He is also a past member of the Editorial Boards of IEEE Transactions on Parallel and Distributed Systems, the ACM Journal on Emerging Technologies in Computing Systems, Cluster Computing: The Journal of Networks, Software Tools and Applications, the Journal of VLSI Signal Processing, and the Journal of Parallel and Distributed Computing. 15

16 Auto-adaptive Software Product Lines using the ABS Language Radu Muschevici Post-doctoral Researcher in the Software Engineering Group, Technische Universität Darmstadt Abstract Modern software systems must support a high degree of variability to adapt to a wide range of requirements and operating conditions. While static adaptation based on software product lines is becoming more common, dynamic adaptation is less well-explored. However, runtime adaptation has a host of advantages ranging from downtime avoidance to performance improvements. Auto-adaptation is a particularly promising form of runtime adaptation that enables a running program to adapt autonomously, in swift response to changing conditions in the running environment. This paper focuses on the design of a programming language facility to support the runtime autoconfiguration of dynamic software product lines (DSPL). We implement this facility for the Abstract Behavioural Specification (ABS) language by introducing a dynamic, reflection-based metaprogramming facility for ABS, called MetaABS and a runtime environment that readily supports dynamically auto-adapting systems written in MetaABS. Profile Radu Muschevici, Ph.D is a post-doctoral research in the software engineering group, Technische Universität Darmstadt. His research interests are programming language, compiler, and program specification and analsis. Radu received his PhD degree from KU Leuven Belguim. His PhD thesis discussed the design and implementation of the ABS (Abstract Behavioural Specification). His thesis also discussed a compiler that supports software modelling statistically or while the program is running. Before receiving his PhD degree, Radu received his MSc degree from the Victoria University of Wellington and BSc degree from the Hoshchule Munchen, Germany. He have also worked in the industry for several years. 16

17 Dynamics of NYSE Correlation Structure during Global Crisis in 2008: Evidence from Complex Network Analysis Maman Abdurachman Djauhari Institute for Mathematical Research, Universiti Putra Malaysia Abstract Stocks market is a complex system. To understand its behavior, random matrix theory and/or graph theory are/is usually used. In this paper, the latter is used to analyze the dynamics of correlations network at New York Stock Exchange (NYSE) during global crisis. For that purpose, first, we test the stability of correlation structure along predetermined non-overlapping time windows. Second, complex network representation is provided to study the dynamics of correlation structure from time window to time window, and the evolution of minimal spanning tree (MST)-based network topology is studied. Some changes of topological properties will be highlighted to demonstrate the advantages of complex network approach. Profile Prof. DR. Maman Abdurachman Djauhari recieved his masters and doctoral degree in statistics from the Universite de Montpellier 2 in 1977 and 1979 respectively. He received his Professor degree from several different universities, which includes Institute Teknologi Bandung, Universiti Malaysia Perlis, Universiti Teknologi Malaysia, and Universiti Putra Malaysia. Prof. Maman has received numerous awards and achievements internationally. The awards and achievements that he have received includes: World Bank data quality consultant in 2009, highest rank of professorship in Indonesia in 2000, Gold Medal Award for outstanding contribution in statistics from the ISOSS(Islamic Countries of Statistical Sciences) in 2005, Excellent Service Award Faculty of Science from Universiti Teknologi Malaysia in 2013, Best Lecturer Award from Departemen Matematika ITB in Chairman Council of Professors ITB from 2007 until 2008, and the Dean of Natural Sciences Faculty ITB from 1997 until Professor Maman has also worked together with the industry. The industry that he has worked with includes the military, aerospace industry, pharmacy, garment, train systems, automotive, chocolate powder, and also medical. Professor Maman have a wide experience in doing research internationally. In the last 5 years, he had received MYR in research funds. His research interests includes: Complex System, Financial Industry, Networks Analysis, Statistical Process Control in Manufacturing and Service Industries. 17

18 Advanced targets association based on GPU computation of PHD function Jan Pidanic +, Tomas Shejbal +, Zdenek Nemec +, Heru Suhartanto* + Faculty of Electrical Engineering and Informatics, University of Pardubice *Faculty of Computer Science, Universitas Indonesia, Indonesia Abstract The precise and quick association of targets is one of the main challenging tasks in the signal processing field of the Multistatic Radar System (MRS). The paper deals with target association techniques based on the computation of the Probability Hypothetic Density (PHD) Function. The Computation time makes solving the PHD a very demanding task. The speedup of a newly developed algorithm depends on vectorization and parallel processing techniques. This paper describes the comparison between the original and parallel version of the target association algorithm with the full set of input data (without any knowledge about the approximation of targets direction) and the comparison with the advanced target association algorithm using additional input information about the direction of the target. All algorithms are processed in the MATLAB environment and Microsoft Visual Studio - C. The comparison also includes Central Processor Unit (CPU) and Graphics Processor Unit (GPU) version of all algorithms. Profile Ing. Jan Pidanic, Ph.D received his Ing degree from the University of Perdubice in the field of electrical transport infrastructure. In 2005, he received his PhD from the same institution. In 2007, Jan Pidanic is an assistant in the Faculty of Electrical Engineering and Informatics. His Specialization includes: digital processing systems, radar systems, passive coherent location, and ultra wide broadband. 18

19 Agent-Based Modelling for Developing Pervasive Persuasive Systemss Budhitama Subagdja Joint NTU-UBC Research Centre of Excellence in Active Living for the Elderly (LILY), Nanyang Technological University Abstract Building a cyber-physical system consisting of many reactive elements that continually interact with each other may require considerable efforts to ensure that it behaves as desired. The scale of the issues to tackle is much expanded when it comprises human-factors to analyze and change (e.g persuasion).in this paper, a development methodology is proposed for building the kind of system that developer interacts and communicates directly with the components in the domain. The developer interacts with them in simulated or runtime context in order to instruct and shape the whole system. As a technique of Agent-Based Modeling, the entire system is considered to consist of interacting (semi-) autonomous agents that can reason, adapt, and learn at runtime. This approach of development requires a particular agent architecture that can reason and learn about human activity and social conditions comprising spatial, temporal, and hierarchical structure of information. In this paper, the teachable approach is exemplified using a simulated persuasive multi-agent system for elderly care in ageing-in-place domain. Profile Budhitama Subagdja received a Ph.D. in Information Systems from the Department of Information Systems, the University of Melbourne, Australia, a Master and a Bachelor in Computer Science from the Faculty of Computer Science, University of Indonesia. He is currently a Research Fellow in Joint NTU-UBC Research Centre of Excellence in Active Living for the Elderly (LILY), Nanyang Technological University (NTU), Singapore. Before he joined NTU, he worked as a research assistant and a lecturer in the University of Indonesia. He was also a Postdoctoral Fellow at the University of Melbourne after finishing his PhD. He was also a Research Fellow in Intelligent Systems Centre and School of Computer Engineering, NTU before joining LILY Centre. His current research interests include planning, reasoning, and learning mechanisms in autonomous agents, multi-agent systems, and biologically-inspired cognitive architecture for intelligent agents. 19

20 Developing Smart Telehealth System in Indonesia : Progress and Challenge Wisnu Jatmiko Faculty of Computer Science, Universitas Indonesia Abstract Indonesia have a high mortality rate caused by heart and cardio vascular diseases. One of the major factor that caused this issue is the lack of medical checkup especially for heart monitoring. It is caused by the limited number of medical instrumentation e.g. ECG in hospitals and public health centers. Another factor is the small number of cardiologist in Indonesia. There are only 365 cardiologists across the country, which is a very small number compared to the 250 million of Indonesia population. Furthermore, they are not distributed evenly in all provinces, but centered in Jakarta and other major cities. Meanwhile, Indonesia also has similar problem in health area. High number of fetal and mother mortality becomes a serious problem. One of the major factor is the lack of fetal growth monitoring. It is caused by the limited number of USG device and Obstetricians in Indonesia. Therefore, fetal growth monitoring is difficult. Based on these facts, we have developed a smart telehealth system In Indonesia. The development is focused on Tele-ECG and tele-usg System. Tele-ECG system have been built for heart diseases early detection and monitoring system, whereas Tele-USG system have been developed for fetal growth monitoring. The Tele-ECG system has three main components: an ECG sensor, a smartphone, and server. ECG sensor is used to acquire heartbeat signal from patient. After being recorded, the signal will be processed. There are baseline wandring removal (BWR), beat segmentation, and wavelet for dimensionality reduction. Afterwards, the signal can be classified to predict the patient's condition automatically, whether it is normal or has heart diseases symptoms. We have been developing classifier algorithm named AMGLVQ to classify hwrt heart beat signal. The performance of the algorithm is above 95%. Next, the signal is sent to server to be verified by cardiologists. To provide fast transmission, we first compressed the signal. For compression, we used 2D SPIHT compression. The error of the compression is relatively low, which is 3,46% for 24 compression ratio. Tele-USG System has 2 main components, they are the smartphone and server. In Tele-USG system, we have not developed hardware yet, due to the complexity of the USG sensor. In this system we used ultrasound image captured from conventional USG devices. Software installed in the patient's smartphone is used to monitor fetal growth. The software is equipped with automatic fetal biometrics measurements. The software can compute HC, BPD, AC, FL, and HL from head, abdomen, femur and humerus organs. For this automated computation we have been developing Hough Transform based curve approcimation. Fetal head and abdomen can be approximated by ellipse curve, whereas fetal femur and humerus was approximated by line curve. The approximation algorithm has less than 10% error. Regarding the progress of the development, there are several enhancements needed. For Tele-ECG systems, It is important to make ECG sensor in small (pocket) size. Therefore, the device can be used mobily by user (patient). For Tele-USG system, we will develop portable ultrasound (USG) device. Therefore, the system can measure fetal biometrics data from real time data. Besides, the patients can capture ultrasound image frequently. It will help them to monitor their fetal growth. 20

21 Profile Born in Surabaya, Indonesia, December, Received B.Eng. degree from Electrical Engineering in 1997, M.Sc. degree from Computer Science in 2000, both from the University of Indonesia, Indonesia, and Dr. Eng. degree from Micro-Nano Systems Engineering, Nagoya University, Japan, in 2007, respectively. Currently, he works at Faculty of Computer Science, University of Indonesia, Indonesia as a lecturer. He is regarded as a highly productive researcher and has more than 100 international publications that are mostly indexed in Scopus and Google Scholar. In addition, he has already published 6 books and produced 4 copyrights of computer software from his research products. 21

22 TECHNICAL PROGRAM ICACSIS 2015 Opening Ceremony Venue: Auditorium, 1 st Floor Master of Ceremony: Prof. Heru Suhartanto Oct 10 (Sat) Plenary Speech I Venue: Auditorium, 1 st Floor Oct 10 (Sat) Topic : Multi Scale Computing for Studying the Electrophysiology of the Human Heart Moderator Plenary Speech by Prof. Kevin Burrage Computational Systems Biology, University of Oxford : Prof. Heru Suhartanto, Ph.D Parallel Session I Invited Speech Venue: Auditorium, 1 st Floor Oct 10 (Sat) Moderator : Prof. Dyah Erny H Dynamics of NYSE Correlation Structure during Global Crisis in 2008: Evidence from Complex Network Analysis Prof. Maman Abdurachman Djauhari, Ph.D. Parallel Sessions I Information Retrieval Venue: Seminar Room, 1 st Floor Oct 10 (Sat) (119) Spark-Gram: Mining Frequent N-gram Using Parallel Processing in Spark Prasetya Ajie Utama, Bayu Distiawan (129) A Two-Stage Emotion Detection on Indonesian Tweets Johanes Effendi The, Alfan Farizki Wicaksono, Mirna Adriani (139) Stock Price Prediction using Linear Regression based on Sentiment Analysis Yahya Eru Cakra, Bayu Distiawan Trisedya (148) Indonesian-Japanese Term Extraction from Bilingual Corpora Using Machine Learning Ayu Purwarianti (162) A Simple Approach of Clause Extraction for Open Information Extraction Ade Romadhony, Dwi H. Widyantoro, Ayu Purwarianti 22

23 Parallel Sessions I Pattern Recognition, Image Processing & Content-Based Image Retrieval Venue: Sidang Room, 2 nd Floor Oct 10 (Sat) (091) Road Detection System based on RGB Histogram Filterization and Boundary Classifier M.D. Enjat Munajat, Dwi H. Widyantoro, Rinaldi Munir (099) A Monsoon Onset and Offset Prediction Model Using Backpropagation and Moron Method A case in Drought Region Syeiva Nurul Desylvia, Taufik Djatna, Agus Buono (133) A Classification System for Jamu Efficacy Based on Formula Using Support Vector Machine and K- Means Algorithm as a Feature Selection Melyinda Nur Puspita, Wisnu Ananta Kusuma, Aziz Kustiyo, Rudi Heryanto (186) Generic Algorithm Optimization for Extreme Learning Machine based Microalgal Growth Forecasting of Chlamydomonas sp. D. M. J. Purnomo, S. C. Purbarani, A. Wibisono, D. Hendrayanti, A. Bowolaksono, P. Mursanto, D. H. Ramdhan, W. Jatmiko Parallel Sessions II Invited Speech Venue: Auditorium, 1 st Floor Oct 10 (Sat) Moderator : Harry Budi Santoso, Ph.D Developing Smart Telehealth System in Indonesia : Progress and Challenge Dr. Eng. Wisnu Jatmiko, S.T., M.Kom. Parallel Sessions II Pattern Recognition, Image Processing & Content-Based Image Retrieval Venue: Seminar Room, 1 st Floor Oct 10 (Sat) (132) Mangifera indica Real-Time Quality Classifications Using Codebook Segmentation and Mass-Size Correlation Equations Timotius Devin, Muhammad Ashyar Agmalaro (155) Online Marginalized Linear Stacked Denoising Autoencoders for Streaming Big Data Arif Budiman, Mohamad Ivan Fanany, Chan Basaruddin (185) An Adaptive Selective Background Learning-Hole Filling Algorithm to Improve Vehicle Detection Machmud R Alhamidi, Qurrotin Ayunina, Ari Wibisono, Petrus Mursanto, and Wisnu Jatmiko 23

24 (190) Evolutionary-based Segment Selection for Higher-order Conditional Random Fields in Semantic Image Segmentation Novian Habibie, Vektor Dewanto, Jogie Chandra, Fariz Ikhwantri, Harry Budi Santoso, Wisnu Jatmiko (217) ECG Signal Compression by Using Predictive Coding And Set Partitioning in Hierarchical Trees (SPIHT) Grafika Jati, Aprinaldi, Wisnu Jatmiko Parallel Sessions II Formal Methods in Software Engineering and Enterprise Computing Lab Venue: Sidang Room, 2 nd Floor Oct 10 (Sat) (014) Robust Kurtosis Projection for Multivariate Outlier Labeling Dyah Erny Herwindiati (035) Children and Adults Schemes in Categorization of Basic Objects and Mobile Applications Lumpapun Punchoojit and Nuttanont Hongwarittorrn (102) An Automatic Health Surveillance Chart Interpretation System Based on Indonesian Language Indra Aulia, Ari Moesriami Barmawi (138) Formulating Implementation Strategy for Enterprise Content Management System Using Soft System Methodology: A Case of A Marine Logistics Company in Indonesia Sunu Wicaksono, Muhammad Rifki Shihab, Puspa Sandhyaduhita (193) Enhancing Efficiency of Enterprise Digital Rights Management Ahmed H. Soliman, Maged H. Ibrahim, Salwa H. El-Ramly Plenary Speech II Venue: Auditorium, 1 st Floor Topic : Software-defined IT Systems Moderator Plenary Speech by Prof. José A.B. Fortes, Ph.D. Distributed Computing, Autonomic Computing, Computer Architecture, Parallel Processing, and Fault Tolerant Computing, University of Florida : Prof. T. Basaruddin, Ph.D. Oct 10 (Sat) Parallel Sessions III Invited Speech Venue: Auditorium, 1 st Floor Moderator : Prof. Heru Suhartanto, Ph.D. Oct 10 (Sat)

25 Advanced Targets Association Based on GPU Computation of PHD Function Jan Pidanic, Ph.D Parallel Sessions III Digital Library & Distance Learning and IT-Governance Venue: Seminar Room, 1 st Floor Oct 10 (Sat) (020) Factors Affecting Knowledge Sharing and Its Effect on Performance of Higher Education Technical and Vocational Agriculture in Java Sofiyanti Indriasari, Dana Indra Senuse, Elin Cahyaningsih (066) Genetic Algorithm Based Multi-objective Optimization of Wheat Flour Supply Chain Considering Raw Material Substitution Trisna, Marimin, Yandra Arkeman, Titi Candra Sunarti (085) Analysis of Factors Affecting User Acceptance of the Implementation of ClassCraft E-Learning: Case Studies Faculty of Information Technology of Tarumanagara University Darius Haris, Elvina Sugito (122) Personal Traits as Antecedents Towards Intention to Use: A Perspective of a Government EDMS Adoption in Indonesia Karyanto Wijaya, Betty Purwandari, Muhammad Rifki Shihab (123) E-Audit System Acceptance in the Public Sector: An Indonesian Perspective Ferry Purwantoro, Betty Purwandari, Muhammad Rifki Shihab Parallel Sessions III Pattern Recognition, Image Processing & Content-Based Image Retrieval System Venue: Sidang Room, 2 nd Floor Oct 10 (Sat) (027) Weather Forecasting using Deep Learning Techniques Afan Galih Salman, Bayu Kanigoro, Yaya Heryadi (055) Landmark Analysis of Leaf Shape Using Dynamic Threshold Polygonal Approximation Wisard W Kalengkongan, Yeni Herdiyeni, Bib P Silalahi, Stephane Douady (061) Periodic Update and Automatic Extraction of Web Data for Creating a Google Earth Based Tool Taufik Fuadi Abidin, M. Subianto, T. A. Gani, R. Ferdhiana (220) Multi Codebook LVQ-Based Artificial Neural Network Using Clustering Approach M. Anwar Ma sum, Hadaiq R. Sanabila, Aprinaldi, Wisnu Jatmiko (222) Development of Travel Speed Detection Method in Welding Simulator using Augmented Reality Ario Baskoro 25

26 Parallel Session IV Invited Speech Venue: Auditorium, 1 st Floor Oct 11 (Sun) Moderator : Harry Budi Santoso, Ph.D. Agent-Based Modeling for Developing Pervasive Persuasive Systems Budhitama Subagdja, Ph.D. Parallel Session IV Information Retrieval Venue: Seminar Room, 1 st Floor (083) Learning the search heuristic for combined task and motion planning Vektor Dewanto Oct 11 (Sun) (110) Combination of SVD and K-means Method for Topic Detection in Twitter Khumaisa Nur aini, Ibtisami Najahaty, Lina Hidayati, Hendri Murfi, Siti Nurrohmah (128) Knowledge Representation System for Copula Sentence in Bahasa Indonesia Based on Web Ontology Language (OWL) Denis Eka Cahyani, Ruli Manurung, and Rahmad Mahendra (170) Gestalt Geometric CAPTCHA Suttikiat Meelap, Nuttanont Hongwarittorrn (078) Tandem Repeats Analysis in DNA Sequences Based on Improved Burrows-Wheeler Transform Algorithm Peter Juma Ochieng, Taufik Djatna Parallel Session IV Computer Networks, Computer Architecture, and High Performance Computing Venue: Sidang Room, 2 nd Floor Oct 11 (Sun) (105) Fetal State Classification from Cardiotography Based on Feature Extraction Using Hybrid K-Means and Support Vector Machine Nurul Chamidah, Ito Wasito (107) Automatic Plant Watering Controller Component Using FPGA Device Ima Primisima, Sunny Arief Sudiro, Bheta Agus Wardijono (126) Optimization Process of Glycerol Esterification Using Real Time Adaptive Control Iwan Aang Soenandi, Ani Suryani, Taufik Djatna, Irzaman (180) Ontology Model Development based on Generic Object Oriented Smart Home Model Yulistian Wardhana, Gladhi Guarddin, Bob Hardian (218) Implementation of Adaptive Fuzzy Neuro Generalized Learning Vector Quantization (AFNGLVQ) on Field Programmable Gate Array (FPGA) for Real World Application Irfan Nur Afif, Yulistian Wardhana, Wisnu Jatmiko 26

27 Plenary Speech III Venue: Auditorium, 1 st Floor Topic : Smart Homes: Design Issues; IoT and Cloud Computing Perspective Prof. Subhas Mukhopadhyay Professor of Sensing Technology, Massey University, New Zealand Oct 11 (Sun) Moderator : Dr. Eng. Wisnu Jatmiko Parallel Session V Invited Speech Venue: Auditorium, 1 st Floor Oct 11 (Sun) Moderator : Bayu Anggorojati, Ph.D. Dynamic, Auto-adaptive Software Product Lines using the ABS Language Radu Mushevici Parallel Session V Pattern Recognition, Image Processing & Content-Based Image Retrieval Venue: Seminar Room, 1 st Floor Oct 11 (Sun) (015) Leaf Vein Segmentation of Medical Plant Using Hessian Matrix Adzkia Salima, Yeni Herdiyani, Stephane Douady (088) Sleep Stages Classification using Shallow Classifiers Endang Purnama Giri, Aniati Murni Arymurthy, Mohammad Ivan Fanany, Sastra Kusuma Wijaya (159) Information Quality Assessment for User Perception on Indonesia Kreatif Web Portal Arfive Gandhi, Muhammad Rifki Shihab, Satrio B. Yudhoatmojo, Achmad Nizar Hidayanto (160) Application of Hierarchical Clustering Ordered Partitioning and Collapsing Hybrid in Ebola Virus Phylogenetic Analysis Hengki Muradi, Alhadi Bustamam, Dian Lestari (182) Segmenting and Targeting Customers Through Clusters Selection & Analysis Ilung Pranata, Geoff Skinner (135) Clustering Protein-Protein Interaction Network of TP53 Tumor Suppressor Protein using Markov Clustering Algorithm Thia Sabel Permata, Alhadi Bustamam 27

28 Closing Ceremony Venue: Auditorium, 1 st Floor Master of Ceremony: Dr. Eng. Wisnu Jatmiko Oct 11 (Sun)

29 PRESENTER S SCHEDULE A Ade Romadhony A Simple Approach of Clause Extraction for Open Information Extraction Seminar Room (106) Parallel Session I Oct 10 (Sat) Presenter 5 Adzkia Salima Leaf Vein Segmentation of Medicinal Plant Using Hessian Matrix Seminar Room (106) Parallel Session V Oct 11 (Sun) Presenter 1 Sidang Room (206) Afan Galih Salman Weather Forecasting using Deep Learning Techniques Parallel Session III Oct 10 (Sat) Presenter Ahmed H. Soliman Enhancing Efficiency of Enterprise Digital Rights Management Sidang Room (206) Parallel Session II Oct 10 (Sat) Presenter 5 Alhadi Bustamam Application of Hierarchical Ordered Partitioning and Collapsing Hybrid Method to Analyzing Phylogenetically on Ebola Virus Seminar Room (106) Parallel Session V Oct 11 (Sun) Presenter 4 Ani Suryani Optimization Process of Glycerol Esterification Using Real Time Adaptive Control Sidang Room (206) Parallel Session IV Oct 11 (Sun) Presenter 3 29

30 Arfive Gandhi Information Quality Assessment for User Perception on Indonesia Kreatif Web Portal Seminar Room (106) Parallel Session V Oct 11 (Sun) Presenter 3 Arif Budiman Online Marginalized Linear Stacked Denoising Autoencoders for Streaming Big Data Seminar Room (106) Parallel Session II Oct 10 (Sat) Presenter 2 Ario Baskoro Development of Travel Speed Detection Method in Welding Simulator using Augmented Reality Sidang Room (206) Parallel Session III Oct 10 (Sun) Presenter 5 Ayu Purwarianti Indonesian-Japanese Term Extraction from Bilingual Corpora Using Machine Learning Seminar Room (106) Parallel Session I Oct 10 (Sat) Presenter 4 B D Bayu Distiawan Trisedya Spark-Gram: Mining Frequent N-grams Using Parallel Processing in Spark Seminar Room (106) Parallel Session I Oct 10 (Sat) Presenter Stock Price Prediction using Linear Regression based on Sentiment Analysis Seminar Room (106) Parallel Session I Oct 10 (Sat) Presenter 3 Darius Haris Analysis of Factors Affecting User Acceptance of the Implementation of ClassCraft E-Learning: Case Studies Faculty of Information Technology of Tarumanagara University Seminar Room (106) Parallel Session III Oct 10 (Sat) Presenter 3 30

31 Denis Eka Cahyani Knowledge Representation System for Copula Sentence in Bahasa Indonesia Based on Web Ontology Language (OWL) Seminar Room (106) Parallel Session IV Oct 11 (Sun) Presenter 3 Dwi Purnomo Genetic Algorithm Optimization for Extreme Learing Machine based Microalgal Growth Forecasting of Chlamydomonas sp. Sidang Room (206) Parallel Session I Oct 10 (Sat) Presenter 5 E G I Dyah Erny Herwindiati Robust Kurtosis Projection for Multivariate Outlier Labeling Sidang Room (206) Parallel Session II Oct 10 (Sat) Presenter 1 Endang Purnama Giri Sleep Stage Classification using Simple Popular Classifier Seminar Room (106) Parallel Session V Oct 11 (Sun) Presenter 2 Grafika Jati ECG Signal Compression by Using Preditive Coding And Set Partitioning in Hierarchical Trees (SPIHT) Seminar Room (106) Parallel Session II Oct 10 (Sat) Presenter 5 Ilung Pranata Segmenting and Targeting Customers Through Clusters Selection & Analysis Seminar Room (106) Parallel Session V Oct 11 (Sun) Presenter 5 31

32 Indra Aulia An Automatic Health Surveillance Chart Interpretation System Based on Indonesian Language Sidang Room (206) Parallel Session II Oct 10 (Sat) Presenter 3 J Seminar Room (106) Johanes Effendi The A Two-Stage Emotion Detection on Indonesian Tweets Parallel Session I Oct 10 (Sat) Presenter K L Khumaisa Nur aini Combination of SVD and K-means Method for Topic Detection in Twitter Seminar Room (106) Parallel Session IV Oct 11 (Sun) Presenter 2 Lumpapun Punchoojit Children and Adults Schemes in Categorization of Basic Objects and Mobile Applications Sidang Room (206) Parallel Session II Oct 10 (Sat) Presenter 2 M Machmud Alhamidi An Adaptive Selective Background Learning-Hole Filling Algorithm to Improve Vehicle Detection Seminar Room (106) Parallel Session II Oct 10 (Sat) Presenter 3 Mas Dadang Enjat Munajat 32

33 Road Detection System based on RGB Histogram Filterization and Boundary Classifier Sidang Room (206) Parallel Session I Oct 10 (Sat) Presenter 1 Meylinda Nur Puspita A Classification System for Jamu Efficacy Based on Formula Using Support Vector Machine and K- Means Algorithm as a Feature Selection Sidang Room (206) Parallel Session I Oct 10 (Sat) Presenter 3 Muhammad Rifki Shihab Personal Traits as Antecedents Towards Intention to Use: A Perspective of a Government EDMS Adoption in Indonesia Seminar Room (106) Parallel Session III Oct 10 (Sat) Presenter E-Audit System Acceptance in the Public Sector: An Indonesian Perspective Seminar Room (106) Parallel Session III Oct 10 (Sat) Presenter 5 Muhammad Anwar Ma sum Multi Codebook LVQ-Based Artificial Neural Network Using Clustering Approach Sidang Room (206) Parallel Session III Oct 10 (Sun) Presenter 4 N Novian Habibie Evolutionary-based Segment Selection for Higher-order Conditional Random Fields in Semantic Image Segmentation Seminar Room (106) Parallel Session II Oct 10 (Sat) Presenter 4 33

34 Nurul Chamidah Fetal State Classification from Cardiotocography Based on Feature Extraction Using Hybrid K- Means and Support Vector Machine Sidang Room (206) Parallel Session IV Oct 11 (Sun) Presenter 1 Seminar Room (106) Nuttanont Hongwarittorrn Gestalt Geometric CAPTCHA Parallel Session IV Oct 11 (Sun) Presenter P R Peter Juma Ochieng Tandem Repeat Analysis in DNA Sequences based on improved Burrows-Wheeler Transform Algorithm Seminar Room (106) Parallel Session IV Oct 11 (Sun) Presenter 5 Ruddy J. Suhatril Musical Genre Classification Using SVM and Audio Features Sidang Room (206) Parallel Session V Oct 11 (Sun) Presenter 2 S Sofiyanti Indriasari Factors Affecting Knowledge Sharing and Its Effect on Performance of Higher Education Technical and Vocational Agriculture in Java Seminar Room (106) Parallel Session III Oct 10 (Sat) Presenter 1 34

35 Sunny Arief Sudiro Automatic Plant Watering Controller Component Using FPGA Device Sidang Room (206) Parallel Session IV Oct 11 (Sun) Presenter 2 Sunu Wicaksono Formulating Implementation Strategy for Enterprise Content Management System Using Soft System Methodology: A Case of A Marine Logistics Company in Indonesia Sidang Room (206) Parallel Session II Oct 10 (Sat) Presenter 4 T Syeiva Nurul Desylvia A Monsoon Onset and Offset Prediction Model Using Backpropagation and Moron Method A case in Drought Region Sidang Room (206) Parallel Session I Oct 10 (Sat) Presenter 2 Taufik Fuadi Abidin Periodic Update and Automatic Extraction of Web Data for Creating a Google Earth Based Tool Sidang Room (206) Parallel Session III Oct 10 (Sun) Presenter 3 Thia Sabel Permata Clustering Protein-Protein Interaction Network of TP53 Tumor Suppressor Protein using Markov Clustering Algorithm Seminar Room (106) Parallel Session V Oct 11 (Sun) Presenter Timotius Devin Mangifera indica Real-Time Quality Classifications Using Codebook Segmentation and Mass-Size Correlation Equations Seminar Room (106) Parallel Session II Oct 10 (Sat) Presenter 1 Trisna Trisna Genetic Algorithm Based Multi-objective Optimization of Wheat Flour Supply Chain Considering Raw Material Substitution 35

36 V Seminar Room (106) Parallel Session III Oct 10 (Sat) Presenter 2 Vektor Dewanto Learning the search heuristic for combined task and motion planning Seminar Room (106) Parallel Session IV Oct 11 (Sun) Presenter 1 W Y Wisard Widsli Kalengkongan Landmark Analysis of Leaf Shape Using Dynamic Threshold Polygonal Approximation Sidang Room (206) Parallel Session III Oct 10 (Sun) Presenter 2 Yulistiyan Wardhana Ontology Model Development based on Generic Object Oriented Smart Home Model Sidang Room (206) Parallel Session IV Oct 11 (Sun) Presenter Implementation of Adaptive Fuzzy Neuro Generalized Learning Vector Quantization (AFNGLVQ) on Field Programmable Array (FPGA) for Real World Application Sidang Room (206) Parallel Session IV Oct 11 (Sun) Presenter 5 36

Is a Data Scientist the New Quant? Stuart Kozola MathWorks

Is a Data Scientist the New Quant? Stuart Kozola MathWorks Is a Data Scientist the New Quant? Stuart Kozola MathWorks 2015 The MathWorks, Inc. 1 Facts or information used usually to calculate, analyze, or plan something Information that is produced or stored by

More information

Master of Science (Electrical Engineering) MS(EE)

Master of Science (Electrical Engineering) MS(EE) Master of Science (Electrical Engineering) MS(EE) 1. Mission Statement: The mission of the Electrical Engineering Department is to provide quality education to prepare students who will play a significant

More information

NATIONAL SUN YAT-SEN UNIVERSITY

NATIONAL SUN YAT-SEN UNIVERSITY NATIONAL SUN YAT-SEN UNIVERSITY Department of Electrical Engineering (Master s Degree, Doctoral Program Course, International Master's Program in Electric Power Engineering) Course Structure Course Structures

More information

Research Overview in. Formal Method in Software Engineering Laboratory

Research Overview in. Formal Method in Software Engineering Laboratory Research Overview in Formal Method in Software Engineering Laboratory Head of Lab: Prof. Belawati H Widjaja, Ph.D Presented By: Dr. Ade Azurat Wednesday 21 January 2015 FMSE Workshop 2015 @ Fasilkom UI

More information

Graduate Co-op Students Information Manual. Department of Computer Science. Faculty of Science. University of Regina

Graduate Co-op Students Information Manual. Department of Computer Science. Faculty of Science. University of Regina Graduate Co-op Students Information Manual Department of Computer Science Faculty of Science University of Regina 2014 1 Table of Contents 1. Department Description..3 2. Program Requirements and Procedures

More information

Curriculum Vitae. 1 Person Dr. Horst O. Bunke, Prof. Em. Date of birth July 30, 1949 Place of birth Langenzenn, Germany Citizenship Swiss and German

Curriculum Vitae. 1 Person Dr. Horst O. Bunke, Prof. Em. Date of birth July 30, 1949 Place of birth Langenzenn, Germany Citizenship Swiss and German Curriculum Vitae 1 Person Name Dr. Horst O. Bunke, Prof. Em. Date of birth July 30, 1949 Place of birth Langenzenn, Germany Citizenship Swiss and German 2 Education 1974 Dipl.-Inf. Degree from the University

More information

Welcome to the Capital Markets Collaborative Network. PhD showcase and networking lunch. at the Great Hall, University of Ulster, Magee campus

Welcome to the Capital Markets Collaborative Network. PhD showcase and networking lunch. at the Great Hall, University of Ulster, Magee campus Welcome to the Capital Markets Collaborative Network PhD showcase and networking lunch at the Great Hall, University of Ulster, Magee campus 26 June 2014 Northern Ireland may not have a stock exchange

More information

01219211 Software Development Training Camp 1 (0-3) Prerequisite : 01204214 Program development skill enhancement camp, at least 48 person-hours.

01219211 Software Development Training Camp 1 (0-3) Prerequisite : 01204214 Program development skill enhancement camp, at least 48 person-hours. (International Program) 01219141 Object-Oriented Modeling and Programming 3 (3-0) Object concepts, object-oriented design and analysis, object-oriented analysis relating to developing conceptual models

More information

CS Master Level Courses and Areas COURSE DESCRIPTIONS. CSCI 521 Real-Time Systems. CSCI 522 High Performance Computing

CS Master Level Courses and Areas COURSE DESCRIPTIONS. CSCI 521 Real-Time Systems. CSCI 522 High Performance Computing CS Master Level Courses and Areas The graduate courses offered may change over time, in response to new developments in computer science and the interests of faculty and students; the list of graduate

More information

SURVEY REPORT DATA SCIENCE SOCIETY 2014

SURVEY REPORT DATA SCIENCE SOCIETY 2014 SURVEY REPORT DATA SCIENCE SOCIETY 2014 TABLE OF CONTENTS Contents About the Initiative 1 Report Summary 2 Participants Info 3 Participants Expertise 6 Suggested Discussion Topics 7 Selected Responses

More information

Sense Making in an IOT World: Sensor Data Analysis with Deep Learning

Sense Making in an IOT World: Sensor Data Analysis with Deep Learning Sense Making in an IOT World: Sensor Data Analysis with Deep Learning Natalia Vassilieva, PhD Senior Research Manager GTC 2016 Deep learning proof points as of today Vision Speech Text Other Search & information

More information

Bachelor Degree in Informatics Engineering Master courses

Bachelor Degree in Informatics Engineering Master courses Bachelor Degree in Informatics Engineering Master courses Donostia School of Informatics The University of the Basque Country, UPV/EHU For more information: Universidad del País Vasco / Euskal Herriko

More information

How To Get A Computer Science Degree

How To Get A Computer Science Degree MAJOR: DEGREE: COMPUTER SCIENCE MASTER OF SCIENCE (M.S.) CONCENTRATIONS: HIGH-PERFORMANCE COMPUTING & BIOINFORMATICS CYBER-SECURITY & NETWORKING The Department of Computer Science offers a Master of Science

More information

Doctor of Philosophy in Computer Science

Doctor of Philosophy in Computer Science Doctor of Philosophy in Computer Science Background/Rationale The program aims to develop computer scientists who are armed with methods, tools and techniques from both theoretical and systems aspects

More information

An Introduction to Data Mining

An Introduction to Data Mining An Introduction to Intel Beijing wei.heng@intel.com January 17, 2014 Outline 1 DW Overview What is Notable Application of Conference, Software and Applications Major Process in 2 Major Tasks in Detail

More information

An Overview of Knowledge Discovery Database and Data mining Techniques

An Overview of Knowledge Discovery Database and Data mining Techniques An Overview of Knowledge Discovery Database and Data mining Techniques Priyadharsini.C 1, Dr. Antony Selvadoss Thanamani 2 M.Phil, Department of Computer Science, NGM College, Pollachi, Coimbatore, Tamilnadu,

More information

SYSTEMS, CONTROL AND MECHATRONICS

SYSTEMS, CONTROL AND MECHATRONICS 2015 Master s programme SYSTEMS, CONTROL AND MECHATRONICS INTRODUCTION Technical, be they small consumer or medical devices or large production processes, increasingly employ electronics and computers

More information

Machine Learning with MATLAB David Willingham Application Engineer

Machine Learning with MATLAB David Willingham Application Engineer Machine Learning with MATLAB David Willingham Application Engineer 2014 The MathWorks, Inc. 1 Goals Overview of machine learning Machine learning models & techniques available in MATLAB Streamlining the

More information

PSG College of Technology, Coimbatore-641 004 Department of Computer & Information Sciences BSc (CT) G1 & G2 Sixth Semester PROJECT DETAILS.

PSG College of Technology, Coimbatore-641 004 Department of Computer & Information Sciences BSc (CT) G1 & G2 Sixth Semester PROJECT DETAILS. PSG College of Technology, Coimbatore-641 004 Department of Computer & Information Sciences BSc (CT) G1 & G2 Sixth Semester PROJECT DETAILS Project Project Title Area of Abstract No Specialization 1. Software

More information

Master of Science in Computer Science

Master of Science in Computer Science Master of Science in Computer Science Background/Rationale The MSCS program aims to provide both breadth and depth of knowledge in the concepts and techniques related to the theory, design, implementation,

More information

REGULATIONS FOR THE DEGREE OF MASTER OF SCIENCE IN COMPUTER SCIENCE (MSc[CompSc])

REGULATIONS FOR THE DEGREE OF MASTER OF SCIENCE IN COMPUTER SCIENCE (MSc[CompSc]) 244 REGULATIONS FOR THE DEGREE OF MASTER OF SCIENCE IN COMPUTER SCIENCE (MSc[CompSc]) (See also General Regulations) Any publication based on work approved for a higher degree should contain a reference

More information

REGULATIONS FOR THE DEGREE OF MASTER OF SCIENCE IN COMPUTER SCIENCE (MSc[CompSc])

REGULATIONS FOR THE DEGREE OF MASTER OF SCIENCE IN COMPUTER SCIENCE (MSc[CompSc]) 305 REGULATIONS FOR THE DEGREE OF MASTER OF SCIENCE IN COMPUTER SCIENCE (MSc[CompSc]) (See also General Regulations) Any publication based on work approved for a higher degree should contain a reference

More information

Deep Learning Meets Heterogeneous Computing. Dr. Ren Wu Distinguished Scientist, IDL, Baidu wuren@baidu.com

Deep Learning Meets Heterogeneous Computing. Dr. Ren Wu Distinguished Scientist, IDL, Baidu wuren@baidu.com Deep Learning Meets Heterogeneous Computing Dr. Ren Wu Distinguished Scientist, IDL, Baidu wuren@baidu.com Baidu Everyday 5b+ queries 500m+ users 100m+ mobile users 100m+ photos Big Data Storage Processing

More information

Electrical and Computer Engineering (ECE)

Electrical and Computer Engineering (ECE) Department of Electrical and Computer Engineering Contact Information College of Engineering and Applied Sciences B-236 Parkview Campus 1903 West Michigan, Kalamazoo, MI 49008 Phone: 269 276 3150 Fax:

More information

Artificial Intelligence and Robotics @ Politecnico di Milano. Presented by Matteo Matteucci

Artificial Intelligence and Robotics @ Politecnico di Milano. Presented by Matteo Matteucci 1 Artificial Intelligence and Robotics @ Politecnico di Milano Presented by Matteo Matteucci What is Artificial Intelligence «The field of theory & development of computer systems able to perform tasks

More information

An Introduction to Data Mining. Big Data World. Related Fields and Disciplines. What is Data Mining? 2/12/2015

An Introduction to Data Mining. Big Data World. Related Fields and Disciplines. What is Data Mining? 2/12/2015 An Introduction to Data Mining for Wind Power Management Spring 2015 Big Data World Every minute: Google receives over 4 million search queries Facebook users share almost 2.5 million pieces of content

More information

TDWI Best Practice BI & DW Predictive Analytics & Data Mining

TDWI Best Practice BI & DW Predictive Analytics & Data Mining TDWI Best Practice BI & DW Predictive Analytics & Data Mining Course Length : 9am to 5pm, 2 consecutive days 2012 Dates : Sydney: July 30 & 31 Melbourne: August 2 & 3 Canberra: August 6 & 7 Venue & Cost

More information

Abdullah Mohammed Abdullah Khamis

Abdullah Mohammed Abdullah Khamis Abdullah Mohammed Abdullah Khamis Jeddah, Saudi Arabia Email: Abdullahkhamis@gmail.com Mobile: +966 567243182 Tel: +966 2 6340699 (Yemeni) Research and Professional Objective To Complete my Ph.D. in Pattern

More information

The Department of Electrical and Computer Engineering (ECE) offers the following graduate degree programs:

The Department of Electrical and Computer Engineering (ECE) offers the following graduate degree programs: Note that these pages are extracted from the full Graduate Catalog, please refer to it for complete details. College of 1 ELECTRICAL AND COMPUTER ENGINEERING www.ece.neu.edu SHEILA S. HEMAMI, PHD Professor

More information

Your wisdom, our commitment. Department of Agro-Industrial Technology. Faculty of Agro-Industry, Kasetsart University.

Your wisdom, our commitment. Department of Agro-Industrial Technology. Faculty of Agro-Industry, Kasetsart University. Your wisdom, our commitment Department of Agro-Industrial Technology Faculty of Agro-Industry, Kasetsart University Bangkok, Thailand 50 Ngamwongwan Rd., Lad Yao, Chatuchak, Bangkok 10900 THAILAND Tel:

More information

Applications of Deep Learning to the GEOINT mission. June 2015

Applications of Deep Learning to the GEOINT mission. June 2015 Applications of Deep Learning to the GEOINT mission June 2015 Overview Motivation Deep Learning Recap GEOINT applications: Imagery exploitation OSINT exploitation Geospatial and activity based analytics

More information

The forum will be open to academics, researchers, and industry professionals from the fast growing ICT sectors in the UAE and the region.

The forum will be open to academics, researchers, and industry professionals from the fast growing ICT sectors in the UAE and the region. ICTRF2014 SYNOPSIS The UAE Forum on Information and Communication Technology Research 2014 (ICTRF2014) is organized by Khalifa University of Science, Technology and Research (KUSTAR), and co-organized

More information

International Graduate Degree Program in EECS on Communications, Control, and Signal Processing

International Graduate Degree Program in EECS on Communications, Control, and Signal Processing College of Electrical Engineering and Computer Science, National Taipei University of Technology (Academic Year 2009~2010) International Graduate Degree Program in EECS on Communications, Control, and

More information

SECOND YEAR. Major Subject 3 Thesis (EE 300) 3 Thesis (EE 300) 3 TOTAL 3 TOTAL 6. MASTER OF ENGINEERING IN ELECTRICAL ENGINEERING (MEng EE) FIRST YEAR

SECOND YEAR. Major Subject 3 Thesis (EE 300) 3 Thesis (EE 300) 3 TOTAL 3 TOTAL 6. MASTER OF ENGINEERING IN ELECTRICAL ENGINEERING (MEng EE) FIRST YEAR MASTER OF SCIENCE IN ELECTRICAL ENGINEERING (MS EE) FIRST YEAR Elective 3 Elective 3 Elective 3 Seminar Course (EE 296) 1 TOTAL 12 TOTAL 10 SECOND YEAR Major Subject 3 Thesis (EE 300) 3 Thesis (EE 300)

More information

Learning outcomes. Knowledge and understanding. Competence and skills

Learning outcomes. Knowledge and understanding. Competence and skills Syllabus Master s Programme in Statistics and Data Mining 120 ECTS Credits Aim The rapid growth of databases provides scientists and business people with vast new resources. This programme meets the challenges

More information

Sanjeev Kumar. contribute

Sanjeev Kumar. contribute RESEARCH ISSUES IN DATAA MINING Sanjeev Kumar I.A.S.R.I., Library Avenue, Pusa, New Delhi-110012 sanjeevk@iasri.res.in 1. Introduction The field of data mining and knowledgee discovery is emerging as a

More information

An Introduction to Health Informatics for a Global Information Based Society

An Introduction to Health Informatics for a Global Information Based Society An Introduction to Health Informatics for a Global Information Based Society A Course proposal for 2010 Healthcare Industry Skills Innovation Award Sponsored by the IBM Academic Initiative submitted by

More information

IEEE International Conference on Computing, Analytics and Security Trends CAST-2016 (19 21 December, 2016) Call for Paper

IEEE International Conference on Computing, Analytics and Security Trends CAST-2016 (19 21 December, 2016) Call for Paper IEEE International Conference on Computing, Analytics and Security Trends CAST-2016 (19 21 December, 2016) Call for Paper CAST-2015 provides an opportunity for researchers, academicians, scientists and

More information

Doctor of Philosophy in Informatics

Doctor of Philosophy in Informatics Doctor of Philosophy in Informatics 2014 Handbook Indiana University established the School of Informatics and Computing as a place where innovative multidisciplinary programs could thrive, a program where

More information

Curriculum of the research and teaching activities. Matteo Golfarelli

Curriculum of the research and teaching activities. Matteo Golfarelli Curriculum of the research and teaching activities Matteo Golfarelli The curriculum is organized in the following sections I Curriculum Vitae... page 1 II Teaching activity... page 2 II.A. University courses...

More information

Bringing Big Data Modelling into the Hands of Domain Experts

Bringing Big Data Modelling into the Hands of Domain Experts Bringing Big Data Modelling into the Hands of Domain Experts David Willingham Senior Application Engineer MathWorks david.willingham@mathworks.com.au 2015 The MathWorks, Inc. 1 Data is the sword of the

More information

Health Informatics and Artificial Intelligence: the next big thing in health/aged care

Health Informatics and Artificial Intelligence: the next big thing in health/aged care Health Informatics and Artificial Intelligence: the next big thing in health/aged care Professor Michael Blumenstein Griffith University ACSA National Conference, Adelaide Tuesday, September 9 th 2014

More information

DATA MINING TECHNIQUES AND APPLICATIONS

DATA MINING TECHNIQUES AND APPLICATIONS DATA MINING TECHNIQUES AND APPLICATIONS Mrs. Bharati M. Ramageri, Lecturer Modern Institute of Information Technology and Research, Department of Computer Application, Yamunanagar, Nigdi Pune, Maharashtra,

More information

LONG BEACH CITY COLLEGE MEMORANDUM

LONG BEACH CITY COLLEGE MEMORANDUM LONG BEACH CITY COLLEGE MEMORANDUM DATE: May 5, 2000 TO: Academic Senate Equivalency Committee FROM: John Hugunin Department Head for CBIS SUBJECT: Equivalency statement for Computer Science Instructor

More information

COMPUTATIONIMPROVEMENTOFSTOCKMARKETDECISIONMAKING MODELTHROUGHTHEAPPLICATIONOFGRID. Jovita Nenortaitė

COMPUTATIONIMPROVEMENTOFSTOCKMARKETDECISIONMAKING MODELTHROUGHTHEAPPLICATIONOFGRID. Jovita Nenortaitė ISSN 1392 124X INFORMATION TECHNOLOGY AND CONTROL, 2005, Vol.34, No.3 COMPUTATIONIMPROVEMENTOFSTOCKMARKETDECISIONMAKING MODELTHROUGHTHEAPPLICATIONOFGRID Jovita Nenortaitė InformaticsDepartment,VilniusUniversityKaunasFacultyofHumanities

More information

Big Data: Image & Video Analytics

Big Data: Image & Video Analytics Big Data: Image & Video Analytics How it could support Archiving & Indexing & Searching Dieter Haas, IBM Deutschland GmbH The Big Data Wave 60% of internet traffic is multimedia content (images and videos)

More information

Detection. Perspective. Network Anomaly. Bhattacharyya. Jugal. A Machine Learning »C) Dhruba Kumar. Kumar KaKta. CRC Press J Taylor & Francis Croup

Detection. Perspective. Network Anomaly. Bhattacharyya. Jugal. A Machine Learning »C) Dhruba Kumar. Kumar KaKta. CRC Press J Taylor & Francis Croup Network Anomaly Detection A Machine Learning Perspective Dhruba Kumar Bhattacharyya Jugal Kumar KaKta»C) CRC Press J Taylor & Francis Croup Boca Raton London New York CRC Press is an imprint of the Taylor

More information

COURSE RECOMMENDER SYSTEM IN E-LEARNING

COURSE RECOMMENDER SYSTEM IN E-LEARNING International Journal of Computer Science and Communication Vol. 3, No. 1, January-June 2012, pp. 159-164 COURSE RECOMMENDER SYSTEM IN E-LEARNING Sunita B Aher 1, Lobo L.M.R.J. 2 1 M.E. (CSE)-II, Walchand

More information

Speaker: Prof. Mubarak Shah, University of Central Florida. Title: Representing Human Actions as Motion Patterns

Speaker: Prof. Mubarak Shah, University of Central Florida. Title: Representing Human Actions as Motion Patterns Speaker: Prof. Mubarak Shah, University of Central Florida Title: Representing Human Actions as Motion Patterns Abstract: Automatic analysis of videos is one of most challenging problems in Computer vision.

More information

Draft dpt for MEng Electronics and Computer Science

Draft dpt for MEng Electronics and Computer Science Draft dpt for MEng Electronics and Computer Science Year 1 INFR08012 Informatics 1 - Computation and Logic INFR08013 Informatics 1 - Functional Programming INFR08014 Informatics 1 - Object- Oriented Programming

More information

IT services for analyses of various data samples

IT services for analyses of various data samples IT services for analyses of various data samples Ján Paralič, František Babič, Martin Sarnovský, Peter Butka, Cecília Havrilová, Miroslava Muchová, Michal Puheim, Martin Mikula, Gabriel Tutoky Technical

More information

REGULATIONS FOR THE DEGREE OF MASTER OF SCIENCE IN COMPUTER SCIENCE (MSc[CompSc])

REGULATIONS FOR THE DEGREE OF MASTER OF SCIENCE IN COMPUTER SCIENCE (MSc[CompSc]) 299 REGULATIONS FOR THE DEGREE OF MASTER OF SCIENCE IN COMPUTER SCIENCE (MSc[CompSc]) (See also General Regulations) Any publication based on work approved for a higher degree should contain a reference

More information

Big-Data Computing with Smart Clouds and IoT Sensing

Big-Data Computing with Smart Clouds and IoT Sensing A New Book from Wiley Publisher to appear in late 2016 or early 2017 Big-Data Computing with Smart Clouds and IoT Sensing Kai Hwang, University of Southern California, USA Min Chen, Huazhong University

More information

A Study of Web Log Analysis Using Clustering Techniques

A Study of Web Log Analysis Using Clustering Techniques A Study of Web Log Analysis Using Clustering Techniques Hemanshu Rana 1, Mayank Patel 2 Assistant Professor, Dept of CSE, M.G Institute of Technical Education, Gujarat India 1 Assistant Professor, Dept

More information

Research-based Learning (RbL) in Computing Courses for Senior Engineering Students

Research-based Learning (RbL) in Computing Courses for Senior Engineering Students Research-based Learning (RbL) in Computing Courses for Senior Engineering Students Khaled Bashir Shaban, and Mahmoud Abdulwahed Computer Science and Engineering Department; and CRU, Dean s Office Best

More information

Data Analytics at NICTA. Stephen Hardy National ICT Australia (NICTA) shardy@nicta.com.au

Data Analytics at NICTA. Stephen Hardy National ICT Australia (NICTA) shardy@nicta.com.au Data Analytics at NICTA Stephen Hardy National ICT Australia (NICTA) shardy@nicta.com.au NICTA Copyright 2013 Outline Big data = science! Data analytics at NICTA Discrete Finite Infinite Machine Learning

More information

Articles IEEE have removed from their database

Articles IEEE have removed from their database Articles IEEE have removed from their database Application of Game-Theoretic and Virtual Algorithms in Information Retrieval System 2008 International Conference on MultiMedia and Information Technology

More information

Information Management course

Information Management course Università degli Studi di Milano Master Degree in Computer Science Information Management course Teacher: Alberto Ceselli Lecture 01 : 06/10/2015 Practical informations: Teacher: Alberto Ceselli (alberto.ceselli@unimi.it)

More information

Predictive Analytics Techniques: What to Use For Your Big Data. March 26, 2014 Fern Halper, PhD

Predictive Analytics Techniques: What to Use For Your Big Data. March 26, 2014 Fern Halper, PhD Predictive Analytics Techniques: What to Use For Your Big Data March 26, 2014 Fern Halper, PhD Presenter Proven Performance Since 1995 TDWI helps business and IT professionals gain insight about data warehousing,

More information

Master's Degree Program in Computer Science

Master's Degree Program in Computer Science Master's Degree Program in Computer Science 1. Curriculum Title Master of Science (Computer Science) M.Sc. (Computer Science) 2. Degree Title Master of Science (Computer Science) M.Sc. (Computer Science)

More information

COURSE CATALOGUE 2013-2014

COURSE CATALOGUE 2013-2014 COURSE CATALOGUE 201-201 Field: COMPUTER SCIENCE Programme: Bachelor s Degree Programme in Computer Science (Informatics) Length of studies: years (6 semesters) Number of ECTS Credits: 180 +0 for the B.Sc.

More information

WebFOCUS RStat. RStat. Predict the Future and Make Effective Decisions Today. WebFOCUS RStat

WebFOCUS RStat. RStat. Predict the Future and Make Effective Decisions Today. WebFOCUS RStat Information Builders enables agile information solutions with business intelligence (BI) and integration technologies. WebFOCUS the most widely utilized business intelligence platform connects to any enterprise

More information

GYAN VIHAR SCHOOL OF ENGINEERING & TECHNOLOGY M. TECH. CSE (2 YEARS PROGRAM)

GYAN VIHAR SCHOOL OF ENGINEERING & TECHNOLOGY M. TECH. CSE (2 YEARS PROGRAM) GYAN VIHAR SCHOOL OF ENGINEERING & TECHNOLOGY M. TECH. CSE (2 YEARS PROGRAM) Need, objectives and main features of the Match. (CSE) Curriculum The main objective of the program is to develop manpower for

More information

The Scientific Data Mining Process

The Scientific Data Mining Process Chapter 4 The Scientific Data Mining Process When I use a word, Humpty Dumpty said, in rather a scornful tone, it means just what I choose it to mean neither more nor less. Lewis Carroll [87, p. 214] In

More information

Reconfigurable Architecture Requirements for Co-Designed Virtual Machines

Reconfigurable Architecture Requirements for Co-Designed Virtual Machines Reconfigurable Architecture Requirements for Co-Designed Virtual Machines Kenneth B. Kent University of New Brunswick Faculty of Computer Science Fredericton, New Brunswick, Canada ken@unb.ca Micaela Serra

More information

Masters in Human Computer Interaction

Masters in Human Computer Interaction Masters in Human Computer Interaction Programme Requirements Taught Element, and PG Diploma in Human Computer Interaction: 120 credits: IS5101 CS5001 CS5040 CS5041 CS5042 or CS5044 up to 30 credits from

More information

Statistics for BIG data

Statistics for BIG data Statistics for BIG data Statistics for Big Data: Are Statisticians Ready? Dennis Lin Department of Statistics The Pennsylvania State University John Jordan and Dennis K.J. Lin (ICSA-Bulletine 2014) Before

More information

Title ISSN SJR H index Country Foundations and Trends in Information 1554 1 Retrieval

Title ISSN SJR H index Country Foundations and Trends in Information 1554 1 Retrieval Title ISSN SJR H index Country Foundations and Trends in Information 1554 1 Retrieval 0677 Q1 6,536 12 United States 2 Swarm and Evolutionary Computation 2210 6502 Q1 3,364 8 Netherlands 3 IEEE Transactions

More information

Masters in Advanced Computer Science

Masters in Advanced Computer Science Masters in Advanced Computer Science Programme Requirements Taught Element, and PG Diploma in Advanced Computer Science: 120 credits: IS5101 CS5001 up to 30 credits from CS4100 - CS4450, subject to appropriate

More information

Winter 2016 Course Timetable. Legend: TIME: M = Monday T = Tuesday W = Wednesday R = Thursday F = Friday BREATH: M = Methodology: RA = Research Area

Winter 2016 Course Timetable. Legend: TIME: M = Monday T = Tuesday W = Wednesday R = Thursday F = Friday BREATH: M = Methodology: RA = Research Area Winter 2016 Course Timetable Legend: TIME: M = Monday T = Tuesday W = Wednesday R = Thursday F = Friday BREATH: M = Methodology: RA = Research Area Please note: Times listed in parentheses refer to the

More information

Masters in Artificial Intelligence

Masters in Artificial Intelligence Masters in Artificial Intelligence Programme Requirements Taught Element, and PG Diploma in Artificial Intelligence: 120 credits: IS5101 CS5001 CS5010 CS5011 CS4402 or CS5012 in total, up to 30 credits

More information

Analecta Vol. 8, No. 2 ISSN 2064-7964

Analecta Vol. 8, No. 2 ISSN 2064-7964 EXPERIMENTAL APPLICATIONS OF ARTIFICIAL NEURAL NETWORKS IN ENGINEERING PROCESSING SYSTEM S. Dadvandipour Institute of Information Engineering, University of Miskolc, Egyetemváros, 3515, Miskolc, Hungary,

More information

Smart City Australia

Smart City Australia Smart City Australia Slaven Marusic Department of Electrical and Electronic Engineering The University of Melbourne, Australia ARC Research Network on Intelligent Sensors, Sensor Networks and Information

More information

APPM4720/5720: Fast algorithms for big data. Gunnar Martinsson The University of Colorado at Boulder

APPM4720/5720: Fast algorithms for big data. Gunnar Martinsson The University of Colorado at Boulder APPM4720/5720: Fast algorithms for big data Gunnar Martinsson The University of Colorado at Boulder Course objectives: The purpose of this course is to teach efficient algorithms for processing very large

More information

School of Computer Science

School of Computer Science School of Computer Science Computer Science - Honours Level - 2014/15 October 2014 General degree students wishing to enter 3000- level modules and non- graduating students wishing to enter 3000- level

More information

Big Data. Patrick Derde. Use Cases and Architecture

Big Data. Patrick Derde. Use Cases and Architecture Big Data Patrick Derde Use Cases and Architecture Patrick Derde Contact information: Email: p.derde@bizzdesign.com patrick.derde@envizion.eu Mobile: +32 (0)497 302387 Web: www.bizzdesign.com www.envizion.eu

More information

Context Aware Predictive Analytics: Motivation, Potential, Challenges

Context Aware Predictive Analytics: Motivation, Potential, Challenges Context Aware Predictive Analytics: Motivation, Potential, Challenges Mykola Pechenizkiy Seminar 31 October 2011 University of Bournemouth, England http://www.win.tue.nl/~mpechen/projects/capa Outline

More information

Poznan University of Technology Faculty of Electrical Engineering

Poznan University of Technology Faculty of Electrical Engineering Poznan University of Technology Faculty of Electrical Engineering Contact Person: Pawel Kolwicz Vice-Dean Faculty of Electrical Engineering pawel.kolwicz@put.poznan.pl List of Modules Academic Year: 2015/16

More information

How To Filter Spam Image From A Picture By Color Or Color

How To Filter Spam Image From A Picture By Color Or Color Image Content-Based Email Spam Image Filtering Jianyi Wang and Kazuki Katagishi Abstract With the population of Internet around the world, email has become one of the main methods of communication among

More information

Computer Science. Master of Science

Computer Science. Master of Science Computer Science Master of Science The Master of Science in Computer Science program at UALR reflects current trends in the computer science discipline and provides students with a solid theoretical and

More information

A STUDY ON DATA MINING INVESTIGATING ITS METHODS, APPROACHES AND APPLICATIONS

A STUDY ON DATA MINING INVESTIGATING ITS METHODS, APPROACHES AND APPLICATIONS A STUDY ON DATA MINING INVESTIGATING ITS METHODS, APPROACHES AND APPLICATIONS Mrs. Jyoti Nawade 1, Dr. Balaji D 2, Mr. Pravin Nawade 3 1 Lecturer, JSPM S Bhivrabai Sawant Polytechnic, Pune (India) 2 Assistant

More information

How To Get A Computer Engineering Degree

How To Get A Computer Engineering Degree COMPUTER ENGINEERING GRADUTE PROGRAM FOR MASTER S DEGREE (With Thesis) PREPARATORY PROGRAM* COME 27 Advanced Object Oriented Programming 5 COME 21 Data Structures and Algorithms COME 22 COME 1 COME 1 COME

More information

Information and Decision Sciences (IDS)

Information and Decision Sciences (IDS) University of Illinois at Chicago 1 Information and Decision Sciences (IDS) Courses IDS 400. Advanced Business Programming Using Java. 0-4 Visual extended business language capabilities, including creating

More information

Applying Deep Learning to Car Data Logging (CDL) and Driver Assessor (DA) October 22-Oct-15

Applying Deep Learning to Car Data Logging (CDL) and Driver Assessor (DA) October 22-Oct-15 Applying Deep Learning to Car Data Logging (CDL) and Driver Assessor (DA) October 22-Oct-15 GENIVI is a registered trademark of the GENIVI Alliance in the USA and other countries Copyright GENIVI Alliance

More information

Depth and Excluded Courses

Depth and Excluded Courses Depth and Excluded Courses Depth Courses for Communication, Control, and Signal Processing EECE 5576 Wireless Communication Systems 4 SH EECE 5580 Classical Control Systems 4 SH EECE 5610 Digital Control

More information

Dr Christos Anagnostopoulos. 1. Education. 2. Present employment. 3. Previous Appointments. Page 1 of 6

Dr Christos Anagnostopoulos. 1. Education. 2. Present employment. 3. Previous Appointments. Page 1 of 6 Dr Christos Anagnostopoulos 1. Education Ph.D. in Computer Science Department of Informatics & Telecommunications, National and Kapodistrian University of Athens, July 2008 Dissertation: Pervasive and

More information

SYLLABUSES FOR THE DEGREE OF MASTER OF SCIENCE IN COMPUTER SCIENCE (applicable to students admitted in the academic year 2015-2016 and thereafter)

SYLLABUSES FOR THE DEGREE OF MASTER OF SCIENCE IN COMPUTER SCIENCE (applicable to students admitted in the academic year 2015-2016 and thereafter) MSc(CompSc)-1 (SUBJECT TO UNIVERSITY S APPROVAL) SYLLABUSES FOR THE DEGREE OF MASTER OF SCIENCE IN COMPUTER SCIENCE (applicable to students admitted in the academic year 2015-2016 and thereafter) The curriculum

More information

IEEE Projects in Embedded Sys VLSI DSP DIP Inst MATLAB Electrical Android

IEEE Projects in Embedded Sys VLSI DSP DIP Inst MATLAB Electrical Android About Us : We at Ensemble specialize in electronic design and manufacturing services for various industrial segments. We also offer student project guidance and training for final year projects in departments

More information

Professor, D.Sc. (Tech.) Eugene Kovshov MSTU «STANKIN», Moscow, Russia

Professor, D.Sc. (Tech.) Eugene Kovshov MSTU «STANKIN», Moscow, Russia Professor, D.Sc. (Tech.) Eugene Kovshov MSTU «STANKIN», Moscow, Russia As of today, the issue of Big Data processing is still of high importance. Data flow is increasingly growing. Processing methods

More information

MACHINE LEARNING BASICS WITH R

MACHINE LEARNING BASICS WITH R MACHINE LEARNING [Hands-on Introduction of Supervised Machine Learning Methods] DURATION 2 DAY The field of machine learning is concerned with the question of how to construct computer programs that automatically

More information

Analysis Tools and Libraries for BigData

Analysis Tools and Libraries for BigData + Analysis Tools and Libraries for BigData Lecture 02 Abhijit Bendale + Office Hours 2 n Terry Boult (Waiting to Confirm) n Abhijit Bendale (Tue 2:45 to 4:45 pm). Best if you email me in advance, but I

More information

Efficient Data Replication Scheme based on Hadoop Distributed File System

Efficient Data Replication Scheme based on Hadoop Distributed File System , pp. 177-186 http://dx.doi.org/10.14257/ijseia.2015.9.12.16 Efficient Data Replication Scheme based on Hadoop Distributed File System Jungha Lee 1, Jaehwa Chung 2 and Daewon Lee 3* 1 Division of Supercomputing,

More information

Hybrid Lossless Compression Method For Binary Images

Hybrid Lossless Compression Method For Binary Images M.F. TALU AND İ. TÜRKOĞLU/ IU-JEEE Vol. 11(2), (2011), 1399-1405 Hybrid Lossless Compression Method For Binary Images M. Fatih TALU, İbrahim TÜRKOĞLU Inonu University, Dept. of Computer Engineering, Engineering

More information

Neural Networks in Data Mining

Neural Networks in Data Mining IOSR Journal of Engineering (IOSRJEN) ISSN (e): 2250-3021, ISSN (p): 2278-8719 Vol. 04, Issue 03 (March. 2014), V6 PP 01-06 www.iosrjen.org Neural Networks in Data Mining Ripundeep Singh Gill, Ashima Department

More information

Computer Science and Informatics. Indiana University South Bend 1700 Mishawaka Ave. South Bend, IN 46615

Computer Science and Informatics. Indiana University South Bend 1700 Mishawaka Ave. South Bend, IN 46615 Computer Science and Informatics Indiana University South Bend 1700 Mishawaka Ave. South Bend, IN 46615 info@cs.iusb.edu www.cs.iusb.edu www.informatics.iusb.edu Phone: 574.520.5521 The Department The

More information

Modeling and Design of Intelligent Agent System

Modeling and Design of Intelligent Agent System International Journal of Control, Automation, and Systems Vol. 1, No. 2, June 2003 257 Modeling and Design of Intelligent Agent System Dae Su Kim, Chang Suk Kim, and Kee Wook Rim Abstract: In this study,

More information

Distributed Database for Environmental Data Integration

Distributed Database for Environmental Data Integration Distributed Database for Environmental Data Integration A. Amato', V. Di Lecce2, and V. Piuri 3 II Engineering Faculty of Politecnico di Bari - Italy 2 DIASS, Politecnico di Bari, Italy 3Dept Information

More information

UF EDGE brings the classroom to you with online, worldwide course delivery!

UF EDGE brings the classroom to you with online, worldwide course delivery! What is the University of Florida EDGE Program? EDGE enables engineering professional, military members, and students worldwide to participate in courses, certificates, and degree programs from the UF

More information

Course Syllabus For Operations Management. Management Information Systems

Course Syllabus For Operations Management. Management Information Systems For Operations Management and Management Information Systems Department School Year First Year First Year First Year Second year Second year Second year Third year Third year Third year Third year Third

More information