Wednesday, September 23

Size: px
Start display at page:

Download "Wednesday, September 23"

Transcription

1 Wednesday, September Registration Welcome and Opening Remarks Prof Ali Doğramacı (Bilkent University) ISCIS History and Erol Gelenbe s contributions Prof M. Ufuk Çağlayan (Boğaziçi University) Coffee Break Keynotes I Chair: Prof Ali Doğramacı (Bilkent University) Models and methods for reducing the latency in parallel sparse iterative solvers and sparse matrix kernel Prof Cevdet Aykanat (Bilkent University) Software engineering in the systems context Prof (Emeritus) Harold Bud Lawson (IEEE Computer Pioneer Award) Green computing Prof Sartaj Sahni (University of Florida) Keynotes II Chair: Prof M. Ufuk Çağlayan (Boğaziçi University) Interoperability: the semantic Web and open linked data Prof (Emeritus) Erich Neuhold (University of Vienna) Advances in kernel- based multi- task learning Prof Michael Georgiopoulos (University of Central Florida) Lunch Break 1/6

2 Wednesday, September 23 (continued) Coffee Break Keynotes III Chair: Prof Erol Gelenbe, Imperial College Understanding life: a bioinformatics point of view Prof Jacek Blazewicz (Fellow of the Polish Academy of Sciences, Poznan University of Technology) Discrete and hybrid modelling of gene networks: the example of the circadian rhythm Prof Gilles Bernot (Université de Nice) Data- driven model estimation in network systems from observed equilibria Prof Ioannis Paschalidis (Boston University) Keynotes IV Chair: Prof Michael Georgiopoulos (Dean of Engineering, University of Central Florida) Entropy estimation from multivariate data: robust assessment of structural complexity Prof Danilo Mandic (Imperial College Flattening the tail of response times by using replicas Prof Peter Harrison (Imperial College Performance evaluation of... a laser Dr Alain Jean- Marie (INRIA) Age of information: controlling the freshness of status updates under energy constraints Prof Elif Uysal- Biyikoglu (Middle East Technical University) ISCIS Reception, Garden Room, Rector's House, 170 Queen's Gate 2/6

3 Thursday, September Registration Invited Papers: Machine Learning and Neural Networks I Chair: Prof Erol Gelenbe (Imperial College Machine learning approaches for predicting stationary time series Prof Laszlo Gyorfi (Fellow of the Hungarian Academy of Sciences) Green Computing and Networking Chair: Prof Dimitrios Tzovaras (Center for Research and Technology, Hellas Information Technologies Institute) Performance of an autonomous energy harvesting wireless sensor Erol Gelenbe and Yasin Murat Kadioglu Modeling and simulation of large neuronal ensembles Dr Dan Goodman (Imperial College Towards assessment of energy consumption and latency of LTE UEs during signaling storms Frederic Francois, Omer H. Abdelrahman and Erol Gelenbe Coffee Break Online learning methods in adaptive communication Dr Andras Gyorgy (University of Alberta) Brain- computer interfaces for silent speech Prof Ugur Halici (Middle East Technical University) Invited Papers: Machine Learning and Neural Networks II Chair: Prof Nihal Pekergin (Univ. Paris- Est) On- road vehicle classification based on random neural network and bag- of- visual words Dr Khaled Hussain (Assiut University) Distributed algorithms in intelligent transportation systems Dr Stelios Timotheou (University of Cyprus) A multimedia information system for video content extraction Prof Adnan Yazici (Middle East Technical University) A state- dependent control for green computing Evsey Morozov and Alexander Rumyantsev Environment friendly energy efficient distributed data centers Ahsan Ali and Oznur Ozkasap Modeling power consumption in multicore CPUs with multithreading and frequency scaling Davide Cerotti, Marco Gribaudo, Pietro Piazzolla, Riccardo Pinciroli and Giuseppe Serazzi Network Security I Chair: Prof Albert Levi (Sabancı University) Smart mobile ecosystem security: existing solutions, MNO requirements and business model George Lyberopoulos, Helen Theodoropoulou, Konstantinos Filis and Ioanna Mesogiti A role and activity based access control for secure healthcare systems Naim Alperen Pulur, Duygu Karaoglan Altop and Albert Levi LBP- DCT based copy move forgery detection algorithm Beste Ustubioglu, Guzin Ulutas, Mustafa Ulutas, Nabiyev Vasif and Arda Ustubİoglu Lunch Break 3/6

4 Thursday, September 24 (continued) Coffee Break Invited Papers: System and Network Performance Chair: Prof Uğur Halıcı (Middle East Technical University) Diffusion of opinion in social networks: structure, dynamics and games Dr Moez Draief (Huawei Paris Research Lab and Imperial College Macroscopic analysis of huge traces of parallel/distributed applications Dr Jean- Marc Vincent (University of Grenoble) Finite two- layered queueing systems Dr Efrat Perel and Prof Uri Yechiali (Tel Aviv University) Smart Algorithms I Chair: Prof Adnan Yazıcı (Middle East Technical University) A hybrid movie recommender using dynamic fuzzy clustering Fatih Gurcan and Aysenur Birturk Generating minimum height ADSs for partially specified finite state machines Uraz Cengiz Turker and Robert Hierons Line- search aided non- negative least- square learning for random neural network Yonghua Yin Smart Algorithms II Chair: Prof Nihal Pekergin (Universite Paris- Est) A novel concise specification and efficient F- logic based matching of semantic Web services in Flora- 2 Shahin Mehdipour Ataee and Zeki Bayram Fast frequent episode mining based on finite- state machines Stavros Papadopoulos, Anastasios Drosou and Dimitrios Tzovaras Hybrid heuristic algorithms for the multi- objective load balancing of 2D bin packing problems Muhammet Beyaz, Tansel Dokeroglu and Ahmet Cosar Network Security II Chair: Prof Jean- Michel Fourneau (University of Versailles St Quentin) Bandwidth usage- based detection of signaling attacks Mihajlo Pavloski, Gokce Gorbil and Erol Gelenbe A BRPCA based approach for anomaly detection in mobile networks Stavros Papadopoulos, Anastasios Drosou, Nikos Dimitriou, Omer H. Abdelrahman, Gokce Gorbil and Dimitrios Tzovaras Undermining isolation through covert channels in the Fiasco.OC microkernel Jean- Pierre Seifert, Michael Peter, Matthias Petschick, Julian Vetter, Jan Nordholz and Janis Danisevskis Stochastic Modelling and Computer Networks I Chair: Dr Omer Abdelrahman (Imperial College Smoothing the input process in a batch queue Farah Ait Salaht, Hind Castel, Jean- Michel Fourneau, Thierry Mautor and Nihal Pekergin Network- based job dispatching in the Cloud Byungseok Kang Discrete time stochastic automata networks with product form steady- state solution Jean- Michel Fourneau Stochastic Modelling and Computer Networks II Chair: Dr Frederic Francois (Imperial College Modelling dynamics of TCP/IP flows in very large network topologies Monika Nycz, Tomasz Nycz and Tadeusz Czachorski Numerically efficient analysis of a one- dimensional stochastic lac operon model Neslihan Avcu, Nihal Pekergin, Ferhan Pekergin and Cuneyt Guzelis 4/6

5 Friday, September Registration Image Processing and Computer Vision Chair: Dr Ferhan Pekergin (Universite Paris- Nord) Brain MR image denoising for Rician noise using intrinsic geometrical information Hamit Soyel, Kamil Yurtkan, Hasan Demirel and Peter McOwan Image analysis in parameter- free setting Yu Zhu and Thomas Zeugmann Age estimation based on hybrid features of facial images Asuman Gunay and Vasif Nabiyev Algorithm Design for Biological and Chemical Systems Chair: Prof Erol Gelenbe (Imperial College Proposal of a new method for de novo DNA sequence assembly using de Bruijn graphs Adriano Donato Couto, Fabio Ribeiro Cerqueira, Ricardo Dos Santos Ferreira and Alcione de Paiva Oliveira Natural Language Processing and Language Design I Chair: Prof Tülin Atmaca (Telecom SudParis) Two- stage feature selection for text classification Levent Ozgur and Tunga Gungor Constructing a Turkish constituency parse tree- bank Olcay Taner Yildiz, Ercan Solak, Semsinur Candir, Razieh Ehsani and Onur Gorgun A TV content augmentation system exploiting rule based named entity recognition method Yunus Emre Isiklar and Nihan Cicekli A comparison study on ensemble strategies and feature sets for sentiment analysis Deniz Aldogan and Yusuf Yaslan Feature selection for enhanced author identification of Turkish text Yasemin Bay and Erbug Celebi Coffee Break A new graph algorithm for the analysis of conformational dynamics of molecules Dominique Barth, Sana Bougueroua, Marie- Pierre Gaigeot, Franck Quessette, Riccardo Spezia and Sandrine Vial 5/6

6 Friday, September 25 (continued) Wireless Networks Chair: Prof Tadeusz Czachorski (Institute of Theoretical and Applied Informatics) EASER: Energy aware scalable and reactive replication protocol for MANETs Saeed Nourizadeh Azar, Kaan Karaagacli and Oznur Ozkasap Fractional frequency reuse based adaptive power control scheme for interference mitigation in LTE- advanced cellular network with device- to- device communication Sok Chhorn, Si- O Seo, Ji- Eun Song, Suk- Ho Yoon, Seung- Yeon Kim and Choong- Ho Cho Natural Language Processing and Language Design II Chair: Dr Gökçe Görbil (Imperial College Noun phrase chunking for Turkish using a dependency parser Ilyas Cicekli and Mucahit Kutlu Enabling secure and collaborative document sharing in BIM processes Carlo Argiolas, Nicoletta Dessì, Mariagrazia Fugini and Barbara Pes Tactical graphics description language Ismail Kilinc, Huseyin Ates, Bulent Sabri Ozhorasan and Huseyin Korkmaz Influence of the management protocols on the LTE self- configuration procedures' performance Krzysztof Grochla and Mariusz Slabicki Subcarrier allocation based on graph colouring for LTE soft frequency reuse Krzysztof Grochla and Konrad Połys Closing Remarks 6/6

Author Index. Domańska, Adam, 137 Domańska, Joanna, 137 Draief, Moez, 357 Drosou, Anastasios, 193 Düzağaç, Remzi, 277

Author Index. Domańska, Adam, 137 Domańska, Joanna, 137 Draief, Moez, 357 Drosou, Anastasios, 193 Düzağaç, Remzi, 277 Author Index A Abul, Osman, 305 Akgul, Yusuf Sinan, 61 Aleçakır, Kemal, 259 Amar, Patrick, 387 Arifoğlu, Damla, 259 Domańska, Adam, 137 Domańska, Joanna, 137 Draief, Moez, 357 Drosou, Anastasios, 193 Düzağaç,

More information

A Novel Unsupervised Method for Securing BGP Against Routing Hijacks... 21 Georgios Theodoridis, Orestis Tsigkas and Dimitrios Tzovaras

A Novel Unsupervised Method for Securing BGP Against Routing Hijacks... 21 Georgios Theodoridis, Orestis Tsigkas and Dimitrios Tzovaras Contents Part I Smart Systems and Networks Finite-State Robots in the Land of Rationalia.... 3 Arnold L. Rosenberg Cognitive Packets in Large Virtual Networks... 13 Ricardo Lent and Erol Gelenbe A Novel

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

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

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

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

Turgut Ozal University. Computer Engineering Department. TR-06010 Ankara, Turkey

Turgut Ozal University. Computer Engineering Department. TR-06010 Ankara, Turkey Dr. YILDIRAY YALMAN Associate Professor CONTACT INFORMATION Turgut Ozal University Computer Engineering Department TR-06010 Ankara, Turkey Phone: +90 (0)312-5515437 E-mail: yyalman@turgutozal.edu.tr RESEARCH

More information

Parallel Data Selection Based on Neurodynamic Optimization in the Era of Big Data

Parallel Data Selection Based on Neurodynamic Optimization in the Era of Big Data Parallel Data Selection Based on Neurodynamic Optimization in the Era of Big Data Jun Wang Department of Mechanical and Automation Engineering The Chinese University of Hong Kong Shatin, New Territories,

More information

The 5G Infrastructure Public-Private Partnership

The 5G Infrastructure Public-Private Partnership The 5G Infrastructure Public-Private Partnership NetFutures 2015 5G PPP Vision 25/03/2015 19/06/2015 1 5G new service capabilities User experience continuity in challenging situations such as high mobility

More information

Towards Visualizing mobile network data

Towards Visualizing mobile network data Towards Visualizing mobile network data Stavros Papadopoulos and Dimitrios Tzovaras Abstract This paper presents the research directions that the visualization in the NEMESYS project will follow, so as

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

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

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

A Systemic Artificial Intelligence (AI) Approach to Difficult Text Analytics Tasks

A Systemic Artificial Intelligence (AI) Approach to Difficult Text Analytics Tasks A Systemic Artificial Intelligence (AI) Approach to Difficult Text Analytics Tasks Text Analytics World, Boston, 2013 Lars Hard, CTO Agenda Difficult text analytics tasks Feature extraction Bio-inspired

More information

HET-NETs 2010. Zakopane, Poland, January 14-16 th, 2010 CONFERENCE PROGRAMME

HET-NETs 2010. Zakopane, Poland, January 14-16 th, 2010 CONFERENCE PROGRAMME HET-NETs 2010 6 TH WORKING INTERNATIONAL CONFERENCE ON Performance Modelling and Evaluation of Heterogeneous Networks Zakopane, Poland, January 14-16 th, 2010 CONFERENCE PROGRAMME Thursday 14.01.2010 9.00

More information

MEng, BSc Applied Computer Science

MEng, BSc Applied Computer Science School of Computing FACULTY OF ENGINEERING MEng, BSc Applied Computer Science Year 1 COMP1212 Computer Processor Effective programming depends on understanding not only how to give a machine instructions

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

Computer Science MS Course Descriptions

Computer Science MS Course Descriptions Computer Science MS Course Descriptions CSc I0400: Operating Systems Underlying theoretical structure of operating systems; input-output and storage systems, data management and processing; assembly and

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

IC05 Introduction on Networks &Visualization Nov. 2009. <mathieu.bastian@gmail.com>

IC05 Introduction on Networks &Visualization Nov. 2009. <mathieu.bastian@gmail.com> IC05 Introduction on Networks &Visualization Nov. 2009 Overview 1. Networks Introduction Networks across disciplines Properties Models 2. Visualization InfoVis Data exploration

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

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

Introduction to Pattern Recognition

Introduction to Pattern Recognition Introduction to Pattern Recognition Selim Aksoy Department of Computer Engineering Bilkent University saksoy@cs.bilkent.edu.tr CS 551, Spring 2009 CS 551, Spring 2009 c 2009, Selim Aksoy (Bilkent University)

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

How To Protect Your Mobile From Attack From A Signalling Storm

How To Protect Your Mobile From Attack From A Signalling Storm ICL, TUB, CERTH, Telecom Italia IT, COSMOTE, HISPASEC Erol Gelenbe Fellow of the French National Academy of Engineering Dynamic Real-Time Security for Seamless Service Provisioning in the Mobile Ecosystem

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

IEEE 2015-2016 JAVA TITLES

IEEE 2015-2016 JAVA TITLES ECWAY ECHNOLGIES IEEE 2015-2016 JAVA TITLES BE, B.TECH, ME, M.TECH, MSC, MCA PROJECTS Abstract: Introduction: Literature Survey: System Analysis: Existing System: Disadvantages: Proposed System: Advantages:

More information

ANALYTICS IN BIG DATA ERA

ANALYTICS IN BIG DATA ERA ANALYTICS IN BIG DATA ERA ANALYTICS TECHNOLOGY AND ARCHITECTURE TO MANAGE VELOCITY AND VARIETY, DISCOVER RELATIONSHIPS AND CLASSIFY HUGE AMOUNT OF DATA MAURIZIO SALUSTI SAS Copyr i g ht 2012, SAS Ins titut

More information

MEng, BSc Computer Science with Artificial Intelligence

MEng, BSc Computer Science with Artificial Intelligence School of Computing FACULTY OF ENGINEERING MEng, BSc Computer Science with Artificial Intelligence Year 1 COMP1212 Computer Processor Effective programming depends on understanding not only how to give

More information

Masters in Networks and Distributed Systems

Masters in Networks and Distributed Systems Masters in Networks and Distributed Systems Programme Requirements Taught Element, and PG Diploma in Networks and Distributed Systems: 120 credits: IS5101 CS5001 CS5021 CS4103 or CS5023 in total, up to

More information

Network Machine Learning Research Group. Intended status: Informational October 19, 2015 Expires: April 21, 2016

Network Machine Learning Research Group. Intended status: Informational October 19, 2015 Expires: April 21, 2016 Network Machine Learning Research Group S. Jiang Internet-Draft Huawei Technologies Co., Ltd Intended status: Informational October 19, 2015 Expires: April 21, 2016 Abstract Network Machine Learning draft-jiang-nmlrg-network-machine-learning-00

More information

Masters in Computing and Information Technology

Masters in Computing and Information Technology Masters in Computing and Information Technology Programme Requirements Taught Element, and PG Diploma in Computing and Information Technology: 120 credits: IS5101 CS5001 or CS5002 CS5003 up to 30 credits

More information

D A T A M I N I N G C L A S S I F I C A T I O N

D A T A M I N I N G C L A S S I F I C A T I O N D A T A M I N I N G C L A S S I F I C A T I O N FABRICIO VOZNIKA LEO NARDO VIA NA INTRODUCTION Nowadays there is huge amount of data being collected and stored in databases everywhere across the globe.

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

MSCA 31000 Introduction to Statistical Concepts

MSCA 31000 Introduction to Statistical Concepts MSCA 31000 Introduction to Statistical Concepts This course provides general exposure to basic statistical concepts that are necessary for students to understand the content presented in more advanced

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

A Partially Supervised Metric Multidimensional Scaling Algorithm for Textual Data Visualization

A Partially Supervised Metric Multidimensional Scaling Algorithm for Textual Data Visualization A Partially Supervised Metric Multidimensional Scaling Algorithm for Textual Data Visualization Ángela Blanco Universidad Pontificia de Salamanca ablancogo@upsa.es Spain Manuel Martín-Merino Universidad

More information

SICSA SDN Workshop Event Report

SICSA SDN Workshop Event Report SICSA SDN Workshop Event Report Summary: 1. The workshop was held successfully on 19 September 2013 at the Informatics Forum within the School of Informatics, University of Edinburgh. 2. The event has

More information

Course Curriculum for Master Degree in Electrical Engineering/Wireless Communications

Course Curriculum for Master Degree in Electrical Engineering/Wireless Communications Course Curriculum for Master Degree in Electrical Engineering/Wireless Communications The Master Degree in Electrical Engineering/Wireless Communications, is awarded by the Faculty of Graduate Studies

More information

Professional Organization Checklist for the Computer Science Curriculum Updates. Association of Computing Machinery Computing Curricula 2008

Professional Organization Checklist for the Computer Science Curriculum Updates. Association of Computing Machinery Computing Curricula 2008 Professional Organization Checklist for the Computer Science Curriculum Updates Association of Computing Machinery Computing Curricula 2008 The curriculum guidelines can be found in Appendix C of the report

More information

Technology White Paper Capacity Constrained Smart Grid Design

Technology White Paper Capacity Constrained Smart Grid Design Capacity Constrained Smart Grid Design Smart Devices Smart Networks Smart Planning EDX Wireless Tel: +1-541-345-0019 I Fax: +1-541-345-8145 I info@edx.com I www.edx.com Mark Chapman and Greg Leon EDX Wireless

More information

YILDIRIM BEYAZIT UNIVERSITY INSTITUTE OF SCIENCES DATES AND LOCATIONS OF FINAL EXAMS JUNE 01-14 2015

YILDIRIM BEYAZIT UNIVERSITY INSTITUTE OF SCIENCES DATES AND LOCATIONS OF FINAL EXAMS JUNE 01-14 2015 COMPUTER ENGINEERING CODE Course Title and Responsible Location CENG 503 CENG 506 CENG 512 CENG 514 CENG 519 Computer Aided 3D Facial Reconstruction Dr. Özgür Bulut Advanced Data Mining Dr. Baha ŞEN Optimisation

More information

Challenges for Data Driven Systems

Challenges for Data Driven Systems Challenges for Data Driven Systems Eiko Yoneki University of Cambridge Computer Laboratory Quick History of Data Management 4000 B C Manual recording From tablets to papyrus to paper A. Payberah 2014 2

More information

Karthik Sridharan. 424 Gates Hall Ithaca, E-mail: sridharan@cs.cornell.edu http://www.cs.cornell.edu/ sridharan/ Contact Information

Karthik Sridharan. 424 Gates Hall Ithaca, E-mail: sridharan@cs.cornell.edu http://www.cs.cornell.edu/ sridharan/ Contact Information Karthik Sridharan Contact Information 424 Gates Hall Ithaca, NY 14853-7501 USA E-mail: sridharan@cs.cornell.edu http://www.cs.cornell.edu/ sridharan/ Research Interests Machine Learning, Statistical Learning

More information

Research on the Performance Optimization of Hadoop in Big Data Environment

Research on the Performance Optimization of Hadoop in Big Data Environment Vol.8, No.5 (015), pp.93-304 http://dx.doi.org/10.1457/idta.015.8.5.6 Research on the Performance Optimization of Hadoop in Big Data Environment Jia Min-Zheng Department of Information Engineering, Beiing

More information

Non-negative Matrix Factorization (NMF) in Semi-supervised Learning Reducing Dimension and Maintaining Meaning

Non-negative Matrix Factorization (NMF) in Semi-supervised Learning Reducing Dimension and Maintaining Meaning Non-negative Matrix Factorization (NMF) in Semi-supervised Learning Reducing Dimension and Maintaining Meaning SAMSI 10 May 2013 Outline Introduction to NMF Applications Motivations NMF as a middle step

More information

IEEE JAVA Project 2012

IEEE JAVA Project 2012 IEEE JAVA Project 2012 Powered by Cloud Computing Cloud Computing Security from Single to Multi-Clouds. Reliable Re-encryption in Unreliable Clouds. Cloud Data Production for Masses. Costing of Cloud Computing

More information

CONTROL, COMMUNICATION & SIGNAL PROCESSING (CCSP)

CONTROL, COMMUNICATION & SIGNAL PROCESSING (CCSP) CONTROL, COMMUNICATION & SIGNAL PROCESSING (CCSP) KEY RESEARCH AREAS Data compression for speech, audio, images, and video Digital and analog signal processing Image and video processing Computer vision

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

A1 Introduction to Data exploration and Machine Learning

A1 Introduction to Data exploration and Machine Learning A1 Introduction to Data exploration and Machine Learning 03563545 :- : -:: -,8 / 15 23CE53C5 --- Proposition: This course is aimed at students with little or no prior programming experience. Since Data

More information

A bachelor of science degree in electrical engineering with a cumulative undergraduate GPA of at least 3.0 on a 4.0 scale

A bachelor of science degree in electrical engineering with a cumulative undergraduate GPA of at least 3.0 on a 4.0 scale 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

Barbaros Tansel Memorial Lecture Series. İhsan Doğramacı Bilkent University Department of Industrial Engineering Ankara, Turkey

Barbaros Tansel Memorial Lecture Series. İhsan Doğramacı Bilkent University Department of Industrial Engineering Ankara, Turkey Barbaros Tansel Memorial Lecture Series İhsan Doğramacı Bilkent University Department of Industrial Engineering Ankara, Turkey Date: May 08, 2015 Time: 13:30-19:30 Location: Mithat Çoruh Auditorium We

More information

A Demonstration of a Robust Context Classification System (CCS) and its Context ToolChain (CTC)

A Demonstration of a Robust Context Classification System (CCS) and its Context ToolChain (CTC) A Demonstration of a Robust Context Classification System () and its Context ToolChain (CTC) Martin Berchtold, Henning Günther and Michael Beigl Institut für Betriebssysteme und Rechnerverbund Abstract.

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

BIG DATA IN THE CLOUD : CHALLENGES AND OPPORTUNITIES MARY- JANE SULE & PROF. MAOZHEN LI BRUNEL UNIVERSITY, LONDON

BIG DATA IN THE CLOUD : CHALLENGES AND OPPORTUNITIES MARY- JANE SULE & PROF. MAOZHEN LI BRUNEL UNIVERSITY, LONDON BIG DATA IN THE CLOUD : CHALLENGES AND OPPORTUNITIES MARY- JANE SULE & PROF. MAOZHEN LI BRUNEL UNIVERSITY, LONDON Overview * Introduction * Multiple faces of Big Data * Challenges of Big Data * Cloud Computing

More information

Final Project Report

Final Project Report CPSC545 by Introduction to Data Mining Prof. Martin Schultz & Prof. Mark Gerstein Student Name: Yu Kor Hugo Lam Student ID : 904907866 Due Date : May 7, 2007 Introduction Final Project Report Pseudogenes

More information

ANALYTICS IN BIG DATA ERA

ANALYTICS IN BIG DATA ERA ANALYTICS IN BIG DATA ERA ANALYTICS TECHNOLOGY AND ARCHITECTURE TO MANAGE VELOCITY AND VARIETY, DISCOVER RELATIONSHIPS AND CLASSIFY HUGE AMOUNT OF DATA MAURIZIO SALUSTI SAS Copyr i g ht 2012, SAS Ins titut

More information

Heterogeneous Networks: a Big Data Perspective

Heterogeneous Networks: a Big Data Perspective Heterogeneous Networks: a Big Data Perspective Arash Behboodi October 26, 2015 Institute for Theoretical Information Technology Prof. Dr. Rudolf Mathar RWTH Aachen University Wireless Communication: History

More information

Machine Learning and Data Mining. Fundamentals, robotics, recognition

Machine Learning and Data Mining. Fundamentals, robotics, recognition Machine Learning and Data Mining Fundamentals, robotics, recognition Machine Learning, Data Mining, Knowledge Discovery in Data Bases Their mutual relations Data Mining, Knowledge Discovery in Databases,

More information

Introduction to Machine Learning and Data Mining. Prof. Dr. Igor Trajkovski trajkovski@nyus.edu.mk

Introduction to Machine Learning and Data Mining. Prof. Dr. Igor Trajkovski trajkovski@nyus.edu.mk Introduction to Machine Learning and Data Mining Prof. Dr. Igor Trakovski trakovski@nyus.edu.mk Neural Networks 2 Neural Networks Analogy to biological neural systems, the most robust learning systems

More information

Masters in Information Technology

Masters in Information Technology Computer - Information Technology MSc & MPhil - 2015/6 - July 2015 Masters in Information Technology Programme Requirements Taught Element, and PG Diploma in Information Technology: 120 credits: IS5101

More information

BigData@Chalmers Machine Learning Business Intelligence, Culturomics and Life Sciences

BigData@Chalmers Machine Learning Business Intelligence, Culturomics and Life Sciences BigData@Chalmers Machine Learning Business Intelligence, Culturomics and Life Sciences Devdatt Dubhashi LAB (Machine Learning. Algorithms, Computational Biology) D&IT Chalmers Entity Disambiguation

More information

CIB W78 W102 2011 joint conference DETAILED PROGRAM. 26-28 October 2011 / Sophia Antipolis / France. Sophia Country Club

CIB W78 W102 2011 joint conference DETAILED PROGRAM. 26-28 October 2011 / Sophia Antipolis / France. Sophia Country Club CIB W78 W102 2011 joint conference DETAILED PROGRAM 26-28 October 2011 / Sophia Antipolis / France Sophia Country Club 3550 Route des Dôlines - 06410 BIOT - SOPHIA ANTIPOLIS - TEL / +33 4 92 96 68 78 (Conference

More information

Big Data Management in the Clouds and HPC Systems

Big Data Management in the Clouds and HPC Systems Big Data Management in the Clouds and HPC Systems Hemera Final Evaluation Paris 17 th December 2014 Shadi Ibrahim Shadi.ibrahim@inria.fr Era of Big Data! Source: CNRS Magazine 2013 2 Era of Big Data! Source:

More information

Protein Protein Interaction Networks

Protein Protein Interaction Networks Functional Pattern Mining from Genome Scale Protein Protein Interaction Networks Young-Rae Cho, Ph.D. Assistant Professor Department of Computer Science Baylor University it My Definition of Bioinformatics

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

Bachelorclass 2014-2015

Bachelorclass 2014-2015 Bachelorclass 2014-2015 Siegfried Nijssen 14 January 2015 Research at LIACS Algorithms and Software Technology (AST) Data science (data mining, databases) Joost Kok Aske Plaat Jaap van den Herik Siegfried

More information

Customer Specific Wireless Network Solutions Based on Standard IEEE 802.15.4

Customer Specific Wireless Network Solutions Based on Standard IEEE 802.15.4 Customer Specific Wireless Network Solutions Based on Standard IEEE 802.15.4 Michael Binhack, sentec Elektronik GmbH, Werner-von-Siemens-Str. 6, 98693 Ilmenau, Germany Gerald Kupris, Freescale Semiconductor

More information

Resume. Dr. Vedat COSKUN. Organisational E-mail Personal E-mail Personal Web Site Research Lab Web Site

Resume. Dr. Vedat COSKUN. Organisational E-mail Personal E-mail Personal Web Site Research Lab Web Site Resume Dr. Vedat COSKUN Organisational E-mail Personal E-mail Personal Web Site Research Lab Web Site vedatcoskun@isikun.edu.tr vedatcoskun@me.com www.vedatcoskun.com www.nfclab.com Dr. Vedat Coskun is

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

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

Mobile Cloud Computing: Paradigms and Challenges 移 动 云 计 算 : 模 式 与 挑 战

Mobile Cloud Computing: Paradigms and Challenges 移 动 云 计 算 : 模 式 与 挑 战 Mobile Cloud Computing: Paradigms and Challenges 移 动 云 计 算 : 模 式 与 挑 战 Jiannong Cao Internet & Mobile Computing Lab Department of Computing Hong Kong Polytechnic University Email: csjcao@comp.polyu.edu.hk

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

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

Data Mining and Pattern Recognition for Large-Scale Scientific Data

Data Mining and Pattern Recognition for Large-Scale Scientific Data Data Mining and Pattern Recognition for Large-Scale Scientific Data Chandrika Kamath Center for Applied Scientific Computing Lawrence Livermore National Laboratory October 15, 1998 We need an effective

More information

Data Mining and Neural Networks in Stata

Data Mining and Neural Networks in Stata Data Mining and Neural Networks in Stata 2 nd Italian Stata Users Group Meeting Milano, 10 October 2005 Mario Lucchini e Maurizo Pisati Università di Milano-Bicocca mario.lucchini@unimib.it maurizio.pisati@unimib.it

More information

BIOINF 525 Winter 2016 Foundations of Bioinformatics and Systems Biology http://tinyurl.com/bioinf525-w16

BIOINF 525 Winter 2016 Foundations of Bioinformatics and Systems Biology http://tinyurl.com/bioinf525-w16 Course Director: Dr. Barry Grant (DCM&B, bjgrant@med.umich.edu) Description: This is a three module course covering (1) Foundations of Bioinformatics, (2) Statistics in Bioinformatics, and (3) Systems

More information

2014 Voluntary Page and Overlength Article Charges

2014 Voluntary Page and Overlength Article Charges 2014 and NOTE: page charges do not apply to open access articles. Title Aerospace & Electronic $200 10 4 Aerospace & Electronic Affective Computing Annals of the History of Computing Antennas & Propagation

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

M.Sc. Program in Informatics and Telecommunications

M.Sc. Program in Informatics and Telecommunications M.Sc. Program in Informatics and Telecommunications at UoA-DIT Prof. Ioannis Stavrakakis Deputy Dept Chair, Director of Graduate Studies 1 Overview of Graduate Studies Initiated in 1993 Modified in 2000

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

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

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

Big Data Analytics and Healthcare

Big Data Analytics and Healthcare Big Data Analytics and Healthcare Anup Kumar, Professor and Director of MINDS Lab Computer Engineering and Computer Science Department University of Louisville Road Map Introduction Data Sources Structured

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

Master's projects at ITMO University. Daniil Chivilikhin PhD Student @ ITMO University

Master's projects at ITMO University. Daniil Chivilikhin PhD Student @ ITMO University Master's projects at ITMO University Daniil Chivilikhin PhD Student @ ITMO University General information Guidance from our lab's researchers Publishable results 2 Research areas Research at ITMO Evolutionary

More information

Course 803401 DSS. Business Intelligence: Data Warehousing, Data Acquisition, Data Mining, Business Analytics, and Visualization

Course 803401 DSS. Business Intelligence: Data Warehousing, Data Acquisition, Data Mining, Business Analytics, and Visualization Oman College of Management and Technology Course 803401 DSS Business Intelligence: Data Warehousing, Data Acquisition, Data Mining, Business Analytics, and Visualization CS/MIS Department Information Sharing

More information

DÉFIS STATISTIQUES ET COMPUTATIONNELS DANS LES RÉSEAUX ET LA CYBERSÉCURITÉ

DÉFIS STATISTIQUES ET COMPUTATIONNELS DANS LES RÉSEAUX ET LA CYBERSÉCURITÉ HORAIRE / PROGRAM ATELIER DÉFIS STATISTIQUES ET COMPUTATIONNELS DANS LES RÉSEAUX ET LA CYBERSÉCURITÉ 4 au 8 mai 2015 WORKSHOP STATISTICAL AND COMPUTATIONAL CHALLENGES IN NETWORKS AND CYBERSECURITY May

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

On the Traffic Capacity of Cellular Data Networks. 1 Introduction. T. Bonald 1,2, A. Proutière 1,2

On the Traffic Capacity of Cellular Data Networks. 1 Introduction. T. Bonald 1,2, A. Proutière 1,2 On the Traffic Capacity of Cellular Data Networks T. Bonald 1,2, A. Proutière 1,2 1 France Telecom Division R&D, 38-40 rue du Général Leclerc, 92794 Issy-les-Moulineaux, France {thomas.bonald, alexandre.proutiere}@francetelecom.com

More information

EFFICIENT DATA PRE-PROCESSING FOR DATA MINING

EFFICIENT DATA PRE-PROCESSING FOR DATA MINING EFFICIENT DATA PRE-PROCESSING FOR DATA MINING USING NEURAL NETWORKS JothiKumar.R 1, Sivabalan.R.V 2 1 Research scholar, Noorul Islam University, Nagercoil, India Assistant Professor, Adhiparasakthi College

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

The 4 Pillars of Technosoft s Big Data Practice

The 4 Pillars of Technosoft s Big Data Practice beyond possible Big Use End-user applications Big Analytics Visualisation tools Big Analytical tools Big management systems The 4 Pillars of Technosoft s Big Practice Overview Businesses have long managed

More information

BEng in Computer Engineering

BEng in Computer Engineering (For students admitted in 215-1 under the -year degree) BEng in Computer Engineering School of Engineering - BEng in Computer Engineering In addition to the requirements of their major programs, students

More information

Gaming as a Service. Prof. Victor C.M. Leung. The University of British Columbia, Canada www.ece.ubc.ca/~vleung

Gaming as a Service. Prof. Victor C.M. Leung. The University of British Columbia, Canada www.ece.ubc.ca/~vleung Gaming as a Service Prof. Victor C.M. Leung The University of British Columbia, Canada www.ece.ubc.ca/~vleung International Conference on Computing, Networking and Communications 4 February, 2014 Outline

More information

Christian Bettstetter. Mobility Modeling, Connectivity, and Adaptive Clustering in Ad Hoc Networks

Christian Bettstetter. Mobility Modeling, Connectivity, and Adaptive Clustering in Ad Hoc Networks Christian Bettstetter Mobility Modeling, Connectivity, and Adaptive Clustering in Ad Hoc Networks Contents 1 Introduction 1 2 Ad Hoc Networking: Principles, Applications, and Research Issues 5 2.1 Fundamental

More information

Every area of science is now engaged in data-intensive research Researchers need Technology to publish and share data in the cloud Data analytics

Every area of science is now engaged in data-intensive research Researchers need Technology to publish and share data in the cloud Data analytics Talk Outline The 4 th paradigm of science The genesis of big data analysis in the cloud : searching the web The revolution in machine learning Examples The n-gram and language translation Recognizing images

More information

HUAWEI Advanced Data Science with Spark Streaming. Albert Bifet (@abifet)

HUAWEI Advanced Data Science with Spark Streaming. Albert Bifet (@abifet) HUAWEI Advanced Data Science with Spark Streaming Albert Bifet (@abifet) Huawei Noah s Ark Lab Focus Intelligent Mobile Devices Data Mining & Artificial Intelligence Intelligent Telecommunication Networks

More information

350 Serra Mall, Stanford, CA 94305-9515

350 Serra Mall, Stanford, CA 94305-9515 Meisam Razaviyayn Contact Information Room 260, Packard Building 350 Serra Mall, Stanford, CA 94305-9515 E-mail: meisamr@stanford.edu Research Interests Education Appointments Large scale data driven optimization

More information