ModsSC4022
Network Science
We live in a world where we are surrounded by systems that are incredibly complex, from the society, a collection of billions individuals, to communications systems, integrating billions of devices, from computers to cell phones. In fact, the existence of living beings in this planet depends on the ability of thousands of proteins to work together in a seamless fashion. Furthermore, our ability to comprehend our surroundings is heavily influenced by the activity of billions of neurons in our brain. Such complex systems can be represented as static or dynamic networks of many interacting components. These components are typically much simpler in terms of behavior or function than the overall system, implying that the additional complexity of the latter is an emergent network property.
Network science is a new discipline that investigates the topology and dynamics of such complex networks, aiming to better understand the behavior, function and properties of the underlying systems. In this course, we will study algorithmic, computational, and statistical methods of network science, as well as its applications in solving real-world problems in communications, biology, sociology, and cyber security. The specific topics include network metrics, properties, and models, network querying and analytics, network dynamics, and distributed graph engines. Another pervasive goal of this course is to guide students into the future by presenting research that reveals the ?next big thing? in network science.
Network science is a new discipline that investigates the topology and dynamics of such complex networks, aiming to better understand the behavior, function and properties of the underlying systems. In this course, we will study algorithmic, computational, and statistical methods of network science, as well as its applications in solving real-world problems in communications, biology, sociology, and cyber security. The specific topics include network metrics, properties, and models, network querying and analytics, network dynamics, and distributed graph engines. Another pervasive goal of this course is to guide students into the future by presenting research that reveals the ?next big thing? in network science.
| AUs | 3.0 AUs |
| Exam | N/A |
| Grade Type | N/A |
| Maintaining Dept | N/A |
| Prerequisites | SC2001 or |
| Mutually Exclusive With | CE4071, CZ4071 |
| Not Available To Programme | ACBS, ACC, ADM, AERO, ARED, ASEC, BACF, BASA, BEEC, BIE, BMS, BS, BSB, BSPY, BUS, CBE, CBEC, CEE, CEE 1, CEEC, CHEM, CHIN, CMED, CNEL, CNLM, COMP, CS, CVEC, ECDS, ECMA, ECON, ECPP, ECPS, EEE, EEE 1, EEEC, EESS, ELAH, ELH, ELHS, ELPL, ENE, ENE 1, ENEC, ENG, ESPP, HIST, HSCN, HSLM, IEEC, IEM, LMEL, LMPL, LMS, MACS, MAEC, MAEO, MAT, MATH, ME 1, ME(DES), ME(IMS), ME(NULL), ME(RMS), MEEC(DES), MEEC(IMS), MEEC(NULL), MEEC(RMS), MS, MS-2ndMaj/Spec(MSB), MTEC, PHIL, PHMS, PHY, PLCN, PLHS, PPGA, PSLM, PSMA, PSY, REP, SCED, SOC, SPPE, SSM |
| Not Available To All Programme With | (Admyr 2011-2020), |
| Not available as Core for programmes | N/A |
| Not Available as PE for programmes | N/A |
| Not Available as BDE/UEs for programmes | ACDA, BCE, BCG, CE, CSC, CSEC, DSAI |
| Not Offered To | N/A |
Total hours per week: 0 hrs
Available Indexes
No indexes available for this semester
(This might be an old module not longer offered in AY24/25)
Other Relevant Mods
SC1003
Introduction To Computational Thinking & Programming
SC1004
Linear Algebra For Computing
SC1005
Digital Logic
SC1006
Computer Organisation & Architecture
SC1007
Data Structures & Algorithms
SC1013
Physics For Computing
SC1015
Introduction To Data Science & Artificial Intelligence
SC2000
Probability & Statistics For Computing
SC2001
Algorithm Design & Analysis