Complex Systems Studies – Telegram
Complex Systems Studies
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What's up in Complexity Science?!
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@ComplexSys

#complexity #complex_systems #networks #network_science

📨 Contact us: @carimi
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💰 3 year bioinformatics #postdoc position in our group to work on #network integration in #Metabolomics within #Metclassnet DFG-ANR project
👉More details:
https://t.co/sPynKNAh0K
🦠 پیشنهاد می‌کنیم برای آگاهی از اطلاعات موثق و آخرین اخبار در مورد #کرونا ، این دو حساب را در توییتر دنبال کنید:

🧓🏻 Marc Lipsitch
https://twitter.com/mlipsitch
Director Center for Communicable Disease Dynamics at Harvard Chan

👩🏻 Dr. Tara C. Smith
https://twitter.com/aetiology
Professor, infectious disease epidemiologist

هر دوی این افراد متخصص‌های بیماری‌های واگیردار هستند.
#COVID19
Lessons from an earlier epidemic (SARS, 17 years ago), from ⁦Duncan Watts⁩.

Main point: in a connected world, a bit of fear is good.

https://t.co/zUFcCaCx5N

Key quote from the article: “our real concern ought not to be that we are too easily scared, but that we are too easily reassured.”

#coronavirus #COVIDー19 #covid19
#کرونا | توصیه‌های دانشگاه علوم‌ پزشکی شهید بهشتی رو جدی بگیریم:

https://instagram.com/sbmu.ac?igshid=2g2voqiuyvxx
Complex Systems Studies pinned «#کرونا | توصیه‌های دانشگاه علوم‌ پزشکی شهید بهشتی رو جدی بگیریم: https://instagram.com/sbmu.ac?igshid=2g2voqiuyvxx»
Applied Data Science with Python Specialization

Gain new insights into your data . Learn to apply data science methods and techniques, and acquire analysis skills.

https://www.coursera.org/specializations/data-science-python
Mathematics for Machine Learning Specialization

Mathematics for Machine Learning. Learn about the prerequisite mathematics for applications in data science and machine learning

https://www.coursera.org/specializations/mathematics-machine-learning
Abrupt phase transition of epidemic spreading in simplicial complexes

Joan T. Matamalas, Sergio Gómez, and Alex Arenas
Phys. Rev. Research 2, 012049(R) – Published 27 February 2020

https://journals.aps.org/prresearch/abstract/10.1103/PhysRevResearch.2.012049

Abstract
Recent studies on network geometry, a way of describing network structures as geometrical objects, are revolutionizing our way to understand dynamical processes on networked systems. Here, we cope with the problem of epidemic spreading, using the susceptible-infected-susceptible (SIS) model, in simplicial complexes. In particular, we analyze the dynamics of the SIS in complex networks characterized by pairwise interactions (links) and three-body interactions (filled triangles, also known as 2-simplices). This higher-order denoscription of the epidemic spreading is analytically formulated using a microscopic Markov chain approximation. The analysis of the fixed point solutions of the model reveals an interesting phase transition that becomes abrupt with the infectivity parameter of the 2-simplices. Our results pave the way to advance in our physical understanding of epidemic spreading in real scenarios where diseases are transmitted among groups as well as among pairs and to better understand the behavior of dynamical processes in simplicial complexes.
Summer school on Mathematical Methods in Computational Neuroscience

this 4 week summer school covers some of the most important methods used in computational neuroscience research through both main lectures and scientific seminars (5-6 main lectures per topic and 1-2 seminars by each invited seminar speaker) .

Organizers: Yasser Roudi and Benjamin Dunn

Kavli Moen Gård, Esfjord, Norway, 15 Jul- 15 Aug 2020.
⚡️ Application deadline: 15 May.
https://compneuronrsn.org
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Computer Simulation of the spread of a pandemic

The clip depicts the time course of an epidemic with outbreak in Mexico across the worldwide air-transportation network. This simulation is related to the actual spread of H1N1 in 2009.
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The hidden patterns in complex global disease dynamics : Outbreak Atlanta

The video clip depicts a computer simulation of a global pandemic. The spreading takes place on the worldwide air transportation network of more than 4000 airports and 25000 direct links. The right panel shows the spread in the conventional geographic representation. The left panel shows the same dynamics in a more appropriate representation in which radial distance corresponds to an effective distance.
https://science.sciencemag.org/content/342/6164/1337
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The hidden patterns in complex global disease dynamics : Outbreak Mexico City

The video clip depicts a computer simulation of a global pandemic. The spreading takes place on the worldwide air transportation network of more than 4000 airports and 25000 direct links. The right panel shows the spread in the conventional geographic representation. The left panel shows the same dynamics in a more appropriate representation in which radial distance corresponds to an effective distance.
http://rocs.hu-berlin.de/projects/hidden/index.html
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The hidden patterns in complex global disease dynamics : Outbreak Paphos, Greece

e spreading takes place on the worldwide air transportation network of more than 4000 airports and 25000 direct links. The right panel shows the spread in the conventional geographic representation. The left panel shows the same dynamics in a more appropriate representation in which radial distance corresponds to an effective distance.
http://rocs.hu-berlin.de/projects/hidden/index.html
A Kinetic View of Statistical Physics
Speaker: Sidney Redner (Santa Fe Institute) Spring College on the Physics of Complex Systems | (smr 3427)

https://www.aparat.com/playlist/307535
Inferring high-resolution human mixing patterns for disease modeling
“age-stratified contact matrices for 277 sub-national administrative regions of countries covering approximately 3.5 billion people”

https://t.co/n9pvIiCzn4?amp=1