Date : January 22nd 2024
Venue : Online
Time : 12 noon – 2:00 pm
Join Zoom Session
Time: Jan 22, 2024 12:00 PM Colombo
https://learn.zoom.us/j/97045489982?pwd=dW9xKzVxNWZLb1hTT2pVRzIzMzFwdz09
Meeting ID : 970 4548 9982
Passcode. : h5R+dxS3
In this workshop, we embark on a journey into the field of infectious disease modeling, geared toward curious minds of undergraduate students. The session delves into the fundamental concepts of modeling infectious diseases and offers a comprehensive introduction to the complex world of epidemiology. From elucidating basic principles to demystifying parameter estimation, participants will gain invaluable insight and a solid foundation to understand the dynamics of infectious diseases.
Time : 4:00 pm – 6:00 pm
Join Zoom Session
Time: Jan 22, 2024 04:00 PM Colombo
https://learn.zoom.us/j/93735770593?pwd=MmEvRlJ3R1BpeDNZd1NJZDRkZmV3QT09
Meeting ID : 937 3577 0593
Passcode. : u@3$ypeA
In this mini-workshop we will consider the development of simple epidemic models such as the Susceptible-Infected-Recovered (SIR) model. We will then discuss how from the simple models, more complex and realistic models can be obtained. We will further define the basic reproduction number R0 and discuss methods of its computations. Specific examples will also be considered.
Date : January 23rd 2024
Venue : Onsite
Time : 8:00 am – 10:00 am
Venue : FM Lab
This workshop offers a hands-on exploration of essential computational tactics, including model solving, parameter estimation, sensitivity analysis, and more via software tools. Participants will be able to engage in practical sessions covering SIR Type Ordinary Differential Equation (ODE) models, gain insights into solving tools for ODEs, and master error minimizing tools for parameter estimation. The workshop also highlights the significance of model-based simulations.
Time : 10:00 am – 12 noon
Venue : FM Lab
The recent global health challenges highlight the need of developing rapid visualizations of the spread of diseases for time-sensitive public health decision-making. This workshop attempts to discuss the robust techniques available in Python and associated geographic visualization tools to manipulate, analyze, and visualize epidemic data, bridging the gap between complex data sets and actionable insights.
Workshop Highlights:
This workshop promises to be a blend of theoretical understanding and practical application, ensuring that participants leave with a strong foundation in using Python and GIS for epidemiological data visualization.