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Math Modelling Versus Machine Learning for COVID-19

Which models drive decision-making and policy?

16 min readDec 17, 2020

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Lawrence Fishburne and Bryan Cranston in Contagion, a film describing the outbreak of a virus MEV-1. Image source: Vanity Fair (Fair Use)

When COVID-19 swept the world in early 2020, researchers swarmed in with their modelling expertise to forecast epidemic spread and derive optimum interventions. Here’s a high-level view of the whole party.

The majority of mathematical models are derived from the SIR and SEIR compartment models. The primary use cases are population-level forecasting (e.g. predict timing of epidemic peak and hospitalisation numbers) and informing interventions strategies (e.g. lockdowns, quarantine, social distancing and wearing masks).

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The majority of Machine Learning (ML) models are Convolutional Neural Networks (CNN) addressing a variety of challenges, from diagnosing patients through CT images and tracking epidemic spread through mobile phones, to designing molecules in vaccines and building AI-robots that disinfect hospitals.

Update: I now post AI, ML & Data Science tutorials on YouTube.

Here’s a classification of model approaches from the prequel article here:

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Col Jung
Col Jung

Written by Col Jung

Engineer writing about AI, data & disruptive innovation. Ex-lecturer & PhD in Mathematics. Socials: https://linktr.ee/col_jung